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This vignette provides an overview of the functions that can be used to estimate the probability of detecting a pathogen variant in a population, given a periodic sampling scheme with a fixed sample size.
By specifying sampling_freq = "cont"
, the
vartrack_samplesize_detect()
function can be used to
calculate the probability of detecting a particular variant in the
population within a specific number of days since its introduction, OR
by the time the variant reaches a specific frequency. As with the
cross-sectional option (sampling_freq = "xsect"
; see
Estimating the probability of detecting a variant: cross-sectional), this
requires knowledge of the coefficient of detection ratio between two
pathogen variants (or, more commonly, one variant and the rest of the
pathogen population). The coefficient of detection ratio for two
variants can be calculated using the vartrack_cod_ratio()
function (see Estimating
bias in observed variant prevalence for more details). Since we
are only interested in the ratio of the coefficients of detection,
applying this function only requires providing parameters which are
expected to differ between variants. The ratio between any variants not
provided is assumed to be equal to one.
Once we have an estimate of the coefficient of detection ratio, we can calculate the sample size needed for detection from the following parameters:
Param | Variable Name | Description |
---|---|---|
\(n\) | n | the per-day sample size |
\(t\) | t | the number of days after introduction a variant should be detected by |
\(P_{V_1}\) | p_detect | the desired prevalence to detect a variant by |
\(\omega\) | omega | the sequencing success rate |
\(P_{0_{V_1}}\) | p0_v1 | the initial variant prevalence (# introductions / population size) |
\(r_{V_1}\) | r_v1 | the estimated logistic growth rate of the variant (per day) |
\(\frac{C_{V_1}}{C_{V_2}}\) | c_ratio | the coefficient of detection ratio, calculated as the ratio of the
coefficients of variant 1 to variant 2 (can be calculated using
vartrack_cod_ratio() ) |
To calculate the probability of detection assuming periodic sampling, we must provide either the number of days after introduction a variant should be detected by (\(t\)) OR the desired prevalence to detect a variant by (\(P_{V_1}\)), but not both. All other parameters listed above are required.
Therefore, if we would like to know the probability of detecting a
variant by the time it reaches 1% prevalence in the population, we can
apply the vartrack_prob_detect()
function as follows:
library(phylosamp)
<- vartrack_cod_ratio(phi_v1=0.975, phi_v2=0.95, gamma_v1=0.8, gamma_v2=0.6)
c1_c2 vartrack_prob_detect(n=20, p_v1=0.01, omega=0.8, p0_v1=3/10000,
r_v1=0.1, c_ratio=c1_c2, sampling_freq="cont")
## Calculating probability of detection assuming periodic sampling
## [1] 0.9018312
In other words, we have a 90% probability of detecting a variant by the time it reaches a frequency of 1% in the population if we sequence 20 samples per day (which results in 16 high-quality sequences that can be used for characterization, due to \(\omega=0.8\)).
If instead we are interested in detecting a variant within the first
month of its introduction into the population (assuming all other
parameters are the same as above), we can use the
calc_prob_detect()
function as follows:
<- vartrack_cod_ratio(phi_v1=0.975, phi_v2=0.95, gamma_v1=0.8, gamma_v2=0.6)
c1_c2 vartrack_prob_detect(n=20, t=30, omega=0.8, p0_v1=3/10000, r_v1=0.1,
c_ratio=c1_c2, sampling_freq="cont")
## Calculating probability of detection assuming periodic sampling
## [1] 0.7130925
Here we can see that we have only a 71% chance of detecting the variant within 30 days given the same sampling scheme and sequencing success rate.
The phylosamp
package currently does not provide
functionality for estimating the confidence in a prevalence estimate
given a periodic sampling strategy. However, it can be used to calculate
the sample size needed given a confidence level and either periodic or cross-sectional sampling
strategies.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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