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## Adaptive Sum of powered score (SPU) tests (SPU and aSPU) (simulation, version 2, matrix used in permutation)
##
## It gives the p-values of the SPU tests and aSPU test based on the simulations of U from the null distribution. (This is version 2, matrix version is faster but if it doesn't work, we should use version 1, vector version)
##
## @param Y phenotype data. It can be disease lables; =0 for controls, =1 for cases.
## or It can be any quantitative traits. Vector with length n (number of observations)
##
## @param X genotype data; each row for a subject, and each column
## for an SNP. The value of each element is the # of the copies
## for an allele. Matrix with dimension n by k (n : number of observation, k : number of genotype data)
##
## @param cov covariates. Matrix with dimension n by p (n :number of observation, p : number of covariates)
##
## @param model Use "gaussian" for quantitative trait (Default)
## , and Use "binomial" for binary trait.
##
## @param pow power used in SPU test. Vector of g number of power.
##
## @param n.perm number of permutation
##
## @export
## @return Test Statistics and p-values for SPU tests and aSPU test.
##
## @examples
##
## data(exdat)
## out <- aSPUsim2(exdat$Y, exdat$X, cov = NULL,
## model = "binomial", pow = c(1:8, Inf), n.perm = 1000)
## out
##
## @seealso \code{\link{aSPU}}, \code{\link{aSPUperm}}, \code{\link{aSPUboot}}, \code{\link{aSPUboot2}}
aSPUsim2 <- function(Y, X, cov = NULL, model=c("gaussian","binomial"), pow=c(1:8, Inf), n.perm=1000){
model = match.arg(model)
n <- length(Y)
if (is.null(X) && length(X)>0) X=as.matrix(X, ncol=1)
k <- ncol(X)
if (is.null(cov)){
## NO nuisance parameters:
Xg <- XUs <- X
U <- t(Xg) %*% (Y-mean(Y))
yresids <- Y-mean(Y)
# sigma0 = sqrt(sum(yresids^2)/(n-1))
yfits <- rep(mean(Y), n)
Xgb <- apply(X, 2, function(x)(x-mean(x)) )
if( model == "binomial" ) {
CovS <- mean(Y)*(1-mean(Y))*(t(Xgb) %*% Xgb)
} else {
CovS <- var(Y)*(t(Xgb) %*% Xgb)
}
} else {
## with nuisance parameters:
tdat1 <- data.frame(trait=Y, cov)
if(is.null(colnames(cov))) {
colnames(tdat1) = c("trait", paste("cov",1:dim(cov)[2],sep=""))
} else {
colnames(tdat1) = c("trait", colnames(cov))
}
fit1 <- glm(trait~., family = model, data=tdat1)
yfits <- fitted.values(fit1)
yresids <- fit1$residuals
# fit1res1<-summary(fit1)
# sigma0<-sqrt(fit1res1$dispersion)
Us <- XUs <- matrix(0, nrow=n, ncol=k)
Xmus = X
for(i in 1:k){
tdat2 <- data.frame(X1=X[,i], cov)
fit2 <- glm(X1~., data=tdat2)
Xmus[,i] <- fitted.values(fit2)
XUs[, i] <- (X[,i] - Xmus[,i])
}
U <- t(XUs) %*% (Y - yfits)
CovS<-matrix(0, nrow=k, ncol=k)
for(i in 1:n)
CovS<-CovS + Us[i,] %*% t(Us[i,])
}
# test stat's:
Ts <- rep(0, length(pow))
for(j in 1:length(pow)){
if (pow[j] < Inf)
Ts[j] = sum(U^pow[j]) else Ts[j] = max(abs(U))
}
svd.CovS<-svd(CovS)
CovSsqrt<-svd.CovS$u %*% diag(sqrt(svd.CovS$d))
T0s = matrix(0, nrow=n.perm, ncol=length(pow))
Y0 = Y
for(b in 1:n.perm){
# r0 <- sample(yresids, length(yresids))
# U0 <- as.vector(t(XUs) %*% r0)
U00<-rnorm(k, 0, 1)
U0<-CovSsqrt %*% U00
for(j in 1:length(pow))
if (pow[j] < Inf)
T0s[b, j] = sum(U0^pow[j]) else T0s[b, j] = max(abs(U0))
}
pPerm0 = rep(NA,length(pow))
for ( j in 1:length(pow))
{
pPerm0[j] = sum(abs(Ts[j])<=abs(T0s[,j])) / n.perm
P0s = ( ( n.perm - rank( abs(T0s[,j]) ) ) + 1 ) / (n.perm )
if (j == 1 ) minp0 = P0s else minp0[which(minp0>P0s)] = P0s[which(minp0>P0s)]
}
Paspu <- (sum(minp0 <= min(pPerm0)) + 1) / (n.perm+1)
pvs <- c(pPerm0, Paspu)
Ts <- c(Ts, min(pPerm0))
names(Ts) <- c(paste("SPU", pow, sep=""), "aSPU")
names(pvs) = names(Ts)
list(Ts = Ts, pvs = pvs)
}
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