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A GPU-Parallelized Eigen-Based Clutter Filter Framework for Ultrasound Color Flow Imaging

机译:用于超声彩色流成像的GPU并行基于特征的杂波滤波器框架

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Eigen-filters with attenuation response adapted to clutter statistics in color flow imaging (CFI) have shown improved flow detection sensitivity in the presence of tissue motion. Nevertheless, its practical adoption in clinical use is not straightforward due to the high computational cost for solving eigendecompositions. Here, we provide a pedagogical description of how a real-time computing framework for eigen-based clutter filtering can be developed through a single-instruction, multiple data (SIMD) computing approach that can be implemented on a graphical processing unit (GPU). Emphasis is placed on the single-ensemble-based eigen-filtering approach (Hankel singular value decomposition), since it is algorithmically compatible with GPU-based SIMD computing. The key algebraic principles and the corresponding SIMD algorithm are explained, and annotations on how such algorithm can be rationally implemented on the GPU are presented. Real-time efficacy of our framework was experimentally investigated on a single GPU device (GTX Titan X), and the computing throughput for varying scan depths and slow-time ensemble lengths was studied. Using our eigen-processing framework, real-time video-range throughput (24 frames/s) can be attained for CFI frames with full view in azimuth direction (128 scanlines), up to a scan depth of 5 cm (λ pixel axial spacing) for slow-time ensemble length of 16 samples. The corresponding CFI image frames, with respect to the ones derived from non-adaptive polynomial regression clutter filtering, yielded enhanced flow detection sensitivity in vivo, as demonstrated in a carotid imaging case example. These findings indicate that the GPU-enabled eigen-based clutter filtering can improve CFI flow detection performance in real time.
机译:具有衰减响应的本征滤波器适用于彩色流成像(CFI)中的杂波统计,在存在组织运动的情况下,已显示出改进的流检测灵敏度。然而,由于解决本征分解的高计算成本,其在临床应用中的实际采用并不简单。在这里,我们对如何基于单指令多数据(SIMD)计算方法开发基于特征的杂波滤波的实时计算框架进行了教学上的描述,该方法可以在图形处理单元(GPU)上实现。重点放在基于单集合的特征滤波方法(Hankel奇异值分解)上,因为它在算法上与基于GPU的SIMD计算兼容。解释了关键代数原理和相应的SIMD算法,并提供了有关如何在GPU上合理实现该算法的注释。我们在单个GPU设备(GTX Titan X)上通过实验研究了我们框架的实时有效性,并研究了不同扫描深度和慢速集合长度的计算吞吐量。使用我们的特征处理框架,对于在方位角方向(128条扫描线)全视角的CFI帧,实时视频范围吞吐量(24帧/秒)可以达到,扫描深度为5 cm(λ像素轴向间距) )的16个样本的慢速合奏长度。相对于从非自适应多项式回归杂波滤波得出的图像,相应的CFI图像帧在体内产生了增强的流量检测灵敏度,如在颈动脉成像案例中所示。这些发现表明,启用GPU的基于特征的杂波过滤可以实时提高CFI流检测性能。

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