Heterogeneous graph neural networks for link prediction in biomedical networks.

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Bioinformatics advances Pub Date : 2025-08-05 eCollection Date: 2025-01-01 DOI:10.1093/bioadv/vbaf187
Junwei Hu, Michael Bewong, Selasi Kwashie, Wen Zhang, Hong-Yu Zhang, Zaiwen Feng
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引用次数: 0

Abstract

Summary: Heterogeneous graph neural networks (HGNNs) are gaining popularity as powerful tools for analysing complex networks with diverse node types often referred to as heterogeneous graphs. While existing HGNNs have been successfully used within the context of social and information networks, their application in biomedicine remains limited. In this study, we posit the utility of readily available generic HGNNs in addressing the link prediction tasks in biomedical settings. Thus, we conduct a benchmarking study of 42 techniques including nine generic HGNNs across eight biomedical datasets using several evaluation metrics. Our results show that the recently developed and readily available generic HGNNs achieve comparable and sometimes better results when compared with the specialized biomedical methods across all evaluation metrics. For instance, the generic HGNN Simple-HGN achieves the best results in four of the eight datasets and shows equivalent performance to the biomedical methods on the remaining datasets. Furthermore, this work analyses and presents useful guidelines to practitioners on how to optimally set complex hyperparameters which underpin the HGNNs.

Availability and implementation: Finally, this work makes publicly available, via https://github.com/Zaiwen/Link_Prediction_in_Biomedical_Network, the benchmarking framework and source codes which underpin this study.

Abstract Image

Abstract Image

Abstract Image

异构图神经网络在生物医学网络中的链接预测。
摘要:异构图神经网络(hgnn)作为分析具有不同节点类型(通常称为异构图)的复杂网络的强大工具而越来越受欢迎。虽然现有的hgnn已经成功地在社会和信息网络中使用,但它们在生物医学中的应用仍然有限。在这项研究中,我们假设在解决生物医学环境中的链接预测任务中,现成的通用hgnn的效用。因此,我们对42种技术进行了基准研究,包括8个生物医学数据集的9种通用hgnn,使用几种评估指标。我们的研究结果表明,与专门的生物医学方法相比,最近开发的和现成的通用hgnn在所有评估指标上都取得了相当的结果,有时甚至更好。例如,通用HGNN Simple-HGN在8个数据集中的4个数据集上取得了最好的结果,并且在其余数据集上表现出与生物医学方法相当的性能。此外,这项工作分析并提出了有用的指导方针,如何优化设置复杂的超参数,支撑hgnn的从业人员。可用性和实施:最后,这项工作通过https://github.com/Zaiwen/Link_Prediction_in_Biomedical_Network公开提供支撑本研究的基准测试框架和源代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.60
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