Abstract
Public health surveillance systems are critical for early detection and response to disease outbreaks, yet their methodological evaluation, particularly regarding attributable risk reduction, remains underdeveloped in many resource-limited settings. This study aimed to conduct a rigorous methodological evaluation of enhanced surveillance systems and quantify their causal effect on reducing public health risks. We employed a quasi-experimental difference-in-differences (DiD) design, analysing longitudinal data from intervention and matched control regions. The primary model was specified as $Y{it} = \beta0 + \beta1 (Treati \times Postt) + \beta2 Treati + \beta3 Postt + \epsilon{it}$, where $Y{it}$ is the composite risk score. Inference was based on cluster-robust standard errors. The DiD estimator ($\beta1$) was -0.18 (95% CI: -0.31 to -0.05), indicating a statistically significant 18% reduction in the composite risk score attributable to the enhanced surveillance intervention. The parallel trends assumption was validated using pre-intervention data. The enhanced surveillance methodology demonstrated a significant causal effect in mitigating public health risks, confirming the value of targeted system strengthening. Policy should prioritise the scale-up of the evaluated surveillance components. Future evaluations should adopt quasi-experimental designs to robustly estimate programme impact. surveillance evaluation, impact assessment, causal inference, quasi-experimental design, health security This paper provides novel empirical evidence of the causal risk reduction attributable to an enhanced surveillance system, employing a DiD model not previously used for this specific evaluative purpose in the region.