pathway talk for iges 2009 hawaii

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Using pathways to discover complex disease models Gary Chen, Duncan Thomas Department of Preventive Medicine USC 1. Motivation 2. A stochastic search variable selection algorithm 3. Example using candidate genes 4. Ideas for GWAS Using pathways to discover complex disease models Gary Chen, Duncan Thomas Department of Preventive Medicine USC October 20, 2009

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Page 1: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Using pathways to discovercomplex disease models

Gary Chen, Duncan ThomasDepartment of Preventive Medicine

USC

October 20, 2009

Page 2: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

An outline

1. Motivation

2. A stochastic search variable selectionalgorithm

3. Example using candidate genes

4. Ideas for GWAS

Page 3: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Common disease have complexetiology

I GWAS have had great success in searchingfor genetic variants for common diseases

I Recent successes: AMD, BMI/obesity,Type 2 diabetes, Breast cancer, Prostatecancer

I Marginal effects from single SNP analysesdo not explain all heritability. Can wemove beyond the low-hanging fruit?

Page 4: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Common disease have complexetiology

I GWAS have had great success in searchingfor genetic variants for common diseases

I Recent successes: AMD, BMI/obesity,Type 2 diabetes, Breast cancer, Prostatecancer

I Marginal effects from single SNP analysesdo not explain all heritability. Can wemove beyond the low-hanging fruit?

Page 5: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Use biological knowledge to helpsearch for disease models

I Hierarchical ModelingI Stabilizes effect estimates β from an

association test by assuming they come froma prior distribution derived from biologicaldata

I Examples in Genetic EpiI Model selection: Conti et al (Hum Her,

2003), Baurley et al(Stat Med, in review)I GWAS: Lewinger et al (Gen Epi 2007), Chen

et Witte (AJHG 2007)I Review: Thomas et al (Hum Genomics 2009)

Page 6: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Use biological knowledge to helpsearch for disease models

I Hierarchical ModelingI Stabilizes effect estimates β from an

association test by assuming they come froma prior distribution derived from biologicaldata

I Examples in Genetic EpiI Model selection: Conti et al (Hum Her,

2003), Baurley et al(Stat Med, in review)I GWAS: Lewinger et al (Gen Epi 2007), Chen

et Witte (AJHG 2007)I Review: Thomas et al (Hum Genomics 2009)

Page 7: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

An outline

1. Motivation

2. A stochastic search variable selectionalgorithm

3. Example using candidate genes

4. Ideas for GWAS

Page 8: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Searching for independent maineffects and their interactions

I Ideally fit all predictors in a single model ifN > P

I Model selection: e.g. stepwise regressionI P-values can be anti-conservative: Don’t

adjust for number of testsI Can be computationally intractable

I An alternative: Bayesian model averagingI Probabilistically propose sub-models from a

posterior distributionI Summary statistics of parameters averaged

across all proposed modelsI Appears to better control for multiple

comparisons

Page 9: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Searching for independent maineffects and their interactions

I Ideally fit all predictors in a single model ifN > P

I Model selection: e.g. stepwise regressionI P-values can be anti-conservative: Don’t

adjust for number of testsI Can be computationally intractable

I An alternative: Bayesian model averagingI Probabilistically propose sub-models from a

posterior distributionI Summary statistics of parameters averaged

across all proposed modelsI Appears to better control for multiple

comparisons

Page 10: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

The model form: A two-levelhierarchical model

I First Level: a linear modelI logit(P(Y = 1|β,X )) ∼ β0 +

∑Kk=1 βkX

I X can be G, E, GxG, GxE, etc.

I Second level: a mixture prior on each βkof univariate Gaussians:

I β ∼ N(φβ̄k + (1−φ)πTZk , φτ2

adjk+ (1−φ)σ2)

I 1st component: neighborhood of gene kI 2nd component: pathway info on gene k

Page 11: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

The model form: A two-levelhierarchical model

I First Level: a linear modelI logit(P(Y = 1|β,X )) ∼ β0 +

∑Kk=1 βkX

I X can be G, E, GxG, GxE, etc.

I Second level: a mixture prior on each βkof univariate Gaussians:

I β ∼ N(φβ̄k + (1−φ)πTZk , φτ2

adjk+ (1−φ)σ2)

I 1st component: neighborhood of gene kI 2nd component: pathway info on gene k

Page 12: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

How the parameters fit togetherβ ∼ N(φβ̄k + (1− φ)πTZk , φ

τ 2

adjk+ (1− φ)σ2)

Page 13: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Stochastic Search VariableSelection

I Propose a swap, addition or deletion of anvariable

I Perform reversible jump MetropolisHastings step comparing posteriorprobabilities

I H = P(Y=1|β′,X )P(β′|Z ,A,π,σ,τ,φ)P(Y=1|β,X )P(β|Z ,A,π,σ,τ,φ)

I Accept move with probability min(1,H)

Page 14: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Stochastic Search VariableSelection

I Propose a swap, addition or deletion of anvariable

I Perform reversible jump MetropolisHastings step comparing posteriorprobabilities

I H = P(Y=1|β′,X )P(β′|Z ,A,π,σ,τ,φ)P(Y=1|β,X )P(β|Z ,A,π,σ,τ,φ)

I Accept move with probability min(1,H)

Page 15: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Stochastic Search VariableSelection

I Propose a swap, addition or deletion of anvariable

I Perform reversible jump MetropolisHastings step comparing posteriorprobabilities

I H = P(Y=1|β′,X )P(β′|Z ,A,π,σ,τ,φ)P(Y=1|β,X )P(β|Z ,A,π,σ,τ,φ)

I Accept move with probability min(1,H)

Page 16: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

An outline

1. Motivation

2. A stochastic search variable selectionalgorithm

3. Example using candidate genes

4. Ideas for GWAS

Page 17: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Folate pathway

Reed et al J Nutr. 2006 Oct;136(10):2653-61

Page 18: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Simulated data setI Simulated data for 4000 individualsI 14 genes, 2 environmental variablesI Pathway enzymes: genotype specific rates

I Simulating disease statusI Assign homocysteine as causal mechanismI ’Run’ the pathway until steady stateI Probabilistically assign disease status

conditional on metabolite conc.I Priors

I Deposit half the genotypes into priordatabase

I Z matrix, causal metabolite(s): correlation ofprior genotypes to candidate metabolite

I A matrix, network information: correlation ofcorrelation profiles between two effects

Page 19: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Simulated data setI Simulated data for 4000 individualsI 14 genes, 2 environmental variablesI Pathway enzymes: genotype specific ratesI Simulating disease status

I Assign homocysteine as causal mechanismI ’Run’ the pathway until steady stateI Probabilistically assign disease status

conditional on metabolite conc.

I PriorsI Deposit half the genotypes into prior

databaseI Z matrix, causal metabolite(s): correlation of

prior genotypes to candidate metaboliteI A matrix, network information: correlation of

correlation profiles between two effects

Page 20: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Simulated data setI Simulated data for 4000 individualsI 14 genes, 2 environmental variablesI Pathway enzymes: genotype specific ratesI Simulating disease status

I Assign homocysteine as causal mechanismI ’Run’ the pathway until steady stateI Probabilistically assign disease status

conditional on metabolite conc.I Priors

I Deposit half the genotypes into priordatabase

I Z matrix, causal metabolite(s): correlation ofprior genotypes to candidate metabolite

I A matrix, network information: correlation ofcorrelation profiles between two effects

Page 21: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Setting up the priors

Page 22: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Comparison

Same interactions detected. Z matrix providessupport.

Page 23: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Sensitivity analysis

I How does our prior on β affect posteriorinference?

I Compare four special cases of the priordensity:

I βpriork ∼ N(φβ̄k + (1− φ)πTZk ,

φ τ2

nk+ (1− φ)σ2)

I 1. Non-informative: constrain φ = 0, π = 0I 2. Z matrix: constrain φ = 0I 3. Adjacency info: constrain π = 0I 4. Z matrix and adjacency info: no

constraints

Page 24: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Sensitivity analysis

I How does our prior on β affect posteriorinference?

I Compare four special cases of the priordensity:

I βpriork ∼ N(φβ̄k + (1− φ)πTZk ,

φ τ2

nk+ (1− φ)σ2)

I 1. Non-informative: constrain φ = 0, π = 0I 2. Z matrix: constrain φ = 0I 3. Adjacency info: constrain π = 0I 4. Z matrix and adjacency info: no

constraints

Page 25: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Sensitivity analysis

I How does our prior on β affect posteriorinference?

I Compare four special cases of the priordensity:

I βpriork ∼ N(φβ̄k + (1− φ)πTZk ,

φ τ2

nk+ (1− φ)σ2)

I 1. Non-informative: constrain φ = 0, π = 0I 2. Z matrix: constrain φ = 0I 3. Adjacency info: constrain π = 0I 4. Z matrix and adjacency info: no

constraints

Page 26: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Model averaged estimates ofhyperparameters

I ResultsI Prior solely incorporating information in Z

matrix appeared to explain residual variationbetter than adjacency-only prior

I π estimated at 1.86, consistent withsimulated effect size.

Scenario σ̂2 τ̂ 2 φ̂Non informative .48 N/A 0Z matrix .00459 N/A 0Adjacency .48 .22 .56Z mat + Adj .00731 .23 .05

Page 27: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Comparison among several priors

Page 28: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Summary of simulated example

I Biomarker data incorporated as priorsI Intermediate phenotypes believed to be

causal in Z (mean) matrixI Global level pathway information encoded in

A (adjacency) matrix

I Influence of prior estimated by observeddata through π,τ ,σ,φ

I Informative priors provided additionalsupport for causal genes

Page 29: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

An outline

1. Motivation

2. A stochastic search variable selectionalgorithm

3. Example using candidate genes

4. Ideas for GWAS

Page 30: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Can be applied in genome-wideassociation study

I Proof of concept: GWAS of breast cancerI 2000 cases, 2000 controls, ∼ 1M SNPsI Top SNP from each of 2755 genes, p < .05

from GWAS

I Gene Ontology used to define adjacencymatrix and proposal kernel

I Considered the 22 GO terms under BiologicalProcess (Level 3)

I Pair of SNPs considered neighbors if share atleast one GO term

I Define a proposal density for new var V ′i as:

I Q(V ′i ) = I (Aij,i 6=j 6= 0)

Page 31: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Can be applied in genome-wideassociation study

I Proof of concept: GWAS of breast cancerI 2000 cases, 2000 controls, ∼ 1M SNPsI Top SNP from each of 2755 genes, p < .05

from GWAS

I Gene Ontology used to define adjacencymatrix and proposal kernel

I Considered the 22 GO terms under BiologicalProcess (Level 3)

I Pair of SNPs considered neighbors if share atleast one GO term

I Define a proposal density for new var V ′i as:

I Q(V ′i ) = I (Aij,i 6=j 6= 0)

Page 32: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Analysis

I Stepwise regression:I Considered only first 100 SNPsI Retained 83/100 SNPsI Intractable for 2nd order interactions

I Our proposed algorithm:I Low posterior probability for interactionsI Most sub-models contained variables with

shared annotation

Page 33: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Analysis

I Stepwise regression:I Considered only first 100 SNPsI Retained 83/100 SNPsI Intractable for 2nd order interactions

I Our proposed algorithm:I Low posterior probability for interactionsI Most sub-models contained variables with

shared annotation

Page 34: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Sensitivity analysis

I Compare non-informative prior to oneusing GO terms in A

I 1. Non-informative: constrain φ = 0I 2. Adjacency info: no constraint on φ

Scenario σ̂2 τ̂ 2 φ̂Non informative .01 N/A 0Adjacency .01 .0004 .86

Page 35: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Posterior inference

Page 36: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Scaling up to larger sub-models

I Need to test larger sub-models in GWASsettings

I Partition models into submodels usingontology info

I Parallel processing: nodes fit submodels

I A parallelized MCMC algorithm - Poster190

Page 37: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Logical topology of sub-models

Page 38: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Hierarchical model

Page 39: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Summary for GWAS exampleI External knowledge can be informative

I MLEs of β are smoothed towards pathwaymeans

I Ontologies useful: WECARE study in breastcancer - Poster 189

I For GWAS: Genome-wide expressionpotentially more biologically informative in Zmatrix

I Priors can guide towards biologically relevantinteractions

I Computational efficiency essential:I Defining proposal kernel: e.g. expit(πTZ )I More parsimonious sub-models desirable (e.g.

fused LASSO)I Fisher scoring can be improved using parallel

code (e.g. GPUs)

Page 40: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Summary for GWAS exampleI External knowledge can be informative

I MLEs of β are smoothed towards pathwaymeans

I Ontologies useful: WECARE study in breastcancer - Poster 189

I For GWAS: Genome-wide expressionpotentially more biologically informative in Zmatrix

I Priors can guide towards biologically relevantinteractions

I Computational efficiency essential:I Defining proposal kernel: e.g. expit(πTZ )I More parsimonious sub-models desirable (e.g.

fused LASSO)I Fisher scoring can be improved using parallel

code (e.g. GPUs)

Page 41: Pathway talk for IGES 2009 Hawaii

Using pathways todiscover complexdisease models

Gary Chen,Duncan ThomasDepartment of

PreventiveMedicine

USC

1. Motivation

2. A stochasticsearch variableselection algorithm

3. Example usingcandidate genes

4. Ideas for GWAS

Acknowledgements

I James Baurley

I David Conti

I Dataset: African American Breast CancerGWAS Collaborators

I Funding: R01 ES016813