Regression Exercise

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Regression exercise

In R:

load("dbp.R")
ls()
dbp[1:5,]
#
result.snp12 = glm (affection ~ rs1112, family=binomial("logit"), data=dbp)
print (result.snp12)
print ( class (result.snp12) )
print ( summary(result.snp12) )
#
dev.geno = anova (result.snp12, test="Chi")
lrt.pvalue = pchisq(dev.geno[dim(dev.geno)[1],"Deviance"], df=2, ncp=0, FALSE)
print ( lrt.pvalue )
#
print ( summary(result.snp12)$coefficients )
snp.beta = summary(result.snp12)$coefficients[2:3,1]
print ( snp.beta )
print ( exp(snp.beta) )
ci = confint (result.snp12)
print (ci)
print ( exp(ci) )
#
snp.data = dbp[,c("affection", "rs1112")]
summary(snp.data)
snp.data[,"rs1112"] <- as.numeric(snp.data[,"rs1112"]) - 1
summary(snp.data) # result.all = glm (affection ~ rs1112, family=binomial("logit"), data=snp.data) dev.all = anova (result.all, test="Chi") summary(result.all) print(dev.all) # snp.data = dbp[,c("affection", "trait","sex", "age", "rs1112", "rs1117")] summary(snp.data) snp.data[,"rs1112"] <- as.numeric(snp.data[,"rs1112"]) - 1
snp.data[,"rs1117"] <- as.numeric(snp.data[,"rs1117"]) - 1 # result.adj = glm (affection ~ sex + rs1112 , family=binomial("logit"), data=snp.data) summary(result.adj) # result.adj = glm (affection ~ age + rs1112 , family=binomial("logit"), data=snp.data) summary(result.adj) # result.adj = glm (affection ~ sex + age + rs1112, family=binomial("logit"), data=snp.data) summary(result.adj) # result.adj = glm (affection ~ rs1117 + rs1112, family=binomial("logit"), data=snp.data) summary(result.adj) anova (result.adj, test="Chi") result.adj = glm (affection ~ rs1112 + rs1117, family=binomial("logit"), data=snp.data) summary(result.adj) anova (result.adj, test="Chi") # result.adj = lm (trait ~ rs1112, data=snp.data) summary(result.adj) result.adj = lm (trait ~ sex + rs1112, data=snp.data) summary(result.adj) # result.inter = glm (affection ~ sex * rs1112, family=binomial("logit"), data=snp.data) summary(result.inter) result.inter = glm (affection ~ age * rs1112, family=binomial("logit"), data=snp.data) summary(result.inter) # result.inter = glm (affection ~ rs1112 * rs1117, family=binomial("logit"), data=snp.data) summary(result.inter) # q()