Optimising early selection using longitudinal data

Ref ID: 8562
Ref Type: Journal
Authors: Apiolaza, L. A., Garrick, D. J., and Burdon, R. D.
Pub Date: 2000
Journal Name: Silvae Genetica
Volume: 49
Issue:
Start Page: 195
End Page: 200
ISBN/ISSN:
Keywords: breeding/Chile/correlate/cost/data/early/economics/effect/genetics/parameter/height/measurement/model/progeny/Pinus/Pinus radiata/response/selection/structure/test/value
Abstract: This study analysed the use of longitudinal data, i.e. repeat ed assessment of the same individuals at different ages, in the context of early selection. Autoregressive relationships, banded correlations and unstructured ('unsmoothed') matrices were used to model the additive genetic covariance matrix (Go) for 10 total height measurements of a Pinus radiata open-pollinated progeny test. We examined the effects on response to selection of inferred covariance structure, mass versus combined selection, one or multiple assessments, and two breeding-delay intervals. End results are expressed as predicted average gain per year. The patterns of predicted response to selection vary widely between inferred covariance structures. Considering the autoregressive model (based on logarithm of age ratios between assessments) as an example, the effect of combining information from relatives on response to selection is more important (16% to 41% extra gain) than using extra measurements (2% to 25%), when predicting individual breeding values, although the economics of extra gain vs extra assessment costs must be carefully analysed. It is expected that using multiple assessments could be advisable for datasets with lower genetic autocorrelations. An approximate comparison across covariance models showed the autoregressive model to exhibit the best ability to produce 'correct' selections as well as the highest predicted response to selection
Notes: Entered by uncronopio (17/4/2001):
Reprint: Not in File
Program: SPF Genetic Improvement
Project: A2
Deliverable:
Confidentiality: Public to All Partners
Availability: Authors
Report: Annual Report 2000/1
Type: Article
Address: luis.apiolaza@utas.edu.au