Background: Predicting drug-protein interactions from heterogeneous biological data sources is a key step for in silico drug discovery. The difficulty of this prediction task lies in the rarity of known drug-protein interactions and myriad unknown interactions to be predicted. To meet this challenge, a manifold regularization semi-supervised learning method is presented to tackle this issue by using labeled and unlabeled information which often generates better results than using the labeled data alone. Furthermore, our semi-supervised learning method integrates known drug-protein interaction network information as well as chemical structure and genomic sequence data.Results: Using the proposed method, we predicted certain drug-protein interactions on the enzyme, ion channel, GPCRs, and nuclear receptor data sets. Some of them are confirmed by the latest publicly available drug targets databases such as KEGG.Conclusions: We report encouraging results of using our method for drug-protein interaction network reconstruction which may shed light on the molecular interaction inference and new uses of marketed drugs. © 2010 Xia et al; licensee BioMed Central Ltd.
CITATION STYLE
Xia, Z., Wu, L. Y., Zhou, X., & Wong, S. T. C. (2010). Semi-supervised drug-protein interaction prediction from heterogeneous biological spaces. BMC Systems Biology, 4(SUPPL. 2). https://doi.org/10.1186/1752-0509-4-6
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