| Literature DB >> 26472667 |
Sébastien Tisné1, Marie Denis2, David Cros3, Virginie Pomiès4, Virginie Riou5, Indra Syahputra6, Alphonse Omoré7, Tristan Durand-Gasselin8, Jean-Marc Bouvet9, Benoît Cochard10,11.
Abstract
BACKGROUND: Elaeis guineensis is the world's leading source of vegetable oil, and the demand is still increasing. Oil palm breeding would benefit from marker-assisted selection but genetic studies are scarce and inconclusive. This study aims to identify genetic bases of oil palm production using a pedigree-based approach that is innovative in plant genetics.Entities:
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Year: 2015 PMID: 26472667 PMCID: PMC4608140 DOI: 10.1186/s12864-015-1985-3
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Production trait variations in oil palm A × B population. a Distribution of fresh fruit bunch weight (FFB). b Relationship between average bunch weight (ABW) and bunch number (BN) in an A × B population. The grey scale indicates the density of points with similar BN and ABW values. Isoproduction curves are drawn with corresponding FFB values given on the right of the curves. cPhenotypic correlations (rp) and genotypic correlations in heterotic groups A (rgA) and B (rgB) between FFB, BN and ABW. d Narrow sense heritability (h2) for the three production traits, i.e. FFB, BN and ABW, estimated from A × B individuals
Fig. 2Genetic determinisms of production trait variation in an oil palm A × B population. Heat map of a log-likelihood ratio test (LRT) testing the presence of a QTL in group A (GA) and B (GB) for the three production traits (FFB, BN and ABW). LRT are plotted along the 16 oil palm linkage group, and dashes on X-axis represent markers present on the genetic map. Bars on significant QTL positions represent approximate confidence intervals of QTL location
Variances of genetic model components for three production traits in oil palm
| Variance | |||
|---|---|---|---|
| Traits | Components | PED | PED + QTL |
| FFB | |||
| A_GCA | 14.72 | 0.15 | |
| A_2@12 | - | 5.29 | |
| A_8@59 | - | 4.08 | |
| A_12@33 | - | 6.71 | |
| A_13@7 | - | 3.69 | |
| B_GCA | 23.19 | 1.89 | |
| B_1@152 | - | 2.12 | |
| B_5@69 | - | 3.68 | |
| B_8@168 | - | 16.51 | |
| B_15@117 | - | 8.89 | |
| SCA | 2.65 | 1.74 | |
| Non genetic | 3.86 | 2.94 | |
| Residuals | 55.58 | 42.31 | |
| BN | |||
| A_GCA | 22.67 | 0.59 | |
| A_1@163 | - | 5.55 | |
| A_2@18 | - | 2.03 | |
| A_10@151 | - | 2.08 | |
| A_12@30 | - | 12.55 | |
| B_GCA | 31.60 | 0.00 | |
| B_1@159 | - | 4.18 | |
| B_4@253 | - | 23.79 | |
| B_8@137 | - | 4.40 | |
| B_9@69 | - | 4.88 | |
| B_11@172 | - | 6.23 | |
| B_15@117 | - | 4.27 | |
| SCA | 2.72 | 1.60 | |
| Non genetic | 2.40 | 1.56 | |
| Residuals | 40.60 | 26.29 | |
| ABW | |||
| A_GCA | 17.04 | 0.11 | |
| A_1@123 | - | 1.90 | |
| A_1@167 | - | 1.99 | |
| A_2@19 | - | 1.34 | |
| A_12@30 | - | 10.73 | |
| B_GCA | 35.85 | 0.00 | |
| B_1@167 | - | 6.80 | |
| B_4@252 | - | 44.60 | |
| B_8@24 | - | 1.07 | |
| B_14@9 | - | 0.90 | |
| B_16@57 | - | 5.88 | |
| SCA | 3.33 | 1.46 | |
| Non genetic | 2.63 | 1.39 | |
| Residuals | 41.15 | 21.84 | |
Variances are presented in percentage of total variance for the model without QTL effects (PED) and for the final selected QTL model (PED + QTL). QTL names are formed by heterotic group ID (A or B), the number of linkage group and the position in cM
FFB Fresh fruit bunch yield
BN Bunch number
ABW Average bunch weight
GCA General combining ability
SCA Specific combining ability
Fig. 3QTL effects on the three production traits in oil palm. a Correlation between production variables at QTL positions, measured as the Pearson correlation coefficient between BLUPs of the random QTL effects for each variable pair. The color scale indicates the strength of the correlation, with green and red being perfect positive and negative correlations, respectively. b Relationships between QTL effects for bunch number (BN) and average bunch weight (ABW) in heterotic group B parents are presented using the convex hull encompassing the scatter plot of parental BLUP values (n = 146). Convex hulls are drawn for BLUPs at three QTL positions on linkage group 1 (B_1@159), 15 (B_15@117) and 16 (B_16@57)
Fig. 4Co-localization of QTLs between oil palm heterotic groups. Log-likelihood ratio tests (LRT) for QTL mapping are plotted in heterotic group A (GA) versus heterotic group B (GB) for the three production traits, i.e. fresh fruit bunch (FFB, a), bunch number (BN, b) and average bunch weight (ABW, c)