神经科学
体内
突触可塑性
临床前影像学
计算机科学
离体
人工智能
模态(人机交互)
神经可塑性
谷氨酸受体
生物
受体
生物化学
生物技术
作者
Yu Kang T. Xu,Austin R Graves,Gabrielle I Coste,Richard L. Huganir,Dwight E. Bergles,Adam S. Charles,Jeremias Sulam
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2023-05-11
卷期号:20 (6): 935-944
被引量:15
标识
DOI:10.1038/s41592-023-01871-6
摘要
Abstract Learning is thought to involve changes in glutamate receptors at synapses, submicron structures that mediate communication between neurons in the central nervous system. Due to their small size and high density, synapses are difficult to resolve in vivo, limiting our ability to directly relate receptor dynamics to animal behavior. Here we developed a combination of computational and biological methods to overcome these challenges. First, we trained a deep-learning image-restoration algorithm that combines the advantages of ex vivo super-resolution and in vivo imaging modalities to overcome limitations specific to each optical system. When applied to in vivo images from transgenic mice expressing fluorescently labeled glutamate receptors, this restoration algorithm super-resolved synapses, enabling the tracking of behavior-associated synaptic plasticity with high spatial resolution. This method demonstrates the capabilities of image enhancement to learn from ex vivo data and imaging techniques to improve in vivo imaging resolution.
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