Journal Design Emerald Editorial
African Food Systems Research (Interdisciplinary - incl Agri/Env) | 16 August 2014

Methodological Evaluation and Time-Series Forecasting of Clinical Outcomes in Senegal's Urban Primary Care Networks

A Meta-Analysis
M, a, m, a, d, o, u, N, d, i, a, y, e, ,, A, ï, s, s, a, t, o, u, D, i, a, g, n, e, ,, F, a, t, o, u, S, a, r, r
Health SystemsForecastingPrimary CareSenegal
Methodological review found 68% of studies used inadequate controls for temporal trends.
SARIMA model forecasts show a stable but sub-optimal trajectory for hypertension control.
Forecasting accuracy assessed via mean absolute percentage error (MAPE) of 4.7%.
Study calls for integration of time-series models into routine health information systems.

Abstract

{ "background": "Urban primary care networks in sub-Saharan Africa are critical for health system performance, yet robust methodological frameworks for evaluating their clinical outcomes longitudinally are lacking. Existing assessments often rely on cross-sectional data, which fail to capture temporal dynamics and system responsiveness.", "purpose and objectives": "This meta-analysis aims to methodologically evaluate the performance measurement systems within Senegal's urban primary care networks and to develop a validated time-series forecasting model for key clinical outcomes to inform proactive management.", "methodology": "A systematic search identified relevant studies and grey literature reporting on clinical outcomes and system performance metrics. Methodological quality was appraised using a modified Cochrane tool. We synthesised data to fit a Seasonal Autoregressive Integrated Moving Average (SARIMA) model, specified as $\\phi(B)\\Phi(B^s)(1-B)^d(1-B^s)^D Yt = \\theta(B)\\Theta(B^s)\\epsilont$, where $Y_t$ represents the clinical outcome time series. Model forecasting accuracy was assessed using mean absolute percentage error (MAPE).", "findings": "The methodological review revealed that 68% of included studies utilised inadequate statistical controls for confounding temporal trends. The fitted SARIMA model for antenatal care coverage demonstrated a MAPE of 4.7% (95% CI: 3.1, 6.3) in out-of-sample forecasts, indicating high predictive precision. Forecasts suggest a stable but sub-optimal trajectory for hypertension control rates without intervention.", "conclusion": "Current evaluation methodologies for primary care networks exhibit significant limitations in addressing time-dependent confounding. The implemented forecasting model provides a technically robust tool for predicting clinical outcomes, enabling evidence-based resource allocation.", "recommendations": "Health authorities should integrate time-series forecasting into routine health management information systems. Future research must prioritise longitudinal study designs and the development of context-specific leading indicators for clinical performance.", "key words": "health systems research, forecasting models, primary health care, urban health, Senegal, time-series analysis