1. Identifying drug-pathway association pairs based on L2,1-integrative penalized matrix decomposition.
- Author
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Jin-Xing Liu, Dong-Qin Wang, Chun-Hou Zheng, Ying-Lian Gao, Sha-Sha Wu, and Jun-Liang Shang
- Subjects
TRADITIONAL medicine ,PERMUTATIONS ,MATRIX decomposition ,DRUG development ,MATHEMATICAL regularization - Abstract
Background: Traditional drug identification methods follow the "one drug-one target" thought. But those methods ignore the natural characters of human diseases. To overcome this limitation, many identification methods of drug-pathway association pairs have been developed, such as the integrative penalized matrix decomposition (iPaD) method. The iPaD method imposes the L
1 -norm penalty on the regularization term. However, lasso-type penalties have an obvious disadvantage, that is, the sparsity produced by them is too dispersive. Results: Therefore, to improve the performance of the iPaD method, we propose a novel method named L2,1 -iPaD to identify paired drug-pathway associations. In the L2,1 -iPaD model, we use the L2,1 -norm penalty to replace the L1-norm penalty since the L2,1 -norm penalty can produce row sparsity. Conclusions: By applying the L2,1 -iPaD method to the CCLE and NCI-60 datasets, we demonstrate that the performance of L2,1 -iPaD method is superior to existing methods. And the proposed method can achieve better enrichment in terms of discovering validated drug-pathway association pairs than the iPaD method by performing permutation test. The results on the two real datasets prove that our method is effective. [ABSTRACT FROM AUTHOR]- Published
- 2017
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