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Enabling late-stage drug diversification by high-throughput experimentation with geometric deep learning.

Authors :
Nippa DF
Atz K
Hohler R
Müller AT
Marx A
Bartelmus C
Wuitschik G
Marzuoli I
Jost V
Wolfard J
Binder M
Stepan AF
Konrad DB
Grether U
Martin RE
Schneider G
Source :
Nature chemistry [Nat Chem] 2024 Feb; Vol. 16 (2), pp. 239-248. Date of Electronic Publication: 2023 Nov 23.
Publication Year :
2024

Abstract

Late-stage functionalization is an economical approach to optimize the properties of drug candidates. However, the chemical complexity of drug molecules often makes late-stage diversification challenging. To address this problem, a late-stage functionalization platform based on geometric deep learning and high-throughput reaction screening was developed. Considering borylation as a critical step in late-stage functionalization, the computational model predicted reaction yields for diverse reaction conditions with a mean absolute error margin of 4-5%, while the reactivity of novel reactions with known and unknown substrates was classified with a balanced accuracy of 92% and 67%, respectively. The regioselectivity of the major products was accurately captured with a classifier F-score of 67%. When applied to 23 diverse commercial drug molecules, the platform successfully identified numerous opportunities for structural diversification. The influence of steric and electronic information on model performance was quantified, and a comprehensive simple user-friendly reaction format was introduced that proved to be a key enabler for seamlessly integrating deep learning and high-throughput experimentation for late-stage functionalization.<br /> (© 2023. The Author(s).)

Details

Language :
English
ISSN :
1755-4349
Volume :
16
Issue :
2
Database :
MEDLINE
Journal :
Nature chemistry
Publication Type :
Academic Journal
Accession number :
37996732
Full Text :
https://doi.org/10.1038/s41557-023-01360-5