SAR based on self consistent classifier.

IF 2.3 3区 环境科学与生态学 Q3 CHEMISTRY, MULTIDISCIPLINARY SAR and QSAR in Environmental Research Pub Date : 2022-10-01 DOI:10.1080/1062936X.2022.2139751
L A Stolbov, D A Filimonov, V V Poroikov
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引用次数: 0

Abstract

The accuracy and performance of (Q)SAR models depend significantly on the data used for training. Datasets prepared on the basis of publicly available databases contain structures belonging to different chemical classes and have a highly imbalanced actives/inactives ratio. Currently, hundreds of structural descriptors are used in (Q)SAR studies. The abundance of structural descriptors gives rise to the problem of the constructed (Q)SAR models stability. The methods frequently used for the selection of a small fraction of the 'best' descriptors usually do not have sufficient mathematical justification. We propose a new approach to a self-consistent classifier for SAR analysis in order to overcome these problems. Logistic (SCLC) and extreme (SCEC) extensions of self-consistent regression (SCR) were implemented to enhance the classification capabilities of SCR. The approach was applied to classification models' development for inhibiting activity endpoints in HIV-1-related data and toxicity endpoints with subsequent fivefold cross-validation to estimate the models' performance. Comparison of the proposed SCLC and SCEC models with those developed using the original SCR and support vector machine demonstrated the comparable accuracy. Advantages in feature selection using our approach provide more generalizable (Q)SAR models. In particular, the crucial factors responsible for the observed value are determined unambiguously.

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基于自洽分类器的SAR。
(Q)SAR模型的准确性和性能在很大程度上取决于用于训练的数据。基于公开可用数据库编制的数据集包含属于不同化学类别的结构,并且具有高度不平衡的活性/非活性比。目前,数以百计的结构描述符被用于(Q)SAR研究。结构描述符的丰富性导致了所构建(Q)SAR模型的稳定性问题。经常用于选择一小部分“最佳”描述符的方法通常没有足够的数学依据。为了克服这些问题,我们提出了一种新的自一致分类器的SAR分析方法。采用自洽回归的逻辑扩展(SCLC)和极值扩展(SCEC)来增强自洽回归的分类能力。该方法应用于hiv -1相关数据中抑制活性终点和毒性终点的分类模型的开发,随后进行了五倍交叉验证,以估计模型的性能。将提出的SCLC和SCEC模型与使用原始SCR和支持向量机开发的模型进行比较,结果表明其精度相当。使用我们的方法在特征选择方面的优势提供了更通用的(Q)SAR模型。特别是,对观测值负责的关键因素是明确确定的。
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来源期刊
CiteScore
5.20
自引率
20.00%
发文量
78
审稿时长
>24 weeks
期刊介绍: SAR and QSAR in Environmental Research is an international journal welcoming papers on the fundamental and practical aspects of the structure-activity and structure-property relationships in the fields of environmental science, agrochemistry, toxicology, pharmacology and applied chemistry. A unique aspect of the journal is the focus on emerging techniques for the building of SAR and QSAR models in these widely varying fields. The scope of the journal includes, but is not limited to, the topics of topological and physicochemical descriptors, mathematical, statistical and graphical methods for data analysis, computer methods and programs, original applications and comparative studies. In addition to primary scientific papers, the journal contains reviews of books and software and news of conferences. Special issues on topics of current and widespread interest to the SAR and QSAR community will be published from time to time.
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