A method and knowledge base for automated inference of patient problems from structured data in an electronic medical record |
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Authors: | Adam Wright Justine Pang Joshua C Feblowitz Francine L Maloney Allison R Wilcox Harley Z Ramelson Louise I Schneider David W Bates |
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Affiliation: | 1.Department of General Medicine, Brigham and Women''s Hospital, Boston, Massachusetts, USA;2.Information Systems, Partners HealthCare, Boston, Massachusetts, USA;3.Harvard Medical School, Boston, Massachusetts, USA |
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Abstract: | BackgroundAccurate knowledge of a patient''s medical problems is critical for clinical decision making, quality measurement, research, billing and clinical decision support. Common structured sources of problem information include the patient problem list and billing data; however, these sources are often inaccurate or incomplete.ObjectiveTo develop and validate methods of automatically inferring patient problems from clinical and billing data, and to provide a knowledge base for inferring problems.Study design and methodsWe identified 17 target conditions and designed and validated a set of rules for identifying patient problems based on medications, laboratory results, billing codes, and vital signs. A panel of physicians provided input on a preliminary set of rules. Based on this input, we tested candidate rules on a sample of 100 000 patient records to assess their performance compared to gold standard manual chart review. The physician panel selected a final rule for each condition, which was validated on an independent sample of 100 000 records to assess its accuracy.ResultsSeventeen rules were developed for inferring patient problems. Analysis using a validation set of 100 000 randomly selected patients showed high sensitivity (range: 62.8–100.0%) and positive predictive value (range: 79.8–99.6%) for most rules. Overall, the inference rules performed better than using either the problem list or billing data alone.ConclusionWe developed and validated a set of rules for inferring patient problems. These rules have a variety of applications, including clinical decision support, care improvement, augmentation of the problem list, and identification of patients for research cohorts. |
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Keywords: | Problem list clinical decision support data mining automated inference methodology |
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