{ "background": "Accurate forecasting of clinical demand is critical for resource allocation in emergency care systems, yet robust methodological frameworks for low-resource settings are lacking. This study addresses a gap in predictive analytics for clinical outcomes within sub-Saharan African emergency units. ", "purpose and objectives": "To develop and methodologically evaluate a time-series forecasting model for key clinical outcomes in a resource-constrained emergency care setting. The primary objective was to assess the model's predictive accuracy for patient mortality and unplanned reattendance. ", "methodology": "An intervention study using historical, de-identified patient data from multiple emergency units. A seasonal autoregressive integrated moving average (SARIMA) model was employed, specified as \ (B) \ (Bˢ) \ᵈ\Ds yt = \ (B) \ (Bˢ) \, where yt represents the clinical outcome count. Model performance was evaluated using rolling-origin forecasting with mean absolute scaled error (MASE) and 95% prediction intervals. ", "findings": "The SARIMA model demonstrated moderate forecasting accuracy for daily mortality counts (MASE = 0. 87), with prediction intervals reliably capturing observed volatility. However, forecasts for reattendance showed poorer performance (MASE = 1. 32), indicating greater unpredictability. Model diagnostics suggested residual autocorrelation, implying unmodelled temporal dynamics. ", "conclusion": "The proposed time-series model provides a feasible, statistically grounded tool for short-term forecasting of mortality in this emergency care context, but its utility for forecasting reattendance is limited. The methodological evaluation highlights specific challenges in modelling clinical outcomes in volatile, low-resource settings. ", "recommendations": "Future implementations should integrate exogenous variables (e. g. , seasonal disease incidence) to improve model specification. Emergency unit managers should adopt such forecasting models cautiously, using them as one component of a broader situational awareness toolkit rather than for precise operational targeting. ", "key words": "forecasting, clinical outcomes, emergency care, time-series analysis
Jean de Dieu Uwimana (Tue,) studied this question.