Transferable and Interpretable Prediction of Site-Specific Dehydrogenation Reaction Rate Constants with NMR Spectra.

IF 4.8 2区 化学 Q2 CHEMISTRY, PHYSICAL
Yanbo Li, Fenfen Ma, Zhandong Wang, Xin Chen
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Abstract

Accurate and efficient determination of site-specific reaction rate constants over a wide temperature range remains challenging, both experimentally and theoretically. Taking the dehydrogenation reaction as an example, our study addresses this issue by an innovative combination of machine learning techniques and cost-effective NMR spectra. Through descriptor screening, we identified a minimal set of NMR chemical shifts that can effectively determine reaction rate constants. The constructed model performs exceptionally well on theoretical data sets and demonstrates impressive generalization capabilities, extending from small molecules to larger ones. Furthermore, this model shows outstanding performance when applied to limited experimental data sets, highlighting its robust applicability and transferability. Utilizing the Sure Independence Screening and Sparsifying Operator (SISSO) algorithm, we also present an interpretable rate constant-temperature-NMR (k-T-NMR) relationship with a mathematical formula. This study reveals the great potential of combining machine learning with easily accessible spectroscopic descriptors in the study of reaction kinetics, enabling the rapid determination of reaction rate constants and promoting our understanding of reactivity.

Abstract Image

利用核磁共振波谱预测特定位点脱氢反应速率常数的可转移性和可解释性
在宽温度范围内准确有效地测定特定位点的反应速率常数,无论在实验上还是在理论上都仍然具有挑战性。以脱氢反应为例,我们的研究通过创新性地结合机器学习技术和具有成本效益的核磁共振光谱解决了这一问题。通过描述符筛选,我们确定了一组能有效确定反应速率常数的最小核磁共振化学位移。所构建的模型在理论数据集上表现优异,并展示了令人印象深刻的泛化能力,从小分子扩展到大分子。此外,该模型在应用于有限的实验数据集时也表现出色,突出了其强大的适用性和可移植性。利用肯定独立筛选和稀疏化运算器(SISSO)算法,我们还提出了一个可解释的速率常数-温度-核磁共振(k-T-NMR)关系数学公式。这项研究揭示了在反应动力学研究中将机器学习与易于获取的光谱描述符相结合的巨大潜力,从而能够快速确定反应速率常数并促进我们对反应性的理解。
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来源期刊
The Journal of Physical Chemistry Letters
The Journal of Physical Chemistry Letters CHEMISTRY, PHYSICAL-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
9.60
自引率
7.00%
发文量
1519
审稿时长
1.6 months
期刊介绍: The Journal of Physical Chemistry (JPC) Letters is devoted to reporting new and original experimental and theoretical basic research of interest to physical chemists, biophysical chemists, chemical physicists, physicists, material scientists, and engineers. An important criterion for acceptance is that the paper reports a significant scientific advance and/or physical insight such that rapid publication is essential. Two issues of JPC Letters are published each month.
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