Weakly Supervised Deformation Network for 3D Echocardiography Segmentation on Left Ventricle

Suyu Dong, Gongning Luo, Naren Wulan, Shaodong Cao, Kuanquan Wang, Henggui Zhang
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Abstract

The automated 3D echocardiography segmentation on left ventricle (LV) is very important for clinical evaluation of LV function. However, the segmentation is difficult due to the 3D echocardiography’s challenges, such as the low signal-to-noise ratio, indistinguishable boundaries between LV and other heart substructures, and limited annotation data. This paper aims to propose a novel method to achieve accurate 3D echocardiography segmentation on LV, based on a weakly supervised deformable network. The deformation network was optimized by generative adversarial constraint and volume similarity constraint. The proposed framework was trained and validated on 3D echocardiography datasets which including 70 patients (35 train patients and 35 test patients). The results demonstrated the proposed method is relatively accurate and has potential for further research and application.
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弱监督变形网络用于左心室三维超声心动图分割
左心室三维超声心动图自动分割对临床评价左心室功能具有重要意义。然而,由于三维超声心动图的挑战,如低信噪比、左室和其他心脏亚结构之间难以区分的边界以及有限的注释数据,分割是困难的。本文旨在提出一种基于弱监督可变形网络的三维超声心动图LV精确分割的新方法。采用生成对抗约束和体积相似约束对变形网络进行优化。所提出的框架在包括70例患者(35例训练患者和35例测试患者)的3D超声心动图数据集上进行了训练和验证。结果表明,该方法具有较高的精度,具有进一步研究和应用的潜力。
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