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Network-Based Approaches to Explore Complex Biological Systems towards Network Medicine

机译:基于网络的方法,探索复杂的生物系统,走向网络医学

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Network medicine relies on different types of networks: from the molecular level of protein–protein interactions to gene regulatory network and correlation studies of gene expression. Among network approaches based on the analysis of the topological properties of protein–protein interaction (PPI) networks, we discuss the widespread DIAMOnD (disease module detection) algorithm. Starting from the assumption that PPI networks can be viewed as maps where diseases can be identified with localized perturbation within a specific neighborhood (i.e., disease modules), DIAMOnD performs a systematic analysis of the human PPI network to uncover new disease-associated genes by exploiting the connectivity significance instead of connection density. The past few years have witnessed the increasing interest in understanding the molecular mechanism of post-transcriptional regulation with a special emphasis on non-coding RNAs since they are emerging as key regulators of many cellular processes in both physiological and pathological states. Recent findings show that coding genes are not the only targets that microRNAs interact with. In fact, there is a pool of different RNAs—including long non-coding RNAs (lncRNAs) —competing with each other to attract microRNAs for interactions, thus acting as competing endogenous RNAs (ceRNAs). The framework of regulatory networks provides a powerful tool to gather new insights into ceRNA regulatory mechanisms. Here, we describe a data-driven model recently developed to explore the lncRNA-associated ceRNA activity in breast invasive carcinoma. On the other hand, a very promising example of the co-expression network is the one implemented by the software SWIM (switch miner), which combines topological properties of correlation networks with gene expression data in order to identify a small pool of genes—called switch genes—critically associated with drastic changes in cell phenotype. Here, we describe SWIM tool along with its applications to cancer research and compare its predictions with DIAMOnD disease genes.
机译:网络医学依赖于不同类型的网络:从蛋白质间相互作用的分子水平到基因调控网络以及基因表达的相关性研究。在基于蛋白质-蛋白质相互作用(PPI)网络的拓扑特性分析的网络方法中,我们讨论了广泛的DIAMOnD(疾病模块检测)算法。从可以将PPI网络视为可以在特定邻域(即疾病模块)内通过局部扰动识别疾病的地图的假设开始,DIAMOnD对人类PPI网络进行了系统分析,以通过发现新的疾病相关基因连接重要性而不是连接密度。过去几年见证了人们对理解转录后调控的分子机制的兴趣日益浓厚,特别是对非编码RNA的关注,因为它们已成为许多处于生理和病理状态的细胞过程的关键调控因子。最近的发现表明,编码基因并不是microRNA与之相互作用的唯一靶标。实际上,存在着许多不同的RNA,包括长的非编码RNA(lncRNA),它们相互竞争以吸引微RNA相互作用,从而充当竞争性内源RNA(ceRNA)。监管网络框架提供了一个强大的工具,可以收集有关ceRNA监管机制的新见解。在这里,我们描述了一种数据驱动的模型,该模型是最近开发的,用于探索乳腺癌浸润癌中与lncRNA相关的ceRNA活性。另一方面,共表达网络的一个非常有前途的例子是由软件SWIM(交换器)实现的,它将相关网络的拓扑特性与基因表达数据结合在一起,以识别一小部分基因。开关基因—与细胞表型的急剧变化密切相关。在这里,我们描述SWIM工具及其在癌症研究中的应用,并将其预测与DIAMOnD疾病基因进行比较。

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