Literature DB >> 32182595

Automatic segmentation and quantification of epicardial adipose tissue from coronary computed tomography angiography.

Xiuxiu He1, Bang Jun Guo, Yang Lei, Tonghe Wang, Yabo Fu, Walter J Curran, Long Jiang Zhang, Tian Liu, Xiaofeng Yang.   

Abstract

Epicardial adipose tissue (EAT) is a visceral fat deposit, that's known for its association with factors, such as obesity, diabetes mellitus, age, and hypertension. Segmentation of the EAT in a fast and reproducible way is important for the interpretation of its role as an independent risk marker intricate. However, EAT has a variable distribution, and various diseases may affect the volume of the EAT, which can increase the complexity of the already time-consuming manual segmentation work. We propose a 3D deep attention U-Net method to automatically segment the EAT from coronary computed tomography angiography (CCTA). Five-fold cross-validation and hold-out experiments were used to evaluate the proposed method through a retrospective investigation of 200 patients. The automatically segmented EAT volume was compared with physician-approved clinical contours. Quantitative metrics used were the Dice similarity coefficient (DSC), sensitivity, specificity, Jaccard index (JAC), Hausdorff distance (HD), mean surface distance (MSD), residual mean square distance (RMSD), and the center of mass distance (CMD). For cross-validation, the median DSC, sensitivity, and specificity were 92.7%, 91.1%, and 95.1%, respectively, with JAC, HD, CMD, MSD, and RMSD are 82.9% ± 8.8%, 3.77 ± 1.86 mm, 1.98 ± 1.50 mm, 0.37 ± 0.24 mm, and 0.65 ± 0.37 mm, respectively. For the hold-out test, the accuracy of the proposed method remained high. We developed a novel deep learning-based approach for the automated segmentation of the EAT on CCTA images. We demonstrated the high accuracy of the proposed learning-based segmentation method through comparison with ground truth contour of 200 clinical patient cases using 8 quantitative metrics, Pearson correlation, and Bland-Altman analysis. Our automatic EAT segmentation results show the potential of the proposed method to be used in computer-aided diagnosis of coronary artery diseases (CADs) in clinical settings.

Entities:  

Year:  2020        PMID: 32182595     DOI: 10.1088/1361-6560/ab8077

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  5 in total

Review 1.  Machine learning applications in cardiac computed tomography: a composite systematic review.

Authors:  Jonathan James Hyett Bray; Moghees Ahmad Hanif; Mohammad Alradhawi; Jacob Ibbetson; Surinder Singh Dosanjh; Sabrina Lucy Smith; Mahmood Ahmad; Dominic Pimenta
Journal:  Eur Heart J Open       Date:  2022-03-17

Review 2.  A review of deep learning based methods for medical image multi-organ segmentation.

Authors:  Yabo Fu; Yang Lei; Tonghe Wang; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  Phys Med       Date:  2021-05-13       Impact factor: 2.685

3.  A 3D deep learning approach to epicardial fat segmentation in non-contrast and post-contrast cardiac CT images.

Authors:  Thanongchai Siriapisith; Worapan Kusakunniran; Peter Haddawy
Journal:  PeerJ Comput Sci       Date:  2021-12-10

4.  Deep learning segmentation and quantification method for assessing epicardial adipose tissue in CT calcium score scans.

Authors:  Ammar Hoori; Tao Hu; Juhwan Lee; Sadeer Al-Kindi; Sanjay Rajagopalan; David L Wilson
Journal:  Sci Rep       Date:  2022-02-10       Impact factor: 4.379

5.  Quantification of Intra-Muscular Adipose Infiltration in Calf/Thigh MRI Using Fully and Weakly Supervised Semantic Segmentation.

Authors:  Rula Amer; Jannette Nassar; Amira Trabelsi; David Bendahan; Hayit Greenspan; Noam Ben-Eliezer
Journal:  Bioengineering (Basel)       Date:  2022-07-14
  5 in total

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