Machine learning small molecule properties in drug discovery

Nikolai Schapin , Maciej Majewski , Alejandro Varela-Rial , Carlos Arroniz , Gianni De Fabritiis
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Abstract

Machine learning (ML) is a promising approach for predicting small molecule properties in drug discovery. Here, we provide a comprehensive overview of various ML methods introduced for this purpose in recent years. We review a wide range of properties, including binding affinities, solubility, and ADMET (Absorption, Distribution, Metabolism, Excretion, and Toxicity). We discuss existing popular datasets and molecular descriptors and embeddings, such as chemical fingerprints and graph-based neural networks. We highlight also challenges of predicting and optimizing multiple properties during hit-to-lead and lead optimization stages of drug discovery and explore briefly possible multi-objective optimization techniques that can be used to balance diverse properties while optimizing lead candidates. Finally, techniques to provide an understanding of model predictions, especially for critical decision-making in drug discovery are assessed. Overall, this review provides insights into the landscape of ML models for small molecule property predictions in drug discovery. So far, there are multiple diverse approaches, but their performances are often comparable. Neural networks, while more flexible, do not always outperform simpler models. This shows that the availability of high-quality training data remains crucial for training accurate models and there is a need for standardized benchmarks, additional performance metrics, and best practices to enable richer comparisons between the different techniques and models that can shed a better light on the differences between the many techniques.

机器学习在药物发现中的小分子特性
机器学习(ML)是预测药物发现中的小分子特性的一种很有前途的方法。在这里,我们提供了近年来为此目的引入的各种ML方法的全面概述。我们回顾了广泛的性质,包括结合亲和力、溶解度和ADMET(吸收、分布、代谢、排泄和毒性)。我们讨论了现有的流行数据集和分子描述符和嵌入,如化学指纹和基于图的神经网络。我们还强调了在药物发现的hit-to-lead和lead优化阶段预测和优化多种性质的挑战,并简要探讨了在优化候选先导物时可用于平衡多种性质的可能的多目标优化技术。最后,技术提供了模型预测的理解,特别是在药物发现的关键决策进行了评估。总的来说,这篇综述为ML模型在药物发现中的小分子特性预测提供了深入的见解。到目前为止,有多种不同的方法,但它们的性能通常是可比性的。神经网络虽然更灵活,但并不总是优于更简单的模型。这表明,高质量训练数据的可用性对于训练准确的模型仍然至关重要,并且需要标准化基准、额外的性能指标和最佳实践,以便在不同的技术和模型之间进行更丰富的比较,从而更好地揭示许多技术之间的差异。
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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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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