Quantifying and reducing statistical uncertainty in sample-based health program costing studies in low- and middle-income countries.
Claudia L Rivera-RodriguezStephen ReschSebastien J-P A HaneusePublished in: SAGE open medicine (2018)
Measures of statistical uncertainty associated with survey-based estimates of program costs, such as standard errors and 95% confidence intervals, provide important contextual information for health policy decision-making and key inputs for the design of future costing studies. Such measures are often not reported, possibly because of technical challenges associated with their calculation and a lack of awareness of appropriate software. Modern statistical analysis methods for survey data, such as calibration, provide a means to exploit additional information that is readily available but was not used in the design of the study to significantly improve the estimation of total cost through the reduction of statistical uncertainty.