SlideShare une entreprise Scribd logo
1  sur  26
John B. Cole
Animal Genomics and Improvement Laboratory
Agricultural Research Service, USDA
Beltsville, MD 20705-2350
john.cole@ars.usda.gov
2015
Using genotypes to construct
phenotypes for dairy cattle
breeding programs and beyond
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Why do we need new phenotypes?
● Changes in production economics
● Technology enables collection of new
phenotypes
● Better understanding of biology
● Recent review by Egger-Danner et al.
(2015) in Animal
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Source: Miglior et al. (2012)
Selection indices now include many traits
0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100%
Australia - APR
Belgium (Walloon) - V€G
Canada - LPI
France - ISU
Germany - RZG
Great Britain - PLI
Ireland - EBI
Israel - PD11
Italy - PFT
Japan - NTP
Netherlands - NVI
New Zealand - BW
Nordic Countries - TMI
South Africa - BVI
Spain - ICO
Switzerland - ISEL
United States - NM$
United States - TPI
Protein (kg)
Fat (kg)
Milk (kg)
Type
Longevity
Udder Health
Fertility
Others
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
New phenotypes should add information
low high
Genetic correlation with
existing traits
lowhigh
Phenotypiccorrelation
withexistingtraits
Novel phenotypes
include some
new information
Novel phenotypes
include much
new information
Novel phenotypes
contain some
new information
Novel phenotypes
contain little
new information
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Cost of measurement vs. value to farmers
low high
Cost of measurement
lowhigh
Valueofphenotype
(milk yield)
(greenhouse gas
emissions)
(feed intake)
(conformation)
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Some novel phenotypes studied recently
● Claw health (Van der Linde et al., 2010)
● Dairy cattle health (Parker Gaddis et al., 2013)
● Embryonic development (Cochran et al., 2013)
● Immune response (Thompson-Crispi et al., 2013)
● Methane production (de Haas et al., 2011)
● Milk fatty acid composition (Soyeurt et al., 2011)
● Persistency of lactation (Cole et al., 2009)
● Rectal temperature (Dikmen et al., 2013)
● Residual feed intake (Connor et al., 2013)
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
What do US dairy farmers want?
● National workshop in Tempe, AZ in
February
● Producers, industry, academia, and
government
● Farmers want new tools
● Additional traits (novel phenotypes)
● Better management tools
● Foot health and feed efficiency were of
greatest interest
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
What can farmers do with novel traits?
● Put them into a selection index
● Correlated traits are helpful
● Apply selection for a long time
● There are no shortcuts
● Collect phenotypes on many daughters
● Repeated records of limited value
● Genomics can increase accuracy
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Trait Bias*
Reliability
(%)
Reliability gain
(% points)
Milk (kg) −80.3 69.2 30.3
Fat (kg) −1.4 68.4 29.5
Protein (kg) −0.9 60.9 22.6
Fat (%) 0.0 93.7 54.8
Protein (%) 0.0 86.3 48.0
Productive life (mo) −0.7 73.7 41.6
Somatic cell score 0.0 64.9 29.3
Daughter pregnancy rate
(%)
0.2 53.5 20.9
Sire calving ease 0.6 45.8 19.6
Daughter calving ease −1.8 44.2 22.4
Sire stillbirth rate 0.2 28.2 5.9
Daughter stillbirth rate 0.1 37.6 17.9
Holstein prediction accuracy
*2013 deregressed value – 2009 genomic evaluation
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Constructing phenotypes from genotypes
● Prediction from correlated traits or
phenotypes from reference herds
● Haplotypes can be used when causal
variants are not known
● Causal variants can be used in place of
markers
● Specific combining abilities can combine
additive and dominance effects
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Genotypes are abundant
0
100000
200000
300000
400000
500000
600000
700000
800000
NumberofGenotypes
Run Date
Imputed, Young
Imputed, Old
<50k, Young, Female
<50k, Young, Male
<50k, Old, Female
<50k, Old, Male
50k, Young, Female
50k, Young, Male
50k, Old, Female
50k, Old, Male
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Example: Polled cattle
● Polled cattle have improved welfare and
increased economic value
● polled haplotypes have low frequencies:
0.41% in BS, 0.93% in HO, and 2.22% in JE
● Increasing haplotype frequency by index
selection requires known status for all
animals
● Estimate gene content (GC) for all non-
genotyped animals.
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Prediction of gene content
● The densefreq.f90 program (VanRaden)
was modified to use the methodology of
Gengler et al. (2007)
● Information from all genotyped relatives
used
● Gene content is real-valued and
continuous in the interval [0,2].
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Addition of polled to the Net Merit index
● $11.79 (€10.85) and $10.73 (€9.87) for
costs of dehorning and polled genetics,
respectively (Widmar et al., 2013)
● Haplotype count multiplied by $22.52
(€20.72) for genotyped animals
● Gene content multiplied by $22.52
(€20.72) for non-genotyped animals
● Rank correlations with 2014 NM$
compared for bulls and cows
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Validation of Jersey polled gene content
● Polled status from recessive codes and
animal names compared to GC for 1,615
non-genotyped JE with known status.
● 97% (n = 675) of pp animals correctly
assigned GC near 0
● Pp animals had GC near 0 (52%, n = 474)
and near 1 (47%; n = 433)
● All PP animals (n = 11) assigned GC of ~2.
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Reasons for variation in gene content
● The expectation for GC is near 1 for
heterozygotes
● GC can be <1 if many polled ancestors
have unknown status or when pedigree is
unknown
● In those cases GC may be set to twice the
allele frequency, which is low for polled
● Some animals with -P in the name may
actually be PP, not Pp
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Gene content for polled in Jerseys
MAF = 2.5%
pp Pp PP
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Jersey polled merit
Group N ρ
All animals 2,471,025 0.99997
All cows 2,436,439 0.99997
All bulls 34,586 0.99990
Young bulls (G status) 380 0.99787
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Validation of Holstein polled gene content
● Polled status from recessive codes and
animal names compared to GC for 1,615
non-genotyped JE with known status.
● 97% (n = 675) of pp animals correctly
assigned GC near 0
● Pp animals had GC near 0 (52%, n = 474)
and near 1 (47%; n = 433)
● All PP animals (n = 11) assigned GC of ~2.
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Allele content for polled in Holsteins
MAF = 1.07%
pp Pp PP
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Holstein polled merit
Group N ρ
All animals 29,010,457 0.99999
All cows 28,769,803 0.99999
All bulls 240,654 0.99994
Young bulls (G
status)
1,607 0.99966
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Allele content for DGAT1 in Jerseys
MAF = 47.9%
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Name Chrome Location (Mbp) Carrier Freq Earliest Known Ancestor
HH1 5 62-68 4.5 Pawnee Farm Arlinda Chief
HH2 1 93-98 4.6 Willowholme Mark Anthony
HH3 8 92-97 4.7 Glendell Arlinda Chief,
Gray View Skyliner
HH4 1 1.2-1.3 0.37 Besne Buck
HH5 9 92-94 2.22 Thornlea Texal Supreme
JH1 15 11-16 23.4 Observer Chocolate Soldier
BH1 7 42-47 14.0 West Lawn Stretch Improver
BH2 19 10-12 7.78 Rancho Rustic My Design
AH1 17 65.9-66.2 26.1 Selwood Betty’s Commander
Other phenotypes may come from genotypes
For a complete list, see: http://aipl.arsusda.gov/reference/recessive_haplotypes_ARR-G3.html.
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Conclusions
• New technology is enabling the collection
of novel phenotypes
• Genotypes are now routinely available for
young animals
• High-density SNP genotypes can be used to
construct phenotypes directly
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Acknowledgments
• Dan Null and Paul VanRaden, AGIL
• Chuanyu Sun, Sexing Technologies
• AFRI grant 1245-31000-101-05, “Improving
Fertility of Dairy Cattle Using Translational
Genomics”
Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole
Questions?
http://gigaom.com/2012/05/31/t-mobile-pits-its-math-against-verizons-the-loser-common-sense/shutterstock_76826245/

Contenu connexe

Tendances

Tendances (20)

Genomic Selection in Dairy Cattle
Genomic Selection in Dairy CattleGenomic Selection in Dairy Cattle
Genomic Selection in Dairy Cattle
 
Genomic selection and systems biology – lessons from dairy cattle breeding
Genomic selection and systems biology – lessons from dairy cattle breedingGenomic selection and systems biology – lessons from dairy cattle breeding
Genomic selection and systems biology – lessons from dairy cattle breeding
 
New Tools for Genomic Selection of Livestock
New Tools for Genomic Selection of LivestockNew Tools for Genomic Selection of Livestock
New Tools for Genomic Selection of Livestock
 
New tools for genomic selection in dairy cattle
New tools for genomic selection in dairy cattleNew tools for genomic selection in dairy cattle
New tools for genomic selection in dairy cattle
 
Ai manual chapter 13
Ai manual chapter 13Ai manual chapter 13
Ai manual chapter 13
 
Genomics Beyond EBVs
Genomics Beyond EBVsGenomics Beyond EBVs
Genomics Beyond EBVs
 
Ecogen2013
Ecogen2013Ecogen2013
Ecogen2013
 
Heat tolerance, real-life genomics and GxE issues
Heat tolerance, real-life genomics and GxE issuesHeat tolerance, real-life genomics and GxE issues
Heat tolerance, real-life genomics and GxE issues
 
From contemporary comparison to genomic selection: Trends in the principles f...
From contemporary comparison to genomic selection: Trends in the principles f...From contemporary comparison to genomic selection: Trends in the principles f...
From contemporary comparison to genomic selection: Trends in the principles f...
 
How the goat industry can benefit from NSIP
How the goat industry can benefit from NSIPHow the goat industry can benefit from NSIP
How the goat industry can benefit from NSIP
 
ESTIMATES OF HERITABILITY AND BREEDING VALUES FOR GROWTH TRAITS IN MADURA CAT...
ESTIMATES OF HERITABILITY AND BREEDING VALUES FOR GROWTH TRAITS IN MADURA CAT...ESTIMATES OF HERITABILITY AND BREEDING VALUES FOR GROWTH TRAITS IN MADURA CAT...
ESTIMATES OF HERITABILITY AND BREEDING VALUES FOR GROWTH TRAITS IN MADURA CAT...
 
New applications of genomic technology in the US dairy industry
New applications of genomic technology in the US dairy industryNew applications of genomic technology in the US dairy industry
New applications of genomic technology in the US dairy industry
 
Using DNA on your farm to select more profitable cattle
Using DNA on your farm to select more profitable cattleUsing DNA on your farm to select more profitable cattle
Using DNA on your farm to select more profitable cattle
 
Applications of haplotypes in dairy farm management
Applications of haplotypes in dairy farm managementApplications of haplotypes in dairy farm management
Applications of haplotypes in dairy farm management
 
The Value Of Genomic Predictions in Beef Cattle
The Value Of Genomic Predictions in Beef CattleThe Value Of Genomic Predictions in Beef Cattle
The Value Of Genomic Predictions in Beef Cattle
 
Dr. Jeff Zimmerman - Things your epidemiologist never told your about surveil...
Dr. Jeff Zimmerman - Things your epidemiologist never told your about surveil...Dr. Jeff Zimmerman - Things your epidemiologist never told your about surveil...
Dr. Jeff Zimmerman - Things your epidemiologist never told your about surveil...
 
Advanced genetics
Advanced geneticsAdvanced genetics
Advanced genetics
 
Fine-mapping of QTL using high-density SNP genotypes
Fine-mapping of QTL using high-density SNP genotypesFine-mapping of QTL using high-density SNP genotypes
Fine-mapping of QTL using high-density SNP genotypes
 
Performance evaluation
Performance evaluationPerformance evaluation
Performance evaluation
 
Estimation of Stillbirth (Co)variance Components and Development of a Calving...
Estimation of Stillbirth (Co)variance Components and Development of a Calving...Estimation of Stillbirth (Co)variance Components and Development of a Calving...
Estimation of Stillbirth (Co)variance Components and Development of a Calving...
 

Similaire à Using genotypes to construct phenotypes for dairy cattle breeding programs and beyond

Phenotypes for novel functional traits of dairy cattle
Phenotypes for novel functional traits of dairy cattlePhenotypes for novel functional traits of dairy cattle
Phenotypes for novel functional traits of dairy cattle
John B. Cole, Ph.D.
 

Similaire à Using genotypes to construct phenotypes for dairy cattle breeding programs and beyond (20)

Phenotypes for novel functional traits of dairy cattle
Phenotypes for novel functional traits of dairy cattlePhenotypes for novel functional traits of dairy cattle
Phenotypes for novel functional traits of dairy cattle
 
CBGW Brian Van Doormaal
CBGW Brian Van DoormaalCBGW Brian Van Doormaal
CBGW Brian Van Doormaal
 
Senegal dairy genetics / Sénégal génétique laitière
Senegal dairy genetics / Sénégal génétique laitièreSenegal dairy genetics / Sénégal génétique laitière
Senegal dairy genetics / Sénégal génétique laitière
 
Developing innovative digital technology and genomic approaches to livestock ...
Developing innovative digital technology and genomic approaches to livestock ...Developing innovative digital technology and genomic approaches to livestock ...
Developing innovative digital technology and genomic approaches to livestock ...
 
topigs balanced breeding presentation vietnam
topigs balanced breeding presentation vietnamtopigs balanced breeding presentation vietnam
topigs balanced breeding presentation vietnam
 
Moving beyond estrus detection
Moving beyond estrus detectionMoving beyond estrus detection
Moving beyond estrus detection
 
Portugal workshop ODMV April 2018 Lisbon
Portugal workshop ODMV April 2018 LisbonPortugal workshop ODMV April 2018 Lisbon
Portugal workshop ODMV April 2018 Lisbon
 
Inspection of the imported food products and internally produced food product...
Inspection of the imported food products and internally produced food product...Inspection of the imported food products and internally produced food product...
Inspection of the imported food products and internally produced food product...
 
Precision Dairy Monitoring Opportunities and Challenges
Precision Dairy Monitoring Opportunities and ChallengesPrecision Dairy Monitoring Opportunities and Challenges
Precision Dairy Monitoring Opportunities and Challenges
 
02 henry too
02 henry too02 henry too
02 henry too
 
Herd Evaluation in ET in Alpacas
Herd Evaluation in ET in AlpacasHerd Evaluation in ET in Alpacas
Herd Evaluation in ET in Alpacas
 
2017 11-28 European Alliance for Personalised Medicine Congressm 2017, Belfas...
2017 11-28 European Alliance for Personalised Medicine Congressm 2017, Belfas...2017 11-28 European Alliance for Personalised Medicine Congressm 2017, Belfas...
2017 11-28 European Alliance for Personalised Medicine Congressm 2017, Belfas...
 
Potential application of lessons from dairy genetics into beef: Lessons from ...
Potential application of lessons from dairy genetics into beef: Lessons from ...Potential application of lessons from dairy genetics into beef: Lessons from ...
Potential application of lessons from dairy genetics into beef: Lessons from ...
 
Animal species specific quantification of gelatin with TrustGel
Animal species specific quantification of gelatin with TrustGelAnimal species specific quantification of gelatin with TrustGel
Animal species specific quantification of gelatin with TrustGel
 
Phenotypic and genetic characterization of local chicken ecotypes in Ethiopia
Phenotypic and genetic characterization of local chicken ecotypes in Ethiopia Phenotypic and genetic characterization of local chicken ecotypes in Ethiopia
Phenotypic and genetic characterization of local chicken ecotypes in Ethiopia
 
Dairy productioncostinpakistan2019
Dairy productioncostinpakistan2019Dairy productioncostinpakistan2019
Dairy productioncostinpakistan2019
 
Foot and mouth disease in the Borana Plateau of Ethiopia: Vaccination benefit...
Foot and mouth disease in the Borana Plateau of Ethiopia: Vaccination benefit...Foot and mouth disease in the Borana Plateau of Ethiopia: Vaccination benefit...
Foot and mouth disease in the Borana Plateau of Ethiopia: Vaccination benefit...
 
Banks nsip
Banks nsipBanks nsip
Banks nsip
 
Charmley Activity data collection livestock systems Nov 10 2014
Charmley Activity data collection livestock systems Nov 10 2014Charmley Activity data collection livestock systems Nov 10 2014
Charmley Activity data collection livestock systems Nov 10 2014
 
Automatisation of insect farming - Wouters, VIVES
Automatisation of insect farming - Wouters, VIVESAutomatisation of insect farming - Wouters, VIVES
Automatisation of insect farming - Wouters, VIVES
 

Plus de John B. Cole, Ph.D.

Opportunities for genetic improvement of health and fitness traits
Opportunities for genetic improvement of health and fitness traitsOpportunities for genetic improvement of health and fitness traits
Opportunities for genetic improvement of health and fitness traits
John B. Cole, Ph.D.
 
Use of NGS to identify the causal variant associated with a complex phenotype
Use of NGS to identify the causal variant associated with a complex phenotypeUse of NGS to identify the causal variant associated with a complex phenotype
Use of NGS to identify the causal variant associated with a complex phenotype
John B. Cole, Ph.D.
 
Genomic evaluation of dairy cattle health
Genomic evaluation of dairy cattle healthGenomic evaluation of dairy cattle health
Genomic evaluation of dairy cattle health
John B. Cole, Ph.D.
 

Plus de John B. Cole, Ph.D. (15)

The hunt for a functional mutation affecting conformation and calving traits ...
The hunt for a functional mutation affecting conformation and calving traits ...The hunt for a functional mutation affecting conformation and calving traits ...
The hunt for a functional mutation affecting conformation and calving traits ...
 
An updated version of lifetime net merit incorporating additional fertility t...
An updated version of lifetime net merit incorporating additional fertility t...An updated version of lifetime net merit incorporating additional fertility t...
An updated version of lifetime net merit incorporating additional fertility t...
 
An updated version of lifetime net merit incorporating additional fertility t...
An updated version of lifetime net merit incorporating additional fertility t...An updated version of lifetime net merit incorporating additional fertility t...
An updated version of lifetime net merit incorporating additional fertility t...
 
Genetic Evaluation of Stillbirth in US Holsteins Using a Sire-maternal Grands...
Genetic Evaluation of Stillbirth in US Holsteins Using a Sire-maternal Grands...Genetic Evaluation of Stillbirth in US Holsteins Using a Sire-maternal Grands...
Genetic Evaluation of Stillbirth in US Holsteins Using a Sire-maternal Grands...
 
Stillbirth, Longevity and Fertility Update
Stillbirth, Longevity and Fertility UpdateStillbirth, Longevity and Fertility Update
Stillbirth, Longevity and Fertility Update
 
Opportunities for genetic improvement of health and fitness traits
Opportunities for genetic improvement of health and fitness traitsOpportunities for genetic improvement of health and fitness traits
Opportunities for genetic improvement of health and fitness traits
 
Use of NGS to identify the causal variant associated with a complex phenotype
Use of NGS to identify the causal variant associated with a complex phenotypeUse of NGS to identify the causal variant associated with a complex phenotype
Use of NGS to identify the causal variant associated with a complex phenotype
 
Genomic evaluation of dairy cattle health
Genomic evaluation of dairy cattle healthGenomic evaluation of dairy cattle health
Genomic evaluation of dairy cattle health
 
Uso e valore economico dei test genomici in azienda
Uso e valore economico dei test genomici in aziendaUso e valore economico dei test genomici in azienda
Uso e valore economico dei test genomici in azienda
 
Genomic evaluation of low-heritability traits: dairy cattle health as a model
Genomic evaluation of low-heritability traits: dairy cattle health as a modelGenomic evaluation of low-heritability traits: dairy cattle health as a model
Genomic evaluation of low-heritability traits: dairy cattle health as a model
 
PyPedal, an open source software package for pedigree analysis
PyPedal, an open source software package for pedigree analysisPyPedal, an open source software package for pedigree analysis
PyPedal, an open source software package for pedigree analysis
 
What can we do with dairy cattle genomics other than predict more accurate br...
What can we do with dairy cattle genomics other than predict more accurate br...What can we do with dairy cattle genomics other than predict more accurate br...
What can we do with dairy cattle genomics other than predict more accurate br...
 
Distribution and Location of Genetic Effects for Dairy Traits
Distribution and Location of Genetic Effects for Dairy TraitsDistribution and Location of Genetic Effects for Dairy Traits
Distribution and Location of Genetic Effects for Dairy Traits
 
Validation of Producer-Recorded Health Event Data and Use in Genetic Improvem...
Validation of Producer-Recorded Health Event Data and Use in Genetic Improvem...Validation of Producer-Recorded Health Event Data and Use in Genetic Improvem...
Validation of Producer-Recorded Health Event Data and Use in Genetic Improvem...
 
Genetic Evaluation of Calving Traits in US Holsteins
Genetic Evaluation of Calving Traits in US HolsteinsGenetic Evaluation of Calving Traits in US Holsteins
Genetic Evaluation of Calving Traits in US Holsteins
 

Dernier

Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Sérgio Sacani
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
PirithiRaju
 
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
ssuser79fe74
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
PirithiRaju
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and Classifications
Areesha Ahmad
 

Dernier (20)

9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
 
Nanoparticles synthesis and characterization​ ​
Nanoparticles synthesis and characterization​  ​Nanoparticles synthesis and characterization​  ​
Nanoparticles synthesis and characterization​ ​
 
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43bNightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
Nightside clouds and disequilibrium chemistry on the hot Jupiter WASP-43b
 
High Class Escorts in Hyderabad ₹7.5k Pick Up & Drop With Cash Payment 969456...
High Class Escorts in Hyderabad ₹7.5k Pick Up & Drop With Cash Payment 969456...High Class Escorts in Hyderabad ₹7.5k Pick Up & Drop With Cash Payment 969456...
High Class Escorts in Hyderabad ₹7.5k Pick Up & Drop With Cash Payment 969456...
 
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
 
GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)
 
Kochi ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Kochi ESCORT SERVICE❤CALL GIRL
Kochi ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Kochi ESCORT SERVICE❤CALL GIRLKochi ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Kochi ESCORT SERVICE❤CALL GIRL
Kochi ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Kochi ESCORT SERVICE❤CALL GIRL
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
 
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
 
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
Chemical Tests; flame test, positive and negative ions test Edexcel Internati...
 
GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdf
 
American Type Culture Collection (ATCC).pptx
American Type Culture Collection (ATCC).pptxAmerican Type Culture Collection (ATCC).pptx
American Type Culture Collection (ATCC).pptx
 
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICESAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICE
 
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdfPests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
Pests of cotton_Borer_Pests_Binomics_Dr.UPR.pdf
 
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verifiedConnaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
 
Bacterial Identification and Classifications
Bacterial Identification and ClassificationsBacterial Identification and Classifications
Bacterial Identification and Classifications
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)
 
module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learning
 

Using genotypes to construct phenotypes for dairy cattle breeding programs and beyond

  • 1. John B. Cole Animal Genomics and Improvement Laboratory Agricultural Research Service, USDA Beltsville, MD 20705-2350 john.cole@ars.usda.gov 2015 Using genotypes to construct phenotypes for dairy cattle breeding programs and beyond
  • 2. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Why do we need new phenotypes? ● Changes in production economics ● Technology enables collection of new phenotypes ● Better understanding of biology ● Recent review by Egger-Danner et al. (2015) in Animal
  • 3. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Source: Miglior et al. (2012) Selection indices now include many traits 0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% Australia - APR Belgium (Walloon) - V€G Canada - LPI France - ISU Germany - RZG Great Britain - PLI Ireland - EBI Israel - PD11 Italy - PFT Japan - NTP Netherlands - NVI New Zealand - BW Nordic Countries - TMI South Africa - BVI Spain - ICO Switzerland - ISEL United States - NM$ United States - TPI Protein (kg) Fat (kg) Milk (kg) Type Longevity Udder Health Fertility Others
  • 4. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole New phenotypes should add information low high Genetic correlation with existing traits lowhigh Phenotypiccorrelation withexistingtraits Novel phenotypes include some new information Novel phenotypes include much new information Novel phenotypes contain some new information Novel phenotypes contain little new information
  • 5. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Cost of measurement vs. value to farmers low high Cost of measurement lowhigh Valueofphenotype (milk yield) (greenhouse gas emissions) (feed intake) (conformation)
  • 6. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Some novel phenotypes studied recently ● Claw health (Van der Linde et al., 2010) ● Dairy cattle health (Parker Gaddis et al., 2013) ● Embryonic development (Cochran et al., 2013) ● Immune response (Thompson-Crispi et al., 2013) ● Methane production (de Haas et al., 2011) ● Milk fatty acid composition (Soyeurt et al., 2011) ● Persistency of lactation (Cole et al., 2009) ● Rectal temperature (Dikmen et al., 2013) ● Residual feed intake (Connor et al., 2013)
  • 7. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole What do US dairy farmers want? ● National workshop in Tempe, AZ in February ● Producers, industry, academia, and government ● Farmers want new tools ● Additional traits (novel phenotypes) ● Better management tools ● Foot health and feed efficiency were of greatest interest
  • 8. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole What can farmers do with novel traits? ● Put them into a selection index ● Correlated traits are helpful ● Apply selection for a long time ● There are no shortcuts ● Collect phenotypes on many daughters ● Repeated records of limited value ● Genomics can increase accuracy
  • 9. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Trait Bias* Reliability (%) Reliability gain (% points) Milk (kg) −80.3 69.2 30.3 Fat (kg) −1.4 68.4 29.5 Protein (kg) −0.9 60.9 22.6 Fat (%) 0.0 93.7 54.8 Protein (%) 0.0 86.3 48.0 Productive life (mo) −0.7 73.7 41.6 Somatic cell score 0.0 64.9 29.3 Daughter pregnancy rate (%) 0.2 53.5 20.9 Sire calving ease 0.6 45.8 19.6 Daughter calving ease −1.8 44.2 22.4 Sire stillbirth rate 0.2 28.2 5.9 Daughter stillbirth rate 0.1 37.6 17.9 Holstein prediction accuracy *2013 deregressed value – 2009 genomic evaluation
  • 10. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Constructing phenotypes from genotypes ● Prediction from correlated traits or phenotypes from reference herds ● Haplotypes can be used when causal variants are not known ● Causal variants can be used in place of markers ● Specific combining abilities can combine additive and dominance effects
  • 11. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Genotypes are abundant 0 100000 200000 300000 400000 500000 600000 700000 800000 NumberofGenotypes Run Date Imputed, Young Imputed, Old <50k, Young, Female <50k, Young, Male <50k, Old, Female <50k, Old, Male 50k, Young, Female 50k, Young, Male 50k, Old, Female 50k, Old, Male
  • 12. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Example: Polled cattle ● Polled cattle have improved welfare and increased economic value ● polled haplotypes have low frequencies: 0.41% in BS, 0.93% in HO, and 2.22% in JE ● Increasing haplotype frequency by index selection requires known status for all animals ● Estimate gene content (GC) for all non- genotyped animals.
  • 13. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Prediction of gene content ● The densefreq.f90 program (VanRaden) was modified to use the methodology of Gengler et al. (2007) ● Information from all genotyped relatives used ● Gene content is real-valued and continuous in the interval [0,2].
  • 14. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Addition of polled to the Net Merit index ● $11.79 (€10.85) and $10.73 (€9.87) for costs of dehorning and polled genetics, respectively (Widmar et al., 2013) ● Haplotype count multiplied by $22.52 (€20.72) for genotyped animals ● Gene content multiplied by $22.52 (€20.72) for non-genotyped animals ● Rank correlations with 2014 NM$ compared for bulls and cows
  • 15. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Validation of Jersey polled gene content ● Polled status from recessive codes and animal names compared to GC for 1,615 non-genotyped JE with known status. ● 97% (n = 675) of pp animals correctly assigned GC near 0 ● Pp animals had GC near 0 (52%, n = 474) and near 1 (47%; n = 433) ● All PP animals (n = 11) assigned GC of ~2.
  • 16. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Reasons for variation in gene content ● The expectation for GC is near 1 for heterozygotes ● GC can be <1 if many polled ancestors have unknown status or when pedigree is unknown ● In those cases GC may be set to twice the allele frequency, which is low for polled ● Some animals with -P in the name may actually be PP, not Pp
  • 17. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Gene content for polled in Jerseys MAF = 2.5% pp Pp PP
  • 18. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Jersey polled merit Group N ρ All animals 2,471,025 0.99997 All cows 2,436,439 0.99997 All bulls 34,586 0.99990 Young bulls (G status) 380 0.99787
  • 19. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Validation of Holstein polled gene content ● Polled status from recessive codes and animal names compared to GC for 1,615 non-genotyped JE with known status. ● 97% (n = 675) of pp animals correctly assigned GC near 0 ● Pp animals had GC near 0 (52%, n = 474) and near 1 (47%; n = 433) ● All PP animals (n = 11) assigned GC of ~2.
  • 20. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Allele content for polled in Holsteins MAF = 1.07% pp Pp PP
  • 21. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Holstein polled merit Group N ρ All animals 29,010,457 0.99999 All cows 28,769,803 0.99999 All bulls 240,654 0.99994 Young bulls (G status) 1,607 0.99966
  • 22. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Allele content for DGAT1 in Jerseys MAF = 47.9%
  • 23. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Name Chrome Location (Mbp) Carrier Freq Earliest Known Ancestor HH1 5 62-68 4.5 Pawnee Farm Arlinda Chief HH2 1 93-98 4.6 Willowholme Mark Anthony HH3 8 92-97 4.7 Glendell Arlinda Chief, Gray View Skyliner HH4 1 1.2-1.3 0.37 Besne Buck HH5 9 92-94 2.22 Thornlea Texal Supreme JH1 15 11-16 23.4 Observer Chocolate Soldier BH1 7 42-47 14.0 West Lawn Stretch Improver BH2 19 10-12 7.78 Rancho Rustic My Design AH1 17 65.9-66.2 26.1 Selwood Betty’s Commander Other phenotypes may come from genotypes For a complete list, see: http://aipl.arsusda.gov/reference/recessive_haplotypes_ARR-G3.html.
  • 24. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Conclusions • New technology is enabling the collection of novel phenotypes • Genotypes are now routinely available for young animals • High-density SNP genotypes can be used to construct phenotypes directly
  • 25. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Acknowledgments • Dan Null and Paul VanRaden, AGIL • Chuanyu Sun, Sexing Technologies • AFRI grant 1245-31000-101-05, “Improving Fertility of Dairy Cattle Using Translational Genomics”
  • 26. Final OptiMIR Scientific and Expert Meeting, Namur, Belgium, April 17, 2015 (‹#›) Cole Questions? http://gigaom.com/2012/05/31/t-mobile-pits-its-math-against-verizons-the-loser-common-sense/shutterstock_76826245/