4.5 Article

Classification algorithms to improve the accuracy of identifying patients hospitalized with community-acquired pneumonia using administrative data

Journal

EPIDEMIOLOGY AND INFECTION
Volume 139, Issue 9, Pages 1296-1306

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S0950268810002529

Keywords

Accuracy; algorithm; classification and regression tree; community-acquired pneumonia; hospitalization

Funding

  1. Group Health Research Institute

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In epidemiological studies of community-acquired pneumonia (CAP) that utilize administrative data, cases are typically defined by the presence of a pneumonia hospital discharge diagnosis code. However, not all such hospitalizations represent true CAP cases. We identified 3991 hospitalizations during 1997-2005 in a managed care organization, and validated them as CAP or not by reviewing medical records. To improve the accuracy of CAP identification, classification algorithms that incorporated additional administrative information associated with the hospitalization were developed using the classification and regression tree analysis. We found that a pneumonia code designated as the primary discharge diagnosis and duration of hospital stay improved the classification of CAP hospitalizations. Compared to the commonly used method that is based on the presence of a primary discharge diagnosis code of pneumonia alone, these algorithms had higher sensitivity (81-98%) and positive predictive values (82-84%) with only modest decreases in specificity (48-82%) and negative predictive values (75-90%).

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