Li Xipan, Zhang Shuangyang, Wu Jian, Huang Shixian, Feng Qianjin, Qi Li, Chen Wufan
IEEE Trans Med Imaging. 2020 Nov;39(11):3463-3474. doi: 10.1109/TMI.2020.2996240. Epub 2020 Oct 28.
Multispectral photoacoustic tomography (PAT) is capable of resolving tissue chromophore distribution based on spectral un-mixing. It works by identifying the absorption spectrum variations from a sequence of photoacoustic images acquired at multiple illumination wavelengths. Due to multispectral acquisition, this inevitably creates a large dataset. To cut down the data volume, sparse sampling methods that reduce the number of detectors have been developed. However, image reconstruction of sparse sampling PAT is challenging because of insufficient angular coverage. During spectral un-mixing, these inaccurate reconstructions will further amplify imaging artefacts and contaminate the results. To solve this problem, we present the interlaced sparse sampling (ISS) PAT, a method that involved: 1) a novel scanning-based image acquisition scheme in which the sparse detector array rotates while switching illumination wavelength, such that a dense angular coverage could be achieved by using only a few detectors; and 2) a corresponding image reconstruction algorithm that makes use of an anatomical prior image created from the ISS strategy to guide PAT image computation. Reconstructed from the signals acquired at different wavelengths (angles), this self-generated prior image fuses multispectral and angular information, and thus has rich anatomical features and minimum artefacts. A specialized iterative imaging model that effectively incorporates this anatomical prior image into the reconstruction process is also developed. Simulation, phantom, and in vivo animal experiments showed that even under 1/6 or 1/8 sparse sampling rate, our method achieved comparable image reconstruction and spectral un-mixing results to those obtained by conventional dense sampling method.
多光谱光声断层扫描(PAT)能够基于光谱解混来解析组织发色团分布。它通过识别在多个照明波长下采集的一系列光声图像中的吸收光谱变化来工作。由于多光谱采集,这不可避免地会产生大量数据集。为了减少数据量,已经开发了减少探测器数量的稀疏采样方法。然而,稀疏采样PAT的图像重建具有挑战性,因为角度覆盖不足。在光谱解混过程中,这些不准确的重建会进一步放大成像伪影并污染结果。为了解决这个问题,我们提出了交错稀疏采样(ISS)PAT,该方法包括:1)一种基于扫描的新型图像采集方案,其中稀疏探测器阵列在切换照明波长时旋转,从而仅使用少数探测器就能实现密集的角度覆盖;2)一种相应的图像重建算法,该算法利用从ISS策略创建的解剖学先验图像来指导PAT图像计算。从在不同波长(角度)采集的信号重建而来,这种自生成的先验图像融合了多光谱和角度信息,因此具有丰富的解剖学特征和最小的伪影。还开发了一种专门的迭代成像模型,该模型有效地将这种解剖学先验图像纳入重建过程。模拟、体模和体内动物实验表明,即使在1/6或1/8的稀疏采样率下,我们的方法也能获得与传统密集采样方法相当的图像重建和光谱解混结果。