Accuracy of multidetector computed tomography in identifying poor prognostic factors in colonic cancer

Author:

Dighe S1,Blake H2,Koh M-D3,Swift I1,Arnaout A2,Temple L4,Barbachano Y5,Brown G3

Affiliation:

1. Department of Surgery, Mayday University Hospital, Croydon, UK

2. Department of Radiology, Mayday University Hospital, Croydon, UK

3. Department of Radiology, Royal Marsden Hospital, Sutton, UK

4. Department of Histopathology, Epsom and St Helier Hospital, Carshalton, UK

5. Department of Computing and Statistics, Royal Marsden Hospital, Sutton, UK

Abstract

Abstract Background Recent neoadjuvant strategies for high-risk colonic tumours have renewed interest in accurate preoperative staging. The aim of this study was to validate prospectively the accuracy of multidetector computed tomography (MDCT) in stratifying patients into good and poor prognostic groups in a multicentre setting. Methods Staging MDCT scans of 84 patients with colonic cancer were reviewed by two independent radiologists and stratified into low-risk (T1/T2 and T3 with extramural tumour depth (EMD) of less than 5 mm) and high-risk (T3 with EMD of at least 5 mm and T4) tumours. Nodal status and extramural venous invasion (EMVI) were also assessed. Results The accuracy, sensitivity, specificity and positive predictive value of stratification by CT compared with histological examination was 74 (95 per cent confidence interval 64 to 82), 78 (65 to 87), 67 (49 to 81) and 81 (68 to 89) per cent respectively. Accuracy for detecting malignant lymph nodes and EMVI was 58 and 70 per cent respectively. The agreement for predicting prognostic stratification was moderate (κ = 0·54). Conclusion As the ability of CT to identify node status is poor, the depth of tumour invasion beyond the muscularis propria is the most accurate way to identify patients with a poor prognosis who may be suitable for neoadjuvant treatment.

Publisher

Oxford University Press (OUP)

Subject

Surgery

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