Volume 25, Issue 2 (7-2022)                   jha 2022, 25(2): 139-155 | Back to browse issues page


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Langarizadeh M, Jahanshahi M, khatibi T. Myocardial fibrosis delineation in Late Gadolinium Enhancement images of Hypertrophic Cardiomyopathy patients using Deep Learning methods. jha 2022; 25 (2) :139-155
URL: http://jha.iums.ac.ir/article-1-4091-en.html
1- Associate Professor, School of Health Management and Information Sciences, Iran University of Medical Sciences, Tehran
2- M.Sc. Student, School of Health Management and Information Sciences, Iran University of Medical Sciences, Tehran , jahanshahi.m@iums.ac.ir
3- Associate Professor, School of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, Iran
Abstract:   (1776 Views)
Introduction: Accurate delineation of myocardial fibrosis in Late Gadolinium Enhancement Cardiac Magnetic Resonance (LGE-CMR) has a crucial role in the assessment and risk stratification of HCM patients. As this is time-consuming and requires expertise, automation can be essential in accelerating this process. This study aims to use Unet-based deep learning methods to automate the mentioned process.
Methods: This study used three consecutive Unet-based networks for Region of Interest (ROI) detection, myocardial segmentation, and fibrosis delineation. The study was conducted on LGE images of 41 images diagnosed with HCM, which were contoured by two experts.
Results: This model reported a Dice similarity coefficient and accuracy of 89.74 and 98.22 in myocardial segmentation and 88.42 and 94.66 in fibrosis delineation, respectively, and could outperform the previous methods
Conclusion: The results confirm that using deep learning methods for delineating myocardial fibrosis not only can automate the process, but also helps improve the results and decrease the required time.
Full-Text [PDF 1400 kb]   (883 Downloads)    
Type of Study: Research | Subject: Health Information Management
Received: 2022/03/11 | Accepted: 2022/06/20 | Published: 2022/12/21

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