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Published byMartha Richard Modified over 9 years ago
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Prediction of Service Sire Fertility M.T. Kuhn 1 *, J.L. Hutchison 1, and J.S. Clay 2 1 Animal Improvement Programs Laboratory Agriculture Research Service, USDA, Beltsville, MD 2 Dairy Records Management Systems, Raleigh, NC.
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Introduction Currently, two predictions of service sire (SSR) fertility are being done ERCR by DRMS ATA Bull Fertility Summary Request for AIPL to conduct a national evaluation for SSR fertility
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Introduction ERCR Began in 1986 Published annually in Hoard’s Dairyman Currently includes data from - DRMS, Ag Source, MN DHIA - About 64% of US ATA Began in 2003 Somewhat less publicized than ERCR Primarily western herds
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ERCR Trait Non-Return at 70 days (NR70) => Only first service used Linear animal model Factors HYM Milk Parity DIM SSR A cow PE cow SSR_age SSRxHerd Var(SSR) = I 2 ssr Var(A cow ) = A a 2
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ATA Bull Fertility Summary Trait Conception (0, 1) on up to first 5 services Threshold model Factors SSR Cow Herd-Yr-Mo-Tech Herd-P-Milk Herd-DIM Herd-SSR_Age Var(SSR) = I 2 ssr Var(Cow) = I 2 cow
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Overall Objective Develop national (phenotypic) evaluation for service sire fertility Data collection Trait definition Model development Appropriate edits for field data
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Alternatives to be Investigated 1) ERCR 2) ATA Bull Fertility Summary 3) Alternative model(s) using all services Linear model Threshold model Linear model using predicted value for breedings with no pregnancy confirmation
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Immediate Objectives 1) Compare models ERCR An alternative linear model (AIPL_LM) 2) Compare trait definitions for AIPL_LM All services First service only (NR70)
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AIPL_LM Factors Included HYS A ssr ST-MO PE ssr Parity Stud Cow EFI ssr Milk F ssr DIM SSR_age Cow_Age Var(Cow) = I 2 cow Var(A ssr ) = A 2 a Var(PE ssr ) = I 2 PE Cow Effects Env’l Effects SSR Effects
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Predictor for AIPL_LM CR =A ssr + PE ssr + Stud + ß 1 *EFI + ß 2 *F ssr + ß 3 *SSR_age
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Data Breeding records from 4 DRPCs Years available: 1995-1999 Date of breeding, service sire, service number recorded for each service on each cow-lactation No pregnancy check information available Last service on file, assumed successful 1997 ERCRs supplied by DRMS
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Methods AIPL_LM predictions computed, for each bull, using records from 1995 to 1997 = CR AIPL-1 for first service only = CR AIPL-All for all services Each bull’s conception rate in 1998, adjusted for herd effects, was calculated = CR 98
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Methods Criterion for comparison of predictors was correlation with CR 98 Cor(ERCR, CR 98 ) Cor(CR AIPL-1, CR 98 ) Cor(CR AIPL-All, CR 98 )
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Results Min. No. of Mates ERCRCR AIPL-1 CR AIPL-ALL No. Bulls 1000.440.510.62271 2000.530.590.66192 5000.640.720.78128 10000.670.740.8076 Correlation of Predictors with CR 98
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Results Correlations Among Predictors Minimum No. of Mates 1002005001000 ERCR, CR AIPL-1 0.520.550.670.78 ERCR, CR AIPL-ALL 0.610.650.730.78 CR AIPL-1, CR AIPL-ALL 0.740.800.830.90
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Summary and Conclusions Use of multiple services improves accuracy. Model alterations can also improve accuracy. Agreement between alternative models and trait definitions increases with increasing number of mates. Modeling the SSR effect in separate components appears effective.
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Summary and Conclusions Further modeling research Additional factors to include Modeling effects related to time Threshold vs. linear model Accounting for uncertainty of pregnancy status
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