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双团扩展作为识别代谢化合物-蛋白质相互作用网络中缺失连接的有效方法。

Biclique extension as an effective approach to identify missing links in metabolic compound-protein interaction networks.

作者信息

Thieme Sandra, Walther Dirk

机构信息

Max Planck Institute of Molecular Plant Physiology, Potsdam 14476, Germany.

出版信息

Bioinform Adv. 2022 Jan 12;2(1):vbac001. doi: 10.1093/bioadv/vbac001. eCollection 2022.

Abstract

MOTIVATION

Metabolic networks are complex systems of chemical reactions proceeding via physical interactions between metabolites and proteins. We aimed to predict previously unknown compound-protein interactions (CPI) in metabolic networks by applying biclique extension, a network-structure-based prediction method.

RESULTS

We developed a workflow, named BiPredict, to predict CPIs based on biclique extension and applied it to and human using their respective known CPI networks as input. Depending on the chosen biclique size and using a STITCH-derived CPI network as input, a sensitivity of 39% and an associated precision of 59% was reached. For the larger human STITCH network, a sensitivity of 78% with a false-positive rate of <5% and precision of 75% was obtained. High performance was also achieved when using KEGG metabolic-reaction networks as input. Prediction performance significantly exceeded that of randomized controls and compared favorably to state-of-the-art deep-learning methods. Regarding metabolic process involvement, TCA-cycle and ribosomal processes were found enriched among predicted interactions. BiPredict can be used for network curation, may help increase the efficiency of experimental testing of CPIs, and can readily be applied to other species.

AVAILABILITY AND IMPLEMENTATION

BiPredict and related datasets are available at https://github.com/SandraThieme/BiPredict.

SUPPLEMENTARY INFORMATION

Supplementary data are available at online.

摘要

动机

代谢网络是通过代谢物与蛋白质之间的物理相互作用进行的复杂化学反应系统。我们旨在通过应用双分子团扩展(一种基于网络结构的预测方法)来预测代谢网络中先前未知的化合物 - 蛋白质相互作用(CPI)。

结果

我们开发了一种名为BiPredict的工作流程,用于基于双分子团扩展预测CPI,并将其应用于[具体物种]和人类,分别使用各自已知的CPI网络作为输入。根据所选的双分子团大小,并使用源自STITCH的[具体物种]CPI网络作为输入,灵敏度达到39%,相关精度为59%。对于更大的人类STITCH网络,获得了78%的灵敏度、<5%的假阳性率和75%的精度。使用KEGG代谢反应网络作为输入时也取得了高性能。预测性能显著超过随机对照,并且与最先进的深度学习方法相比具有优势。关于代谢过程参与情况,发现预测的相互作用中三羧酸循环和核糖体过程富集。BiPredict可用于网络整理,可能有助于提高CPI实验测试的效率,并且可以很容易地应用于其他物种。

可用性和实现方式

BiPredict及相关数据集可在https://github.com/SandraThieme/BiPredict获取。

补充信息

补充数据可在网上获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/811b/9710583/5ec5103a562a/vbac001f1.jpg

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