首页> 美国卫生研究院文献>Molecules >Comparison between Multi-Linear- and Radial-Basis-Function-Neural-Network-Based QSPR Models for The Prediction of The Critical Temperature Critical Pressure and Acentric Factor of Organic Compounds
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Comparison between Multi-Linear- and Radial-Basis-Function-Neural-Network-Based QSPR Models for The Prediction of The Critical Temperature Critical Pressure and Acentric Factor of Organic Compounds

机译:基于多线性和径向基函数神经网络的QSPR模型的比较用于预测有机化合物的临界温度临界压力和中心因子

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摘要

Critical properties and acentric factor are widely used in phase equilibrium calculations but are difficult to evaluate with high accuracy for many organic compounds. Quantitative Structure-Property Relationship (QSPR) models are a powerful tool to establish accurate correlation between molecular properties and chemical structure. QSPR multi-linear (MLR) and radial basis-function-neural-network (RBFNN) models have been developed to predict the critical temperature, critical pressure and acentric factor of a database of 306 organic compounds. RBFNN models provided better data correlation and higher predictive capability (an AAD% of 0.92–2.0% for training and 1.7–4.8% for validation sets) than MLR models (an AAD% of 3.2–8.7% for training and 6.2–12.2% for validation sets). The RMSE of the RBFNN models was 20–30% of the MLR ones. The correlation and predictive performances of the models for critical temperature were higher than those for critical pressure and acentric factor, which was the most difficult property to predict. However, the RBFNN model for the acentric factor resulted in the lowest RMSE with respect to previous literature. The close relationship between the three properties resulted from the selected molecular descriptors, which are mostly related to molecular electronic charge distribution or polar interactions between molecules. QSPR correlations were compared with the most frequently used group-contribution methods over the same database of compounds: although the MLR models provided comparable results, the RBFNN ones resulted in significantly higher performance.
机译:关键特性和偏心因子广泛用于相平衡计算中,但是对于许多有机化合物而言,很难以高精度进行评估。定量结构-性能关系(QSPR)模型是建立分子特性与化学结构之间精确关联的强​​大工具。已经开发了QSPR多元线性(MLR)和径向基函数神经网络(RBFNN)模型来预测306种有机化合物的临界温度,临界压力和无心率。与MLR模型相比,RBFNN模型提供了更好的数据相关性和更高的预测能力(训练的AAD%为0.92-2.0%,验证集为1.7-4.8%)(MLD模型为3.2-8.7%,训练为6.2-12.2%)。验证集)。 RBFNN模型的RMSE是MLR模型的20–30%。临界温度模型的相关性和预测性能高于临界压力和无心因素,这是最难预测的性质。但是,相对于先前的文献,针对偏心因素的RBFNN模型导致最低的RMSE。三种性质之间的密切关系是由选定的分子描述子引起的,这主要与分子电子电荷分布或分子之间的极性相互作用有关。在同一化合物数据库中,将QSPR相关性与最常用的组贡献方法进行了比较:尽管MLR模型提供了可比的结果,但RBFNN模型却产生了显着更高的性能。

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