利用图形表示学习推进生物医学:最新进展、挑战和未来方向》。

Yearbook of medical informatics Pub Date : 2023-08-01 Epub Date: 2023-12-26 DOI:10.1055/s-0043-1768735
Fang Li, Yi Nian, Zenan Sun, Cui Tao
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引用次数: 0

摘要

目的:图形表示学习(GRL)已成为一个举足轻重的领域,为包括生物医学在内的各个领域的突破做出了重大贡献。本调查旨在回顾图表示学习方法的最新进展及其在生物医学领域的应用。我们还强调了 GRL 目前面临的主要挑战,并概述了未来研究的潜在方向:我们对多个数据库进行了全面搜索,包括 PubMed、Web of Science、IEEE Xplore 和 Google Scholar,以收集过去两年(2021-2022 年)的相关出版物。根据研究主题的相关性和出版物的质量,选择了部分研究进行综述:共有 78 篇文章纳入了我们的分析。我们确定了 GRL 方法的三大类别,并总结了它们的方法论基础和显著模型。在 GRL 应用方面,我们主要关注两个主题:药物和疾病。我们分析了研究框架和重要研究成果。基于当前的先进水平,我们讨论了面临的挑战和未来的发展方向:应用于生物医学领域的 GRL 方法展示了几个关键特征,包括利用注意力机制来确定相关特征的优先级,越来越重视模型的可解释性,以及结合各种技术来提高模型性能。此外,还有一些挑战需要解决,包括减轻模型偏差、适应大规模知识图谱的异质性以及提高高质量图谱数据的可用性。为了充分发挥全球资源实验室的潜力,未来的工作应优先考虑这些研究领域。
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Advancing Biomedicine with Graph Representation Learning: Recent Progress, Challenges, and Future Directions.

Objectives: Graph representation learning (GRL) has emerged as a pivotal field that has contributed significantly to breakthroughs in various fields, including biomedicine. The objective of this survey is to review the latest advancements in GRL methods and their applications in the biomedical field. We also highlight key challenges currently faced by GRL and outline potential directions for future research.

Methods: We conducted a comprehensive search of multiple databases, including PubMed, Web of Science, IEEE Xplore, and Google Scholar, to collect relevant publications from the past two years (2021-2022). The studies selected for review were based on their relevance to the topic and the publication quality.

Results: A total of 78 articles were included in our analysis. We identified three main categories of GRL methods and summarized their methodological foundations and notable models. In terms of GRL applications, we focused on two main topics: drug and disease. We analyzed the study frameworks and achievements of the prominent research. Based on the current state-of-the-art, we discussed the challenges and future directions.

Conclusions: GRL methods applied in the biomedical field demonstrated several key characteristics, including the utilization of attention mechanisms to prioritize relevant features, a growing emphasis on model interpretability, and the combination of various techniques to improve model performance. There are also challenges needed to be addressed, including mitigating model bias, accommodating the heterogeneity of large-scale knowledge graphs, and improving the availability of high-quality graph data. To fully leverage the potential of GRL, future efforts should prioritize these areas of research.

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来源期刊
Yearbook of medical informatics
Yearbook of medical informatics Medicine-Medicine (all)
CiteScore
4.10
自引率
0.00%
发文量
20
期刊介绍: Published by the International Medical Informatics Association, this annual publication includes the best papers in medical informatics from around the world.
期刊最新文献
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