Predicting the Estrogen Receptor Activity of Environmental Chemicals by Single-Cell Image Analysis and Data-driven Modeling.

Hari S Ganesh, Burcu Beykal, Adam T Szafran, Fabio Stossi, Lan Zhou, Michael A Mancini, Efstratios N Pistikopoulos
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Abstract

A comprehensive evaluation of toxic chemicals and understanding their potential harm to human physiology is vital in mitigating their adverse effects following exposure from environmental emergencies. In this work, we develop data-driven classification models to facilitate rapid decision making in such catastrophic events and predict the estrogenic activity of environmental toxicants as estrogen receptor-α (ERα) agonists or antagonists. By combining high-content analysis, big-data analytics, and machine learning algorithms, we demonstrate that highly accurate classifiers can be constructed for evaluating the estrogenic potential of many chemicals. We follow a rigorous, high throughput microscopy-based high-content analysis pipeline to measure the single cell-level response of benchmark compounds with known in vivo effects on the ERα pathway. The resulting high-dimensional dataset is then pre-processed by fitting a non-central gamma probability distribution function to each feature, compound, and concentration. The characteristic parameters of the distribution, which represent the mean and the shape of the distribution, are used as features for the classification analysis via Random Forest (RF) and Support Vector Machine (SVM) algorithms. The results show that the SVM classifier can predict the estrogenic potential of benchmark chemicals with higher accuracy than the RF algorithm, which misclassifies two antagonist compounds.

利用单细胞图像分析和数据驱动模型预测环境化学物质雌激素受体活性。
全面评估有毒化学品并了解其对人体生理的潜在危害,对于减轻其在环境紧急情况下暴露后的不利影响至关重要。在这项工作中,我们开发了数据驱动的分类模型,以促进在此类灾难性事件中的快速决策,并预测雌激素受体-α (ERα)激动剂或拮抗剂等环境毒物的雌激素活性。通过结合高含量分析、大数据分析和机器学习算法,我们证明了可以构建高度准确的分类器来评估许多化学物质的雌激素潜力。我们遵循严格的,基于高通量显微镜的高含量分析管道来测量具有已知ERα途径体内效应的基准化合物的单细胞水平响应。然后通过对每个特征、化合物和浓度拟合非中心伽马概率分布函数来预处理所得的高维数据集。通过随机森林(Random Forest, RF)和支持向量机(Support Vector Machine, SVM)算法,将代表均值和分布形状的分布特征参数作为特征进行分类分析。结果表明,SVM分类器预测基准化学物质的雌激素潜能的准确率高于RF算法,而RF算法对两种拮抗剂化合物进行了错误分类。
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