Shen Binglin, Liu Shaowen, Li Yanping, Pan Ying, Lu Yuan, Hu Rui, Qu Junle, Liu Liwei
Key Laboratory of Optoelectronic Devices and Systems of Guangdong Province and Ministry of Education, College of Physics and Optoelectronic Engineering, Shenzhen University, 518060, Shenzhen, China.
Shenzhen Meitu Innovation Technology LTD, 518060, Shenzhen, China.
Light Sci Appl. 2022 Mar 29;11(1):76. doi: 10.1038/s41377-022-00768-x.
Laser scanning microscopy has inherent tradeoffs between imaging speed, field of view (FOV), and spatial resolution due to the limitations of sophisticated mechanical and optical setups, and deep learning networks have emerged to overcome these limitations without changing the system. Here, we demonstrate deep learning autofluorescence-harmonic microscopy (DLAM) based on self-alignment attention-guided residual-in-residual dense generative adversarial networks to close the gap between speed, FOV, and quality. Using the framework, we demonstrate label-free large-field multimodal imaging of clinicopathological tissues with enhanced spatial resolution and running time advantages. Statistical quality assessments show that the attention-guided residual dense connections minimize the persistent noise, distortions, and scanning fringes that degrade the autofluorescence-harmonic images and avoid reconstruction artifacts in the output images. With the advantages of high contrast, high fidelity, and high speed in image reconstruction, DLAM can act as a powerful tool for the noninvasive evaluation of diseases, neural activity, and embryogenesis.
由于复杂的机械和光学装置的限制,激光扫描显微镜在成像速度、视野(FOV)和空间分辨率之间存在固有的权衡,而深度学习网络已出现以在不改变系统的情况下克服这些限制。在此,我们展示了基于自对准注意力引导的残差内残差密集生成对抗网络的深度学习自发荧光谐波显微镜(DLAM),以缩小速度、视野和质量之间的差距。使用该框架,我们展示了具有增强空间分辨率和运行时间优势的临床病理组织的无标记大视野多模态成像。统计质量评估表明,注意力引导的残差密集连接可将降低自发荧光谐波图像质量的持续噪声、失真和扫描条纹降至最低,并避免输出图像中的重建伪影。凭借在图像重建中具有高对比度、高保真度和高速度的优势,DLAM可成为用于疾病、神经活动和胚胎发育的无创评估的强大工具。