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Planning rice breeding programs for impact

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Title: PowerPoint Presentation Author: GAtlin Last modified by: GClaessens Created Date: 11/19/2001 1:32:32 PM Document presentation format: On-screen Show – PowerPoint PPT presentation

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Title: Planning rice breeding programs for impact


1
Planning rice breeding programs
for impact
  • Models, means, variances, LSDs and Heritability

2
Learning objectives
  • Review the linear model for plot measurements in
    variety trials and nurseries, and the derived
    statistics
  • Understand the purpose of replication in breeding
    programs
  • Model the relationship between replication, the
    standard error of a cultivar mean (SEM), and the
    least significant difference (LSD) between the
    means of 2 cultivars  

3
Introduction
  • Measurements made on field plots contain both
    genotypic effects (G) and plot residuals (e)
  • Purpose of experimental design and statistical
    analysis is to separate genotypic signal from
    noise of plot residuals.

4
2.0
2.3
1.9
2.2
0.8
1.1
2.0
2.5
2.6
2.3
2.8
3.2
3.8
3.5
2.5
2.6
2.3
2.4
1.0
0.6
1.8
3.1
3.2
2.9
3.3
3.5
4.1
3.9
2.7
2.8
2.4
2.6
2.7
1.3
0.5
3.1
3.4
3.5
3.3
3.7
4.4
4.0
5
Linear model for plot measurements
  • ?For a completely randomized design (CRD)
  • Where
  • Yij a plot measurement
  • µ the mean of all plots
  • Gi the effect of the ith genotype
  • ej the residual effect of the jth plot
  • Gs and es sum to 0

6
E(e) 0
7
  • Yi. µ Gi ej 4.1
  • Thus, for measurements on a single plot, G and e
    are confounded
  • Because of the confounding, Y is an unreliable
    estimator of G
  • In replicated trials, the mean of Y over several
    plots is a better estimator of G, because es
    tend to cancel each other out

8
Variances, standard errors and LSDs
9
(No Transcript)
10
Least significant difference (LSD) LSD
ta/2,edf x SED ta/2,edf x v(2 s2e
/r) 4.6   ta/2,edf roughly equals 2, so
LSD 3 SEM
?SEM, SED, and LSD are important measures of the
precision of a trial ?Precision is determined
mainly by replication
11
Repeatability
  • H integrates information on genetic variation and
    environmental noise into a measure of
    repeatability
  • H is closely related to selection response (R)
  • H can be used to model effect of changes to
    breeding program organization on R

12
The phenotypic variance single trial model
Cultivar mean
Variance AMONG cultivar means
s2P s2G (s2e /r)
13
Broad-sense heritability for single trial
H
14
What does H tell us, and what is it useful for?
  • Proportion of phenotypic variation in genotype
    means that is due to genotypic differences
    (signalnoise ratio)
  • Repeatability of a trial, or the expected
    correlation between 2 identical variety trials
    conducted in the same field
  • It tells us how reliable the results of an
    experiment are
  • It can be used to examine the effect of
    increasing or decreasing replicate number on
    repeatability of the experiment

15
What does H NOT tell us?
  • Mendelian transmissability
  • Anything about genetic control of a trait
  • Note that H is not a constant! It is affected by
    the level of replication of the selection unit

16
Estimating H for the single-trial model
  • Variance components (including s²G) are estimated
    from ANOVA table (for balanced trials) or REML
    software


Source MS EMS
Genotypic MSG s2e rs2G
Plot residuals MSe s2e
17
Example a 40-entry micro plot trial
  • ?40 upland varieties were evaluated in single-row
    micro plots at IRRI


Source Mean square (g/plot)² EMS
Replicates
Genotypes (G) 6891 s2e rs2G
Plot residuals 1544 s2e
18
s2G (6891 1544) / 3 1782
Table 8.3. Predicted H for yield in micro plots
with 1- 4 replicates
Replicates H
1
2
3
4
s2G / s2G (s2e /r) 1782/1782 (1544/1)
0.54
s2G / s2G (s2e /r) 1782/1782 (1544/2)
0.70
s2G / s2G (s2e /r) 1782/1782 (1544/3)
0.78
s2G / s2G (s2e /r) 1782/1782 (1544/4)
0.82
19
H for the single trial model
  • H is not a constant it approaches 1.0 with
    increased r
  • Single-trial H estimates are biased upward by GEI
  • Estimates apply only to TPE and genetic
    population from which they were derived

20
Can anyone briefly explain
  • the purpose of replications?
  • heritability?

21
Conclusion 1
  • In field trials nurseries, genotype plot
    effects are confounded
  • Purpose of replication in breeding programs
    reduce this confounding, increasing our ability
    to identify superior genotypes
  • Error mean square from representative experiments
    used to predict LSD value we obtain from given
    level of replication

22
Conclusion 2
  • H a measure of repeatability of variety trials
  • Genotype and error variances estimated from
    replicated trials used to model H
  • Gains in precision and repeatability from
    increasing replication diminish quickly for
    trials with gt 4 reps
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