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Quantitative Trait Loci Variation for Growth and Obesity Between and Within Lines of Pigs (Sus scrofa)
Yoshitaka Nagaminea, Chris S. Haleya, Asheber Sewalema, and Peter M. Visscherba Division of Genetics and Biometry, Roslin Institute (Edinburgh), Roslin, Midlothian EH25 9PS, United Kingdom
b Institute of Cell, Animal and Population Biology, University of Edinburgh, Edinburgh EH9 3JT, United Kingdom
Corresponding author: Peter M. Visscher, Animal and Population Biology, W. Mains Rd., Edinburgh EH9 3JT, United Kingdom., peter.visscher{at}ed.ac.uk (E-mail)
Communicating editor: G. CHURCHILL
| ABSTRACT |
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The hypothesis that quantitative trait loci (QTL) that explain variation between divergent populations also account for genetic variation within populations was tested using pig populations. Two regions of the porcine genome that had previously been reported to harbor QTL with allelic effects that differed between the modern pig and its wild-type ancestor and between the modern pig and a more distantly related population of Asian pigs were studied. QTL for growth and obesity traits were mapped using selectively genotyped half-sib families from five domesticated modern populations. Strong support was found for at least one QTL segregating in each population. For all five populations there was evidence of a segregating QTL affecting fatness in a region on chromosome 7. These findings confirm that QTL can be detected in highly selected commercial populations and are consistent with the hypothesis that the same chromosome locations that account for variation between populations also explain genetic variation within populations.
DESPITE the characterization of many genes and mutations for Mendelian disorders in humans and animals, relatively little is known about the nature and maintenance of genetic variation underlying quantitative traits and complex disease (e.g., ![]()
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To understand and exploit the genetics of complex quantitative traits, experimental populations derived from two lines differing widely for traits of interest have been successfully used in model species (![]()
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Selection for meat and fat production in pigs has taken place for centuries, but intense selection using modern statistical methods has been practiced for only the past
50 years (![]()
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We have previously shown that QTL in a particular region can be identified in quite distinct experimental crosses as well as in replicated studies of the same experimental cross (![]()
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| MATERIALS AND METHODS |
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Two chromosome regions on porcine chromosomes 4 and 7 that were shown previously to harbor QTL for growth and obesity traits in Meishan x Large White (![]()
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10 males from an elite breeding population was supplied. Males were selected on the basis of having at least 100 progeny with phenotypic records and were therefore extensively used as sires in these populations. A summary of the types of populations used is given in Table 1. Animals were performance tested to measure their individual growth rates over the weight range of
30100 kg. At the end of the test fat depth at various points on the back was recorded using an ultrasonic scanner. None of the populations had a recent history of intercrossing with either Meishan or wild boar genotypes.
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A set of 30 microsatellite genetic markers from the two regions was supplied to a commercial laboratory, to determine heterozygosity for each male and to test the repeatability and reliability of genotyping. A subset of 19 were selected as technically tractable and heterozygous in one or more sires and finally15 markers (8 on chromosome 4 and 7 on chromosome 7) were used for subsequent genotyping of females and progeny (Table 2).
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In each of five collaborating pig genetics companies, phenotypic performance data were collected from half-sib progeny of each selected male. Traits recorded depended upon the prevailing practice within each company and are detailed in Table 1. Where possible, selective genotyping was practiced by identifying the 20% best and 20% worst animals with respect to growth rate within each sire family. Collection of phenotypic records and identification of extreme performing animals were carried out by the collaborating companies. Genetic marker genotypes were determined on males, their mates, and the extreme progeny, using family-specific informative markers. In total, nearly 3000 animals were genotyped, and
28,000 individual marker genotypes were determined by a commercial laboratory. A summary of the data is given in Table 3.
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Marker information was used to detect genotype inconsistencies between relatives. Progeny with multiple marker genotypes that were inconsistent with Mendelian inheritance were excluded. In total, this resulted in the exclusion of 110 progeny (<5%). Sporadic marker genotypes that were inconsistent with Mendelian inheritance were set to unknown. Subsequently, for each company a linkage marker map was estimated using CRI-MAP (![]()
For each of the five populations, data were analyzed by a half-sib regression-based method (![]()
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| RESULTS |
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Heterozygosity was calculated per boar across 19 markers (a subset of the original 30 markers) and ranged from 0.5 to 0.6, with a standard deviation of 0.100.15. Fifteen markers were typed across sufficient animals (>300 informative meioses per population) to build linkage maps for further analyses. All marker linkage maps were consistent with the published linkage maps for chromosomes 4 and 7 (see Table 2 for marker order and relative positions). The best order of the markers in the linkage groups was not significantly better (LOD < 2) than the order of the published maps, and, given this order, there was little evidence of heterogeneity of map length. For the chromosome 4 region, the map lengths varied from 22 to 36 cM between populations, whereas for the chromosome 7 region the range was (only) 3742 cM. Overall results by chromosome, company, and trait are shown in Table 4. Significant QTL effects were detected in two of five populations for chromosome 4 and in all populations for chromosome 7. Overall, 16 out of 50 trait-by-company-by-chromosome tests were significant at the 5% level, substantially more than might be expected due to chance. For the on-test growth rate traits, 4 out of 10 statistical tests were significant at the 5% level, 2 on chromosome 4 and 2 on chromosome 7. When selecting a single representative back fat measurement per population (P1 fat measurement or one nearest to its physical location), 5 out of 10 tests were significant at the 5% level, 1 on chromosome 4 and 4 on chromosome 7. The P value for the P1 fat measurement in company D was 0.063, so the data are consistent with a QTL for back fat segregating on chromosome 7 for all companies. The results for the back fat traits for chromosome 7 are shown in Fig 1, for each of the five populations. This figure demonstrates that, as expected, where a putative QTL is identified, only a proportion of the sires appear significant for that QTL (as judged by a t-statistic >2).
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The standardized estimated effects of segregating sires and the proportion of variance explained by the QTL are shown in Table 5. The effects are in the range of 0.50.6 phenotypic standard deviations for growth rate and 0.81.3 for back fat. The proportion of phenotypic variance explained by the QTL varied from 7 to 18%. If the heritability of the traits is 0.4, then these results imply that one-quarter to one-half of additive genetic variance is explained by the reported QTL.
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| DISCUSSION |
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We have tested the hypothesis that QTL that explain between-line genetic variation also explain variation within commercial lines and presented evidence that is consistent with this hypothesis.
There are a number of different explanations of the observations: (i) false-positive results, (ii) locus heterogeneity, (iii) segregation of ancestral QTL alleles, and (iv) allelic heterogeneity at previously published QTL. The first explanation is highly unlikely, because our study was based upon targeted genome regions, rather than upon a genome scan, and for these regions 16 out of 50 tests (32%) were significant at the 5% level (Table 4). Furthermore, a number of these traits are phenotypically highly correlated, for example, the four fat measurements from company A. If we restrict ourselves to the commonly measured traits growth rate and back fat, then 9 of the 20 tests are significant at the 5% level (Table 4). At a more stringent significance level of 0.0125, accounting for two regions and two independent traits tested, 7/50 tests are significant for all traits and 4/20 for growth rate and back fat, respectively, when we would expect none to be significant by chance under the null hypothesis. We cannot rule out explanation ii, i.e., that polymorphisms at different loci in the same region contribute to genetic variation in different populations. To our knowledge, there is no evidence, either for or against, of clustering of different QTL in the same linkage groups. However, the resolution of linkage mapping studies is not large enough to exclude the existence of multiple linked QTL affecting the same trait in the same genome region (![]()
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It would be surprising if ancestral wild-type QTL alleles that increase fatness and/or reduce growth are still segregating in the elite lines, because pigs are under intense selection pressure for reduced obesity and increased lean tissue growth rate (![]()
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An alternative explanation of the results is allelic heterogeneity, i.e., the segregation of different QTL alleles in different populations. This is consistent with the reporting of multiple mutations in the myostatin gene giving rise to the same double muscling phenotype (![]()
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Our results show strong evidence of genes segregating in highly selected outbred populations and offer the opportunities to map QTL by linkage or LD within a population. In addition, breeders can utilize the detected QTL in their own populations using marker-assisted-selection breeding schemes.
| ACKNOWLEDGMENTS |
|---|
We thank the commercial partners, Cotswold, JSR Healthbred, PIC International, Rattlerow Ltd., and Newsham Ltd., for their generous support in supplying blood or tissue samples and phenotypic information. We thank Mike Goddard, Sara Knott, Bill Hill, Rick Maizels, Graham Plastow, and D. J. de Koning for helpful discussions and comments. Both referees are thanked for their comments and suggestions. This project was funded by the Biotechnology and Biological Sciences Research Council under the Sustainable Livestock Production LINK program.
Manuscript received December 13, 2002; Accepted for publication February 15, 2003.
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