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Seeking Optimal Region-Of-Interest (ROI) Single-Value Summary Measures for fMRI Studies in Imaging Genetics
Author(s) -
Yunxia Tong,
Qiang Chen,
Thomas E. Nichols,
Roberta Rasetti,
Joseph H. Callicott,
Karen F. Berman,
Daniel R. Weinberger,
Venkata S. Mattay
Publication year - 2016
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0151391
Subject(s) - voxel , imaging genetics , functional magnetic resonance imaging , statistical power , neuroimaging , multiple comparisons problem , genome wide association study , false discovery rate , computational biology , region of interest , computer science , artificial intelligence , a priori and a posteriori , genetics , pattern recognition (psychology) , biology , neuroscience , statistics , genotype , mathematics , gene , single nucleotide polymorphism , philosophy , epistemology
A data-driven hypothesis-free genome-wide association (GWA) approach in imaging genetics studies allows screening the entire genome to discover novel genes that modulate brain structure, chemistry, and function. However, a whole brain voxel-wise analysis approach in such genome-wide based imaging genetic studies can be computationally intense and also likely has low statistical power since a stringent multiple comparisons correction is needed for searching over the entire genome and brain. In imaging genetics with functional magnetic resonance imaging (fMRI) phenotypes, since many experimental paradigms activate focal regions that can be pre-specified based on a priori knowledge, reducing the voxel-wise search to single-value summary measures within a priori ROIs could prove efficient and promising. The goal of this investigation is to evaluate the sensitivity and reliability of different single-value ROI summary measures and provide guidance in future work. Four different fMRI databases were tested and comparisons across different groups (patients with schizophrenia, their siblings, vs. normal control subjects; across genotype groups) were conducted. Our results show that four of these measures, particularly those that represent values from the top most-activated voxels within an ROI are more powerful at reliably detecting group differences and generating greater effect sizes than the others.

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