| Literature DB >> 23986653 |
Can Ceritoglu1, Xiaoying Tang, Margaret Chow, Darian Hadjiabadi, Damish Shah, Timothy Brown, Muhammad H Burhanullah, Huong Trinh, John T Hsu, Katarina A Ament, Deana Crocetti, Susumu Mori, Stewart H Mostofsky, Steven Yantis, Michael I Miller, J Tilak Ratnanather.
Abstract
One goal of computational anatomy (CA) is to develop tools to accurately segment brain structures in healthy and diseased subjects. In this paper, we examine the performance and complexity of such segmentation in the framework of the large deformation diffeomorphic metric mapping (LDDMM) registration method with reference to atlases and parameters. First we report the application of a multi-atlas segmentation approach to define basal ganglia structures in healthy and diseased kids' brains. The segmentation accuracy of the multi-atlas approach is compared with the single atlas LDDMM implementation and two state-of-the-art segmentation algorithms-Freesurfer and FSL-by computing the overlap errors between automatic and manual segmentations of the six basal ganglia nuclei in healthy subjects as well as subjects with diseases including ADHD and Autism. The high accuracy of multi-atlas segmentation is obtained at the cost of increasing the computational complexity because of the calculations necessary between the atlases and a subject. Second, we examine the effect of parameters on total LDDMM computation time and segmentation accuracy for basal ganglia structures. Single atlas LDDMM method is used to automatically segment the structures in a population of 16 subjects using different sets of parameters. The results show that a cascade approach and using fewer time steps can reduce computational complexity as much as five times while maintaining reliable segmentations.Entities:
Keywords: LDDMM; brain mapping; computational anatomy; subcortical segmentation
Year: 2013 PMID: 23986653 PMCID: PMC3753595 DOI: 10.3389/fnins.2013.00151
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Figure 1Example axial slices of atlas and subject T1 weighted MR image and the boundaries of their ROI labels at each registration step. (A) Original atlas image and atlas ROIs; (B) atlas image and ROIs after linear AIR transformation; (C) atlas image and ROIs after AIR and LDDMM transformations; (D) subject image and subject ROIs.
Figure 2Mean and standard deviation of mean Kappa statistics (top) and mean .
Figure 3Mean and standard deviation of mean . Mean errors were calculated using 7 pairs of caudate, putamen, pallidus, amygdala, hippocampus, thalamus, and ventricle for each subject.
For each ROI and for each α in LDDMM, the .
| Left amygdala | ||||
| Left caudate | T1 > T10 | T1 > T10 | ||
| Left hippocampus | ||||
| Left globus pallidus | ||||
| Left putamen | T1 > T10 | |||
| Left thalamus | T1 < T10 | T1 > T10 | T1 > T10 | |
| Left ventricle | T1 > T10 | T1 > T10 | T1 > T10 | T1 > T10 |
| Right amygdala | ||||
| Right caudate | T1 > T10 | T1 > T10 | ||
| Right hippocampus | ||||
| Right globus pallidus | T1 > T10 | |||
| Right putamen | T1 > T10 | |||
| Right thalamus | ||||
| Right ventricle | T1 > T10 | T1 > T10 | T1 > T10 | T1 > T10 |
| Number of ROIs with significant differences | 3 | 4 | 8 | 3 |
Statistically significant (p < 0.01) error differences between large deformation map (T = 10) and small deformation map (T = 1) are indicated by either “T1 > T10” or “T1 < T10.”
For each ROI and for each α in LDDMM, the volume error results for .
| Left amygdala | ||||
| Left caudate | T1 < T10 | T1 < T10 | ||
| Left hippocampus | T1 < T10 | T1 < T10 | ||
| Left globus pallidus | ||||
| Left putamen | ||||
| Left thalamus | T1 < T10 | T1 < T10 | T1 > T10 | |
| Left ventricle | T1 > T10 | T1 > T10 | T1 > T10 | T1 > T10 |
| Right amygdala | ||||
| Right caudate | T1 < T10 | T1 < T10 | ||
| Right hippocampus | T1 < T10 | T1 < T10 | T1 < T10 | |
| Right globus pallidus | T1 < T10 | T1 < T10 | ||
| Right putamen | ||||
| Right thalamus | T1 < T10 | |||
| Right ventricle | T1 > T10 | T1 > T10 | T1 > T10 | T1 > T10 |
| Number of ROIs with significant differences | 6 | 8 | 5 | 4 |
Statistically significant (p < 0.01) error differences between large deformation map (T = 10) and small deformation map (T = 1) are indicated by either “T1 > T10” or “T1 < T10.”