基于盲源分离的亚微米运动检测器,超声成像中的周期性位移。

Md Murad Hossain, Diwash Thapa, Justin Sierchio, Amy Oldenburg, Caterina Gallippil
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引用次数: 5

摘要

在磁动机超声(MMUS)成像和剪切波色散超声振动测量(SDUV)的背景下,提出了基于主成分分析(PCA)的盲源分离(BSS)亚微米周期性运动检测方法。在MMUS中,振荡的外部磁场会使装载有超顺磁性氧化铁(SPIO)颗粒的组织位移,而在SDUV中,利用声辐射力(ARF)诱导组织周期性运动来测量粘弹性。BSS在MMUS成像和SDUV中的运动检测性能分别与频率锁相(FPL)和归一化互相关(NCC)运动检测器在硅和实验模型中进行了比较。当内核尺寸小于等于0.043 mm时,采用BSS方法构建的参数化MMUS幻像的信噪比是采用FPL方法构建的幻像的近两倍。在SDUV的有限元模型中,当模拟信噪比为15 dB时,使用NCC模型,bss估计的模拟材料粘弹性性能误差< 10%,而使用NCC模型的误差> 20%。在校准后的弹性模体中,当扫描功率≤20%时,运动幅度≤0.5 μm。当功率水平为20%、15%和10%时,bss导出的模量的中位数误差分别为-6.8%、-1.55%和-17.11%。相应的nc误差分别为29.90%、127.1%和244.70%。这些结果表明,在MMUS和SDUV成像中,特别是当信噪比小于15 dB和/或诱发位移小于0.5 μm时,使用BSS检测亚微米周期运动具有相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Blind Source Separation - Based Motion Detector for Sub-Micrometer, Periodic Displacement in Ultrasonic Imaging.

Blind Source Separation - Based Motion Detector for Sub-Micrometer, Periodic Displacement in Ultrasonic Imaging.

Blind Source Separation - Based Motion Detector for Sub-Micrometer, Periodic Displacement in Ultrasonic Imaging.

Blind Source Separation - Based Motion Detector for Sub-Micrometer, Periodic Displacement in Ultrasonic Imaging.

Sub-micrometer, periodic motion detection using blind source separation (BSS) via principal component analysis (PCA) is presented in the context of magnetomotive ultrasound (MMUS) imaging and Shearwave Dispersion Ultrasound Vibrometry (SDUV). In MMUS, an oscillating external magnetic field displaces tissue loaded with superparamagnetic iron oxide (SPIO) particles, whereas in SDUV, periodic tissue motion is induced using acoustic radiation force (ARF) to measure visco-elastic properties. BSS motion detection performance in MMUS imaging and SDUV was compared against frequency-phase locked (FPL) and normalized cross-correlation (NCC) motion detectors, respectively, in silico and in experimental phantoms. Parametric MMUS phantom images constructed using the BSS method had nearly twice the SNR of the corresponding images constructed using FPL method when a 0.043 mm or smaller kernel size was used. In FEM models of SDUV, the error in the BSS-estimated viscoelastic properties of simulated materials was < 10%, whereas the error was > 20% using NCC when the simulated SNR was 15 dB. In a calibrated elasticity phantom, the amplitude of the motion was ≤ 0.5 μm for a scanner power level ≤ 20%. The median percent error in BSS-derived shear modulus of the phantom was -6.8%, -1.55%, -17.11% for power level of 20%, 15%, and 10%, respectively. The corresponding NCC-derived errors were 29.90%, 127.1%, and 244.70%. These results suggest the relevance of using BSS for the detection of sub-micrometer, periodic motion in MMUS and SDUV imaging, particularly when SNR is less than 15 dB and/or induced displacements are less than 0.5 μm.

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