2019
DOI: 10.1101/576595
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Scalable image processing techniques for quantitative analysis of volumetric biological images from light-sheet microscopy

Abstract: Here we describe an image processing pipeline for quantitative analysis of terabyte-scale volumetric images of SHIELD-processed mouse brains imaged with light-sheet microscopy. The pipeline utilizes open-source packages for destriping, stitching, and atlas alignment that are optimized for parallel processing. The destriping step removes stripe artifacts, corrects uneven illumination, and offers over 100x speed improvements compared to previously reported algorithms. The stitching module builds upon Terastitche… Show more

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Cited by 20 publications
(21 citation statements)
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References 22 publications
(34 reference statements)
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“…Imaging was done using 3.6x objective (custom Lifecanvas design; 0.2NA, 12mm working distance, 1.8um lateral resolution) and using three lasers (488um, 561um, and 642um wavelengths). Acquired data was post-processed and region-segmented as described in Swaney et al 60 Acquired 3D images were aligned to the Allen brain reference atlas (CCF V3) based on tissue autofluorescence from 488nm laser illumination. Delineation of cortical layers in MOp was refined using anti-NeuN and anti-Neurofilament-M signals.…”
Section: Methodsmentioning
confidence: 99%
“…Imaging was done using 3.6x objective (custom Lifecanvas design; 0.2NA, 12mm working distance, 1.8um lateral resolution) and using three lasers (488um, 561um, and 642um wavelengths). Acquired data was post-processed and region-segmented as described in Swaney et al 60 Acquired 3D images were aligned to the Allen brain reference atlas (CCF V3) based on tissue autofluorescence from 488nm laser illumination. Delineation of cortical layers in MOp was refined using anti-NeuN and anti-Neurofilament-M signals.…”
Section: Methodsmentioning
confidence: 99%
“…To demonstrate the value of holistic labeling with eFLASH, we established an image analysis pipeline for atlas alignment, brain region segmentation, and cell detection for generating a quantitative map of various proteins. Volumetric images were automatically aligned to an atlas 4 by linear and non-linear transformations based on Elastix 17 then manually refined 18 . Each aligned 3D image volume was indexed to approximately 580 brain regions with 7 hierarchies.…”
Section: Universal Applicability Of Eflashmentioning
confidence: 99%
“…All light-sheet imaging was done with either of the following objective lenses: 3.6x objective (custom Lifecanvas design, 0.2NA 12mm WD lateral resolution 1.8um in XY), 10x objective (Olympus XLPLN10XSVMP, 0.6NA, 8mm WD, lateral resolution 0.66um in XY). Acquired data was post-processed with algorithms described in Swaney et al 18 . A complete table of imaging modalities and conditions for every data included in this paper can be found in Supplementary table 2.…”
Section: Dye Conjugation Of Secondary Antibodiesmentioning
confidence: 99%
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