? The overall goal of this project is to develop a powerful computational framework to map disease and genetic effects on the brain. Blending neuroimaging and genetics techniques, we will go beyond the mapping and visualization of disease-specific patterns in the brain to develop a framework to map how genes affect brain structure in health and disease. In pilot projects, we will develop the mathematics and software necessary to link large-scale brain imaging and genetic studies of the brain. These algorithms will detect, map, and help understand patterns of abnormality in subjects at genetic risk for disease. They will also empower the identification and investigation of quantitative trait loci (QTLs) that confer vulnerability for disease. First, we will encode how brain structure varies in large populations. Novel algorithms will chart how the brain changes dynamically with age, gender, in childhood, and in health and disease. Specialized methods will track average, group-specific anatomical patterns in the cerebral cortex. These patterns will be stored in a computational/statistical brain atlas, and linked with cognitive, clinical and therapeutic parameters. To detect and map how genes affect brain development and disease, we will test new tools in genetically informed designs. These include large neuroimaging data components from (1) the Finnish twin registry, (2) normally developing young twins (ages 6-20) scanned longitudinally, (3) identical and fraternal twins discordant for schizophrenia, and (4) subjects with known risk genotypes (including a schizophrenia risk allele on chromosome 1q). Following up on our recent findings, our algorithms will be tested for uncovering deficits and gene effects in schizophrenia, but they will be designed to be applicable to any brain disease (Alzheimer's, autism, bipolar disorder, drug addiction alcoholism, and other neurodevelopmental/psychiatric disorders). We will mathematically combine algorithms from computational anatomy, partial differential equations, pattern theory, random field theory, and harmonic maps, to detect gene effects on the brain with maximal power. We will also map the heritability of brain structure. Novel tools for automated segmentation and labeling of brain structures will also accelerate large scale studies with these techniques. Validated on unique datasets, these tools will greatly empower biomedical studies that bridge imaging and genetics. They will help investigate the genetic transmission, triggers, and dynamics of disease in whole human populations. ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Exploratory/Developmental Grants (R21)
Project #
5R21EB001561-02
Application #
6739693
Study Section
Special Emphasis Panel (ZRR1-BT-1 (01))
Program Officer
Peng, Grace
Project Start
2003-05-01
Project End
2006-02-28
Budget Start
2004-03-01
Budget End
2005-02-28
Support Year
2
Fiscal Year
2004
Total Cost
$152,500
Indirect Cost
Name
University of California Los Angeles
Department
Neurology
Type
Schools of Medicine
DUNS #
092530369
City
Los Angeles
State
CA
Country
United States
Zip Code
90095
Nugent, Katie L; Chiappelli, Joshua; Sampath, Hemalatha et al. (2015) Cortisol Reactivity to Stress and Its Association With White Matter Integrity in Adults With Schizophrenia. Psychosom Med 77:733-42
Hibar, Derrek P; Stein, Jason L; Jahanshad, Neda et al. (2015) Genome-wide interaction analysis reveals replicated epistatic effects on brain structure. Neurobiol Aging 36 Suppl 1:S151-8
Foland-Ross, Lara C; Thompson, Paul M; Sugar, Catherine A et al. (2013) Three-dimensional mapping of hippocampal and amygdalar structure in euthymic adults with bipolar disorder not treated with lithium. Psychiatry Res 211:195-201
Kochunov, Peter; Du, Xiaoming; Moran, Lauren V et al. (2013) Acute nicotine administration effects on fractional anisotropy of cerebral white matter and associated attention performance. Front Pharmacol 4:117
Hua, Xue; Hibar, Derrek P; Ching, Christopher R K et al. (2013) Unbiased tensor-based morphometry: improved robustness and sample size estimates for Alzheimer's disease clinical trials. Neuroimage 66:648-61
Kohannim, Omid; Hibar, Derrek P; Jahanshad, Neda et al. (2012) PREDICTING TEMPORAL LOBE VOLUME ON MRI FROM GENOTYPES USING L(1)-L(2) REGULARIZED REGRESSION. Proc IEEE Int Symp Biomed Imaging :1160-1163
Nir, Talia; Jahanshad, Neda; Jack, Clifford R et al. (2012) SMALL WORLD NETWORK MEASURES PREDICT WHITE MATTER DEGENERATION IN PATIENTS WITH EARLY-STAGE MILD COGNITIVE IMPAIRMENT. Proc IEEE Int Symp Biomed Imaging :1405-1408
Foland-Ross, Lara C; Bookheimer, Susan Y; Lieberman, Matthew D et al. (2012) Normal amygdala activation but deficient ventrolateral prefrontal activation in adults with bipolar disorder during euthymia. Neuroimage 59:738-44
Chiang, Ming-Chang; Barysheva, Marina; McMahon, Katie L et al. (2012) Gene network effects on brain microstructure and intellectual performance identified in 472 twins. J Neurosci 32:8732-45
Yuan, Lei; Wang, Yalin; Thompson, Paul M et al. (2012) Multi-source feature learning for joint analysis of incomplete multiple heterogeneous neuroimaging data. Neuroimage 61:622-32

Showing the most recent 10 out of 54 publications