基于多任务学习的三维超声心动图左心室心肌同时分割和运动估计。

Kevinminh Ta, Shawn S Ahn, John C Stendahl, Jonathan Langdon, Albert J Sinusas, James S Duncan
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引用次数: 1

摘要

运动估计和分割都是识别和评估心肌功能障碍的关键步骤,但传统上被视为独特的任务,并作为单独的步骤来解决。然而,许多运动估计技术依赖于精确的分割。在计算机视觉和医学图像分析文献中已经证明,当同时解决这两个任务时,这两个任务可能是相互有益的。在这项工作中,我们提出了一个多任务学习网络,可以同时预测左心室的体积分割和估计三维超声心动图图像对之间的运动。该模型利用具有任务特定解码分支的共享特征编码器来利用两个任务之间的互补潜在特征。解剖学启发的约束被纳入执行现实的运动模式。我们在犬体内三维超声心动图数据集上评估了我们提出的模型。结果表明,与单任务学习和其他替代方法相比,将这两个任务耦合在一个学习框架中表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Simultaneous Segmentation and Motion Estimation of Left Ventricular Myocardium in 3D Echocardiography Using Multi-task Learning.

Motion estimation and segmentation are both critical steps in identifying and assessing myocardial dysfunction, but are traditionally treated as unique tasks and solved as separate steps. However, many motion estimation techniques rely on accurate segmentations. It has been demonstrated in the computer vision and medical image analysis literature that both these tasks may be mutually beneficial when solved simultaneously. In this work, we propose a multi-task learning network that can concurrently predict volumetric segmentations of the left ventricle and estimate motion between 3D echocardiographic image pairs. The model exploits complementary latent features between the two tasks using a shared feature encoder with task-specific decoding branches. Anatomically inspired constraints are incorporated to enforce realistic motion patterns. We evaluate our proposed model on an in vivo 3D echocardiographic canine dataset. Results suggest that coupling these two tasks in a learning framework performs favorably when compared against single task learning and other alternative methods.

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