Abstract

BackgroundThe burden of severe acute malnutrition (SAM) is estimated using unadjusted prevalence estimates. SAM is an acute condition and many children with SAM will either recover or die within a few weeks. Estimating SAM burden using unadjusted prevalence estimates results in significant underestimation. This has a negative impact on allocation of resources for the prevention and treatment of SAM. A simple method for adjusting prevalence estimates intended to improve the accuracy of burden estimates and caseload predictions has been proposed. This method employs an incidence correction factor. Application of this method using the globally recommended incidence correction factor has led to programs underestimating burden and caseload in some settings.MethodsA method for estimating a locally appropriate incidence correction factor from prevalence, population size, program caseload, and program coverage was developed and tested using data from the Nigerian national SAM treatment program.ResultsApplying the developed method resulted in errors in caseload prediction of about 10%. This is a considerable improvement upon the current method, which resulted in a 79.5% underestimate. Methods for improving the precision of estimates are proposed.ConclusionsIt is possible to considerably improve predictions of caseload by applying a simple model to data that are readily available to program managers. This implies that more accurate estimates of burden may also be made using the same methods and data.

Highlights

  • The burden of severe acute malnutrition (SAM) is estimated using unadjusted prevalence estimates

  • This figure is based on prevalence estimates from cross-sectional surveys

  • Burden is the sum of prevalent cases at the start of a period and incident cases that arise during that period

Read more

Summary

Introduction

The burden of severe acute malnutrition (SAM) is estimated using unadjusted prevalence estimates. Estimating SAM burden using unadjusted prevalence estimates results in significant underestimation This has a negative impact on allocation of resources for the prevention and treatment of SAM. A simple method for adjusting prevalence estimates intended to improve the accuracy of burden estimates and caseload predictions has been proposed This method employs an incidence correction factor. It has been estimated that SAM affected more than 16 million children globally in 2016 [3] This figure is based on prevalence estimates from cross-sectional surveys. The number of prevalent cases in a population at a given point in time can be estimated using a combination of a prevalence estimate from a cross-sectional survey and population data This information is usually already available to program managers.

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call