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    Investigating the Impact of Antibiotics on Environmental Microbiota Through Machine Learning Models.

    Access Status
    In process
    Authors
    Du, Yiheng
    Ahmed, Khandaker Asif
    Hasan, Rakibul
    Hossain, Md Zakir
    Date
    2025
    Type
    Journal Article
    
    Metadata
    Show full item record
    Citation
    Du, Y. and Ahmed, K.A. and Hasan, M.R. and Hossain, M.Z. 2025. Investigating the Impact of Antibiotics on Environmental Microbiota Through Machine Learning Models. IET Syst Biol. 19 (1): pp. e70009-.
    Source Title
    IET Syst Biol
    DOI
    10.1049/syb2.70009
    ISSN
    1751-8849
    Faculty
    Faculty of Science and Engineering
    Faculty of Science and Engineering
    School
    School of Elec Eng, Comp and Math Sci (EECMS)
    School of Elec Eng, Comp and Math Sci (EECMS)
    URI
    http://hdl.handle.net/20.500.11937/97521
    Collection
    • Curtin Research Publications
    Abstract

    Antibiotic pollution in the environment can significantly impact soil microorganisms, such as altering the soil microbial community or emerging antibiotic-resistant bacteria. We propose three machine learning (ML) methods to investigate antibiotics' impact on microorganisms and predict microbial abundance. We examined the microbial abundances of various environmental soil samples treated with antibiotics. We developed 3 ML models: (Model 1) for predicting the most abundant bacterial classes in a specific treatment group; (Model 2) for predicting antibiotic treatment effects based on bacterial abundances; and (Model 3) for using data from short-term incubations to predict the data of community structure after stabilisation. In Model 1, the Random Forest model achieved the highest average accuracy, with a Coefficient of Variation mean of 0.05 and 0.14 in the training and test set. In Model 2, the accuracy of the random forest and SVM models have the highest accuracy (nearly 0.90). Model 3 demonstrates that the Random Forest can use data from short-term incubations to predict the abundance of bacterial communities after long-term stabilisation. This study highlights the potential of ML models as powerful tools for understanding microbial dynamics in response to antibiotic treatments. The code is publicly available at - https://github.com/DeweyYihengDu/ML_on_Microbiota.

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