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Predicting Off-Target Binding Profiles With Confidence Using Conformal Prediction

机译:使用保形预测来自信地预测脱靶结合曲线

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摘要

Ligand-based models can be used in drug discovery to obtain an early indication of potential off-target interactions that could be linked to adverse effects. Another application is to combine such models into a panel, allowing to compare and search for compounds with similar profiles. Most contemporary methods and implementations however lack valid measures of confidence in their predictions, and only provide point predictions. We here describe a methodology that uses Conformal Prediction for predicting off-target interactions, with models trained on data from 31 targets in the ExCAPE-DB dataset selected for their utility in broad early hazard assessment. Chemicals were represented by the signature molecular descriptor and support vector machines were used as the underlying machine learning method. By using conformal prediction, the results from predictions come in the form of confidence p-values for each class. The full pre-processing and model training process is openly available as scientific workflows on GitHub, rendering it fully reproducible. We illustrate the usefulness of the developed methodology on a set of compounds extracted from DrugBank. The resulting models are published online and are available via a graphical web interface and an OpenAPI interface for programmatic access.
机译:基于配体的模型可用于药物开发中,以获得可能与不良反应相关的潜在脱靶相互作用的早期迹象。另一个应用是将此类模型组合成一个面板,从而可以比较和搜索具有相似特征的化合物。然而,大多数当代方法和实现对它们的预测缺乏有效的置信度,仅提供点预测。我们在此描述一种使用共形预测来预测脱靶相互作用的方法,该模型采用了针对ExCAPE-DB数据集中的31个目标的数据进行训练的模型,这些模型被选择用于广泛的早期危害评估。用签名分子描述符表示化学物质,并使用支持向量机作为基础的机器学习方法。通过使用保形预测,预测的结果将以每个类的置信度p值的形式出现。完整的预处理和模型训练过程可在GitHub上以科学工作流程形式公开使用,从而使其具有完全可重复性。我们举例说明了开发方法论对从DrugBank提取的一组化合物的有用性。生成的模型可以在线发布,并且可以通过图形Web界面和OpenAPI界面进行编程访问。

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