Université de Lyon, CREATIS, CNRS UMR5220, Inserm U1044, INSA-Lyon, Université Lyon 1, Lyon 69622, France.
IEEE Trans Image Process. 2013 Mar;22(3):1084-95. doi: 10.1109/TIP.2012.2226903. Epub 2012 Nov 10.
We present a method for the analysis of heart motion from medical images. The algorithm exploits monogenic signal theory, recently introduced as an N-dimensional generalization of the analytic signal. The displacement is computed locally by assuming the conservation of the monogenic phase over time. A local affine displacement model is considered to account for typical heart motions as contraction/expansion and shear. A coarse-to-fine B-spline scheme allows a robust and effective computation of the model's parameters, and a pyramidal refinement scheme helps to handle large motions. Robustness against noise is increased by replacing the standard point-wise computation of the monogenic orientation with a robust least-squares orientation estimate. Given its general formulation, the algorithm is well suited for images from different modalities, in particular for those cases where time variant changes of local intensity invalidate the standard brightness constancy assumption. This paper evaluates the method's feasibility on two emblematic cases: cardiac tagged magnetic resonance and cardiac ultrasound. In order to quantify the performance of the proposed method, we made use of realistic synthetic sequences from both modalities for which the benchmark motion is known. A comparison is presented with state-of-the-art methods for cardiac motion analysis. On the data considered, these conventional approaches are outperformed by the proposed algorithm. A recent global optical-flow estimation algorithm based on the monogenic curvature tensor is also considered in the comparison. With respect to the latter, the proposed framework provides, along with higher accuracy, superior robustness to noise and a considerably shorter computation time.
我们提出了一种从医学图像中分析心脏运动的方法。该算法利用了单态信号理论,这是一种最近被引入的 N 维解析信号的推广。通过假设单态相位随时间的守恒,可以局部计算位移。局部仿射位移模型用于解释典型的心脏运动,如收缩/扩张和剪切。粗到细的 B 样条方案允许对模型参数进行稳健有效的计算,并且金字塔细化方案有助于处理大运动。通过用稳健的最小二乘方向估计代替标准的点态单态方向计算,提高了对噪声的鲁棒性。由于其通用的公式,该算法非常适合来自不同模态的图像,特别是对于那些局部强度的时变变化使标准亮度恒常性假设失效的情况。本文评估了该方法在两个典型案例中的可行性:心脏标记磁共振和心脏超声。为了量化所提出方法的性能,我们使用了来自这两种模态的真实合成序列,其中已知基准运动。与用于心脏运动分析的最新方法进行了比较。在所考虑的数据中,与这些传统方法相比,所提出的算法表现更好。还考虑了基于单态曲率张量的最近的全局光流估计算法在比较中。与后者相比,所提出的框架不仅提供了更高的准确性,而且对噪声的鲁棒性更强,计算时间也更短。