Title of article :
Computer-Assisted Categorizing of Head Computed Tomography Reports for Clinical Decision Rule Research
Author/Authors :
Stephen P. Wall، نويسنده , , Oliver Mayorga، نويسنده , , Christine E. Banfield، نويسنده , , Mark E. Wall، نويسنده , , Ilan Aisic، نويسنده , , Carl Auerbach، نويسنده , , Paul Gennis، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
7
From page :
551
To page :
557
Abstract :
Study objective To develop software that categorizes electronic head computed tomography (CT) reports into groups useful for clinical decision rule research. Methods Data were obtained from the Second National Emergency X-Radiography Utilization Study, a cohort of head injury patients having received head CT. CT reports were reviewed manually for presence or absence of clinically important subdural or epidural hematoma, defined as greater than 1.0 cm in width or causing mass effect. Manual categorization was done by 2 independent researchers blinded to each other’s results. A third researcher adjudicated discrepancies. A random sample of 300 reports with radiologic abnormalities was selected for software development. After excluding reports categorized manually or by software as indeterminate (neither positive nor negative), we calculated sensitivity and specificity by using manual categorization as the standard. System efficiency was defined as the percentage of reports categorized as positive or negative, regardless of accuracy. Software was refined until analysis of the training data yielded sensitivity and specificity approximating 95% and efficiency exceeding 75%. To test the system, we calculated sensitivity, specificity, and efficiency, using the remaining 1,911 reports. Results Of the 1,911 reports, 160 had clinically important subdural or epidural hematoma. The software exhibited good agreement with manual categorization of all reports, including indeterminate ones (weighted κ 0.62; 95% confidence interval [CI] 0.58 to 0.65). Sensitivity, specificity, and efficiency of the computerized system for identifying manual positives and negatives were 96% (95% CI 91% to 98%), 98% (95% CI 98% to 99%), and 79% (95% CI 77% to 80%), respectively. Conclusion Categorizing head CT reports by computer for clinical decision rule research is feasible.
Journal title :
Annals of Emergency Medicine
Serial Year :
2006
Journal title :
Annals of Emergency Medicine
Record number :
538695
Link To Document :
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