Hypothesis testing in comparative and experimental studies of function-valued traits

Subscribe to email list

Please select the email list(s) to which you wish to subscribe.

User menu

You are here

Hypothesis testing in comparative and experimental studies of function-valued traits

TitleHypothesis testing in comparative and experimental studies of function-valued traits
Publication TypeJournal Article
Year of Publication2008
AuthorsGriswold, CK, Gomulkiewicz, R, Heckman, N
JournalEVOLUTION
Volume62
Pagination1229-1242
Date PublishedMAY
Type of ArticleArticle
ISSN0014-3820
KeywordsFunctional data analysis, multivariate analysis, phenotype, power, repeated-measures ANOVA, repeated-measures regression
AbstractMany traits of evolutionary interest, when placed in their developmental, physiological, or environmental contexts, are function-valued. For instance, gene expression during development is typically a function of the age of an organism and physiological processes are often a function of environment. In comparative and experimental studies, a fundamental question is whether the function-valued trait of one group is different from another. To address this question, evolutionary biologists have several statistical methods available. These methods can be classified into one of two types: multivariate and functional. Multivariate methods, including univariate repeated-measures analysis of variance (ANOVA), treat each trait as a finite list of data. Functional methods, such as repeated-measures regression, view the data as a sample of points drawn from an underlying function. A key difference between multivariate and functional methods is that functional methods retain information about the ordering and spacing of a set of data values, information that is discarded by multivariate methods. In this study, we evaluated the importance of that discarded information in statistical analyses of function-valued traits. Our results indicate that functional methods tend to have substantially greater statistical power than multivariate approaches to detect differences in a function-valued trait between groups.
DOI10.1111/j.1558-5646.2008.00340.x