Development of a Knowledge Graph Embeddings Model for Pain.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Jaya Chaturvedi, Tao Wang, Sumithra Velupillai, Robert Stewart, Angus Roberts
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Abstract

Pain is a complex concept that can interconnect with other concepts such as a disorder that might cause pain, a medication that might relieve pain, and so on. To fully understand the context of pain experienced by either an individual or across a population, we may need to examine all concepts related to pain and the relationships between them. This is especially useful when modeling pain that has been recorded in electronic health records. Knowledge graphs represent concepts and their relations by an interlinked network, enabling semantic and context-based reasoning in a computationally tractable form. These graphs can, however, be too large for efficient computation. Knowledge graph embeddings help to resolve this by representing the graphs in a low-dimensional vector space. These embeddings can then be used in various downstream tasks such as classification and link prediction. The various relations associated with pain which are required to construct such a knowledge graph can be obtained from external medical knowledge bases such as SNOMED CT, a hierarchical systematic nomenclature of medical terms. A knowledge graph built in this way could be further enriched with real-world examples of pain and its relations extracted from electronic health records. This paper describes the construction of such knowledge graph embedding models of pain concepts, extracted from the unstructured text of mental health electronic health records, combined with external knowledge created from relations described in SNOMED CT, and their evaluation on a subject-object link prediction task. The performance of the models was compared with other baseline models.

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开发疼痛知识图谱嵌入模型
疼痛是一个复杂的概念,可能与其他概念相互关联,如可能导致疼痛的疾病、可能缓解疼痛的药物等。为了充分了解个人或整个人群所经历的疼痛的来龙去脉,我们可能需要研究与疼痛相关的所有概念以及它们之间的关系。这在对电子健康记录中记录的疼痛进行建模时尤其有用。知识图谱通过一个相互连接的网络来表示概念及其关系,从而以一种可计算的形式实现基于语义和上下文的推理。然而,这些图可能过于庞大,难以实现高效计算。知识图谱嵌入通过在低维向量空间中表示图谱,有助于解决这一问题。这些嵌入可以用于各种下游任务,如分类和链接预测。构建这种知识图谱所需的与疼痛相关的各种关系可以从外部医学知识库(如 SNOMED CT)中获取,SNOMED CT 是医学术语的分层系统命名法。以这种方式构建的知识图谱可以通过从电子健康记录中提取的疼痛及其关系的真实案例进一步丰富。本文介绍了从精神卫生电子健康记录的非结构化文本中提取的疼痛概念的知识图谱嵌入模型的构建过程,该模型与根据 SNOMED CT 中描述的关系创建的外部知识相结合,并在主客体链接预测任务中对其进行了评估。这些模型的性能与其他基线模型进行了比较。
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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