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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Subaperture Processing-Based Adaptive Beamforming for Photoacoustic Imaging
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Subaperture Processing-Based Adaptive Beamforming for Photoacoustic Imaging

机译:基于子孔节处理的光声成像的自适应波束形成

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摘要

Delay-and-sum (DAS) beamformers, when applied to photoacoustic (PA) image reconstruction, produce strong sidelobes due to the absence of transmit focusing. Consequently, DAS PA images are often severely degraded by strong off-axis clutter. For preclinical in vivo cardiac PA imaging, the presence of these noise artifacts hampers the detectability and interpretation of PA signals from the myocardial wall, crucial for studying blood-dominated cardiac pathological information and to complement functional information derived from ultrasound imaging. In this article, we present PA subaperture processing (PSAP), an adaptive beamforming method, to mitigate these image degrading effects. In PSAP, a pair of DAS reconstructed images is formed by splitting the received channel data into two complementary nonoverlapping sub-apertures. Then, a weighting matrix is derived by analyzing the correlation between subaperture beamformed images and multiplied with the full-aperture DAS PA image to reduce sidelobes and incoherent clutter. We validated PSAP using numerical simulation studies using point target, diffuse inclusion and microvasculature imaging, and in vivo feasibility studies on five healthy murine models. Qualitative and quantitative analysis demonstrate improvements in PAI image quality with PSAP compared to DAS and coherence factor weighted DAS (DAS(CF)). PSAP demonstrated improved target detectability with a higher generalized contrast-to-noise (gCNR) ratio in vasculature simulations where PSAP produces 19.61% and 19.53% higher gCNRs than DAS and DAS(CF), respectively. Furthermore, PSAP provided higher image contrast quantified using contrast ratio (CR) (e.g., PSAP produces 89.26% and 11.90% higher CR than DAS and DAS(CF) in vasculature simulations) and improved clutter suppression.
机译:延迟和总和(DAS)波束形成器,当应用于光声(PA)图像重建时,由于不存在传输聚焦而产生强的侧链。因此,DAS PA图像通常受到强轴杂波的严重劣化。对于临床前的体内心脏PA成像,存在这些噪声伪影的存在阻碍了来自心肌壁的PA信号的可检测性和解释,这对于研究血栓占心脏病学信息以及来自超声成像的补互功能信息至关重要。在本文中,我们呈现PA子态处理(PSAP),自适应波束形成方法,以减轻这些图像劣化效果。在PSAP中,通过将接收的信道数据分成两个互补的非折叠子孔来形成一对DAS重建图像。然后,通过分析子射线波束成形图像之间的相关性并乘以全孔径DAS PA图像来导出加权矩阵,以减少侧瓣和不连贯的杂波。我们使用点目标,漫反射和微血管成像的数值模拟研究验证了PSAP,以及对五个健康小鼠模型的体内可行性研究。定性和定量分析表明,与DAS和相干因子加权DAS相比,PAI图像质量的改善(DAS(CF))。 PSAP证明了血管系统模拟中具有较高的通用对比度(GCNR)比的目标可检测性,PSAP分别比DAS和DAS(CF)产生19.61%和19.53%的GCNR。此外,PSAP提供了使用对比度(CR)的更高的图像对比度(例如,PSAP比DAS和DAS(CF)在脉管系统模拟中的较高的CR)和改善杂波抑制。

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