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Moth-flame optimization-based algorithm with synthetic dynamic PPI networks for discovering protein complexes

机译:基于蛾-火焰优化的具有合成动态PPI网络的算法,用于发现蛋白质复合物

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The prediction of protein complex in protein-protein interaction (PPI) networks plays such a crucial role in the understanding of biological processes. This paper presents a moth-flame optimization-based protein complex prediction algorithm, called MFOC. First of all, we build the reliable weighted dynamic PPI networks by synthesizing topological and biological information. After that, we utilize a layer-by-layer scheme to find the cores of protein complexes as the flames and let the moths fly spirally around the flames to form the complexes. To be specific, the critical proteins have priority as the hearts and cores are extended by the hearts. And then we use MFOC algorithm to make the moths converge to the flames in order to obtain the protein complexes. At last, a two-step filtration operation is executed to refine the predicted protein complexes. The proposed algorithm MFOC is applied to the reliable weighted dynamic protein interaction networks including DIP, Krogan and MIPS, and the numerous comparison results show that MFOC outperforms other classic algorithms for identifying protein complexes. (C) 2019 Elsevier B.V. All rights reserved.
机译:蛋白质-蛋白质相互作用(PPI)网络中蛋白质复合物的预测在理解生物学过程中起着至关重要的作用。本文提出了一种基于蛾-火焰优化的蛋白质复合物预测算法,称为MFOC。首先,我们通过综合拓扑和生物学信息来构建可靠的加权动态PPI网络。之后,我们采用逐层方案来寻找火焰中蛋白质复合物的核心,然后让飞蛾围绕火焰螺旋飞行以形成复合物。具体而言,关键蛋白具有优先权,因为心脏和核心被心脏延伸。然后我们使用MFOC算法使飞蛾收敛到火焰上以获得蛋白质复合物。最后,执行两步过滤操作以精炼预测的蛋白质复合物。所提出的算法MFOC被应用于可靠的加权动态蛋白质相互作用网络,包括DIP,Krogan和MIPS,大量的比较结果表明MFOC优于其他传统的蛋白质复合物识别算法。 (C)2019 Elsevier B.V.保留所有权利。

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