Fundacao Getulio Vargas, Brazil.
Fundacao Getulio Vargas, Brazil.
Spat Spatiotemporal Epidemiol. 2020 Nov;35:100372. doi: 10.1016/j.sste.2020.100372. Epub 2020 Aug 28.
Effective management of seasonal diseases such as dengue fever depends on timely deployment of control measures prior to the high transmission season. As the epidemic season fluctuates from year to year, the availability of accurate forecasts of incidence can be decisive in attaining control of such diseases. Obtaining such forecasts from classical time series models has proven a difficult task. Here we propose and compare machine learning models incorporating feature selection,such as LASSO and Random Forest regression with LSTM a deep recurrent neural network, to forecast weekly dengue incidence in 790 cities in Brazil. We use multivariate time-series as predictors and also utilize time series from similar cities to capture the spatial component of disease transmission. The LSTM recurrent neural network model attained the highest performance in predicting future incidence on dengue in cities of different sizes.
有效管理登革热等季节性疾病,需要在高发季节前及时部署控制措施。由于流行季节每年都有波动,准确预测发病率可以对控制此类疾病起到决定性作用。从经典时间序列模型中获取此类预测结果一直是一项艰巨的任务。在这里,我们提出并比较了机器学习模型,包括特征选择(如 LASSO 和随机森林回归)与 LSTM (一种深度递归神经网络),以预测巴西 790 个城市的每周登革热发病率。我们使用多元时间序列作为预测因子,还利用来自相似城市的时间序列来捕捉疾病传播的空间成分。LSTM 递归神经网络模型在预测不同规模城市未来登革热发病率方面表现最佳。