Interpretation of multi-task clearance models from molecular images supported by experimental design

Andrés Martínez Mora , Mickael Mogemark , Vigneshwari Subramanian , Filip Miljković
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引用次数: 0

Abstract

Recent methodological advances in deep learning (DL) architectures have not only improved the performance of predictive models but also enhanced their interpretability potential, thus considerably increasing their transparency. In the context of medicinal chemistry, the potential to not only accurately predict molecular properties, but also chemically interpret them, would be strongly preferred. Previously, we developed accurate multi-task convolutional neural network (CNN) and graph convolutional neural network (GCNN) models to predict a set of diverse intrinsic metabolic clearance parameters from image- and graph-based molecular representations, respectively. Herein, we introduce several model interpretability frameworks to answer whether the model explanations obtained from CNN and GCNN multi-task clearance models could be applied to predict chemical transformations associated with experimentally confirmed metabolic products. We show a strong correlation between the CNN pixel intensities and corresponding clearance predictions, as well as their robustness to different molecular orientations. Using actual case examples, we demonstrate that both CNN and GCNN interpretations frequently complement each other, suggesting their high potential for combined use in guiding medicinal chemistry design.

Abstract Image

从实验设计支持的分子图像中解释多任务清除模型
最近深度学习(DL)架构的方法进步不仅提高了预测模型的性能,而且增强了它们的可解释性潜力,从而大大提高了它们的透明度。在药物化学的背景下,不仅可以准确预测分子性质,而且可以化学解释它们的潜力将是强烈首选。此前,我们开发了精确的多任务卷积神经网络(CNN)和图卷积神经网络(GCNN)模型,分别从基于图像和基于图的分子表示中预测一组不同的内在代谢清除参数。在此,我们引入了几个模型可解释性框架,以回答从CNN和GCNN多任务清除模型获得的模型解释是否可以应用于预测与实验证实的代谢产物相关的化学转化。我们展示了CNN像素强度与相应的间隙预测之间的强相关性,以及它们对不同分子取向的鲁棒性。通过实际案例,我们证明了CNN和GCNN的解释经常相互补充,这表明它们在指导药物化学设计方面具有很大的潜力。
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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
自引率
0.00%
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0
审稿时长
15 days
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