Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candidates, as it has a profound impact on the crystallization process. Solubility prediction, as an alternative to experiments which can reduce waste and improve crystallization process efficiency, has attracted increasing attention. However, there are still many urgent challenges thus far. Herein we used seven descriptors based on understanding dissolution behavior to establish two solubility prediction models by machine learning algorithms. The solubility data of 120 active pharmaceutical ingredients (APIs) in ethanol were considered in the prediction models, which were constructed by random decision forests and artificial neural network with o...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discove...
Abstract The current trend of chemical industries demands green processing, in particular with emplo...
Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candi...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies an...
Accurate solubility prediction is crucial across a range of scientific disciplines including drug ...
Prediction of drug solubility is a crucial problem in pharmaceutical industries for both drug delive...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
International audienceThe solubility of active pharmaceutical ingredients is a mandatory physicochem...
The solubility of active pharmaceutical ingredients is a mandatory physicochemical characteristic in...
Accurate in-silico models for predicting aqueous solubility are needed in drug design and discovery,...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discove...
Abstract The current trend of chemical industries demands green processing, in particular with emplo...
Solubility has been widely regarded as a fundamental property of small molecule drugs and drug candi...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies an...
Accurate solubility prediction is crucial across a range of scientific disciplines including drug ...
Prediction of drug solubility is a crucial problem in pharmaceutical industries for both drug delive...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
International audienceThe solubility of active pharmaceutical ingredients is a mandatory physicochem...
The solubility of active pharmaceutical ingredients is a mandatory physicochemical characteristic in...
Accurate in-silico models for predicting aqueous solubility are needed in drug design and discovery,...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discove...
Abstract The current trend of chemical industries demands green processing, in particular with emplo...