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Nature Communications
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Molecules, 2024
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Pharmaceutics
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2004
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2019
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Solubility Prediction of Drugs in Mixed Solvents Using Partial Solubility Parameters
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Journal of Pharmaceutical Sciences, 2011
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Prediction of aqueous solubility of drug-like molecules using a novel algorithm for automatic adjustment of relative importance of descriptors implemented in counter-propagation artificial neural networks
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International journal of pharmaceutics, 2012
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Experimental and Machine-Learning-Assisted Design of Pharmaceutically Acceptable Deep Eutectic Solvents for the Solubility Improvement of Non-Selective COX Inhibitors Ibuprofen and Ketoprofen
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Molecules/Molecules online/Molecules annual, 2024
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Prediction of Aqueous Solubility of Drug-Like Compounds by Using an Artificial Neural Network and Least-Squares Support Vector Machine
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Bulletin of the Chemical Society of Japan, 2010
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Molecules, 2023
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Local composition models in pharmaceutical chemistry. III. Prediction of drug solubility in binary aqueous mixtures
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International Journal of Pharmaceutics, 1986
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International Journal of Molecular Sciences, 2021
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Recent Advances in Thermo and Fluid Dynamics, 2015
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Journal of Cheminformatics
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In Silico Approaches to Prediction of Aqueous and DMSO Solubility of Drug-Like Compounds: Trends, Problems and Solutions
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Current Medicinal Chemistry, 2006
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In Silico Prediction of Aqueous Solubility: The Solubility Challenge
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Journal of Chemical Information and Modeling, 2009
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A unified ML framework for solubility prediction across organic solvents
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Digital Discovery
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Linear and nonlinear functions on modeling of aqueous solubility of organic compounds by two structure representation methods
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Journal of Computer-Aided Molecular Design, 2000
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Pharmaceutical Research, 2002
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Journal of Chemical Information and Modeling, 2003
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Modelling approaches for rational solvent selection in drug development : enhancing the solubility prediction of small molecules
Bruce Wareham
University of Strathclyde, 2019
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Deep Learning Model for Predicting Solvation Free Energies in Generic Organic Solvents
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International journal of pharmaceutics, 2017
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The E and C model for predicting the solubility of drugs in pure solvents
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International Journal of Pharmaceutics, 1996
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Investigation of Solubility of Mebendazole Drug using Linear Prediction and Multilayer Feed Forward Neural Network
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Indian Journal of Pharmaceutical Education and Research, 2021
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Computational aqueous solubility prediction for drug-like compounds in congeneric series
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European Journal of Medicinal Chemistry, 2008
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Atomistic Descriptors for Machine Learning Models of Solubility Parameters for Small Molecules and Polymers
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Polymers, 2021
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Solubility Prediction of Drugs in Supercritical Carbon Dioxide Using Artificial Neural Network
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