4.5 Article

Insight Analysis of Promiscuous Estrogen Receptor α-Ligand Binding by a Novel Machine Learning Scheme

Journal

CHEMICAL RESEARCH IN TOXICOLOGY
Volume 31, Issue 8, Pages 799-813

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.chemrestox.8b00130

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Funding

  1. Ministry of Science and Technology, Taiwan

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Estrogen receptor alpha (ER alpha) plays a significant role in occurrence of breast cancer and may cause various adverse side-effects when ER alpha is an off-target protein. A theoretical model was derived to predict the binding affinity of ER alpha using the pharmacophore ensemble/support vector machine (PhE/SVM) scheme to consider the promiscuous characteristic of ER alpha. The estimations by PhE/SVM were discovered to be in good agreement with the observed values for those training molecules (n = 31, r(2) = 0.80, q(cv)(2) = 0.77, RMSE = 0.57, s = 0.58), test molecules (n = 179, q(2) = 0.91-0.96, RMSE = 0.33, s = 0.26) and outliers (n = 15, q(2) = 0.80-0.86, RMSE = 0.56, s = 0.49). When subjected to various statistical validations, the PhE/SVM model consistently fulfilled the strictest criteria. A mock test also asserted its predictivity. When compared with crystal structures, the calculated results are consistent with the reported ER alpha-ligand co-complex structure, and the plasticity nature of ER alpha is also disclosed. Consequently, this precise, fast, and robust model can be adopted to predict ER alpha-ligand binding affinities and to design safer non-ER alpha-targeted pharmaceuticals in the process of drug discovery and development.

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