Automated scalable segmentation of neurons from multispectral images
Sümbül, Uygar, Roossien, Douglas, Cai, Dawen, Chen, Fei, Barry, Nicholas, Cunningham, John P., Boyden, Edward, Paninski, Liam
–Neural Information Processing Systems
Reconstruction of neuroanatomy is a fundamental problem in neuroscience. Stochastic expression of colors in individual cells is a promising tool, although its use in the nervous system has been limited due to various sources of variability in expression. Moreover, the intermingled anatomy of neuronal trees is challenging for existing segmentation algorithms. Here, we propose a method to automate the segmentation of neurons in such (potentially pseudo-colored) images. The method uses spatio-color relations between the voxels, generates supervoxels to reduce the problem size by four orders of magnitude before the final segmentation, and is parallelizable over the supervoxels.
Neural Information Processing Systems
Feb-14-2020, 10:14:46 GMT