ldDesign: Design of experiments for detection of linkage disequilibrium
R package for design of experiments for design of genome-wide
association studies. Version 2 incorporating quantitative traits and
case-control studies. The Bayes factor should be chosen large enough to
give respectable posterior odds. This requires Bayes factors of the order
of 10^6 in genome-wide association studies where prior odds are low. Sample sizes needed to get this strength of evidence are substantially higher than those from traditional power calculations. The corresponding threshold for p-values is substantially lower than commonly used.
For quantitative traits
ldDesign uses an existing deterministic power calculation for detection
of linkage disequilibrium between a bi-allelic QTL and a bi-allelic marker,
together with the Spiegelhalter and Smith Bayes factor to generate
designs with power to detect effects with a given Bayes factor. For case-
control studies an asymptotic approximate Bayes factor is used to derive
an analytical power calculation in dominant, recessive, additive
and general genetic models.
| Version: |
2.0-0 |
| Published: |
2011-11-18 |
| Author: |
Rod Ball |
| Maintainer: |
Rod Ball <rod.ball at scionresearch.com> |
| License: |
GPL (≥ 2) |
| URL: |
mailto:rod.ball@scionresearch.com www.scionresearch.com/ |
| In views: |
ExperimentalDesign, Genetics |
| CRAN checks: |
ldDesign results |
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