Literature DB >> 31521896

A semi-automatic approach for epicardial adipose tissue segmentation and quantification on cardiac CT scans.

Carmelo Militello1, Leonardo Rundo2, Patrizia Toia3, Vincenzo Conti4, Giorgio Russo5, Clarissa Filorizzo3, Erica Maffei6, Filippo Cademartiri7, Ludovico La Grutta8, Massimo Midiri3, Salvatore Vitabile3.   

Abstract

Many studies have shown that epicardial fat is associated with a higher risk of heart diseases. Accurate epicardial adipose tissue quantification is still an open research issue. Considering that manual approaches are generally user-dependent and time-consuming, computer-assisted tools can considerably improve the result repeatability as well as reduce the time required for performing an accurate segmentation. Unfortunately, fully automatic strategies might not always identify the Region of Interest (ROI) correctly. Moreover, they could require user interaction for handling unexpected events. This paper proposes a semi-automatic method for Epicardial Fat Volume (EFV) segmentation and quantification. Unlike supervised Machine Learning approaches, the method does not require any initial training or modeling phase to set up the system. As a further key novelty, the method also yields a subdivision into quartiles of the adipose tissue density. Quartile-based analysis conveys information about fat densities distribution, enabling an in-depth study towards a possible correlation between fat amounts, fat distribution, and heart diseases. Experimental tests were performed on 50 Calcium Score (CaSc) series and 95 Coronary Computed Tomography Angiography (CorCTA) series. Area-based and distance-based metrics were used to evaluate the segmentation accuracy, by obtaining Dice Similarity Coefficient (DSC) = 93.74% and Mean Absolute Distance (MAD) = 2.18 for CaSc, as well as DSC = 92.48% and MAD = 2.87 for CorCTA. Moreover, the Pearson and Spearman coefficients were computed for quantifying the correlation between the ground-truth EFV and the corresponding automated measurement, by obtaining 0.9591 and 0.9490 for CaSc, and 0.9513 and 0.9319 for CorCTA, respectively. In conclusion, the proposed EFV quantification and analysis method represents a clinically useable tool assisting the cardiologist to gain insights into a specific clinical scenario and leading towards personalized diagnosis and therapy.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Calcium score scans; Cardiac adipose tissue quantification; Coronary computed tomography angiography scans; Epicardial fat volume; Fat density quartiles; Semi-automatic segmentation

Year:  2019        PMID: 31521896     DOI: 10.1016/j.compbiomed.2019.103424

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  8 in total

Review 1.  Epicardial and pericardial fat analysis on CT images and artificial intelligence: a literature review.

Authors:  Federico Greco; Rodrigo Salgado; Wim Van Hecke; Romualdo Del Buono; Paul M Parizel; Carlo Augusto Mallio
Journal:  Quant Imaging Med Surg       Date:  2022-03

2.  Metabolic syndrome, fatty liver, and artificial intelligence-based epicardial adipose tissue measures predict long-term risk of cardiac events: a prospective study.

Authors:  Andrew Lin; Nathan D Wong; Aryabod Razipour; Priscilla A McElhinney; Frederic Commandeur; Sebastien J Cadet; Heidi Gransar; Xi Chen; Stephanie Cantu; Robert J H Miller; Nitesh Nerlekar; Dennis T L Wong; Piotr J Slomka; Alan Rozanski; Balaji K Tamarappoo; Daniel S Berman; Damini Dey
Journal:  Cardiovasc Diabetol       Date:  2021-01-29       Impact factor: 9.951

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.  Artificial intelligence based automatic quantification of epicardial adipose tissue suitable for large scale population studies.

Authors:  David Molnar; Olof Enqvist; Johannes Ulén; Måns Larsson; John Brandberg; Åse A Johnsson; Elias Björnson; Göran Bergström; Ola Hjelmgren
Journal:  Sci Rep       Date:  2021-12-13       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

6.  Edge-Sensitive Left Ventricle Segmentation Using Deep Reinforcement Learning.

Authors:  Jingjing Xiong; Lai-Man Po; Kwok Wai Cheung; Pengfei Xian; Yuzhi Zhao; Yasar Abbas Ur Rehman; Yujia Zhang
Journal:  Sensors (Basel)       Date:  2021-03-29       Impact factor: 3.576

7.  Machine Learning Driven Contouring of High-Frequency Four-Dimensional Cardiac Ultrasound Data.

Authors:  Frederick W Damen; David T Newton; Guang Lin; Craig J Goergen
Journal:  Appl Sci (Basel)       Date:  2021-02-13       Impact factor: 2.679

8.  Automatic Deep-Learning Segmentation of Epicardial Adipose Tissue from Low-Dose Chest CT and Prognosis Impact on COVID-19.

Authors:  Axel Bartoli; Joris Fournel; Léa Ait-Yahia; Farah Cadour; Farouk Tradi; Badih Ghattas; Sébastien Cortaredona; Matthieu Million; Adèle Lasbleiz; Anne Dutour; Bénédicte Gaborit; Alexis Jacquier
Journal:  Cells       Date:  2022-03-18       Impact factor: 6.600

  8 in total

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