早产易感性的生物标志物鉴定:利用系统生物学和机器学习方法进行阴道微生物组元分析。

IF 2.5 3区 医学 Q3 IMMUNOLOGY
Sudeepti Kulshrestha, Priyanka Narad, Brojen Singh, Somnath S. Pai, Pooja Vijayaraghavan, Ansh Tandon, Payal Gupta, Deepak Modi, Abhishek Sengupta
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引用次数: 0

摘要

问题:阴道微生物组在早产(PTB)的发生中起着重要作用,而早产在世界范围内大大增加了新生儿的死亡率。然而,目前的生物信息学方法大多集中于微生物组的分类和功能分析,限制了其阐明导致早产的复杂因素的能力:研究方法:从五个公开的数据集中共获得 3757 份阴道微生物组 16S rRNA 样本。根据妊娠结果将样本分为两类:早产(PTB)(N = 966)和过期产(N = 2791)。此外,样本还根据参与者的种族和孕期进行了进一步分类。使用 Ubuntu 环境下的 Parallel-META 3 软件对 16S rRNA 读数进行分类和功能分析。使用综合系统生物学和机器学习方法对获得的丰度进行分析,以确定导致 PTB 的关键微生物、途径和基因。对得到的特征进一步进行统计分析,以确定影响最大的九个特征:结果:我们发现了九个重要特征,即Shuttleworthia、Megasphaera、Sneathia、近端小管碳酸氢盐再生途径、系统性红斑狼疮途径、转录机制途径、lepA基因、epX基因和rpoD基因。这些基因的丰度在三个孕期都有变化:结论:由Shuttleworthia、Megasphaera和Sneathia引起的阴道感染以及脂多糖叶酸和视黄醛等小代谢物生物合成途径的改变可能会增加对PTB的易感性。已确定的生物、基因、途径及其网络可能是治疗增加肺结核风险的细菌感染的特定靶点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biomarker Identification for Preterm Birth Susceptibility: Vaginal Microbiome Meta-Analysis Using Systems Biology and Machine Learning Approaches

Problem

The vaginal microbiome has a substantial role in the occurrence of preterm birth (PTB), which contributes substantially to neonatal mortality worldwide. However, current bioinformatics approaches mostly concentrate on the taxonomic classification and functional profiling of the microbiome, limiting their abilities to elucidate the complex factors that contribute to PTB.

Method of study

A total of 3757 vaginal microbiome 16S rRNA samples were obtained from five publicly available datasets. The samples were divided into two categories based on pregnancy outcome: preterm birth (PTB) (N = 966) and term birth (N = 2791). Additionally, the samples were further categorized based on the participants’ race and trimester. The 16S rRNA reads were subjected to taxonomic classification and functional profiling using the Parallel-META 3 software in Ubuntu environment. The obtained abundances were analyzed using an integrated systems biology and machine learning approach to determine the key microbes, pathways, and genes that contribute to PTB. The resulting features were further subjected to statistical analysis to identify the top nine features with the greatest effect sizes.

Results

We identified nine significant features, namely Shuttleworthia, Megasphaera, Sneathia, proximal tubule bicarbonate reclamation pathway, systemic lupus erythematosus pathway, transcription machinery pathway, lepA gene, pepX gene, and rpoD gene. Their abundance variations were observed through the trimesters.

Conclusions

Vaginal infections caused by Shuttleworthia, Megasphaera, and Sneathia and altered small metabolite biosynthesis pathways such as lipopolysaccharide folate and retinal may increase the susceptibility to PTB. The identified organisms, genes, pathways, and their networks may be specifically targeted for the treatment of bacterial infections that increase PTB risk.

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来源期刊
CiteScore
6.20
自引率
5.60%
发文量
314
审稿时长
2 months
期刊介绍: The American Journal of Reproductive Immunology is an international journal devoted to the presentation of current information in all areas relating to Reproductive Immunology. The journal is directed toward both the basic scientist and the clinician, covering the whole process of reproduction as affected by immunological processes. The journal covers a variety of subspecialty topics, including fertility immunology, pregnancy immunology, immunogenetics, mucosal immunology, immunocontraception, endometriosis, abortion, tumor immunology of the reproductive tract, autoantibodies, infectious disease of the reproductive tract, and technical news.
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