化学中的可解释图神经网络:结合归因与不确定性量化。

IF 5.3 2区 化学 Q1 CHEMISTRY, MEDICINAL
Leonid Komissarov*, Nenad Manevski, Katrin Groebke Zbinden and Lisa Sach-Peltason*, 
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引用次数: 0

摘要

图神经网络(gnn)是预测化学性质的强大工具,但其黑箱性质会限制信任和效用。通过特征归因和预测不确定性的可解释性对于实际应用至关重要,例如在迭代的循环实验室场景中。我们系统地评估了不同的后置特征归因方法,并研究了它们与化学gnn不确定度量化的集成。我们的发现揭示了一种强大的协同作用:将不确定性归因于特定的输入特征(原子或子结构)提供了对模型置信度的细粒度理解,并突出了潜在的数据缺口或模型局限性。我们评估了水溶性和分子量预测任务的几种归因方法,表明特征消融和Shapley值采样等方法可以有效识别驱动预测及其不确定性的分子亚结构。这种综合方法显著提高了化学gnn的可解释性和可操作性,促进了研究和开发中更有用的模型的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Explainable Graph Neural Networks in Chemistry: Combining Attribution and Uncertainty Quantification

Explainable Graph Neural Networks in Chemistry: Combining Attribution and Uncertainty Quantification

Graph Neural Networks (GNNs) are powerful tools for predicting chemical properties, but their black-box nature can limit trust and utility. Explainability through feature attribution and awareness of prediction uncertainty are critical for practical applications, for example in iterative lab-in-the-loop scenarios. We systematically evaluate different posthoc feature attribution methods and study their integration with uncertainty quantification in GNNs for chemistry. Our findings reveal a strong synergy: attributing uncertainty to specific input features (atoms or substructures) provides a granular understanding of model confidence and highlights potential data gaps or model limitations. We evaluated several attribution approaches on aqueous solubility and molecular weight prediction tasks, demonstrating that methods like Feature Ablation and Shapley Value Sampling can effectively identify molecular substructures driving prediction and its uncertainty. This combined approach significantly enhances the interpretability and actionable insights derived from chemical GNNs, facilitating the design of more useful models in research and development.

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来源期刊
CiteScore
9.80
自引率
10.70%
发文量
529
审稿时长
1.4 months
期刊介绍: The Journal of Chemical Information and Modeling publishes papers reporting new methodology and/or important applications in the fields of chemical informatics and molecular modeling. Specific topics include the representation and computer-based searching of chemical databases, molecular modeling, computer-aided molecular design of new materials, catalysts, or ligands, development of new computational methods or efficient algorithms for chemical software, and biopharmaceutical chemistry including analyses of biological activity and other issues related to drug discovery. Astute chemists, computer scientists, and information specialists look to this monthly’s insightful research studies, programming innovations, and software reviews to keep current with advances in this integral, multidisciplinary field. As a subscriber you’ll stay abreast of database search systems, use of graph theory in chemical problems, substructure search systems, pattern recognition and clustering, analysis of chemical and physical data, molecular modeling, graphics and natural language interfaces, bibliometric and citation analysis, and synthesis design and reactions databases.
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