Abeku Tarekegn A, de Vlas Sake J, Borsboom Gerard, Teklehaimanot Awash, Kebede Asnakew, Olana Dereje, van Oortmarssen Gerrit J, Habbema J D F
Department of Public Health, Erasmus MC, University Medical Center Rotterdam, The Netherlands.
Trop Med Int Health. 2002 Oct;7(10):851-7. doi: 10.1046/j.1365-3156.2002.00924.x.
The aim of this study was to assess the accuracy of different methods of forecasting malaria incidence from historical morbidity patterns in areas with unstable transmission. We tested five methods using incidence data reported from health facilities in 20 areas in central and north-western Ethiopia. The accuracy of each method was determined by calculating errors resulting from the difference between observed incidence and corresponding forecasts obtained for prediction intervals of up to 12 months. Simple seasonal adjustment methods outperformed a statistically more advanced autoregressive integrated moving average method. In particular, a seasonal adjustment method that uses mean deviation of the last three observations from expected seasonal values consistently produced the best forecasts. Using 3 years' observation to generate forecasts with this method gave lower errors than shorter or longer periods. Incidence during the rainy months of June-August was the most predictable with this method. Forecasts for the normally dry months, particularly December-February, were less accurate. The study shows the limitations of forecasting incidence from historical morbidity patterns alone, and indicates the need for improved epidemic early warning by incorporating external predictors such as meteorological factors.
本研究的目的是评估在疟疾传播不稳定地区,根据历史发病模式预测疟疾发病率的不同方法的准确性。我们使用埃塞俄比亚中部和西北部20个地区卫生设施报告的发病率数据,对五种方法进行了测试。每种方法的准确性通过计算观察到的发病率与长达12个月预测期内相应预测值之间的差异所产生的误差来确定。简单的季节性调整方法优于统计学上更先进的自回归积分移动平均方法。特别是,一种使用最后三个观察值与预期季节值的平均偏差的季节性调整方法始终能产生最佳预测。用这种方法使用3年的观察数据进行预测比更短或更长时间段产生的误差更低。用这种方法,6月至8月雨季期间的发病率最具可预测性。对通常干燥月份(特别是12月至2月)的预测准确性较低。该研究表明仅根据历史发病模式预测发病率的局限性,并指出需要通过纳入气象因素等外部预测指标来改进疫情早期预警。