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Application of Artificial Neural Networks for Dengue Fever Outbreak Predictions in the Northwest Coast of Yucatan, Mexico and San Juan, Puerto Rico

机译:人工神经网络在墨西哥尤卡坦西北海岸和波多黎各圣胡安西北沿海登革热暴发预测中的应用

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Modelling dengue fever in endemic areas is important to mitigate and improve vector-borne disease control to reduce outbreaks. This study applied artificial neural networks (ANNs) to predict dengue fever outbreak occurrences in San Juan, Puerto Rico (USA), and in several coastal municipalities of the state of Yucatan, Mexico, based on specific thresholds. The models were trained with 19 years of dengue fever data for Puerto Rico and six years for Mexico. Environmental and demographic data included in the predictive models were sea surface temperature (SST), precipitation, air temperature (i.e., minimum, maximum, and average), humidity, previous dengue cases, and population size. Two models were applied for each study area. One predicted dengue incidence rates based on population at risk (i.e., numbers of people younger than 24 years), and the other on the size of the vulnerable population (i.e., number of people younger than five years and older than 65 years). The predictive power was above 70% for all four model runs. The ANNs were able to successfully model dengue fever outbreak occurrences in both study areas. The variables with the most influence on predicting dengue fever outbreak occurrences for San Juan, Puerto Rico, included population size, previous dengue cases, maximum air temperature, and date. In Yucatan, Mexico, the most important variables were population size, previous dengue cases, minimum air temperature, and date. These models have predictive skills and should help dengue fever mitigation and management to aid specific population segments in the Caribbean region and around the Gulf of Mexico.
机译:对流行地区的登革热进行建模对于减轻和改善病媒传播的疾病控制以减少暴发至关重要。这项研究应用人工神经网络(ANN)来预测波多黎各圣胡安(美国)和墨西哥尤卡坦州的几个沿海城市基于特定阈值的登革热暴发。使用波多黎各的19年登革热数据和墨西哥的6年数据对模型进行了训练。预测模型中包括的环境和人口统计数据是海表温度(SST),降水,气温(即最低,最高和平均),湿度,以前的登革热病例和人口规模。每个研究区域应用了两个模型。一个预测登革热的发病率是根据处于危险中的人口(即24岁以下的人口数量),另一个是根据脆弱人群的规模(即5岁以下且65岁以上的人口数量)。对于所有四个模型运行,预测能力均高于70%。人工神经网络能够成功地模拟两个研究地区的登革热暴发。对波多黎各圣胡安的登革热暴发发生的预测影响最大的变量包括人口规模,以前的登革热病例,最高气温和日期。在墨西哥尤卡坦州,最重要的变量是人口规模,以前的登革热病例,最低气温和日期。这些模型具有预测能力,应有助于减轻和控制登革热,以帮助加勒比地区和墨西哥湾周围的特定人群。

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