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基于新型种子连接算法的网络疾病模块发现及其与病理生物学意义的关系。

Network-Based Disease Module Discovery by a Novel Seed Connector Algorithm with Pathobiological Implications.

机构信息

Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA 02115, USA.

Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA 02115, USA.

出版信息

J Mol Biol. 2018 Sep 14;430(18 Pt A):2939-2950. doi: 10.1016/j.jmb.2018.05.016. Epub 2018 May 20.

Abstract

Understanding the genetic basis of complex diseases is challenging. Prior work shows that disease-related proteins do not typically function in isolation. Rather, they often interact with each other to form a network module that underlies dysfunctional mechanistic pathways. Identifying such disease modules will provide insights into a systems-level understanding of molecular mechanisms of diseases. Owing to the incompleteness of our knowledge of disease proteins and limited information on the biological mediators of pathobiological processes, the key proteins (seed proteins) for many diseases appear scattered over the human protein-protein interactome and form a few small branches, rather than coherent network modules. In this paper, we develop a network-based algorithm, called the Seed Connector algorithm (SCA), to pinpoint disease modules by adding as few additional linking proteins (seed connectors) to the seed protein pool as possible. Such seed connectors are hidden disease module elements that are critical for interpreting the functional context of disease proteins. The SCA aims to connect seed disease proteins so that disease mechanisms and pathways can be decoded based on predicted coherent network modules. We validate the algorithm using a large corpus of 70 complex diseases and binding targets of over 200 drugs, and demonstrate the biological relevance of the seed connectors. Lastly, as a specific proof of concept, we apply the SCA to a set of seed proteins for coronary artery disease derived from a meta-analysis of large-scale genome-wide association studies and obtain a coronary artery disease module enriched with important disease-related signaling pathways and drug targets not previously recognized.

摘要

理解复杂疾病的遗传基础具有挑战性。先前的工作表明,与疾病相关的蛋白质通常不是孤立发挥作用的。相反,它们经常相互作用形成一个网络模块,该模块是功能失调的机制途径的基础。鉴定这种疾病模块将为了解疾病的分子机制提供系统水平的见解。由于我们对疾病蛋白的了解不完整,并且对病理生物学过程的生物介质的信息有限,许多疾病的关键蛋白(种子蛋白)似乎分散在人类蛋白质-蛋白质互作网络中,并形成少数小分支,而不是连贯的网络模块。在本文中,我们开发了一种基于网络的算法,称为种子连接器算法(SCA),通过尽可能少地向种子蛋白池中添加额外的连接蛋白(种子连接器)来精确定位疾病模块。这些种子连接器是隐藏的疾病模块元素,对于解释疾病蛋白的功能背景至关重要。SCA 的目的是连接种子疾病蛋白,以便可以基于预测的连贯网络模块来解码疾病机制和途径。我们使用包含 70 种复杂疾病和 200 多种药物的结合靶点的大型语料库验证了该算法,并证明了种子连接器的生物学相关性。最后,作为一个具体的概念验证,我们将 SCA 应用于一组源自大规模全基因组关联研究荟萃分析的冠心病种子蛋白,并获得了富含先前未识别的重要疾病相关信号通路和药物靶点的冠心病模块。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/339e/6097931/e14304bd4938/nihms969468f1.jpg

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