Heter-LP: A heterogeneous label propagation algorithm and its application in drug repositioning

[Display omitted] •Heter-LP is a heterogeneous label propagation algorithm, which could be used for different purposes.•An integrative network based method is proposed for drug repositioning by means of Heter-LP.•It could predict interactions of new entities; these interactions conclude trivial and...

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Veröffentlicht in:Journal of biomedical informatics 2017-04, Vol.68, p.167-183
Hauptverfasser: Lotfi Shahreza, Maryam, Ghadiri, Nasser, Mousavi, Seyed Rasoul, Varshosaz, Jaleh, Green, James R.
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Sprache:eng
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Zusammenfassung:[Display omitted] •Heter-LP is a heterogeneous label propagation algorithm, which could be used for different purposes.•An integrative network based method is proposed for drug repositioning by means of Heter-LP.•It could predict interactions of new entities; these interactions conclude trivial and non-trivial ones. Drug repositioning offers an effective solution to drug discovery, saving both time and resources by finding new indications for existing drugs. Typically, a drug takes effect via its protein targets in the cell. As a result, it is necessary for drug development studies to conduct an investigation into the interrelationships of drugs, protein targets, and diseases. Although previous studies have made a strong case for the effectiveness of integrative network-based methods for predicting these interrelationships, little progress has been achieved in this regard within drug repositioning research. Moreover, the interactions of new drugs and targets (lacking any known targets and drugs, respectively) cannot be accurately predicted by most established methods. In this paper, we propose a novel semi-supervised heterogeneous label propagation algorithm named Heter-LP, which applies both local and global network features for data integration. To predict drug-target, disease-target, and drug-disease associations, we use information about drugs, diseases, and targets as collected from multiple sources at different levels. Our algorithm integrates these various types of data into a heterogeneous network and implements a label propagation algorithm to find new interactions. Statistical analyses of 10-fold cross-validation results and experimental analyses support the effectiveness of the proposed algorithm.
ISSN:1532-0464
1532-0480
DOI:10.1016/j.jbi.2017.03.006