Identification and quantitation of clinically relevant microbes in patient samples: Comparison of three k-mer based classifiers for speed, accuracy, and sensitivity.
George S WattsJames E ThorntonKen Youens-ClarkAlise J PonseroMarvin J SlepianEmmanuel MenashiCharles HuWuquan DengDavid G ArmstrongSpenser ReedLee D CranmerBonnie L HurwitzPublished in: PLoS computational biology (2019)
Infections are a serious health concern worldwide, particularly in vulnerable populations such as the immunocompromised, elderly, and young. Advances in metagenomic sequencing availability, speed, and decreased cost offer the opportunity to supplement or even replace culture-based identification of pathogens with DNA sequence-based diagnostics. Adopting metagenomic analysis for clinical use requires that all aspects of the workflow are optimized and tested, including data analysis and computational time and resources. We tested the accuracy, sensitivity, and resource requirements of three top metagenomic taxonomic classifiers that use fast k-mer based algorithms: Centrifuge, CLARK, and KrakenUniq. Binary mixtures of bacteria showed all three reliably identified organisms down to 1% relative abundance, while only the relative abundance estimates of Centrifuge and CLARK were accurate. All three classifiers identified the organisms present in their default databases from a mock bacterial community of 20 organisms, but only Centrifuge had no false positives. In addition, Centrifuge required far less computational resources and time for analysis. Centrifuge analysis of metagenomes obtained from samples of VAP, infected DFUs, and FN showed Centrifuge identified pathogenic bacteria and one virus that were corroborated by culture or a clinical PCR assay. Importantly, in both diabetic foot ulcer patients, metagenomic sequencing identified pathogens 4-6 weeks before culture. Finally, we show that Centrifuge results were minimally affected by elimination of time-consuming read quality control and host screening steps.
Keyphrases
- antibiotic resistance genes
- gram negative
- data analysis
- quality control
- microbial community
- end stage renal disease
- wastewater treatment
- newly diagnosed
- multidrug resistant
- healthcare
- ejection fraction
- machine learning
- single cell
- chronic kidney disease
- ionic liquid
- single molecule
- mass spectrometry
- ms ms
- mental health
- deep learning
- functional connectivity
- liquid chromatography tandem mass spectrometry
- resting state
- antimicrobial resistance
- electronic health record
- high resolution
- acute respiratory distress syndrome
- social media
- liquid chromatography
- genetic diversity
- health promotion