首页> 外文期刊>Journal of Chemical Information and Computer Sciences >PREDICTION OF AQUEOUS SOLUBILITY FOR A DIVERSE SET OF HETEROATOM-CONTAINING ORGANIC COMPOUNDS USING A QUANTITATIVE STRUCTURE-PROPERTY RELATIONSHIP
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PREDICTION OF AQUEOUS SOLUBILITY FOR A DIVERSE SET OF HETEROATOM-CONTAINING ORGANIC COMPOUNDS USING A QUANTITATIVE STRUCTURE-PROPERTY RELATIONSHIP

机译:使用定量结构-性能关系预测含杂原子的有机化合物的不同组的水溶性

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摘要

The primary goal of a quantitative structure-property relationship (QSPR) is to identify a set of structurally based numerical descriptors that can be mathematically linked to a property of interest. The types of descriptors fall into three categories: topological, electronic, and geometric. In this study, 140 organic compounds with diverse structures were split into a training set, a cross-validation set, and a prediction set. The training set was used to build multiple linear regression and computational neural network models, the cross-validation set was used to prevent overtraining of the neural network, and the prediction set was used to validate the mathematical models. A set of nine descriptors was found that effectively linked the aqueous solubility to each structure. However, the polychlorinated biphenyls (PCBs) had a large root-mean-square (rms) error associated with them. Therefore models were also built using a training set that contained no PCBs. A set of nine descriptors was found with a significant improvement of the rms error of the training set as well as the prediction set. [References: 33]
机译:定量结构-属性关系(QSPR)的主要目标是确定一组基于结构的数字描述符,这些描述符可以数学方式链接到感兴趣的属性。描述符的类型分为三类:拓扑,电子和几何。在这项研究中,将140种具有不同结构的有机化合物分为训练集,交叉验证集和预测集。训练集用于构建多个线性回归和计算神经网络模型,交叉验证集用于防止神经网络过度训练,预测集用于验证数学模型。发现一组九个描述符可以有效地将水溶性与每个结构联系起来。但是,多氯联苯(PCB)具有与之相关的大均方根(rms)误差。因此,还使用不包含PCB的训练集来构建模型。发现一组九个描述符,显着改善了训练集和预测集的均方根误差。 [参考:33]

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