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Feng Ding, Nikolay V. Dokholyan. Incorporating Backbone Flexibility in MedusaDock Improves Ligand-Binding Pose Prediction in the CSAR2011 Docking Benchmark. Journal of Chemical Information and Computer Sciences, 53(8):1871-1879, 2013. [doi]
Possibly Related PublicationsThe following publications are possibly variants of this publication: CSAR Benchmark of Flexible MedusaDock in Affinity Prediction and Nativelike Binding Pose SelectionPraveen Nedumpully-Govindan, Domen B. Jemec, Feng Ding. jcisd, 56(6):1042-1052, 2016. [doi] MedusaDock 2.0: Efficient and Accurate Protein-Ligand Docking With ConstraintsJian Wang, Nikolay V. Dokholyan. jcisd, 59(6):2509-2515, 2019. [doi]
The following publications are possibly variants of this publication: