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Increasing depth resolution of electron microscopy of neural circuits using sparse tomographic reconstruction

机译:利用稀疏层析成像重建神经回路电子显微镜的深度分辨率

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Future progress in neuroscience hinges on reconstruction of neuronal circuits to the level of individual synapses. Because of the specifics of neuronal architecture, imaging must be done with very high resolution and throughput. While Electron Microscopy (EM) achieves the required resolution in the transverse directions, its depth resolution is a severe limitation. Computed tomography (CT) may be used in conjunction with electron microscopy to improve the depth resolution, but this severely limits the throughput since several tens or hundreds of EM images need to be acquired. Here, we exploit recent advances in signal processing to obtain high depth resolution EM images computationally. First, we show that the brain tissue can be represented as sparse linear combination of local basis functions that are thin membrane-like structures oriented in various directions. We then develop reconstruction techniques inspired by compressive sensing that can reconstruct the brain tissue from very few (typically 5) tomographic views of each section. This enables tracing of neuronal connections across layers and, hence, high throughput reconstruction of neural circuits to the level of individual synapses.
机译:神经科学的未来进展取决于将神经元回路重建到单个突触的水平。由于神经元结构的特殊性,必须以非常高的分辨率和通量进行成像。尽管电子显微镜(EM)在横向上达到了所需的分辨率,但其深度分辨率却是一个严重的限制。可以将计算机断层扫描(CT)与电子显微镜结合使用以提高深度分辨率,但是由于需要获取数十个或数百个EM图像,因此这严重限制了吞吐量。在这里,我们利用信号处理的最新进展来通过计算获得高深度分辨率的EM图像。首先,我们表明脑组织可以表示为局部基函数的稀疏线性组合,这些局部基函数是朝向各个方向的薄膜状结构。然后,我们开发受压缩感测启发的重建技术,该技术可从每个部分的极少(通常为5个)层析成像视图中重建大脑组织。这使得能够跟踪跨层的神经元连接,因此,可以将神经回路的高通量重建提高到单个突触的水平。

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