Lian Teng, Lv Yichen, Guo Kangjun, Li Zilong, Li Jiahong, Wang Guijun, Lin Jiabin, Cao Yiyang, Liu Qiegen, Song Xianlin
Jiluan Academy, Nanchang University, Nanchang 330031, China.
School of Information Engineering, Nanchang University, Nanchang 330031, China.
Photoacoustics. 2025 Mar 8;43:100709. doi: 10.1016/j.pacs.2025.100709. eCollection 2025 Jun.
As a novel non-invasive hybrid biomedical imaging technology, photoacoustic tomography combines the advantages of high contrast of optical imaging and high penetration of acoustic imaging. However, the conventional standard reconstruction methods under sparse view may lead to low-quality image in photoacoustic tomography. To address this problem, an advanced sparse reconstruction method for photoacoustic tomography based on the mean-reverting diffusion model is proposed. By modeling the degradation process from a high-quality image under full-view scanning (512 projections) to a sparse image with stable Gaussian noise (i.e., mean state), a mean-reverting diffusion model is trained to learn prior information of the data distribution. Then the learned prior information is employed to generate a high-quality image from the sparse image by iteratively sampling the noisy state. Blood vessels simulation data and the animal experimental data were used to evaluate the performance of the proposed method. The results demonstrate that the proposed method achieves higher-quality sparse reconstruction compared with conventional reconstruction methods and U-Net method. In addition, the proposed method dramatically speeds up the sparse reconstruction and achieves better reconstruction results for extremely sparse images compared with the method based on conventional diffusion model. The proposed method achieves an improvement of 0.52 (∼289 %) in structural similarity and 10.01 dB (∼59 %) in peak signal-to-noise ratio for extremely sparse projections (8 projections), compared with the conventional delay-and-sum method. This method is expected to shorten the acquisition time and reduce the cost of photoacoustic tomography, thus further expanding the range of applications.
作为一种新型的非侵入式混合生物医学成像技术,光声断层扫描结合了光学成像高对比度和声学成像高穿透性的优点。然而,稀疏视图下的传统标准重建方法可能会导致光声断层扫描图像质量较低。为了解决这个问题,提出了一种基于均值回复扩散模型的光声断层扫描先进稀疏重建方法。通过对从全视图扫描(512个投影)下的高质量图像到具有稳定高斯噪声的稀疏图像(即均值状态)的退化过程进行建模,训练均值回复扩散模型以学习数据分布的先验信息。然后,通过对噪声状态进行迭代采样,利用学到的先验信息从稀疏图像生成高质量图像。使用血管模拟数据和动物实验数据来评估所提方法的性能。结果表明,与传统重建方法和U-Net方法相比,所提方法实现了更高质量的稀疏重建。此外,与基于传统扩散模型的方法相比,所提方法显著加快了稀疏重建速度,并且对于极其稀疏的图像取得了更好的重建结果。对于极其稀疏的投影(8个投影),与传统延迟求和方法相比,所提方法在结构相似性上提高了0.52(约289%),在峰值信噪比上提高了10.01dB(约59%)。该方法有望缩短光声断层扫描的采集时间并降低成本,从而进一步扩大应用范围。