Laboratory of Food Systems Biotechnology, Institute of Food, Nutrition, and Health, ETH Zürich, Switzerland.
Department of Basic Medical Sciences, College of Medicine-Phoenix, University of Arizona, Phoenix, Arizona, United States of America.
PLoS Comput Biol. 2022 Feb 23;18(2):e1009876. doi: 10.1371/journal.pcbi.1009876. eCollection 2022 Feb.
Emerging evidence suggests that host-microbe interaction in the cervicovaginal microenvironment contributes to cervical carcinogenesis, yet dissecting these complex interactions is challenging. Herein, we performed an integrated analysis of multiple "omics" datasets to develop predictive models of the cervicovaginal microenvironment and identify characteristic features of vaginal microbiome, genital inflammation and disease status. Microbiomes, vaginal pH, immunoproteomes and metabolomes were measured in cervicovaginal specimens collected from a cohort (n = 72) of Arizonan women with or without cervical neoplasm. Multi-omics integration methods, including neural networks (mmvec) and Random Forest supervised learning, were utilized to explore potential interactions and develop predictive models. Our integrated analyses revealed that immune and cancer biomarker concentrations were reliably predicted by Random Forest regressors trained on microbial and metabolic features, suggesting close correspondence between the vaginal microbiome, metabolome, and genital inflammation involved in cervical carcinogenesis. Furthermore, we show that features of the microbiome and host microenvironment, including metabolites, microbial taxa, and immune biomarkers are predictive of genital inflammation status, but only weakly to moderately predictive of cervical neoplastic disease status. Different feature classes were important for prediction of different phenotypes. Lipids (e.g. sphingolipids and long-chain unsaturated fatty acids) were strong predictors of genital inflammation, whereas predictions of vaginal microbiota and vaginal pH relied mostly on alterations in amino acid metabolism. Finally, we identified key immune biomarkers associated with the vaginal microbiota composition and vaginal pH (MIF), as well as genital inflammation (IL-6, IL-10, MIP-1α).
新出现的证据表明,宫颈阴道微环境中的宿主-微生物相互作用有助于宫颈癌的发生,但剖析这些复杂的相互作用具有挑战性。在此,我们对多个“组学”数据集进行了综合分析,以开发宫颈阴道微环境的预测模型,并确定阴道微生物组、生殖器炎症和疾病状态的特征。对来自亚利桑那州有或没有宫颈癌的女性队列(n = 72)的宫颈阴道标本进行了微生物组、阴道 pH 值、免疫蛋白质组和代谢组学测量。利用神经网络(mmvec)和随机森林监督学习等多组学整合方法来探索潜在的相互作用并开发预测模型。我们的综合分析表明,微生物和代谢特征训练的随机森林回归器可以可靠地预测免疫和癌症生物标志物的浓度,这表明与宫颈癌发生相关的阴道微生物组、代谢组和生殖器炎症之间存在密切对应关系。此外,我们表明,微生物组和宿主微环境的特征,包括代谢物、微生物分类群和免疫生物标志物,可预测生殖器炎症状态,但对宫颈癌疾病状态的预测能力仅为弱至中度。不同的特征类别对不同表型的预测很重要。脂质(如鞘脂和长链不饱和脂肪酸)是生殖器炎症的强预测因子,而阴道微生物群和阴道 pH 值的预测则主要依赖于氨基酸代谢的改变。最后,我们确定了与阴道微生物群组成和阴道 pH 值(MIF)以及生殖器炎症(IL-6、IL-10、MIP-1α)相关的关键免疫生物标志物。