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EpiNow2: Estimate real-time case counts and time-varying epidemiological parameters

This package estimates the time-varying reproduction number, growth rate, and doubling time using a range of open-source tools (Abbott et al.), and current best practices (Gostic et al.). It aims to help users avoid some of the limitations of naive implementations in a framework that is informed by community feedback and is actively supported.

It estimates the time-varying reproduction number on cases by date of infection (using a similar approach to that implemented in {EpiEstim}). Imputed infections are then mapped to observed data (for example cases by date of report) via a series of uncertain delay distributions (in the examples in the package documentation these are an incubation period and a reporting delay) and a reporting model that can include weekly periodicity.

Uncertainty is propagated from all inputs into the final parameter estimates, helping to mitigate spurious findings. This is handled internally. The time-varying reproduction estimates and the uncertain generation time also give time-varying estimates of the rate of growth.

The default model uses a non-stationary Gaussian process to estimate the time-varying reproduction number and then infer infections. Other options include:

  • A stationary Gaussian process (faster to estimate but currently gives reduced performance for real time estimates).
  • User specified breakpoints.
  • A fixed reproduction number.
  • As piecewise constant by combining a fixed reproduction number with breakpoints.
  • As a random walk (by combining a fixed reproduction number with regularly spaced breakpoints (i.e weekly)).
  • Inferring infections using deconvolution/back-calculation and then calculating the time-varying reproduction number.
  • Adjustment for the remaining susceptible population beyond the forecast horizon.

These options generally reduce runtimes at the cost of the granularity of estimates or at the cost of real-time performance.

The documentation for estimate_infections provides examples of the implementation of the different options available.

Forecasting is also supported for the time-varying reproduction number, infections and reported cases using the same generative process approach as used for estimation.

A simple example of using the package to estimate a national Rt for Covid-19 can be found here.

EpiNow2 also supports adjustment for truncated data via estimate_truncation() (though users may be interested in more flexibility and if so should check out the epinowcast package), and for estimating dependent observations (i.e deaths based on hospital admissions) using estimate_secondary().

Installation

Install the released version of the package:

install.packages("EpiNow2")

Install the development version of the package with:

install.packages("EpiNow2", repos = "https://epiforecasts.r-universe.dev")

Alternatively, install the development version of the package with pak as follows (few users should need to do this):

# check whether {pak} is installed
if (!require("pak")) {
  install.packages("pak")
}
pak::pkg_install("epiforecasts/EpiNow2")

If using pak fails, try:

# check whether {remotes} is installed
if (!require("remotes")) {
  install.packages("remotes")
}
remotes::install_github("epiforecasts/EpiNow2")

Windows users will need a working installation of Rtools in order to build the package from source. See here for a guide to installing Rtools for use with Stan (which is the statistical modelling platform used for the underlying model). For simple deployment/development a prebuilt docker image is also available (see documentation here).

Quick start

{EpiNow2} is designed to be used with a single function call or to be used in an ad-hoc fashion via individual function calls. The core functions of {EpiNow2} are the two single-call functions epinow(), regional_epinow(), plus functions estimate_infections(), estimate_secondary() and estimate_truncation(). In the following section we give an overview of the simple use case for epinow and regional_epinow. estimate_infections() can be used on its own to infer the underlying infection case curve from reported cases and estimate Rt. Estimating the underlying infection case curve via back-calculation (and then calculating Rt) is substantially less computationally demanding than generating using default settings but may result in less reliable estimates of Rt. For more details on using each function see the function documentation.

The first step to using the package is to load it as follows.

library(EpiNow2)

Reporting delays, incubation period and generation time

Distributions can either be fitted using package functionality or determined elsewhere and then defined with uncertainty for use in {EpiNow2}. When data is supplied a subsampled bootstrapped lognormal will be fit (to account for uncertainty in the observed data without being biased by changes in incidence). An arbitrary number of delay distributions are supported with the most common use case likely to be a incubation period followed by a reporting delay.

For example if data on the delay between onset and infection was available we could fit a distribution to it with appropriate uncertainty as follows (note this is a synthetic example),

reporting_delay <- estimate_delay(
  rlnorm(1000, log(2), 1),
  max_value = 15, bootstraps = 1
)

If data was not available we could instead make an informed estimate of the likely delay (this is a synthetic example and not applicable to real world use cases and we have not included uncertainty to decrease runtimes),

reporting_delay <- dist_spec(
  mean = convert_to_logmean(2, 1), sd = convert_to_logsd(2, 1), max = 10,
  dist = "lognormal"
)

Here we define the incubation period and generation time based on literature estimates for Covid-19 (see here for the code that generates these estimates). Note that these distributions may not be applicable for your use case and that we have not included uncertainty here to reduce the runtime of this example but in most settings this is not recommended.

generation_time <- get_generation_time(
  disease = "SARS-CoV-2", source = "ganyani", max = 10, fixed = TRUE
)
incubation_period <- get_incubation_period(
  disease = "SARS-CoV-2", source = "lauer", max = 10, fixed = TRUE
)

epinow()

This function represents the core functionality of the package and includes results reporting, plotting and optional saving. It requires a data frame of cases by date of report and the distributions defined above.

Load example case data from {EpiNow2}.

reported_cases <- example_confirmed[1:60]
head(reported_cases)
#>          date confirm
#> 1: 2020-02-22      14
#> 2: 2020-02-23      62
#> 3: 2020-02-24      53
#> 4: 2020-02-25      97
#> 5: 2020-02-26      93
#> 6: 2020-02-27      78

Estimate cases by date of infection, the time-varying reproduction number, the rate of growth and forecast these estimates into the future by 7 days. Summarise the posterior and return a summary table and plots for reporting purposes. If a target_folder is supplied results can be internally saved (with the option to also turn off explicit returning of results). Here we use the default model parameterisation that prioritises real-time performance over run-time or other considerations. For other formulations see the documentation for estimate_infections().

estimates <- epinow(
  reported_cases = reported_cases,
  generation_time = generation_time_opts(generation_time),
  delays = delay_opts(incubation_period + reporting_delay),
  rt = rt_opts(prior = list(mean = 2, sd = 0.2)),
  stan = stan_opts(cores = 4, control = list(adapt_delta = 0.99)),
  verbose = interactive()
)
names(estimates)
#> [1] "estimates"                "estimated_reported_cases"
#> [3] "summary"                  "plots"                   
#> [5] "timing"

Both summary measures and posterior samples are returned for all parameters in an easily explored format which can be accessed using summary. The default is to return a summary table of estimates for key parameters at the latest date partially supported by data.

knitr::kable(summary(estimates))
measureestimate
New confirmed cases by infection date2313 (1159 – 4345)
Expected change in daily casesLikely decreasing
Effective reproduction no.0.89 (0.62 – 1.2)
Rate of growth-0.026 (-0.1 – 0.038)
Doubling/halving time (days)-26 (18 – -6.7)

Summarised parameter estimates can also easily be returned, either filtered for a single parameter or for all parameters.

head(summary(estimates, type = "parameters", params = "R"))
#>          date variable strat     type   median     mean         sd lower_90
#> 1: 2020-02-22        R    NA estimate 2.140044 2.142893 0.13818099 1.937615
#> 2: 2020-02-23        R    NA estimate 2.105628 2.106892 0.11415164 1.936612
#> 3: 2020-02-24        R    NA estimate 2.068985 2.069442 0.09420757 1.921287
#> 4: 2020-02-25        R    NA estimate 2.031434 2.030725 0.07830576 1.907767
#> 5: 2020-02-26        R    NA estimate 1.991226 1.990969 0.06634858 1.884688
#> 6: 2020-02-27        R    NA estimate 1.950962 1.950427 0.05807390 1.856440
#>    lower_50 lower_20 upper_20 upper_50 upper_90
#> 1: 2.046299 2.104219 2.174057 2.232616 2.370781
#> 2: 2.025782 2.075403 2.132810 2.182697 2.294095
#> 3: 2.003747 2.044222 2.090967 2.131610 2.225019
#> 4: 1.977390 2.010528 2.048636 2.082264 2.163819
#> 5: 1.944677 1.974170 2.008207 2.035011 2.103163
#> 6: 1.910567 1.935790 1.965265 1.988672 2.046538

Reported cases are returned in a separate data frame in order to streamline the reporting of forecasts and for model evaluation.

head(summary(estimates, output = "estimated_reported_cases"))
#>          date  type median     mean       sd lower_90 lower_50 lower_20
#> 1: 2020-02-22 gp_rt   65.5  67.2870 18.83096       40       54       61
#> 2: 2020-02-23 gp_rt   78.0  78.8395 21.73755       47       63       72
#> 3: 2020-02-24 gp_rt   77.0  78.8920 21.59142       47       64       72
#> 4: 2020-02-25 gp_rt   73.0  75.0705 20.82804       45       61       68
#> 5: 2020-02-26 gp_rt   78.0  79.8325 22.03166       47       65       73
#> 6: 2020-02-27 gp_rt  110.0 112.9160 28.92359       71       92      103
#>    upper_20 upper_50 upper_90
#> 1:       70    79.00      101
#> 2:       83    92.00      117
#> 3:       82    92.00      116
#> 4:       78    87.00      115
#> 5:       83    91.25      120
#> 6:      118   130.00      165

A range of plots are returned (with the single summary plot shown below). These plots can also be generated using the following plot method.

plot(estimates)

regional_epinow()

The regional_epinow() function runs the epinow() function across multiple regions in an efficient manner.

Define cases in multiple regions delineated by the region variable.

reported_cases <- data.table::rbindlist(list(
  data.table::copy(reported_cases)[, region := "testland"],
  reported_cases[, region := "realland"]
))
head(reported_cases)
#>          date confirm   region
#> 1: 2020-02-22      14 testland
#> 2: 2020-02-23      62 testland
#> 3: 2020-02-24      53 testland
#> 4: 2020-02-25      97 testland
#> 5: 2020-02-26      93 testland
#> 6: 2020-02-27      78 testland

Calling regional_epinow() runs the epinow() on each region in turn (or in parallel depending on the settings used). Here we switch to using a weekly random walk rather than the full Gaussian process model giving us piecewise constant estimates by week.

estimates <- regional_epinow(
  reported_cases = reported_cases,
  generation_time = generation_time_opts(generation_time),
  delays = delay_opts(incubation_period + reporting_delay),
  rt = rt_opts(prior = list(mean = 2, sd = 0.2), rw = 7),
  gp = NULL,
  stan = stan_opts(cores = 4, warmup = 250, samples = 1000)
)
#> INFO [2023-06-09 13:52:11] Producing following optional outputs: regions, summary, samples, plots, latest
#> INFO [2023-06-09 13:52:11] Reporting estimates using data up to: 2020-04-21
#> INFO [2023-06-09 13:52:11] No target directory specified so returning output
#> INFO [2023-06-09 13:52:11] Producing estimates for: testland, realland
#> INFO [2023-06-09 13:52:11] Regions excluded: none
#> INFO [2023-06-09 13:52:40] Completed estimates for: testland
#> INFO [2023-06-09 13:53:07] Completed estimates for: realland
#> INFO [2023-06-09 13:53:07] Completed regional estimates
#> INFO [2023-06-09 13:53:07] Regions with estimates: 2
#> INFO [2023-06-09 13:53:07] Regions with runtime errors: 0
#> INFO [2023-06-09 13:53:07] Producing summary
#> INFO [2023-06-09 13:53:07] No summary directory specified so returning summary output
#> INFO [2023-06-09 13:53:08] No target directory specified so returning timings

Results from each region are stored in a regional list with across region summary measures and plots stored in a summary list. All results can be set to be internally saved by setting the target_folder and summary_dir arguments. Each region can be estimated in parallel using the {future} package (when in most scenarios cores should be set to 1). For routine use each MCMC chain can also be run in parallel (with future = TRUE) with a time out (max_execution_time) allowing for partial results to be returned if a subset of chains is running longer than expected. See the documentation for the {future} package for details on nested futures.

Summary measures that are returned include a table formatted for reporting (along with raw results for further processing). Futures updated will extend the S3 methods used above to smooth access to this output.

knitr::kable(estimates$summary$summarised_results$table)
RegionNew confirmed cases by infection dateExpected change in daily casesEffective reproduction no.Rate of growthDoubling/halving time (days)
realland2176 (1192 – 4065)Likely decreasing0.87 (0.65 – 1.1)-0.032 (-0.096 – 0.03)-22 (23 – -7.2)
testland2217 (1150 – 4155)Likely decreasing0.87 (0.64 – 1.2)-0.031 (-0.099 – 0.036)-23 (19 – -7)

A range of plots are again returned (with the single summary plot shown below).

estimates$summary$summary_plot

Reporting templates

Rmarkdown templates are provided in the package (templates) for semi-automated reporting of estimates. If using these templates to report your results please highlight our limitations as these are key to understanding the results from {EpiNow2} .

Contributing

File an issue here if you have identified an issue with the package. Please note that due to operational constraints priority will be given to users informing government policy or offering methodological insights. We welcome all contributions, in particular those that improve the approach or the robustness of the code base. We also welcome additions and extensions to the underlying model either in the form of options or improvements.

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install.packages('EpiNow2')

Monthly Downloads

718

Version

1.4.0

License

MIT + file LICENSE

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Maintainer

Sam Abbott

Last Published

September 26th, 2023

Functions in EpiNow2 (1.4.0)

create_obs_model

Create Observation Model Settings
construct_output

Construct Output
create_initial_conditions

Create Initial Conditions Generating Function
create_gp_data

Create Gaussian Process Data
create_clean_reported_cases

Create Clean Reported Cases
create_future_rt

Construct the Required Future Rt assumption
dist_fit

Fit an Integer Adjusted Exponential, Gamma or Lognormal distributions
delay_opts

Delay Distribution Options
create_rt_data

Create Time-varying Reproduction Number Data
dist_spec_plus

Creates a delay distribution as the sum of two other delay distributions
epinow

Real-time Rt Estimation, Forecasting and Reporting
expose_stan_fns

Expose internal package stan functions in R
extract_CrIs

Extract Credible Intervals Present
estimate_delay

Estimate a Delay Distribution
extract_parameter

Extract Samples for a Parameter from a Stan model
extract_inits

Generate initial conditions from a Stan fit
estimate_infections

Estimate Infections, the Time-Varying Reproduction Number and the Rate of Growth
estimate_secondary

Estimate a Secondary Observation from a Primary Observation
estimate_truncation

Estimate Truncation of Observed Data
get_incubation_period

Get a Literature Distribution for the Incubation Period
get_generation_time

Get a Literature Distribution for the Generation Time
generation_times

Literature Estimates of Generation Times
get_dist

Get a Literature Distribution
create_shifted_cases

Create Delay Shifted Cases
create_stan_args

Create a List of Stan Arguments
forecast_secondary

Forecast Secondary Observations Given a Fit from estimate_secondary
get_regions

Get Folders with Results
format_fit

Format Posterior Samples
get_regions_with_most_reports

Get Regions with Most Reported Cases
extract_static_parameter

Extract Samples from a Parameter with a Single Dimension
create_stan_data

Create Stan Data Required for estimate_infections
create_stan_delays

Create delay variables for stan
dist_skel

Distribution Skeleton
filter_opts

Filter Options for a Target Region
get_seeding_time

Estimate seeding time from delays and generation time
generation_time_opts

Generation Time Distribution Options
gamma_dist_def

Generate a Gamma Distribution Definition Based on Parameter Estimates
get_raw_result

Get a Single Raw Result
obs_opts

Observation Model Options
opts_list

Return an _opts List per Region
get_regional_results

Get Combined Regional Results
map_prob_change

Categorise the Probability of Change for Rt
make_conf

Format Credible Intervals
extract_parameter_samples

Extract Parameter Samples from a Stan Model
fit_model_with_nuts

Fit a Stan Model using the NUTs sampler
plot_estimates

Plot Estimates
extract_stan_param

Extract a Parameter Summary from a Stan Object
plot_summary

Plot a Summary of the Latest Results
dist_spec

Specify a distribution.
gp_opts

Approximate Gaussian Process Settings
sample_approx_dist

Approximate Sampling a Distribution using Counts
plot.estimate_infections

Plot method for estimate_infections
rstan_sampling_opts

Rstan Sampling Options
fit_model_with_vb

Fit a Stan Model using Variational Inference
rstan_opts

Rstan Options
incubation_periods

Literature Estimates of Incubation Periods
growth_to_R

Convert Growth Rates to Reproduction numbers.
plot.estimate_secondary

Plot method for estimate_secondary
run_region

Run epinow with Regional Processing Code
+.dist_spec

Creates a delay distribution as the sum of two other delay distributions
print.dist_spec

Prints the parameters of one or more delay distributions
secondary_opts

Secondary Reports Options
set_dt_single_thread

Set to Single Threading
save_estimate_infections

Save Estimated Infections
save_input

Save Observed Data
example_confirmed

Example Confirmed Case Data Set
estimates_by_report_date

Estimate Cases by Report Date
setup_future

Set up Future Backend
match_output_arguments

Match User Supplied Arguments with Supported Options
mean.dist_spec

Returns the mean of one or more delay distribution
simulate_secondary

Simulate a secondary observation
stan_opts

Stan Options
process_region

Process regional estimate
process_regions

Process all Region Estimates
summarise_key_measures

Summarise rt and cases
summarise_results

Summarise Real-time Results
setup_logging

Setup Logging
setup_target_folder

Setup Target Folder for Saving
simulate_infections

Simulate infections using a given trajectory of the time-varying reproduction number
update_horizon

Updates Forecast Horizon Based on Input Data and Target
report_plots

Report plots
report_summary

Provide Summary Statistics for Estimated Infections and Rt
update_list

Update a List
lognorm_dist_def

Generate a Log Normal Distribution Definition Based on Parameter Estimates
plot.estimate_truncation

Plot method for estimate_truncation
plot.epinow

Plot method for epinow
init_cumulative_fit

Generate initial conditions by fitting to cumulative cases
plot.dist_spec

Plot PMF and CDF for a dist_spec object
plot_CrIs

Plot EpiNow2 Credible Intervals
rstan_vb_opts

Rstan Variational Bayes Options
setup_default_logging

Setup Default Logging
summary.epinow

Summary output from epinow
setup_dt

Convert to Data Table
rt_opts

Time-Varying Reproduction Number Options
summary.estimate_infections

Summary output from estimate_infections
regional_runtimes

Summarise Regional Runtimes
regional_epinow

Real-time Rt Estimation, Forecasting and Reporting by Region
regional_summary

Regional Summary Output
report_cases

Report case counts by date of report
trunc_opts

Truncation Distribution Options
tune_inv_gamma

Tune an Inverse Gamma to Achieve the Target Truncation
update_secondary_args

Update estimate_secondary default priors
adjust_infection_to_report

Adjust from Case Counts by Infection Date to Date of Report
add_day_of_week

Adds a day of the week vector
EpiNow2-package

EpiNow2: Estimate Real-Time Case Counts and Time-Varying Epidemiological Parameters
R_to_growth

Convert Reproduction Numbers to Growth Rates
calc_summary_stats

Calculate Summary Statistics
clean_nowcasts

Clean Nowcasts for a Supplied Date
allocate_delays

Allocate Delays into Required Stan Format
allocate_empty

Allocate Empty Parameters to a List
convert_to_logmean

Convert mean and sd to log mean for a log normal distribution
backcalc_opts

Back Calculation Options
c.dist_spec

Combines multiple delay distributions for further processing
calc_CrI

Calculate Credible Interval
copy_results_to_latest

Copy Results From Dated Folder to Latest
create_backcalc_data

Create Back Calculation Data
bootstrapped_dist_fit

Fit a Subsampled Bootstrap to Integer Values and Summarise Distribution Parameters
clean_regions

Clean Regions
calc_CrIs

Calculate Credible Intervals
calc_summary_measures

Calculate All Summary Measures
convert_to_logsd

Convert mean and sd to log standard deviation for a log normal distribution