| Literature DB >> 36234923 |
Meng Ji1, Lihong Zhang1, Xuming Zhuang1, Chunyuan Tian1, Feng Luan1, Maria Natália D S Cordeiro2.
Abstract
Modern industrialization has led to the creation of a wide range of organic chemicals, especially in the form of multicomponent mixtures, thus making the evaluation of environmental pollution more difficult by normal methods. In this paper, we attempt to use forward stepwise multiple linear regression (MLR) and nonlinear radial basis function neural networks (RBFNN) to establish quantitative structure-activity relationship models (QSARs) to predict the toxicity of 79 binary mixtures of aquatic organisms using different hypothetical descriptors. To search for the proper mixture descriptors, 11 mixture rules were performed and tested based on preliminary modeling results. The statistical parameters of the best derived MLR model were Ntrain = 62, R2 = 0.727, RMS = 0.494, F = 159.537, Q2LOO = 0.727, and Q2pred = 0.725 for the training set; and Ntest = 17, R2 = 0.721, RMS = 0.508, F = 38.773, and q2ext = 0.720 for the external test set. The RBFNN model gave the following statistical results: Ntrain = 62, R2 = 0.956, RMS = 0.199, F = 1279.919, Q2LOO = 0.955, and Q2pred = 0.855 for the training set; and Ntest = 17, R2 = 0.880, RMS = 0.367, F = 110.980, and q2ext = 0.853 for the external test set. The quality of the models was assessed by validating the relevant parameters, and the final results showed that the developed models are predictive and can be used for the toxicity prediction of binary mixtures within their applicability domain.Entities:
Keywords: forward stepwise multiple linear regression (MLR); mixture; quantitative structure-activity relationships (QSAR); radial basis function neural networks (RBFNN); toxicity assessment
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Year: 2022 PMID: 36234923 PMCID: PMC9571779 DOI: 10.3390/molecules27196389
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.927