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Blind source separation for selective tissue motion measurement in ultrasonic imaging.

机译:盲源分离,用于超声成像中的选择性组织运动测量。

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Multi-dimensional tissue motion measurement is of significant clinical relevance, yet conventional Doppler approaches to tissue velocity estimation in ultrasonic imaging are prone to error at large Doppler angles. Despite various correction methods and alternative approaches, no particular method has emerged as the premier technique for accurate and efficient multi-dimensional tissue motion measurement in clinical application. In addition to error inherent to velocity estimation schemes themselves, further velocity error is introduced by incomplete separation of signals corresponding to moving tissue structures of interest. Thorough signal separation is not necessarily possible via frequency-domain operations, as the signal of interest may contain frequency bands common to undesirable signal components. Rather, regression filters can be used to separate signals in the time-domain. Ideally, regression filters are implemented adaptively to automatically filter each data ensemble uniquely.; Blind Source Separation (BSS) is a method for enhanced adaptive signal segregation and multi-dimensional velocity estimation in ultrasonic imaging. BSS decomposes data ensembles into basis functions spanning orthogonal or independent signal components. In application to wall filtering for blood velocity estimation, BSS-derived basis functions effectively segregate vessel wall, blood, and noise signal components for subsequent blood velocity measurement without corruption from vessel wall and noise signals. Similar BSS methods are employed for adaptive filtering in Acoustic Radiation Force Impulse (ARFI) vascular imaging. Following BSS clutter filtering, small axial blood flow components at large Doppler angles are extracted from noisy axial velocity profiles with adaptive BSS filtering. BSS is further employed to reduce noise caused by jitter and physiological motion in measured ARFI-induced tissue displacement profiles. Finally, BSS is employed for complex phase clutter rejection to visualize ARFI-induced streaming in fluid filled cysts. In addition to adaptive filtering, BSS is directly capable of multi-dimensional tissue motion measurement via the novel technique, Blind Source Separation-Based Velocity Estimation (BSSVE). The method is demonstrated using simulated and clinical carotid artery data gathered from healthy, adult, male and female volunteers.; This dissertation supports the hypothesis, BSS is uniquely effective for adaptive filtering and multi-dimensional tissue velocity measurement, offering a novel approach to enhanced selective tissue motion measurement in ultrasonic imaging.
机译:多维组织运动测量具有重要的临床意义,但是超声成像中组织速度估计的传统多普勒方法在大多普勒角度时容易出现误差。尽管有各种校正方法和替代方法,但在临床应用中,没有一种特定的方法作为准确,有效的多维组织运动测量的主要技术出现。除了速度估计方案本身固有的误差外,还通过与目标运动组织结构相对应的信号的不完全分离,进一步引入了速度误差。完全不需要通过频域操作进行信号分离,因为感兴趣的信号可能包含不良信号分量所共有的频带。相反,可以使用回归过滤器在时域中分离信号。理想地,回归过滤器可以自适应地实现,以自动地唯一地自动过滤每个数据集合。盲源分离(BSS)是一种用于在超声成像中增强自适应信号分离和多维速度估计的方法。 BSS将数据集合分解为跨越正交或独立信号分量的基本函数。 BSS派生的基础功能应用于壁过滤以估计血流速度时,可以有效地隔离血管壁,血液和噪声信号分量,以进行后续的血流速度测量,而不会破坏血管壁和噪声信号。类似的BSS方法用于声辐射力脉冲(ARFI)血管成像中的自适应滤波。在进行BSS杂波滤波之后,使用自适应BSS滤波从嘈杂的轴向速度剖面中提取出大多普勒角度的小轴向血流分量。在测量的ARFI诱导的组织位移曲线中,BSS还被用来减少由抖动和生理运动引起的噪声。最后,BSS用于复杂的相位杂波抑制,以可视化ARFI诱导的充满液体的囊肿中的流。除了自适应滤波,BSS还可以通过基于盲源分离的速度估计(BSSVE)这一新技术直接进行多维组织运动测量。使用从健康,成年,男性和女性志愿者收集的模拟和临床颈动脉数据证明了该方法。本文支持这一假设,BSS在自适应滤波和多维组织速度测量中具有独特的效果,为增强超声成像中选择性组织运动测量提供了一种新方法。

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