Assessment of epicardial fat volume with threshold-based 3-dimensional segmentation in CT: Comparison with the 2-dimensional short axis-based method

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Abstract

Background and Objectives: We aimed to assess the usefulness of a threshold-based, 3-dimensional (3D) segmentation in comparison with the traditional 2-dimensional (2D) short axis-based method for measurement of epicardial fat volume with 64-slice multidetector computed tomography (MDCT). Subjects and Methods: One hundred patients (52 males; mean age, 58.36±11.0 years) who underwent coronary CT angiography were enrolled in this study. The epicardial fat volume was measured using the two methods. The existing method was the 2D short axis-based method and the new method was the threshold-based 3D segmentation. Pearsons correlation was used to compare the two measurement methods. We also assessed the relationship between the epicardial fat volume and coronary artery disease (CAD). Results: There were a strong correlation between the epicardial fat volumes determined using the two methods (r=0.956, p<0.001). The mean overestimation of epicardial fat volume by the threshold-based 3D method was 59.89±12.00% compared to the 2D short-axis based method. Using the 3D method, the epicardial fat volume was significantly higher in the CAD group than in the controls (165.07± 48.22 cm3 vs. 108.39±48.03 cm3, p<0.001). Conclusion: Threshold-based 3D segmentation is another easy and useful tool for measuring the epicardial fat volume.

Original languageEnglish
Pages (from-to)328-333
Number of pages6
JournalKorean Circulation Journal
Volume40
Issue number7
DOIs
StatePublished - Jul 2010

Keywords

  • Coronary artery disease
  • Pericardium
  • Tomography
  • Visceral fats
  • X-ray computed

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