Knowledge Graph Applications in Medical Imaging Analysis: A Scoping Review.

Health data science Pub Date : 2022-01-01 Epub Date: 2022-06-14 DOI:10.34133/2022/9841548
Song Wang, Mingquan Lin, Tirthankar Ghosal, Ying Ding, Yifan Peng
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引用次数: 0

Abstract

Background: There is an increasing trend to represent domain knowledge in structured graphs, which provide efficient knowledge representations for many downstream tasks. Knowledge graphs are widely used to model prior knowledge in the form of nodes and edges to represent semantically connected knowledge entities, which several works have adopted into different medical imaging applications.

Methods: We systematically searched over five databases to find relevant articles that applied knowledge graphs to medical imaging analysis. After screening, evaluating, and reviewing the selected articles, we performed a systematic analysis.

Results: We looked at four applications in medical imaging analysis, including disease classification, disease localization and segmentation, report generation, and image retrieval. We also identified limitations of current work, such as the limited amount of available annotated data and weak generalizability to other tasks. We further identified the potential future directions according to the identified limitations, including employing semisupervised frameworks to alleviate the need for annotated data and exploring task-agnostic models to provide better generalizability.

Conclusions: We hope that our article will provide the readers with aggregated documentation of the state-of-the-art knowledge graph applications for medical imaging to encourage future research.

Abstract Image

Abstract Image

Abstract Image

医学影像分析中的知识图谱应用:范围综述。
背景:用结构图表示领域知识的趋势越来越明显,它为许多下游任务提供了高效的知识表示。知识图谱被广泛用于以节点和边的形式对先验知识进行建模,以表示语义关联的知识实体,一些研究已将其应用到不同的医学影像应用中:我们系统地搜索了五个数据库,以找到将知识图谱应用于医学影像分析的相关文章。在对所选文章进行筛选、评估和审查后,我们进行了系统分析:我们研究了医学影像分析中的四种应用,包括疾病分类、疾病定位和分割、报告生成和图像检索。我们还发现了当前工作的局限性,例如可用的注释数据量有限以及对其他任务的通用性较弱。根据所发现的局限性,我们进一步确定了未来的潜在方向,包括采用半监督框架来减轻对注释数据的需求,以及探索任务区分模型以提供更好的通用性:我们希望我们的文章能为读者提供医学影像知识图谱应用的最新文献,以鼓励未来的研究。
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
3.70
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