Description Usage Arguments Value Examples
Calculates optimum sample size and cut-point number of positives to achieve specified population sensitivity, for given population size and other parameters, using freecalc algorithm, all paramaters must be scalars
1  | n.c.freecalc(N, sep = 0.95, c = 1, se, sp = 1, pstar, minSpH = 0.95)
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N | 
 population size  | 
sep | 
 target population sensitivity  | 
c | 
 The maximum allowed cut-point number of positives to classify a cluster as positive, default=1, if positives < c result is negative, >= c is positive  | 
se | 
 test unit sensitivity  | 
sp | 
 test unit specificity, default=1  | 
pstar | 
 design prevalence as a proportion or integer (number of infected units)  | 
minSpH | 
 minimium desired population specificity  | 
a list of 3 elements, a dataframe with 1 row and six columns for the recommended sample size and corresponding values for population sensitivity (SeP), population specificity (SpP), N, c and pstar, a vector of SeP values and a vector of SpP values, for n = 1:N
1 2 3  | # examples for n.c.hp
n.c.freecalc(120,0.95,c=5,se=0.9,sp=0.99,pstar=0.1, minSpH=0.9)[[1]]
n.c.freecalc(65,0.95,c=5,se=0.95,sp=0.99,pstar=0.05, minSpH=0.9)
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