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arxiv: 1903.07027 · v1 · pith:PQI6QRNAnew · submitted 2019-03-17 · 💻 cs.CV · cs.LG· q-bio.NC

Reconstructing neuronal anatomy from whole-brain images

classification 💻 cs.CV cs.LGq-bio.NC
keywords brainmicroscopywhole-brainimagesimaginglightmultipleneuronal
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Reconstructing multiple molecularly defined neurons from individual brains and across multiple brain regions can reveal organizational principles of the nervous system. However, high resolution imaging of the whole brain is a technically challenging and slow process. Recently, oblique light sheet microscopy has emerged as a rapid imaging method that can provide whole brain fluorescence microscopy at a voxel size of 0.4 by 0.4 by 2.5 cubic microns. On the other hand, complex image artifacts due to whole-brain coverage produce apparent discontinuities in neuronal arbors. Here, we present connectivity-preserving methods and data augmentation strategies for supervised learning of neuroanatomy from light microscopy using neural networks. We quantify the merit of our approach by implementing an end-to-end automated tracing pipeline. Lastly, we demonstrate a scalable, distributed implementation that can reconstruct the large datasets that sub-micron whole-brain images produce.

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