Project 1 of this consortium, Brain Data Correlation, will focus on the experimental and statistical operations necessary to understand the relationships between different structural or functional brain data sets. We will develop and evaluate a variety of approaches for mapping anatomic and physiologic data into a common probabilistic reference space. The proposed work will extend the atlas concept by providing a more adaptable and useful way of measuring and comparing neuroanatomic and neurophysiologic data. Rather than depend on a single representative data set, we will develop a probabilistic model that represents a population. There are six specific aims. First, we will acquire the appropriate data sets for the development and testing of algorithms for correlation and deformation, including phantoms, in vivo and postmortem primate anatomy and human MRI-PET with skull-based fiducials. Second, we will develop corrective schemes to minimize errors and variance introduced by the acquisition process itself. Third, reliable and accurate algorithms (positioning, scaling, affine transformations, linear and non-linear transformations) for placing data volumes within reference/coordinate systems will be defined. Approaches designed for one modality may not be applicable for others. Fourth, we will develop transformations that include local deformations to increase the degree of correlation between data sets. We will derive the procedures and mathematics to warp data sets to map one upon another, to map to a common probabilistic reference system and to retain the direction and degree of deformation in a format suitable for interacting with the probabilistic space. Fifth, we will develop approaches that will include the retention of variability. The focus of these efforts is to make more comprehensive the representation of neuroscientific information about structure and function as opposed to the traditional approach of using a single subject representation from which to base an atlas/reference system. In this way we plan to retain information about inherent brain variation that will help us understand its normal distribution. Sixth, software design and validity will be driven by our goals to quantify and optimize the tools for selecting the most ideal approach to acquisition, acquisition correction, alignment/registration, deformation and retention of variability.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Program Projects (P01)
Project #
5P01MH052176-04
Application #
5214923
Study Section
Project Start
Project End
Budget Start
Budget End
Support Year
4
Fiscal Year
1996
Total Cost
Indirect Cost
Luders, Eileen; Toga, Arthur W; Thompson, Paul M (2014) Why size matters: differences in brain volume account for apparent sex differences in callosal anatomy: the sexual dimorphism of the corpus callosum. Neuroimage 84:820-4
Luders, Eileen; Phillips, Owen R; Clark, Kristi et al. (2012) Bridging the hemispheres in meditation: thicker callosal regions and enhanced fractional anisotropy (FA) in long-term practitioners. Neuroimage 61:181-7
Luders, Eileen; Clark, Kristi; Narr, Katherine L et al. (2011) Enhanced brain connectivity in long-term meditation practitioners. Neuroimage 57:1308-16
Yoon, Uicheul; Fahim, Cherine; Perusse, Daniel et al. (2010) Lateralized genetic and environmental influences on human brain morphology of 8-year-old twins. Neuroimage 53:1117-25
Mazziotta, John C; Woods, Roger; Iacoboni, Marco et al. (2009) The myth of the normal, average human brain--the ICBM experience: (1) subject screening and eligibility. Neuroimage 44:914-22
S, Karama; Y, Ad-Dab'bagh; Rj, Haier et al. (2009) Positive association between cognitive ability and cortical thickness in a representative US sample of healthy 6 to 18 year-olds. Intelligence 37:145-155
Vidal, Christine N; Nicolson, Rob; Boire, Jean-Yves et al. (2008) Three-dimensional mapping of the lateral ventricles in autism. Psychiatry Res 163:106-15
Chen, Zhang J; He, Yong; Rosa-Neto, Pedro et al. (2008) Revealing modular architecture of human brain structural networks by using cortical thickness from MRI. Cereb Cortex 18:2374-81
Lerch, Jason P; Pruessner, Jens; Zijdenbos, Alex P et al. (2008) Automated cortical thickness measurements from MRI can accurately separate Alzheimer's patients from normal elderly controls. Neurobiol Aging 29:23-30
Amunts, K; Schleicher, A; Zilles, K (2007) Cytoarchitecture of the cerebral cortex--more than localization. Neuroimage 37:1061-5;discussion 1066-8

Showing the most recent 10 out of 36 publications