Learning chemical intuition from humans in the loop

24 February 2023, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

The lead optimization process in drug discovery campaigns is an arduous endeavour where the input of many medicinal chemists is weighed in order to reach a desired molecular property profile. Building the expertise to successfully drive such projects collaboratively is a very time-consuming process that typically spans many years within a chemist's career. In this work we aim to replicate this process by applying artificial intelligence learning-to-rank techniques on feedback that was obtained from 35 chemists at Novartis over the course of several months. We exemplify the usefulness of the learned proxies in routine tasks such as compound prioritization, motif rationalization, and biased \textit{de novo} drug design. Annotated response data is provided, and developed models and code made available through a permissive open-source license.

Keywords

intuition
molskill
medchem
human

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