Department of Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD, 21218, USA.
Department of Biomedical Engineering, Johns Hopkins University School of Medicine, Baltimore, MD, 21205, USA.
Nat Commun. 2022 Mar 22;13(1):1534. doi: 10.1038/s41467-022-29236-1.
Scanning two-photon (2P) fiberscopes (also termed endomicroscopes) have the potential to transform our understanding of how discrete neural activity patterns result in distinct behaviors, as they are capable of high resolution, sub cellular imaging yet small and light enough to allow free movement of mice. However, their acquisition speed is currently suboptimal, due to opto-mechanical size and weight constraints. Here we demonstrate significant advances in 2P fiberscopy that allow high resolution imaging at high speeds (26 fps) in freely-behaving mice. A high-speed scanner and a down-sampling scheme are developed to boost imaging speed, and a deep learning (DL) algorithm is introduced to recover image quality. For the DL algorithm, a two-stage learning transfer strategy is established to generate proper training datasets for enhancing the quality of in vivo images. Implementation enables video-rate imaging at ~26 fps, representing 10-fold improvement in imaging speed over the previous 2P fiberscopy technology while maintaining a high signal-to-noise ratio and imaging resolution. This DL-assisted 2P fiberscope is capable of imaging the arousal-induced activity changes in populations of layer2/3 pyramidal neurons in the primary motor cortex of freely-behaving mice, providing opportunities to define the neural basis of behavior.
双光子(2P)光纤显微镜(也称为内窥显微镜)具有改变我们对离散神经活动模式如何产生不同行为的理解的潜力,因为它们能够进行高分辨率、亚细胞成像,同时又足够小、轻,允许小鼠自由移动。然而,由于光电机械尺寸和重量的限制,它们的采集速度目前还不够理想。在这里,我们展示了 2P 光纤显微镜的重大进展,使得在自由活动的小鼠中以高速(26 fps)进行高分辨率成像成为可能。开发了高速扫描仪和下采样方案来提高成像速度,并引入了深度学习(DL)算法来恢复图像质量。对于 DL 算法,建立了两阶段学习迁移策略,为增强体内图像质量生成适当的训练数据集。该算法实现了约 26 fps 的视频速率成像,与之前的 2P 光纤显微镜技术相比,成像速度提高了 10 倍,同时保持了高信噪比和成像分辨率。这种基于深度学习的 2P 光纤显微镜能够对自由活动的小鼠初级运动皮层中第 2/3 层锥体神经元群体的觉醒诱导活动变化进行成像,为定义行为的神经基础提供了机会。