| Literature DB >> 22303406 |
Marcos Vinícius Gualberto Barbosa da Silva1, Curtis P Van Tassell, Tad S Sonstegard, Jaime Araujo Cobuci, Louis C Gasbarre.
Abstract
Accurate genetic evaluation of livestock is based on appropriate modeling of phenotypic measurements. In ruminants, fecal egg count (FEC) is commonly used to measure resistance to nematodes. FEC values are not normally distributed and logarithmic transformations have been used in an effort to achieve normality before analysis. However, the transformed data are often still not normally distributed, especially when data are extremely skewed. A series of repeated FEC measurements may provide information about the population dynamics of a group or individual. A total of 6375 FEC measures were obtained for 410 animals between 1992 and 2003 from the Beltsville Agricultural Research Center Angus herd. Original data were transformed using an extension of the Box-Cox transformation to approach normality and to estimate (co)variance components. We also proposed using random regression models (RRM) for genetic and non-genetic studies of FEC. Phenotypes were analyzed using RRM and restricted maximum likelihood. Within the different orders of Legendre polynomials used, those with more parameters (order 4) adjusted FEC data best. Results indicated that the transformation of FEC data utilizing the Box-Cox transformation family was effective in reducing the skewness and kurtosis, and dramatically increased estimates of heritability, and measurements of FEC obtained in the period between 12 and 26 weeks in a 26-week experimental challenge period are genetically correlated.Entities:
Keywords: Box–Cox transformation; REML; bovine; fecal egg count; genetic parameters
Year: 2012 PMID: 22303406 PMCID: PMC3265087 DOI: 10.3389/fgene.2011.00112
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.599
Descriptive statistics for fecal egg count (FEC) for weeks and overall data for Angus cattle.
| Week | Percent | Mean | SD | CV | Minimum | Maximum | |
|---|---|---|---|---|---|---|---|
| 4 | 406 | 6.37 | 30.71 | 54.12 | 176.23 | 0 | 450.00 |
| 5 | 408 | 6.40 | 48.95 | 75.40 | 154.03 | 0 | 666.00 |
| 6 | 408 | 6.40 | 57.82 | 101.36 | 175.30 | 0 | 1.000.00 |
| 7 | 409 | 6.42 | 63.26 | 86.29 | 136.41 | 0 | 702.00 |
| 8 | 406 | 6.37 | 65.99 | 97.62 | 147.93 | 0 | 780.00 |
| 9 | 360 | 5.65 | 64.70 | 86.07 | 133.03 | 0 | 642.00 |
| 10 | 362 | 5.68 | 76.45 | 124.09 | 162.32 | 0 | 1.296.00 |
| 11 | 362 | 5.68 | 64.34 | 82.41 | 128.09 | 0 | 800.00 |
| 12 | 364 | 5.71 | 66.12 | 81.03 | 122.55 | 0 | 524.00 |
| 13 | 363 | 5.69 | 77.76 | 110.71 | 142.37 | 0 | 880.00 |
| 14 | 364 | 5.71 | 72.48 | 138.94 | 191.69 | 0 | 2.212.00 |
| 15 | 362 | 5.68 | 71.24 | 98.86 | 138.77 | 0 | 884.00 |
| 16 | 359 | 5.63 | 75.36 | 109.79 | 145.69 | 0 | 1.154.00 |
| 17 | 328 | 5.15 | 69.55 | 87.61 | 125.97 | 0 | 614.00 |
| 18 | 197 | 3.09 | 65.52 | 83.48 | 127.41 | 0 | 490.00 |
| 19 | 144 | 2.26 | 50.34 | 60.34 | 119.86 | 0 | 358.00 |
| 20 | 145 | 2.27 | 34.26 | 37.44 | 109.28 | 0 | 196.00 |
| 21 | 142 | 2.23 | 36.46 | 40.36 | 110.70 | 0 | 242.00 |
| 22 | 145 | 2.27 | 40.12 | 43.16 | 107.58 | 0 | 240.00 |
| 23 | 110 | 1.73 | 39.86 | 46.89 | 117.64 | 0 | 256.00 |
| 24 | 110 | 1.73 | 48.83 | 72.74 | 148.97 | 0 | 496.00 |
| 25 | 79 | 1.24 | 47.03 | 52.81 | 112.29 | 0 | 274.00 |
| 26 | 42 | 0.66 | 23.24 | 28.55 | 122.85 | 0 | 126.00 |
| Total | 6375 | 100.00 | 61.86 | 83.79 | 135.46 | 0 | 2212.00 |
Figure 1Distribution of fecal egg count (FEC) samples (.
Values of skewness and kurtosis for non-transformed (Non), log, and Box–Cox (BC) transformed data.
| Parameter | Mean | Largest | All (repeatability) | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Non | Transform | Non | Transform | Non | Transform | ||||
| Log | BC | Log | BC | Log | BC | ||||
| Skewness | 3.82 | 0.64 | 0.13 | 4.07 | 0.26 | 0.15 | 5.48 | 0.86 | 0.65 |
| Kurtosis | 28.41 | 0.16 | −0.16 | 32.88 | 0.38 | −0.07 | 67.54 | 0.42 | −0.09 |
Additive genetic, residual (co)variance and heritabilities estimates, obtained using non-transformed (Non) and log and Box–Cox (BC) transformed data for Angus cattle.
| Components | (Co)variance components | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Mean | Largest | Repeatability model | |||||||
| Non | Transform | Non | Transform | Non | Transform | ||||
| Log | BC | Log | BC | Log | BC | ||||
| Additive genetic | 1443.20 | 0.232 | 0.659 | 4513.07 | 0.236 | 2.501 | 660.64 | 0.180 | 0.500 |
| Residual | 1830.98 | 0.342 | 0.665 | 18320.71 | 0.339 | 1.779 | 4701.04 | 0.733 | 2.031 |
| Permanent environment | – | – | – | – | – | – | 1553.92 | 0.149 | 0.428 |
| h2 ± EP | 0.21 ± 0.08 | 0.40 ± 0.08 | 0.50 ± 0.08 | 0.20 ± 0.08 | 0.40 ± 0.08 | 0.58 ± 0.08 | 0.10 ± 0.03 | 0.17 ± 0.03 | 0.17 ± 0.03 |
| – | – | – | – | – | – | 0.31 | 0.30 | 0.31 | |
Additive genetic, permanent environment and residual (co)variance estimates of the regression coefficients, obtained using different random regression models.
| Components | (Co)variance components | ||
|---|---|---|---|
| LEG2 | LEG3 | LEG4 | |
| 1.188 | 1.021 | 1.081 | |
| 0.2204 | 0.1564 × 10−1 | 0.3694 × 10−1 | |
| – | −0.1699 | −0.1303 | |
| – | – | 0.6759 × 10−1 | |
| 0.1987 | 0.9777 × 10−1 | 0.8531 × 10−1 | |
| – | −0.1090 × 10−1 | −0.2153 × 10−1 | |
| – | – | −0.1468 × 10−1 | |
| – | 0.4567 × 10−1 | 0.4183 × 10−1 | |
| – | – | −0.4178 × 10−2 | |
| – | – | 0.1813 × 10−1 | |
| 1.029 | 0.6856 | 0.6621 | |
| p1 | 0.4968 | 0.2267 | 0.7022 × 10−1 |
| – | −0.1424 | −0.1439 | |
| – | – | −0.5036 × 10−1 | |
| 0.9721 | 0.8035 | 0.3857 | |
| – | 0.1404 × 10−1 | −0.1556 | |
| – | – | −0.2041 | |
| – | 0.1214 | 0.2486 | |
| – | – | 0.1074 | |
| – | – | 0.1755 | |
| 1.507 | 1.469 | 1.398 | |
Number of parameters (NP), −2log value of the likelihood function (−2log L), Akaike (AIC), and Bayesian information criterion (BIC), according differents random regression models.
| Model1 | NP | −2log L | AIC | BIC | OC2 |
|---|---|---|---|---|---|
| LEG2 | 7 | 10095.6924360777 | 10109.6924361 | 10157.01450962 | 3 |
| LEG3 | 13 | 10024.8308108467 | 10050.8308108 | 10138.71466171 | 2 |
| LEG4 | 21 | 9919.4883181071 | 9961.4883181 | 10103.45453874 | 1 |
.
Figure 2Estimates of additive genetic variance of fecal egg count (FEC) over time for different values of λ.
Figure 3Estimates of permanent environment variance of fecal egg count (FEC) over time for different values of λ.
Figure 4Estimates of residual variance of fecal egg count (FEC) over time for different values of λ.
Figure 5Estimates of heritability of fecal egg count (FEC) over time for different values of λ.
Figure 6Estimates of repeatability of fecal egg count (FEC) over time for different values of λ.
Figure 7Estimates of genetic correlation among fecal egg count (FEC) weekly measures, according different kinds of transformations (λ values).
Figure 8Estimates breeding values of FEC (EBVFEC) over time for different animals (λ = ML).
Figure 9Estimates of the resistance using the random regression curves over time for different animals.