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计算机辅助结构解析(CASE):现状与未来展望。

Computer Assisted Structure Elucidation (CASE): Current and future perspectives.

机构信息

Advanced Chemistry Development Inc., Moscow, Russia.

Advanced Chemistry Development UK Ltd., Bracknell, UK.

出版信息

Magn Reson Chem. 2021 Jul;59(7):669-690. doi: 10.1002/mrc.5115. Epub 2020 Dec 20.

DOI:10.1002/mrc.5115
PMID:33197069
Abstract

The first efforts for the development of methods for Computer-Assisted Structure Elucidation (CASE) were published more than 50 years ago. CASE expert systems based on one-dimensional (1D) and two-dimensional (2D) Nuclear Magnetic Resonance (NMR) data have matured considerably by now. The structures of a great number of complex natural products have been elucidated and/or revised using such programs. In this article, we discuss the most likely directions in which CASE will evolve. We act on the premise that a synergistic interaction exists between CASE, new NMR experiments, and methods of computational chemistry, which are continuously being improved. The new developments in NMR experiments (long-range correlation experiments, pure-shift methods, coupling constants measurement and prediction, residual dipolar couplings [RDCs]), and residual chemical shift anisotropies [RCSAs], evolution of density functional theory (DFT), and machine learning algorithms will have an influence on CASE systems and vice versa. This is true also for new techniques for chemical analysis (Atomic Force Microscopy [AFM], "crystalline sponge" X-ray analysis, and micro-Electron Diffraction [micro-ED]), which will be used in combination with expert systems. We foresee that CASE will be utilized widely and become a routine tool for NMR spectroscopists and analysts in academic and industrial laboratories. We believe that the "golden age" of CASE is still in the future.

摘要

用于计算机辅助结构解析(CASE)的方法的最初开发工作始于 50 多年前。基于一维(1D)和二维(2D)核磁共振(NMR)数据的 CASE 专家系统现已相当成熟。使用此类程序已经阐明和/或修正了许多复杂天然产物的结构。在本文中,我们讨论了 CASE 可能的发展方向。我们的前提是 CASE、新的 NMR 实验以及不断改进的计算化学方法之间存在协同作用。NMR 实验的新进展(远程相关实验、纯位移方法、耦合常数测量和预测、残余偶极耦合[RDCs])和残余化学位移各向异性[RCSAs]、密度泛函理论(DFT)的发展以及机器学习算法将对 CASE 系统产生影响,反之亦然。这对于化学分析的新技术(原子力显微镜[AFM]、“结晶海绵”X 射线分析和微电子衍射[micro-ED])也是如此,它们将与专家系统结合使用。我们预计 CASE 将得到广泛应用,并成为学术和工业实验室中 NMR 光谱学家和分析家的常规工具。我们相信 CASE 的“黄金时代”仍在未来。

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