Department of Applied Data Science

Refined By:
Author:  Li, Hongjian
Date Issued:  2015

Results 1-7 of 7

Issue DateTitleAuthor(s)Type
12015Adapalene inhibits the activity of cyclin-dependent kinase 2 in colorectal carcinomaShi, Xi‑Nan ; Li, Hongjian ; Yao, Hong ; Liu, Xu ; Li, Ling ; Prof. LEUNG Kwong Sak ; Kung, Hsiang‑Fu ; Lin, Marie Chia‑Mi Peer Reviewed Journal Article
22015The Impact of Docking Pose Generation Error on the Prediction of Binding AffinityLi, Hongjian ; Prof. LEUNG Kwong Sak ; Wong, Man-Hon ; Ballester, Pedro J. Conference Paper
32015The importance of the regression model in the structure-based prediction of protein-ligand bindingLi, Hongjian ; Prof. LEUNG Kwong Sak ; Wong, Man-Hon ; Ballester, Pedro J. Conference Paper
42015Improving autodock vina using random forest: The growing accuracy of binding affinity prediction by the effective exploitation of larger data setsLi, Hongjian ; Prof. LEUNG Kwong Sak ; Wong, Man-Hon ; Ballester, Pedro J. Peer Reviewed Journal Article
52015In silico identification and in vitro and in vivo validation of anti-psychotic drug fluspirilene as a potential CDK2 inhibitor and a candidate anti-cancer drugShi, Xi-Nan ; Li, Hongjian ; Yao, Hong ; Liu, Xu ; Li, Ling ; Prof. LEUNG Kwong Sak ; Kung, Hsiangfu ; Lu, Di ; Wong, Man-Hon ; Lin, Marie Chia-Mi Peer Reviewed Journal Article
62015Low-Quality Structural and Interaction Data Improves Binding Affinity Prediction via Random ForestLi, Hongjian ; Prof. LEUNG Kwong Sak ; Wong, Man-Hon ; Ballester, Pedro J. Peer Reviewed Journal Article
72015The use of random forest to predict binding affinity in dockingLi, Hongjian ; Prof. LEUNG Kwong Sak ; Wong, Man-Hon ; Ballester, Pedro J. Conference Paper