Decision tree classifier based on topological characteristics of subgraph for the mining of protein complexes from large scale PPI networks

分类器(UML) 计算机科学 数据挖掘 决策树 机器学习 比例(比率) 人工智能 计算生物学 模式识别(心理学) 生物 地理 地图学
作者
Tushar Ranjan Sahoo,Sabyasachi Patra,Swati Vipsita
出处
期刊:Computational Biology and Chemistry [Elsevier BV]
卷期号:106: 107935-107935 被引量:8
标识
DOI:10.1016/j.compbiolchem.2023.107935
摘要

The growing accessibility of large-scale protein interaction data demands extensive research to understand cell organization and its functioning at the network level. Bioinformatics and data mining researchers have extensively studied network clustering to examine the structural and operational features of protein protein interaction (PPI) networks. Clustering PPI networks has proven useful in numerous research over the past two decades for identifying functional modules, understanding the roles of previously unknown proteins, and other purposes. Protein complexes represent one of the essential cellular components for creating biological activities. Inferring protein complexes has been made more accessible by experimental approaches. We offer a novel method that integrates the classification model with local topological data, making it more reliable and efficient. This article describes a decision tree classifier based on topological characteristics of the subgraph for mining protein complexes. The proposed graph-based algorithm is an effective and efficient way to identify protein complexes from large-scale PPI networks. The performance of the proposed algorithm is observed in protein-protein interaction networks of yeast and human in the Database of Interacting Proteins (DIP) and the Biological General Repository for Interaction Datasets (BioGRID) using widely accepted benchmark protein complexes from the comprehensive resource of mammalian protein complexes (CORUM) and the comprehensive catalogue of yeast protein complexes (CYC2008). The outcomes demonstrate that our method can outperform the best-performing supervised, semi-supervised, and unsupervised approaches to detecting protein complexes.

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