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ISBI
2011
IEEE

Principal components regression: Multivariate, gene-based tests in imaging genomics

12 years 8 months ago
Principal components regression: Multivariate, gene-based tests in imaging genomics
In imaging genomics, there have been rapid advances in genome-wide, image-wide searches for genes that influence brain structure. Most efforts focus on univariate tests that treat each genetic variation independently, ignoring the joint effects of multiple variants. Instead, we present a genebased method to detect the joint effect of multiple single nucleotide polymorphisms (SNPs) in 18,044 genes across 31,662 voxels of the whole brain in a tensor-based morphometry analysis of baseline MRI scans from 731 subjects from the Alzheimer’s Disease Neuroimaging Initiative (ADNI). Our gene-based multivariate statistics use principal components regression to test the combined effect of multiple genetic variants on an image, using a single test statistic. In some situations, which we describe, this can boost power by encoding population variations within each gene, reducing the effective number of statistical tests, and reducing the effect dimension of the search space. Multivariate gene-base...
Derrek P. Hibar, Jason L. Stein, Omid Kohannim, Ne
Added 21 Aug 2011
Updated 21 Aug 2011
Type Journal
Year 2011
Where ISBI
Authors Derrek P. Hibar, Jason L. Stein, Omid Kohannim, Neda Jahanshad, Clifford R. Jack, Michael Weiner, Arthur W. Toga, Paul M. Thompson
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