Published May 27, 2015 | Version v1
Dataset Open

Data from: A comparison of genomic selection models across time in interior spruce (Picea engelmannii × glauca) using unordered SNP imputation methods

  • 1. University of British Columbia
  • 2. Ministry of Forests Lands and Natural Resource Operations

Description

Genomic selection (GS) potentially offers an unparalleled advantage over traditional pedigree-based selection (TS) methods by reducing the time commitment required to carry out a single cycle of tree improvement. This quality is particularly appealing to tree breeders, where lengthy improvement cycles are the norm. We explored the prospect of implementing GS for interior spruce (Picea engelmannii × glauca) utilizing a genotyped population of 769 trees belonging to 25 open-pollinated families. A series of repeated tree height measurements through ages 3–40 years permitted the testing of GS methods temporally. The genotyping-by-sequencing (GBS) platform was used for single nucleotide polymorphism (SNP) discovery in conjunction with three unordered imputation methods applied to a data set with 60% missing information. Further, three diverse GS models were evaluated based on predictive accuracy (PA), and their marker effects. Moderate levels of PA (0.31–0.55) were observed and were of sufficient capacity to deliver improved selection response over TS. Additionally, PA varied substantially through time accordingly with spatial competition among trees. As expected, temporal PA was well correlated with age-age genetic correlation (r=0.99), and decreased substantially with increasing difference in age between the training and validation populations (0.04–0.47). Moreover, our imputation comparisons indicate that k-nearest neighbor and singular value decomposition yielded a greater number of SNPs and gave higher predictive accuracies than imputing with the mean. Furthermore, the ridge regression (rrBLUP) and BayesCπ (BCπ) models both yielded equal, and better PA than the generalized ridge regression heteroscedastic effect model for the traits evaluated.

Notes

Files

KNNimp dryad.txt

Files (356.4 MB)

Name Size Download all
md5:9fd30c9877c2fa0a59272cf8e7988ab6
136.2 MB Preview Download
md5:8d7a7749d8633fadbaceb5971bd86851
101.2 MB Preview Download
md5:462b0534187e217983398904800e370c
1.3 MB Preview Download
md5:f07248eeff5333a16d331d2e5af2deca
117.7 MB Preview Download

Additional details

Related works

Is cited by
10.1038/hdy.2015.57 (DOI)