EcmPred: Prediction of extracellular matrix proteins based on random forest with maximum relevance minimum redundancy feature selection

Krishna Kumar Kandaswamy*, Ganesan Pugalenthi, Kai Uwe Kalies, Enno Hartmann, Thomas Martinetz

*Corresponding author for this work
9 Citations (Scopus)

Abstract

The extracellular matrix (ECM) is a major component of tissues of multicellular organisms. It consists of secreted macromolecules, mainly polysaccharides and glycoproteins. Malfunctions of ECM proteins lead to severe disorders such as marfan syndrome, osteogenesis imperfecta, numerous chondrodysplasias, and skin diseases. In this work, we report a random forest approach, EcmPred, for the prediction of ECM proteins from protein sequences. EcmPred was trained on a dataset containing 300 ECM and 300 non-ECM and tested on a dataset containing 145 ECM and 4187 non-ECM proteins. EcmPred achieved 83% accuracy on the training and 77% on the test dataset. EcmPred predicted 15 out of 20 experimentally verified ECM proteins. By scanning the entire human proteome, we predicted novel ECM proteins validated with gene ontology and InterPro. The dataset and standalone version of the EcmPred software is available at http://www.inb.uni-luebeck.de/tools-demos/Extracellular_matrix_proteins/EcmPred.

Original languageEnglish
JournalJournal of Theoretical Biology
Volume317
Pages (from-to)377-383
Number of pages7
ISSN0022-5193
DOIs
Publication statusPublished - 01.01.2013

Fingerprint

Dive into the research topics of 'EcmPred: Prediction of extracellular matrix proteins based on random forest with maximum relevance minimum redundancy feature selection'. Together they form a unique fingerprint.

Cite this