Abstract

BackgroundSeveral studies have highlighted the use of serological data in detecting a reduction in malaria transmission intensity. These studies have typically used serology as an adjunct measure and no formal examination of sample size calculations for this approach has been conducted.MethodsA sample size calculator is proposed for cross-sectional surveys using data simulation from a reverse catalytic model assuming a reduction in seroconversion rate (SCR) at a given change point before sampling. This calculator is based on logistic approximations for the underlying power curves to detect a reduction in SCR in relation to the hypothesis of a stable SCR for the same data. Sample sizes are illustrated for a hypothetical cross-sectional survey from an African population assuming a known or unknown change point.ResultsOverall, data simulation demonstrates that power is strongly affected by assuming a known or unknown change point. Small sample sizes are sufficient to detect strong reductions in SCR, but invariantly lead to poor precision of estimates for current SCR. In this situation, sample size is better determined by controlling the precision of SCR estimates. Conversely larger sample sizes are required for detecting more subtle reductions in malaria transmission but those invariantly increase precision whilst reducing putative estimation bias.ConclusionsThe proposed sample size calculator, although based on data simulation, shows promise of being easily applicable to a range of populations and survey types. Since the change point is a major source of uncertainty, obtaining or assuming prior information about this parameter might reduce both the sample size and the chance of generating biased SCR estimates.Electronic supplementary materialThe online version of this article (doi:10.1186/s12936-015-1050-3) contains supplementary material, which is available to authorized users.

Highlights

  • Several studies have highlighted the use of serological data in detecting a reduction in malaria transmission intensity

  • This paper focuses on sample size calculations for detecting an abrupt reduction in disease transmission occurred somewhere in the past

  • The present paper extends this work to the setting of detecting a reduction in seroconversion rate (SCR) at a given time point before sampling and attributed to a field intervention

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Summary

Introduction

Several studies have highlighted the use of serological data in detecting a reduction in malaria transmission intensity These studies have typically used serology as an adjunct measure and no formal examination of sample size calculations for this approach has been conducted. The global decline of malaria burden has brought new challenges to disease control and elimination [1] These challenges encompass problems related to parasite rate (PR) estimation in detecting low parasitaemia or submicroscopic infections [2,3,4] and potentially prohibitive large sample sizes for PR to be epidemiologically informative. SCR is the frequency per unit of time (e.g., year) by which seronegative individuals become seropositive This parameter, related to the underlying force-of-infection, is typically assessed via cross-sectional data where SP as function of age of the individual is described by a given stochastic

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