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A method and knowledge base for automated inference of patient problems from structured data in an electronic medical record
Authors:Adam Wright  Justine Pang  Joshua C Feblowitz  Francine L Maloney  Allison R Wilcox  Harley Z Ramelson  Louise I Schneider  David W Bates
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
Abstract:

Background

Accurate 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.

Objective

To 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 methods

We 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.

Results

Seventeen 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.

Conclusion

We 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.
Keywords:Problem list   clinical decision support   data mining   automated inference   methodology
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