Learning a Health Knowledge Graph from Electronic Medical Records

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作者
Maya Rotmensch
Yoni Halpern
Abdulhakim Tlimat
Steven Horng
David Sontag
机构
[1] New York University,Center for Data Science
[2] New York University,Department of Computer Science
[3] Beth Israel Deaconess Medical Center,Department of Emergency Medicine
[4] Beth Israel Deaconess Medical Center,Division of Clinical Informatics
[5] Massachusetts Institute of Technology,Department of Electrical Engineering and Computer Science, Computer Science and Artificial Intelligence Laboratory
[6] Institute for Medical Engineering & Science Massachusetts Institute of Technology,undefined
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Demand for clinical decision support systems in medicine and self-diagnostic symptom checkers has substantially increased in recent years. Existing platforms rely on knowledge bases manually compiled through a labor-intensive process or automatically derived using simple pairwise statistics. This study explored an automated process to learn high quality knowledge bases linking diseases and symptoms directly from electronic medical records. Medical concepts were extracted from 273,174 de-identified patient records and maximum likelihood estimation of three probabilistic models was used to automatically construct knowledge graphs: logistic regression, naive Bayes classifier and a Bayesian network using noisy OR gates. A graph of disease-symptom relationships was elicited from the learned parameters and the constructed knowledge graphs were evaluated and validated, with permission, against Google’s manually-constructed knowledge graph and against expert physician opinions. Our study shows that direct and automated construction of high quality health knowledge graphs from medical records using rudimentary concept extraction is feasible. The noisy OR model produces a high quality knowledge graph reaching precision of 0.85 for a recall of 0.6 in the clinical evaluation. Noisy OR significantly outperforms all tested models across evaluation frameworks (p < 0.01).
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