Clinical Radiology
Volume 65, Issue 2 , Pages 137-144, February 2010

Does computer-assisted detection of pulmonary emboli enhance severity assessment and risk stratification in acute pulmonary embolism?

  • C. Engelke

      Affiliations

    • Department of Radiology, University Hospital Goettingen, 37075 Goettingen, Germany
    • Corresponding Author InformationGuarantor and correspondent: Department of Radiology, University Hospital Goettingen, Robert-Koch-Str. 40, 37075 Goettingen, Germany. Tel.: +49 551 398965; fax: +49 551 399606.
  • ,
  • S. Schmidt

      Affiliations

    • Department of Radiology, Klinikum rechts der Isar, Technical University Munich, Germany
  • ,
  • F. Auer

      Affiliations

    • Department of Radiology, Klinikum rechts der Isar, Technical University Munich, Germany
  • ,
  • E.J. Rummeny

      Affiliations

    • Department of Radiology, Klinikum rechts der Isar, Technical University Munich, Germany
  • ,
  • K. Marten

      Affiliations

    • Department of Radiology, University Hospital Goettingen, 37075 Goettingen, Germany

Received 15 July 2008; received in revised form 6 October 2009; accepted 16 October 2009.

Aim

To prospectively assess the value of computer-aided detection (CAD) for the computed tomography (CT) severity assessment of acute pulmonary embolism (PE).

Materials and methods

CT angiographic scans of 58 PE-positive patients (34–89 years, mean 66 years) were analysed by four observers for PE severity using the Mastora index, and by CAD. Patients were stratified to three PE risk groups and results compared to an independent reference standard. Interobserver agreement was tested by Bland and Altman and extended kappa (Ke) statistics. Mastora index changes after CAD data review were tested by Wilcoxon signed ranks.

Results

CAD detected 343 out of 1118 emboli within given arterial segments and a total of 155 out of 218 polysegmental emboli (segmental vessel-based sensitivity=30.7%, embolus-based sensitivity=71.2% false-positive rate=4.1/scan). Interobserver agreement on PE severity [95% limits of agreement (LOA)=−19.7–7.5% and−5.5–3% for reader pairs 1 versus 2 and 3 versus 4, respectively was enhanced by consensus with CAD data (LOA=−6.5–5.4% and−3.7–2% for reader pairs 1 versus 2 and 3 versus 4, respectively). Simultaneously, the percentual scoring errors (PSE) were significantly decreased (PSE=35.4±31.8% and 5.1±8.9% for readers1/2 and 2/3, respectively, and PSE=27.6±31% and 3.8±6.2%, respectively, after CAD consensus; p0.005). Misclassifications to PE risk groups occurred in 27.6, 24.1, 5.2, and 5.2% of patients for readers 1–4, respectively, (Ke=0.74) and were corrected by CAD consensus in 56.3, 36, 33.3, and 33.3% of misclassified patients, respectively (Ke=0.83; p<0.05).

Conclusion

Radiologists may benefit from consensus with CAD data that improve PE severity scores and stratification to PE risk groups.

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PII: S0009-9260(09)00385-7

doi:10.1016/j.crad.2009.10.007

Clinical Radiology
Volume 65, Issue 2 , Pages 137-144, February 2010