| Literature DB >> 20380754 |
Georgia Hadjipavlou1, Gib Hemani1, Richard Leach1, Bruno Louro1, Javad Nadaf1, Suzanne Rowe1, Dirk-Jan de Koning1.
Abstract
BACKGROUND: We applied a range of genome-wide association (GWA) methods to map quantitative trait loci (QTL) in the simulated dataset provided by the QTLMAS2009 workshop to derive a comprehensive set of results. A Gompertz curve was modelled on the yield data and showed good predictive properties. QTL analyses were done on the raw measurements and on the individual parameters of the Gompertz curve and its predicted growth for each interval. Half-sib and variance component linkage analysis revealed QTL with different modes of inheritance but with low resolution. This was complemented by association studies using single markers or haplotypes, and additive, dominance, parent-of-origin and epistatic QTL effects. All association analyses were done on phenotypes pre-corrected for pedigree effects. These methods detected QTL positions with high concordance to each other and with greater refinement of the linkage signals. Two-locus interaction analysis detected no epistatic pairs of QTL. Overall, using stringent thresholds we identified QTL regions using linkage analyses, corroborated by 6 individual SNPs with significant effects as well as two putatively imprinted SNPs.Entities:
Year: 2010 PMID: 20380754 PMCID: PMC2857842 DOI: 10.1186/1753-6561-4-s1-s11
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Summary of most significant QTL results for yield from variance component analyses.
| QTL | Time | % variance | |||
|---|---|---|---|---|---|
| Model | Chromosome | Position | LRT | Point | explained |
| (cM)1 | by QTL | ||||
| Additive | 1 | 43 | 135.6** | 530 | 35 |
| Additive | 2 | 5 | 25.42** | 530 | 6.4 |
| Additive | 2 | 38 | 24.1** | 397 | 7.3 |
| Additive | 3 | 17 | 14.05** | 0 | 5.03 |
| Additive | 3 | 93 | 8.6** | 265 | 4.92 |
| Additive | 4 | 37 | 15.61** | 0 | 5.66 |
| Additive | 4 | 77 | 27.85** | 0 | 7.16 |
| Additive | 5 | 73 | 11.98** | 530 | 5.0 |
| Dominant2 | 4 | 75 | 7.32** | 397 | 2.3/5.5 |
| Dominant2 | 5 | 30 | 2.44 | 397 | 0/3.4 |
| Imprinting3 | 2 | 9 | 4.5* | 132 | 0/5.5 |
| Imprinting3 | 2 | 62 | 3.4 | 530 | 0/4.6 |
| Imprinting3 | 3 | 76 | 3.0 | 265 | 2.6/0 |
| Imprinting3 | 3 | 76 | 3.6 | 397 | 2.4/0 |
| Imprinting3 | 4 | 9 | 8.3** | 0 | 6.2/0 |
1QTL position is defined relative to the first marker (SNP) present in the genetic map for each chromosome; first marker positioned at 1 cM.
2For dominant QTL, the LRT is the test of model 3) against model 2). The variance explained by the QTL is given as additive /dominance
3 For imprinted QTL, the LRT is the test of model 4) against model 2). The variance explained by the QTL is given as maternal /paternal
*/** Significance threshold P < 0.05/0.01 assuming the null test statistic follows a χ21 distribution
Figure 1Profile of association across all chromosomes over time
Most significant associations with single SNPs.
| SNP number | Time Pointa | % variance | |||
|---|---|---|---|---|---|
| Model | Chromosome | (cM) | -log10P | explained by QTLa | |
| Additive | 1 | 37 (44.5) | 15.0-22.6 | 0-530 | 6.7-9.9 |
| Additive | 2 | 98 (3.6) | 4.0-6.1 | 132-530 | 1.8-2.8 |
| Additive | 2 | 174 (88.3) | 3.3-4.6 | 132-530 | 1.3-1.6 |
| Additive | 3 | 222 (31.1) | 3.0-5.2 | 0-265 | 0.9-1.77 |
| Additive | 4 | 338 (71.7) | 3.0-7.3 | 0-530 | 1.0-2.8 |
| Dominant | 4 | 315 (38.8) | 4.4-5.1 | 0-530 | 1.7-2.0 |
| Imprinting | 1 | 53 (55.6) | 3.9 | 530 | 1.6 |
| Imprinting | 2 | 138 (48.5) | 3.6 | 0 | 1.5 |
a For SNPs with nominal P < 0.001