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Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences

Antimicrobial resistance (AMR) is becoming a huge problem in countries all over the world, and new approaches to identifying strains resistant or susceptible to certain antibiotics are essential in fighting against antibiotic-resistant pathogens. Genotype-based machine learning methods showed great...

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Autores principales: Liu, Zhichang, Deng, Dun, Lu, Huijie, Sun, Jian, Lv, Luchao, Li, Shuhong, Peng, Guanghui, Ma, Xianyong, Li, Jiazhou, Li, Zhenming, Rong, Ting, Wang, Gang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7016212/
https://www.ncbi.nlm.nih.gov/pubmed/32117101
http://dx.doi.org/10.3389/fmicb.2020.00048
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author Liu, Zhichang
Deng, Dun
Lu, Huijie
Sun, Jian
Lv, Luchao
Li, Shuhong
Peng, Guanghui
Ma, Xianyong
Li, Jiazhou
Li, Zhenming
Rong, Ting
Wang, Gang
author_facet Liu, Zhichang
Deng, Dun
Lu, Huijie
Sun, Jian
Lv, Luchao
Li, Shuhong
Peng, Guanghui
Ma, Xianyong
Li, Jiazhou
Li, Zhenming
Rong, Ting
Wang, Gang
author_sort Liu, Zhichang
collection PubMed
description Antimicrobial resistance (AMR) is becoming a huge problem in countries all over the world, and new approaches to identifying strains resistant or susceptible to certain antibiotics are essential in fighting against antibiotic-resistant pathogens. Genotype-based machine learning methods showed great promise as a diagnostic tool, due to the increasing availability of genomic datasets and AST phenotypes. In this article, Support Vector Machine (SVM) and Set Covering Machine (SCM) models were used to learn and predict the resistance of the five drugs (Tetracycline, Ampicillin, Sulfisoxazole, Trimethoprim, and Enrofloxacin). The SVM model used the number of co-occurring k-mers between the genome of the isolates and the reference genes to learn and predict the phenotypes of the bacteria to a specific antimicrobial, while the SCM model uses a greedy approach to construct conjunction or disjunction of Boolean functions to find the most concise set of k-mers that allows for accurate prediction of the phenotype. Five-fold cross-validation was performed on the training set of the SVM and SCM model to select the best hyperparameter values to avoid model overfitting. The training accuracy (mean cross-validation score) and the testing accuracy of SVM and SCM models of five drugs were above 90% regardless of the resistant mechanism of which were acquired resistant or point mutation in the chromosome. The results of correlation between the phenotype and the model predictions of the five drugs indicated that both SVM and SCM models could significantly classify the resistant isolates from the sensitive isolates of the bacteria (p < 0.01), and would be used as potential tools in antimicrobial resistance surveillance and clinical diagnosis in veterinary medicine.
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spelling pubmed-70162122020-02-28 Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences Liu, Zhichang Deng, Dun Lu, Huijie Sun, Jian Lv, Luchao Li, Shuhong Peng, Guanghui Ma, Xianyong Li, Jiazhou Li, Zhenming Rong, Ting Wang, Gang Front Microbiol Microbiology Antimicrobial resistance (AMR) is becoming a huge problem in countries all over the world, and new approaches to identifying strains resistant or susceptible to certain antibiotics are essential in fighting against antibiotic-resistant pathogens. Genotype-based machine learning methods showed great promise as a diagnostic tool, due to the increasing availability of genomic datasets and AST phenotypes. In this article, Support Vector Machine (SVM) and Set Covering Machine (SCM) models were used to learn and predict the resistance of the five drugs (Tetracycline, Ampicillin, Sulfisoxazole, Trimethoprim, and Enrofloxacin). The SVM model used the number of co-occurring k-mers between the genome of the isolates and the reference genes to learn and predict the phenotypes of the bacteria to a specific antimicrobial, while the SCM model uses a greedy approach to construct conjunction or disjunction of Boolean functions to find the most concise set of k-mers that allows for accurate prediction of the phenotype. Five-fold cross-validation was performed on the training set of the SVM and SCM model to select the best hyperparameter values to avoid model overfitting. The training accuracy (mean cross-validation score) and the testing accuracy of SVM and SCM models of five drugs were above 90% regardless of the resistant mechanism of which were acquired resistant or point mutation in the chromosome. The results of correlation between the phenotype and the model predictions of the five drugs indicated that both SVM and SCM models could significantly classify the resistant isolates from the sensitive isolates of the bacteria (p < 0.01), and would be used as potential tools in antimicrobial resistance surveillance and clinical diagnosis in veterinary medicine. Frontiers Media S.A. 2020-02-06 /pmc/articles/PMC7016212/ /pubmed/32117101 http://dx.doi.org/10.3389/fmicb.2020.00048 Text en Copyright © 2020 Liu, Deng, Lu, Sun, Lv, Li, Peng, Ma, Li, Li, Rong and Wang. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Microbiology
Liu, Zhichang
Deng, Dun
Lu, Huijie
Sun, Jian
Lv, Luchao
Li, Shuhong
Peng, Guanghui
Ma, Xianyong
Li, Jiazhou
Li, Zhenming
Rong, Ting
Wang, Gang
Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title_full Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title_fullStr Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title_full_unstemmed Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title_short Evaluation of Machine Learning Models for Predicting Antimicrobial Resistance of Actinobacillus pleuropneumoniae From Whole Genome Sequences
title_sort evaluation of machine learning models for predicting antimicrobial resistance of actinobacillus pleuropneumoniae from whole genome sequences
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7016212/
https://www.ncbi.nlm.nih.gov/pubmed/32117101
http://dx.doi.org/10.3389/fmicb.2020.00048
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