Skip to main content
  • More from ADA
    • Diabetes Care
    • Clinical Diabetes
    • Diabetes Spectrum
    • ADA Standards of Medical Care in Diabetes
    • ADA Scientific Sessions Abstracts
    • BMJ Open Diabetes Research & Care
  • Subscribe
  • Log in
  • Log out
  • My Cart
  • Follow ada on Twitter
  • RSS
  • Visit ada on Facebook
Diabetes

Advanced Search

Main menu

  • Home
  • Current
    • Current Issue
    • Online Ahead of Print
    • ADA Scientific Sessions Abstracts
  • Browse
    • By Topic
    • Issue Archive
    • Saved Searches
    • ADA Scientific Sessions Abstracts
    • Diabetes COVID-19 Article Collection
    • Diabetes Symposium 2020
  • Info
    • About the Journal
    • About the Editors
    • ADA Journal Policies
    • Instructions for Authors
    • Guidance for Reviewers
  • Reprints/Reuse
  • Advertising
  • Subscriptions
    • Individual Subscriptions
    • Institutional Subscriptions and Site Licenses
    • Access Institutional Usage Reports
    • Purchase Single Issues
  • Alerts
    • E­mail Alerts
    • RSS Feeds
  • Podcasts
    • Diabetes Core Update
    • Special Podcast Series: Therapeutic Inertia
    • Special Podcast Series: Influenza Podcasts
    • Special Podcast Series: SGLT2 Inhibitors
    • Special Podcast Series: COVID-19
  • Submit
    • Submit a Manuscript
    • Submit Cover Art
    • ADA Journal Policies
    • Instructions for Authors
    • ADA Peer Review
  • More from ADA
    • Diabetes Care
    • Clinical Diabetes
    • Diabetes Spectrum
    • ADA Standards of Medical Care in Diabetes
    • ADA Scientific Sessions Abstracts
    • BMJ Open Diabetes Research & Care

User menu

  • Subscribe
  • Log in
  • Log out
  • My Cart

Search

  • Advanced search
Diabetes
  • Home
  • Current
    • Current Issue
    • Online Ahead of Print
    • ADA Scientific Sessions Abstracts
  • Browse
    • By Topic
    • Issue Archive
    • Saved Searches
    • ADA Scientific Sessions Abstracts
    • Diabetes COVID-19 Article Collection
    • Diabetes Symposium 2020
  • Info
    • About the Journal
    • About the Editors
    • ADA Journal Policies
    • Instructions for Authors
    • Guidance for Reviewers
  • Reprints/Reuse
  • Advertising
  • Subscriptions
    • Individual Subscriptions
    • Institutional Subscriptions and Site Licenses
    • Access Institutional Usage Reports
    • Purchase Single Issues
  • Alerts
    • E­mail Alerts
    • RSS Feeds
  • Podcasts
    • Diabetes Core Update
    • Special Podcast Series: Therapeutic Inertia
    • Special Podcast Series: Influenza Podcasts
    • Special Podcast Series: SGLT2 Inhibitors
    • Special Podcast Series: COVID-19
  • Submit
    • Submit a Manuscript
    • Submit Cover Art
    • ADA Journal Policies
    • Instructions for Authors
    • ADA Peer Review
Perspectives in Diabetes

Genetics of Type 1 Diabetes: What's Next?

  1. Flemming Pociot1,2,
  2. Beena Akolkar3,
  3. Patrick Concannon4,5,
  4. Henry A. Erlich6,
  5. Cécile Julier7,
  6. Grant Morahan8,
  7. Concepcion R. Nierras9,
  8. John A. Todd10,
  9. Stephen S. Rich4,11 and
  10. Jørn Nerup1
  1. 1Department of Genome Biology, Hagedorn Research Institute, Gentofte, Denmark;
  2. 2Clinical Research Center (CRC), University of Lund, Malmö, Sweden;
  3. 3Division of Diabetes, Endocrinology and Metabolic Diseases, National Institute of Diabetes and Digestive Kidney Diseases (NIDDK), National Institutes of Health, Bethesda, Maryland;
  4. 4Center for Public Health Genomics, University of Virginia, Charlottesville, Virginia;
  5. 5Department of Biochemistry and Molecular Genetics, University of Virginia, Charlottesville, Virginia;
  6. 6Roche Molecular Systems, Pleasanton, California;
  7. 7Institut National de la Santé et de la Recherche Médicale (INSERM) U730, Centre National de Génotypage, Evry, France;
  8. 8Centre for Diabetes Research, The Western Australian Institute for Medical Research, University of Western Australia, Perth, Australia;
  9. 9Juvenile Diabetes Research Foundation International, New York, New York;
  10. 10Department of Medical Genetics, Juvenile Diabetes Research Foundation/Wellcome Trust Diabetes and Inflammation Laboratory, Cambridge Institute for Medical Research, Addenbrooke's Hospital, University of Cambridge, Cambridge, U.K.;
  11. 11Department of Public Health Sciences, University of Virginia, Charlottesville, Virginia.
  1. Corresponding author: Flemming Pociot, fpoc{at}hagedorn.dk.
Diabetes 2010 Jul; 59(7): 1561-1571. https://doi.org/10.2337/db10-0076
PreviousNext
  • Article
  • Figures & Tables
  • Info & Metrics
  • PDF
Loading

The discovery of the association between HLA in the major histocompatibility complex (MHC) on chromosome 6p21 with type 1 diabetes, but not with type 2 diabetes, suggested that these disease entities were of different genetic background and pathogenesis. The discovery that some individuals with diabetes had autoantibodies in their blood provided additional evidence that type 1 diabetes had an autoimmune origin. Recently, increasing knowledge of the genome, coupled with rapidly improving genotyping technology and availability of increasingly large numbers of samples, has enabled statistically robust, systematic, genome-wide examinations for discovery of loci contributing to type 1 diabetes susceptibility, including within the MHC itself. Currently, there are over 50 non-HLA regions that significantly affect the risk for type 1 diabetes (http://www.t1dbase.org). Many of these regions contain interesting, but previously unrecognized, candidate genes. A few regions contain genes of unknown function or no known annotated genes, suggesting roles for long-distance gene regulatory effects, noncoding RNAs, or unknown mechanisms. Against a background of ever-improving knowledge of the genome, particularly its transcriptional regulation, and with massive advances in sequencing, specific genes, rather than regions that impinge upon type 1 diabetes risk, will be identified soon. Here we discuss follow-up strategies for genome-wide association (GWA) studies, causality of candidate genes, and genetic association in a bioinformatics approach with the anticipation that this knowledge will permit identification of the earliest events in type 1 diabetes etiology that could be targets for intervention or biomarkers for monitoring the effects and outcomes of potential therapeutic agents. The International Type 1 Diabetes Genetics Consortium (T1DGC) has established significant resources for the study of genetics of type 1 diabetes. These resources are available to the research community and provide a basis for future discovery in the transition from gene mapping to discovery of disease mechanisms.

The T1DGC (http://www.t1dgc.org) is an international research program established in 2002 whose primary aims are to 1) discover genes that modify risk of type 1 diabetes and 2) expand on existing genetic resources for type 1 diabetes research (1). Over the last 7 years, the T1DGC has assembled a collection of >4,000 type 1 diabetes affected sib-pair (ASP) families for genetic studies. In addition to building this resource, consortium members have provided access to large case-control collections for specific T1DGC genotyping studies. Building on these assets, four major research projects have been performed: an exhaustive examination of the HLA region by single nucleotide polymorphism (SNP) genotyping and high-resolution HLA typing; a detailed investigation of published candidate genes; a genome-wide linkage scan; and a GWA study and meta-analysis. Importantly, T1DGC data and bio-specimens used in these studies have been made available to the research community. The T1DGC continues to build on these resources to help identify the inherited events in the pathogenesis of type 1 diabetes.

The etiology of human type 1 diabetes is still largely obscure, but it is recognized that both genetic and environmental factors are important in defining disease risk (2). This is supported by observations showing that the proband-wise concordance for monozygotic (MZ) twins is estimated to be ∼50% (compared with ∼8% for dizygotic [DZ] twins) (3). These MZ twins have the whole range of population genetic risk profiles for type 1 diabetes, and if they were all high-risk DR3/4-DQ8, for example, their concordance for the disease would be much higher. Both animal model and human studies indicate that an autoimmune response to the β-cells of the pancreatic islets occurs in type 1 diabetes. The outcome of this response (health or diabetes) is influenced substantially by an unknown series of stochastic or developmental events in the context of (unknown) environmental factors. The autoimmune process, substantially determined by inherited variation, then progresses through a preclinical phase, leading to destruction of β-cells and a stage of hyperglycemia resulting from reduced β-cell mass and insulin secretory capacity.

Genetic, functional, structural, and animal model studies all indicate that the highly polymorphic HLA class II molecules, namely the DR and DQ α-β heterodimers, are central to susceptibility to type 1 diabetes (4,5). The genes encoding these proteins are located in the HLA region, which spans ∼4,000 kb of DNA on human chromosome 6p21.3. The HLA region comprises >200 genes, and 40% of the expressed genes are predicted to have immune response functions (6,7). In addition to the class II genes HLA-DRB1 and HLA-DQB1, any one (or more) of these MHC genes, including the other HLA genes, could contribute to the overall risk for type 1 diabetes. The exact mechanism(s) by which the HLA class II molecules confer susceptibility to immune-mediated destruction of the pancreatic islets is still not known in its entirety, but the binding of key peptides from autoantigens (preproinsulin, GAD, insulinoma-associated 2 antigen, and zinc transporter, ZnT8, so far identified) to HLA class II molecules in the thymus and in the periphery are likely to play an important role. Theoretically, targeting this process of antigen presentation and T-cell activation may be an effective therapeutic approach to preventing type 1 diabetes. In practice, HLA screening is used to identify people at risk for developing type 1 diabetes, for inclusion in, and exclusion from, clinical studies (8) and clinical trials (9).

MHC FINE MAPPING

Although the highly polymorphic HLA class II genes clearly play the most important single role in susceptibility to type 1 diabetes, variation at these loci alone cannot explain all of the evidence of genetic association and linkage of the MHC with type 1 diabetes. To better define genes within the MHC that may affect type 1 diabetes risk and would therefore merit further studies, the T1DGC undertook a comprehensive study of the genetics of the classic 4-Mb MHC region. More than 3,000 SNPs and 66 microsatellite markers were genotyped in 2,300 type 1 diabetes ASP families (∼10,000 individuals) (10). HLA typing using immobilized probes was also performed on these samples for HLA-A, -B, -C, -DRB1, -DQA1, -DQB1, -DPA1, and -DPB1. These data (available for viewing at http://www.t1dbase.org) represent the largest collection of families with type 1 diabetes genotyped at such a detailed level.

Specific combinations of alleles, or haplotypes, of the DRB1, DQA1, and DQB1 genes (in cis and in trans) determined the extent of risk and a distribution of DR-DQ haplotypes and genotypes ranging from highly susceptible to highly protective have been observed (11). Odds ratios (ORs) >40 were observed for some genotypes (e.g., DRB1*0301-DQA1*0501-DQB1*0201/DRB1*0401-DQA1*0301-DQB1*0302). High genetic risks have been reported for islet autoimmunity and type 1 diabetes in DR3/4-DQ8 siblings who shared both HLA haplotypes with their diabetic sibling, although this has yet to be confirmed (12). Further, independent effects of HLA-A, HLA-B, and HLA-DPB1 (13) were also demonstrated. Following adjustment for linkage disequilibrium to haplotypes at the DR-DQ region, both susceptible and protective alleles were found at HLA-B (e.g., B*3906, susceptible, and B*5701, protective), HLA-A (e.g., A*2402, susceptible, and A*1101, protective), and HLA-DPB1 (e.g., DPB1*0301 and *0202, susceptible, and *0402, protective) (13,14).

Other features of the HLA–type 1 diabetes association were also examined; however, only support for an HLA effect by age at diagnosis was found (15–18). Presumably, the risk conferred by specific HLA class I and class II alleles and haplotypes reflects the specificity of peptide binding and presentation (19,20). New genomic knowledge will better define the naturally processed peptides from autoantigens in type 1 diabetes. Intriguingly, a decrease in high-risk HLA genetic contribution in new-onset cases over the last decades has been observed in several studies, suggesting a change in environmental impact on penetrance as the incidence of type 1 diabetes increases (21–23).

The T1DGC MHC fine mapping data and results were published as a supplement to Diabetes, Obesity and Metabolism (10). The T1DGC has made the data available to the scientific community for additional analyses, by request to the National Institute of Diabetes and Digestive Kidney Diseases (NIDDK) Central Repository (https://www.niddkrepository.org/niddk/home.do). The T1DGC is also probing the MHC in greater genomic detail, including a collaboration with the Federation of Clinical Immunology Societies (FOCiS) and with DNA sequence analysis to investigate the association of the “secondary” DRB3, DRB4, and DRB5 variation in the context of the DRB1 haplotypes on which these alleles are found.

CANDIDATE GENE STUDIES

Insulin gene (INS).

The importance of variation at or near the insulin gene (INS) on chromosome 11p15.5 was originally suggested by early association studies (24). The genetic risk conferred by the INS locus is generally ascribed to differing size classes of alleles at a region with a variable number of tandem repeats (VNTR, mini-satellite polymorphisms) flanking the insulin gene. The class I alleles of the INS VNTR, which increase risk of type 1 diabetes, have been associated with lower insulin mRNA and protein expression in the thymus, compared with the dominant protective class III alleles. Decreased central tolerance allows more autoreactive T-cells to escape into the periphery, increasing susceptibility to disease (25,26). Recent studies that highlight insulin and its precursors as the major initiating autoantigen in human type 1 diabetes (27,28) provide support for this hypothesis.

CTLA4.

The variants associated with type 1 diabetes in the cytotoxic T-lymphocyte–associated protein 4 (CTLA4) gene were identified by association mapping using both NOD mouse and human samples (29–31). The CTLA4-encoded molecule is a co-stimulatory receptor that inhibits T-cell activation and functions in CD4 T regulatory cells. Several human autoimmune diseases are associated at the same genomic region (2q33) that contains CTLA4. Narrowing down the list of candidate causal variants and their effect on CTLA4 gene splicing has been aided by using samples from patients with Graves' disease (31) and point to variants in the 3′ region of the gene, altering the level of a soluble form of the receptor. CTLA4 genetic variation has a strong effect, presumably via its role in regulation of peripheral tolerance (32), in which the disease-associated CTLA4 haplotype is predisposing to a failure in tolerance to multiple organs or tissues. In the NOD mouse in which convincing statistical gene-gene interactions can be observed, the effect of allelic variation of CTLA4 depends on different combinations of other susceptibility loci, including complete masking of the effect (that is, no association with disease) (33).

PTPN22.

A functional variant of the lymphoid-specific protein tyrosine phosphatase (PTPN22) gene on chromosome 1p13 is strongly associated with type 1 diabetes as well as other autoimmune diseases (34,35). LYP, encoded by the PTPN22 gene, is an inhibitor of T-cell activation, acting by dephosphorylating T-cell receptor-proximal signaling molecules such as LCK and ZAP70. A variant of PTPN22 resulting in an amino acid substitution (R620W) has been shown to have functional consequences for PTPN22 function in vitro and in vivo, and may be the causal variant in this region. Provocatively, in the current in vitro immunoassays of β- and T-cell activation and cytokine production, the R620W variant is a gain-of-function allele, suggesting that inhibition of LYP might be a therapeutic target in type 1 diabetes.

IL2RA.

The IL-2R α-subunit of the IL-2 receptor complex locus (IL2RA) was found to be associated with type 1 diabetes using a tag SNP approach (36). The gene IL2RA is found on chromosome 10p15.1 and encodes the expression of CD25 on regulatory naive T-cells, memory T-cells, and activated monocytes (37). The regulated expression of the CD25 protein is important for suppressing T-cell proliferation by an immunogenic stimulus. IL2RA has been identified as an associated gene in multiple autoimmune diseases (38–40). Recent fine mapping and functional studies have identified several variants that make independent contributions to risk for type 1 diabetes, indicating that IL2RA is the causal gene in the region. Different IL2RA variants influence the risk for development of multiple sclerosis, another autoimmune disease (41). In type 1 diabetes, the noncoding variants in IL2RA alter gene transcription, affecting expression of CD25 on the surface of naive and memory T-cells, and IL-2 production by stimulated memory T-cells (42). These human results parallel those observed in mouse studies, in which the CD25 ligand, Il2 (the gene encoding the key cytokine IL-2), has been identified as the major non-MHC risk gene (43).

Other candidate genes.

Previous studies using candidate gene approaches have suggested many additional loci contributing to susceptibility of type 1 diabetes susceptibility (44). However, numerous early studies were underpowered, owing to limitations in genomic information and genotyping technology, as well as small sizes of available cohorts.

The T1DGC, using the same samples as in the MHC and candidate gene investigations, reevaluated 382 SNPs from 21 recently reported candidate genes, assembling nearly 4,000 ASP families and fully characterizing (through tagging SNPs and reported variants) the genetic contributions to type 1 diabetes risk. These results suggest that, aside from the MHC, 11p15 (INS), 2q33 (CTLA and other genes), 10p15.1 (IL2RA), and 1p13 (PTPN22), few of these published candidate genes can be replicated. In addition, a total of 1,715 SNPs were selected from the Wellcome Trust Case Control Consortium (WTCCC) GWA study of type 1 diabetes, and 581 SNPs were selected that exhibited association with autoimmune disease and type 2 diabetes loci (45,46). These studies confirmed established loci (above) (47,48) and suggested additional risk conferred by loci on chromosomes 5q31 (TCF7 [P19T], transcription factor 7, T-cell specific, HMG-box), 18q12 (FHOD3, formin homology two domain containing 3), and Xp22 (TLR8/TLR7 toll-like receptor 8/toll-like receptor 7). Type 1 diabetes has many susceptibility loci and therefore pathways in common with autoimmune diseases. With the recent exception of GLIS3 (49), no genetic overlap was found between type 1 diabetes and type 2 diabetes loci (45,46,50). The dataset established by the T1DGC from its Candidate Gene Workshops is available from the NIDDK Central Repository.

Genome-wide linkage.

A number of genome-wide scans for linkage to type 1 diabetes have been reported (4,51–55). All these studies consistently demonstrated linkage of type 1 diabetes to the MHC and specifically to the HLA genes on human chromosome 6p21.3. Additional regions with evidence of linkage have been identified, but many of these regions have not been reproduced in independent studies.

The T1DCG has completed genome-wide linkage studies, including a meta-analysis of data from previous linkage studies with a subset of T1DGC families (4), as well as the largest ASP linkage study in type 1 diabetes (56). Five non-HLA regions (Table 1), and a distinct locus located in the broad HLA linkage peak, showed some evidence of linkage to type 1 diabetes. In general, the peaks delineated broad regions with multiple identified associated loci (www.t1dbase.org). Both INS and CTLA4 are included among the identified regions from linkage. By applying family-based association testing to the linkage data from T1DGC families, one novel region associated with type 1 diabetes was identified, the UBASH3A region on chromosome 21, which has been confirmed in additional datasets (57). UBASH3A is expressed exclusively in T-cells, and animal studies implicate it in T-cell signaling.

View this table:
  • View inline
  • View popup
TABLE 1

Regions with evidence of linkage to type 1 diabetes

Data from T1DGC genome-wide linkage experiments are available to the scientific community by request. Linkage studies in complex human disease are now recognized to have limited sensitivity due to the typical small locus-specific effect sizes. A major focus of current research is on the identification of putative risk genes with rarer or structural variants that could contribute to disease, and it is possible that the regions showing some evidence of linkage harbor variants that are not common SNPs well covered by the currently available genotyping platforms (58).

Genome-wide association (GWA).

During the past few years, GWA studies have represented a paradigm shift in strategies for identifying risk genes for complex (multifactorial) human diseases, including type 1 diabetes (Fig. 1). This research has been made possible by the developments of high-density SNP genotyping arrays, analytical methods that build on the synthesis of population genetics, statistical genetics and genetic epidemiology, and the use of large clinically well-characterized case and control populations, as well as family collections, as that provided by the T1DGC. Careful attention to study design has been essential to eliminate or minimize bias (59–62). Type 1 diabetes genetic research has benefited from the collaboration among investigators, since T1DGC members have provided access to their own large collections to complement the T1DGC collection of families, case subjects, and control subjects. The family collections have proved invaluable not only for replicating case-control results but also for providing additional validation of the selection of control cohorts and their geographical and ethnic group matches to case subjects and investigating parent-of-origin effects.

FIG. 1.
  • Download figure
  • Open in new tab
  • Download powerpoint
FIG. 1.

Contribution and frequency of risk alleles dictate mapping strategies. Linkage studies have demonstrated that multifactorial disorders, including type 1 diabetes, cannot be explained by a limited number of rare variants with large effects, and GWA studies have shown that they cannot be explained by a limited number of common variants of moderate effects. Hence, the most significant gap is currently in detecting low-frequency variants with intermediate effects. MAF, minor allele frequency. Adapted from McCarthy et al. (62).

The recently completed T1DGC GWA study, meta-analysis, and replication study included data from >30,000 individuals (47; http://www.t1dbase.org). Excluding HLA, there were 41 regions in the human genome that provided evidence of association with type 1 diabetes (P < 10−6) (Table 2 and Fig. 2). Fifteen of these 41 regions were previously reported. Of the 26 novel regions, 18 were replicated in independent case-control and family collections (overall P < 5 × 10−8). Four additional SNPs were associated (P < 0.05) in the replication study but failed to reach genome-wide significance (overall P < 5 × 10−8) (Table 2). Over 100 other regions had SNPs that achieved associations with type 1 diabetes at borderline levels of significance (10−6 < P < 10−5). Overall, the T1DGC GWA study and meta-analysis (48,63) provided convincing evidence for >40 non-HLA type 1 diabetes risk loci, with effect sizes of alleles ranging from OR = 2.38 (11p15.5, INS) to OR = 1.05 (17q21.2; SMARCE1). Many of these loci contain genes that affect the immune response (Table 2 and Fig. 2), although alternative, and as yet unknown, pathways may be implicated, including, for example, several genes such as IFIH1, GLIS3, and PTPN2 strongly expressed in β-cells.

View this table:
  • View inline
  • View popup
TABLE 2

Type 1 diabetes–associated loci from GWA studies

FIG. 2.
  • Download figure
  • Open in new tab
  • Download powerpoint
FIG. 2.

GWA studies have significantly accelerated the pace of gene discovery in type 1 diabetes. However, most genetic associations discovered currently are weak. Color-coding designates year of discovery of these candidate genes. The y-axis indicates the best estimate of the OR for risk alleles at each of the indicated loci on the basis of currently published data (47). For each genomic region where convincing association with type 1 diabetes has been reported, the gene of interest or containing the most associated SNP is indicated on the x-axis. The majority of these genes are implicated in the immune response, but several of the non-HLA genes are expressed in human pancreatic islets (marked with *) (www.t1dbase.org) (82). (A high-quality digital representation of this figure is available in the online issue.)

In type 1 diabetes, initial analyses suggest that the risk conferred by non-HLA loci appears to be lower in ASP families (already enriched for high-risk HLA genes) than in sporadic cases (47). For example, it has been observed that some non-HLA SNPs (e.g., TCF7 P19T) show evidence of association with type 1 diabetes only in families that are not HLA-DR3/DR4, the highest HLA risk (64). This result suggests the presence of interaction, or a departure from the multiplicative model (statistical independence of the distributions of genotypes at two nonlinked loci). Further analysis is needed to fully clarify this observation (65). It seems likely that these interactions are small and, as a result, the biological interpretation and impact of such interactions will be difficult.

Follow-up of confirmed genes and variants.

As suggested by the results in Table 2 and Fig. 2, many of the identified non-HLA regions contain candidate genes that are plausible by functional considerations. The median size of the identified regions is 255 kb (range 68 kb to 1.9 Mb), and they contain between 0 and 27 known genes. This suggests that there are >300 candidate genes, if we assume that the causal gene(s) is in the linkage disequilibrium, LD, region. However, since a causal variant in an associated region could affect transcriptional regulation of a gene several thousand base pairs away, owing to the existence of long-range regulatory elements or enhancers, including the number of candidate genes within 0.5 Mb on either side of an associated region brings the number of candidates in the order of 1,000 protein coding genes and ∼500 non-protein coding pseudogenes and RNA-encoding sequences (http://www.t1dbase.org). It is evident that a combination of further more detailed genetic mapping, and genotype-phenotype correlation studies, are necessary for identification of the causal genes within these regions. Some of these studies are underway—a recent initiative on Fine Mapping and Gene Function in Type 1 Diabetes, supported by the National Institutes of Health, supports several different approaches.

Studies to evaluate the molecular differences in gene regulation or function that are due to the supposed causative genetic risk variants (e.g., protein expression level and differences in cellular function between case and control subjects) are needed to explore the mechanisms through which the causal variants generate disease risk. Even when a gene has an obvious potential to explain pathogenesis and to be a component in the disease mechanism, inferences concerning function may be limited. Furthermore, several of the identified loci do not suggest genes with known functions: in fact, some of the associated regions do not contain annotated genes, pointing to potential contribution of long-range gene expression regulatory elements and/or nonprotein coding RNA genes. The vast majority of the currently reported associations also do not point unambiguously to a particular gene, but to several within, and outside, a block of linkage disequilibrium. Thus, genes that may clearly be implicated are often not annotated with respect to function.

In silico analyses and experimental data indicate that up to 50% of conserved cis-acting elements in the human genome may be 1 Mb from target genes, sometimes in the introns of neighboring genes, although most regulatory sequences are within 50 kb of the gene (66). Thus, “true” type 1 diabetes genes may be some distance from the association signal, although the reported association provides an anchor point on which to base functional studies.

Recent data (67) and ongoing investigations indicate that other types of common genetic variation (e.g., copy number or structural variants, such as deletions and duplications) may contribute little to the observed familial clustering of type 1 diabetes risk. However, rare loss-of-function structural gene variants could still make an important contribution to type 1 diabetes risk, through identification of which particular gene in a region of association could harbor a causal variant. With further advances in array and sequencing technologies, it is anticipated that such loss-of-function variants will be identified that influence susceptibility to type 1 diabetes (68).

Inferences from genetic studies.

Each newly identified association of a candidate locus with type 1 diabetes presents new challenges. Finding the causal genes and the causal variants, understanding how they affect disease pathophysiology, and dissecting their contribution to type 1 diabetes risk remain the major undertakings. For some genes, the effect sizes of risk alleles are such that larger collections of patients will be needed to identify the causal genes and limit the number of potential causal variants. Genotype-phenotype fine-mapping studies, however, can be performed with much smaller sample sizes while still achieving convincing statistical evidence (e.g., 42). Each confirmed gene, based on both statistical and functional evidence, provides a key piece of the etiology of type 1 diabetes, regardless of the magnitude of the odds ratio as a measure of the population association.

Combinations of many alleles, possibly hundreds, combine with effects of environmental factors (probably numerous and ubiquitous) to establish the risk profile for type 1 diabetes. Each common variant in isolation has a subtle effect on disease risk, but each may alter a key function in the immune system and its interaction with pancreatic β-cells. Recent discussion of “missing heritability” for complex human traits has considered the source of this variation and appropriate research strategies to detect these genetic effects (61). Studies in populations that are distinct from Europeans or European ancestry, such as populations of recent African ancestry or from Asian countries, are likely to narrow the large chromosomal regions of association identified in current studies and to increase the yield of rare variants (69). Future studies examining rare variants, structural variation, and polymorphisms not well imputed should be helpful in uncovering the remaining missing heritability in type 1 diabetes.

A recent sequencing study provides an example of detection of rare variants in type 1 diabetes. Targeted sequencing in a series of candidate coding regions resulted in IFIH1 being identified as the causal gene in a region associated with type 1 diabetes by GWA studies (58). IFIH1 encodes a cytoplasmic helicase that mediates induction of the interferon response to viral RNA. The discovery of IFIH1 as a contributor to susceptibility to type 1 diabetes has strengthened the hypothesis (70) about a mechanism of disease pathogenesis involving virus-genetic interplay and raised type 1 interferon levels as a cofactor in β-cell destruction. Nonetheless, it should be recognized that a component of the missing heritability (familial aggregation) in type 1 diabetes could well be due to unrecognized intra-familial environmental factors.

Disease pathogenesis.

Contemporary models of pathogenesis of type 1 diabetes support the involvement of two primary dramatis personae: the immune system and the β-cell. The known and newly identified genetic risk factors for type 1 diabetes present exciting opportunities to build on to the current cast of disease mechanisms and networks. Most of the listed genes of interest (Table 2) and those in extended regions are assumed to regulate immune function. Some of these genes, however, may also have roles in the β-cell (insulin being the most obvious example). Another gene, PTPN2, encoding a protein tyrosine phosphatase, was identified as affecting the risk for type 1 diabetes as well as for Crohn disease (47,71). PTPN2 is expressed in immune cells, and its expression is highly regulated by cytokines. However, PTPN2 is expressed also in β-cells, where it modulates interferon (IFN)-γ signal transduction and has been shown to regulate cytokine-induced apoptosis (72). Other candidate genes, such as NOS2A, IL1B, reactive oxygen species scavengers, and candidate genes, identified in large GWA studies of type 2 diabetes, have not been found to be significant contributors to the susceptibility of type 1 diabetes (73).

Recently, new relationships between type 1 diabetes and other autoimmune and inflammatory diseases have been uncovered (63,71,74) (Table 3). Certain HLA haplotypes have long been known to strongly influence genetic predisposition to autoimmunity (75). The contribution of the specific HLA component differs considerably among different autoimmune diseases, but most relate to the function of the adaptive immune response and the binding and presentation of specific peptides. The results of GWA studies have reinforced the belief that type 1 diabetes is an autoimmune disease and that HLA is the major genetic determinant of risk for type 1 diabetes. Importantly, there is a substantial overlap in non-HLA susceptibility loci between type 1 diabetes and other autoimmune diseases (76). This overlap in genetic susceptibility locus (although not necessarily the same causal variant [41]) supports the concept that genetic risk in autoimmunity is determined in part by variation in genes that act on control mechanisms of the immune system. It will be important to identify loci that are distinct to type 1 diabetes (such as the INS locus), since these loci may illuminate type 1 diabetes–specific pathways.

View this table:
  • View inline
  • View popup
TABLE 3

Type 1 diabetes loci showing overlap with risk loci of other immune diseases

The T1DGC is participating in a follow-up study of multiple autoimmune disease consortia. This project identifies significant loci from GWA studies to develop the ImmunoChip, a 200,000-SNP custom array that will provide dense SNP mapping of regions that have been associated (at genome-wide significance) with autoimmune diseases. Both individual and shared regions of the genome will be assayed across autoimmune diseases. These results will be made available through T1DBase, and the data will be made available from the NIDDK Central Repository.

Clinical implications of GWAS results.

Recently, Clayton (65) evaluated the genetic architecture of type 1 diabetes from the GWA meta-analysis study conducted by the T1DGC. It was concluded that the principal value of the newly discovered SNPs would be to increase our understanding of disease pathogenesis, rather than increase our ability to predict disease development on an individual level. Even if we could explain all the familial clustering of the disease (genetic and environmental factors), of which the largest contributor is the HLA, receiver operator curve analyses showed that the positive predictive value is limited, where a trial designed to capture 80% of all future cases has to treat 20% of the general population, of whom only <0.5% will develop type 1 diabetes.

The ultimate objective of genetic research is the translation of genetics findings into advances in clinical care. An obvious question is, “What can a risk gene with an OR in the range of 1.05–1.2 add to clinical treatments for type 1 diabetes?” However, a low OR does not disqualify the encoded protein as a potential drug target. Both PPARG and KCNJ11 are genes that have a low OR for type 2 diabetes risk, yet they encode for major drug targets. A major contribution of genetics to type 1 diabetes will be the identification of important disease pathways that can be examined for new therapeutic targets or biomarkers, including the stratification of subjects at risk for interventions or patients for effective treatment (and prevention of complications).

From GWAS to integrative genomics.

Redefining and stratifying human disease, especially with regard to pharmacological response, in the post-GWA era is essential. A new approach to classifying human disease that both appreciates the uses and limits of reductionism and incorporates the tenets of the nonreductionist approach of complex systems analysis is necessary. Disease phenotypes reflect consequences of variation in complex genetic networks operating within a dynamic environmental framework. Further genetic and functional evaluations, conducted at the highest levels of experimental rigor and repeatability and reproducibility, are necessary to establish and confirm involvement of such networks in type 1 diabetes, to fully elucidate the biological mechanisms of the networks and to identify the strongest risk phenotypes (77,78). Some phenotypes will be regulated by several of the type 1 diabetes genes and may well be precursors of disease, appearing at the earliest stages of the development of type 1 diabetes and perhaps even preceding aggressive autoimmunity (79).

Recently, it was suggested that since the vast majority of disease genes show no tendency to encode highly connected protein hubs but are localized to the functional periphery of networks (80), they are not essential for explaining disease pathogenesis. The counterargument is to consider that cellular networks are modular, consisting of groups of highly interconnected proteins responsible for specific cellular functions. Disease pathogenesis represents the perturbation of probably many specific functional modules caused by a variation in one or more of the components producing recognizable developmental and/or physiological dynamic instability (81). Such a model offers a hypothesis for the emergence of complex or polygenic disorders—a phenotype often correlates with the inability of a particular functional module to carry out its basic function. For extended modules, many different combinations of gene variants might incapacitate the module and lead to the same clinical phenotype. The correlation between disease pathogenesis and functional modules can improve our understanding of cellular networks by helping us to identify which genes are involved in the same cellular function or network module. Pathogenic processes may progress to clinical disease such as type 1 diabetes; alternatively, these processes may be interrupted at subclinical levels. The identification of such phenotypes or disease precursors is therefore a key aim. Comprehensive gene expression studies in cells and tissues relevant to type 1 diabetes will help lead to identification of relevant networks. Importantly, the association of disease with functional networks may also influence our choice of new therapeutic targets.

CONCLUSION

The greatest genetic risk (both increased risk, susceptible, and decreased risk, protective) for type 1 diabetes is conferred by specific alleles, genotypes, and haplotypes of the HLA class II (and class I) genes. There are currently about 50 non-HLA region loci that also affect the type 1 diabetes risk. Many of the assumed functions of the non-HLA genes of interest suggest that variants at these loci act in concert on the adaptive and innate immune systems to initiate, magnify, and perpetuate β-cell destruction. The clues that genetic studies provide will eventually help lead us to identify how β-cell destruction is influenced by environmental factors. While there is extensive overlap between type 1 diabetes and other immune-mediated diseases, it appears that type 1 and type 2 diabetes are genetically distinct entities. These observations may suggest ways to help identify causal gene(s) and, ultimately, a set of disease-associated variants defined on specific haplotypes. Unlike other complex human diseases, relatively little familial clustering remains to be explained for type 1 diabetes. The remaining missing heritability for type 1 diabetes is likely to be explained by as yet unmapped common variants, rare variants, structural polymorphisms, and gene-gene and/or gene-environmental interactions, in which we can expect epigenetic effects to play a role. The examination of the type 1 diabetes genes and their pathways may reveal the earliest pathogenic mechanisms that result in the engagement of the innate and adaptive immune systems to produce massive β-cell destruction and clinical disease. The resources established by the international T1DGC are available to the research community and provide a basis for future discovery of genes that regulate the earliest events in type 1 diabetes etiology—potential targets for intervention or biomarkers for monitoring the effects and outcomes of potential therapeutic agents.

ACKNOWLEDGMENTS

This research uses resources provided by the Type 1 Diabetes Genetics Consortium, a collaborative clinical study sponsored by the National Institute of Allergy and Infectious Diseases (NIAID), National Human Genome Research Institute (NHGRI), National Institute of Child Health and Human Development (NICHD), the Wellcome Trust and the National Institute for Health Research Cambridge Biomedical Centre, the Juvenile Diabetes Research Foundation International (JDRF), and Grant U01 DK062418 from the National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK).

No potential conflicts of interest relevant to this article were reported.

Footnotes

  • See accompanying commentary, p. 1575.

  • Received January 16, 2010.
  • Accepted April 5, 2010.
  • © 2010 by the American Diabetes Association.

Readers may use this article as long as the work is properly cited, the use is educational and not for profit, and the work is not altered. See http://creativecommons.org/licenses/by-nc-nd/3.0/ for details.

REFERENCES

  1. ↵
    1. Rich SS,
    2. Concannon P,
    3. Erlich H,
    4. Julier C,
    5. Morahan G,
    6. Nerup J,
    7. Pociot F,
    8. Todd JA
    : The Type 1 Diabetes Genetics Consortium. Ann N Y Acad Sci 2006;1079:1–8
    OpenUrlCrossRefPubMedWeb of Science
  2. ↵
    1. Hirschhorn JN
    : Genetic epidemiology of type 1 diabetes. Pediatr Diabetes 2003;4:87–100
    OpenUrlCrossRefPubMed
  3. ↵
    1. Hyttinen V,
    2. Kaprio J,
    3. Kinnunen L,
    4. Koskenvuo M,
    5. Tuomilehto J
    : Genetic liability of type 1 diabetes and the onset age among 22,650 young Finnish twin pairs: a nationwide follow-up study. Diabetes 2003;52:1052–1055
    OpenUrlAbstract/FREE Full Text
  4. ↵
    1. Concannon P,
    2. Erlich HA,
    3. Julier C,
    4. Morahan G,
    5. Nerup J,
    6. Pociot F,
    7. Todd JA,
    8. Rich SS
    Type 1 Diabetes Genetics Consortium. Type 1 diabetes: evidence for susceptibility loci from four genome-wide linkage scans in 1,435 multiplex families. Diabetes 2005;54:2995–3001
    OpenUrlAbstract/FREE Full Text
  5. ↵
    1. Rich SS
    : Mapping genes in diabetes: genetic epidemiological perspective. Diabetes 1990;39:1315–1319
    OpenUrlAbstract/FREE Full Text
  6. ↵
    1. Horton R,
    2. Wilming L,
    3. Rand V,
    4. Lovering RC,
    5. Bruford EA,
    6. Khodiyar VK,
    7. Lush MJ,
    8. Povey S,
    9. Talbot CC Jr,
    10. Wright MW,
    11. Wain HM,
    12. Trowsdale J,
    13. Ziegler A,
    14. Beck S
    : Gene map of the extended human MHC. Nat Rev Genet 2004;5:889–899
    OpenUrlCrossRefPubMedWeb of Science
  7. ↵
    The MHC sequencing consortium. Complete sequence and gene map of a human major histocompatibility complex. The MHC sequencing consortium. Nature 1999;401:921–923
    OpenUrlCrossRefPubMedWeb of Science
  8. ↵
    TEDDY Study Group. The Environmental Determinants of Diabetes in the Young (TEDDY) study: study design. Pediatr Diabetes 2007;8:286–298
    OpenUrlCrossRefPubMed
  9. ↵
    The Diabetes Prevention Trial-Type 1 diabetes (DPT-1): implementation of screening and staging of relatives. DPT-1 Study Group. Transplant Proc 1995;27:3377
    OpenUrlPubMed
  10. ↵
    1. Brown WM,
    2. Pierce J,
    3. Hilner JE,
    4. Perdue LH,
    5. Lohman K,
    6. Li L,
    7. Venkatesh RB,
    8. Hunt S,
    9. Mychaleckyj JC,
    10. Deloukas P
    : Overview of the MHC fine mapping data. Diabetes Obes Metab 2009;11(Suppl. 1):2–7
    OpenUrlCrossRefPubMedWeb of Science
  11. ↵
    1. Erlich H,
    2. Valdes AM,
    3. Noble J,
    4. Carlson JA,
    5. Varney M,
    6. Concannon P,
    7. Mychaleckyj JC,
    8. Todd JA,
    9. Bonella P,
    10. Fear AL,
    11. Lavant E,
    12. Louey A,
    13. Moonsamy P
    Type 1 Diabetes Genetics Consortium. HLA DR-DQ haplotypes and genotypes and type 1 diabetes risk: analysis of the type 1 diabetes genetics consortium families. Diabetes 2008;57:1084–1092
    OpenUrlAbstract/FREE Full Text
  12. ↵
    1. Aly TA,
    2. Ide A,
    3. Jahromi MM,
    4. Barker JM,
    5. Fernando MS,
    6. Babu SR,
    7. Yu L,
    8. Miao D,
    9. Erlich HA,
    10. Fain PR,
    11. Barriga KJ,
    12. Norris JM,
    13. Rewers MJ,
    14. Eisenbarth GS
    : Extreme genetic risk for type 1A diabetes. Proc Natl Acad Sci U S A 2006;103:14074–14079
    OpenUrlAbstract/FREE Full Text
  13. ↵
    1. Howson JM,
    2. Walker NM,
    3. Clayton D,
    4. Todd JA
    : Confirmation of HLA class II independent type 1 diabetes associations in the major histocompatibility complex including HLA-B and HLA-A. Diabetes Obes Metab 2009;11(Suppl. 1):31–45
    OpenUrlCrossRefPubMedWeb of Science
  14. ↵
    1. Nejentsev S,
    2. Howson JM,
    3. Walker NM,
    4. Szeszko J,
    5. Field SF,
    6. Stevens HE,
    7. Reynolds P,
    8. Hardy M,
    9. King E,
    10. Masters J,
    11. Hulme J,
    12. Maier LM,
    13. Smyth D,
    14. Bailey R,
    15. Cooper JD,
    16. Ribas G,
    17. Campbell RD,
    18. Clayton DG,
    19. Todd JA
    Wellcome Trust Case Control Consortium. Localization of type 1 diabetes susceptibility to the MHC class I genes HLA-B and HLA-A. Nature 2007;450:887–892
    OpenUrlCrossRefPubMedWeb of Science
  15. ↵
    1. Badenhoop K,
    2. Kahles H,
    3. Seidl C,
    4. Kordonouri O,
    5. Lopez ER,
    6. Walter M,
    7. Rosinger S,
    8. Ziegler A,
    9. Bohm BO
    : MHC-environment interactions leading to type 1 diabetes: feasibility of an analysis of HLA DR-DQ alleles in relation to manifestation periods and dates of birth. Diabetes Obes Metab 2009;11(Suppl. 1):88–91
    OpenUrlCrossRefPubMed
  16. ↵
    1. Bronson PG,
    2. Ramsay PP,
    3. Thomson G,
    4. Barcellos LF
    : Analysis of maternal-offspring HLA compatibility, parent-of-origin and non-inherited maternal effects for the classical HLA loci in type 1 diabetes. Diabetes Obes Metab 2009;11(Suppl. 1):74–83
    OpenUrlCrossRefPubMed
  17. ↵
    1. Kahles H,
    2. Kordonouri O,
    3. Ramos Lopez E,
    4. Walter M,
    5. Rosinger S,
    6. Boehm BO,
    7. Badenhoop K,
    8. Seidl C,
    9. Ziegler A
    : Mating in parents of type 1 diabetes families as a function of the HLA DR-DQ haplotype. Diabetes Obes Metab 2009;11(Suppl. 1):84–87
    OpenUrlCrossRefPubMed
  18. ↵
    1. McKinnon E,
    2. Morahan G,
    3. Nolan D,
    4. James I
    : Association of MHC SNP genotype with susceptibility to type 1 diabetes: a modified survival approach. Diabetes Obes Metab 2009;11(Suppl. 1):92–100
    OpenUrlCrossRefPubMed
  19. ↵
    1. Lee KH,
    2. Wucherpfennig KW,
    3. Wiley DC
    : Structure of a human insulin peptide-HLA-DQ8 complex and susceptibility to type 1 diabetes. Nat Immunol 2001;2:501–507
    OpenUrlCrossRefPubMedWeb of Science
  20. ↵
    1. Skowera A,
    2. Ellis RJ,
    3. Varela-Calviño R,
    4. Arif S,
    5. Huang GC,
    6. Van-Krinks C,
    7. Zaremba A,
    8. Rackham C,
    9. Allen JS,
    10. Tree TI,
    11. Zhao M,
    12. Dayan CM,
    13. Sewell AK,
    14. Unger WW,
    15. Unger W,
    16. Drijfhout JW,
    17. Ossendorp F,
    18. Roep BO,
    19. Peakman M
    : CTLs are targeted to kill beta cells in patients with type 1 diabetes through recognition of a glucose-regulated preproinsulin epitope. J Clin Invest 2008;118:3390–3402
    OpenUrlPubMedWeb of Science
  21. ↵
    1. Fourlanos S,
    2. Varney MD,
    3. Tait BD,
    4. Morahan G,
    5. Honeyman MC,
    6. Colman PG,
    7. Harrison LC
    : The rising incidence of type 1 diabetes is accounted for by cases with lower-risk human leukocyte antigen genotypes. Diabetes Care 2008;31:1546–1549
    OpenUrlAbstract/FREE Full Text
  22. ↵
    1. Gillespie KM,
    2. Bain SC,
    3. Barnett AH,
    4. Bingley PJ,
    5. Christie MR,
    6. Gill GV,
    7. Gale EA
    : The rising incidence of childhood type 1 diabetes and reduced contribution of high-risk HLA haplotypes. Lancet 2004;364:1699–1700
    OpenUrlCrossRefPubMedWeb of Science
  23. ↵
    1. Hermann R,
    2. Knip M,
    3. Veijola R,
    4. Simell O,
    5. Laine AP,
    6. Akerblom HK,
    7. Groop PH,
    8. Forsblom C,
    9. Pettersson-Fernholm K,
    10. Ilonen J
    FinnDiane Study Group. Temporal changes in the frequencies of HLA genotypes in patients with type 1 diabetes: indication of an increased environmental pressure? Diabetologia 2003;46:420–425
    OpenUrlPubMedWeb of Science
  24. ↵
    1. Bell GI,
    2. Horita S,
    3. Karam JH
    : A polymorphic locus near the human insulin gene is associated with insulin-dependent diabetes mellitus. Diabetes 1984;33:176–183
    OpenUrlAbstract/FREE Full Text
  25. ↵
    1. Pugliese A,
    2. Zeller M,
    3. Fernandez A Jr,
    4. Zalcberg LJ,
    5. Bartlett RJ,
    6. Ricordi C,
    7. Pietropaolo M,
    8. Eisenbarth GS,
    9. Bennett ST,
    10. Patel DD
    : The insulin gene is transcribed in the human thymus and transcription levels correlated with allelic variation at the INS VNTR-IDDM2 susceptibility locus for type 1 diabetes. Nat Genet 1997;15:293–297
    OpenUrlCrossRefPubMedWeb of Science
  26. ↵
    1. Vafiadis P,
    2. Bennett ST,
    3. Todd JA,
    4. Nadeau J,
    5. Grabs R,
    6. Goodyer CG,
    7. Wickramasinghe S,
    8. Colle E,
    9. Polychronakos C
    : Insulin expression in human thymus is modulated by INS VNTR alleles at the IDDM2 locus. Nat Genet 1997;15:289–292
    OpenUrlCrossRefPubMedWeb of Science
  27. ↵
    1. Kent SC,
    2. Chen Y,
    3. Bregoli L,
    4. Clemmings SM,
    5. Kenyon NS,
    6. Ricordi C,
    7. Hering BJ,
    8. Hafler DA
    : Expanded T cells from pancreatic lymph nodes of type 1 diabetic subjects recognize an insulin epitope. Nature 2005;435:224–228
    OpenUrlCrossRefPubMedWeb of Science
  28. ↵
    1. Zhang L,
    2. Nakayama M,
    3. Eisenbarth GS
    : Insulin as an autoantigen in NOD/human diabetes. Curr Opin Immunol 2008;20:111–118
    OpenUrlCrossRefPubMedWeb of Science
  29. ↵
    1. Kristiansen OP,
    2. Larsen ZM,
    3. Pociot F
    : CTLA-4 in autoimmune diseases: a general susceptibility gene to autoimmunity? Genes Immun 2000;1:170–184
    OpenUrlCrossRefPubMedWeb of Science
  30. ↵
    1. Nisticò L,
    2. Buzzetti R,
    3. Pritchard LE,
    4. Van der Auwera B,
    5. Giovannini C,
    6. Bosi E,
    7. Larrad MT,
    8. Rios MS,
    9. Chow CC,
    10. Cockram CS,
    11. Jacobs K,
    12. Mijovic C,
    13. Bain SC,
    14. Barnett AH,
    15. Vandewalle CL,
    16. Schuit F,
    17. Gorus FK,
    18. Tosi R,
    19. Pozzilli P,
    20. Todd JA
    : The CTLA-4 gene region of chromosome 2q33 is linked to, and associated with, type 1 diabetes. Belgian Diabetes Registry. Hum Mol Genet 1996;5:1075–1080
    OpenUrlAbstract/FREE Full Text
  31. ↵
    1. Ueda H,
    2. Howson JM,
    3. Esposito L,
    4. Heward J,
    5. Snook H,
    6. Chamberlain G,
    7. Rainbow DB,
    8. Hunter KM,
    9. Smith AN,
    10. Di Genova G,
    11. Herr MH,
    12. Dahlman I,
    13. Payne F,
    14. Smyth D,
    15. Lowe C,
    16. Twells RC,
    17. Howlett S,
    18. Healy B,
    19. Nutland S,
    20. Rance HE,
    21. Everett V,
    22. Smink LJ,
    23. Lam AC,
    24. Cordell HJ,
    25. Walker NM,
    26. Bordin C,
    27. Hulme J,
    28. Motzo C,
    29. Cucca F,
    30. Hess JF,
    31. Metzker ML,
    32. Rogers J,
    33. Gregory S,
    34. Allahabadia A,
    35. Nithiyananthan R,
    36. Tuomilehto-Wolf E,
    37. Tuomilehto J,
    38. Bingley P,
    39. Gillespie KM,
    40. Undlien DE,
    41. Rønningen KS,
    42. Guja C,
    43. Ionescu-Tîrgovişte C,
    44. Savage DA,
    45. Maxwell AP,
    46. Carson DJ,
    47. Patterson CC,
    48. Franklyn JA,
    49. Clayton DG,
    50. Peterson LB,
    51. Wicker LS,
    52. Todd JA,
    53. Gough SC
    : Association of the T-cell regulatory gene CTLA4 with susceptibility to autoimmune disease. Nature 2003;423:506–511
    OpenUrlCrossRefPubMedWeb of Science
  32. ↵
    1. Wing K,
    2. Onishi Y,
    3. Prieto-Martin P,
    4. Yamaguchi T,
    5. Miyara M,
    6. Fehervari Z,
    7. Nomura T,
    8. Sakaguchi S
    : CTLA-4 control over Foxp3+ regulatory T cell function. Science 2008;322:271–275
    OpenUrlAbstract/FREE Full Text
  33. ↵
    1. Hunter K,
    2. Rainbow D,
    3. Plagnol V,
    4. Todd JA,
    5. Peterson LB,
    6. Wicker LS
    : Interactions between Idd5.1/Ctla4 and other type 1 diabetes genes. J Immunol 2007;179:8341–8349
    OpenUrlAbstract/FREE Full Text
  34. ↵
    1. Bottini N,
    2. Musumeci L,
    3. Alonso A,
    4. Rahmouni S,
    5. Nika K,
    6. Rostamkhani M,
    7. MacMurray J,
    8. Meloni GF,
    9. Lucarelli P,
    10. Pellecchia M,
    11. Eisenbarth GS,
    12. Comings D,
    13. Mustelin T
    : A functional variant of lymphoid tyrosine phosphatase is associated with type I diabetes. Nat Genet 2004;36:337–338
    OpenUrlCrossRefPubMedWeb of Science
  35. ↵
    1. Begovich AB,
    2. Carlton VE,
    3. Honigberg LA,
    4. Schrodi SJ,
    5. Chokkalingam AP,
    6. Alexander HC,
    7. Ardlie KG,
    8. Huang Q,
    9. Smith AM,
    10. Spoerke JM,
    11. Conn MT,
    12. Chang M,
    13. Chang SY,
    14. Saiki RK,
    15. Catanese JJ,
    16. Leong DU,
    17. Garcia VE,
    18. McAllister LB,
    19. Jeffery DA,
    20. Lee AT,
    21. Batliwalla F,
    22. Remmers E,
    23. Criswell LA,
    24. Seldin MF,
    25. Kastner DL,
    26. Amos CI,
    27. Sninsky JJ,
    28. Gregersen PK
    : A missense single-nucleotide polymorphism in a gene encoding a protein tyrosine phosphatase (PTPN22) is associated with rheumatoid arthritis. Am J Hum Genet 2004;75:330–337
    OpenUrlCrossRefPubMedWeb of Science
  36. ↵
    1. Vella A,
    2. Cooper JD,
    3. Lowe CE,
    4. Walker N,
    5. Nutland S,
    6. Widmer B,
    7. Jones R,
    8. Ring SM,
    9. McArdle W,
    10. Pembrey ME,
    11. Strachan DP,
    12. Dunger DB,
    13. Twells RC,
    14. Clayton DG,
    15. Todd JA
    : Localization of a type 1 diabetes locus in the IL2RA/CD25 region by use of tag single-nucleotide polymorphisms. Am J Hum Genet 2005;76:773–779
    OpenUrlCrossRefPubMedWeb of Science
  37. ↵
    1. Corthay A
    : How do regulatory T cells work? Scand J Immunol 2009;70:326–336
    OpenUrlCrossRefPubMedWeb of Science
  38. ↵
    1. Malek TR,
    2. Bayer AL
    : Tolerance, not immunity, crucially depends on IL-2. Nat Rev Immunol 2004;4:665–674
    OpenUrlCrossRefPubMedWeb of Science
  39. ↵
    1. Salomon B,
    2. Lenschow DJ,
    3. Rhee L,
    4. Ashourian N,
    5. Singh B,
    6. Sharpe A,
    7. Bluestone JA
    : B7/CD28 costimulation is essential for the homeostasis of the CD4+CD25+ immunoregulatory T cells that control autoimmune diabetes. Immunity 2000;12:431–440
    OpenUrlCrossRefPubMedWeb of Science
  40. ↵
    1. Viglietta V,
    2. Baecher-Allan C,
    3. Weiner HL,
    4. Hafler DA
    : Loss of functional suppression by CD4+CD25+ regulatory T cells in patients with multiple sclerosis. J Exp Med 2004;199:971–979
    OpenUrlAbstract/FREE Full Text
  41. ↵
    1. Maier LM,
    2. Lowe CE,
    3. Cooper J,
    4. Downes K,
    5. Anderson DE,
    6. Severson C,
    7. Clark PM,
    8. Healy B,
    9. Walker N,
    10. Aubin C,
    11. Oksenberg JR,
    12. Hauser SL,
    13. Compston A,
    14. Sawcer S,
    15. De Jager PL,
    16. Wicker LS,
    17. Todd JA,
    18. Hafler DA
    : IL2RA genetic heterogeneity in multiple sclerosis and type 1 diabetes susceptibility and soluble interleukin-2 receptor production. PLoS Genet 2009;5:e1000322
    OpenUrlCrossRefPubMed
  42. ↵
    1. Dendrou CA,
    2. Plagnol V,
    3. Fung E,
    4. Yang JH,
    5. Downes K,
    6. Cooper JD,
    7. Nutland S,
    8. Coleman G,
    9. Himsworth M,
    10. Hardy M,
    11. Burren O,
    12. Healy B,
    13. Walker NM,
    14. Koch K,
    15. Ouwehand WH,
    16. Bradley JR,
    17. Wareham NJ,
    18. Todd JA,
    19. Wicker LS
    : Cell-specific protein phenotypes for the autoimmune locus IL2RA using a genotype-selectable human bioresource. Nat Genet 2009;41:1011–1015
    OpenUrlCrossRefPubMedWeb of Science
  43. ↵
    1. Yamanouchi J,
    2. Rainbow D,
    3. Serra P,
    4. Howlett S,
    5. Hunter K,
    6. Garner VE,
    7. Gonzalez-Munoz A,
    8. Clark J,
    9. Veijola R,
    10. Cubbon R,
    11. Chen SL,
    12. Rosa R,
    13. Cumiskey AM,
    14. Serreze DV,
    15. Gregory S,
    16. Rogers J,
    17. Lyons PA,
    18. Healy B,
    19. Smink LJ,
    20. Todd JA,
    21. Peterson LB,
    22. Wicker LS,
    23. Santamaria P
    : Interleukin-2 gene variation impairs regulatory T cell function and causes autoimmunity. Nat Genet 2007;39:329–337
    OpenUrlCrossRefPubMedWeb of Science
  44. ↵
    1. Pociot F,
    2. McDermott MF
    : Genetics of type 1 diabetes mellitus. Genes Immun 2002;3:235–249
    OpenUrlCrossRefPubMedWeb of Science
  45. ↵
    1. Cooper JD,
    2. Walker NM,
    3. Healy BC,
    4. Smyth DJ,
    5. Downes K,
    6. Todd JA
    Type I Diabetes Genetics Consortium. Analysis of 55 autoimmune disease and type II diabetes loci: further confirmation of chromosomes 4q27, 12q13.2 and 12q24.13 as type I diabetes loci, and support for a new locus, 12q13.3-q14.1. Genes Immun 2009;10:S95–S120
    OpenUrlCrossRefPubMedWeb of Science
  46. ↵
    1. Cooper JD,
    2. Walker NM,
    3. Smyth DJ,
    4. Downes K,
    5. Healy BC,
    6. Todd JA
    Type I Diabetes Genetics Consortium. Follow-up of 1715 SNPs from the Wellcome Trust Case Control Consortium genome-wide association study in type I diabetes families. Genes Immun 2009;10:S85–S94
    OpenUrlCrossRefPubMed
  47. ↵
    1. Barrett JC,
    2. Clayton DG,
    3. Concannon P,
    4. Akolkar B,
    5. Cooper JD,
    6. Erlich HA,
    7. Julier C,
    8. Morahan G,
    9. Nerup J,
    10. Nierras C,
    11. Plagnol V,
    12. Pociot F,
    13. Schuilenburg H,
    14. Smyth DJ,
    15. Stevens H,
    16. Todd JA,
    17. Walker NM,
    18. Rich SS
    : Genome-wide association study and meta-analysis find that over 40 loci affect risk of type 1 diabetes. Nat Genet 2009;41:703–707
    OpenUrlCrossRefPubMedWeb of Science
  48. ↵
    1. Cooper JD,
    2. Smyth DJ,
    3. Smiles AM,
    4. Plagnol V,
    5. Walker NM,
    6. Allen JE,
    7. Downes K,
    8. Barrett JC,
    9. Healy BC,
    10. Mychaleckyj JC,
    11. Warram JH,
    12. Todd JA
    : Meta-analysis of genome-wide association study data identifies additional type 1 diabetes risk loci. Nat Genet 2008;40:1399–1401
    OpenUrlCrossRefPubMedWeb of Science
  49. ↵
    1. Dupuis J,
    2. Langenberg C,
    3. Prokopenko I,
    4. Saxena R,
    5. Soranzo N,
    6. Jackson AU,
    7. Wheeler E,
    8. Glazer NL,
    9. Bouatia-Naji N,
    10. Gloyn AL,
    11. Lindgren CM,
    12. Mägi R,
    13. Morris AP,
    14. Randall J,
    15. Johnson T,
    16. Elliott P,
    17. Rybin D,
    18. Thorleifsson G,
    19. Steinthorsdottir V,
    20. Henneman P,
    21. Grallert H,
    22. Dehghan A,
    23. Hottenga JJ,
    24. Franklin CS,
    25. Navarro P,
    26. Song K,
    27. Goel A,
    28. Perry JR,
    29. Egan JM,
    30. Lajunen T,
    31. Grarup N,
    32. Sparsø T,
    33. Doney A,
    34. Voight BF,
    35. Stringham HM,
    36. Li M,
    37. Kanoni S,
    38. Shrader P,
    39. Cavalcanti-Proença C,
    40. Kumari M,
    41. Qi L,
    42. Timpson NJ,
    43. Gieger C,
    44. Zabena C,
    45. Rocheleau G,
    46. Ingelsson E,
    47. An P,
    48. O'Connell J,
    49. Luan J,
    50. Elliott A,
    51. McCarroll SA,
    52. Payne F,
    53. Roccasecca RM,
    54. Pattou F,
    55. Sethupathy P,
    56. Ardlie K,
    57. Ariyurek Y,
    58. Balkau B,
    59. Barter P,
    60. Beilby JP,
    61. Ben-Shlomo Y,
    62. Benediktsson R,
    63. Bennett AJ,
    64. Bergmann S,
    65. Bochud M,
    66. Boerwinkle E,
    67. Bonnefond A,
    68. Bonnycastle LL,
    69. Borch-Johnsen K,
    70. Böttcher Y,
    71. Brunner E,
    72. Bumpstead SJ,
    73. Charpentier G,
    74. Chen YD,
    75. Chines P,
    76. Clarke R,
    77. Coin LJ,
    78. Cooper MN,
    79. Cornelis M,
    80. Crawford G,
    81. Crisponi L,
    82. Day IN,
    83. de Geus EJ,
    84. Delplanque J,
    85. Dina C,
    86. Erdos MR,
    87. Fedson AC,
    88. Fischer-Rosinsky A,
    89. Forouhi NG,
    90. Fox CS,
    91. Frants R,
    92. Franzosi MG,
    93. Galan P,
    94. Goodarzi MO,
    95. Graessler J,
    96. Groves CJ,
    97. Grundy S,
    98. Gwilliam R,
    99. Gyllensten U,
    100. Hadjadj S,
    101. Hallmans G,
    102. Hammond N,
    103. Han X,
    104. Hartikainen AL,
    105. Hassanali N,
    106. Hayward C,
    107. Heath SC,
    108. Hercberg S,
    109. Herder C,
    110. Hicks AA,
    111. Hillman DR,
    112. Hingorani AD,
    113. Hofman A,
    114. Hui J,
    115. Hung J,
    116. Isomaa B,
    117. Johnson PR,
    118. Jørgensen T,
    119. Jula A,
    120. Kaakinen M,
    121. Kaprio J,
    122. Kesaniemi YA,
    123. Kivimaki M,
    124. Knight B,
    125. Koskinen S,
    126. Kovacs P,
    127. Kyvik KO,
    128. Lathrop GM,
    129. Lawlor DA,
    130. Le Bacquer O,
    131. Lecoeur C,
    132. Li Y,
    133. Lyssenko V,
    134. Mahley R,
    135. Mangino M,
    136. Manning AK,
    137. Martínez-Larrad MT,
    138. McAteer JB,
    139. McCulloch LJ,
    140. McPherson R,
    141. Meisinger C,
    142. Melzer D,
    143. Meyre D,
    144. Mitchell BD,
    145. Morken MA,
    146. Mukherjee S,
    147. Naitza S,
    148. Narisu N,
    149. Neville MJ,
    150. Oostra BA,
    151. Orrù M,
    152. Pakyz R,
    153. Palmer CN,
    154. Paolisso G,
    155. Pattaro C,
    156. Pearson D,
    157. Peden JF,
    158. Pedersen NL,
    159. Perola M,
    160. Pfeiffer AF,
    161. Pichler I,
    162. Polasek O,
    163. Posthuma D,
    164. Potter SC,
    165. Pouta A,
    166. Province MA,
    167. Psaty BM,
    168. Rathmann W,
    169. Rayner NW,
    170. Rice K,
    171. Ripatti S,
    172. Rivadeneira F,
    173. Roden M,
    174. Rolandsson O,
    175. Sandbaek A,
    176. Sandhu M,
    177. Sanna S,
    178. Sayer AA,
    179. Scheet P,
    180. Scott LJ,
    181. Seedorf U,
    182. Sharp SJ,
    183. Shields B,
    184. Sigurethsson G,
    185. Sijbrands EJ,
    186. Silveira A,
    187. Simpson L,
    188. Singleton A,
    189. Smith NL,
    190. Sovio U,
    191. Swift A,
    192. Syddall H,
    193. Syvänen AC,
    194. Tanaka T,
    195. Thorand B,
    196. Tichet J,
    197. Tönjes A,
    198. Tuomi T,
    199. Uitterlinden AG,
    200. van Dijk KW,
    201. van Hoek M,
    202. Varma D,
    203. Visvikis-Siest S,
    204. Vitart V,
    205. Vogelzangs N,
    206. Waeber G,
    207. Wagner PJ,
    208. Walley A,
    209. Walters GB,
    210. Ward KL,
    211. Watkins H,
    212. Weedon MN,
    213. Wild SH,
    214. Willemsen G,
    215. Witteman JC,
    216. Yarnell JW,
    217. Zeggini E,
    218. Zelenika D,
    219. Zethelius B,
    220. Zhai G,
    221. Zhao JH,
    222. Zillikens MC,
    223. DIAGRAM Consortium, GIANT Consortium, Global BPgen Consortium,
    224. Borecki IB,
    225. Loos RJ,
    226. Meneton P,
    227. Magnusson PK,
    228. Nathan DM,
    229. Williams GH,
    230. Hattersley AT,
    231. Silander K,
    232. Salomaa V,
    233. Smith GD,
    234. Bornstein SR,
    235. Schwarz P,
    236. Spranger J,
    237. Karpe F,
    238. Shuldiner AR,
    239. Cooper C,
    240. Dedoussis GV,
    241. Serrano-Ríos M,
    242. Morris AD,
    243. Lind L,
    244. Palmer LJ,
    245. Hu FB,
    246. Franks PW,
    247. Ebrahim S,
    248. Marmot M,
    249. Kao WH,
    250. Pankow JS,
    251. Sampson MJ,
    252. Kuusisto J,
    253. Laakso M,
    254. Hansen T,
    255. Pedersen O,
    256. Pramstaller PP,
    257. Wichmann HE,
    258. Illig T,
    259. Rudan I,
    260. Wright AF,
    261. Stumvoll M,
    262. Campbell H,
    263. Wilson JF,
    264. Anders Hamsten on behalf of Procardis Consortium, MAGIC investigators,
    265. Bergman RN,
    266. Buchanan TA,
    267. Collins FS,
    268. Mohlke KL,
    269. Tuomilehto J,
    270. Valle TT,
    271. Altshuler D,
    272. Rotter JI,
    273. Siscovick DS,
    274. Penninx BW,
    275. Boomsma DI,
    276. Deloukas P,
    277. Spector TD,
    278. Frayling TM,
    279. Ferrucci L,
    280. Kong A,
    281. Thorsteinsdottir U,
    282. Stefansson K,
    283. van Duijn CM,
    284. Aulchenko YS,
    285. Cao A,
    286. Scuteri A,
    287. Schlessinger D,
    288. Uda M,
    289. Ruokonen A,
    290. Jarvelin MR,
    291. Waterworth DM,
    292. Vollenweider P,
    293. Peltonen L,
    294. Mooser V,
    295. Abecasis GR,
    296. Wareham NJ,
    297. Sladek R,
    298. Froguel P,
    299. Watanabe RM,
    300. Meigs JB,
    301. Groop L,
    302. Boehnke M,
    303. McCarthy MI,
    304. Florez JC,
    305. Barroso I
    : New genetic loci implicated in fasting glucose homeostasis and their impact on type 2 diabetes risk. Nat Genet 2010;42:105–116
    OpenUrlCrossRefPubMedWeb of Science
  50. ↵
    1. Raj SM,
    2. Howson JM,
    3. Walker NM,
    4. Cooper JD,
    5. Smyth DJ,
    6. Field SF,
    7. Stevens HE,
    8. Todd JA
    : No association of multiple type 2 diabetes loci with type 1 diabetes. Diabetologia 2009;52:2109–2116
    OpenUrlCrossRefPubMedWeb of Science
  51. ↵
    1. Cox NJ,
    2. Wapelhorst B,
    3. Morrison VA,
    4. Johnson L,
    5. Pinchuk L,
    6. Spielman RS,
    7. Todd JA,
    8. Concannon P
    : Seven regions of the genome show evidence of linkage to type 1 diabetes in a consensus analysis of 767 multiplex families. Am J Hum Genet 2001;69:820–830
    OpenUrlCrossRefPubMedWeb of Science
  52. ↵
    1. Davies JL,
    2. Kawaguchi Y,
    3. Bennett ST,
    4. Copeman JB,
    5. Cordell HJ,
    6. Pritchard LE,
    7. Reed PW,
    8. Gough SC,
    9. Jenkins SC,
    10. Palmer SM
    : A genome-wide search for human type 1 diabetes susceptibility genes. Nature 1994;371:130–136
    OpenUrlCrossRefPubMedWeb of Science
  53. ↵
    1. Hashimoto L,
    2. Habita C,
    3. Beressi JP,
    4. Delepine M,
    5. Besse C,
    6. Cambon-Thomsen A,
    7. Deschamps I,
    8. Rotter JI,
    9. Djoulah S,
    10. James MR
    : Genetic mapping of a susceptibility locus for insulin-dependent diabetes mellitus on chromosome 11q. Nature 1994;371:161–164
    OpenUrlCrossRefPubMed
  54. ↵
    1. Mein CA,
    2. Esposito L,
    3. Dunn MG,
    4. Johnson GC,
    5. Timms AE,
    6. Goy JV,
    7. Smith AN,
    8. Sebag-Montefiore L,
    9. Merriman ME,
    10. Wilson AJ,
    11. Pritchard LE,
    12. Cucca F,
    13. Barnett AH,
    14. Bain SC,
    15. Todd JA
    : A search for type 1 diabetes susceptibility genes in families from the United Kingdom. Nat Genet 1998;19:297–300
    OpenUrlCrossRefPubMedWeb of Science
  55. ↵
    1. Nerup J,
    2. Pociot F
    European Consortium for IDDM Studies. A genomewide scan for type 1-diabetes susceptibility in Scandinavian families: identification of new loci with evidence of interactions. Am J Hum Genet 2001;69:1301–1313
    OpenUrlCrossRefPubMedWeb of Science
  56. ↵
    1. Concannon P,
    2. Chen WM,
    3. Julier C,
    4. Morahan G,
    5. Akolkar B,
    6. Erlich HA,
    7. Hilner JE,
    8. Nerup J,
    9. Nierras C,
    10. Pociot F,
    11. Todd JA,
    12. Rich SS
    Type 1 Diabetes Genetics Consortium. Genome-wide scan for linkage to type 1 diabetes in 2,496 multiplex families from the Type 1 Diabetes Genetics Consortium. Diabetes 2009;58:1018–1022
    OpenUrlAbstract/FREE Full Text
  57. ↵
    1. Concannon P,
    2. Onengut-Gumuscu S,
    3. Todd JA,
    4. Smyth DJ,
    5. Pociot F,
    6. Bergholdt R,
    7. Akolkar B,
    8. Erlich HA,
    9. Hilner JE,
    10. Julier C,
    11. Morahan G,
    12. Nerup J,
    13. Nierras CR,
    14. Chen WM,
    15. Rich SS
    Type 1 Diabetes Genetics Consortium. A human type 1 diabetes susceptibility locus maps to chromosome 21q22.3. Diabetes 2008;57:2858–2861
    OpenUrlCrossRefPubMedWeb of Science
  58. ↵
    1. Nejentsev S,
    2. Walker N,
    3. Riches D,
    4. Egholm M,
    5. Todd JA
    : Rare variants of IFIH1, a gene implicated in antiviral responses, protect against type 1 diabetes. Science 2009;324:387–389
    OpenUrlAbstract/FREE Full Text
  59. ↵
    1. Altshuler D,
    2. Daly M
    : Guilt beyond a reasonable doubt. Nat Genet 2007;39:813–815
    OpenUrlCrossRefPubMedWeb of Science
  60. ↵
    1. Ioannidis JP,
    2. Thomas G,
    3. Daly MJ
    : Validating, augmenting and refining genome-wide association signals. Nat Rev Genet 2009;10:318–329
    OpenUrlCrossRefPubMedWeb of Science
  61. ↵
    1. Manolio TA,
    2. Collins FS,
    3. Cox NJ,
    4. Goldstein DB,
    5. Hindorff LA,
    6. Hunter DJ,
    7. McCarthy MI,
    8. Ramos EM,
    9. Cardon LR,
    10. Chakravarti A,
    11. Cho JH,
    12. Guttmacher AE,
    13. Kong A,
    14. Kruglyak L,
    15. Mardis E,
    16. Rotimi CN,
    17. Slatkin M,
    18. Valle D,
    19. Whittemore AS,
    20. Boehnke M,
    21. Clark AG,
    22. Eichler EE,
    23. Gibson G,
    24. Haines JL,
    25. Mackay TF,
    26. McCarroll SA,
    27. Visscher PM
    : Finding the missing heritability of complex diseases. Nature 2009;461:747–753
    OpenUrlCrossRefPubMedWeb of Science
  62. ↵
    1. McCarthy MI,
    2. Abecasis GR,
    3. Cardon LR,
    4. Goldstein DB,
    5. Little J,
    6. Ioannidis JP,
    7. Hirschhorn JN
    : Genome-wide association studies for complex traits: consensus, uncertainty and challenges. Nat Rev Genet 2008;9:356–369
    OpenUrlCrossRefPubMedWeb of Science
  63. ↵
    Wellcome Trust Case Control Consortium. Genome-wide association study of 14,000 cases of seven common diseases and 3,000 shared controls. Nature 2007;447:661–678
    OpenUrlCrossRefPubMedWeb of Science
  64. ↵
    1. Erlich HA,
    2. Valdes AM,
    3. Julier C,
    4. Mirel D,
    5. Noble JA
    Type I Diabetes Genetics Consortium. Evidence for association of the TCF7 locus with type I diabetes. Genes Immun 2009;10:S54–S59
    OpenUrlCrossRefPubMedWeb of Science
  65. ↵
    1. Clayton DG
    : Prediction and interaction in complex disease genetics: experience in type 1 diabetes. PLoS Genet 2009;5:e1000540
    OpenUrlCrossRefPubMed
  66. ↵
    1. Vavouri T,
    2. McEwen GK,
    3. Woolfe A,
    4. Gilks WR,
    5. Elgar G
    : Defining a genomic radius for long-range enhancer action: duplicated conserved non-coding elements hold the key. Trends Genet 2006;22:5–10
    OpenUrlCrossRefPubMedWeb of Science
  67. ↵
    1. Conrad DF,
    2. Pinto D,
    3. Redon R,
    4. Feuk L,
    5. Gokcumen O,
    6. Zhang Y,
    7. Aerts J,
    8. Andrews TD,
    9. Barnes C,
    10. Campbell P,
    11. Fitzgerald T,
    12. Hu M,
    13. Ihm CH,
    14. Kristiansson K,
    15. Macarthur DG,
    16. Macdonald JR,
    17. Onyiah I,
    18. Pang AW,
    19. Robson S,
    20. Stirrups K,
    21. Valsesia A,
    22. Walter K,
    23. Wei J,
    24. Wellcome Trust Case Control Consortium,
    25. Tyler-Smith C,
    26. Carter NP,
    27. Lee C,
    28. Scherer SW,
    29. Hurles ME
    : Origins and functional impact of copy number variation in the human genome. Nature 2010;464:704–712
    OpenUrlCrossRefPubMedWeb of Science
  68. ↵
    1. Field SF,
    2. Howson JM,
    3. Maier LM,
    4. Walker S,
    5. Walker NM,
    6. Smyth DJ,
    7. Armour JA,
    8. Clayton DG,
    9. Todd JA
    : Experimental aspects of copy number variant assays at CCL3L1. Nat Med 2009;15:1115–1117
    OpenUrlCrossRefPubMedWeb of Science
  69. ↵
    1. Goldstein DB
    : Common genetic variation and human traits. N Engl J Med 2009;360:1696–1698
    OpenUrlCrossRefPubMedWeb of Science
  70. ↵
    1. von Herrath M
    : Diabetes: a virus-gene collaboration. Nature 2009;459:518–519
    OpenUrlCrossRefPubMedWeb of Science
  71. ↵
    1. Todd JA,
    2. Walker NM,
    3. Cooper JD,
    4. Smyth DJ,
    5. Downes K,
    6. Plagnol V,
    7. Bailey R,
    8. Nejentsev S,
    9. Field SF,
    10. Payne F,
    11. Lowe CE,
    12. Szeszko JS,
    13. Hafler JP,
    14. Zeitels L,
    15. Yang JH,
    16. Vella A,
    17. Nutland S,
    18. Stevens HE,
    19. Schuilenburg H,
    20. Coleman G,
    21. Maisuria M,
    22. Meadows W,
    23. Smink LJ,
    24. Healy B,
    25. Burren OS,
    26. Lam AA,
    27. Ovington NR,
    28. Allen J,
    29. Adlem E,
    30. Leung HT,
    31. Wallace C,
    32. Howson JM,
    33. Guja C,
    34. Ionescu-Tîrgovişte C,
    35. Genetics of Type 1 Diabetes in Finland,
    36. Simmonds MJ,
    37. Heward JM,
    38. Gough SC,
    39. Wellcome Trust Case Control Consortium,
    40. Dunger DB,
    41. Wicker LS,
    42. Clayton DG
    : Robust associations of four new chromosome regions from genome-wide analyses of type 1 diabetes. Nat Genet 2007;39:857–864
    OpenUrlCrossRefPubMed
  72. ↵
    1. Moore F,
    2. Colli ML,
    3. Cnop M,
    4. Esteve MI,
    5. Cardozo AK,
    6. Cunha DA,
    7. Bugliani M,
    8. Marchetti P,
    9. Eizirik DL
    : PTPN2, a candidate gene for type 1 diabetes, modulates interferon-gamma-induced pancreatic beta-cell apoptosis. Diabetes 2009;58:1283–1291
    OpenUrlAbstract/FREE Full Text
  73. ↵
    1. Zeggini E,
    2. Scott LJ,
    3. Saxena R,
    4. Voight BF,
    5. Marchini JL,
    6. Hu T,
    7. de Bakker PI,
    8. Abecasis GR,
    9. Almgren P,
    10. Andersen G,
    11. Ardlie K,
    12. Boström KB,
    13. Bergman RN,
    14. Bonnycastle LL,
    15. Borch-Johnsen K,
    16. Burtt NP,
    17. Chen H,
    18. Chines PS,
    19. Daly MJ,
    20. Deodhar P,
    21. Ding CJ,
    22. Doney AS,
    23. Duren WL,
    24. Elliott KS,
    25. Erdos MR,
    26. Frayling TM,
    27. Freathy RM,
    28. Gianniny L,
    29. Grallert H,
    30. Grarup N,
    31. Groves CJ,
    32. Guiducci C,
    33. Hansen T,
    34. Herder C,
    35. Hitman GA,
    36. Hughes TE,
    37. Isomaa B,
    38. Jackson AU,
    39. Jørgensen T,
    40. Kong A,
    41. Kubalanza K,
    42. Kuruvilla FG,
    43. Kuusisto J,
    44. Langenberg C,
    45. Lango H,
    46. Lauritzen T,
    47. Li Y,
    48. Lindgren CM,
    49. Lyssenko V,
    50. Marvelle AF,
    51. Meisinger C,
    52. Midthjell K,
    53. Mohlke KL,
    54. Morken MA,
    55. Morris AD,
    56. Narisu N,
    57. Nilsson P,
    58. Owen KR,
    59. Palmer CN,
    60. Payne F,
    61. Perry JR,
    62. Pettersen E,
    63. Platou C,
    64. Prokopenko I,
    65. Qi L,
    66. Qin L,
    67. Rayner NW,
    68. Rees M,
    69. Roix JJ,
    70. Sandbaek A,
    71. Shields B,
    72. Sjögren M,
    73. Steinthorsdottir V,
    74. Stringham HM,
    75. Swift AJ,
    76. Thorleifsson G,
    77. Thorsteinsdottir U,
    78. Timpson NJ,
    79. Tuomi T,
    80. Tuomilehto J,
    81. Walker M,
    82. Watanabe RM,
    83. Weedon MN,
    84. Willer CJ,
    85. Wellcome Trust Case Control Consortium,
    86. Illig T,
    87. Hveem K,
    88. Hu FB,
    89. Laakso M,
    90. Stefansson K,
    91. Pedersen O,
    92. Wareham NJ,
    93. Barroso I,
    94. Hattersley AT,
    95. Collins FS,
    96. Groop L,
    97. McCarthy MI,
    98. Boehnke M,
    99. Altshuler D
    : Meta-analysis of genome-wide association data and large-scale replication identifies additional susceptibility loci for type 2 diabetes. Nat Genet 2008;40:638–645
    OpenUrlCrossRefPubMedWeb of Science
  74. ↵
    1. Smyth DJ,
    2. Plagnol V,
    3. Walker NM,
    4. Cooper JD,
    5. Downes K,
    6. Yang JH,
    7. Howson JM,
    8. Stevens H,
    9. McManus R,
    10. Wijmenga C,
    11. Heap GA,
    12. Dubois PC,
    13. Clayton DG,
    14. Hunt KA,
    15. van Heel DA,
    16. Todd JA
    : Shared and distinct genetic variants in type 1 diabetes and celiac disease. N Engl J Med 2008;359:2767–2777
    OpenUrlCrossRefPubMedWeb of Science
  75. ↵
    1. de Bakker PI,
    2. McVean G,
    3. Sabeti PC,
    4. Miretti MM,
    5. Green T,
    6. Marchini J,
    7. Ke X,
    8. Monsuur AJ,
    9. Whittaker P,
    10. Delgado M,
    11. Morrison J,
    12. Richardson A,
    13. Walsh EC,
    14. Gao X,
    15. Galver L,
    16. Hart J,
    17. Hafler DA,
    18. Pericak-Vance M,
    19. Todd JA,
    20. Daly MJ,
    21. Trowsdale J,
    22. Wijmenga C,
    23. Vyse TJ,
    24. Beck S,
    25. Murray SS,
    26. Carrington M,
    27. Gregory S,
    28. Deloukas P,
    29. Rioux JD
    : A high-resolution HLA and SNP haplotype map for disease association studies in the extended human MHC. Nat Genet 2006;38:1166–1172
    OpenUrlCrossRefPubMedWeb of Science
  76. ↵
    1. Barabási AL,
    2. Oltvai ZN
    : Network biology: understanding the cell's functional organization. Nat Rev Genet 2004;5:101–113
    OpenUrlCrossRefPubMedWeb of Science
  77. ↵
    1. Bergholdt R,
    2. Brorsson C,
    3. Lage K,
    4. Nielsen JH,
    5. Brunak S,
    6. Pociot F
    : Expression profiling of human genetic and protein interaction networks in type 1 diabetes. PLoS One 2009;4:e6250
    OpenUrlCrossRefPubMed
  78. ↵
    1. Bergholdt R,
    2. Storling ZM,
    3. Lage K,
    4. Karlberg EO,
    5. Olason PI,
    6. Aalund M,
    7. Nerup J,
    8. Brunak S,
    9. Workman CT,
    10. Pociot F
    : Integrative analysis for finding genes and networks involved in diabetes and other complex diseases. Genome Biol 2007;8:R253
    OpenUrlCrossRefPubMed
  79. ↵
    1. Oresic M,
    2. Simell S,
    3. Sysi-Aho M,
    4. Näntö-Salonen K,
    5. Seppänen-Laakso T,
    6. Parikka V,
    7. Katajamaa M,
    8. Hekkala A,
    9. Mattila I,
    10. Keskinen P,
    11. Yetukuri L,
    12. Reinikainen A,
    13. Lähde J,
    14. Suortti T,
    15. Hakalax J,
    16. Simell T,
    17. Hyöty H,
    18. Veijola R,
    19. Ilonen J,
    20. Lahesmaa R,
    21. Knip M,
    22. Simell O
    : Dysregulation of lipid and amino acid metabolism precedes islet autoimmunity in children who later progress to type 1 diabetes. J Exp Med 2008;205:2975–2984
    OpenUrlAbstract/FREE Full Text
  80. ↵
    1. Goh KI,
    2. Cusick ME,
    3. Valle D,
    4. Childs B,
    5. Vidal M,
    6. Barabási AL
    : The human disease network. Proc Natl Acad Sci U S A 2007;104:8685–8690
    OpenUrlAbstract/FREE Full Text
  81. ↵
    1. Freiesleben De Blasio B,
    2. Bak P,
    3. Pociot F,
    4. Karlsen AE,
    5. Nerup J
    : Onset of type 1 diabetes: a dynamical instability. Diabetes 1999;48:1677–1685
    OpenUrlAbstract
  82. ↵
    1. Kutlu B,
    2. Burdick D,
    3. Baxter D,
    4. Rasschaert J,
    5. Flamez D,
    6. Eizirik DL,
    7. Welsh N,
    8. Goodman N,
    9. Hood L
    : Detailed transcriptome atlas of the pancreatic beta cell. BMC Med Genomics 2009;2:3
    OpenUrlCrossRefPubMed
PreviousNext
Back to top

In this Issue

July 2010, 59(7)
  • Table of Contents
  • Index by Author
Sign up to receive current issue alerts
View Selected Citations (0)
Print
Download PDF
Article Alerts
Sign In to Email Alerts with your Email Address
Email Article

Thank you for your interest in spreading the word about Diabetes.

NOTE: We only request your email address so that the person you are recommending the page to knows that you wanted them to see it, and that it is not junk mail. We do not capture any email address.

Enter multiple addresses on separate lines or separate them with commas.
Genetics of Type 1 Diabetes: What's Next?
(Your Name) has forwarded a page to you from Diabetes
(Your Name) thought you would like to see this page from the Diabetes web site.
CAPTCHA
This question is for testing whether or not you are a human visitor and to prevent automated spam submissions.
Citation Tools
Genetics of Type 1 Diabetes: What's Next?
Flemming Pociot, Beena Akolkar, Patrick Concannon, Henry A. Erlich, Cécile Julier, Grant Morahan, Concepcion R. Nierras, John A. Todd, Stephen S. Rich, Jørn Nerup
Diabetes Jul 2010, 59 (7) 1561-1571; DOI: 10.2337/db10-0076

Citation Manager Formats

  • BibTeX
  • Bookends
  • EasyBib
  • EndNote (tagged)
  • EndNote 8 (xml)
  • Medlars
  • Mendeley
  • Papers
  • RefWorks Tagged
  • Ref Manager
  • RIS
  • Zotero
Add to Selected Citations
Share

Genetics of Type 1 Diabetes: What's Next?
Flemming Pociot, Beena Akolkar, Patrick Concannon, Henry A. Erlich, Cécile Julier, Grant Morahan, Concepcion R. Nierras, John A. Todd, Stephen S. Rich, Jørn Nerup
Diabetes Jul 2010, 59 (7) 1561-1571; DOI: 10.2337/db10-0076
del.icio.us logo Digg logo Reddit logo Twitter logo CiteULike logo Facebook logo Google logo Mendeley logo
  • Tweet Widget
  • Facebook Like
  • Google Plus One

Jump to section

  • Article
    • MHC FINE MAPPING
    • CANDIDATE GENE STUDIES
    • CONCLUSION
    • ACKNOWLEDGMENTS
    • Footnotes
    • REFERENCES
  • Figures & Tables
  • Info & Metrics
  • PDF

Related Articles

Cited By...

More in this TOC Section

  • Regulation of Hepatic Metabolism and Cell Growth by the ATF/CREB Family of Transcription Factors
  • Modulation of Leukocytes of the Innate Arm of the Immune System as a Potential Approach to Prevent the Onset and Progression of Type 1 Diabetes
  • Emerging Role of Bone Morphogenetic Protein 4 in Metabolic Disorders
Show more Perspectives in Diabetes

Similar Articles

Navigate

  • Current Issue
  • Online Ahead of Print
  • Scientific Sessions Abstracts
  • Collections
  • Archives
  • Submit
  • Subscribe
  • Email Alerts
  • RSS Feeds

More Information

  • About the Journal
  • Instructions for Authors
  • Journal Policies
  • Reprints and Permissions
  • Advertising
  • Privacy Policy: ADA Journals
  • Copyright Notice/Public Access Policy
  • Contact Us

Other ADA Resources

  • Diabetes Care
  • Clinical Diabetes
  • Diabetes Spectrum
  • Scientific Sessions Abstracts
  • Standards of Medical Care in Diabetes
  • BMJ Open - Diabetes Research & Care
  • Professional Books
  • Diabetes Forecast

 

  • DiabetesJournals.org
  • Diabetes Core Update
  • ADA's DiabetesPro
  • ADA Member Directory
  • Diabetes.org

© 2021 by the American Diabetes Association. Diabetes Print ISSN: 0012-1797, Online ISSN: 1939-327X.