Phenotype-Based Threat Assessment

Jing Yang,Mohammed Eslami,Yi-Pei Chen,Mayukh Das,Dongmei Zhang,Shaorong Chen,Alexandria-Jade Roberts,Mark Weston, Angelina Volkova, Kasra Faghihi, Robbie K Moore,Robert C Alaniz,Alice R Wattam,Allan Dickerman,Clark Cucinell, Jarred Kendziorski, Sean Coburn, Holly Paterson, Osahon Obanor, Jason Maples, Stephanie Servetas, Jennifer Dootz,Qing-Ming Qin,James E Samuel,Arum Han,Erin J van Schaik,Paul de Figueiredo

PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA(2022)

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摘要
Bacterial pathogen identification, which is critical for human health, has historically relied on culturing organisms from clinical specimens. More recently, the application of machine learning (ML) to whole-genome sequences (WGSs) has facilitated pathogen identification. However, relying solely on genetic information to identify emerging or new pathogens is fundamentally constrained, especially if novel virulence factors exist. In addition, even WGSs with ML pipelines are unable to discern phenotypes associated with cryptic genetic loci linked to virulence. Here, we set out to determine if ML using phenotypic hallmarks of pathogenesis could assess potential pathogenic threat without using any sequence-based analysis. This approach successfully classified potential pathogenetic threat associated with previously machine-observed and unobserved bacteria with 99% and 85% accuracy, respectively. This work establishes a phenotype-based pipeline for potential pathogenic threat assessment, which we term PathEngine, and offers strategies for the identification of bacterial pathogens.
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关键词
bacterial pathogen, machine learning, threat assessment, adherence, toxicity
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