利用互补的多组学数据集成方法来了解肾脏疾病的机制。

IF 6.3 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Fadhl Alakwaa, Vivek Das, Arindam Majumdar, Viji Nair, Damian Fermin, Asim B Dey, Timothy Slidel, Dermot F Reilly, Eugene Myshkin, Kevin L Duffin, Yu Chen, Markus Bitzer, Subramaniam Pennathur, Frank C Brosius, Matthias Kretzler, Wenjun Ju, Anil Karihaloo, Sean Eddy
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引用次数: 0

摘要

慢性肾脏疾病(CKDs)是一个全球性的健康问题,需要全面了解其复杂的病理生理。本研究探索了使用两种互补的多维组学数据集成方法来阐明CKD进展的机制,作为概念的证明。来自临床表型和资源生物库核心(C-PROBE)队列的37名CKD参与者的基线生物样本,具有超过5年的前瞻性纵向结果数据,用于生成分子谱。组织转录组学、尿液和血浆蛋白质组学以及靶向尿液代谢组学分析采用两种正交多组学数据整合方法进行整合,一种是无监督的,另一种是有监督的。两种整合方法都确定了8种与长期预后显著相关的尿蛋白,并在同一队列中使用来自独立验证组的94个样本的调整生存模型中重复了这一结果。两种方法还发现了3条共享的富集通路:补体和凝血级联、细胞因子-细胞因子受体相互作用通路和JAK/STAT信号通路。在相同的数据上使用不同的多标量数据集成策略,可以识别和确定与CKD进展相关的疾病机制的优先级。随着肾脏疾病高维数据的扩展,这样的方法将是无价的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging complementary multi-omics data integration methods for mechanistic insights in kidney diseases.

Chronic kidney diseases (CKDs) are a global health concern, necessitating a comprehensive understanding of their complex pathophysiology. This study explores the use of 2 complementary multidimensional -omics data integration methods to elucidate mechanisms of CKD progression as a proof of concept. Baseline biosamples from 37 participants with CKD in the Clinical Phenotyping and Resource Biobank Core (C-PROBE) cohort with prospective longitudinal outcome data ascertained over 5 years were used to generate molecular profiles. Tissue transcriptomic, urine and plasma proteomic, and targeted urine metabolomic profiling were integrated using 2 orthogonal multi-omics data integration approaches, one unsupervised and the other supervised. Both integration methods identified 8 urinary proteins significantly associated with long-term outcomes, which were replicated in an adjusted survival model using 94 samples from an independent validation group in the same cohort. The 2 methods also identified 3 shared enriched pathways: the complement and coagulation cascades, cytokine-cytokine receptor interaction pathway, and the JAK/STAT signaling pathway. Use of different multiscalar data integration strategies on the same data enabled identification and prioritization of disease mechanisms associated with CKD progression. Approaches like this will be invaluable with the expansion of high-dimension data in kidney diseases.

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来源期刊
JCI insight
JCI insight Medicine-General Medicine
CiteScore
13.70
自引率
1.20%
发文量
543
审稿时长
6 weeks
期刊介绍: JCI Insight is a Gold Open Access journal with a 2022 Impact Factor of 8.0. It publishes high-quality studies in various biomedical specialties, such as autoimmunity, gastroenterology, immunology, metabolism, nephrology, neuroscience, oncology, pulmonology, and vascular biology. The journal focuses on clinically relevant basic and translational research that contributes to the understanding of disease biology and treatment. JCI Insight is self-published by the American Society for Clinical Investigation (ASCI), a nonprofit honor organization of physician-scientists founded in 1908, and it helps fulfill the ASCI's mission to advance medical science through the publication of clinically relevant research reports.
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