Warping an atlas derived from serial histology to 5 high-resolution MRIs.
Stephanie TulloGabriel Allan DevenyiRaihaan M PatelMin Tae M ParkD Louis CollinsM Mallar ChakravartyPublished in: Scientific data (2018)
Previous work from our group demonstrated the use of multiple input atlases to a modified multi-atlas framework (MAGeT-Brain) to improve subject-based segmentation accuracy. Currently, segmentation of the striatum, globus pallidus and thalamus are generated from a single high-resolution and -contrast MRI atlas derived from annotated serial histological sections. Here, we warp this atlas to five high-resolution MRI templates to create five de novo atlases. The overall goal of this work is to use these newly warped atlases as input to MAGeT-Brain in an effort to consolidate and improve the workflow presented in previous manuscripts from our group, allowing for simultaneous multi-structure segmentation. The work presented details the methodology used for the creation of the atlases using a technique previously proposed, where atlas labels are modified to mimic the intensity and contrast profile of MRI to facilitate atlas-to-template nonlinear transformation estimation. Dice's Kappa metric was used to demonstrate high quality registration and segmentation accuracy of the atlases. The final atlases are available at https://github.com/CobraLab/atlases/tree/master/5-atlas-subcortical.
Keyphrases
- single cell
- high resolution
- contrast enhanced
- deep learning
- convolutional neural network
- deep brain stimulation
- white matter
- magnetic resonance
- diffusion weighted imaging
- mass spectrometry
- resting state
- multiple sclerosis
- functional connectivity
- immune response
- high speed
- inflammatory response
- brain injury
- blood brain barrier
- cerebral ischemia
- subarachnoid hemorrhage
- prefrontal cortex