Communications Chemistry (Nov 2023)

Identifying opportunities for late-stage C-H alkylation with high-throughput experimentation and in silico reaction screening

  • David F. Nippa,
  • Kenneth Atz,
  • Alex T. Müller,
  • Jens Wolfard,
  • Clemens Isert,
  • Martin Binder,
  • Oliver Scheidegger,
  • David B. Konrad,
  • Uwe Grether,
  • Rainer E. Martin,
  • Gisbert Schneider

DOI
https://doi.org/10.1038/s42004-023-01047-5
Journal volume & issue
Vol. 6, no. 1
pp. 1 – 11

Abstract

Read online

Abstract Enhancing the properties of advanced drug candidates is aided by the direct incorporation of specific chemical groups, avoiding the need to construct the entire compound from the ground up. Nevertheless, their chemical intricacy often poses challenges in predicting reactivity for C-H activation reactions and planning their synthesis. We adopted a reaction screening approach that combines high-throughput experimentation (HTE) at a nanomolar scale with computational graph neural networks (GNNs). This approach aims to identify suitable substrates for late-stage C-H alkylation using Minisci-type chemistry. GNNs were trained using experimentally generated reactions derived from in-house HTE and literature data. These trained models were then used to predict, in a forward-looking manner, the coupling of 3180 advanced heterocyclic building blocks with a diverse set of sp3-rich carboxylic acids. This predictive approach aimed to explore the substrate landscape for Minisci-type alkylations. Promising candidates were chosen, their production was scaled up, and they were subsequently isolated and characterized. This process led to the creation of 30 novel, functionally modified molecules that hold potential for further refinement. These results positively advocate the application of HTE-based machine learning to virtual reaction screening.