| Literature DB >> 28899745 |
Yaël Balbastre1, Denis Rivière2, Nicolas Souedet3, Clara Fischer2, Anne-Sophie Hérard3, Susannah Williams3, Michel E Vandenberghe3, Julien Flament4, Romina Aron-Badin3, Philippe Hantraye5, Jean-François Mangin2, Thierry Delzescaux6.
Abstract
Because they bridge the genetic gap between rodents and humans, non-human primates (NHPs) play a major role in therapy development and evaluation for neurological disorders. However, translational research success from NHPs to patients requires an accurate phenotyping of the models. In patients, magnetic resonance imaging (MRI) combined with automated segmentation methods has offered the unique opportunity to assess in vivo brain morphological changes. Meanwhile, specific challenges caused by brain size and high field contrasts make existing algorithms hard to use routinely in NHPs. To tackle this issue, we propose a complete pipeline, Primatologist, for multi-region segmentation. Tissue segmentation is based on a modular statistical model that includes random field regularization, bias correction and denoising and is optimized by expectation-maximization. To deal with the broad variety of structures with different relaxing times at 7 T, images are segmented into 17 anatomical classes, including subcortical regions. Pre-processing steps insure a good initialization of the parameters and thus the robustness of the pipeline. It is validated on 10 T2-weighted MRIs of healthy macaque brains. Classification scores are compared with those of a non-linear atlas registration, and the impact of each module on classification scores is thoroughly evaluated.Entities:
Keywords: Brain; Expectation-maximization; MRI; Macaque; Primatologist; Segmentation
Mesh:
Year: 2017 PMID: 28899745 DOI: 10.1016/j.neuroimage.2017.09.007
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556