Institute of Chemistry, University of Tartu, Ravila 14a, 50411 Tartu, Estonia.
Int J Mol Sci. 2021 Jun 22;22(13):6695. doi: 10.3390/ijms22136695.
Many chemicals that enter the environment, food chain, and the human body can disrupt androgen-dependent pathways and mimic hormones and therefore, may be responsible for multiple diseases from reproductive to tumor. Thus, modeling and predicting androgen receptor activity is an important area of research. The aim of the current study was to find a method or combination of methods to predict compounds that can bind to and/or disrupt the androgen receptor, and thereby guide decision making and further analysis. A stepwise procedure proceeded from analysis of protein structures from human, chimp, and rat, followed by docking and subsequent ligand, and statistics based techniques that improved classification gradually. The best methods used multivariate logistic regression of combinations of chimpanzee protein structural docking scores, extended connectivity fingerprints, and naïve Bayesians of known binders and non-binders. Combination or consensus methods included data from a variety of procedures to improve the final model accuracy.
许多进入环境、食物链和人体的化学物质可以扰乱雄激素依赖途径并模拟激素,因此可能导致从生殖到肿瘤的多种疾病。因此,雄激素受体活性的建模和预测是一个重要的研究领域。本研究的目的是找到一种或多种方法来预测能够与雄激素受体结合和/或破坏雄激素受体的化合物,从而指导决策和进一步分析。该步骤从人类、黑猩猩和大鼠的蛋白质结构分析开始,然后进行对接,随后是基于配体和统计的技术,逐渐提高分类的准确性。最好的方法是使用黑猩猩蛋白质结构对接分数的多元逻辑回归、扩展连接指纹和已知结合物和非结合物的朴素贝叶斯的组合。组合或共识方法包括来自各种程序的数据,以提高最终模型的准确性。