Public health surveillance systems in Ethiopia are crucial for monitoring diseases and managing public health emergencies efficiently. A novel approach was developed using a time-series forecasting model (e. g. , ARIMA) for analysing surveillance data. Robust standard errors were employed to account for uncertainty in the predictions. The model showed that public health interventions had a significant positive impact on disease prevalence, with a ARIMA (1, 0, 1) forecast predicting a decrease of 25% in new cases over the next year. This study validates the effectiveness of time-series forecasting models for evaluating and improving public health surveillance systems in Ethiopia. Implementing regular model updates based on real-time data could further enhance the accuracy and predictive power of these systems.
Asfawaye et al. (Sat,) studied this question.
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