Elnaggar Jacob H, Lammons John W, Ardizzone Caleb M, Aaron Kristal J, Jacobs Clayton, Graves Keonte J, George Sheridan D, Luo Meng, Tamhane Ashutosh, Łaniewski Paweł, Quayle Alison J, Herbst-Kralovetz Melissa M, Cerca Nuno, Muzny Christina A, Taylor Christopher M
Department of Microbiology, Immunology, and Parasitology, Louisiana State University Health Sciences Center; New Orleans, Louisiana, USA.
Department of Microbiology, Indiana University School of Medicine; Indianapolis, IN, USA.
medRxiv. 2025 May 5:2025.05.02.25326872. doi: 10.1101/2025.05.02.25326872.
Bacterial vaginosis (BV) is a dysbiosis of the vaginal microbiome, characterized by the depletion of protective spp. and overgrowth of anaerobes. Artificial neural network (ANN) modeling of vaginal microbial communities offers an opportunity for early detection of incident BV (iBV). 16S rRNA gene sequencing and quantitative PCR was performed on longitudinal vaginal specimens collected from participants within 14 days of iBV or from healthy participants to calculate the inferred absolute abundance (IAA) of vaginal bacterial taxa. ANNs were trained using the IAA of vaginal taxa from 420 vaginal specimens to classify individual vaginal specimens as either pre-iBV (collected before iBV onset) or Healthy. Feature importance was assessed to understand how specific vaginal micro-organisms contributed to model predictions. ANN modeling accurately classified >97% of specimens as either pre-iBV or Healthy (sensitivity >96%, specificity >98%) using IAA of 20 vaginal taxa. Model prediction accuracy was maintained when training models using only a few key vaginal taxa. Models trained using only the top five most important features achieved an accuracy of >97%, sensitivity >92%, and specificity >99%. Model predictive accuracy was further improved by training models on specimens from white and black participants separately; using only three feature models achieved an accuracy >96%, sensitivity >91%, and specificity >91%. Feature analysis found that species and differed in how they contributed to model predictions in models trained with data stratified by race. A total of 420 vaginal specimens were analyzed, providing a robust dataset for model training and validation.
细菌性阴道病(BV)是阴道微生物群的一种生态失调,其特征是保护性菌种减少和厌氧菌过度生长。阴道微生物群落的人工神经网络(ANN)建模为早期检测新发BV(iBV)提供了机会。对在iBV发病14天内从参与者或健康参与者收集的纵向阴道标本进行16S rRNA基因测序和定量PCR,以计算阴道细菌类群的推断绝对丰度(IAA)。使用来自420个阴道标本的阴道类群的IAA对人工神经网络进行训练,以将个体阴道标本分类为iBV前(在iBV发作前收集)或健康。评估特征重要性以了解特定阴道微生物如何对模型预测做出贡献。使用20个阴道类群的IAA,人工神经网络建模将>97%的标本准确分类为iBV前或健康(敏感性>96%,特异性>98%)。仅使用少数关键阴道类群训练模型时,模型预测准确性得以维持。仅使用最重要的前五个特征训练的模型准确率>97%,敏感性>92%,特异性>99%。通过分别对白人参与者和黑人参与者的标本训练模型,进一步提高了模型预测准确性;仅使用三个特征模型时,准确率>96%,敏感性>91%,特异性>91%。特征分析发现,在按种族分层的数据训练的模型中,[具体菌种1]和[具体菌种2]对模型预测的贡献方式不同。总共分析了420个阴道标本,为模型训练和验证提供了一个强大的数据集。