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首页> 外文期刊>Future medicinal chemistry >Automatically updating predictive modeling workflows support decision-making in drug design
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Automatically updating predictive modeling workflows support decision-making in drug design

机译:自动更新预测建模工作流程可支持药物设计中的决策

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摘要

Using predictive models for early decision-making in drug discovery has become standard practice. We suggest that model building needs to be automated with minimum input and low technical maintenance requirements. Models perform best when tailored to answering specific compound optimization related questions. If qualitative answers are required, 2-bin classification models are preferred. Integrating predictive modeling results with structural information stimulates better decision making. For in silico models supporting rapid structure-activity relationship cycles the performance deteriorates within weeks. Frequent automated updates of predictive models ensure best predictions. Consensus between multiple modeling approaches increases the prediction confidence. Combining qualified and nonqualified data optimally uses all available information. Dose predictions provide a holistic alternative to multiple individual property predictions for reaching complex decisions.
机译:在药物发现中使用预测模型进行早期决策已成为标准做法。我们建议模型构建需要以最少的投入和较低的技术维护要求实现自动化。量身定制的模型可以回答与化合物优化相关的特定问题,因此效果最佳。如果需要定性答案,则首选2级分类模型。将预测建模结果与结构信息集成在一起,可以更好地进行决策。对于支持快速结构-活性关系循环的计算机模型,性能会在数周内恶化。频繁自动更新预测模型可确保获得最佳预测。多种建模方法之间的共识增加了预测置信度。合并合格和不合格数据可以最佳地使用所有可用信息。剂量预测提供了多个单独属性预测的整体替代方案,以实现复杂的决策。

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