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A Machine Learning Approach Reveals a Microbiota Signature for Infection with Mycobacterium avium subsp. <i>paratuberculosis</i> in Cattle

Sang‐Mok Lee, Hong-Tae Park, Seojoung Park, Jun Ho Lee, Danil Kim, Danil Kim, Han Sang Yoo, Donghyuk Kim, Donghyuk Kim

2023Microbiology Spectrum16 citationsDOIOpen Access PDF

Abstract

Due to the limitations, such as intermittent bacterial shedding or poor sensitivity, of the current diagnostic tools for Johne's disease, novel biomarkers are urgently needed to aid control of the disease. Here, we explored the fecal microbiota of Johne's disease-affected cattle and tried to discover distinct microbial characteristics which have the potential to be novel noninvasive biomarkers. Through 16S rRNA sequencing and machine learning approaches, a dozen taxa were selected as taxonomic signatures to discriminate the disease state. In addition, when constructing predictive models using relative abundance data of the corresponding taxa, the models showed high accuracy for classification, even including animals with subclinical infection. Thus, our study suggested novel noninvasive microbiological biomarkers that are robustly expressed regardless of subclinical infection and the applicability of machine learning for diagnosis of Johne's disease.

Topics & Concepts

ParatuberculosisBiologyDysbiosisMicrobiomeReceiver operating characteristicDiseaseMycobacteriumComputational biologyMachine learningGeneticsMedicineBacteriaPathologyComputer scienceMycobacterium research and diagnosisGut microbiota and healthGinseng Biological Effects and Applications