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Using	
  Genomic	
  Selec.on	
  in	
  Barley	
  to	
  
Improve	
  Disease	
  Resistance	
  
Kevin	
  P.	
  Smith,	
  Vikas	
  Vikram,	
  Ahmad	
  Sallam,	
  Aaron	
  Lorenz,	
  
Jean-­‐Luc	
  Jannink,	
  Jeffrey	
  Endleman,	
  Richard	
  Horsley,	
  Shiaoman	
  
Chao,	
  and	
  Brian	
  Steffenson	
  	
  
Genomic	
  Selec.on	
  
Training	
  populaGon	
  
Line	
  1	
   76	
   1	
   1	
   1	
  
Line	
  2	
   56	
   1	
   1	
   1	
  
Line	
  3	
   45	
   1	
   1	
   1	
  
Line	
  4	
   67	
   0	
   1	
   0	
  
Line	
  n	
   22	
   1	
   1	
   1	
  
	
  	
  Line	
  	
  	
  	
  	
  	
  	
  	
  	
  Yield	
  	
  	
  	
  Mrk	
  1	
  	
  Mrk	
  2	
  …	
  	
  	
  	
  	
  	
  	
  Mrk	
  p	
  
…	
  
Model	
  training	
  
SelecGon	
  candidates	
  
Line	
  A	
   1	
   1	
   1	
  
Line	
  B	
   1	
   1	
   1	
  
Line	
  C	
   1	
   1	
   1	
  
Line	
  D	
   0	
   1	
   0	
  
Line	
  n	
   1	
   1	
   1	
  
	
  	
  Line	
  	
  	
  	
  	
  	
  	
  	
  	
  Yield	
  	
  	
  	
  Mrk	
  1	
  	
  Mrk	
  2	
  	
  	
  …	
  	
  	
  	
  	
  Mrk	
  p	
  
…	
  
Parent	
  selecGon	
  
Line	
  A	
   80	
   1	
   1	
   1	
  
Line	
  B	
   67	
   1	
   1	
   1	
  
Line	
  C	
   56	
   1	
   1	
   1	
  
Line	
  D	
   89	
   0	
   1	
   0	
  
Line	
  n	
   23	
   1	
   1	
   1	
  
Line	
  	
  	
  	
  	
  	
  GEBV	
  	
  	
  	
  	
  Mrk	
  1	
  	
  Mrk	
  2	
  	
  …	
  	
  	
  	
  Mrk	
  p	
  
…	
  
Basic	
  framework	
  
GEBV	
  =	
  genomic	
  es.mated	
  breeding	
  value	
  
PredicGon	
  
	
  
	
  
1
ˆ
p
i j i j
j
GEBV b x
=
= ∑1
p
i j i j
j
y b x
=
= ∑
R/T	
  =	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  i	
  r	
  ∂A	
  
Gain per
Year
Selection
Intensity
Accuracy
Genetic
Variance
# Breeding
Cycles
Year
	
  	
  	
  	
  	
  	
  	
  	
  	
  Crossing	
  
1	
  	
  	
  	
  	
  	
  	
  F1	
  
	
  	
  	
  	
  	
  	
  	
  	
  	
  F2	
  
	
  	
  	
  	
  	
  	
  	
  	
  	
  F3	
  
2	
  	
  	
  	
  	
  	
  	
  F4	
  
	
  	
  	
  	
  	
  	
  	
  	
  	
  F5	
  Head	
  Rows	
  
3	
  	
  	
  	
  	
  	
  	
  1st	
  Year	
  Yield	
  
4	
  	
  	
  	
  	
  	
  	
  2nd	
  Year	
  Yield	
  
5	
  	
  	
  	
  	
  	
  	
  3rd	
  Year	
  Yield	
  
6	
  	
  	
  	
  	
  	
  	
  Regional/Industry	
  
7	
  	
  	
  	
  	
  	
  	
  Regional	
  Industry	
  
8	
  	
  	
  	
  	
  	
  	
  Variety	
  Release	
  
	
  
Genomic	
  Selec,on	
  Improves	
  Gain	
  per	
  Time	
  
Barley	
  Predic.on	
  Data	
  Sets	
  
USDA Regional Genotyping Centers
Fargo
Triticeae Toolbox http://
triticeaetoolbox.org/
SNP Map Ten U.S. Barley Breeding Programs
Fargo,	
  ND	
  
Raleigh,	
  NC	
  
Manha[an,	
  KS	
  
Pullman,	
  WA	
  
Assessing	
  Predic.on	
  Accuracy	
  
Training	
  
PredicGon	
   Sub-­‐sample	
  	
  
Single	
  Data	
  Set	
  
Dis.nct	
  Training	
  and	
  	
  
Predic.on	
  Data	
  Sets	
  
Training	
  =	
  Parents	
  
Predic.on	
  =	
  Progeny	
  
CROSS	
  VALIDATION	
  
INTER-­‐SET	
  VALIDATION	
  
PROGENY	
  VALIDATION	
  
RelaGve	
  Accuracy	
  =	
  CorrelaGon	
  (GEBV,	
  Observed)/Sqrt(Heritability)	
  
Fusarium	
  Head	
  Blight	
  	
  (FHB)	
  
Another	
  challenging	
  disease	
  in	
  Barley	
  
Major	
  outbreak	
  in	
  Midwest	
  U.S.	
  in	
  1993	
  
Mycotoxin	
  deoxynivalenol	
  (DON)	
  
Sources	
  of	
  resistance	
  are	
  unadapted	
  
Quan.ta.vely	
  inherited	
  resistance	
  
Many	
  QTL	
  with	
  small	
  effects	
  
Challenging	
  to	
  phenotype	
  
Barley	
  CAP	
  	
  
FHB	
  Six-­‐row	
  Midwest	
  Data	
  Set	
  
	
  
896	
  six-­‐row	
  lines	
  
3,072	
  SNPs	
  
Mean	
  of	
  4	
  trials	
  
Evaluated	
  over	
  4	
  years	
  
Busch	
  Agriculture	
  
BA	
  
U.	
  Minnesota	
  
UM	
  
North	
  Dakota	
  State	
  
ND	
  
CAP	
  I	
  
CAP	
  II	
  
CAP	
  III	
  
CAP	
  IV	
  
96	
  
96	
  
96	
  
96	
  
32	
  
32	
  
32	
  
32	
  
96	
  
96	
  
96	
  
96	
  
Training	
  Panel	
  and	
  Marker	
  Set	
  Size	
  
Lorenz	
  et	
  al.,	
  2012	
  
Training	
  Pop	
  =	
  200;	
  384	
  Markers	
  
Cross	
  and	
  Inter-­‐Set	
  ValidaGon	
  
Training	
  
PopulaGon	
  	
  
POP1	
  	
  	
  	
  
POP2	
  	
  	
  	
  
	
  
POP1	
  	
  	
  	
  
POP2	
  	
  	
  	
  
POP1	
  +	
  POP2	
  
POP1	
  +	
  POP2	
  
ValidaGon	
  
PopulaGon	
  
POP1	
  
POP2	
  
	
  
POP2	
  
POP1	
  
POP1	
  
POP2	
  
RelaGve	
  	
  
Accuracy	
  
0.78	
  
0.56	
  
	
  
0.38	
  
0.24	
  
0.65	
  
0.68	
  
UM	
  	
  	
  	
  	
  	
  	
  	
  BA	
  	
  	
  	
  	
  	
  	
  	
  	
  ND	
  
Lorenz	
  et	
  al.,	
  2012	
  
UM	
  –	
  ND	
  CollaboraGve	
  Breeding	
  
UM	
   ND	
  
480	
   480	
   480	
  
21	
  Parents	
  
Random	
  Progeny	
  
100	
   100	
   100	
  
UM	
  x	
  UM	
   UM	
  x	
  ND	
   ND	
  x	
  ND	
  
Progeny	
  ValidaGon	
  
Progeny	
  	
  
Panel	
  
UM	
  x	
  UM	
  
ND	
  x	
  ND	
  
UM	
  x	
  UM	
  
ND	
  x	
  ND	
  
UM	
  x	
  UM	
  
ND	
  x	
  ND	
  
UM	
  x	
  ND	
  
Training	
  
anel	
  
POP1	
  
POP1	
  
POP2	
  
POP2	
  
POP1	
  +	
  POP2	
  
POP1	
  +	
  POP2	
  
POP1	
  +	
  POP2	
  
RelaGve	
  
Accuracy	
  
0.58	
  
0.07	
  
0.26	
  
0.48	
  
0.56	
  
0.40	
  
0.35	
  
Cross	
  ValidaGon	
  
Accuracy	
  
0.78	
  
0.38	
  
0.24	
  
0.56	
  
0.65	
  
0.68	
  
Vikram	
  et	
  al.,	
  in	
  prep.	
  
UM	
  –	
  ND	
  Breeding	
  Lines	
  
UM	
   ND	
  
480	
   480	
   480	
  
21	
  Parents	
  
Random	
  Progeny	
  
100	
   100	
   100	
  89	
  
UM	
  Phenotypic	
  SelecGon	
  
89	
  
CAP	
  Training	
  Panel	
  
384	
  SNP	
  markers	
  
DON	
  and	
  Yield	
  
2	
  Loca.on	
  /	
  2	
  Rep	
  
FHB	
  and	
  DON	
  
Gain	
  from	
  SelecGon	
  for	
  DON	
  (Cycle	
  1)	
  
0	
  
50	
  
100	
  
0.4	
  0.6	
  0.8	
  1.0	
  1.2	
  1.4	
  1.6	
  1.8	
  2.0	
  2.2	
  2.4	
  2.6	
  2.8	
  3.0	
  
0	
  
20	
  
40	
  
0.4	
  0.6	
  0.8	
  1.0	
  1.2	
  1.4	
  1.6	
  1.8	
  2.0	
  2.2	
  2.4	
  2.6	
  2.8	
  3.0	
  
Genomic	
  Selec.on	
  
Random	
  Selec.on	
  
0	
  
20	
  
40	
  
0.4	
  0.6	
  0.8	
  1.0	
  1.2	
  1.4	
  1.6	
  1.8	
  2.0	
  2.2	
  2.4	
  2.6	
  2.8	
  3.0	
  
Phenotypic	
  Selec.on	
  
Vulnerability	
  of	
  Barley	
  to	
  Race	
  TTKSK	
  	
  
•  Over	
  2,800	
  Hordeum	
  accessions	
  
evaluated	
  as	
  seedlings	
  &	
  adults	
  	
  
•  More	
  than	
  97%	
  were	
  suscep.ble	
  
including	
  those	
  carrying	
  Rpg1	
  
Genetics of Resistance to Race TTKSK
•  Six diverse resistant Hordeum
accessions were subject to
genetic analysis
•  All were found to carry rpg4/
Rpg5 complex, the only major
genes known to confer
resistance to TTKSK
•  Further highlights the extreme
vulnerability of barley
Univ.	
  Minnesota	
  
North	
  Dakota	
  State	
  (2-­‐row)	
  
North	
  Dakota	
  State	
  (6-­‐row)	
  
Washington	
  State	
  
Montana	
  State	
  
USDA	
  –	
  Idaho	
  
Utah	
  State	
  
Busch	
  Agriculture	
  
8	
  Spring	
  Barley	
  Breeding	
  Programs	
  
Screened	
  in	
  Kenya	
  for	
  Ug99	
  
CAP	
  I	
  
CAP	
  II	
  
CAP	
  III	
  
CAP	
  IV	
  
	
  
Screened	
  in	
  2010	
  
	
  
Screened	
  in	
  2011	
  
	
  
Barley	
  CAP	
  	
  
Spring	
  Barley	
  Adult	
  Stem	
  Rust	
  (TTKSK)	
  Data	
  Set	
  
	
  
Barley	
  CAP	
  	
  
Mapping	
  and	
  Breeding	
  Infrastructure	
  
	
  
University	
  of	
  Minnesota	
  
	
  Breeding	
  Program	
  
U.	
  Minnesota	
  
UM	
  
CAP	
  I	
  
CAP	
  II	
  
CAP	
  III	
  
CAP	
  IV	
  
	
  
192	
  lines	
  
	
  
192	
  lines	
  
	
  
Kenya	
  Adult	
  Plant	
  Screening	
  for	
  UM	
  
Breeding	
  Lines	
  
0	
  
20	
  
40	
  
60	
  
80	
  
100	
  
0	
   10	
  20	
  30	
  40	
  50	
  60	
  70	
  
0	
  
50	
  
100	
  
150	
  
200	
  
S	
   MS	
   MR	
   R	
  
InfecGon	
  Type	
   Disease	
  Severity	
  
Kenya	
  Adult	
  Plant	
  Screening	
  for	
  UM	
  
Breeding	
  Lines	
  
Inter-­‐Set	
  Valida.on	
  
	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  Rela.ve	
  
Training	
  	
  	
  	
  Predic.on	
  	
  	
  	
  Accuracy	
  
I	
  &	
  II	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  III	
  &	
  IV	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  0.28	
  
III	
  &	
  IV	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  I	
  &	
  II	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  0.29	
  
Expand	
  Training	
  PopulaGon	
  and	
  
Parents	
  	
  
0	
  
20	
  
40	
  
60	
  
80	
  
100	
  
0	
   10	
  20	
  30	
  40	
  50	
  60	
  70	
  
CAP	
  III	
  and	
  IV	
  All	
  Programs	
   CAP	
  MN	
  Only	
  
0	
  
200	
  
400	
  
600	
  
0	
   10	
  20	
  30	
  40	
  50	
  60	
  70	
  80	
  
Summary	
  
Reasonable	
  rela.ve	
  accuracies	
  (>0.50)	
  possible	
  with:	
  
	
  	
  	
  	
  	
  	
  	
  	
  Training	
  panels	
  of	
  200	
  individuals	
  
	
  	
  	
  	
  	
  	
  	
  	
  384	
  SNP	
  markers	
  
	
  	
  	
  	
  	
  	
  	
  	
  “Relevant”	
  training	
  popula.ons	
  
Good	
  predic.on	
  accuracy	
  seems	
  to	
  translate	
  into	
  gain	
  from	
  
selec.on	
  
GS	
  takes	
  into	
  account	
  mul.ple	
  traits	
  in	
  addi.on	
  to	
  disease	
  
resistance.	
  
GS	
  for	
  adult	
  plant	
  stem	
  rust	
  resistance	
  in	
  elite	
  germplasm	
  
could	
  complement	
  deployment	
  of	
  major	
  genes.	
  
Minnesota	
  Agricultural	
  	
  
Experiment	
  Sta.on	
  
SMALL GRAINS INITIATIVEU.S.	
  Wheat	
  &	
  Barley	
  
Scab	
  IniGaGve	
  
Project	
  Members	
  /	
  Collaborators	
  /	
  Support	
  
American	
  
Mal.ng	
  
Barley	
  
Associa.on	
  
University of Minnesota
Brian Steffenson,
Ruth Dill-Macky
Yanhong Dong,
Smith Lab
Ed Schiefelbein
Guillermo
Velasquez
Karen Beaubien
Ahmad Sallam
Stephanie
Navarra
Vikas Vikram
Danelle Dykema
Chris Kucek
Mathilde Chapuis
Other Institutions
Kay Simmons, USDA
Dave Marshall, USDA
Shiaoman Chao, USDA;
Richard Horsley, NDSU;
Jean-Luc Jannink, USDA
Jeff Endelman, Univeristy of Wisconsin
Aaron Lorenz, University of Nebraska
Ques.ons	
  
Genomic	
  SelecGon	
  
2006 2007 2008 2009 Training	
  Popula.on	
  
2009	
  
2010	
  
2011	
  
2012	
  
Fall	
  Crossing	
  21	
  parents	
  
Winter	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F1	
  
Summer	
  	
  	
  	
  	
  	
  	
  	
  	
  F2	
  
Fall	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F3	
  
Winter	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F4	
  
Summer	
  	
  	
  C1	
  Ran	
  C1	
  Sel	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F1	
  
Fall	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F2	
  
Winter	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F3	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  Crossing	
  Parents	
  	
  	
  
Summer	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  C2	
  Ran	
  C2	
  Sel	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  	
  F1	
  
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Using Genomic Selection in Barley to Improve Disease Resistance

  • 1. Using  Genomic  Selec.on  in  Barley  to   Improve  Disease  Resistance   Kevin  P.  Smith,  Vikas  Vikram,  Ahmad  Sallam,  Aaron  Lorenz,   Jean-­‐Luc  Jannink,  Jeffrey  Endleman,  Richard  Horsley,  Shiaoman   Chao,  and  Brian  Steffenson    
  • 2. Genomic  Selec.on   Training  populaGon   Line  1   76   1   1   1   Line  2   56   1   1   1   Line  3   45   1   1   1   Line  4   67   0   1   0   Line  n   22   1   1   1      Line                  Yield        Mrk  1    Mrk  2  …              Mrk  p   …   Model  training   SelecGon  candidates   Line  A   1   1   1   Line  B   1   1   1   Line  C   1   1   1   Line  D   0   1   0   Line  n   1   1   1      Line                  Yield        Mrk  1    Mrk  2      …          Mrk  p   …   Parent  selecGon   Line  A   80   1   1   1   Line  B   67   1   1   1   Line  C   56   1   1   1   Line  D   89   0   1   0   Line  n   23   1   1   1   Line            GEBV          Mrk  1    Mrk  2    …        Mrk  p   …   Basic  framework   GEBV  =  genomic  es.mated  breeding  value   PredicGon       1 ˆ p i j i j j GEBV b x = = ∑1 p i j i j j y b x = = ∑
  • 3. R/T  =                              i  r  ∂A   Gain per Year Selection Intensity Accuracy Genetic Variance # Breeding Cycles Year                  Crossing   1              F1                    F2                    F3   2              F4                    F5  Head  Rows   3              1st  Year  Yield   4              2nd  Year  Yield   5              3rd  Year  Yield   6              Regional/Industry   7              Regional  Industry   8              Variety  Release     Genomic  Selec,on  Improves  Gain  per  Time  
  • 4. Barley  Predic.on  Data  Sets   USDA Regional Genotyping Centers Fargo Triticeae Toolbox http:// triticeaetoolbox.org/ SNP Map Ten U.S. Barley Breeding Programs Fargo,  ND   Raleigh,  NC   Manha[an,  KS   Pullman,  WA  
  • 5. Assessing  Predic.on  Accuracy   Training   PredicGon   Sub-­‐sample     Single  Data  Set   Dis.nct  Training  and     Predic.on  Data  Sets   Training  =  Parents   Predic.on  =  Progeny   CROSS  VALIDATION   INTER-­‐SET  VALIDATION   PROGENY  VALIDATION   RelaGve  Accuracy  =  CorrelaGon  (GEBV,  Observed)/Sqrt(Heritability)  
  • 6. Fusarium  Head  Blight    (FHB)   Another  challenging  disease  in  Barley   Major  outbreak  in  Midwest  U.S.  in  1993   Mycotoxin  deoxynivalenol  (DON)   Sources  of  resistance  are  unadapted   Quan.ta.vely  inherited  resistance   Many  QTL  with  small  effects   Challenging  to  phenotype  
  • 7. Barley  CAP     FHB  Six-­‐row  Midwest  Data  Set     896  six-­‐row  lines   3,072  SNPs   Mean  of  4  trials   Evaluated  over  4  years   Busch  Agriculture   BA   U.  Minnesota   UM   North  Dakota  State   ND   CAP  I   CAP  II   CAP  III   CAP  IV   96   96   96   96   32   32   32   32   96   96   96   96  
  • 8. Training  Panel  and  Marker  Set  Size   Lorenz  et  al.,  2012   Training  Pop  =  200;  384  Markers  
  • 9. Cross  and  Inter-­‐Set  ValidaGon   Training   PopulaGon     POP1         POP2           POP1         POP2         POP1  +  POP2   POP1  +  POP2   ValidaGon   PopulaGon   POP1   POP2     POP2   POP1   POP1   POP2   RelaGve     Accuracy   0.78   0.56     0.38   0.24   0.65   0.68   UM                BA                  ND   Lorenz  et  al.,  2012  
  • 10. UM  –  ND  CollaboraGve  Breeding   UM   ND   480   480   480   21  Parents   Random  Progeny   100   100   100   UM  x  UM   UM  x  ND   ND  x  ND  
  • 11. Progeny  ValidaGon   Progeny     Panel   UM  x  UM   ND  x  ND   UM  x  UM   ND  x  ND   UM  x  UM   ND  x  ND   UM  x  ND   Training   anel   POP1   POP1   POP2   POP2   POP1  +  POP2   POP1  +  POP2   POP1  +  POP2   RelaGve   Accuracy   0.58   0.07   0.26   0.48   0.56   0.40   0.35   Cross  ValidaGon   Accuracy   0.78   0.38   0.24   0.56   0.65   0.68   Vikram  et  al.,  in  prep.  
  • 12. UM  –  ND  Breeding  Lines   UM   ND   480   480   480   21  Parents   Random  Progeny   100   100   100  89   UM  Phenotypic  SelecGon   89   CAP  Training  Panel   384  SNP  markers   DON  and  Yield   2  Loca.on  /  2  Rep   FHB  and  DON  
  • 13. Gain  from  SelecGon  for  DON  (Cycle  1)   0   50   100   0.4  0.6  0.8  1.0  1.2  1.4  1.6  1.8  2.0  2.2  2.4  2.6  2.8  3.0   0   20   40   0.4  0.6  0.8  1.0  1.2  1.4  1.6  1.8  2.0  2.2  2.4  2.6  2.8  3.0   Genomic  Selec.on   Random  Selec.on   0   20   40   0.4  0.6  0.8  1.0  1.2  1.4  1.6  1.8  2.0  2.2  2.4  2.6  2.8  3.0   Phenotypic  Selec.on  
  • 14. Vulnerability  of  Barley  to  Race  TTKSK     •  Over  2,800  Hordeum  accessions   evaluated  as  seedlings  &  adults     •  More  than  97%  were  suscep.ble   including  those  carrying  Rpg1  
  • 15. Genetics of Resistance to Race TTKSK •  Six diverse resistant Hordeum accessions were subject to genetic analysis •  All were found to carry rpg4/ Rpg5 complex, the only major genes known to confer resistance to TTKSK •  Further highlights the extreme vulnerability of barley
  • 16. Univ.  Minnesota   North  Dakota  State  (2-­‐row)   North  Dakota  State  (6-­‐row)   Washington  State   Montana  State   USDA  –  Idaho   Utah  State   Busch  Agriculture   8  Spring  Barley  Breeding  Programs   Screened  in  Kenya  for  Ug99   CAP  I   CAP  II   CAP  III   CAP  IV     Screened  in  2010     Screened  in  2011     Barley  CAP     Spring  Barley  Adult  Stem  Rust  (TTKSK)  Data  Set    
  • 17. Barley  CAP     Mapping  and  Breeding  Infrastructure     University  of  Minnesota    Breeding  Program   U.  Minnesota   UM   CAP  I   CAP  II   CAP  III   CAP  IV     192  lines     192  lines    
  • 18. Kenya  Adult  Plant  Screening  for  UM   Breeding  Lines   0   20   40   60   80   100   0   10  20  30  40  50  60  70   0   50   100   150   200   S   MS   MR   R   InfecGon  Type   Disease  Severity  
  • 19. Kenya  Adult  Plant  Screening  for  UM   Breeding  Lines   Inter-­‐Set  Valida.on                                                                                      Rela.ve   Training        Predic.on        Accuracy   I  &  II                          III  &  IV                          0.28   III  &  IV                    I  &  II                                0.29  
  • 20. Expand  Training  PopulaGon  and   Parents     0   20   40   60   80   100   0   10  20  30  40  50  60  70   CAP  III  and  IV  All  Programs   CAP  MN  Only   0   200   400   600   0   10  20  30  40  50  60  70  80  
  • 21. Summary   Reasonable  rela.ve  accuracies  (>0.50)  possible  with:                  Training  panels  of  200  individuals                  384  SNP  markers                  “Relevant”  training  popula.ons   Good  predic.on  accuracy  seems  to  translate  into  gain  from   selec.on   GS  takes  into  account  mul.ple  traits  in  addi.on  to  disease   resistance.   GS  for  adult  plant  stem  rust  resistance  in  elite  germplasm   could  complement  deployment  of  major  genes.  
  • 22. Minnesota  Agricultural     Experiment  Sta.on   SMALL GRAINS INITIATIVEU.S.  Wheat  &  Barley   Scab  IniGaGve   Project  Members  /  Collaborators  /  Support   American   Mal.ng   Barley   Associa.on   University of Minnesota Brian Steffenson, Ruth Dill-Macky Yanhong Dong, Smith Lab Ed Schiefelbein Guillermo Velasquez Karen Beaubien Ahmad Sallam Stephanie Navarra Vikas Vikram Danelle Dykema Chris Kucek Mathilde Chapuis Other Institutions Kay Simmons, USDA Dave Marshall, USDA Shiaoman Chao, USDA; Richard Horsley, NDSU; Jean-Luc Jannink, USDA Jeff Endelman, Univeristy of Wisconsin Aaron Lorenz, University of Nebraska
  • 24. Genomic  SelecGon   2006 2007 2008 2009 Training  Popula.on   2009   2010   2011   2012   Fall  Crossing  21  parents   Winter                        F1   Summer                  F2   Fall                                    F3   Winter                        F4   Summer      C1  Ran  C1  Sel                                            F1   Fall                                                                                                                    F2   Winter                                                                                                          F3                                              Crossing  Parents       Summer                                                                            C2  Ran  C2  Sel                                                      F1   Fall                                                                                                                                                                                                    F2   Winter                                                                                                                                                                                          F3   Summer                                                                                                                                                                  C2  Ran  C2  Sel   2013   Crossing  Parents