TL;DR
This paper introduces Mask-LDDMM, a novel deformable registration method that automatically aligns transparent, sparsely labeled CLARITY brain images to an atlas, improving accuracy and automation over traditional histogram-based methods.
Contribution
The paper presents Mask-LDDMM, a new registration technique that automatically finds brain boundaries and learns optimal deformations, outperforming standard methods for CLARITY brain registration.
Findings
Mask-LDDMM improves registration accuracy for CLARITY brains.
The method outperforms standard histogram-based registration approaches.
Open source implementation is available for community use.
Abstract
The CLARITY method renders brains optically transparent to enable high-resolution imaging in the structurally intact brain. Anatomically annotating CLARITY brains is necessary for discovering which regions contain signals of interest. Manually annotating whole-brain, terabyte CLARITY images is difficult, time-consuming, subjective, and error-prone. Automatically registering CLARITY images to a pre-annotated brain atlas offers a solution, but is difficult for several reasons. Removal of the brain from the skull and subsequent storage and processing cause variable non-rigid deformations, thus compounding inter-subject anatomical variability. Additionally, the signal in CLARITY images arises from various biochemical contrast agents which only sparsely label brain structures. This sparse labeling challenges the most commonly used registration algorithms that need to match image histogram…
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