Zhang Fan, Zhang Jiadong, Shen Yuting, Gao Zijian, Yang Changchun, Liang Mingtao, Gao Feng, Liu Li, Zhao Hulin, Gao Fei
Hybrid Imaging System Laboratory, School of Information Science and Technology, ShanghaiTech University, Shanghai 201210, China.
Department of Electronic Engineering, The Chinese University of Hong Kong, Hong Kong, China.
Photoacoustics. 2023 May 31;31:100517. doi: 10.1016/j.pacs.2023.100517. eCollection 2023 Jun.
Photoacoustic tomography (PAT) is a newly developed medical imaging modality, which combines the advantages of pure optical imaging and ultrasound imaging, owning both high optical contrast and deep penetration depth. Very recently, PAT is studied in human brain imaging. Nevertheless, while ultrasound waves are passing through the human skull tissues, the strong acoustic attenuation and aberration will happen, which causes photoacoustic signals' distortion. In this work, we use 180 T1 weighted magnetic resonance imaging (MRI) human brain volumes along with the corresponding magnetic resonance angiography (MRA) brain volumes, and segment them to generate the 2D human brain numerical phantoms for PAT. The numerical phantoms contain six kinds of tissues, which are scalp, skull, white matter, gray matter, blood vessel and cerebrospinal fluid. For every numerical phantom, Monte-Carlo based optical simulation is deployed to obtain the photoacoustic initial pressure based on optical properties of human brain. Then, two different k-wave models are used for the skull-involved acoustic simulation, which are fluid media model and viscoelastic media model. The former one only considers longitudinal wave propagation, and the latter model takes shear wave into consideration. Then, the PA sinograms with skull-induced aberration is taken as the input of U-net, and the skull-stripped ones are regarded as the supervision of U-net to train the network. Experimental result shows that the skull's acoustic aberration can be effectively alleviated after U-net correction, achieving conspicuous improvement in quality of PAT human brain images reconstructed from the corrected PA signals, which can clearly show the cerebral artery distribution inside the human skull.
光声断层扫描(PAT)是一种新开发的医学成像模态,它结合了纯光学成像和超声成像的优点,具有高光学对比度和深穿透深度。最近,PAT被用于人脑成像研究。然而,当超声波穿过人类颅骨组织时,会发生强烈的声学衰减和像差,这会导致光声信号失真。在这项工作中,我们使用180个T1加权磁共振成像(MRI)人脑体积以及相应的磁共振血管造影(MRA)脑体积,并对它们进行分割以生成用于PAT的二维人脑数值模型。这些数值模型包含六种组织,即头皮、颅骨、白质、灰质、血管和脑脊液。对于每个数值模型,基于蒙特卡洛的光学模拟被用于根据人脑的光学特性获得光声初始压力。然后,两种不同的k波模型被用于涉及颅骨的声学模拟,即流体介质模型和粘弹性介质模型。前者仅考虑纵波传播,而后者模型考虑了剪切波。然后,将具有颅骨引起像差的光声正弦图作为U-net的输入,而去除颅骨的光声正弦图被视为U-net的监督来训练网络。实验结果表明,经过U-net校正后,颅骨的声学像差可以得到有效缓解,从校正后的光声信号重建的PAT人脑图像质量有显著提高,能够清晰显示人类颅骨内的脑动脉分布。