Department of Preventive Veterinary Medicine and Animal Health, School of Veterinary Medicine, University of São Paulo, São Paulo, Brazil.
Department of Epidemiology, School of Public Health, University of São Paulo, São Paulo, Brazil.
PLoS One. 2018 Apr 2;13(4):e0195065. doi: 10.1371/journal.pone.0195065. eCollection 2018.
Globally, the number of dengue cases has been on the increase since 1990 and this trend has also been found in Brazil and its most populated city-São Paulo. Surveillance systems based on predictions allow for timely decision making processes, and in turn, timely and efficient interventions to reduce the burden of the disease. We conducted a comparative study of dengue predictions in São Paulo city to test the performance of trained seasonal autoregressive integrated moving average models, generalized additive models and artificial neural networks. We also used a naïve model as a benchmark. A generalized additive model with lags of the number of cases and meteorological variables had the best performance, predicted epidemics of unprecedented magnitude and its performance was 3.16 times higher than the benchmark and 1.47 higher that the next best performing model. The predictive models captured the seasonal patterns but differed in their capacity to anticipate large epidemics and all outperformed the benchmark. In addition to be able to predict epidemics of unprecedented magnitude, the best model had computational advantages, since its training and tuning was straightforward and required seconds or at most few minutes. These are desired characteristics to provide timely results for decision makers. However, it should be noted that predictions are made just one month ahead and this is a limitation that future studies could try to reduce.
自 1990 年以来,全球登革热病例数量一直在增加,巴西及其人口最多的城市——圣保罗也出现了这种趋势。基于预测的监测系统可以实现及时的决策过程,从而及时有效地进行干预,减轻疾病负担。我们对圣保罗市的登革热预测进行了比较研究,以测试经过训练的季节性自回归综合移动平均模型、广义加性模型和人工神经网络的性能。我们还使用了一个简单模型作为基准。一个带有病例数和气象变量滞后项的广义加性模型具有最佳性能,可以预测到前所未有的大规模流行,其性能比基准高出 3.16 倍,比下一个表现最好的模型高出 1.47 倍。预测模型捕捉到了季节性模式,但在预测大规模流行方面存在差异,所有模型的表现均优于基准。除了能够预测前所未有的大规模流行外,最佳模型还具有计算优势,因为它的训练和调整简单,只需几秒钟或最多几分钟。这些都是为决策者提供及时结果的理想特征。然而,应该注意的是,预测只能提前一个月进行,这是未来研究可以尝试减少的一个限制。