Microbial Risk Score for Capturing Microbial Characteristics, Integrating Multi-omics Data, and Predicting Disease Risk.

IF 0.5 1区 历史学 Q1 HISTORY
Chan Wang, Leopoldo N Segal, Jiyuan Hu, Boyan Zhou, Richard Hayes, Jiyoung Ahn, Huilin Li
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引用次数: 0

Abstract

Background: With the rapid accumulation of microbiome-wide association studies, a great amount of microbiome data are available to study the microbiome's role in human disease and advance the microbiome's potential use for disease prediction. However, the unique features of microbiome data hinder its utility for disease prediction.

Methods: Motivated from the polygenic risk score framework, we propose a microbial risk score (MRS) framework to aggregate the complicated microbial profile into a summarized risk score that can be used to measure and predict disease susceptibility. Specifically, the MRS algorithm involves two steps: 1) identifying a sub-community consisting of the signature microbial taxa associated with disease, and 2) integrating the identified microbial taxa into a continuous score. The first step is carried out using the existing sophisticated microbial association tests and pruning and thresholding method in the discovery samples. The second step constructs a community-based MRS by calculating alpha diversity on the identified sub-community in the validation samples. Moreover, we propose a multi-omics data integration method by jointly modeling the proposed MRS and other risk scores constructed from other omics data in disease prediction.

Results: Through three comprehensive real data analyses using the NYU Langone Health COVID-19 cohort, the gut microbiome health index (GMHI) multi-study cohort, and a large type 1 diabetes cohort separately, we exhibit and evaluate the utility of the proposed MRS framework for disease prediction and multi-omics data integration. In addition, the disease-specific MRSs for colorectal adenoma, colorectal cancer, Crohn's disease, and rheumatoid arthritis based on the relative abundances of 5, 6, 12, and 6 microbial taxa respectively are created and validated using the GMHI multi-study cohort. Especially, Crohn's disease MRS achieves AUCs of 0.88 ([0.85-0.91]) and 0.86 ([0.78-0.95]) in the discovery and validation cohorts, respectively.

Conclusions: The proposed MRS framework sheds light on the utility of the microbiome data for disease prediction and multi-omics integration, and provides great potential in understanding the microbiome's role in disease diagnosis and prognosis.

用于捕捉微生物特征、整合多组学数据和预测疾病风险的微生物风险评分。
背景:随着微生物组关联研究的快速积累,大量微生物组数据可供研究微生物组在人类疾病中的作用,并推动微生物组在疾病预测中的潜在应用。然而,微生物组数据的独特性阻碍了其在疾病预测中的应用:方法:受多基因风险评分框架的启发,我们提出了一种微生物风险评分(MRS)框架,将复杂的微生物特征汇总为一个可用于测量和预测疾病易感性的风险评分。具体来说,MRS 算法包括两个步骤:1)识别由与疾病相关的特征微生物类群组成的子群落;2)将识别出的微生物类群整合成一个连续的分数。第一步在发现样本中使用现有的复杂微生物关联测试以及剪枝和阈值法。第二步是通过计算验证样本中已识别亚群落的阿尔法多样性,构建基于群落的 MRS。此外,我们还提出了一种多组学数据整合方法,即在疾病预测中将所提出的 MRS 和从其他 omics 数据中构建的其他风险评分联合建模:结果:通过使用纽约大学朗贡健康中心 COVID-19 队列、肠道微生物组健康指数(GMHI)多项研究队列和大型 1 型糖尿病队列分别进行的三项综合真实数据分析,我们展示并评估了所提出的 MRS 框架在疾病预测和多组学数据整合方面的实用性。此外,基于 5、6、12 和 6 个微生物类群的相对丰度,我们利用 GMHI 多研究队列分别创建并验证了结直肠腺瘤、结直肠癌、克罗恩病和类风湿性关节炎的疾病特异性 MRS。特别是克罗恩病 MRS 在发现队列和验证队列中的 AUC 分别达到 0.88([0.85-0.91])和 0.86([0.78-0.95]):结论:所提出的 MRS 框架揭示了微生物组数据在疾病预测和多组学整合中的效用,为了解微生物组在疾病诊断和预后中的作用提供了巨大的潜力。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
24
期刊介绍: The Journal of the Economic and Social History of the Orient (JESHO) publishes original research articles in Asian, Near, Middle Eastern and Mediterranean Studies across history. The journal promotes world history from Asian and Middle Eastern perspectives and it challenges scholars to integrate cultural and intellectual history with economic, social and political analysis. The editors of the journal invite both early-career and established scholars to present their explorations into new fields of research. JESHO encourages debate across disciplines in the humanities and the social sciences. Published since 1958, JESHO is the oldest and most respected journal in its field. Please note that JESHO will not accept books for review.
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