ace - gnn:图神经网络能学会解释活动悬崖吗?

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Digital discovery Pub Date : 2025-06-30 eCollection Date: 2025-08-06 DOI:10.1039/d5dd00012b
Xu Chen, Dazhou Yu, Liang Zhao, Fang Liu
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引用次数: 0

摘要

图神经网络(gnn)通过利用基于图的表示彻底改变了分子性质预测,但其不透明的决策过程阻碍了药物发现的广泛采用。本研究引入了活动-悬崖-解释-监督GNN (ACES-GNN)框架,旨在通过将活动悬崖(ACs)的解释监督整合到GNN训练中,同时提高预测准确性和可解释性。ACs由结构相似的分子定义,具有显著的效价差异,由于它们依赖于共享的结构特征,对传统模型提出了挑战。通过将模型归因与化学家友好的解释对齐,ACES-GNN框架弥合了预测与解释之间的差距。经过30个药理靶点的验证,与无监督gnn相比,ACES-GNN始终提高ACs的预测准确性和归因质量。我们的研究结果表明,改进的预测和准确的解释之间存在正相关关系,为更好地理解和解释ACs提供了一个强大的、适应性强的框架。这项工作强调了解释引导学习在分子建模和药物发现方面推进可解释人工智能的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ACES-GNN: can graph neural network learn to explain activity cliffs?

Graph Neural Networks (GNNs) have revolutionized molecular property prediction by leveraging graph-based representations, yet their opaque decision-making processes hinder broader adoption in drug discovery. This study introduces the Activity-Cliff-Explanation-Supervised GNN (ACES-GNN) framework, designed to simultaneously improve predictive accuracy and interpretability by integrating explanation supervision for activity cliffs (ACs) into GNN training. ACs, defined by structurally similar molecules with significant potency differences, pose challenges for traditional models due to their reliance on shared structural features. By aligning model attributions with chemist-friendly interpretations, the ACES-GNN framework bridges the gap between prediction and explanation. Validated across 30 pharmacological targets, ACES-GNN consistently enhances both predictive accuracy and attribution quality for ACs compared to unsupervised GNNs. Our results demonstrate a positive correlation between improved predictions and accurate explanations, offering a robust and adaptable framework to better understand and interpret ACs. This work underscores the potential of explanation-guided learning to advance interpretable artificial intelligence in molecular modeling and drug discovery.

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CiteScore
2.80
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