TY - JOUR
T1 - Framework for integrated MRI average of the spinal cord white and gray matter
T2 - The MNI-Poly-AMU template
AU - Fonov, V. S.
AU - Le Troter, A.
AU - Taso, M.
AU - De Leener, B.
AU - Lévêque, G.
AU - Benhamou, M.
AU - Sdika, M.
AU - Benali, H.
AU - Pradat, P. F.
AU - Collins, D. L.
AU - Callot, V.
AU - Cohen-Adad, J.
PY - 2014/9/7
Y1 - 2014/9/7
N2 - The field of spinal cord MRI is lacking a common template, as existing for the brain, which would allow extraction of multi-parametric data (diffusion-weighted, magnetization transfer, etc.) without user bias, thereby facilitating group analysis and multi-center studies. This paper describes a framework to produce an unbiased average anatomical template of the human spinal cord. The template was created by co-registering T2-weighted images (N=16 healthy volunteers) using a series of pre-processing steps followed by non-linear registration. A white and gray matter probabilistic template was then merged to the average anatomical template, yielding the MNI-Poly-AMU template, which currently covers vertebral levels C1 to T6. New subjects can be registered to the template using a dedicated image processing pipeline. Validation was conducted on 16 additional subjects by comparing an automatic template-based segmentation and manual segmentation, yielding a median Dice coefficient of 0.89. The registration pipeline is rapid (~15min), automatic after one C2/C3 landmark manual identification, and robust, thereby reducing subjective variability and bias associated with manual segmentation. The template can notably be used for measurements of spinal cord cross-sectional area, voxel-based morphometry, identification of anatomical features (e.g., vertebral levels, white and gray matter location) and unbiased extraction of multi-parametric data.
AB - The field of spinal cord MRI is lacking a common template, as existing for the brain, which would allow extraction of multi-parametric data (diffusion-weighted, magnetization transfer, etc.) without user bias, thereby facilitating group analysis and multi-center studies. This paper describes a framework to produce an unbiased average anatomical template of the human spinal cord. The template was created by co-registering T2-weighted images (N=16 healthy volunteers) using a series of pre-processing steps followed by non-linear registration. A white and gray matter probabilistic template was then merged to the average anatomical template, yielding the MNI-Poly-AMU template, which currently covers vertebral levels C1 to T6. New subjects can be registered to the template using a dedicated image processing pipeline. Validation was conducted on 16 additional subjects by comparing an automatic template-based segmentation and manual segmentation, yielding a median Dice coefficient of 0.89. The registration pipeline is rapid (~15min), automatic after one C2/C3 landmark manual identification, and robust, thereby reducing subjective variability and bias associated with manual segmentation. The template can notably be used for measurements of spinal cord cross-sectional area, voxel-based morphometry, identification of anatomical features (e.g., vertebral levels, white and gray matter location) and unbiased extraction of multi-parametric data.
KW - Group analysis
KW - MRI
KW - Registration
KW - Spinal cord
KW - Template
UR - http://www.scopus.com/inward/record.url?scp=84907462771&partnerID=8YFLogxK
U2 - 10.1016/j.neuroimage.2014.08.057
DO - 10.1016/j.neuroimage.2014.08.057
M3 - Article
C2 - 25204864
AN - SCOPUS:84907462771
SN - 1053-8119
VL - 102
SP - 817
EP - 827
JO - NeuroImage
JF - NeuroImage
IS - P2
ER -