Biomedical Simulations and Imaging Laboratory, National Technical University of Athens, Greece.
Phys Med Biol. 2013 Dec 21;58(24):8647-61. doi: 10.1088/0031-9155/58/24/8647. Epub 2013 Nov 21.
Valid risk stratification for carotid atherosclerotic plaques represents a crucial public health issue toward preventing fatal cerebrovascular events. Although motion analysis (MA) provides useful information about arterial wall dynamics, the identification of motion-based risk markers remains a significant challenge. Considering that the ability of a motion estimator (ME) to handle changes in the appearance of motion targets has a major effect on accuracy in MA, we investigated the potential of adaptive block matching (ABM) MEs, which consider changes in image intensities over time. To assure the validity in MA, we optimized and evaluated the ABM MEs in the context of a specially designed in silico framework. ABM(FIRF2), which takes advantage of the periodicity characterizing the arterial wall motion, was the most effective ABM algorithm, yielding a 47% accuracy increase with respect to the conventional block matching. The in vivo application of ABM(FIRF2) revealed five potential risk markers: low movement amplitude of the normal part of the wall adjacent to the plaques in the radial (RMA(PWL)) and longitudinal (LMA(PWL)) directions, high radial motion amplitude of the plaque top surface (RMA(PTS)), and high relative movement, expressed in terms of radial strain (RSI(PL)) and longitudinal shear strain (LSSI(PL)), between plaque top and bottom surfaces. The in vivo results were reproduced by OF(LK(WLS)) and ABM(KF-K2), MEs previously proposed by the authors and with remarkable in silico performances, thereby reinforcing the clinical values of the markers and the potential of those MEs. Future in vivo studies will elucidate with confidence the full potential of the markers.
有效的颈动脉粥样硬化斑块风险分层对于预防致命性脑血管事件具有重要的公共卫生意义。尽管运动分析(MA)提供了关于动脉壁动力学的有用信息,但运动标志物的识别仍然是一个重大挑战。考虑到运动估计器(ME)处理运动目标外观变化的能力对 MA 的准确性有重大影响,我们研究了自适应块匹配(ABM)ME 的潜力,这些 ME 考虑了图像强度随时间的变化。为了确保 MA 的有效性,我们在专门设计的计算机模拟框架中优化和评估了 ABM ME。ABM(FIRF2) 利用动脉壁运动的周期性特征,是最有效的 ABM 算法,与传统的块匹配相比,准确性提高了 47%。ABM(FIRF2)的体内应用揭示了五个潜在的风险标志物:斑块附近壁的正常部分的径向(RMA(PWL))和纵向(LMA(PWL))方向的运动幅度低、斑块顶部表面的径向运动幅度高(RMA(PTS)),以及斑块顶部和底部表面之间的相对运动,用径向应变(RSI(PL))和纵向剪切应变(LSSI(PL))表示。作者先前提出的 OF(LK(WLS)) 和 ABM(KF-K2) ME 再现了体内结果,这些 ME 在计算机模拟中表现出色,从而增强了标志物的临床价值和 ME 的潜力。未来的体内研究将有信心阐明标志物的全部潜力。