Tang Xu, Chen Jiangbo, Qu Zheng, Zhu Jingyi, Amjadian Mohammadreza, Yang Mingxuan, Wan Yingpeng, Wang Lidai
IEEE Trans Med Imaging. 2025 Jul;44(7):2868-2877. doi: 10.1109/TMI.2025.3552692.
Photoacoustic imaging (PAI) is a high-resolution biomedical imaging technology for the non-invasive detection of a broad range of chromophores at multiple scales and depths. However, limited by low chromophore concentration, weak signals in deep tissue, or various noise, the signal-to-noise ratio of photoacoustic images may be compromised in many biomedical applications. Although improvements in hardware and computational methods have been made to address this problem, they have not been readily available due to either high costs or an inability to generalize across different datasets. Here, we present a self-supervised deep learning method to increase the signal-to-noise ratio of photoacoustic images using noisy data only. Because this method does not require expensive ground truth data for training, it can be easily implemented across scanning microscopic and computed tomographic data acquired with various photoacoustic imaging systems. In vivo results show that our method makes the vascular details that were completely submerged in noise become clearly visible, increases the signal-to-noise ratio by up to 12-fold, doubles the imaging depth, and enables high-contrast imaging of deep tumors. We believe this method can be readily applied to many preclinical and clinical applications.
光声成像(PAI)是一种高分辨率生物医学成像技术,可在多个尺度和深度对多种发色团进行非侵入性检测。然而,受发色团浓度低、深部组织信号弱或各种噪声的限制,在许多生物医学应用中,光声图像的信噪比可能会受到影响。尽管在硬件和计算方法方面已经取得了改进以解决这一问题,但由于成本高昂或无法在不同数据集上通用,这些改进尚未得到广泛应用。在此,我们提出一种自监督深度学习方法,仅使用噪声数据来提高光声图像的信噪比。由于该方法在训练时不需要昂贵的真实数据,因此可以很容易地应用于通过各种光声成像系统获取的扫描显微镜和计算机断层扫描数据。体内实验结果表明,我们的方法能使完全淹没在噪声中的血管细节清晰可见,将信噪比提高多达12倍,使成像深度增加一倍,并能够对深部肿瘤进行高对比度成像。我们相信这种方法可以很容易地应用于许多临床前和临床应用。