R
code and outputs to support Carrasco-Escobar G,Jesús M. Quispe Quispe, Arnab K. Dey, Changwoo Han, François Rerolle, Verónica Soto, Hugo Rodrigues, Alejandro Llanos-Cuentas, Tarik Benmarhnia. Two-Stage Interrupted Time Series Analysis with Machine Learning: Evaluating the Effectiveness of Malaria Interventions in Peru as a Case Study
Figure 2 : Choropleth map of absolute change between observed and counterfactual malaria incidence by specie in Post PAMAFRO intervention period.
This study proposes that malaria control programs contributed in reducing malaria incidence during the period of their effectiveness. We assessed these two interventions using monthly malaria incidence data for Plasmodium vivax and P. falciparum in Loreto, Peru (2001–2019). Employing a two-stage ITS framework that incorporates machine learning algorithms, we examined how both the PMC and PAMAFRO interventions contributed to reducing malaria incidence.
Data
Data Employed to reproduce the resultsAnalysis
R markdowns and outputs.- 02_Calculate_ML
R
markdown for data preparation,preprocessing and model building.
- 03_Results
R
markdown to present the results of the data analysis.
- fit_preintervention Folder with the fitted values in comparison to training dataset
- forecast_intervention Folder with the forecasted values in comparison to test dataset
- models_postuning Folder with the models per intervention per specie
Figures
Figures of our main resultsOthers
- .gitignore
- .Rprofile
- README.md
- ITS_ML.Rproj
R
project file.
Detailed information about the R
environment and version used for running this project.
_
platform x86_64-w64-mingw32
arch x86_64
os mingw32
system x86_64, mingw32
status
major 4
minor 3.1
year 2023
month 06
day 16
svn rev 84548
language R
version.string R version 4.3.1 (2023-06-16 ucrt)
nickname Beagle Scouts