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首页> 外文期刊>Journal of magnetic resonance >Using Neural Networks for ~(13)C NMR Chemical Shift Prediction-Comparison with Traditional Methods
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Using Neural Networks for ~(13)C NMR Chemical Shift Prediction-Comparison with Traditional Methods

机译:使用神经网络进行〜(13)C NMR化学位移预测与传统方法的比较

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Interpretation of ~(13)C chemical shifts is essential for structure elucidation of organic molecules by NMR. In this article, we present an improved neural networks approach and compare its performance to that of commonly used approaches. Specifically, our recently proposed neural network (J. Chem. Inf. Comput. Sci. 2000, 40, 1169-1176) is improved by introducing an extended hybrid numerical description of the carbon atom environment, resulting in a standard deviation (std. dev.) of 2.4 ppm for an independent test data set of ~42,500 carbons. Thus, this neural network allows fast and accurate ~(13)C NMR chemical shift prediction without the necessity of access to molecule or fragment databases. For an unbiased test dataset containing 100 organic structures the accuracy of the improved neural network was compared to that of a prediction method based on the HOSE code (hierarchically ordered spherical description of environment) using SpecInfo. The results show that neural network predictions to be of quality (std. dev. = 2.7 ppm) comparable to that of the HOSE code prediction (std. dev. = 2.6 ppm). Further we compare the neural network predictions to those of a wide variety of other ~(13)C chemical shift prediction tools including incremental methods (ChemDraw, SpecTool), quantum chemical calculation (Gaussian, Cosmos), and HOSE code fragment-based prediction (SpecInfo, ACD/CNMR, PredictIt NMR) for the 47 ~(13)C-NMR shifts of Taxol, a natural product including many structural features of organic substances. The smallest standard deviations were achieved here with the neural network (1.3 ppm) and SpecInfo (1.0 ppm).
机译:〜(13)C化学位移的解释对于通过NMR阐明有机分子的结构至关重要。在本文中,我们提出了一种改进的神经网络方法,并将其性能与常用方法进行了比较。具体来说,我们最近提出的神经网络(J. Chem。Inf。Comput。Sci。2000,40,1169-1176)通过引入碳原子环境的扩展混合数值描述进行了改进,从而导致了标准偏差(std。dev 。)为约2.4500个碳的独立测试数据集,为2.4 ppm。因此,该神经网络无需进行分子或片段数据库的访问即可进行快速,准确的〜(13)C NMR化学位移预测。对于包含100个有机结构的无偏测试数据集,使用SpecInfo将改进的神经网络的准确性与基于HOSE代码(环境的分层有序球形描述)的预测方法的准确性进行了比较。结果表明,神经网络预测的质量(标准差= 2.7 ppm)与HOSE代码预测(标准差= 2.6 ppm)相当。进一步,我们将神经网络预测与其他各种〜(13)C化学位移预测工具的神经网络预测进行了比较,包括增量方法(ChemDraw,SpecTool),量子化学计算(Gaussian,Cosmos)和基于HOSE代码片段的预测( SpecInfo,ACD / CNMR,PredictIt NMR)紫杉醇(一种包含许多有机物结构特征的天然产物)的47〜(13)C-NMR位移。在这里,使用神经网络(1.3 ppm)和SpecInfo(1.0 ppm)实现了最小的标准偏差。

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