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Improved Prediction of Dengue Outbreak Using the Delay Permutation Entropy

机译:利用延迟排列熵改进对登革热暴发的预测

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摘要

Climate is an important contributing factor in the outbreak and spread of dengue fever because it strongly affects the density and distribution of the mosquitoes that carry dengue. However, dengue forecasting models based solely on local weather factors have had limited success. Hence, this paper proposes a novel dengue outbreak detection method that relies on delay permutation entropy (DPE) features extracted from daily weather data. Using data from Hong Kong between 2004 and 2015, 4383 daily DPE features have been extracted and analysed using machine learning techniques. The analysis results show that there is a strong correlation between dengue cases and rainfall DPE features. A comparison with predicted results generated from average monthly weather data, shows that the dengue outbreak detection results based on the DPE features, are up to 11% more accurate than those predicted from the monthly average data.
机译:气候是造成登革热爆发和扩散的重要因素,因为它会严重影响携带登革热的蚊子的密度和分布。但是,仅基于当地天气因素的登革热预测模型取得的成功有限。因此,本文提出了一种新颖的登革热暴发检测方法,该方法依赖于从每日天气数据中提取的延迟排列熵(DPE)特征。利用2004年至2015年香港的数据,已经使用机器学习技术提取和分析了4383个日常DPE功能。分析结果表明,登革热病例与降雨DPE特征之间有很强的相关性。与每月平均天气数据生成的预测结​​果进行比较,结果表明,基于DPE功能的登革热暴发检测结果比每月平均数据预测的准确性高11%。

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