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Forecast of Dengue Cases in 20 Chinese Cities Based on the Deep Learning Method

机译:基于深度学习方法的中国20个城市登革热病例预测

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摘要

Dengue fever (DF) is one of the most rapidly spreading diseases in the world, and accurate forecasts of dengue in a timely manner might help local government implement effective control measures. To obtain the accurate forecasting of DF cases, it is crucial to model the long-term dependency in time series data, which is difficult for a typical machine learning method. This study aimed to develop a timely accurate forecasting model of dengue based on long short-term memory (LSTM) recurrent neural networks while only considering monthly dengue cases and climate factors. The performance of LSTM models was compared with the other previously published models when predicting DF cases one month into the future. Our results showed that the LSTM model reduced the average the root mean squared error (RMSE) of the predictions by 12.99% to 24.91% and reduced the average RMSE of the predictions in the outbreak period by 15.09% to 26.82% as compared with other candidate models. The LSTM model achieved superior performance in predicting dengue cases as compared with other previously published forecasting models. Moreover, transfer learning (TL) can improve the generalization ability of the model in areas with fewer dengue incidences. The findings provide a more precise forecasting dengue model and could be used for other dengue-like infectious diseases.
机译:登革热(DF)是世界上传播最迅速的疾病之一,及时准确地预测登革热可能有助于地方政府实施有效的控制措施。为了获得对DF案例的准确预测,对时间序列数据中的长期依赖性进行建模至关重要,这对于典型的机器学习方法而言是困难的。这项研究旨在基于长期短期记忆(LSTM)递归神经网络建立一个及时准确的登革热预测模型,同时仅考虑每月登革热病例和气候因素。在预测未来一个月的DF病例时,将LSTM模型的性能与以前发布的其他模型进行了比较。我们的结果表明,与其他候选者相比,LSTM模型将预测的平均均方根误差(RMSE)降低了12.99%至24.91%,并将暴发期预测的平均RMSE降低了15.09%至26.82%楷模。与其他先前发布的预测模型相比,LSTM模型在预测登革热病例方面具有出色的性能。此外,转移学习(TL)可以提高登革热发病率较少地区模型的泛化能力。这些发现为登革热模型提供了更精确的预测,并可用于其他类似登革热的传染病。

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