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SELF-BLM: Prediction of drug-target interactions via self-training SVM

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Abstract
Predicting drug-target interactions is important for the development of novel drugs and the repositioning of drugs. To predict such interactions, there are a number of methods based on drug and target protein similarity. Although these methods, such as the bipartite local model (BLM), show promise, they often categorize unknown interactions as negative interaction. Therefore, these methods are not ideal for finding potential drug-target interactions that have not yet been validated as positive interactions. Thus, here we propose a method that integrates machine learning techniques, such as self-training support vector machine (SVM) and BLM, to develop a self-training bipartite local model (SELF-BLM) that facilitates the identification of potential interactions. The method first categorizes unlabeled interactions and negative interactions among unknown interactions using a clustering method. Then, using the BLM method and self-training SVM, the unlabeled interactions are self-trained and final local classification models are constructed. When applied to four classes of proteins that include enzymes, G-protein coupled receptors (GPCRs), ion channels, and nuclear receptors, SELF-BLM showed the best performance for predicting not only known interactions but also potential interactions in three protein classes compare to other related studies. The implemented software and supporting data are available at https://github.com/GIST-CSBL/SELF-BLM.
Author(s)
Keum, JongsooNam, Hojung
Issued Date
2017-02
Type
Article
DOI
10.1371/journal.pone.0171839
URI
https://scholar.gist.ac.kr/handle/local/13891
Publisher
Public Library of Science
Citation
PLoS ONE, v.12, no.2, pp.1 - 16
ISSN
1932-6203
Appears in Collections:
Department of Electrical Engineering and Computer Science > 1. Journal Articles
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