Issue 7, 2024

Geometric deep learning-guided Suzuki reaction conditions assessment for applications in medicinal chemistry

Abstract

Suzuki cross-coupling reactions are considered a valuable tool for constructing carbon–carbon bonds in small molecule drug discovery. However, the synthesis of chemical matter often represents a time-consuming and labour-intensive bottleneck. We demonstrate how machine learning methods trained on high-throughput experimentation (HTE) data can be leveraged to enable fast reaction condition selection for novel coupling partners. We show that the trained models support chemists in determining suitable catalyst-solvent-base combinations for individual transformations including an evaluation of the need for HTE screening. We introduce an algorithm for designing 96-well plates optimized towards reaction yields and discuss the model performance of zero- and few-shot machine learning. The best-performing machine learning model achieved a three-category classification accuracy of 76.3% (±0.2%) and an F1-score for a binary classification of 79.1% (±0.9%). Validation on eight reactions revealed a receiver operating characteristic (ROC) curve (AUC) value of 0.82 (±0.07) for few-shot machine learning. On the other hand, zero-shot machine learning models achieved a mean ROC-AUC value of 0.63 (±0.16). This study positively advocates the application of few-shot machine learning-guided reaction condition selection for HTE campaigns in medicinal chemistry and highlights practical applications as well as challenges associated with zero-shot machine learning.

Graphical abstract: Geometric deep learning-guided Suzuki reaction conditions assessment for applications in medicinal chemistry

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Article information

Article type
Research Article
Submitted
21 Marts 2024
Accepted
25 Maijs 2024
First published
31 Maijs 2024

RSC Med. Chem., 2024,15, 2310-2321

Geometric deep learning-guided Suzuki reaction conditions assessment for applications in medicinal chemistry

K. Atz, D. F. Nippa, A. T. Müller, V. Jost, A. Anelli, M. Reutlinger, C. Kramer, R. E. Martin, U. Grether, G. Schneider and G. Wuitschik, RSC Med. Chem., 2024, 15, 2310 DOI: 10.1039/D4MD00196F

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