Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

40
Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International 11-2-09 Plant Breeding Seminar at University of California Davis Accelerated Yield Technology TM Context-Specific MAS for Grain Yield

description

Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International 11-2-09 Plant Breeding Seminar at University of California Davis. Accelerated Yield Technology TM Context-Specific MAS for Grain Yield. Pioneer Soybean Breeding. USA Soybean Yield Trends (1972-2003). 55. 50. 45. 40. - PowerPoint PPT Presentation

Transcript of Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

Page 1: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

11-2-09 Plant Breeding Seminar at University of California Davis

Accelerated Yield TechnologyTM

Context-Specific MAS for Grain Yield

Page 2: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

Pioneer Soybean Breeding

Page 3: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

3

Yield: Genetic Gain vs. Precision

Mean yield gain per year: ~ 1%

Precision in our best trials: +/- 5%

*courtesy of James Specht:

Crop Science 39:1560-1570

USA Soybean Yield Trends (1972-2003)

USA Trend: y = +0.412x - 785 R2 = 0.678

15

20

25

30

35

40

45

50

55

1970 1975 1980 1985 1990 1995 2000 2005Production Year

See

d Y

ield

(b

u/a

c)

Page 4: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

4

Soybean Yield Map (one inbred) typical yield range: 30 to 70 bu/a

depending on position in the field

Page 5: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

5

Corn Yield Map (one hybrid) yield range: 109 to 243 bu/a

depending on position in the field

Page 6: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

6

The paradigm for mapping additive traits

Mapping yield QTL as an additive trait

Do we need a new paradigm for yield?

Context-Specific Mapping

Breeding Bias and genomic hotspots

AYT: a combination of many tools

Outline

Page 7: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

7

Simple Trait Mappinge.g. SCN Resistance in Soybean

Resistant Parent x Susceptible Parent

R R R R S S S S

good correlation phenotype: genotype

Phenotype

Genotype

poor correlation phenotype: genotype

putative QTL hit

segregating progeny

Page 8: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

8

0.03.5

14.723.027.728.028.129.030.931.132.746.564.771.474.993.294.295.295.597.8

101.6102.3

0.02.15.39.1

28.435.0

51.5

100.1105.2108.8109.8110.9115.9116.6116.7119.6125.4128.4128.9129.9145.6154.1162.0165.7

0.0

22.028.332.533.036.546.457.969.873.878.180.981.982.984.285.989.795.196.4

102.6

125.7132.2

0.06.0

11.917.8

34.951.555.257.065.667.771.772.172.572.973.278.887.691.197.9

121.0

0.0

9.0

65.173.374.274.475.576.280.684.885.490.1

120.1123.8

135.6

0.0

26.630.538.044.7

56.5

82.2

112.2113.4115.5117.8121.3122.0126.2128.2

151.9157.9

0.0

11.212.0

50.255.056.458.358.461.963.564.365.265.769.870.771.873.882.5

120.9

0.06.7

26.637.240.043.946.6

59.672.674.874.975.776.187.2

100.9

116.4

140.0

0.03.2

16.8

39.3

53.9

79.280.284.685.787.988.089.289.8

105.5113.6115.0124.3129.0133.9

0.03.7

12.918.219.330.332.132.334.235.841.743.143.644.945.145.447.556.356.764.271.3

1.93.03.43.64.05.4

15.320.6

50.2

70.671.472.573.074.377.778.185.391.9

102.1117.6119.2124.6130.6135.1

151.0

5.0

6.612.212.723.123.927.543.848.949.950.552.953.456.056.562.268.869.980.487.194.496.6

100.0102.8107.1116.8

0.00.68.5

27.6

38.9

46.9

58.968.569.172.285.886.591.193.7

124.0

0.0

20.328.031.531.934.035.3

50.1

65.6

77.882.8

99.8

112.7113.4

125.2

0.012.315.724.125.526.127.829.732.136.737.838.239.841.242.543.152.771.978.889.891.0

0.014.421.730.341.542.743.344.0

46.2

46.449.549.650.952.978.678.7

104.8

117.0

0.08.0

11.1

27.930.630.933.736.138.256.159.564.766.570.2

106.4107.2112.3115.1

0.05.07.8

18.6

33.535.9

56.359.962.167.073.975.676.477.287.195.4

107.7111.1112.8

133.8140.7142.2

0.0

26.127.129.431.834.534.636.937.438.038.140.853.270.672.675.976.584.692.6

116.7

0.05.49.5

17.320.4

39.842.343.649.752.153.754.255.155.856.356.957.068.471.182.193.495.4

100.4106.0118.1119.5135.1146.4

QTL detected in Population 1

PR

P1

P1

P2

Page 9: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

9

Population 1

Parent1 (Resistant) x Parent2 (susceptible)

‘Major QTL’

‘Minor QTL’

Disease QTL detected within a specific population

P1

P1 P2

Page 10: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

10

Population 1

RES x SUS

‘Validation’ of QTL Across Populations

Major ‘additive’ gene

These QTL did not ‘validate’ across populations. Does that mean they are not real ?

Population 2

RES x SUS

Population 3

RES x SUS

Chromosome G position 3

Page 11: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

11

0

.

20

.

40

.

60

.

80

.

100

.

120

.

Map PositionChromosome G

A validated SCN resistance gene ‘Rhg1’

Rhg1

But what is the effect of Rhg1 on yield?

Page 12: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

12

Effect of a Rhg1 on Yield

Global conclusion: Rhg1 does not affect yield.

Reality: the effect of Rhg1 on yield can be positive, neutral, or negative depending on the population.

Trait gene IBD

Effect of Rhg1 on disease

Effect on Yield (bu/a)

Statistical Signif

Rhg1 93B86 YB32K01 R +4.0 **

Rhg1 93B86 EX36Y01 R +1.9 *

Rhg1 93B86 92B52 R +1.2 ns

Rhg1 93B86 XB23Y02 R 0.0 ns

Rhg1 93B15 92B74 R -0.2 ns

Rhg1 93B15 ST2870 R -1.9 *

Rhg1 93B15 ST3630 R -6.3 **

Rhg1 across all across all R -0.2 ns

Population Parent 1 x Parent 2

Page 13: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

13

0

.

20

.

40

.

60

.

80

.

100

.

120

.

Chromosome G

Why do yield effects of a QTL differ across populations?

Rhg1

Yield Effect

Yield effects are not distinguishable as single genes.

At best, a yield QTL can be assumed as the net effect of an

entire region within a given population.

Direction and magnitude of effect can change dramatically

with both population and environment (the context)

Page 14: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

14

Attempts to Map Yield QTLin the old paradigm

Page 15: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

15

Population1 Population2

Population3

Attempts to ‘validate’ Yield QTL

Many QTL found, NONE have validated across all populations.

Page 16: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

16

Do we need a different

paradigm for mapping Yield?

Page 17: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

17

Population1 Population2

Population3

What if ?

These QTL are valid for

Population 1

These QTL are valid for

Population 2

These QTL are valid for

Population 3

Page 18: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

18

Population1

How valid are the Yield QTL within a given context?

QTL are only as valid as the data used to detect them !

More progeny + more environments = more confidence

Context-Specific Mapping

Page 19: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

19

Implications for MAS ina breeding program

Page 20: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

20

Development of One Product (before AYT)

Hundreds of Crosses (Parent1 x Parent2)

MAS for simple traits

Yield Testing

20,000 lines x 1 rep

5,000 lines x 2 reps

500 lines x 6 reps

20 lines x 25 reps

4 lines x 50 reps

1 product (better than parents?)

Year0

Year1

Year2

Year3 R1

Year4 R2

Year5 R3

Year6 R4

Year7 R5

inbreeding

Many choices but terrible precision

error is ~ +/- 30% (15 bu/a)

Few choices but better precision

error ~ +/- 5% (2 to 3 bu/a)

Page 21: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

21

First Yield Screen: Progeny Row Yield Test

~ 85% of plot-to-plot variation is not heritable

Page 22: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

22

AA

aaAA

aaAA

aa AA AA aa

AAaa

AAAA

aa

aa aa

aaAA AA

AA

aa

AYT: markers as ‘heritable covariates’

Page 23: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

23

bb

BB

bb

BB

bb

BB

More marker coverage = more power to detect yield QTL

Large populations, multiple environments = more power

bb bb BB

bbBB

bb

bbBB

BB BB

BB

bb

bb

bbBB

Page 24: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

24

AYT analysis can be simple: AA vs. aa

… or more sophisticated

Yield (predicted) = Mean + 2xAA + 4xbb + 2xDD + …. + epistasis …

QTL Favorable Alleles Magnitude location P1 alleles P2 alleles

Region A: AA > aa 2 bu/a

Region B: BB < bb 4 bu/a

Region C: CC = cc 0

Region D: DD > dd 2 bu/a

Region E: EE = ee 0

Page 25: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

25

Select winners by Target Genotype

AA bb DD …

Page 26: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

26

Product Development (before AYT)

Hundreds of Crosses F1

F2

F3

Forward selection for simple traits

Yield Testing

20,000 lines x 1 rep

5,000 lines x 2 reps

500 lines x 6 reps

20 lines x 25 reps

4 lines x 50 reps

1 product

Year0

Year1

Year2

Year3

Year4

Year5

Year6

Resources

20,000 micro plots

10,000 small plots

3,000 med plots

500 large plots

200 large plots

34,000 plots + 6 years

Page 27: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

27

Product Development with AYT

Only the Best Crosses F1

F2

F3

Forward Selection for (simple traits)

Context-Specific MAS for Yield

Much better selection precision

Advance only the most promising genotypes

Fewer lines = better characterization in fewer years

Better Products, Faster to Market

Year0

Year1

Year2

Year3

Year4

Page 28: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

28

What about the cost of genotyping?

Page 29: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

29

Genotyping Efficiency

Are some genomic regions yield hotspots?

Can this reduce genotyping costs?

Can this improve QTL detection rate?

Page 30: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

30

‘Breeding Bias’aka ‘Genetic Hitchhiking’ aka ‘Selection Sweep’

1995: US Patent 5,437,69. Sebastian, Hanafey, Tingey (soy example)

1998: US Patent 5,746,023. Hanafey, Sebastian, Tingey (corn example)

2004: Crop Science 44:436-442. Smalley, Fehr, Cianzio, Han, Sebastian, Streit

2006: Maydica 51: 293-300 Feng, Sebastian, Smith, Cooper.

Multiple lines of evidence

Very powerful tool

Page 31: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

31

Ancestral Population

Elite Population

60+ years of recurrent selection for

Yield

History of Soybean

Page 32: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

32

Yield-associated region

Marker: genetic hitchhiker

Page 33: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

33

Ancestral Population

Elite Population

60+ years of recurrent selection for

Yield

Loci with evidence of selection

Reliable measure of:

1) which genomic regions were most important over time

2) response to the ‘average environment’

implicitly leverages a century of breeding progress!

change in allele frequency

Page 34: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

34

5.1 5.714.617.018.0

19.1

27.128.548.2

69.975.383.286.4

87.3

96.4

A1

0.0 2.0 5.0 8.619.320.023.333.2

50.0

73.578.3

89.993.796.2

108.7

119.6123.4132.4135.1136.0138.2

154.7

161.8

173.5175.2

184.0

A2

22.526.7

34.939.045.056.668.171.673.374.174.876.480.085.091.992.1

117.3120.0

B1

All Markers on First 3 Chromosomes

Page 35: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

35

A1

A2

B1

Regions of Breeding Bias

Page 36: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

36

Breeding Bias hotspots across the entire genome

0.03.5

14.723.027.728.028.129.030.931.132.746.564.771.474.993.294.295.295.597.8

101.6102.3

A1

0.02.15.39.1

28.435.0

51.5

100.1105.2108.8109.8110.9115.9116.6116.7119.6125.4128.4128.9129.9145.6154.1162.0165.7

A2

0.0

22.028.332.533.036.546.457.969.873.878.180.981.982.984.285.989.795.196.4

102.6

125.7132.2

B1

0.06.0

11.917.8

34.951.555.257.065.667.771.772.172.572.973.278.887.691.197.9

121.0

B2

0.0

9.0

65.173.374.274.475.576.280.684.885.490.1

120.1123.8

135.6

C1

0.0

26.630.538.044.7

56.5

82.2

112.2113.4115.5117.8121.3122.0126.2128.2

151.9157.9

C2

0.0

11.212.0

50.255.056.458.358.461.963.564.365.265.769.870.771.873.882.5

120.9

D1a

0.06.7

26.637.240.043.946.6

59.672.674.874.975.776.187.2

100.9

116.4

140.0

D1b

0.03.2

16.8

39.3

53.9

79.280.284.685.787.988.089.289.8

105.5113.6115.0124.3129.0133.9

D20.03.7

12.918.219.330.332.132.334.235.841.743.143.644.945.145.447.556.356.764.271.3

E

0.01.93.03.43.64.05.4

15.320.6

50.2

70.671.472.573.074.377.778.185.391.9

102.1117.6119.2124.6130.6135.1

151.0

F0.03.3

5.0

6.612.212.723.123.927.543.848.949.950.552.953.456.056.562.268.869.980.487.194.496.6

100.0102.8107.1116.8

G

0.00.68.5

27.6

38.9

46.9

58.968.569.172.285.886.591.193.7

124.0

H

0.0

20.328.031.531.934.035.3

50.1

65.6

77.882.8

99.8

112.7113.4

125.2

I

0.012.315.724.125.526.127.829.732.136.737.838.239.841.242.543.152.771.978.889.891.0

J

0.014.421.730.341.542.743.344.0

46.2

46.449.549.650.952.978.678.7

104.8

117.0

K

0.08.0

11.1

27.930.630.933.736.138.256.159.564.766.570.2

106.4107.2112.3115.1

L

0.05.07.8

18.6

33.535.9

56.359.962.167.073.975.676.477.287.195.4

107.7111.1112.8

133.8140.7142.2

M

0.0

26.127.129.431.834.534.636.937.438.038.140.853.270.672.675.976.584.692.6

116.7

N

0.05.49.5

17.320.4

39.842.343.649.752.153.754.255.155.856.356.957.068.471.182.193.495.4

100.4106.0118.1119.5135.1146.4

O

= Yield Loci= SCN Loci= BSR Loci= Rps Loci

Page 37: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

37

Hotspots segregating in a given cross

0.03.5

14.723.027.728.028.129.030.931.132.746.564.771.474.993.294.295.295.597.8

101.6102.3

A1

0.02.15.39.1

28.435.0

51.5

100.1105.2108.8109.8110.9115.9116.6116.7119.6125.4128.4128.9129.9145.6154.1162.0165.7

A2

0.0

22.028.332.533.036.546.457.969.873.878.180.981.982.984.285.989.795.196.4

102.6

125.7132.2

B1

0.06.0

11.917.8

34.951.555.257.065.667.771.772.172.572.973.278.887.691.197.9

121.0

B2

0.0

9.0

65.173.374.274.475.576.280.684.885.490.1

120.1123.8

135.6

C1

0.0

26.630.538.044.7

56.5

82.2

112.2113.4115.5117.8121.3122.0126.2128.2

151.9157.9

C2

0.0

11.212.0

50.255.056.458.358.461.963.564.365.265.769.870.771.873.882.5

120.9

D1a

0.06.7

26.637.240.043.946.6

59.672.674.874.975.776.187.2

100.9

116.4

140.0

D1b

0.03.2

16.8

39.3

53.9

79.280.284.685.787.988.089.289.8

105.5113.6115.0124.3129.0133.9

D20.03.7

12.918.219.330.332.132.334.235.841.743.143.644.945.145.447.556.356.764.271.3

E

0.01.93.03.43.64.05.4

15.320.6

50.2

70.671.472.573.074.377.778.185.391.9

102.1117.6119.2124.6130.6135.1

151.0

F0.03.3

5.0

6.612.212.723.123.927.543.848.949.950.552.953.456.056.562.268.869.980.487.194.496.6

100.0102.8107.1116.8

G

0.00.68.5

27.6

38.9

46.9

58.968.569.172.285.886.591.193.7

124.0

H

0.0

20.328.031.531.934.035.3

50.1

65.6

77.882.8

99.8

112.7113.4

125.2

I

0.012.315.724.125.526.127.829.732.136.737.838.239.841.242.543.152.771.978.889.891.0

J

0.014.421.730.341.542.743.344.0

46.2

46.449.549.650.952.978.678.7

104.8

117.0

K

0.08.0

11.1

27.930.630.933.736.138.256.159.564.766.570.2

106.4107.2112.3115.1

L

0.05.07.8

18.6

33.535.9

56.359.962.167.073.975.676.477.287.195.4

107.7111.1112.8

133.8140.7142.2

M

0.0

26.127.129.431.834.534.636.937.438.038.140.853.270.672.675.976.584.692.6

116.7

N

0.05.49.5

17.320.4

39.842.343.649.752.153.754.255.155.856.356.957.068.471.182.193.495.4

100.4106.0118.1119.5135.1146.4

O

A a

B b

C c

D d

E e

F f

G g

J jH h

I iK k

L l

R r

T t

S sV v

U u W wM m

N nO o

P p

Q q

Page 38: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

38

MAS for simple traits across populations

Breeding Bias & other tools to find hotspots

Context-Specific MAS for yield within each pop

Accelerated Yield TechnologyTM

a combination of many tools

Page 39: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

39

USA Soybean Yield Trends (1972-2003)

USA Trend: y = +0.412x - 785 R2 = 0.678

15

20

25

30

35

40

45

50

55

1970 1975 1980 1985 1990 1995 2000 2005Production Year

See

d Y

ield

(b

u/a

c)

Our Goal: Double the Rate of Genetic Gain

*courtesy of James Specht:

Crop Science 39:1560-1570

Page 40: Dr. Scott Sebastian, Research Fellow, Pioneer Hi-Bred International

Thank You!