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Identifying genuine protein–protein interactions within communities of gene co-expression networks using a deconvolution method

机译:使用反卷积方法识别基因共表达网络社区内真正的蛋白质相互作用

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Direct relationships between biological molecules connected in a gene co-expression network tend to reflect real biological activities such as gene regulation, protein-protein interactions (PPIs), and metabolisation. As correlation-based networks contain numerous indirect connections, those direct relationships are always 'hidden' in them. Compared with the global network, network communities imply more biological significance on predicting protein function, detecting protein complexes and studying network evolution. Therefore, identifying direct relationships in communities is a pervasive and important topic in the biological sciences. Unfortunately, this field has not been well studied. A major thrust of this study is to apply a deconvolution algorithm on communities stemming from different gene co-expression networks, which are constructed by fixing different thresholds for robustness analysis. Using the fifth Dialogue on Reverse Engineering Assessment and Methods challenge (DREAM5) framework, the authors demonstrate that nearly all new communities extracted from a 'deconvolution filter' contain more genuine PPIs than before deconvolution.
机译:连接在基因共表达网络中的生物分子之间的直接关系倾向于反映真实的生物学活动,例如基因调控,蛋白质-蛋白质相互作用(PPI)和代谢。由于基于关联的网络包含许多间接连接,因此这些直接关系始终被“隐藏”在其中。与全球网络相比,网络社区在预测蛋白质功能,检测蛋白质复合物和研究网络进化方面具有更多的生物学意义。因此,确定社区中的直接关系是生物科学中普遍且重要的主题。不幸的是,这一领域尚未得到很好的研究。这项研究的主要目的是将反卷积算法应用于源自不同基因共表达网络的社区,这些网络是通过固定不同阈值进行鲁棒性分析而构建的。作者使用第五次“逆向工程评估和方法对话”挑战(DREAM5)框架,证明了从“反卷积过滤器”提取的几乎所有新社区都比反卷积之前包含更多的真正PPI。

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