Description Usage Arguments Details Value Examples
Herd Sensitivity calculated with the assumption of an infinite population
1 | hse_infinite(id, n_tested, test_Se, dp)
|
id |
The herdid |
n_tested |
The number tested in each URG |
test_Se |
The sensitivity of the test. This may have length == 1 if all URG and all herds have the same test_Se. It may also have length(test_Se) == length(n_tested). |
dp |
The design prevalence (dp) could be length(dp) == 1 if all URG and herds have the same dp. It could alternatively be length(dp) == length(n_tested) if diff |
Calculate the Herd sensitivity when multiple samples from individual units within the herd. The function does not use the population size to adjust the estimate. This is consistent with the assumption of an infinite population size and is generally used when less than 10
A data.frame. A dataframe is returned with 2 columns: "id" and HSe
1 2 3 4 5 6 7 8 9 10 11 | df <- data.frame(id = seq(1:20),
n_tested = rpois(20, 5),
test_Se = 0.3,
dp = 0.05)
## Calculate the herd level sensitivity for each of these herds given
## the assumption that the herds have an infinite size.
hse_infinite(df$id,
df$n_tested,
df$test_Se,
df$dp)
|
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