Continuous 3D Myocardial Motion Tracking via Echocardiography

Chengkang Shen;Hao Zhu;You Zhou;Yu Liu;Si Yi;Lili Dong;Weipeng Zhao;David J. Brady;Xun Cao;Zhan Ma;Yi Lin
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Abstract

Myocardial motion tracking stands as an essential clinical tool in the prevention and detection of cardiovascular diseases (CVDs), the foremost cause of death globally. However, current techniques suffer from incomplete and inaccurate motion estimation of the myocardium in both spatial and temporal dimensions, hindering the early identification of myocardial dysfunction. To address these challenges, this paper introduces the Neural Cardiac Motion Field (NeuralCMF). NeuralCMF leverages implicit neural representation (INR) to model the 3D structure and the comprehensive 6D forward/backward motion of the heart. This method surpasses pixel-wise limitations by offering the capability to continuously query the precise shape and motion of the myocardium at any specific point throughout the cardiac cycle, enhancing the detailed analysis of cardiac dynamics beyond traditional speckle tracking. Notably, NeuralCMF operates without the need for paired datasets, and its optimization is self-supervised through the physics knowledge priors in both space and time dimensions, ensuring compatibility with both 2D and 3D echocardiogram video inputs. Experimental validations across three representative datasets support the robustness and innovative nature of the NeuralCMF, marking significant advantages over existing state-of-the-art methods in cardiac imaging and motion tracking. Code is available at: https://njuvision.github.io/NeuralCMF .
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通过超声心动图进行连续三维心肌运动跟踪
心肌运动跟踪是预防和检测心血管疾病(cvd)的重要临床工具,心血管疾病是全球最主要的死亡原因。然而,目前的技术在空间和时间维度上对心肌的运动估计不完整和不准确,阻碍了心肌功能障碍的早期识别。为了解决这些挑战,本文介绍了神经心脏运动场(NeuralCMF)。NeuralCMF利用内隐神经表征(INR)来模拟心脏的3D结构和全面的6D向前/向后运动。这种方法通过提供在整个心脏周期的任何特定点连续查询心肌的精确形状和运动的能力,超越了像素方面的限制,增强了心脏动力学的详细分析,超越了传统的斑点跟踪。值得注意的是,NeuralCMF无需配对数据集即可运行,其优化通过物理知识先验在空间和时间维度上进行自我监督,确保了2D和3D超声心动图视频输入的兼容性。跨三个代表性数据集的实验验证支持NeuralCMF的鲁棒性和创新性,标志着在心脏成像和运动跟踪方面比现有的最先进方法具有显着优势。代码可从https://njuvision.github.io/NeuralCMF获得。
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