Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2879-2882. doi: 10.1109/EMBC46164.2021.9630278.
Minimum variance (MV) beamforming improves resolution and reduces sidelobes when compared to delay-and-sum (DAS) beamforming for photoacoustic imaging (PAI). However, some level of sidelobe signal and incoherent clutter persist degrading MV PAI quality. Here, an adaptive beamforming algorithm (PSAPMV) combining MV formulation and sub-aperture processing is proposed. In PSAPMV, the received channel data are split into two complementary nonoverlapping sub-apertures and beamformed using MV. A weighting matrix based on similarity between sub-aperture beamformed images was derived and multiplied with the full aperture MV image resulting in suppression of sidelobe and incoherent clutter in the PA image. Numerical simulation experiments with point targets, diffuse inclusions and microvasculature networks are used to validate PSAPMV. Quantitative evaluation was done in terms of main-lobe-to-side-lobe ratio, full width at half maximum (FWHM), contrast ratio (CR) and generalized contrast-to-noise ratio (gCNR). PSAPMV demonstrated improved beamforming performance both qualitatively and quantitatively. PSAPMV had higher resolution (FWHM =0.19 mm) than MV (0.21 mm) and DAS (0.22mm) in point target simulations, better target detectability (gCNR =0.99) than MV (0.89) and DAS (0.84) for diffuse inclusions and improved contrast (CR in microvasculature simulation, DAS = 15.38, MV = 22.42, PSAPMV = 51.74 dB).
最小方差 (MV) 波束形成与延迟和求和 (DAS) 波束形成相比,可提高光声成像 (PAI) 的分辨率并降低旁瓣。然而,仍存在一定程度的旁瓣信号和非相干杂波,从而降低 MV PAI 的质量。本文提出了一种将 MV 公式和子孔径处理相结合的自适应波束形成算法 (PSAPMV)。在 PSAPMV 中,接收通道数据被分为两个互补的不重叠子孔径,并使用 MV 进行波束形成。推导了一种基于子孔径波束形成图像之间相似性的加权矩阵,并将其与全孔径 MV 图像相乘,从而抑制了 PA 图像中的旁瓣和非相干杂波。使用点目标、漫射体和微血管网络的数值模拟实验来验证 PSAPMV。主要从主瓣到旁瓣比、半最大值全宽 (FWHM)、对比度比 (CR) 和广义对比度噪声比 (gCNR) 等方面进行了定量评估。PSAPMV 在定性和定量方面都表现出了更好的波束形成性能。在点目标模拟中,PSAPMV 的分辨率(FWHM=0.19mm)高于 MV(0.21mm)和 DAS(0.22mm),在漫射体模拟中,其目标检测能力(gCNR=0.99)高于 MV(0.89)和 DAS(0.84),在微血管模拟中,其对比度(CR)更高(DAS=15.38,MV=22.42,PSAPMV=51.74dB)。