稀疏阵列的超分辨率光声成像(会议报告)

Sergey Vilov, B. Arnal, Eliel Hojman, Oren Solomon, Yonina C. Eldar, E. Bossy, O. Katz
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引用次数: 0

摘要

研究表明,基于范数的迭代重建算法利用成像系统的点扩展函数(PSF)的先验知识,可以在声分辨率光声成像中分辨亚衍射结构。在这里,我们证明了超分辨率仍然是可以实现的,当接收超声探头的元素比传统使用的少得多(8对128)。为此,进行了概念验证实验。将填充染料的5个平行微通道(通道宽度为40μm,中心距离为180μm)置于5ns激光脉冲(波长为532nm,能量通量为3.0mJ/cm2, PRF=100Hz)下。样品产生的光声信号由连接采集装置的线性超声阵列(128个单元,间距=0.1mm, fc=15MHz)捕获。正演问题采用矩阵形式Y=AX进行建模,其中Y为被测光声信号,X为待重构对象。矩阵A包含重构网格上所有点的PSF,它是由实验获得的10 μm宽微通道的单个PSF导出的。对于重建,我们使用了基于稀疏性的最小化算法。虽然通过波束形成用探头的所有128个元素测量的信号获得的传统图像无法解析单个微通道,但我们基于稀疏性的重建导致仅使用探头的8个元素(在整个探头孔径上有规则间隔)获得超分辨率图像,其图像质量可与所有128个元素获得的图像质量相当。这些结果为稀疏换能器阵列的超分辨率三维光声成像铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super-resolution photoacoustic imaging with a sparse array (Conference Presentation)
It has been shown that sub-diffraction structures can be resolved in acoustic resolution photoacoustic imaging thanks to norm-based iterative reconstruction algorithms exploiting prior knowledge of the point spread function (PSF) of the imaging system. Here, we demonstrate that super-resolution is still achievable when the receiving ultrasonic probe has much fewer elements than used conventionally (8 against 128). To this end, a proof-of-concept experiment was conducted. A microfluidic circuit containing five parallel microchannels (channel’s width 40μm, center-to center distance 180μm) filled with dye was exposed to 5ns laser pulses (=532nm, fluence=3.0mJ/cm2, PRF=100Hz). Photoacoustic signals generated by the sample were captured by a linear ultrasonic array (128 elements, pitch=0.1mm, fc=15MHz) connected to an acquisition device. The forward problem is modelled in a matrix form Y=AX, where Y are the measured photoacoustic signals and X is the object to reconstruct. The matrix A contained the PSFs at all points of the reconstruction grid, and was derived from a single PSF acquired experimentally for a 10-μm wide microchannel. For the reconstruction, we used a sparsity-based minimization algorithm. While the conventional image obtained by beamforming the signals measured with all the 128 elements of the probe cannot resolve the individual microchannels, our sparsity-based reconstruction leads to super-resolved images with only 8 elements of the probe (regularly spaced over the full probe aperture), with an image quality comparable to that obtained with all the 128 elements. These results pave the way towards super-resolution in 3D photoacoustic imaging with sparse transducers arrays.
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