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The Automated and Early Detection of Seasonal Epidemic Onset (aedseo
) Package provides a powerful tool for automating the early detection of seasonal epidemic onsets in time series data. It offers the ability to estimate growth rates for consecutive time intervals and calculate the Sum of Cases (SoC) within those intervals. This package is particularly useful for epidemiologists, public health professionals, and researchers seeking to identify and respond to seasonal epidemics in a timely fashion.
You can install the development version of aedseo
from GitHub with:
To quickly get started with aedseo
, follow these steps:
library(aedseo)
.aedseo_tsd
) from your data using the tsd()
function.aedseo()
function to estimate growth rates and detect seasonal epidemic onsets.# Load the package
library(aedseo)
# Create a aedseo_tsd object from your data
tsd_data <- tsd(
observed = c(100, 120, 150, 180, 220, 270),
time = as.Date(c(
"2023-01-01",
"2023-01-02",
"2023-01-03",
"2023-01-04",
"2023-01-05",
"2023-01-06")
),
time_interval = "day"
)
# Detect seasonal epidemic onsets
aedseo_results <- aedseo(tsd = tsd_data, k = 3, level = 0.95, family = "poisson")
For a more detailed introduction to the workflow of this package, see the introductory vignette.
We welcome contributions to the aedseo
package. Feel free to open issues, submit pull requests, or provide feedback to help us improve.
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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