Inferring weak population structure with the assistance of sample group information
Cornell University · University College Cork · +2 more institutions
Abstract
Genetic clustering algorithms require a certain amount of data to produce informative results. In the common situation that individuals are sampled at several locations, we show how sample group information can be used to achieve better results when the amount of data is limited. New models are developed for the structure program, both for the cases of admixture and no admixture. These models work by modifying the prior distribution for each individual's population assignment. The new prior distributions allow the proportion of individuals assigned to a particular cluster to vary by location. The models are tested on simulated data, and illustrated using microsatellite data from the CEPH Human Genome Diversity…
Citation impact
- FWCI
- 89.00
- Percentile
- 100%
- References
- 19
Authors
4Topics & keywords
- Biology
- Cluster analysis
- Divergence (linguistics)
- Population structure
- Sample (material)
- Population
- Microsatellite
- Sample size determination