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Successful combination of computationally inexpensive GIAO ~(13)C NMR calculations and artificial neural network pattern recognition: a new strategy for simple and rapid detection of structural misassignments

机译:成功地将计算上廉价的GIAO〜(13)C NMR计算与人工神经网络模式识别相结合:一种简单,快速检测结构错位的新策略

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摘要

GIAO NMR chemical shift calculations coupled with trained artificial neural networks (ANNs) have been shown to provide a powerful strategy for simple, rapid and reliable identification of structural misassign-ments of organic compounds using only one set of both computational and experimental data. The geometry optimization, usually the most time-consuming step in the overall procedure, was carried out using computationally inexpensive methods (MM+, AM1 or HF/3-21G) and the NMR shielding constants at the affordable mPW1PW91/6-31G(d) level of theory. As low quality NMR prediction is typically obtained with such protocols, the decision making was foreseen as a problem of pattern recognition. Thus, given a set of statistical parameters computed after correlation between experimental and calculated chemical shifts the classification was done using the knowledge derived from trained ANNs. The training process was carried out with a set of 200 molecules chosen to provide a wide array of chemical functionalities and molecular complexity, and the results were validated with a set of 26 natural products that had been incorrectly assigned along with their 26 revised structures. The high prediction effectiveness observed makes this method a suitable test for rapid identification of structural misassignments, preventing not only the publication of wrong structures but also avoiding the consequences of such a mistake.
机译:GIAO NMR化学位移计算与经过训练的人工神经网络(ANN)结合使用,为仅使用一组计算和实验数据即可简单,快速和可靠地鉴定有机化合物的结构错配提供了强有力的策略。几何优化通常是整个过程中最耗时的步骤,它是使用计算便宜的方法(MM +,AM1或HF / 3-21G)和NMR屏蔽常数在可承受的mPW1PW91 / 6-31G(d)上进行的理论水平。由于通常使用此类协议获得低质量的NMR预测,因此可以预见到决策是模式识别的问题。因此,给定一组统计参数,该参数是在实验和计算出的化学位移之间的相关性之后计算出的,分类是使用从受过训练的人工神经网络得出的知识完成的。训练过程使用一组200个分子进行选择,以提供广泛的化学功能和分子复杂性,并且使用一组错误分配了26种天然产物及其26种修饰结构的结果验证了结果。观察到的高预测效力使该方法成为快速识别结构错位的合适测试,不仅可以防止错误结构的发布,而且可以避免此类错误的后果。

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  • 来源
    《Organic & biomolecular chemistry》 |2013年第29期|4847-4859|共13页
  • 作者

    Ariel M. Sarotti;

  • 作者单位

    Institute de Quimica Rosario (CONICET), Facultad de Ciencias Bioquimicasy Farmaceuticas, Universidad National de Rosario, Suipacha 531, Rosario (2000), Argentina;

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