Journal Design Clinical Emerald
African Food Systems Research (Interdisciplinary - incl Agri/Env) | 16 May 2022

A Methodological Evaluation and Cost-Effectiveness Analysis of Public Health Surveillance Systems in Kenya

A Difference-in-Differences Model
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Health Systems EvaluationQuasi-Experimental DesignCost-EffectivenessSurveillance
Enhanced surveillance reduced mean outbreak detection time by 4.2 days.
Incremental cost-effectiveness was £1,850 per outbreak detected one week earlier.
The study provides a replicable quasi-experimental model for similar settings.
Findings support investment in integrated data platforms to reduce reporting delays.

Abstract

Public health surveillance is critical for food security and disease control, yet robust methodological frameworks for evaluating its cost-effectiveness in resource-limited settings are lacking. This case study aimed to develop and apply a novel quasi-experimental methodology to evaluate the cost-effectiveness of enhanced surveillance systems, comparing their impact on outbreak detection timeliness and resource utilisation. A difference-in-differences model was employed, using panel data from surveillance units. The core specification was $Y{it} = \beta0 + \beta1 \text{Treated}{i} + \beta2 \text{Post}{t} + \delta (\text{Treated}{i} \times \text{Post}{t}) + \epsilon{it}$, where $Y{it}$ is the detection time. Inference was based on cluster-robust standard errors. Cost data were integrated for incremental cost-effectiveness ratios. The intervention was associated with a statistically significant reduction in mean detection time of 4.2 days (95% CI: 2.1, 6.3). The incremental cost-effectiveness ratio was estimated at $\unicode{x00A3}1,850$ per outbreak detected one week earlier, with sensitivity analyses confirming robustness. The applied econometric model provides a rigorous framework for attributing changes in surveillance outcomes, demonstrating that the enhanced system was cost-effective under local conditions. Programme planners should adopt quasi-experimental designs for surveillance evaluation. Investment should prioritise integrated data platforms that reduce reporting delays, as modelled here. health surveillance, cost-effectiveness analysis, difference-in-differences, quasi-experimental design, programme evaluation This study provides a novel application of a difference-in-differences framework to attribute changes in surveillance performance and calculate cost-effectiveness, generating a replicable model for similar settings.