FPRP | R Documentation |
False-positive report probability
FPRP(a, b, pi0, ORlist, logscale = FALSE)
a |
parameter value at which the power is to be evaluated. |
b |
the variance for a, or the uppoer point of a 95%CI if logscale=FALSE. |
pi0 |
the prior probabiility that |
ORlist |
a vector of ORs that is most likely. |
logscale |
FALSE=a,b in orginal scale, TRUE=a, b in log scale. |
The function calculates the false positive report probability (FPRP), the probability of no true association beteween a genetic variant and disease given a statistically significant finding, which depends not only on the observed P value but also on both the prior probability that the assocition is real and the statistical power of the test. An associate result is the false negative reported probability (FNRP). See example for the recommended steps.
The FPRP and FNRP are derived as follows. Let H_0
=null hypothesis (no association),
H_A
=alternative hypothesis (association). Since classic frequentist theory considers
they are fixed, one has to resort to Bayesian framework by introduing prior,
\pi=P(H_0=TRUE)=P(association)
. Let T
=test statistic, and P(T>z_\alpha|H_0=TRUE)=P(rejecting\
H_0|H_0=TRUE)=\alpha
, P(T>z_\alpha|H_0=FALSE)=P(rejecting\ H_0|H_A=TRUE)=1-\beta
. The joint
probability of test and truth of hypothesis can be expressed by \alpha
, \beta
and \pi
.
Joint probability of significance of test and truth of hypothesis
Truth of H_A | significant | nonsignificant | Total |
TRUE | (1-\beta)\pi | \beta\pi | \pi |
FALSE | \alpha (1-\pi) | (1-\alpha)(1-\pi) | 1-\pi |
Total | (1-\beta)\pi+\alpha (1-\pi) | \beta\pi+(1-\alpha)(1-\pi) | 1 |
We have FPRP=P(H_0=TRUE|T>z_\alpha)=
\alpha(1-\pi)/[\alpha(1-\pi)+(1-\beta)\pi]=\{1+\pi/(1-\pi)][(1-\beta)/\alpha]\}^{-1}
and similarly FNRP=\{1+[(1-\alpha)/\beta][(1-\pi)/\pi]\}^{-1}
.
The returned value is a list with compoents, p p value corresponding to a,b. power the power corresponding to the vector of ORs. FPRP False-positive report probability. FNRP False-negative report probability.
Jing Hua Zhao
wacholder04gap
BFDP
## Not run:
# Example by Laure El ghormli & Sholom Wacholder on 25-Feb-2004
# Step 1 - Pre-set an FPRP-level criterion for noteworthiness
T <- 0.2
# Step 2 - Enter values for the prior that there is an association
pi0 <- c(0.25,0.1,0.01,0.001,0.0001,0.00001)
# Step 3 - Enter values of odds ratios (OR) that are most likely, assuming that
# there is a non-null association
ORlist <- c(1.2,1.5,2.0)
# Step 4 - Enter OR estimate and 95% confidence interval (CI) to obtain FPRP
OR <- 1.316
ORlo <- 1.08
ORhi <- 1.60
logOR <- log(OR)
selogOR <- abs(logOR-log(ORhi))/1.96
p <- ifelse(logOR>0,2*(1-pnorm(logOR/selogOR)),2*pnorm(logOR/selogOR))
p
q <- qnorm(1-p/2)
POWER <- ifelse(log(ORlist)>0,1-pnorm(q-log(ORlist)/selogOR),
pnorm(-q-log(ORlist)/selogOR))
POWER
FPRPex <- t(p*(1-pi0)/(p*(1-pi0)+POWER\
row.names(FPRPex) <- pi0
colnames(FPRPex) <- ORlist
FPRPex
FPRPex>T
## now turn to FPRP
OR <- 1.316
ORhi <- 1.60
ORlist <- c(1.2,1.5,2.0)
pi0 <- c(0.25,0.1,0.01,0.001,0.0001,0.00001)
z <- FPRP(OR,ORhi,pi0,ORlist,logscale=FALSE)
z
## End(Not run)
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