2018 AIChE Annual Meeting
(667a) Greenness By Design for Pharmaceutical Synthetic Processes
Authors
In this presentation we incorporate a data science approach to classify historical processes according to the sequence of chemical transformations to support a predictive analytics framework capable of quantifying the probable efficiency of a proposed synthesis. This method leverages real-world data to predict PMI green chemistry scores for proposed synthesis options, acting as a decision tool during the route selection process, predicting greenness metrics for any proposed, potential, or any unoptimized synthetic route, and enabling the direct comparison of the greenness score of an optimized synthesis to all comparable chemistry. Monte Carlo simulation provides teams with a realistic expectation of typical and best-case process performance, and a calculator interface facilitates prediction and comparison of PMI metrics. We envision that this rational approach for route selection will deliver significant impact to the chemistry community enabling greener decisions to be made during the route selection and process development.