Abstract
Objective: To determine whether text mining can accurately detect specific follow-up appointment criteria in free-text hospital discharge records. Design: Cross-sectional study. Setting: Mayo Clinic Rochester hospitals. Participants. Inpatients discharged from general medicine services in 2006 (n = 6481). Interventions: Textual hospital dismissal summaries were manually reviewed to determine whether the records contained specific follow-up appointment arrangement elements: date, time and either physician or location for an appointment. The data set was evaluated for the same criteria using SAS® Text Miner software. The two assessments were compared to determine the accuracy of text mining for detecting records containing follow-up appointment arrangements. Main Outcome Measures: Agreement of text-mined appointment findings with gold standard (manual abstraction) including sensitivity, specificity, positive predictive and negative predictive values (PPV and NPV). Results: About 55.2% (3576) of discharge records contained all criteria for follow-up appointment arrangements according to the manual review, 3.2% (113) of which were missed through text mining. Text mining incorrectly identified 3.7% (107) follow-up appointments that were not considered valid through manual review. Therefore, the text mining analysis concurred with the manual review in 96.6% of the appointment findings. Overall sensitivity and specificity were 96.8 and 96.3%, respectively; and PPV and NPV were 97.0 and 96.1%, respectively. Analysis of individual appointment criteria resulted in accuracy rates of 93.5% for date, 97.4% for time, 97.5% for physician and 82.9% for location. Conclusion: Text mining of unstructured hospital dismissal summaries can accurately detect documentation of follow-up appointment arrangement elements, thus saving considerable resources for performance assessment and quality-related research. © The Author 2010. Published by Oxford University Press in association with the International Society for Quality in Health Care; all rights reserved.
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Ruud, K. L., Johnson, M. G., Liesinger, J. T., Grafft, C. A., & Naessens, J. M. (2010). Automated detection of follow-up appointments using text mining of discharge records. International Journal for Quality in Health Care, 22(3), 229–235. https://doi.org/10.1093/intqhc/mzq012
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