Diabetic foot infections (DFIs) cause substantial morbidity and mortality. The mainstay of the treatment is empiric antibiotics and surgical debridement in severe cases. In this study, we performed nanopore 16S rDNA sequencing from the debridement specimens of DFIs. Fifty-four surgical debridement specimens obtained from 45 patients with medically intractable DFI were included. The 16S rDNA PCR was performed on each specimen, and Nanopore sequencing was performed for up to 3 h. The reads were aligned to the BLAST database, and the results were compared with conventional culture studies. The 16S sequencing results revealed that the majority of the DFIs (44 of 54, 81.5%) were polymicrobial infections. All bacteria isolated by conventional culture studies were detected by 16S sequencing. Several anaerobes (Prevotella, Finegoldia, Anaerococcus, Bacteroides) were commonly identified by 16S sequencing but were frequently missed by culture studies. In many cases, certain bacteria only revealed by the 16S sequencing were more abundant than the bacteria isolated by the culture studies. In conclusion, nanopore 16S sequencing was capable of pathogen identification in DFIs and has many advantages over conventional culture studies. Nanopore 16S sequencing enables a comprehensive understanding of the bacteria involved in DFIs.

One of the most serious complications of diabetes is foot ulcers (1,2). Patients with diabetes have a 12–25% lifetime risk of developing a foot ulcer, which often becomes infected (3,4). Diabetic foot infections (DFIs) are the most common cause of diabetes-related hospital admissions (5). Diabetic foot ulcers usually heal very slowly because of several factors, including diabetes-associated microvascular disease, peripheral neuropathy, progressive changes of bony structure in the foot, impaired host immune response, and involvement of bacteria that often exist within the wound and are resistant to antimicrobial treatments (1,6). When foot ulcers and infections fail to heal, critical complications, such as osteomyelitis, occur (79). Diabetic foot osteomyelitis occurs in 44–68% of patients who are admitted to the hospital because of DFI and is the leading cause of foot amputation in these patients (3).

Molecular-based methods have been increasingly applied for pathogen identification because of recent advances in sequencing technologies (10,11). The 16S rDNA amplicon sequencing is particularly useful for the detection of bacteria (12,13) and has many advantages over conventional culture studies. As well as a rapid turnaround time, 16S sequencing is capable of the detection of unculturable bacteria and polymicrobial infection at once (14,15). Nanopore sequencing is one of the new-generation sequencing technologies produced by Oxford Nanopore Technologies (ONT; Oxford, U.K.). It is carried out by predicting nucleotide sequences from the electrical current patterns that are affected by the bases passing through the nanopore. Nanopore sequencing has many advantageous characteristics, including a simple library preparation procedure that could be extremely useful for clinical metagenomics (16,17). Nanopore sequencing enables real-time analysis of reads and long-read sequencing, which can be very useful for rapid pathogen detection (10,18), and is applicable for bacterial detection by 16S amplicon sequencing (17,19,20). Thus, nanopore 16S amplicon sequencing is being applied to the detection of various bacterial infections, including bacterial meningitis, brain abscess, pneumonia, and others (2124).

In the current study, we performed nanopore 16S amplicon sequencing on the tissues obtained during surgery from patients with medically intractable DFI. We investigated whether nanopore 16S amplicon sequencing is capable of pathogen identification in patients with DFI and compared its efficacy with conventional culture studies.

Patients and Sample Collection

Among the patients who visited the orthopedics department of Seoul National University Hospital (SNUH) between June 2018 and December 2019, those with medically intractable DFI requiring surgical debridement or amputation were included. Medically intractable DFI was defined as failure of conservative treatment, including dressing, off-loading techniques such as total contact cast, and antibiotics therapy for at least 1 month. Cases combined with osteomyelitis, which necessitated copious elimination of infected bone and soft tissues, were included. Patients having foot ulcers with uncertain infections or patients who refused consent were excluded. Debrided tissues were obtained during surgery from the deep central portion of lesions, including bone and adjacent soft tissue, by a skillful orthopedic surgeon (D.Y.L.). Then, samples for culture studies were directly placed in blood culture bottles for aerobic and anaerobic culture and were promptly transported to the microbiology laboratory. Samples for sequencing were stored in sterile tubes from the operating room and kept at 4°C before the experimental procedures. The study was approved by the institutional review board of SNUH (IRB No. 1806-032-949), and informed written consent was obtained from all patients.

DNA Extraction and 16S rDNA PCR

The DNA was extracted from the surgical specimens using the PureLink Genomic DNA Mini Kit (Invitrogen, Carlsbad, CA) following the manufacturer’s instructions. For each sample, the 16S rDNA PCR was performed as described previously (23). In brief, the full length of 16S rDNA was amplified by PCR using a bacterial 16S rDNA PCR kit (Takara, Tokyo, Japan). The 16S rDNA primer mix (Takara) was added to the genomic DNA. PCR was then performed with an initial denaturation at 94°C for 1 min followed by 35 cycles at 94°C for 30 s, 55°C for 30 s, and 72°C for 1 min, with a final extension at 72°C for 3 min. All PCRs were performed in a C1000 Touch Thermal Cycler (Bio-Rad, Hercules, CA). A negative control (distilled water) and a positive control (bacterial genomic DNA) were included in every PCR. The PCR products were electrophoresed on a 1.5% agarose gel containing 0.05 μL/mL RedSafe (Intron Biotechnology, Seoul, South Korea) and were visualized using a Bio-Rad Gel Doc EZ Imager. When the negative control demonstrated a PCR-positive band, contamination was suspected, and the PCR was repeated from the initial step.

Nanopore Library Preparation and Sequencing

When the result of the 16S rDNA PCR was positive, sequencing libraries were prepared from the PCR products using the Rapid Barcoding Sequencing Kit (SQK-RBK004; ONT). The input DNA was end repaired and A-tailed using the Ultra II End Prep Enzyme (New England Biolabs [NEB], Hertfordshire, U.K.) incubated at 20°C for 5 min and at 65°C for 5 min. The end-prepared DNA was purified with AMPure XP (Beckman Coulter, High Wycombe, U.K.), and the DNA was eluted in nuclease-free water followed by ligation with a 1D adapter using Blunt/TA Ligase Master Mix (NEB) at room temperature for 10 min. The 1D adapter DNA purification was achieved with Adapter Binding Buffer (ONT) using the magnetic stand, and the DNA library was eluted with elution buffer (ONT). The presequencing mix was loaded onto an R9.5 flow cell (FLO-MIN107) in a mix of running buffer with fuel mix and library loading buffer (ONT). Finally, sequencing was performed for 2 or 3 h, and base calling was performed using MinKNOW software.

16S rDNA Analysis

During or after sequencing, the sequenced reads were analyzed by the cloud-based Metrichor/EPI2ME platform (Metrichor Ltd., Oxford, U.K.). The 16S analysis workflow of EPI2ME was used, which is designed to Basic Local Alignment Search Tool (BLAST) base-called reads against the National Center for Biotechnology Information 16S bacterial database. Generated reads were classified to certain bacteria at the species level on the basis of the percent coverage and identity. The list of the bacteria was arranged in descending order according to the number of aligned reads, and the pathogens from the top of this list were determined by clinicians. The species identification within a certain genus was determined on the basis of the number of aligned reads, with the one with the largest number being selected as the answer.

Relative Abundance Calculation

The nanopore sequencing throughput is affected by many factors, which include the number of active pores remaining in the flow cell, DNA purity and integrity, library concentration, and sequencing time (25). Therefore, the absolute number of the aligned reads does not reflect the absolute abundance of certain bacteria. However, in cases of polymicrobial infection, the relative abundance of each bacterium can be estimated by comparing the number of reads aligned to each bacterium within a single sequencing run. The relative abundance score of certain bacteria (A) was calculated by the aligned read counts divided by the read counts of the most abundant bacteria (number of reads aligned to certain bacteria [A]/number of reads aligned to the most abundant bacteria).

Data and Resource Availability

The data sets generated and/or analyzed during the current study are available from the corresponding authors upon reasonable request.

The Majority of the Medically Intractable Infections Were Caused by Polymicrobial Infections

A bacterial culture study and 16S rDNA sequencing were both performed on 54 samples obtained from 45 patients with medically intractable DFI (Table 1). In every case, antibiotics were administered before the collection of the samples. More than 80% of the cases (44 of 54, 81.5%) turned out to be caused by polymicrobial infections (Fig. 1A). A total of 92 bacteria belonging to 18 genera were isolated in 41 patients by conventional culture studies. The bacteria most frequently identified by culture studies were Staphylococcus (n = 18) followed by Streptococcus (n = 16), Escherichia (n = 10), and Enterococcus (n = 9). A total of 290 bacteria belonging to 43 genera were revealed by 16S sequencing. The bacteria most frequently identified by 16S sequencing were also Staphylococcus (n = 25) followed by Finegoldia (n = 23), Prevotella (n = 21), Streptococcus (n = 21), Anaerococcus (n = 19), and Bacteroides (n = 15) (Table 2 and Fig. 2).

Figure 1

The proportion of monomicrobial and polymicrobial infections, and illustrative cases of 16S sequencing. A: According to 16S sequencing, 81% (44 of 54) of the cases were polymicrobial infections. Meanwhile, conventional culture studies identified polymicrobial infections in only 59% (32 of 54) of the cases. Monomicrobial infection was suggested in 33% (18 of 54) of cases, and no bacteria were isolated in 4 cases. Twelve cases of polymicrobial infections were misdiagnosed as monomicrobial infections (n = 10) or no growth (n = 2). B: An illustrative case of monomicrobial infection (patient 40). Genus-level alignment of the reads revealed a Streptococcus monomicrobial infection. Other genera listed are the result of misalignment. On a species-level alignment, S. vestibularis was at the top of the list and considered to be the pathogen. C: An illustrative case of polymicrobial infection (patient 13). After read alignment to the 16S database, Anaerococcus had the largest number of reads and thus was considered to be the dominant pathogen. In the species-level analysis, A. lactolyticus was suggested since it was the top ranked among the Anaerococcus species. In addition to Anaerococcus, Peptoniphilus (P. harei), Finegoldia (F. magna), Prevotella (P. timonensis), and others were present in the sample. Enterococcus (E. faecalis) and Staphylococcus (S. aureus) were isolated by the culture studies in this sample; however, they were ranked eighth and ninth in the 16S sequencing analysis. D: An illustrative case of follow-up study in polymicrobial infection (patient 8). On the initial 16S sequencing (case 10), Enterobacter (E. cloacae) was found to be the most abundant in the sample, followed by Serratia, Klebsiella, and Citrobacter. In the follow-up 16S sequencing (case 33), performed after a 4-week antibiotic treatment, Serratia was the most abundant pathogen in the samples. This reflects that Enterobacter was successfully treated by the antibiotics but that Serratia was resistant to the treatment.

Figure 1

The proportion of monomicrobial and polymicrobial infections, and illustrative cases of 16S sequencing. A: According to 16S sequencing, 81% (44 of 54) of the cases were polymicrobial infections. Meanwhile, conventional culture studies identified polymicrobial infections in only 59% (32 of 54) of the cases. Monomicrobial infection was suggested in 33% (18 of 54) of cases, and no bacteria were isolated in 4 cases. Twelve cases of polymicrobial infections were misdiagnosed as monomicrobial infections (n = 10) or no growth (n = 2). B: An illustrative case of monomicrobial infection (patient 40). Genus-level alignment of the reads revealed a Streptococcus monomicrobial infection. Other genera listed are the result of misalignment. On a species-level alignment, S. vestibularis was at the top of the list and considered to be the pathogen. C: An illustrative case of polymicrobial infection (patient 13). After read alignment to the 16S database, Anaerococcus had the largest number of reads and thus was considered to be the dominant pathogen. In the species-level analysis, A. lactolyticus was suggested since it was the top ranked among the Anaerococcus species. In addition to Anaerococcus, Peptoniphilus (P. harei), Finegoldia (F. magna), Prevotella (P. timonensis), and others were present in the sample. Enterococcus (E. faecalis) and Staphylococcus (S. aureus) were isolated by the culture studies in this sample; however, they were ranked eighth and ninth in the 16S sequencing analysis. D: An illustrative case of follow-up study in polymicrobial infection (patient 8). On the initial 16S sequencing (case 10), Enterobacter (E. cloacae) was found to be the most abundant in the sample, followed by Serratia, Klebsiella, and Citrobacter. In the follow-up 16S sequencing (case 33), performed after a 4-week antibiotic treatment, Serratia was the most abundant pathogen in the samples. This reflects that Enterobacter was successfully treated by the antibiotics but that Serratia was resistant to the treatment.

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Figure 2

The overall distribution of bacteria identified in the patients. The color of the square indicates which bacterium was identified in each patient. Any color except yellow means that the bacterium was both isolated by culture study and 16S sequencing. Yellow squares display the bacteria that were only identified by 16S sequencing. Exceptionally, the light blue square designated with the letter c in case 8 was the only result obtained by culture studies but not by 16S sequencing, which could be the result of contamination. The square designated with the letter D indicates that the bacterium was the dominant pathogen on the basis of the abundancy of aligned reads in 16S sequencing. For example, in case 1, Corynebacterium and Veillonella were both revealed by culture studies and 16S sequencing. The 16S sequencing additionally identified Finegoldia, Bacteroides, and Enterococcus, and Enterococcus was assumed to be the dominant pathogen.

Figure 2

The overall distribution of bacteria identified in the patients. The color of the square indicates which bacterium was identified in each patient. Any color except yellow means that the bacterium was both isolated by culture study and 16S sequencing. Yellow squares display the bacteria that were only identified by 16S sequencing. Exceptionally, the light blue square designated with the letter c in case 8 was the only result obtained by culture studies but not by 16S sequencing, which could be the result of contamination. The square designated with the letter D indicates that the bacterium was the dominant pathogen on the basis of the abundancy of aligned reads in 16S sequencing. For example, in case 1, Corynebacterium and Veillonella were both revealed by culture studies and 16S sequencing. The 16S sequencing additionally identified Finegoldia, Bacteroides, and Enterococcus, and Enterococcus was assumed to be the dominant pathogen.

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Table 1

Basic demographics and a list of pathogens identified by culture studies and 16S sequencing

Case no.Patient no.Sex/age (years)DiagnosisFootOperation nameAdmin. duration (days)Culture result16S resultCultured pathogen in 16S sequencing (relative abundance, rank)16S result before culture
Polymicrobial infections        
 1 M/49 Foot ulcer, OM Debridement of 5th metatarsal bone 20 Veillonella parvula
Corynebacterium species 
Enterococcus (E. avium)* dominant polymicrobial Veillonella (V. parvula)* (0.64, 3rd)
Corynebacterium (C. tuberculostearicum)* (<0.01, below 5th) 
 2 M/57 Foot ulcer and gangrene Amputation of 1st–5th transmetatarsal joint 66 Escherichia coli
Streptococcus viridans group 
Escherichia (E. fergusonii > E. coli)* dominant polymicrobial Streptococcus (S. anginosus)* (0.13, 3rd) 
 3 M/70 Foot ulcer, OM Amputation of 5th transmetatarsal joint 18 S. aureus
Staphylococcus epidermidis
Streptococcus agalactiae 
Staphylococcus (S. capitis > S. aureus > S. caprae > S. epidermidis)* dominant polymicrobial Streptococcus (S. agalactiae)* (0.93, 2nd) – 
 4 M/78 Foot abscess BK amputation 15 Citrobacter freundii
Enterococcus faecalis 
Parvimonas (P. micra) dominant polymicrobial Citrobacter (C. freundii)* (0.76, 2nd)
Enterococcus (E. faecalis)* (0.02, below 6th) 
 5 4' M/79 Foot abscess BK amputation 29 C. freundii
E. faecalis 
Bacteroides (B. xylanisolvens) dominant polymicrobial Enterococcus (E. faecalis)* (0.75, 2nd)
Citrobacter (C. freundii)* (0.15, 5th) 
 6 M/65 Foot ulcer and gangrene Amputation of 1st transmetatarsal joint 26 E. coli
Pseudomonas aeruginosa
Corynebacterium striatum 
Pseudomonas (P. aeruginosa)* dominant polymicrobial Escherichia (E. fergusonii > E. coli) * (0.09, 2nd)
Corynebacterium (C. striatum) (<0.01, below 3rd) 
– 
 7 M/49 Foot ulcer, OM Amputation of 4th toe 32 S. viridans group
Finegoldia magna 
Prevotella (P. melaninogenica) dominant polymicrobial Streptococcus (S. constellatus)* (0.34, 3rd)
Finegoldia (F. magna)* (0.31, 4th) 
 8 M/66 Foot ulcer, OM Debridement of ankle, foot 64 Enterococcus avium
S. aureus 
Parvimonas (P. micra) dominant polymicrobial Enterococcus (E. avium) (0.02, 11th) 
 9 7' M/67 Foot ulcer, OM Bone trimming, amputation stump 14 Morganella morganii
P. aeruginosa
E. faecalis 
Proteus (P. mirabilis) dominant polymicrobial Morganella (M. morganii)* (0.66, 2nd)
Pseudomonas (P. aeruginosa)* (0.01, 9th)
Enterococcus (E. faecalis)* (0.01, 11th) 
 10 08 M/64 Foot ulcer, OM Lisfranc amputation 38 Enterobacter cloacae
Serratia marcescens 
Enterobacter (E. cloacae)* dominant polymicrobial Serratia (S. nematodiphila > S. marcescens)* (0.86, 2nd) 
 11 09 M/79 Foot ulcer, OM Debridement of ankle and foot 37 E. faecalis
C. freundii 
Prevotella (P. oris) dominant polymicrobial Enterococcus (E. faecalis)* (0.11, 2nd)
Citrobacter (C. freundii)* (0.08, 4th) 
– 
 12 10 M/79 Foot ulcer and gangrene BK amputation 32 Aeromonas hydrophila
E. coli 
Aeromonas (A. hydrophila)* dominant polymicrobial Escherichia (E. fergusonii > E. marmotae > E. coli)* (0.01, 3rd) 
 13 11 F/94 Foot ulcer and gangrene Amputation of 1st transmetatarsal joint S. agalactiae
S. aureus
Staphylococcus lugdunensis
E. faecalis 
Bacteroides (B. fragilis) dominant polymicrobial Streptococcus (S. agalactiae)* (0.16, 4th)
Staphylococcus (S. aureus > S. lugdunensis)* (0.05, 6th)
Enterococcus (E. faecalis)* (0.01, 8th) 
 14 12 M/79 Foot ulcer and gangrene Amputation of 2nd toe 12 S. aureus
E. coli 
Staphylococcus (S. aureus)* dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.19, 2nd) 
 15 12'' M/80 Foot ulcer, OM Amputation of 1st toe 12 S. aureus
F. magna 
Achromobacter (A. xylosoxidans)* dominant polymicrobial Staphylococcus (S. aureus)* (0.48, 2nd)
Finegoldia (F. magna)* (<0.01, 4th) 
 16 13 M/80 Foot ulcer, OM Amputation of 1st toe 31 E. faecalis
S. aureus 
Anaerococcus (A. lactolyticus) dominant polymicrobial Enterococcus (E. faecalis)* (0.03, 8th)
Staphylococcus (S. aureus)* (0.01, 9th) 
 17 13' M/81 Foot ulcer, OM Amputation of 1st transmetatarsal joint 18 E. cloacae complex
Anaerococcus species
Klebsiella oxytoca
S. aureus 
Prevotella (P. timonensis) dominant polymicrobial Enterobacter (E. cloacae)* (0.49, 3rd)
Anaerococcus (A. vaginalis)* (0.33, 4th)
Klebsiella (K. oxytoca)* (0.26, 5th)
Staphylococcus (S. aureus)* (0.03, 17th) 
 18 14 M/47 Foot ulcer, OM Amputation of 5th transmetatarsal joint 42 Streptococcus anginosus
Streptococcus pyogenes 
Prevotella (P. intermedia) dominant polymicrobial Streptococcus (S. anginosus > S. pyogenes)* (0.55, 3rd) 
 19 15 M/68 Foot abscess, OM Amputation of 2nd toe 22 S. viridans group
S. aureus 
Finegoldia (F. magna) dominant polymicrobial Streptococcus (S. constellatus)* (0.26, 3rd)
Staphylococcus (S. caprae > S. aureus)* (0.03, 6th) 
 20 16 F/64 Foot abscess, OM Amputation of transmetatarsal joint 33 S. agalactiae
Klebsiella pneumoniae 
Lactobacillus (L. iners) dominant polymicrobial Streptococcus (S. agalactiae)* (0.37, 4th)
Klebsiella (K. pneumoniae)* (<0.01, 8th) 
 21 17 M/77 Foot ulcer and gangrene BK amputation 15 P. aeruginosa
S. aureus 
Pseudomonas (P. aeruginosa)* dominant polymicrobial Staphylococcus (S. aureus)* (0.73, 2nd) 
 22 18 F/66 Foot ulcer, OM Debridement of ankle and foot 53 K. pneumoniae
E. cloacae complex 
Klebsiella (K. pneumoniae)* dominant polymicrobial Enterobacter (E. asburiae > E. cloacae)* (0.29, 2nd) 
 23 19 M/56 Foot ulcer, OM Amputation of 3rd–5th transmetatarsal joint 46 E. coli
E. faecium 
Bacteroides (B. fragilis) dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.01, 3rd)
Enterococcus (E. faecalis > E. faecium)* (<0.01, 6th) 
 24 20 M/78 Foot ulcer, OM Amputation of 2nd–3rd transmetatarsal joint 39 M. morganii
Streptococcus dysgalactiae 
Anaerococcus (A. murdochii) dominant polymicrobial Morganella (M. morganii)* (0.56, 2nd)
Streptococcus (S. dysgalactiae)* (0.01, 9th) 
 25 21 M/71 Foot ulcer, OM Amputation of 2nd toe 16 S. dysgalactiae
S. epidermidis 
Streptococcus (S. dysgalactiae)* dominant polymicrobial Staphylococcus (S. epidermidis)* (0.01, 2nd) 
 26 22 M/60 Foot ulcer, OM Amputation of 4th transmetatarsal joint 109 S. marcescens
F. magna
E. coli 
Fusobacterium (F. nucleatum) dominant polymicrobial Serratia (S. marcescens)* (0.06, 2nd)
Finegoldia (F. magna)* (0.02, 4th)
Escherichia (E. fergusonii > E. coli)* (0.01, 5th) 
 27 23 F/72 Foot ulcer, OM Drainage of abscess 17 S. agalactiae
S. marcescens 
Streptococcus (S. agalactiae)* dominant polymicrobial Serratia (S. marcescens)* (0.06, 3rd) 
 28 24 F/35 Foot ulcer, OM Amputation of 4th toe 25 Prevotella bivia
E. coli 
Prevotella (P. bivia)* dominant polymicrobial Escherichia (E. fergusonii > E. marmotae > E. coli > E. albertii)* (0.28, 2nd) 
 29 25 M/61 Foot ulcer, OM Debridement of 5th metatarsal bone 11 E. cloacae complex
F. magna 
Enterobacter (E. xiangfangensis)* dominant polymicrobial Finegoldia (F. magna)* (0.28, 3rd) 
 30 26 M/64 Foot ulcer, OM Amputation of 2nd toe 12 Proteus vulgaris
E. avium
M. morganii 
Prevotella (P. intermedia) dominant polymicrobial Enterococcus (E. avium)* (0.05, 14th)
Morganella (M. morganii)* (0.02, 17th) 
 31 27 F/69 Foot ulcer, OM Amputation of 1st transmetatarsal joint 26 S. viridans group
S. agalactiae
S. aureus 
Prevotella (P. oralis) dominant polymicrobial Streptococcus (S. oralis > S. mitis > S. pneumoniae > S. agalactiae)* (0.04, 9th)
Staphylococcus (S. capitis > S. caprae >> S. aureus)* (0.01, 11th) 
 32 28 M/56 Foot ulcer, OM Drainage of abscess 27 S. agalactiae
E. coli 
Bacteroides (B. fragilis) dominant polymicrobial Streptococcus (S. agalactiae)* (0.09, 7th)
Escherichia (E. fergusonii > E. coli > E. albertii)* (0.02, 8th) 
Polymicrobial infections only identified by 16S sequencing        
 33 08' M/64 Foot ulcer, OM Debridement of ankle and foot 38 S. marcescens Serratia (S. marcescens > S. nematodiphila)* dominant polymicrobial  
 34 29 M/58 Foot ulcer, OM Debridement of ankle and foot 18 No growth Bacteroides (B. fragilis) dominant polymicrobial  
 35 29' M/59 Foot ulcer, OM Amputation of 1st transmetatarsal joint 31 Enterobacter asburiae Enterobacter (E. cloacae > E. xiangfangensis > E. asburiae)* dominant polymicrobial   
 36 30 M/61 Foot ulcer and gangrene Amputation of 1st toe 38 S. dysgalactiae Streptococcus (S. dysgalactiae)* dominant polymicrobial  
 37 31 M/72 Foot ulcer, OM Amputation of 1st toe 31 Staphylococcus hominis Bacteroides (B. fragilis) dominant polymicrobial Staphylococcus (S. pettenkoferi >> S. hominis)* (0.01, 3rd) 
 38 32 M/63 Foot ulcer, OM Amputation of 1st–5th transmetatarsal joint 27 M. morganii Morganella (M. morganii)* dominant polymicrobial  
 39 42' M/47 Foot ulcer, OM Amputation of 2nd–5th transmetatarsal joint 27 P. aeruginosa Pseudomonas (P. aeruginosa)* dominant polymicrobial  
 40 33 M/73 Foot ulcer, OM Amputation of 2nd toe 16 E. coli Anaerococcus (A. vaginalis) dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.01, 9th) 
 41 34 M/64 Foot ulcer, OM Debridement of 5th metatarsal bone 48 S. epidermidis Staphylococcus (S. epidermidis)* dominant polymicrobial  
 42 35 M/56 Foot ulcer, OM Amputation of 4–5th transmetatarsal joint 11 No growth (Candida tropicalisStreptococcus (S. mitis) dominant polymicrobial  
 43 36 M/78 Foot ulcer, OM Amputation of 1st toe S. aureus Peptoniphilus (P. grossensis) dominant polymicrobial Staphylococcus (S. aureus)* (0.08, 7th) 
 44 37 M/70 Foot ulcer, OM Amputation of 5th toe Corynebacterium species Corynebacterium (C. striatum)* dominant polymicrobial  
Monomicrobial infections        
 45 02' M/58 Foot ulcer and gangrene Amputation of 1st–5th transmetatarsal joint 42 E. coli Escherichia (E. fergusonii > E. albertii > E. coli)* monomicrobial  
 46 38 M/69 Foot ulcer, OM Amputation of 1st–5th transmetatarsal joint 39 Klebsiella aerogenes Klebsiella (K. aerogenes) monomicrobial  – 
 47 12' M/79 Foot ulcer and gangrene Partial excision of 3rd toe 12 No growth Anaerococcus (A. vaginalis) monomicrobial  
 48 39 F/76 Foot ulcer, OM Resection of shaft of 5th metatarsal bone Acinetobacter baumannii Acinetobacter (A. baumannii)* monomicrobial  
 49 40 M/49 Septic ankle Debridement of ankle 15 S. viridans group Streptococcus (S. vestibularis)* monomicrobial  
 50 41 M/86 Foot ulcer and gangrene BK amputation 18 S. aureus Staphylococcus (S. aureus)* monomicrobial  
 51 42 M/47 Foot ulcer, OM Drainage of abscess 20 S. aureus Staphylococcus (S. aureus)* monomicrobial  
 52 43 M/77 Foot ulcer, OM Amputation of 1st toe 16 No growth Staphylococcus (S. epidermidis) monomicrobial  
 53 44 M/76 Foot ulcer, OM Amputation of 4th toe 21 P. vulgaris Proteus (P. vulgaris)* monomicrobial  
 54 45 M/81 Foot abscess Drainage of abscess 25 K. pneumoniae Klebsiella (K. pneumoniae)* monomicrobial  
Case no.Patient no.Sex/age (years)DiagnosisFootOperation nameAdmin. duration (days)Culture result16S resultCultured pathogen in 16S sequencing (relative abundance, rank)16S result before culture
Polymicrobial infections        
 1 M/49 Foot ulcer, OM Debridement of 5th metatarsal bone 20 Veillonella parvula
Corynebacterium species 
Enterococcus (E. avium)* dominant polymicrobial Veillonella (V. parvula)* (0.64, 3rd)
Corynebacterium (C. tuberculostearicum)* (<0.01, below 5th) 
 2 M/57 Foot ulcer and gangrene Amputation of 1st–5th transmetatarsal joint 66 Escherichia coli
Streptococcus viridans group 
Escherichia (E. fergusonii > E. coli)* dominant polymicrobial Streptococcus (S. anginosus)* (0.13, 3rd) 
 3 M/70 Foot ulcer, OM Amputation of 5th transmetatarsal joint 18 S. aureus
Staphylococcus epidermidis
Streptococcus agalactiae 
Staphylococcus (S. capitis > S. aureus > S. caprae > S. epidermidis)* dominant polymicrobial Streptococcus (S. agalactiae)* (0.93, 2nd) – 
 4 M/78 Foot abscess BK amputation 15 Citrobacter freundii
Enterococcus faecalis 
Parvimonas (P. micra) dominant polymicrobial Citrobacter (C. freundii)* (0.76, 2nd)
Enterococcus (E. faecalis)* (0.02, below 6th) 
 5 4' M/79 Foot abscess BK amputation 29 C. freundii
E. faecalis 
Bacteroides (B. xylanisolvens) dominant polymicrobial Enterococcus (E. faecalis)* (0.75, 2nd)
Citrobacter (C. freundii)* (0.15, 5th) 
 6 M/65 Foot ulcer and gangrene Amputation of 1st transmetatarsal joint 26 E. coli
Pseudomonas aeruginosa
Corynebacterium striatum 
Pseudomonas (P. aeruginosa)* dominant polymicrobial Escherichia (E. fergusonii > E. coli) * (0.09, 2nd)
Corynebacterium (C. striatum) (<0.01, below 3rd) 
– 
 7 M/49 Foot ulcer, OM Amputation of 4th toe 32 S. viridans group
Finegoldia magna 
Prevotella (P. melaninogenica) dominant polymicrobial Streptococcus (S. constellatus)* (0.34, 3rd)
Finegoldia (F. magna)* (0.31, 4th) 
 8 M/66 Foot ulcer, OM Debridement of ankle, foot 64 Enterococcus avium
S. aureus 
Parvimonas (P. micra) dominant polymicrobial Enterococcus (E. avium) (0.02, 11th) 
 9 7' M/67 Foot ulcer, OM Bone trimming, amputation stump 14 Morganella morganii
P. aeruginosa
E. faecalis 
Proteus (P. mirabilis) dominant polymicrobial Morganella (M. morganii)* (0.66, 2nd)
Pseudomonas (P. aeruginosa)* (0.01, 9th)
Enterococcus (E. faecalis)* (0.01, 11th) 
 10 08 M/64 Foot ulcer, OM Lisfranc amputation 38 Enterobacter cloacae
Serratia marcescens 
Enterobacter (E. cloacae)* dominant polymicrobial Serratia (S. nematodiphila > S. marcescens)* (0.86, 2nd) 
 11 09 M/79 Foot ulcer, OM Debridement of ankle and foot 37 E. faecalis
C. freundii 
Prevotella (P. oris) dominant polymicrobial Enterococcus (E. faecalis)* (0.11, 2nd)
Citrobacter (C. freundii)* (0.08, 4th) 
– 
 12 10 M/79 Foot ulcer and gangrene BK amputation 32 Aeromonas hydrophila
E. coli 
Aeromonas (A. hydrophila)* dominant polymicrobial Escherichia (E. fergusonii > E. marmotae > E. coli)* (0.01, 3rd) 
 13 11 F/94 Foot ulcer and gangrene Amputation of 1st transmetatarsal joint S. agalactiae
S. aureus
Staphylococcus lugdunensis
E. faecalis 
Bacteroides (B. fragilis) dominant polymicrobial Streptococcus (S. agalactiae)* (0.16, 4th)
Staphylococcus (S. aureus > S. lugdunensis)* (0.05, 6th)
Enterococcus (E. faecalis)* (0.01, 8th) 
 14 12 M/79 Foot ulcer and gangrene Amputation of 2nd toe 12 S. aureus
E. coli 
Staphylococcus (S. aureus)* dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.19, 2nd) 
 15 12'' M/80 Foot ulcer, OM Amputation of 1st toe 12 S. aureus
F. magna 
Achromobacter (A. xylosoxidans)* dominant polymicrobial Staphylococcus (S. aureus)* (0.48, 2nd)
Finegoldia (F. magna)* (<0.01, 4th) 
 16 13 M/80 Foot ulcer, OM Amputation of 1st toe 31 E. faecalis
S. aureus 
Anaerococcus (A. lactolyticus) dominant polymicrobial Enterococcus (E. faecalis)* (0.03, 8th)
Staphylococcus (S. aureus)* (0.01, 9th) 
 17 13' M/81 Foot ulcer, OM Amputation of 1st transmetatarsal joint 18 E. cloacae complex
Anaerococcus species
Klebsiella oxytoca
S. aureus 
Prevotella (P. timonensis) dominant polymicrobial Enterobacter (E. cloacae)* (0.49, 3rd)
Anaerococcus (A. vaginalis)* (0.33, 4th)
Klebsiella (K. oxytoca)* (0.26, 5th)
Staphylococcus (S. aureus)* (0.03, 17th) 
 18 14 M/47 Foot ulcer, OM Amputation of 5th transmetatarsal joint 42 Streptococcus anginosus
Streptococcus pyogenes 
Prevotella (P. intermedia) dominant polymicrobial Streptococcus (S. anginosus > S. pyogenes)* (0.55, 3rd) 
 19 15 M/68 Foot abscess, OM Amputation of 2nd toe 22 S. viridans group
S. aureus 
Finegoldia (F. magna) dominant polymicrobial Streptococcus (S. constellatus)* (0.26, 3rd)
Staphylococcus (S. caprae > S. aureus)* (0.03, 6th) 
 20 16 F/64 Foot abscess, OM Amputation of transmetatarsal joint 33 S. agalactiae
Klebsiella pneumoniae 
Lactobacillus (L. iners) dominant polymicrobial Streptococcus (S. agalactiae)* (0.37, 4th)
Klebsiella (K. pneumoniae)* (<0.01, 8th) 
 21 17 M/77 Foot ulcer and gangrene BK amputation 15 P. aeruginosa
S. aureus 
Pseudomonas (P. aeruginosa)* dominant polymicrobial Staphylococcus (S. aureus)* (0.73, 2nd) 
 22 18 F/66 Foot ulcer, OM Debridement of ankle and foot 53 K. pneumoniae
E. cloacae complex 
Klebsiella (K. pneumoniae)* dominant polymicrobial Enterobacter (E. asburiae > E. cloacae)* (0.29, 2nd) 
 23 19 M/56 Foot ulcer, OM Amputation of 3rd–5th transmetatarsal joint 46 E. coli
E. faecium 
Bacteroides (B. fragilis) dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.01, 3rd)
Enterococcus (E. faecalis > E. faecium)* (<0.01, 6th) 
 24 20 M/78 Foot ulcer, OM Amputation of 2nd–3rd transmetatarsal joint 39 M. morganii
Streptococcus dysgalactiae 
Anaerococcus (A. murdochii) dominant polymicrobial Morganella (M. morganii)* (0.56, 2nd)
Streptococcus (S. dysgalactiae)* (0.01, 9th) 
 25 21 M/71 Foot ulcer, OM Amputation of 2nd toe 16 S. dysgalactiae
S. epidermidis 
Streptococcus (S. dysgalactiae)* dominant polymicrobial Staphylococcus (S. epidermidis)* (0.01, 2nd) 
 26 22 M/60 Foot ulcer, OM Amputation of 4th transmetatarsal joint 109 S. marcescens
F. magna
E. coli 
Fusobacterium (F. nucleatum) dominant polymicrobial Serratia (S. marcescens)* (0.06, 2nd)
Finegoldia (F. magna)* (0.02, 4th)
Escherichia (E. fergusonii > E. coli)* (0.01, 5th) 
 27 23 F/72 Foot ulcer, OM Drainage of abscess 17 S. agalactiae
S. marcescens 
Streptococcus (S. agalactiae)* dominant polymicrobial Serratia (S. marcescens)* (0.06, 3rd) 
 28 24 F/35 Foot ulcer, OM Amputation of 4th toe 25 Prevotella bivia
E. coli 
Prevotella (P. bivia)* dominant polymicrobial Escherichia (E. fergusonii > E. marmotae > E. coli > E. albertii)* (0.28, 2nd) 
 29 25 M/61 Foot ulcer, OM Debridement of 5th metatarsal bone 11 E. cloacae complex
F. magna 
Enterobacter (E. xiangfangensis)* dominant polymicrobial Finegoldia (F. magna)* (0.28, 3rd) 
 30 26 M/64 Foot ulcer, OM Amputation of 2nd toe 12 Proteus vulgaris
E. avium
M. morganii 
Prevotella (P. intermedia) dominant polymicrobial Enterococcus (E. avium)* (0.05, 14th)
Morganella (M. morganii)* (0.02, 17th) 
 31 27 F/69 Foot ulcer, OM Amputation of 1st transmetatarsal joint 26 S. viridans group
S. agalactiae
S. aureus 
Prevotella (P. oralis) dominant polymicrobial Streptococcus (S. oralis > S. mitis > S. pneumoniae > S. agalactiae)* (0.04, 9th)
Staphylococcus (S. capitis > S. caprae >> S. aureus)* (0.01, 11th) 
 32 28 M/56 Foot ulcer, OM Drainage of abscess 27 S. agalactiae
E. coli 
Bacteroides (B. fragilis) dominant polymicrobial Streptococcus (S. agalactiae)* (0.09, 7th)
Escherichia (E. fergusonii > E. coli > E. albertii)* (0.02, 8th) 
Polymicrobial infections only identified by 16S sequencing        
 33 08' M/64 Foot ulcer, OM Debridement of ankle and foot 38 S. marcescens Serratia (S. marcescens > S. nematodiphila)* dominant polymicrobial  
 34 29 M/58 Foot ulcer, OM Debridement of ankle and foot 18 No growth Bacteroides (B. fragilis) dominant polymicrobial  
 35 29' M/59 Foot ulcer, OM Amputation of 1st transmetatarsal joint 31 Enterobacter asburiae Enterobacter (E. cloacae > E. xiangfangensis > E. asburiae)* dominant polymicrobial   
 36 30 M/61 Foot ulcer and gangrene Amputation of 1st toe 38 S. dysgalactiae Streptococcus (S. dysgalactiae)* dominant polymicrobial  
 37 31 M/72 Foot ulcer, OM Amputation of 1st toe 31 Staphylococcus hominis Bacteroides (B. fragilis) dominant polymicrobial Staphylococcus (S. pettenkoferi >> S. hominis)* (0.01, 3rd) 
 38 32 M/63 Foot ulcer, OM Amputation of 1st–5th transmetatarsal joint 27 M. morganii Morganella (M. morganii)* dominant polymicrobial  
 39 42' M/47 Foot ulcer, OM Amputation of 2nd–5th transmetatarsal joint 27 P. aeruginosa Pseudomonas (P. aeruginosa)* dominant polymicrobial  
 40 33 M/73 Foot ulcer, OM Amputation of 2nd toe 16 E. coli Anaerococcus (A. vaginalis) dominant polymicrobial Escherichia (E. fergusonii > E. coli)* (0.01, 9th) 
 41 34 M/64 Foot ulcer, OM Debridement of 5th metatarsal bone 48 S. epidermidis Staphylococcus (S. epidermidis)* dominant polymicrobial  
 42 35 M/56 Foot ulcer, OM Amputation of 4–5th transmetatarsal joint 11 No growth (Candida tropicalisStreptococcus (S. mitis) dominant polymicrobial  
 43 36 M/78 Foot ulcer, OM Amputation of 1st toe S. aureus Peptoniphilus (P. grossensis) dominant polymicrobial Staphylococcus (S. aureus)* (0.08, 7th) 
 44 37 M/70 Foot ulcer, OM Amputation of 5th toe Corynebacterium species Corynebacterium (C. striatum)* dominant polymicrobial  
Monomicrobial infections        
 45 02' M/58 Foot ulcer and gangrene Amputation of 1st–5th transmetatarsal joint 42 E. coli Escherichia (E. fergusonii > E. albertii > E. coli)* monomicrobial  
 46 38 M/69 Foot ulcer, OM Amputation of 1st–5th transmetatarsal joint 39 Klebsiella aerogenes Klebsiella (K. aerogenes) monomicrobial  – 
 47 12' M/79 Foot ulcer and gangrene Partial excision of 3rd toe 12 No growth Anaerococcus (A. vaginalis) monomicrobial  
 48 39 F/76 Foot ulcer, OM Resection of shaft of 5th metatarsal bone Acinetobacter baumannii Acinetobacter (A. baumannii)* monomicrobial  
 49 40 M/49 Septic ankle Debridement of ankle 15 S. viridans group Streptococcus (S. vestibularis)* monomicrobial  
 50 41 M/86 Foot ulcer and gangrene BK amputation 18 S. aureus Staphylococcus (S. aureus)* monomicrobial  
 51 42 M/47 Foot ulcer, OM Drainage of abscess 20 S. aureus Staphylococcus (S. aureus)* monomicrobial  
 52 43 M/77 Foot ulcer, OM Amputation of 1st toe 16 No growth Staphylococcus (S. epidermidis) monomicrobial  
 53 44 M/76 Foot ulcer, OM Amputation of 4th toe 21 P. vulgaris Proteus (P. vulgaris)* monomicrobial  
 54 45 M/81 Foot abscess Drainage of abscess 25 K. pneumoniae Klebsiella (K. pneumoniae)* monomicrobial  

Admin., administrative; BK, below knee; F, female; L, left; M, male; OM, osteomyelitis; R, right. ’ and ’’ in the patient no. represent experiments performed on different samples in the same patient.

Number of days each patient was hospitalized when the surgery was performed to obtain samples.

Experiments for 16S sequencing was only performed during the working hours of weekdays. Despite these shortcomings, this column demonstrates whether the result of 16S sequencing came out before the culture studies.

*

These bacteria identified by 16S sequencing were also isolated by culture studies.

Table 2

Pathogens that were frequently observed by culture studies and 16S rDNA sequencing

Frequently isolated bacteria by culture, nFrequently isolated bacteria by 16S rDNA sequencing, nFrequently missed bacteria by culture (≥5), nDominant pathogen by 16S rDNA sequencing (n = 44), n (missed by culture)
Staphylococcus 18 Staphylococcus 25 Prevotella 20 Prevotella 7 (6) 
Streptococcus 16 Finegoldia 23 Finegoldia 19 Bacteroides 6 (6) 
Escherichia 10 Prevotella 21 Anaerococcus 18 Streptococcus 4 (1) 
Enterococcus Streptococcus 21 Bacteroides* 15 Anaerococcus 3 (3) 
Enterobacter Anaerococcus 19 Peptoniphilus* 12 Enterobacter 3 (0) 
Klebsiella Bacteroides 15 Fusobacterium* 10 Pseudomonas 3 (0) 
Finegoldia Enterococcus 13 Staphylococcus Staphylococcus 3 (0) 
Morganella Escherichia 12 Campylobacter* Parvimonas 2 (2) 
Pseudomonas Peptoniphilus 12 Streptococcus Proteus 1 (1) 
Serratia Fusobacterium 10 Haemophilus* Achromobacter 1 (1) 
Citrobacter Corynebacterium Parvimonas* Aeromonas 1 (0) 
Corynebacterium Klebsiella Peptostreptococcus* Corynebacterium 1 (0) 
Proteus Campylobacter Corynebacterium Enterococcus 1 (1) 
Acinetobacter Enterobacter Porphyromonas* Escherichia 1 (0) 
Aeromonas Haemophilus Veillonella Finegoldia 1 (1) 
Anaerococcus Parvimonas   Fusobacterium 1 (1) 
Prevotella Peptostreptococcus   Klebsiella 1 (0) 
Veillonella Pseudomonas   Lactobacillus 1 (1) 
  Serratia   Morganella 1 (0) 
  Veillonella   Peptoniphilus 1 (1) 
  Citrobacter   Serratia 1 (0) 
  Porphyromonas     
  Morganella     
  Proteus     
  Solobacterium     
  Atopobium     
  Dialister     
  Helcococcus     
  Pectobacterium     
  Providencia     
  Acinetobacter     
  Gemella     
  Mogibacterium     
  Stenotrophomonas     
  Achromobacter     
  Aeromonas     
  Arcanobacterium     
  Cutibacterium     
  Lachnoclostridium     
  Lactobacillus     
  Raoultella     
  Vibrio     
  Xenorhabdus     
Frequently isolated bacteria by culture, nFrequently isolated bacteria by 16S rDNA sequencing, nFrequently missed bacteria by culture (≥5), nDominant pathogen by 16S rDNA sequencing (n = 44), n (missed by culture)
Staphylococcus 18 Staphylococcus 25 Prevotella 20 Prevotella 7 (6) 
Streptococcus 16 Finegoldia 23 Finegoldia 19 Bacteroides 6 (6) 
Escherichia 10 Prevotella 21 Anaerococcus 18 Streptococcus 4 (1) 
Enterococcus Streptococcus 21 Bacteroides* 15 Anaerococcus 3 (3) 
Enterobacter Anaerococcus 19 Peptoniphilus* 12 Enterobacter 3 (0) 
Klebsiella Bacteroides 15 Fusobacterium* 10 Pseudomonas 3 (0) 
Finegoldia Enterococcus 13 Staphylococcus Staphylococcus 3 (0) 
Morganella Escherichia 12 Campylobacter* Parvimonas 2 (2) 
Pseudomonas Peptoniphilus 12 Streptococcus Proteus 1 (1) 
Serratia Fusobacterium 10 Haemophilus* Achromobacter 1 (1) 
Citrobacter Corynebacterium Parvimonas* Aeromonas 1 (0) 
Corynebacterium Klebsiella Peptostreptococcus* Corynebacterium 1 (0) 
Proteus Campylobacter Corynebacterium Enterococcus 1 (1) 
Acinetobacter Enterobacter Porphyromonas* Escherichia 1 (0) 
Aeromonas Haemophilus Veillonella Finegoldia 1 (1) 
Anaerococcus Parvimonas   Fusobacterium 1 (1) 
Prevotella Peptostreptococcus   Klebsiella 1 (0) 
Veillonella Pseudomonas   Lactobacillus 1 (1) 
  Serratia   Morganella 1 (0) 
  Veillonella   Peptoniphilus 1 (1) 
  Citrobacter   Serratia 1 (0) 
  Porphyromonas     
  Morganella     
  Proteus     
  Solobacterium     
  Atopobium     
  Dialister     
  Helcococcus     
  Pectobacterium     
  Providencia     
  Acinetobacter     
  Gemella     
  Mogibacterium     
  Stenotrophomonas     
  Achromobacter     
  Aeromonas     
  Arcanobacterium     
  Cutibacterium     
  Lachnoclostridium     
  Lactobacillus     
  Raoultella     
  Vibrio     
  Xenorhabdus     
*

These bacteria were never cultivated in culture tests.

Nanopore 16S Sequencing Was More Sensitive Than Conventional Culture Studies

All bacteria isolated by culture studies were identified by 16S sequencing except for one case. In this patient (patient 7, Table 1 and Fig. 2), Staphylococcus aureus, a frequent source of contamination, was only isolated in the culture studies. Overall, the 16S sequencing revealed the presence of many anaerobes that were not isolated by culture studies from the samples.

The bacteria that were frequently missed by the culture studies were Prevotella (n = 20), Finegoldia (n = 19), Anaerococcus (n = 18), and Bacteroides (n = 15). Bacteroides, Peptoniphilus (n = 12), Fusobacterium (n = 10), Campylobacter (n = 7), Haemophilus (n = 6), Parvimonas (n = 6), Peptostreptococcus (n = 6), and Porphyromonas (n = 5) were only identified by 16S sequencing and not by culture studies (Table 2 and Fig. 2).

Nanopore 16S Sequencing Was Useful for Differentiating Polymicrobial Infections From Monomicrobial Infections

After 16S sequencing, multiple bacteria were revealed in the majority of cases (44 of 54, 81.5%). In addition, the sequenced reads were aligned to a single bacterium in 10 of 54 cases, leading to the diagnosis of monomicrobial infections (illustrative case in Fig. 1B). Thus, the 16S sequencing was capable of differentiating polymicrobial infections from monomicrobial infections.

According to the results of the culture studies, polymicrobial infections were only suspected in 32 cases, and a single bacterium was isolated in 18 cases. Among these 18 cases, 10 turned out to be polymicrobial infections by 16S sequencing. In four cases, no bacteria were cultivated despite the confirmation of bacterial infections by 16S sequencing. Two of these four cases actually had polymicrobial infections that were only revealed by 16S sequencing (Table 1 and Fig. 2). In summary, the 16S sequencing was superior to the culture studies in differentiating polymicrobial infections from monomicrobial infections.

Nanopore 16S Sequencing Provided Clues to the Dominant Pathogen Among the Polymicrobial Infections

In cases of polymicrobial infections, the sequenced reads were aligned to multiple bacteria (illustrative case in Fig. 1C). Assuming that the 16S PCR would amplify the sequence of each bacterium at a similar rate, the bacterium with the largest number of aligned reads could be considered as the most abundant pathogen in the sample. In addition, the relative abundance of certain bacteria was assessed by comparing the number of reads aligned to each bacterium.

The 16S sequencing was useful for monitoring the remaining pathogen. In some cases, 16S sequencing was repeated after prolonged antibiotic treatment. The composition of the pathogens was changed in the follow-up 16S sequencing (illustrative case in Fig. 1D).

Uncultured Anaerobes Were the Dominant Pathogens in the Majority of the Cases

Among the 44 polymicrobial infections revealed by 16S sequencing, the dominant pathogens were frequently missed by the culture studies. In 23 of 44 (55%) cases, the most abundant pathogen revealed by 16S sequencing was not isolated in the culture studies. The most frequently missed dominant pathogens were Prevotella (n = 6) and Bacteroides (n = 6) followed by Anaerococcus (n = 3) and Parvimonas (n = 2) (Fig. 3 and Table 2).

Figure 3

The list of dominant pathogens among the polymicrobial infections. Among the polymicrobial infections identified by 16S sequencing (n = 44), the dominant pathogen could be identified according to the number of aligned reads. Prevotella (n = 7, 16%) and Bacteroides (n = 6, 14%) were most frequently presented as the dominant pathogens by 16S sequencing. However, more than one-half (n = 23, 55%) of these dominant pathogens were not cultivated in the conventional culture studies. Prevotella (n = 6) and Bacteroides (n = 6) were frequently missed by the culture studies, although they were in fact the most abundant in the samples.

Figure 3

The list of dominant pathogens among the polymicrobial infections. Among the polymicrobial infections identified by 16S sequencing (n = 44), the dominant pathogen could be identified according to the number of aligned reads. Prevotella (n = 7, 16%) and Bacteroides (n = 6, 14%) were most frequently presented as the dominant pathogens by 16S sequencing. However, more than one-half (n = 23, 55%) of these dominant pathogens were not cultivated in the conventional culture studies. Prevotella (n = 6) and Bacteroides (n = 6) were frequently missed by the culture studies, although they were in fact the most abundant in the samples.

Close modal

Moreover, the majority of the pathogens isolated by the culture studies were located in the lower ranks of the list of pathogens (illustrative case in Fig. 1C). Within the cases with polymicrobial infections, the culture studies isolated 88 bacteria. Among these, 33 (37.5%) bacteria isolated from the culture studies were actually below third place in the 16S sequencing (Table 1).

Nanopore 16S Sequencing Could Be Faster Than Culture Studies

The 16S sequencing was much faster than the culture studies. Since the reduction in turnaround time was not the primary objective of this study, the 16S sequencing was conducted only during weekday working hours. When the surgery was performed during nighttime or during the weekend, samples were stored at 4°C until the experimental procedures. Nevertheless, 16S sequencing revealed the results earlier than the culture studies in most of the cases. In 50 of 54 (92.6%) cases, the 16S sequencing was faster than the culture studies (Table 1). In most of the cases, the sequencing was run for 2 h; however, when sequencing and analysis were performed simultaneously, the results were obtained within 30 min of sequencing. This finding implies that even shorter sequencing time (<1 h) would be sufficient for pathogen identification, thus shortening the turnaround time. At best, the turnaround time could be reduced to 6 h from DNA extraction to the analysis of the reads (23).

We performed nanopore 16S amplicon sequencing in surgical specimens from patients with medically intractable DFI. The 16S sequencing successfully identified all the bacteria isolated by the conventional culture studies, was more sensitive than the culture studies, and was capable of detecting multiple anaerobes that were not cultivated by the culture studies. Moreover, 16S sequencing was particularly useful in cases of polymicrobial infections. In some cases of polymicrobial infections, the dominant pathogens were only identified by 16S sequencing and not by culture studies. In addition, in most of the cases, 16S sequencing was faster than conventional culture studies.

Nanopore 16S sequencing was more sensitive than conventional culture studies in identifying pathogens. A substantial number of pathogens were only identified by 16S sequencing and not by culture studies. The 16S sequencing was particularly useful for detecting pathogens that are difficult or impossible to cultivate, especially when antibiotics were given before sample acquisition. This was in line with previous studies that showed that 16S sequencing is more sensitive than culture studies for pathogen detection in DFIs (1,3,26,27). Moreover, in most DFIs, antibiotics are prescribed before the debridement surgery (2830), which would be another reason for the lower diagnostic yield of the culture studies (3133). Thus, 16S sequencing would be very useful for pathogen identification in DFIs.

Nanopore 16S sequencing was particularly useful for the detection of polymicrobial infections. In most of the cases of polymicrobial infections, the culture studies only isolated one or two bacteria from the various lists. Certain bacteria that are difficult to cultivate were frequently missed by the culture studies. Moreover, some bacteria grow dominantly during the culture procedure, so the results may not reflect the true bacterial composition within the sample (3436). Even when culture studies can isolate multiple bacteria from a single specimen, it is hard to obtain quantitative data from culture studies. In addition, 16S sequencing could give information on the relative abundance of certain bacteria among the listed pathogens. Although the abundance and virulence of certain bacteria are not related to each other, these data would be considerably useful during the medical treatment of patients with DFI. When follow-up samples can be obtained regularly, antibiotics could be adjusted to target the predominant pathogen according to 16S sequencing results.

Because of nanopore 16S sequencing, we demonstrated that the majority of the medically intractable DFIs are caused by polymicrobial infections. Staphylococcus and Streptococcus were the most frequently isolated pathogens in medically intractable DFIs. Meanwhile, 16S sequencing revealed that Finegoldia, Prevotella, Anaerococcus, and Bacteroides are highly prevalent in medically intractable DFIs and seldom cultivated in culture studies. Previous studies using molecular techniques have also demonstrated that chronic DFIs are largely caused by anaerobes and polymicrobial infections (1,37). Johani et al. (38) conducted 16S amplicon sequencing in the intraoperative bone specimens of 20 patients with diabetic foot osteomyelitis. Their results revealed that 70% had polymicrobial infections, with Corynebacterium being the leading cause.

Additionally, nanopore 16S sequencing was even faster than culture studies for the detection of pathogens in DFIs. Although we did not put maximum effort into reducing the turnaround time in this study, the 16S sequencing method revealed the pathogen much earlier than the culture studies in most cases. At best, we believe that the turnaround time of 16S sequencing from DNA extraction to pathogen identification could be reduced to 6–9 h. This is comparable to our previous reports performed with other types of clinical samples (23). Nanopore sequencing is suitable for small, rapid sequencing tests; thus, rapid turnaround time will be appropriate for case-by-case applications.

Accurate diagnosis of pathogens could help to improve the poor prognosis of DFIs. Several factors are related to the poor prognosis of DFI, including the presence of microvascular disease, an impaired host immune response, and the occurrence of multilayered microbial communities within the wound known as biofilm (6,34,39). Empiric antibiotics are widely prescribed in the early stages of DFI on the basis of available clinical and epidemiological data (4043); however, the standard treatment of DFIs involves debridement of the necrotic tissue and antimicrobial treatment targeting the pathogens isolated by culture-dependent methods (28,29,44). Although the need for surgery is caused by various factors (i.e., poor circulation, abscess, osteomyelitis) and not only by the wrong choice of initial antibiotics, we should endeavor to search for an improved method to choose empiric antibiotics. Since the clinical management of osteomyelitis is not universally well defined, use of metagenomics may impart additional wisdom not currently appreciated in clinical practice. By using nanopore 16S sequencing, it will be possible to investigate whether prescribing different empiric antibiotics on the basis of the types of pathogens from the early stage of DFIs can affect patient outcomes. If the comprehensive list of pathogens can be monitored consecutively, it will help to establish precision antimicrobial therapeutics in patients with DFI. Even without the exact susceptibility data of the pathogen, antibiotics can be adjusted according to susceptibility data obtained from the community, or sometimes antibiotics can be narrowed down depending on the remaining pathogens. The efficacy of an antibiotics adjustment strategy that is based on 16S sequencing in patients with DFI needs to be investigated.

There are several limitations to this study. Because the current study was performed in a single institution, the results could have been biased by several factors. There is a possibility of selection bias since SNUH is a tertiary referral hospital. In addition, the expertise of the diagnostic laboratory in culture studies may affect the observations. Moreover, 16S sequencing cannot provide information about antibiotics susceptibility, and the abundance of certain pathogens is not directly related to their virulence. Nevertheless, obtaining accurate information about pathogens in a timely manner with 16S sequencing will help in managing patients with DFI. The prospective application of 16S sequencing for making refined adjustment of antibiotics in DFIs and their impact on prognosis should be investigated in the near future.

In conclusion, nanopore 16S sequencing was particularly useful for pathogen identification in medically intractable DFI. Because of superior sensitivity over culture studies, a greater variety of bacteria, including unculturable anaerobes, was revealed by the nanopore 16S sequencing with a shorter turnaround time. Therefore, nanopore 16S sequencing should be applied more widely in the management of DFIs, and its effect on the outcome of patients should be evaluated in subsequent studies.

Funding. This work was supported by a National Research Foundation of Korea (NRF) grant funded by the Ministry of Science and ICT, Republic of Korea (NRF-2019R1A2C4070284).

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

Author Contributions. J.M., D.Y.L., and K.C. contributed to the conception and design of the study. J.M. and K.C. wrote the manuscript. N.K., S.-T.L., K.-H.J., and D.O.L. contributed to the acquisition and analysis of data. H.S.L. contributed to the literature search and figure generation. K.-I.P. and S.K.L. contributed to the data interpretation. All authors reviewed the manuscript for scholarly content and accuracy and gave approval for the final draft. D.Y.L. and K.C. are the guarantors of this work and, as such, had full access to all the data in the study and take responsibility for the integrity of the data and the accuracy of the data analysis.

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