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Prediction of Compound Profiling Matrices Using Machine Learning

机译:使用机器学习预测复合剖析矩阵

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Screening of compound libraries against panels of targets yields profiling matrices. Such matrices typically contain structurally diverse screening compounds, large numbers of inactives, and small numbers of hits per assay. As such, they represent interesting and challenging test cases for computational screening and activity predictions. In this work, modeling of large compound profiling matrices was attempted that were extracted from publicly available screening data. Different machine learning methods including deep learning were compared and different prediction strategies explored. Prediction accuracy varied for assays with different numbers of active compounds, and alternative machine learning approaches often produced comparable results. Deep learning did not further increase the prediction accuracy of standard methods such as random forests or support vector machines. Target-based random forest models were prioritized and yielded successful predictions of active compounds for many assays.
机译:针对靶标化合物筛选化合物文库可产生谱图基质。这样的基质通常包含结构上不同的筛选化合物,大量的非活性物质和每次测定的少量命中。这样,它们代表了用于计算筛选和活动预测的有趣且具有挑战性的测试用例。在这项工作中,尝试对大型化合物分析矩阵进行建模,这些矩阵是从公开可用的筛选数据中提取的。比较了包括深度学习在内的不同机器学习方法,并探索了不同的预测策略。对于使用不同数量的活性化合物进行的测定,预测准确性会有所不同,并且替代的机器学习方法通​​常会产生可比的结果。深度学习并没有进一步提高标准方法(例如随机森林或支持向量机)的预测准确性。确定了基于目标的随机森林模型的优先级,并成功预测了许多测定中活性化合物的含量。

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