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Demographic Aware Probabilistic Medical Knowledge Graph Embeddings of Electronic Medical Records

机译:人口统计学意识概率医学知识图形嵌入电子病历

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Medical knowledge graphs (KGs) constructed from Electronic Medical Records (EMR) contain abundant information about patients and medical entities. The utilization of KG embedding models on these data has proven to be efficient for different medical tasks. However, existing models do not properly incorporate patient demographics and most of them ignore the probabilistic features of the medical KG. In this paper, we propose DARLING (Demographic Aware pRobabiListic medical kNowledge embeddinG), a demographic-aware medical KG embedding framework that explicitly incorporates demographics in the medical entities space by associating patient demographics with a corresponding hyperplane. Our framework leverages the probabilistic features within the medical entities for learning their representations through demographic guidance. We evaluate DARLING through link prediction for treatments and medicines, on a medical KG constructed from EMR data, and illustrate its superior performance compared to existing KG embedding models.
机译:由电子医疗记录(EMR)构建的医学知识图(KGS)包含有关患者和医疗实体的丰富信息。在这些数据上利用KG嵌入模型已被证明是对不同的医疗任务有效。然而,现有模型不适合纳入患者人口统计数据,其中大多数忽略了医疗kg的概率特征。在本文中,我们提出了Darling(人口统计学意识概率医学知识嵌入),一个人口感知的医疗KG嵌入框架,通过将患者人口统计与相应的超平面相关联,明确地纳入医疗实体空间中的人口统计学。我们的框架利用了医疗实体内的概率特征来通过人口指导学习其陈述。我们通过在由EMR数据构建的医疗KG上通过对治疗和药物的链接预测来评估亲爱的,并且与现有的KG嵌入模型相比,其卓越的性能。

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