使用图神经网络快速预测羧酸和烷基胺的构象依赖的dft级描述符。

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY Digital discovery Pub Date : 2024-11-28 DOI:10.1039/D4DD00284A
Brittany C. Haas, Melissa A. Hardy, Shree Sowndarya S. V., Keir Adams, Connor W. Coley, Robert S. Paton and Matthew S. Sigman
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引用次数: 0

摘要

数据驱动的反应发现和开发是一个不断发展的领域,它依赖于使用分子描述符来捕获关于底物、配体和靶标的关键信息。该策略的广泛适应受到描述符计算的相关计算成本的阻碍,特别是在考虑构象灵活性时。描述符库可以预先计算不可知的应用程序,以减少数据驱动的反应开发的计算负担。然而,由于人们经常应用这些模型来评估新的假设结构,因此在动态中预测化合物的描述符将是理想的。为此,我们报告了8528种羧酸和8172种烷基胺构象集合的dft级描述符库。利用在这些文库上训练的2D和3D图形神经网络架构,最终开发了分子级描述符的预测模型,以及保守活性位点(羧酸或胺)的键和原子级描述符。预测被证实是稳健的外部验证集的医学相关羧酸和烷基胺。此外,一项与酰胺偶联反应速率相关的回顾性研究表明,预测的dft水平描述符适用于下游应用。最终,这些模型能够对大量潜在底物进行高保真度预测,极大地增加了数据驱动反应发展领域的可及性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Rapid prediction of conformationally-dependent DFT-level descriptors using graph neural networks for carboxylic acids and alkyl amines†

Data-driven reaction discovery and development is a growing field that relies on the use of molecular descriptors to capture key information about substrates, ligands, and targets. Broad adaptation of this strategy is hindered by the associated computational cost of descriptor calculation, especially when considering conformational flexibility. Descriptor libraries can be precomputed agnostic of application to reduce the computational burden of data-driven reaction development. However, as one often applies these models to evaluate novel hypothetical structures, it would be ideal to predict the descriptors of compounds on-the-fly. Herein, we report DFT-level descriptor libraries for conformational ensembles of 8528 carboxylic acids and 8172 alkyl amines towards this goal. Employing 2D and 3D graph neural network architectures trained on these libraries culminated in the development of predictive models for molecule-level descriptors, as well as the bond- and atom-level descriptors for the conserved reactive site (carboxylic acid or amine). The predictions were confirmed to be robust for an external validation set of medicinally-relevant carboxylic acids and alkyl amines. Additionally, a retrospective study correlating the rate of amide coupling reactions demonstrated the suitability of the predicted DFT-level descriptors for downstream applications. Ultimately, these models enable high-fidelity predictions for a vast number of potential substrates, greatly increasing accessibility to the field of data-driven reaction development.

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