Zhong Yutian, Zhang Xiaoming, Mo Zongxin, Zhang Shuangyang, Nie Liming, Chen Wufan, Qi Li
School of Biomedical Engineering, Southern Medical University, Guangzhou, China.
Guangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical University, Guangzhou, China.
Photoacoustics. 2024 Sep 4;39:100641. doi: 10.1016/j.pacs.2024.100641. eCollection 2024 Oct.
Multispectral photoacoustic tomography (PAT) is an imaging modality that utilizes the photoacoustic effect to achieve non-invasive and high-contrast imaging of internal tissues but also molecular functional information derived from multi-spectral measurements. However, the hardware cost and computational demand of a multispectral PAT system consisting of up to thousands of detectors are huge. To address this challenge, we propose an ultra-sparse spiral sampling strategy for multispectral PAT, which we named U3S-PAT. Our strategy employs a sparse ring-shaped transducer that, when switching excitation wavelengths, simultaneously rotates and translates. This creates a spiral scanning pattern with multispectral angle-interlaced sampling. To solve the highly ill-conditioned image reconstruction problem, we propose a self-supervised learning method that is able to introduce structural information shared during spiral scanning. We simulate the proposed U3S-PAT method on a commercial PAT system and conduct animal experiments to verify its performance. The results show that even with a sparse sampling rate as low as 1/30, our U3S-PAT strategy achieves similar reconstruction and spectral unmixing accuracy as non-spiral dense sampling. Given its ability to dramatically reduce the time required for three-dimensional multispectral scanning, our U3S-PAT strategy has the potential to perform volumetric molecular imaging of dynamic biological activities.
多光谱光声断层扫描(PAT)是一种成像方式,它利用光声效应实现对内部组织的非侵入性高对比度成像,同时还能获取源自多光谱测量的分子功能信息。然而,由多达数千个探测器组成的多光谱PAT系统的硬件成本和计算需求巨大。为应对这一挑战,我们提出了一种用于多光谱PAT的超稀疏螺旋采样策略,我们将其命名为U3S-PAT。我们的策略采用了一种稀疏环形换能器,在切换激发波长时,它会同时旋转和平移。这会创建一种具有多光谱角度交错采样的螺旋扫描模式。为解决高度病态的图像重建问题,我们提出了一种自监督学习方法,该方法能够引入螺旋扫描过程中共享的结构信息。我们在商用PAT系统上模拟了所提出的U3S-PAT方法,并进行动物实验以验证其性能。结果表明,即使采样率低至1/30,我们的U3S-PAT策略也能实现与非螺旋密集采样相似的重建和光谱解混精度。鉴于其能够显著减少三维多光谱扫描所需的时间,我们的U3S-PAT策略有潜力对动态生物活动进行体积分子成像。