Fast, Sequence Adaptive Parcellation of Brain MR Using Parametric Models

In this paper we propose a method for whole brain parcellation using the type of generative parametric models typically used in tissue classification. Compared to the non-parametric, multi-atlas segmentation techniques that have become popular in recent years, our method obtains state-of-the-art segmentation performance in both cortical and subcortical structures, while retaining all the benefits of generative parametric models, including high computational speed, automatic adaptiveness to changes in image contrast when different scanner platforms and pulse sequences are used, and the ability to handle multi-contrast (vector-valued intensities) MR data. We have validated our method by comparing its segmentations to manual delineations both within and across scanner platforms and pulse sequences, and show preliminary results on multi-contrast test-retest scans, demonstrating the feasibility of the approach.

[1]  Koen Van Leemput,et al.  Encoding Probabilistic Brain Atlases Using Bayesian Inference , 2009, IEEE Transactions on Medical Imaging.

[2]  Pierre Hellier,et al.  Level Set Methods in an EM Framework for Shape Classification and Estimation , 2004, International Conference on Medical Image Computing and Computer-Assisted Intervention.

[3]  Daniel Rueckert,et al.  An evaluation of four automatic methods of segmenting the subcortical structures in the brain , 2009, NeuroImage.

[4]  Jyrki Lötjönen,et al.  Multi-class brain segmentation using atlas propagation and EM-based refinement , 2012, 2012 9th IEEE International Symposium on Biomedical Imaging (ISBI).

[5]  Xiao Han,et al.  Atlas Renormalization for Improved Brain MR Image Segmentation Across Scanner Platforms , 2007, IEEE Transactions on Medical Imaging.

[6]  Anders M. Dale,et al.  Cortical Surface-Based Analysis I. Segmentation and Surface Reconstruction , 1999, NeuroImage.

[7]  Mert R. Sabuncu,et al.  A Generative Model for Image Segmentation Based on Label Fusion , 2010, IEEE Transactions on Medical Imaging.

[8]  Daniel Rueckert,et al.  Automatic anatomical brain MRI segmentation combining label propagation and decision fusion , 2006, NeuroImage.

[9]  Pierre-Louis Bazin,et al.  Homeomorphic brain image segmentation with topological and statistical atlases , 2008, Medical Image Anal..

[10]  Karl J. Friston,et al.  Unified segmentation , 2005, NeuroImage.

[11]  Anders M. Dale,et al.  Sequence-independent segmentation of magnetic resonance images , 2004, NeuroImage.

[12]  Koenraad Van Leemput,et al.  Automated model-based bias field correction of MR images of the brain , 1999, IEEE Transactions on Medical Imaging.

[13]  Paul Suetens,et al.  Non-rigid Atlas-to-Image Registration by Minimization of Class-Conditional Image Entropy , 2004, MICCAI.