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A decay-adjusted spatio-temporal model to account for the impact of mass drug administration on neglected tropical disease prevalence

Published 3 days agoVersion 1arXiv:2512.03760

Authors

Emanuele Giorgi, Claudio Fronterre, Peter J. Diggle

Categories

stat.APstat.ME

Abstract

Prevalence surveys are routinely used to monitor the effectiveness of mass drug administration (MDA) programmes for controlling neglected tropical diseases (NTDs). We propose a decay-adjusted spatio-temporal (DAST) model that explicitly accounts for the time-varying impact of MDA on NTD prevalence, providing a flexible and interpretable framework for estimating intervention effects from sparse survey data. Using case studies on soil-transmitted helminths and lymphatic filariasis, we show that DAST offers a practical alternative to standard geostatistical models when the objective includes quantifying MDA impact and supporting short-term programmatic forecasting. We also discuss extensions and identifiability challenges, advocating for data-driven parsimony over complexity in settings where the available data are too sparse to support the estimation of highly parameterised models.

A decay-adjusted spatio-temporal model to account for the impact of mass drug administration on neglected tropical disease prevalence

3 days ago
v1
3 authors

Categories

stat.APstat.ME

Abstract

Prevalence surveys are routinely used to monitor the effectiveness of mass drug administration (MDA) programmes for controlling neglected tropical diseases (NTDs). We propose a decay-adjusted spatio-temporal (DAST) model that explicitly accounts for the time-varying impact of MDA on NTD prevalence, providing a flexible and interpretable framework for estimating intervention effects from sparse survey data. Using case studies on soil-transmitted helminths and lymphatic filariasis, we show that DAST offers a practical alternative to standard geostatistical models when the objective includes quantifying MDA impact and supporting short-term programmatic forecasting. We also discuss extensions and identifiability challenges, advocating for data-driven parsimony over complexity in settings where the available data are too sparse to support the estimation of highly parameterised models.

Authors

Emanuele Giorgi, Claudio Fronterre, Peter J. Diggle

arXiv ID: 2512.03760
Published Dec 3, 2025

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