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PDD Graph: Bridging Electronic Medical Records and Biomedical Knowledge Graphs via Entity Linking

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arxiv 1707.05340 v2 pith:LJIPPH2P submitted 2017-07-17 cs.DB cs.AIcs.IR

PDD Graph: Bridging Electronic Medical Records and Biomedical Knowledge Graphs via Entity Linking

classification cs.DB cs.AIcs.IR
keywords medicalknowledgeelectronicgraphbiomedicalgraphslinkingrecords
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Electronic medical records contain multi-format electronic medical data that consist of an abundance of medical knowledge. Facing with patient's symptoms, experienced caregivers make right medical decisions based on their professional knowledge that accurately grasps relationships between symptoms, diagnosis and corresponding treatments. In this paper, we aim to capture these relationships by constructing a large and high-quality heterogenous graph linking patients, diseases, and drugs (PDD) in EMRs. Specifically, we propose a novel framework to extract important medical entities from MIMIC-III (Medical Information Mart for Intensive Care III) and automatically link them with the existing biomedical knowledge graphs, including ICD-9 ontology and DrugBank. The PDD graph presented in this paper is accessible on the Web via the SPARQL endpoint, and provides a pathway for medical discovery and applications, such as effective treatment recommendations.

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