- THIS ARTICLE
- Full Text (Rapid PDF)
-
All Versions of this Article:
genetics.106.067348v1
176/2/1151 most recent - Alert me when this article is cited
- Alert me if a correction is posted
- SERVICES
- Similar articles in this journal
- Similar articles in PubMed
- Alert me to new issues of the journal
- Download to citation manager
-
Author home page(s):
José M. Álvarez-Castro
Örjan Carlborg
- Reprints & Permissions
- CITING ARTICLES
- Citing Articles via HighWire
- Citing Articles via Google Scholar
- GOOGLE SCHOLAR
- Articles by Álvarez-Castro, J. M.
- Articles by Carlborg, O.
- Search for Related Content
- PUBMED
- PubMed Citation
- Articles by Álvarez-Castro, J. M.
- Articles by Carlborg, O.
doi:10.1534/genetics.106.067348
A more recent version of this article appeared on June 1, 2007.
REGULAR RESEARCH PAPERS |
A unified model for functional and statistical epistasis and its application in QTL analysis
José M. Álvarez-Castro 1* and Örjan Carlborg 1
1 Uppsala University
* To whom correspondence should be addressed. E-mail: jose.alvarez-castro{at}lcb.uu.se.
Submitted on October 25, 2006
Revised on January 31, 2007
Accepted on 20 March 2007
Interaction between genes, or epistasis, is found to be common and it is a key concept for understanding adaptation and evolution of natural populations, response to selection in breeding programs and determination of complex disease. Currently, two independent classes of models are used to study epistasis. Statistical models focus on maintaining desired statistical properties for detection and estimation of genetic effects and for the decomposition of genetic variance using average effects of allele substitutions in populations as parameters. Functional models focus on the evolutionary consequences of the attributes of the genotype-phenotype map using natural effects of allele substitutions as parameters. Here we provide a new, general and unified model framework: the NOIA (Natural and Orthogonal InterActions) model. NOIA implements tools for transforming genetic effects measured in one population to the ones of other populations (e.g. between two experimental designs for QTL) and parameters of statistical and functional epistasis into each other (thus enabling us to obtain functional estimates of QTL), as demonstrated numerically. We develop graphical interpretations of functional and statistical models as regressions of the genotypic values on the gene content, which illustrates the difference between the models - the constraint on the slope of the functional regression - and when the models are equivalent. Furthermore, we use our theoretical foundations to conceptually clarify functional and statistical epistasis, discuss the advantages of NOIA over previous theory, and stress the importance of linking functional and statistical models.
Key Words: Functional epistasis, Genotype-phenotype map, Othogonal model, QTL mapping, Statistical epistasis
This article has been cited by other articles:
![]() |
A. Le Rouzic, J. M. Alvarez-Castro, and O. Carlborg Dissection of the Genetic Architecture of Body Weight in Chicken Reveals the Impact of Epistasis on Domestication Traits Genetics, July 1, 2008; 179(3): 1591 - 1599. [Abstract] [Full Text] [PDF] |
||||
![]() |
A. E. Melchinger, H. F. Utz, and C. C. Schon Genetic Expectations of Quantitative Trait Loci Main and Interaction Effects Obtained With the Triple Testcross Design and Their Relevance for the Analysis of Heterosis Genetics, April 1, 2008; 178(4): 2265 - 2274. [Abstract] [Full Text] [PDF] |
||||
