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Using random forest to predict antimicrobial minimum inhibitory concentrations of nontyphoidal Salmonella in Taiwan

Chia‐Chi Wang, Yu-Ting Hung, Che-Yu Chou, Shih‐Ling Hsuan, Zeng-Weng Chen, Pei-Yu Chang, Tong‐Rong Jan, Chun-Wei Tung

2023Veterinary Research17 citationsDOIOpen Access PDF

Abstract

Antimicrobial resistance (AMR) is a global health issue and surveillance of AMR can be useful for understanding AMR trends and planning intervention strategies. Salmonella, widely distributed in food-producing animals, has been considered the first priority for inclusion in the AMR surveillance program by the World Health Organization (WHO). Recent advances in rapid and affordable whole-genome sequencing (WGS) techniques lead to the emergence of WGS as a one-stop test to predict the antimicrobial susceptibility. Since the variation of sequencing and minimum inhibitory concentration (MIC) measurement methods could result in different results, this study aimed to develop WGS-based random forest models for predicting MIC values of 24 drugs using data generated from the same laboratories in Taiwan. The WGS data have been transformed as a feature vector of 10-mers for machine learning. Based on rigorous validation and independent tests, a good performance was obtained with an average mean absolute error (MAE) less than 1 for both validation and independent test. Feature selection was then applied to identify top-ranked 10-mers that can further improve the prediction performance. For surveillance purposes, the genome sequence-based machine learning methods could be utilized to monitor the difference between predicted and experimental MIC, where a large difference might be worthy of investigation on the emerging genomic determinants.

Topics & Concepts

Random forestFeature selectionWhole genome sequencingSalmonellaComputational biologyData miningBiologyStatisticsGenomeBiotechnologyMachine learningComputer scienceMathematicsGeneticsGeneBacteriaAntibiotic Resistance in BacteriaSalmonella and Campylobacter epidemiologyGenomics and Phylogenetic Studies
Using random forest to predict antimicrobial minimum inhibitory concentrations of nontyphoidal Salmonella in Taiwan | Litcius