Automatic Left Ventricle Segmentation from Short-Axis MRI Images Using U-Net with Study of the Papillary Muscles' Removal Effect

被引:2
作者
Baccouch, Wafa [1 ]
Oueslati, Sameh [1 ]
Solaiman, Basel [2 ]
Lahidheb, Dhaker [3 ,4 ]
Labidi, Salam [1 ]
机构
[1] Univ Tunis El Manar, Higher Inst Med Technol Tunis, Res Lab Biophys & Med Technol LR13ES07, Tunis 1006, Tunisia
[2] IMT Atlantique, Image & Informat Proc Dept ITi, Technopole Brest Iroise CS 83818, F-29238 Brest, France
[3] Univ Tunis El Manar, Fac Med Tunis, Tunis, Tunisia
[4] Mil Hosp Tunis, Dept Cardiol, Tunis, Tunisia
关键词
Cardiac cine-MRI; Fully automatic segmentation; U-net; Papillary muscles; MAGNETIC-RESONANCE;
D O I
10.1007/s40846-023-00794-z
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
PurposeIn clinical routines, the evaluation of cardiac wall motion is based on manual segmentation of ventricular contours. This task is time-consuming and leads to inter-observer variability. In this context, the aim of this paper is to propose a fully automatic method based on U-net architecture for left ventricle (LV) segmentation while studying the impact of papillary muscles presence and elimination on the segmentation accuracy.MethodsIn this work, we developed and evaluated an automatic approach based on U-Net architecture for LV segmentation. We started with a preprocessing pipeline which consists in cropping original images using convolutional neural network (CNN) and eliminating pillars using morphological operators. Regarding segmentation, our neural network was trained and validated using ACDC dataset composed of 150 patients. The performance of the proposed method was evaluated on an internal database composed of 100 patients (more than 2500 frames) using technical metrics including Hausdorff distance (HD), Jaccard coefficient (IoU), and Dice Similarity Coefficient (DSC).ResultsA comparative study demonstrated that the proposed architecture outperformed the original U-Net. Quantitative analysis of the obtained results confirmed the strength of our method that reveals the superlative segmentation performance as evaluated using the following indices including HD = 6.541 +/- 1.6 mm, IoU = 94.85 +/- 2%, and DSC = 93.27 +/- 5% with p value < 0.0032. After the preprocessing application, the segmentation accuracy was improved. Thus, new mean HD, IoU, and DSC were 5.034 +/- 2 mm, 98.83 +/- 3.4%, and 98.04 +/- 4%, respectively, with p value < 0.0018. Clinically, pillars' exclusion facilitated middle and apical sections' interpretation and helped in pathologies localization and clinical parameters' estimation.ConclusionExperimental results demonstrate that the proposed approach offers a promising tool for LV segmentation and verifies its potential clinical applicability. In addition, pillars' elimination using morphological operations proves its usefulness in improving segmentation accuracy.
引用
收藏
页码:278 / 290
页数:13
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