Electron Microscopy Reconstruction of Brain Structure Using Sparse Representations over Learned Dictionaries.

IEEE Trans. Med. Imaging(2013)

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摘要
A central problem in neuroscience is reconstructing neuronal circuits on the synapse level. Due to a wide range of scales in brain architecture such reconstruction requires imaging that is both high-resolution and high-throughput. Existing electron microscopy (EM) techniques possess required resolution in the lateral plane and either high-throughput or high depth resolution but not both. Here, we exploit recent advances in unsupervised learning and signal processing to obtain high depth-resolution EM images computationally without sacrificing throughput. First, we show that the brain tissue can be represented as a sparse linear combination of localized basis functions that are learned using high-resolution datasets. We then develop compressive sensing-inspired techniques that can reconstruct the brain tissue from very few (typically 5) tomographic views of each section. This enables tracing of neuronal processes and, hence, high throughput reconstruction of neural circuits on the level of individual synapses.
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关键词
signal processing,learning (artificial intelligence),lateral plane resolution,brain architecture,synapse level neuronal circuit reconstruction,dictionary learning,high resolution imaging,electron microscopy techniques,neuroscience,image reconstruction,compressed sensing,neuronal circuitry,high throughput imaging,super-resolution,learned dictionaries,brain,brain structure reconstruction,sparse linear combination,electron microscopy,high resolution datasets,high depth resolution electron microscopy images,unsupervised learning,compressive sensing inspired techniques,neural nets,localized basis functions,medical image processing,sparse representation,sparse representations,learning artificial intelligence
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