| Literature DB >> 26089584 |
Marie Cherel1, Francois Budin1, Marcel Prastawa2, Guido Gerig3, Kevin Lee1, Claudia Buss4, Amanda Lyall5, Kirsten Zaldarriaga Consing1, Martin Styner6.
Abstract
Automatic tissue segmentation of the neonate brain using Magnetic Resonance Images (MRI) is extremely important to study brain development and perform early diagnostics but is challenging due to high variability and inhomogeneity in contrast throughout the image due to incomplete myelination of the white matter tracts. For these reasons, current methods often totally fail or give unsatisfying results. Furthermore, most of the subcortical midbrain structures are misclassified due to a lack of contrast in these regions. We have developed a novel method that creates a probabilistic subject-specific atlas based on a population atlas currently containing a number of manually segmented cases. The generated subject-specific atlas is sharp and adapted to the subject that is being processed. We then segment brain tissue classes using the newly created atlas with a single-atlas expectation maximization based method. Our proposed method leads to a much lower failure rate in our experiments. The overall segmentation results are considerably improved when compared to using a non-subject-specific, population average atlas. Additionally, we have incorporated diffusion information obtained from Diffusion Tensor Images (DTI) to improve the detection of white matter that is not visible at this early age in structural MRI (sMRI) due to a lack of myelination. Although this necessitates the acquisition of an additional sequence, the diffusion information improves the white matter segmentation throughout the brain, especially for the mid-brain structures such as the corpus callosum and the internal capsule.Entities:
Keywords: MRI; atlas; automatic; neonate; population; segmentation; subject-specific; tissue
Year: 2015 PMID: 26089584 PMCID: PMC4469197 DOI: 10.1117/12.2082209
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X