Journal Design Clinical Emerald
African Food Systems Research (Interdisciplinary - incl Agri/Env) | 07 March 2023

A Methodological Evaluation of Public Health Surveillance Systems in Tanzania

A Difference-in-Differences Model for Assessing Adoption Rates (2000–2026)
N, e, e, m, a, M, w, a, k, y, e, m, b, e, ,, J, u, m, a, R, a, s, h, i, d, i
Difference-in-DifferencesHealth SurveillanceCausal InferenceTanzania
Employs a difference-in-differences model to estimate causal effects of a national surveillance strategy.
Focuses on the phased rollout of Tanzania's Integrated Disease Surveillance and Response system.
Aims to quantify the strategy's impact on adoption rates across healthcare facilities.
Designed to provide a rigorous methodological template for similar evaluations.

Abstract

{ "background": "Public health surveillance systems are critical for disease control, yet methodological frameworks for evaluating their adoption and impact in low-resource settings remain underdeveloped. Existing assessments often lack robust counterfactuals, limiting causal inference on the effectiveness of system enhancements and policy interventions.", "purpose and objectives": "This protocol details a methodological evaluation to quantify the causal effect of a national integrated disease surveillance and response (IDSR) strategy on its adoption across healthcare facilities. The primary objective is to estimate the strategy's average treatment effect on the treated (ATT) using a quasi-experimental design.", "methodology": "We employ a difference-in-differences model, leveraging the phased rollout of the IDSR strategy. The model is specified as $Y{it} = \\beta0 + \\beta1 (Treati \\times Postt) + \\gammai + \\deltat + \\epsilon{it}$, where $Y_{it}$ is the adoption rate in facility $i$ at time $t$. Facility and time fixed effects are included. Inference will be based on cluster-robust standard errors at the district level to account for spatial correlation.", "findings": "As a research protocol, this paper does not present empirical results. Anticipated findings include a quantitative estimate of the ATT, with a hypothesised positive direction and a magnitude exceeding a 15-percentage-point increase in adoption rates among intervention facilities. The analysis will test for parallel pre-trends as a key model assumption.", "conclusion": "The proposed methodology is designed to provide a rigorous, evidence-based assessment of surveillance system strengthening, moving beyond descriptive metrics to causal attribution.", "recommendations": "We recommend the application of this quasi-experimental framework for evaluating other health system interventions in similar contexts, emphasising the need for careful selection of control groups and validation of modelling assumptions.", "key words": "health surveillance, impact evaluation, difference-in-differences, causal inference, health systems, Tanzania", "contribution statement": "This