TY - JOUR
T1 - The role of image registration in brain mapping
AU - Toga, A. W.
AU - Thompson, P. M.
N1 - Funding Information:
The authors are grateful to the faculty and staff of the Laboratory of Neuro Imaging who contributed directly or indirectly to the work described in this chapter. The scientific investigations that form the basis for this work were supported by research grants from the National Library of Medicine (LM/MH05639), the National Science Foundation (BIR 93-22434), the National Center for Research Resources (RR05956 and P41 RR13642), the National Institute of Neurological Disorders and Stroke and the National Institute of Mental Health NINDS/NIMH (NS38753), and by a Human Brain Project grant known as the International Consortium for Brain Mapping, which is funded jointly by NIMH and NIDA (P20 MH/DA52176).
PY - 2001
Y1 - 2001
N2 - Image registration is a key step in a great variety of biomedical imaging applications. It provides the ability to geometrically align one dataset with another, and is a prerequisite for all imaging applications that compare datasets across subjects, imaging modalities, or across time. Registration algorithms also enable the pooling and comparison of experimental findings across laboratories, the construction of population-based brain atlases, and the creation of systems to detect group patterns in structural and functional imaging data. We review the major types of registration approaches used in brain imaging today. We focus on their conceptual basis, the underlying mathematics, and their strengths and weaknesses in different contexts. We describe the major goals of registration, including data fusion, quantification of change, automated image segmentation and labeling, shape measurement, and pathology detection. We indicate that registration algorithms have great potential when used in conjunction with a digital brain atlas, which acts as a reference system in which brain images can be compared for statistical analysis. The resulting armory of registration approaches is fundamental to medical image analysis, and in a brain mapping context provides a means to elucidate clinical, demographic, or functional trends in the anatomy or physiology of the brain.
AB - Image registration is a key step in a great variety of biomedical imaging applications. It provides the ability to geometrically align one dataset with another, and is a prerequisite for all imaging applications that compare datasets across subjects, imaging modalities, or across time. Registration algorithms also enable the pooling and comparison of experimental findings across laboratories, the construction of population-based brain atlases, and the creation of systems to detect group patterns in structural and functional imaging data. We review the major types of registration approaches used in brain imaging today. We focus on their conceptual basis, the underlying mathematics, and their strengths and weaknesses in different contexts. We describe the major goals of registration, including data fusion, quantification of change, automated image segmentation and labeling, shape measurement, and pathology detection. We indicate that registration algorithms have great potential when used in conjunction with a digital brain atlas, which acts as a reference system in which brain images can be compared for statistical analysis. The resulting armory of registration approaches is fundamental to medical image analysis, and in a brain mapping context provides a means to elucidate clinical, demographic, or functional trends in the anatomy or physiology of the brain.
KW - Brain atlas
KW - Brain mapping
KW - Image registration
UR - http://www.scopus.com/inward/record.url?scp=0035149270&partnerID=8YFLogxK
U2 - 10.1016/s0262-8856(00)00055-x
DO - 10.1016/s0262-8856(00)00055-x
M3 - Article
AN - SCOPUS:0035149270
SN - 0262-8856
VL - 19
SP - 3
EP - 24
JO - Image and Vision Computing
JF - Image and Vision Computing
IS - 1-2
ER -