首页> 外文期刊>Collection of Czechoslovak Chemical Communications >USE OF ADVANCED STATISTICAL LEARNING METHODS AND PRINCIPAL COMPONENT ANALYSIS IN QUANTITATIVE STRUCTURE-GENOTOXICITY RELATIONSHIP STUDY OF AMINES
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USE OF ADVANCED STATISTICAL LEARNING METHODS AND PRINCIPAL COMPONENT ANALYSIS IN QUANTITATIVE STRUCTURE-GENOTOXICITY RELATIONSHIP STUDY OF AMINES

机译:先进的统计学习方法和主成分分析在胺类结构-遗传-毒性关系定量研究中的应用

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The paper highlighted the use of advanced nonlinear modeling and subset selection techniques in the construction of a good, predictive model for genotoxicity study of amines. Essentials accounting for a reliable model were all considered carefully. Chemicals were represented by a large number of CODESSA descriptors. Division of a whole sample into the training set and the test set was performed by principal component analysis (PCA). Six descriptors selected by the best multi-linear regression (BMLR) method in CODESSA program were used as inputs to build nonlinear models, using advanced statistical learning methods such as support vector machine (SVM) and projection pursuit regression (PPR). The models were validated through three ways, i.e. internal cross-validation (CV), a test set and an independent validation set. Analysis shows that nonlinear models produced better results than linear models and PPR model outperforms the rest in the following order: PPR > SVM > linear SVM ≥ BMLR. In addition, the relationships between the descriptors and the mutagenic behavior of compounds are well discussed. [PUBLICATION ABSTRACT]
机译:该论文着重介绍了先进的非线性建模和子集选择技术在构建良好的胺遗传毒性预测模型中的应用。仔细考虑了构成可靠模型的要素。大量的CODESSA描述符代表了化学物质。通过主成分分析(PCA)将整个样本分为训练集和测试集。使用高级统计学习方法(例如支持向量机(SVM)和投影追踪回归(PPR)),将CODESSA程序中通过最佳多线性回归(BMLR)方法选择的六个描述符用作输入以构建非线性模型。通过三种方式对模型进行了验证,即内部交叉验证(CV),测试集和独立验证集。分析表明,非线性模型比线性模型产生更好的结果,而PPR模型按以下顺序优于其他模型:PPR> SVM>线性SVM≥BMLR。此外,描述符和化合物诱变行为之间的关系也得到了很好的讨论。 [出版物摘要]

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    Yueying RENa1,b,*, Baowei ZHAOa2,b and Xiaojun YAOca School of Environmental and Municipal Engineering, Lanzhou Jiaotong University, Lanzhou 730070, China, e-mail: 1 renry02@st.lzu.edu.cn, 2 baoweizhao@mail.lzjtu.cnb Engineering Research Center for Cold and Arid Regions Water Resource Comprehensive Utilization, Ministry of Education, Lanzhou 730070, Chinac Department of Chemistry, Lanzhou University, Lanzhou 730000, China, e-mail: xjyao@lzu.edu.cnReceived December 9, 2010Accepted February 7, 2011Published online March 8, 2011,;

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