4.6 Article

Identification of Incident Injuries in Hospital Discharge Registers

Journal

EPIDEMIOLOGY
Volume 19, Issue 6, Pages 860-867

Publisher

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1097/EDE.0b013e318181319e

Keywords

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Funding

  1. The Laerdal Foundation for Acute Medicine [PD07/05]
  2. The Swedish Society of Medicine [200618295]
  3. The Swedish Research Council [K2006-73P-20267-01-4, K2006-73X-13511-07-3]

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Background: Hospital discharge data on injuries constitute a potentially powerful data source for epidemiologic studies. However, reliable identification of incident injury admissions is necessary. The objective of this study was to develop a prediction model for identifying incident hospital admissions, based on variables derived from a hospital discharge register. Methods: There were 743,022 hospital admissions for injury in Sweden 1998-2004. Of these, 23,920 were in the county of Uppsala and 24% of these people had previous injury admissions. To determine if these admissions were new injuries or readmissions for earlier injuries, we reviewed 817 randomly selected hospital records. A prediction model for incident injury admissions was developed on the basis of patient age, type of admission (urgent or elective), time interval from the previous injury admission, main diagnosis, and department type. Results: The final prediction model showed good discrimination (c-statistic = 0.969). This model was applied to the validation dataset using the optimal cut-off level, and the resulting sensitivity and specificity were adjusted according to the proportion with a previous injury admission in each injury category. The injury with the highest proportion of possible readmissions was hip contusion (35%). Nevertheless, using the prediction model, incident hip contusions were identified with a sensitivity of 94% (95% confidence interval = 93%-95%) and a specificity of 95% (94%-97%). The accuracy was higher for all other injury categories. Conclusions: Incident injury admissions can be accurately separated from readmissions using a prediction model based on information derived from hospital discharge data.

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