(472d) A New Model for Solubility Prediction to Guide Solvent Selection for Process Development
AIChE Annual Meeting
2017
2017 Annual Meeting
Separations Division
Crystallization of Pharmaceutical and Biological Molecules
Wednesday, November 1, 2017 - 9:05am to 9:25am
This model was developed starting from a mechanistic perspective for crystal growth and dissolution, which is most applicable at temperatures far from the melt. The model can be implemented based on either the regression of a limited set of solubility data and the subsequent prediction of solute characteristics (magnitude of polar, dispersive and hydrogen bonding interactions, size) or using molecular modelling to approximate these characteristics directly. The regression approach has proven to be efficient (requiring minutes) and accurate for single solvent systems. This model has been extended to mixtures of two solvents, and coupled with crystallization process design calculations to predict yield, and provide a rough process outline to the end user. The intention being that once a âgoodâ system has been found (determined using the model) it can be verified experimentally. This model has been applied to several systems (~20 solutes and 200 solute/solvent combinations) including the modelling of a solubility data set for paracetamol and caffeine collected within the Enabling Technologies Consortium.