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Regulatory variation and eQTLs Chris Cotsapas [email protected] rg

Regulatory variation and eQTLs Chris Cotsapas [email protected]

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Page 1: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Regulatory variation and eQTLs

Chris [email protected]

Page 2: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 3: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Regulatory variation

• What do trait-associated variants do?• Genetic changes to:

– Coding sequence **– Gene expression levels– Splice isomer levels– Methylation patterns– Chromatin accessibility– Transcription factor binding kinetics– Cell signaling– Protein-protein interactions

Regulatory

Page 4: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

BASIC CONCEPTSHistory, eQTL, mQTL, others

Page 5: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 6: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Within a population

• Damerval et al 1994• 42/72 protein levels differ in maize• 2D electrophoresis, eyeball spot quantitation• Problems:

– genome coverage– quantitation– post-translational modifications

• Solution: use expression levels instead!

Page 7: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Usual mapping tools available

Page 8: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

gene 3

Whole-genome eQTL analysis is an independent GWAS for expression of each

gene

gene 2

gene N

gene 5

gene 4

gene 1

Page 9: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

• cis-eQTL– The position of the eQTL maps near

the physical position of the gene.– Promoter polymorphism?– Insertion/Deletion?– Methylation, chromatin

conformation?

• trans-eQTL– The position of the eQTL does not

map near the physical position of the gene.

– Regulator?– Direct or indirect?

Modified from Cheung and Spielman 2009 Nat Gen

Genetics of gene expression (eQTL)

Page 10: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 11: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 12: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 13: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

eQTL – THE ARRAY ERAyeast, mouse, maize, human

Page 14: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Yeast

• Brem et al Science 2002• Linkage in 40 offspring of lab x wild strain

cross • 1528/6215 DE between parents• 570 map in cross

– multiple QTLs– 32% of 570 have cis linkage

• 262 not DE in parents also map

Page 15: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

trans hotspots

Brem et al Science 2002

Page 16: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Yvert et al Nat Genet 2003

Page 17: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Mammals I

• F2 mice on atherogenic diet• Expression arrays; WG linkage

Schadt et alNature 2003

Page 18: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Mammals II

Chesler et al Nat Genet 2005

10% !!

Page 19: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Mammals III

• No major trans loci in humans– Cheung et al Nature 2003– Monks et al AJHG 2004– Stranger et al PLoS Genet 2005, Science 2007

Page 20: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

WHERE ARE THE TRANS eQTLS?Open question

Page 21: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

gene 3

Whole-genome eQTL analysis is an independent GWAS for expression of each

gene

gene 2

gene N

gene 5

gene 4

gene 1

Page 22: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Issues with trans mapping

• Power– Genome-wide significance is 5e-8

– Multiple testing on ~20K genes– Sample sizes clearly inadequate

• Data structure– Bias corrections deflate variance– Non-normal distributions

• Sample sizes– Far too small

Page 23: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

But…

• Assume that trans eQTLs affect many genes…

• …and you can use cross-trait methods!

Page 24: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Association data

Z1,1 Z1,2 … … Z1,p

Z2,1

::

Zs,1 Zs,p

Page 25: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Cross-phenotype meta-analysis

SCPMA ~L(data | λ≠1)

L(data | λ=1)

Cotsapas et al, PLoS Genetics

Page 26: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

CPMA detects trans mixtures

Page 27: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Open research questions

• Do trans effects exist?– Yes – heritability estimates suggest so.– Can we detect them?

• Larger cohorts?– Most eQTL studies ~50-500 individuals– See later, GTEx Project

• Better methods?– Collapsing data?– PCA, summary statistics, modeling?

Page 28: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

CAN WE LEARN REGULATORY VARIATION FROM eQTL?

Page 29: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

First, let’s define the question

• Can we use genetic perturbations as a way to understand how genes are regulated?

• In what groups, in which tissues? • To what stimuli/signaling events? • Do cis eQTLs perturb promoter elements?• Do trans perturb TFs? Signaling cascades?

Page 30: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Most significant SNP per gene 0.001 permutation threshold

Significant associations are symmetrically distributed around TSS

Stranger et al., PLoS Gen 2012

Page 31: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

268 271 262

73 85 82

86 86 86

Cell type-specific and cell type-shared gene associations(0.001 permutation threshold)

cell type

No.

of c

ell t

ypes

with

gen

e as

soci

ation

69-80% of cis associations are cell type-specific

• cis association sharing increases slightly when significance thresholds are relaxed• Cell type specificity verified experimentally for subset of eQTLs

Dimas et al Science 2009

Dimas et al Science 2009Slide courtesy Antigone Dimas

Page 32: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Open research questions

• Do cis eQTLs perturb functional elements?– Given each is independent, how can we know?

• Do tissue-specific effects correlate with the expression of a gene across tissues? Or a regulator?– Perhaps a gene is expressed, but in response to different

regulators across tissues?• If we ever find trans eQTLs…

– Common regulators of coregulated genes?– Tissue specificity?– Mechanisms?

Page 33: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

APPLICATION TO GWASCandidate genes, perturbations underlying organismal phenotypes

Page 34: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

eQTLs as intermediate traits

Schadt et al Nat Genet 2005

Page 35: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Modified from Nica and Dermitzakis Hum Mol Genet 2008

Exploring eQTLs in the relevant cell type is important for disease association studies

cell type not relevant for diseaserelevant cell type for disease

Importance of cataloguing regulatory variation in multiple cell types

Slide courtesy Antigone Dimas

Page 36: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Barrett et al 2008de Jager et al 2007

Page 37: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 38: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org
Page 39: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Franke et al 2010Anderson et al 2011

Page 40: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

POPULATION DIFFERENCES

Page 41: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Shared association in 8 HapMap populations

APOH: apolipoprotein H Stranger et al., PLoS Gen 2012

Page 42: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Number of genes with cis-eQTL associations8 extended HapMap populations

Spearman Rank CorrelationEnsGene

0.01 0.001 0.0001# genes FDR # genes FDR # genes FDR

CEU 2869 0.06 657 0.03 313 0.01CHB 2832 0.06 774 0.02 378 0.00GIH 2959 0.06 698 0.03 300 0.01JPT 2900 0.06 795 0.02 386 0.00

LWK 3818 0.05 773 0.02 311 0.01MEX 2609 0.07 472 0.04 165 0.01MKK 4222 0.04 947 0.02 411 0.00YRI 3961 0.05 799 0.02 328 0.01

non-redundant 12494 3130 1132>2 pops 6889 0.55 1074 0.34 547 0.488 pops 151 0.01 63 0.02 28 0.02

4 PCA + 4 non-PCAGenes are Ensembl genes.Generated on July 22, 2009, modified July 28th because of MKK error.These numbers differ from v2 because all assocs where dist to true TSS > 1Mb were removed.This removed some genes. I redid the MostSigSnpEnsGene after removing those SNPs. This is in column MostSigSnpEnsGene_1

SRC: permutation threshold

Stranger et al., PLoS Gen 2012

Page 43: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Direction of allelic effectsame SNP-gene combination across populations

AGREEMENT

OPPOSITE

Population 1

rs40915

THAP5

TTCTCC

8.00

7.75

7.50

7.25

7.00

6.75

6.50

Population 2

rs40915

THAP5

TTCTCC

8.00

7.75

7.50

7.25

7.00

6.75

6.50

log 2 e

xpre

ssio

n

log 2 e

xpre

ssio

n

rs40915

THAP5

TTCTCC

8.00

7.75

7.50

7.25

7.00

6.75

6.50

log 2 e

xpre

ssio

n

rs40915

THAP5

TTCTCC

8.00

7.75

7.50

7.25

7.00

6.75

6.50

log 2 e

xpre

ssio

n

Stranger et al., PLoS Gen 2012

Page 44: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Slide courtesy Alkes Price

Page 45: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Population differences could have non-genetic basis

• Differences due to environment? (Idaghdour et al. 2008)

• Differences in cell line preparation? (Stranger et al. 2007)

• Differences due to batch effects? (Akey et al. 2007)

(Reviewed in Gilad et al. 2008)

Slide courtesy Alkes Price

Page 46: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Gene expression experiment

Does gene expression in 60 CEU + 60 YRI vary with ancestry?

Does gene expression in 89 AA vary with % Eur ancestry?

60 CEU + 60 YRI from HapMap, 89 AA from Coriell HD100AAGene expression measurements at 4,197 genes obtained using Affymetrix Focus array

c

Slide courtesy Alkes Price

Page 47: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Gene expression differences in African Americans validate CEU-YRI differences

c = 0.43 (± 0.02)(P-value < 10-25)

12% ± 3%

in cis

Slide courtesy Alkes Price

Page 48: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

EMERGING EFFORTSRNAseq, GTEx

Page 49: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

RNAseq questions

• Standard eQTLs – Montgomery et al, Pickrell et al Nature 2010

• Isoform eQTLs– Depth of sequence!

• Long genes are preferentially sequenced• Abundant genes/isoforms ditto• Power!?• Mapping biases due to SNPs

Page 50: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

Strategies for transcript assembly

Garber et al. Nat Methods 8:469 (2011)

Page 51: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

GTEx – Genotype-Tissue EXpressionAn NIH common fund project

Current: 35 tissues from 50 donors

Scale up: 20K tissues from 900 donors.

Novel methods groups: 5 current + RFA

Page 52: Regulatory variation and eQTLs Chris Cotsapas cotsapas@broadinstitute.org

RNAseq combined with other techs

• Regulons: TF gene sets via CHiP/seq– Look for trans effects

• Open chromatin states (Dnase I; methylation)– Find active genes– Changes in epigenetic marks correlated to RNA– Genetic effects

• RNA/DNA comparisons – Simultaneous SNP detection/genotyping– RNA editing ???