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Intelligence / Intelligence tests / Heritability / Parametric statistics / Intelligence quotient / Variance / Genome-wide association study / Linear regression / Principal component analysis / Statistics / Genetics / Data analysis
Date: 2013-11-07 03:01:41
Intelligence
Intelligence tests
Heritability
Parametric statistics
Intelligence quotient
Variance
Genome-wide association study
Linear regression
Principal component analysis
Statistics
Genetics
Data analysis

INVESTIGATION Genetic and Nongenetic Variation Revealed for the Principal Components of Human Gene Expression Anita Goldinger,*,†,1 Anjali K. Henders,‡ Allan F. McRae,*,†,‡ Nicholas G. Martin,‡ Greg Gibson,§

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