Title: Rat tumor example
1Rat tumor example
2SAT coaching example
- Goal The Educational Testing Service (ETS) wants
to analyze the effects of special coaching
programs on SAT-V scores - Separate randomized controlled experiments were
performed at eight high schools - For each school, the estimated coaching effect
and its standard error were obtained.
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4The Model
5Two Non-hierarchical Approaches
- Each school is analyzed separately
- All schools are pooled
- The hierarchical model provides a compromise
6p(µ,t)? 1
µ overall trtmt effect t heterogeneity among
schools
? j N( µ, t )
? j effect at school j
yj N( ?j , sj2), sj2 known
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8Computation
9Posterior inference strategy
- ? of interest
- µ, t niusance
- joint p(?,µ,t y)?
- conditional of ? p(?µ,t, y)?
- marginal of niusance p(µ,ty)?
- marginal of ? p(? y)(integrate the product of
the above two, or simulate from the above two)
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16R code can refer to the code for rat tumor
example. Winbugs can do this as well.
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19Estimated School Effects
20Applications of BHM Meta-analysis
- Meta-analysis aims to summarize and integrate
findings from multiple studies. - It involves combining information from several
parallel data sources, so is closely connected to
hierarchical models. - Counterpart of a frequent test of heterogeneity
- ty0 ?
21Clinical trial Heart attack patients receiving
beta-blockers
22Conditional posterior of treatment effect
- treatment effect (log odds ratio) of study j
-
- ?jf,yN(yj,sj2)
23Microarray shrinking variance estimators
- Differential gene expression
- large p ( of genes), small n (sample size for
each gene) - traditional t statistic for gene i
- Variance estimate si for gene i can borrow from
other genes
24Empirical Bayes
- Instead of doing a full Bayes model like we did,
plug in maximum posterior estimate of
hyper-parameter f.
25Full Bayes
p(µ,t)? 1
µ overall trtmt effect t heterogeneity among
schools
? j N( µ, t )
? j effect at school j
yj N( ?j , sj2), sj2 known
26Empirical Bayes
µµ,tt
µ overall trtmt effect t heterogeneity among
schools
? j N( µ, t )
? j effect at school j
yj N( ?j , sj2), sj2 known
µargmaxµp(µy)
27Empirical Bayes Methods
- Point estimates of ?s work well
- Shape spread not good
- underestimate spread
- cannot examine joint posterior
- say ?2-?1