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Calculates the power to detect an difference in means/effect size/regression coefficient, at a given sample size, N, with type 1 error rate, Alpha
power_linear_envir.calc.logistic_outcome(N = NULL, MAF = NULL, OR_G = NULL, OR_E = NULL, OR_GE = NULL, sd_e = NULL, Case.Rate = NULL, k = NULL, Alpha = 0.05, True.Model = "All", Test.Model = "All")
Vector of the desired sample size(s)
Vector of minor allele frequencies
Vector of genetic odds ratios to detect
Vector of environmental odds ratios to detect
Vector of genetic/environmental interaction odds ratios to detect
Standard deviation of the environmental variable
Standard deviation of the outcome in the population (ignoring genotype). Either Case.Rate_x or Case.Rate must be specified.
Vector of the number of controls per case. Either k or Case.Rate must be specified.
the desired type 1 error rate(s)
A vector specifying the true underlying genetic model(s): 'Dominant', 'Additive', 'Recessive' or 'All'
A vector specifying the assumed genetic model(s) used in testing: 'Dominant', 'Additive', 'Recessive' or 'All'
A data frame including the power for all combinations of the specified parameters (Case.Rate, ES, Power, etc)
# NOT RUN { pw <- power_linear_envir.calc.logistic_outcome(N=30, OR_G=1.1, OR_E=1.2, OR_GE=1.5, sd_e = 1, MAF=0.2, Case.Rate = 0.2, Alpha=0.05, True.Model="All", Test.Model="All") # }
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