A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI
Abstract The right ventricular assessment is crucial to heart disease diagnosis. Unfortunately, its segmentation is quite challenging due to its intricate shape, ill‐defined thin edges, large variability among patients, and pathologies. Besides, it is a very laborious and time‐consuming task to be d...
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doaj-88708349701147a894af2565b18452f42021-07-14T13:25:26ZengWileyIET Image Processing1751-96591751-96672021-07-011591845186810.1049/ipr2.12165A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRIAsma Ammari0Ramzi Mahmoudi1Badii Hmida2Rachida Saouli3Mohamed Hédi Bedoui4Faculty of Medicine of Monastir, Laboratory TIM‐LR12ES06 University of Monastir Monastir TunisiaFaculty of Medicine of Monastir, Laboratory TIM‐LR12ES06 University of Monastir Monastir TunisiaRadiology Service‐ UR12SP40 CHU Fattouma Bourguiba Monastir TunisiaDepartment of computer science, Laboratory LINFI University of Biskra BP 145 RP 07000 Biskra AlgeriaFaculty of Medicine of Monastir, Laboratory TIM‐LR12ES06 University of Monastir Monastir TunisiaAbstract The right ventricular assessment is crucial to heart disease diagnosis. Unfortunately, its segmentation is quite challenging due to its intricate shape, ill‐defined thin edges, large variability among patients, and pathologies. Besides, it is a very laborious and time‐consuming task to be done manually. Therefore, automated segmentation techniques are very suitable to reduce the strain on the expert. Here, it is attempted to review the taxonomy of the current RV segmentation approaches adopted to handle the afore‐mentioned issues. Enhanced by our expert's interpretation, the results of over forty research papers were evaluated based on several metrics such as the dice metric and the Hausdorff distance. Synthetic tables and charts were also used to discuss the reviewed approaches. The following study shows that none of the existing methods has proved accurate enough to meet all the RV challenging issues. Many misestimated results were reported for several cases. Eventually, global guidance is outlined, which supports combining different methods to enhance the expected results during the MRI short‐axis slice processing.https://doi.org/10.1049/ipr2.12165 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Asma Ammari Ramzi Mahmoudi Badii Hmida Rachida Saouli Mohamed Hédi Bedoui |
spellingShingle |
Asma Ammari Ramzi Mahmoudi Badii Hmida Rachida Saouli Mohamed Hédi Bedoui A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI IET Image Processing |
author_facet |
Asma Ammari Ramzi Mahmoudi Badii Hmida Rachida Saouli Mohamed Hédi Bedoui |
author_sort |
Asma Ammari |
title |
A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI |
title_short |
A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI |
title_full |
A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI |
title_fullStr |
A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI |
title_full_unstemmed |
A review of approaches investigated for right ventricular segmentation using short‐axis cardiac MRI |
title_sort |
review of approaches investigated for right ventricular segmentation using short‐axis cardiac mri |
publisher |
Wiley |
series |
IET Image Processing |
issn |
1751-9659 1751-9667 |
publishDate |
2021-07-01 |
description |
Abstract The right ventricular assessment is crucial to heart disease diagnosis. Unfortunately, its segmentation is quite challenging due to its intricate shape, ill‐defined thin edges, large variability among patients, and pathologies. Besides, it is a very laborious and time‐consuming task to be done manually. Therefore, automated segmentation techniques are very suitable to reduce the strain on the expert. Here, it is attempted to review the taxonomy of the current RV segmentation approaches adopted to handle the afore‐mentioned issues. Enhanced by our expert's interpretation, the results of over forty research papers were evaluated based on several metrics such as the dice metric and the Hausdorff distance. Synthetic tables and charts were also used to discuss the reviewed approaches. The following study shows that none of the existing methods has proved accurate enough to meet all the RV challenging issues. Many misestimated results were reported for several cases. Eventually, global guidance is outlined, which supports combining different methods to enhance the expected results during the MRI short‐axis slice processing. |
url |
https://doi.org/10.1049/ipr2.12165 |
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