Machine-Learning QSAR Model for Predicting Activity against Malaria Parasite’s Ion Pump PfATP4 and In Silico Binding Assay Validation
Published: Oct 18, 2017
Abstract
first_page settings Order Article Reprints Font Type: Arial Georgia Verdana Font Size: Aa Aa Aa Line Spacing: Column Width: Background: Open AccessAbstract Machine-Learning QSAR Model for Predicting Activity against Malaria Parasite’s Ion Pump PfATP4 and In Silico Binding Assay Validation † by Angela Lopez-Del Rio 1,2, Laura Llorach-Parés 1,3, Alexandre Perera-Lluna 2,4, Conxita Avila 3, Alfons Nonell-Canals 1 and Melchor...
Paper Details
Title
Machine-Learning QSAR Model for Predicting Activity against Malaria Parasite’s Ion Pump PfATP4 and In Silico Binding Assay Validation
Published Date
Oct 18, 2017
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