Litcius/Paper detail

FCTP-WSRC: Protein–Protein Interactions Prediction via Weighted Sparse Representation Based Classification

Meng Kong, Yusen Zhang, Da Xu, Wei Chen, Matthias Dehmer

2020Frontiers in Genetics23 citationsDOIOpen Access PDF

Abstract

The task of predicting protein-protein interactions (PPIs) has been essential in the context of understanding biological processes. This paper proposes a novel computational model namely FCTP-WSRC to predict PPIs effectively. Initially, combinations of the F-vector, composition (C) and transition (T) are used to map each protein sequence onto numeric feature vectors. Afterwards, an effective feature extraction method PCA (principal component analysis) is employed to reconstruct the most discriminative feature subspaces, which is subsequently used as input in weighted sparse representation based classification (WSRC) for prediction. The FCTP-WSRC model achieves accuracies of 96.67%, 99.82% and 98.09% for H. pylori, Human and Yeast datasets respectively. Furthermore, the FCTP-WSRC model performs well when predicting three significant PPIs networks: the single-core network (CD9), the multiple-core network (Ras-Raf-Mek-Erk-Elk-Srf pathway), and the cross-connection network (Wnt-related Network).

Topics & Concepts

Discriminative modelComputer sciencePattern recognition (psychology)Artificial intelligenceContext (archaeology)Feature (linguistics)Feature extractionRepresentation (politics)Principal component analysisSupport vector machineBiologyPolitical scienceLawPhilosophyPaleontologyPoliticsLinguisticsBioinformatics and Genomic NetworksMachine Learning in BioinformaticsComputational Drug Discovery Methods