Cheng Shengfu, Zhou Yingying, Chen Jiangbo, Li Huanhao, Wang Lidai, Lai Puxiang
Department of Biomedical Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
The Hong Kong Polytechnic University Shenzhen Research Institute, Shenzhen, China.
Photoacoustics. 2021 Nov 3;25:100314. doi: 10.1016/j.pacs.2021.100314. eCollection 2022 Mar.
Optical-resolution photoacoustic microscopy (OR-PAM) enjoys superior spatial resolution and has received intense attention in recent years. The application, however, has been limited to shallow depths because of strong scattering of light in biological tissues. In this work, we propose to achieve deep-penetrating OR-PAM performance by using deep learning enabled image transformation on blurry living mouse vascular images that were acquired with an acoustic-resolution photoacoustic microscopy (AR-PAM) setup. A generative adversarial network (GAN) was trained in this study and improved the imaging lateral resolution of AR-PAM from 54.0 µm to 5.1 µm, comparable to that of a typical OR-PAM (4.7 µm). The feasibility of the network was evaluated with living mouse ear data, producing superior microvasculature images that outperforms blind deconvolution. The generalization of the network was validated with in vivo mouse brain data. Moreover, it was shown experimentally that the deep-learning method can retain high resolution at tissue depths beyond one optical transport mean free path. Whilst it can be further improved, the proposed method provides new horizons to expand the scope of OR-PAM towards deep-tissue imaging and wide applications in biomedicine.
光学分辨率光声显微镜(OR-PAM)具有卓越的空间分辨率,近年来受到了广泛关注。然而,由于光在生物组织中的强烈散射,其应用一直局限于浅深度。在这项工作中,我们建议通过对使用声学分辨率光声显微镜(AR-PAM)装置采集的模糊活体小鼠血管图像进行深度学习驱动的图像变换,来实现深度穿透的OR-PAM性能。本研究中训练了一个生成对抗网络(GAN),将AR-PAM的成像横向分辨率从54.0微米提高到了5.1微米,与典型的OR-PAM(4.7微米)相当。用活体小鼠耳部数据评估了该网络的可行性,生成了优于盲反卷积的优质微血管图像。用体内小鼠脑数据验证了该网络的通用性。此外,实验表明,深度学习方法在超过一个光学传输平均自由程的组织深度处仍能保持高分辨率。虽然该方法还有进一步改进的空间,但它为将OR-PAM的范围扩展到深部组织成像以及在生物医学中的广泛应用提供了新的视野。