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A Semi-Supervised Joint Learning Approach to Left Ventricular Segmentation and Motion Tracking in Echocardiography

机译:超声心动图的左心室分割和运动跟踪的半监督联合学习方法。

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Accurate interpretation and analysis of echocardiography is important in assessing cardiovascular health. However, motion tracking often relies on accurate segmentation of the myocardium, which can be difficult to obtain due to inherent ultrasound properties. In order to address this limitation, we propose a semi-supervised joint learning network that exploits overlapping features in motion tracking and segmentation. The network simultaneously trains two branches: one for motion tracking and one for segmentation. Each branch learns to extract features relevant to their respective tasks and shares them with the other. Learned motion estimations propagate a manually segmented mask through time, which is used to guide future segmentation predictions. Physiological constraints are introduced to enforce realistic cardiac behavior. Experimental results on synthetic and in vivo canine 2D+t echocardiographic sequences outperform some competing methods in both tasks.
机译:超声心动图的正确解释和分析对评估心血管健康很重要。然而,运动跟踪通常依赖于心肌的精确分割,由于固有的超声特性,这可能难以获得。为了解决这一局限性,我们提出了一种半监督的联合学习网络,该网络利用运动跟踪和分割中的重叠功能。该网络同时训练两个分支:一个分支用于运动跟踪,另一个分支用于分段。每个分支都学习提取与各自任务相关的功能,并与其他人共享。学习的运动估计会随时间传播手动分割的遮罩,用于指导将来的分割预测。引入生理约束以增强现实的心脏行为。在两个任务中,合成和体内犬2D + t超声心动图序列的实验结果均优于某些竞争方法。

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