scholarly journals PENDUGAAN PARAMETER GENETIK PERFORMA PRASAPIH DOMBA GARUT DI UPTD-BPPTDK MARGAWATI GARUT

2020 ◽  
Vol 23 (1) ◽  
pp. 1
Author(s):  
Haya A. K. ◽  
Asep Anang ◽  
Denie Heriyadi

Pengembangan sumber daya genetik ternak lokal penting dilakukan untuk memenuhi permintaan dagingdomba yang tinggi di Indonesia khususnya Jawa Barat melalui kegiatan seleksi bibit unggul Domba garut.Penelitian ini bertujuan untuk mengetahui nilai parameter genetik sifat-sifat prasapih Domba garut. Sifat-sifat yang dianalisis pada penelitian ini yaitu bobot lahir (B0), bobot 30, 60, 90 hari (B30, B60, B90), dan bobot sapih pada 100 hari (B100) Domba garut di UPTD-BPPTDK Margawati Garut yang berasal dari 104 ekor pejantan, 1.809 ekor induk, 2.921 ekor anak domba jantan, dan 2.632 ekor anak domba betina. Total catatan yang dianalisis yaitu 27.019 catatan bobot badan yang terdiri atas 6.559 catatan B0, 5.702 catatan B30, 5.248 catatan B60, 4.843 catatan B90 hari, dan 4.667 catatan B100 Tahun 2012-2019. Analisis data menggunakan Restricted Maximum Likelihood (REML) untuk menduga heritabilitas dengan software Variance Components Estimation (VCE) 6.0, menggunakan model maternal genetic effect (m2) dan lingkungan bersama (c2). Efek tetap yang dimasukkan ke dalam analisis yaitu jenis kelamin dan tipe kelahiran. Hasil penelitian menunjukkan bahwa nilai heritabilitas B0, B30, B60, B90, dan B100 menggunakan model maternal genetic effect dan lingkungan bersama yaitu sebesar 0,133±0,04, 0,108±0,03, 0,099±0,03, 0,122±0,03, 0,123±0,03, artinya nilai-nilai heritabilitas tersebut masuk dalam kategori rendah. Nilai maternal genetic effect dan lingkungan bersama B0, B30, B60, B90, dan B100 Domba garut 0,095±0,03, 0,163±0,03, 0,137±0,03, 0,113± 0,02, 0,115±0,02 dan 0,455±0,16, 0,268±0,13, 0,274±0,13 0,269±0,13 0,278±0,12. Hal ini menunjukkan bahwa pendugaan parameter genetik lebih akurat jika melibatkan maternal genetic effect dan lingkungan bersama.

1998 ◽  
Vol 49 (4) ◽  
pp. 607 ◽  
Author(s):  
S. J. Schoeman ◽  
G. G. Jordaan

Postweaning liveweight gain records of 1610 young bulls obtained both in feedlot and under pasture were used to estimate (co)variance components using a multivariate restricted maximum likelihood analysis. The pedigree file included 3477 animals. Heritability estimates for liveweights and gain in both environments correspond to most previously reported estimates. The genetic correlation of gain between the 2 environments was -0·12, suggesting a large genotype testing environment interaction and re-ranking of animal breeding values across environments. Results of this analysis suggest the need for environment-specific breeding values for postweaning gain.


1990 ◽  
Vol 66 (2) ◽  
pp. 379-386 ◽  
Author(s):  
George A. Marcoulides

This study compares, using simulated data, two methods for estimating variance components in generalizability (G) studies. Traditionally variance components are estimated from an analysis of variance of sample data. The alternative method for estimating variance components is restricted maximum likelihood (REML). The results indicate that REML provides estimates for the components in the various designs that are closer to the true parameters than the estimates from analysis of variance.


2017 ◽  
Vol 56 (1) ◽  
pp. 64-71
Author(s):  
Oluwole Nuga ◽  
G. N. Amahia ◽  
Fatai Salami

The design effect for the restricted maximum likelihood estimators of variance components in acompletely randomized split-plot model is studied. The model was used to represent the response generated froman experimental scenario where the whole-plot and split-plot factors are random. The work generated groups ofbalanced designs from same number of experimental runs and compared them for optimality using the derived Fisher Information matrix of the restricted maximum likelihood (REML) estimators. The measure for optimalityis the D-optimality criterion; the resulting optimal designs depend on the relative magnitudes of the true values of the variance components. The results show that when the factor variances are larger than the error variances, designs where the absolute difference between the number of whole-plots and the number of levels of the splitplot factor is relatively small show substantial gain in statistical efficiency over other designs.


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