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Predicting Bacterial Vaginosis Development using Artificial Neural Networks.

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    Artificial neural network (ANN) modeling accurately detected bacterial vaginosis (BV) using vaginal microbiome data. This approach offers a promising tool for early detection of incident BV (iBV).

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    Area of Science:

    • Microbiology
    • Computational Biology
    • Gynecology

    Background:

    • Bacterial vaginosis (BV) is a vaginal microbiome dysbiosis linked to depleted *Lactobacillus* species and increased anaerobes.
    • Early detection of incident BV (iBV) is crucial for timely intervention and management.
    • Artificial neural network (ANN) modeling presents a novel approach for analyzing complex microbial community data.

    Purpose of the Study:

    • To develop and validate an ANN model for the early detection of incident BV (iBV) using vaginal microbial data.
    • To identify key vaginal bacterial taxa contributing to BV prediction.
    • To assess the impact of race-stratified data on model performance.

    Main Methods:

    • 16S rRNA gene sequencing and quantitative PCR were used to determine the inferred absolute abundance (IAA) of vaginal bacterial taxa.
    • ANN models were trained using IAA data from 420 vaginal specimens to classify samples as pre-iBV or Healthy.
    • Feature importance analysis was conducted to identify significant microbial contributors to model predictions.

    Main Results:

    • ANN models achieved high accuracy (>97%), sensitivity (>96%), and specificity (>98%) in classifying pre-iBV and Healthy specimens using 20 taxa.
    • Excellent predictive performance (>97% accuracy) was maintained even with models trained on only the top five most important features.
    • Race-stratified models demonstrated improved accuracy, with three-feature models achieving >96% accuracy for both White and Black participants.

    Conclusions:

    • ANN modeling is a highly accurate method for early detection of incident BV (iBV) using vaginal microbiome composition.
    • A small set of key vaginal taxa can effectively predict BV status, simplifying diagnostic approaches.
    • Stratifying models by race may enhance predictive accuracy, highlighting the need to consider population-specific microbial patterns.