计算机视觉
可视化
图像复原
相似性(几何)
深度学习
人工智能
模式识别(心理学)
荧光
人工神经网络
计算机科学
光学成像
迭代重建
荧光寿命成像显微镜
生物组织
生物医学工程
临床前影像学
光散射
图像(数学)
医学影像学
生物系统
深层神经网络
数据可视化
材料科学
离体
激发
光学相干层析成像
散射
图像处理
作者
Xiangcong Xu,Renlong Zhang,Chenggui Luo,Chi Zhang,Yanping Li,Danying Lin,Bin Yu,Liwei Liu,Xiaoyu Weng,Yiping Wang,Lingjie Kong,Jia Li,Junle Qu
标识
DOI:10.1073/pnas.2503576122
摘要
Imaging biological structures deep inside tissues is crucial but challenging due to common light scattering. This study proposes a multiattention network that directly maps degraded scattering two-photon excitation fluorescence (TPEF) images to high-quality scattering-free images, thereby computationally extending the imaging depth for TPEF without requiring complex optical additions. The model relies solely on simulated data rather than well-registered real data pairs, and is trained to descatter and restore hidden spatial information at greater depths. Quantitative evaluations on simulated fluorescent beads and vasculature show significant performance improvements in peak signal-to-noise ratio (23 to 29 dB) and structural similarity index (23×) compared to the raw data. We also apply the framework to various ex vivo and in vivo experiments, achieving clear visualization of lipid droplets up to a depth of 1,300 μm and of vascular structure and astrocytes up to 950 μm and 500 μm, respectively, in live mouse brains at lower excitation powers.
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