利用阴道炎症和微生物组:预测试管婴儿成功的机器学习模型。

IF 7.8 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Ofri Bar, Stylianos Vagios, Omer Barkai, Joseph Elshirbini, Irene Souter, Jiawu Xu, Kaitlyn James, Charles Bormann, Makiko Mitsunami, Jorge E Chavarro, Philipp Foessleitner, Douglas S Kwon, Moran Yassour, Caroline Mitchell
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引用次数: 0

摘要

人类是唯一具有共生乳酸杆菌优势阴道微生物群的物种。生殖道微生物与生育结果有关,宫内炎症也与生育结果有关,这表明免疫反应可能介导不良结果。在这项初步研究中,我们比较了不明原因或男性因素不育(MFI)患者阴道微生物群组成和免疫标志物浓度,作为对照。我们应用了一种有监督的机器学习算法,该算法整合了微生物组和炎症数据来预测妊娠结局。28名参与者在三个试管婴儿周期点提供阴道拭子;18人成功怀孕。怀孕参与者的微生物多样性和炎症程度较低。其中,MFI病例多样性较高,但炎症较不明原因不孕症低。我们的模型在试管婴儿周期的时间点2显示出最高的预测精度。这些发现表明,阴道微生物群和炎症共同影响生育能力,可以为生殖医学的预测工具提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing vaginal inflammation and microbiome: a machine learning model for predicting IVF success.

Humans are the only species with a commensal Lactobacillus-dominant vaginal microbiota. Reproductive tract microbes have been linked to fertility outcomes, as has intrauterine inflammation, suggesting immune response may mediate adverse outcomes. In this pilot study, we compared vaginal microbiota composition and immune marker concentrations between patients with unexplained or male factor infertility (MFI), as a control. We applied a supervised machine learning algorithm that integrated microbiome and inflammation data to predict pregnancy outcomes.Twenty-eight participants provided vaginal swabs at three IVF cycle time points; 18 achieved pregnancy. Pregnant participants had lower microbial diversity and inflammation. Among them, MFI cases had higher diversity but lower inflammation than those with unexplained infertility. Our model showed the highest prediction accuracy at time point 2 of the IVF cycle. These findings suggest that vaginal microbiota and inflammation jointly impact fertility and can inform predictive tools in reproductive medicine.

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来源期刊
npj Biofilms and Microbiomes
npj Biofilms and Microbiomes Immunology and Microbiology-Microbiology
CiteScore
12.10
自引率
3.30%
发文量
91
审稿时长
9 weeks
期刊介绍: npj Biofilms and Microbiomes is a comprehensive platform that promotes research on biofilms and microbiomes across various scientific disciplines. The journal facilitates cross-disciplinary discussions to enhance our understanding of the biology, ecology, and communal functions of biofilms, populations, and communities. It also focuses on applications in the medical, environmental, and engineering domains. The scope of the journal encompasses all aspects of the field, ranging from cell-cell communication and single cell interactions to the microbiomes of humans, animals, plants, and natural and built environments. The journal also welcomes research on the virome, phageome, mycome, and fungome. It publishes both applied science and theoretical work. As an open access and interdisciplinary journal, its primary goal is to publish significant scientific advancements in microbial biofilms and microbiomes. The journal enables discussions that span multiple disciplines and contributes to our understanding of the social behavior of microbial biofilm populations and communities, and their impact on life, human health, and the environment.
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