Dataset: Power output results
Data Citation:
Albecker, M., Trussell, G., Lotterhos, K. (2022) Results using simulated data used to conduct power analyses. Biological and Chemical Oceanography Data Management Office (BCO-DMO). (Version 1) Version Date 2022-10-14 [if applicable, indicate subset used]. doi:10.26008/1912/bco-dmo.877456.1 [access date]
Terms of Use
This dataset is licensed under Creative Commons Attribution 4.0.
If you wish to use this dataset, it is highly recommended that you contact the original principal investigators (PI). Should the relevant PI be unavailable, please contact BCO-DMO (info@bco-dmo.org) for additional guidance. For general guidance please see the BCO-DMO Terms of Use document.
DOI:10.26008/1912/bco-dmo.877456.1
Project:
RCN: Evolution in Changing Seas
(RCN ECS)
Principal Investigator:
Katie Lotterhos (Northeastern University)
Co-Principal Investigator:
Geoffrey C. Trussell (Northeastern University)
Contact:
Molly Albecker (Northeastern University)
BCO-DMO Data Manager:
Taylor Heyl (Woods Hole Oceanographic Institution, WHOI BCO-DMO)
Shannon Rauch (Woods Hole Oceanographic Institution, WHOI BCO-DMO)
Version:
1
Version Date:
2022-10-14
Restricted:
No
Validated:
Yes
Current State:
Final no updates expected
Results using simulated data used to conduct power analyses
Abstract:
Spatial covariance between genotypic and environmental influences on phenotypes (CovGE) can result in the nonrandom distribution of genotypes across environmental gradients and is a potentially important factor driving local adaptation. However, a framework to quantify the magnitude and significance of CovGE has been lacking. We develop a novel quantitative/analytical approach to estimate and test the significance of CovGE from reciprocal transplant or common garden experiments, which we validate using simulated data. We demonstrate how power to detect CovGE changes over a range of experimental designs. We confirm an inverse relationship between gene-by-environment interactions (GxE) and CovGE, as predicted by first principles, but show how phenotypes can be influenced by both. The metric provides a way to measure how phenotypic plasticity covaries with genetic differentiation and highlights the importance of understanding the dual influences of CovGE and GxE on phenotypes in studies of local adaptation and species’ responses to environmental change.