TY - JOUR
T1 - A kernel matrix dimension reduction method for predicting drug-target interaction
AU - Kuang, Qifan
AU - Li, Yizhou
AU - Wu, Yiming
AU - Li, Rong
AU - Dong, Yongcheng
AU - Li, Yan
AU - Xiong, Qing
AU - Huang, Ziyan
AU - Li, Menglong
N1 - Publisher Copyright:
© 2017 Elsevier B.V.
PY - 2017/3/15
Y1 - 2017/3/15
N2 - The prediction of drug-target interactions plays an important role in the drug discovery process, which serves to identify new drugs or novel targets for existing drugs. However, experimental methods for predicting drug-target interactions are expensive and time-consuming. Therefore, the in silico prediction of drug-target interactions has recently attracted increasing attention. In this study, we proposed a kernel matrix dimension reduction method (KMDR) for predicting drug-target interactions, and in order to facilitate benchmark comparisons, two other representative algorithms, the Regularized Least Squares classifier (RLS) and the semi-supervised link prediction classifier (SLP), were also used to predict drug-target interactions on a same dataset. The results show that the kernel matrix reduction dimension method could improve the performance on drug-target interaction prediction; in particular, KMDR could significantly improve performance on low degree drug target interaction prediction. We further show that, in theory, the formulations of above three algorithms have a unified form, which could be seen as a kernel matrix transformation based on eigenvalue. This finding could provide us a research direction – to design better algorithms for predicting drug-target interaction by optimize kernel matrix transformation based on eigenvalue.
AB - The prediction of drug-target interactions plays an important role in the drug discovery process, which serves to identify new drugs or novel targets for existing drugs. However, experimental methods for predicting drug-target interactions are expensive and time-consuming. Therefore, the in silico prediction of drug-target interactions has recently attracted increasing attention. In this study, we proposed a kernel matrix dimension reduction method (KMDR) for predicting drug-target interactions, and in order to facilitate benchmark comparisons, two other representative algorithms, the Regularized Least Squares classifier (RLS) and the semi-supervised link prediction classifier (SLP), were also used to predict drug-target interactions on a same dataset. The results show that the kernel matrix reduction dimension method could improve the performance on drug-target interaction prediction; in particular, KMDR could significantly improve performance on low degree drug target interaction prediction. We further show that, in theory, the formulations of above three algorithms have a unified form, which could be seen as a kernel matrix transformation based on eigenvalue. This finding could provide us a research direction – to design better algorithms for predicting drug-target interaction by optimize kernel matrix transformation based on eigenvalue.
KW - Bipartite graph link prediction
KW - Drug-target interaction network
KW - Kernel matrix dimension reduction method
KW - Kernel matrix transformation
UR - https://www.scopus.com/pages/publications/85010338208
U2 - 10.1016/j.chemolab.2017.01.016
DO - 10.1016/j.chemolab.2017.01.016
M3 - Article
AN - SCOPUS:85010338208
SN - 0169-7439
VL - 162
SP - 104
EP - 110
JO - Chemometrics and Intelligent Laboratory Systems
JF - Chemometrics and Intelligent Laboratory Systems
ER -