Machine learning in computational NMR-aided structural elucidation

Iván Cortés, Cristina Cuadrado, A. Hernández Daranas, Ariel M. Sarotti
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引用次数: 4

Abstract

Structure elucidation is a stage of paramount importance in the discovery of novel compounds because molecular structure determines their physical, chemical and biological properties. Computational prediction of spectroscopic data, mainly NMR, has become a widely used tool to help in such tasks due to its increasing easiness and reliability. However, despite the continuous increment in CPU calculation power, classical quantum mechanics simulations still require a lot of effort. Accordingly, simulations of large or conformationally complex molecules are impractical. In this context, a growing number of research groups have explored the capabilities of machine learning (ML) algorithms in computational NMR prediction. In parallel, important advances have been made in the development of machine learning-inspired methods to correlate the experimental and calculated NMR data to facilitate the structural elucidation process. Here, we have selected some essential papers to review this research area and propose conclusions and future perspectives for the field.
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计算核磁共振辅助结构解析中的机器学习
结构解析是发现新化合物的一个至关重要的阶段,因为分子结构决定了它们的物理、化学和生物性质。光谱数据的计算预测,主要是核磁共振,由于其越来越简单和可靠,已成为一种广泛使用的工具,以帮助完成这些任务。然而,尽管CPU计算能力不断提高,经典量子力学模拟仍然需要大量的努力。因此,模拟大型或构象复杂的分子是不切实际的。在这种背景下,越来越多的研究小组已经探索了机器学习(ML)算法在计算核磁共振预测中的能力。与此同时,在机器学习启发的方法的发展方面取得了重要进展,这些方法将实验和计算的核磁共振数据联系起来,以促进结构解析过程。在这里,我们选择了一些重要的论文来回顾这一研究领域,并提出结论和未来的展望。
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