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从因果相互作用资源中构建疾病网络

Assembling Disease Networks From Causal Interaction Resources.

作者信息

Cesareni Gianni, Sacco Francesca, Perfetto Livia

机构信息

Department of Biology, University of Rome Tor Vergata, Rome, Italy.

Department of Biology, Fondazione Human Technopole, Milan, Italy.

出版信息

Front Genet. 2021 Jun 11;12:694468. doi: 10.3389/fgene.2021.694468. eCollection 2021.

Abstract

The development of high-throughput high-content technologies and the increased ease in their application in clinical settings has raised the expectation of an important impact of these technologies on diagnosis and personalized therapy. Patient genomic and expression profiles yield lists of genes that are mutated or whose expression is modulated in specific disease conditions. The challenge remains of extracting from these lists functional information that may help to shed light on the mechanisms that are perturbed in the disease, thus setting a rational framework that may help clinical decisions. Network approaches are playing an increasing role in the organization and interpretation of patients' data. Biological networks are generated by connecting genes or gene products according to experimental evidence that demonstrates their interactions. Till recently most approaches have relied on networks based on physical interactions between proteins. Such networks miss an important piece of information as they lack details on the functional consequences of the interactions. Over the past few years, a number of resources have started collecting causal information of the type protein A activates/inactivates protein B, in a structured format. This information may be represented as signed directed graphs where physiological and pathological signaling can be conveniently inspected. In this review we will (i) present and compare these resources and discuss the different scope in comparison with pathway resources; (ii) compare resources that explicitly capture causality in terms of data content and proteome coverage (iii) review how causal-graphs can be used to extract disease-specific Boolean networks.

摘要

高通量高内涵技术的发展以及它们在临床环境中应用的日益便捷,提高了人们对这些技术在诊断和个性化治疗方面产生重大影响的期望。患者的基因组和表达谱产生了在特定疾病条件下发生突变或其表达受到调节的基因列表。挑战仍然在于从这些列表中提取功能信息,这些信息可能有助于阐明疾病中受到干扰的机制,从而建立一个有助于临床决策的合理框架。网络方法在患者数据的组织和解释中发挥着越来越重要的作用。生物网络是根据证明基因或基因产物之间相互作用的实验证据将它们连接起来而生成的。直到最近,大多数方法都依赖于基于蛋白质之间物理相互作用的网络。这类网络缺少重要的信息,因为它们缺乏关于相互作用功能后果的细节。在过去几年中,一些资源已开始以结构化格式收集“A蛋白激活/失活B蛋白”这类因果信息。此信息可以表示为带符号的有向图,在其中可以方便地检查生理和病理信号传导。在本综述中,我们将:(i)介绍并比较这些资源,并与通路资源相比讨论不同的范围;(ii)在数据内容和蛋白质组覆盖方面比较明确捕获因果关系的资源;(iii)综述因果图如何用于提取疾病特异性布尔网络。

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