Jette H. Jakobsen
Saint Louis University
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Featured researches published by Jette H. Jakobsen.
Genetics Selection Evolution | 2011
Anna-Maria Tyrisevä; Karin Meyer; W Freddy Fikse; Vincent Ducrocq; Jette H. Jakobsen; Martin Lidauer; Esa Mäntysaari
BackgroundThe dairy cattle breeding industry is a highly globalized business, which needs internationally comparable and reliable breeding values of sires. The international Bull Evaluation Service, Interbull, was established in 1983 to respond to this need. Currently, Interbull performs multiple-trait across country evaluations (MACE) for several traits and breeds in dairy cattle and provides international breeding values to its member countries. Estimating parameters for MACE is challenging since the structure of datasets and conventional use of multiple-trait models easily result in over-parameterized genetic covariance matrices. The number of parameters to be estimated can be reduced by taking into account only the leading principal components of the traits considered. For MACE, this is readily implemented in a random regression model.MethodsThis article compares two principal component approaches to estimate variance components for MACE using real datasets. The methods tested were a REML approach that directly estimates the genetic principal components (direct PC) and the so-called bottom-up REML approach (bottom-up PC), in which traits are sequentially added to the analysis and the statistically significant genetic principal components are retained. Furthermore, this article evaluates the utility of the bottom-up PC approach to determine the appropriate rank of the (co)variance matrix.ResultsOur study demonstrates the usefulness of both approaches and shows that they can be applied to large multi-country models considering all concerned countries simultaneously. These strategies can thus replace the current practice of estimating the covariance components required through a series of analyses involving selected subsets of traits. Our results support the importance of using the appropriate rank in the genetic (co)variance matrix. Using too low a rank resulted in biased parameter estimates, whereas too high a rank did not result in bias, but increased standard errors of the estimates and notably the computing time.ConclusionsIn terms of estimations accuracy, both principal component approaches performed equally well and permitted the use of more parsimonious models through random regression MACE. The advantage of the bottom-up PC approach is that it does not need any previous knowledge on the rank. However, with a predetermined rank, the direct PC approach needs less computing time than the bottom-up PC.
Genetics Selection Evolution | 2011
Anna-Maria Tyrisevä; Karin Meyer; W Freddy Fikse; Vincent Ducrocq; Jette H. Jakobsen; Martin Lidauer; Esa Mäntysaari
BackgroundInterbull is a non-profit organization that provides internationally comparable breeding values for globalized dairy cattle breeding programmes. Due to different trait definitions and models for genetic evaluation between countries, each biological trait is treated as a different trait in each of the participating countries. This yields a genetic covariance matrix of dimension equal to the number of countries which typically involves high genetic correlations between countries. This gives rise to several problems such as over-parameterized models and increased sampling variances, if genetic (co)variance matrices are considered to be unstructured.MethodsPrincipal component (PC) and factor analytic (FA) models allow highly parsimonious representations of the (co)variance matrix compared to the standard multi-trait model and have, therefore, attracted considerable interest for their potential to ease the burden of the estimation process for multiple-trait across country evaluation (MACE). This study evaluated the utility of PC and FA models to estimate variance components and to predict breeding values for MACE for protein yield. This was tested using a dataset comprising Holstein bull evaluations obtained in 2007 from 25 countries.ResultsIn total, 19 principal components or nine factors were needed to explain the genetic variation in the test dataset. Estimates of the genetic parameters under the optimal fit were almost identical for the two approaches. Furthermore, the results were in a good agreement with those obtained from the full rank model and with those provided by Interbull. The estimation time was shortest for models fitting the optimal number of parameters and prolonged when under- or over-parameterized models were applied. Correlations between estimated breeding values (EBV) from the PC19 and PC25 were unity. With few exceptions, correlations between EBV obtained using FA and PC approaches under the optimal fit were ≥ 0.99. For both approaches, EBV correlations decreased when the optimal model and models fitting too few parameters were compared.ConclusionsGenetic parameters from the PC and FA approaches were very similar when the optimal number of principal components or factors was fitted. Over-fitting increased estimation time and standard errors of the estimates but did not affect the estimates of genetic correlations or the predictions of breeding values, whereas fitting too few parameters affected bull rankings in different countries.
Interbull Bulletin | 2010
M.A. Nilforooshan; B Zumbach; Jette H. Jakobsen; A Loberg; Hossein Jorjani; João Walter Dürr
Interbull Bulletin | 2012
Peter G Sullivan; Jette H. Jakobsen
Interbull Bulletin | 2012
Anna-Maria Tyrisevä; Esa Mäntysaari; Jette H. Jakobsen; Gert Pedersen Aamand; João Walter Dürr; W.F. Fikse; M H Lindauer
Interbull Bulletin | 2006
Jette H. Jakobsen; Eva Hjerpe
Interbull Bulletin | 2004
Peter G Sullivan; G J Kistemaker; Jette H. Jakobsen; Freddy Fikse
Interbull Bulletin | 2002
Jette H. Jakobsen; Per Madsen; J. Pedersen
Interbull Bulletin | 2012
Jette H. Jakobsen; Peter G Sullivan
Interbull Bulletin | 2005
Jette H. Jakobsen; Freddy Fikse