利用 BioPathNet 在生物医学知识图谱中进行基于路径的推理

Yue Hu, Svitlana Oleshko, Samuele Firmani, Zhaocheng Zhu, Hui Cheng, Maria Ulmer, Matthias Arnold, Maria Colome-Tatche, Jian Tang, Sophie Xhonneux, Annalisa Marsico
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引用次数: 0

摘要

了解生物医学网络中复杂的相互作用对生物医学的发展至关重要,但传统的链接预测(LP)方法在捕捉这种复杂性方面存在局限性。基于表征的学习技术通过将节点映射到低维嵌入来提高预测的准确性,但它们往往在可解释性和可扩展性方面存在困难。我们介绍的 BioPathNet 是一种基于神经贝尔曼-福特网络(NBFNet)的新型图神经网络框架,通过在生物医学知识图谱中进行基于路径的 LP 推理来解决这些局限性。与节点嵌入框架不同,BioPathNet 通过考虑路径上的所有关系来学习节点对之间的表征,从而提高了预测的准确性和可解释性。这允许对有影响的路径进行可视化,并促进生物验证。BioPathNet 利用背景调控图 (BRG) 增强信息传递,并使用严格的负采样提高精确度。在对基因功能注释、药物-疾病适应症、合成致死率和 lncRNA-mRNA 相互作用预测等各种 LP 任务的评估中,BioPathNet 的表现始终优于浅层节点嵌入方法、关系图神经网络和特定任务的最先进方法,显示出强大的性能和多功能性。我们的研究预测了急性淋巴细胞白血病(ALL)和阿尔茨海默氏症等疾病的新药适应症,并得到了医学专家和临床试验的验证。我们还发现了新的合成致死基因对以及涉及 lncRNA 和靶基因的调控相互作用,这些都通过文献综述得到了证实。BioPathNet 的可解释性将使研究人员能够追踪预测路径并获得分子洞察力,使其成为药物发现、个性化医疗和一般生物学的宝贵工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path-based reasoning in biomedical knowledge graphs with BioPathNet
Understanding complex interactions in biomedical networks is crucial for advancements in biomedicine, but traditional link prediction (LP) methods are limited in capturing this complexity. Representation-based learning techniques improve prediction accuracy by mapping nodes to low-dimensional embeddings, yet they often struggle with interpretability and scalability. We present BioPathNet, a novel graph neural network framework based on the Neural Bellman-Ford Network (NBFNet), addressing these limitations through path-based reasoning for LP in biomedical knowledge graphs. Unlike node-embedding frameworks, BioPathNet learns representations between node pairs by considering all relations along paths, enhancing prediction accuracy and interpretability. This allows visualization of influential paths and facilitates biological validation. BioPathNet leverages a background regulatory graph (BRG) for enhanced message passing and uses stringent negative sampling to improve precision. In evaluations across various LP tasks, such as gene function annotation, drug-disease indication, synthetic lethality, and lncRNA-mRNA interaction prediction, BioPathNet consistently outperformed shallow node embedding methods, relational graph neural networks and task-specific state-of-the-art methods, demonstrating robust performance and versatility. Our study predicts novel drug indications for diseases like acute lymphoblastic leukemia (ALL) and Alzheimer's, validated by medical experts and clinical trials. We also identified new synthetic lethality gene pairs and regulatory interactions involving lncRNAs and target genes, confirmed through literature reviews. BioPathNet's interpretability will enable researchers to trace prediction paths and gain molecular insights, making it a valuable tool for drug discovery, personalized medicine and biology in general.
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