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Zengrui Wu

Showing results (1-10 of 63) with videos related to

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Frontiers in Pharmacology|October 26, 2018
Network-Based Methods for Prediction of Drug-Target InteractionsZengrui Wu, Weihua Li, Guixia Liu, et al.
Chinese Medicine|July 24, 2021
Insights into the molecular mechanisms of Huangqi decoction on liver fibrosis via computational systems pharmacology approachesBiting Wang, Zengrui Wu, Weihua Li, et al.
Briefings in Bioinformatics|January 18, 2022
ADENet: a novel network-based inference method for prediction of drug adverse eventsZhuohang Yu, Zengrui Wu, Weihua Li, et al.
Bioinformatics (Oxford, England)|December 11, 2020
MetaADEDB 2.0: a comprehensive database on adverse drug eventsZhuohang Yu, Zengrui Wu, Weihua Li, et al.
Briefings in Bioinformatics|August 23, 2022
Profiling prediction of nuclear receptor modulators with multi-task deep learning methods: toward the virtual screeningJiye Wang, Chaofeng Lou, Guixia Liu, et al.
Molecular Informatics|March 26, 2022
Drug Repurposing for Newly Emerged Diseases via Network-based Inference on a Gene-disease-drug NetworkLi Qin, Jiye Wang, Zengrui Wu, et al.
Chemical Research in Toxicology|May 10, 2017
Evaluation of Different Methods for Identification of Structural Alerts Using Chemical Ames Mutagenicity Data Set as a BenchmarkHongbin Yang, Jie Li, Zengrui Wu, et al.
Frontiers in Pharmacology|July 13, 2018
A Computational Systems Pharmacology Approach to Investigate Molecular Mechanisms of Herbal Formula Tian-Ma-Gou-Teng-Yin for Treatment of Alzheimer's DiseaseTianduanyi Wang, Zengrui Wu, Lixia Sun, et al.
Chemical Research in Toxicology|October 30, 2018
Prediction of Farnesoid X Receptor Disruptors with Machine Learning MethodsYue Chen, Hongbin Yang, Zengrui Wu, et al.
Toxicology Letters|October 4, 2019
Prediction of the allergic mechanism of haptens via a reaction-substructure-compound-target-pathway network systemPeiwen Di, Zengrui Wu, Hongbin Yang, et al.
Pageof 7

Showing results (1-10 of 63) with videos related to

Sort By:
Pageof 7
Frontiers in Pharmacology|October 26, 2018
Network-Based Methods for Prediction of Drug-Target InteractionsZengrui Wu, Weihua Li, Guixia Liu, et al.
Chinese Medicine|July 24, 2021
Insights into the molecular mechanisms of Huangqi decoction on liver fibrosis via computational systems pharmacology approachesBiting Wang, Zengrui Wu, Weihua Li, et al.
Briefings in Bioinformatics|January 18, 2022
ADENet: a novel network-based inference method for prediction of drug adverse eventsZhuohang Yu, Zengrui Wu, Weihua Li, et al.
Bioinformatics (Oxford, England)|December 11, 2020
MetaADEDB 2.0: a comprehensive database on adverse drug eventsZhuohang Yu, Zengrui Wu, Weihua Li, et al.
Briefings in Bioinformatics|August 23, 2022
Profiling prediction of nuclear receptor modulators with multi-task deep learning methods: toward the virtual screeningJiye Wang, Chaofeng Lou, Guixia Liu, et al.
Molecular Informatics|March 26, 2022
Drug Repurposing for Newly Emerged Diseases via Network-based Inference on a Gene-disease-drug NetworkLi Qin, Jiye Wang, Zengrui Wu, et al.
Chemical Research in Toxicology|May 10, 2017
Evaluation of Different Methods for Identification of Structural Alerts Using Chemical Ames Mutagenicity Data Set as a BenchmarkHongbin Yang, Jie Li, Zengrui Wu, et al.
Frontiers in Pharmacology|July 13, 2018
A Computational Systems Pharmacology Approach to Investigate Molecular Mechanisms of Herbal Formula Tian-Ma-Gou-Teng-Yin for Treatment of Alzheimer's DiseaseTianduanyi Wang, Zengrui Wu, Lixia Sun, et al.
Chemical Research in Toxicology|October 30, 2018
Prediction of Farnesoid X Receptor Disruptors with Machine Learning MethodsYue Chen, Hongbin Yang, Zengrui Wu, et al.
Toxicology Letters|October 4, 2019
Prediction of the allergic mechanism of haptens via a reaction-substructure-compound-target-pathway network systemPeiwen Di, Zengrui Wu, Hongbin Yang, et al.
Pageof 7