Probing machine learning models based on high throughput experimentation data for the discovery of asymmetric hydrogenation catalysts.
Adarsh V KalikadienCecile ValsecchiRobbert van PuttenTor MaesMikko MuuronenNatalia DyubankovaLaurent LefortEvgeny A PidkoPublished in: Chemical science (2024)
Enantioselective hydrogenation of olefins by Rh-based chiral catalysts has been extensively studied for more than 50 years. Naively, one would expect that everything about this transformation is known and that selecting a catalyst that induces the desired reactivity or selectivity is a trivial task. Nonetheless, ligand engineering or selection for any new prochiral olefin remains an empirical trial-error exercise. In this study, we investigated whether machine learning techniques could be used to accelerate the identification of the most efficient chiral ligand. For this purpose, we used high throughput experimentation to build a large dataset consisting of results for Rh-catalyzed asymmetric olefin hydrogenation, specially designed for applications in machine learning. We showcased its alignment with existing literature while addressing observed discrepancies. Additionally, a computational framework for the automated and reproducible quantum-chemistry based featurization of catalyst structures was created. Together with less computationally demanding representations, these descriptors were fed into our machine learning pipeline for both out-of-domain and in-domain prediction tasks of selectivity and reactivity. For out-of-domain purposes, our models provided limited efficacy. It was found that even the most expensive descriptors do not impart significant meaning to the model predictions. The in-domain application, while partly successful for predictions of conversion, emphasizes the need for evaluating the cost-benefit ratio of computationally intensive descriptors and for tailored descriptor design. Challenges persist in predicting enantioselectivity, calling for caution in interpreting results from small datasets. Our insights underscore the importance of dataset diversity with broad substrate inclusion and suggest that mechanistic considerations could improve the accuracy of statistical models.
Keyphrases
- machine learning
- high throughput
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- highly efficient
- ionic liquid
- artificial intelligence
- room temperature
- working memory
- single cell
- metal organic framework
- deep learning
- randomized controlled trial
- multidrug resistant
- small molecule
- study protocol
- reduced graphene oxide
- electronic health record
- high resolution
- body composition
- molecular dynamics simulations
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- gold nanoparticles
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- carbon dioxide
- rna seq
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- resistance training
- single molecule
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