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PARGT: a software tool for predicting antimicrobial resistance in bacteria.


ABSTRACT: With the ever-increasing availability of whole-genome sequences, machine-learning approaches can be used as an alternative to traditional alignment-based methods for identifying new antimicrobial-resistance genes. Such approaches are especially helpful when pathogens cannot be cultured in the lab. In previous work, we proposed a game-theory-based feature evaluation algorithm. When using the protein characteristics identified by this algorithm, called 'features' in machine learning, our model accurately identified antimicrobial resistance (AMR) genes in Gram-negative bacteria. Here we extend our study to Gram-positive bacteria showing that coupling game-theory-identified features with machine learning achieved classification accuracies between 87% and 90% for genes encoding resistance to the antibiotics bacitracin and vancomycin. Importantly, we present a standalone software tool that implements the game-theory algorithm and machine-learning model used in these studies.

SUBMITTER: Chowdhury AS 

PROVIDER: S-EPMC7335159 | biostudies-literature | 2020 Jul

REPOSITORIES: biostudies-literature

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PARGT: a software tool for predicting antimicrobial resistance in bacteria.

Chowdhury Abu Sayed AS   Call Douglas R DR   Broschat Shira L SL  

Scientific reports 20200703 1


With the ever-increasing availability of whole-genome sequences, machine-learning approaches can be used as an alternative to traditional alignment-based methods for identifying new antimicrobial-resistance genes. Such approaches are especially helpful when pathogens cannot be cultured in the lab. In previous work, we proposed a game-theory-based feature evaluation algorithm. When using the protein characteristics identified by this algorithm, called 'features' in machine learning, our model acc  ...[more]

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