A convolution neural network integrating climate variables and spatial-temporal properties to predict influenza trends

Jaroonsak Watmaha, Suwatchai Kamonsantiroj, Luepol Pipanmaekaporn
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Abstract

The spread of influenza is contingent upon a multitude of outbreak-related factors, including viral mutation, climate conditions, acquisition of immunity, crowded environments, vaccine efficacy, social gatherings, and the health and age profiles of individuals in contact with infected individuals. An epidemic in the region impacted by spatial transmission risk from adjacent regions. A few influenzas epidemic models start highlighting the spatial correlations between influenza patients and geographically adjacent regions. The proposed model is based on the concept of climatic, immunization, and spatial correlations which are represented by a convolution neural network (CNN) for influenza epidemic forecasting. This study presents an integration of three determinants for predicting influenza outbreaks, multivariate climate data, spatial data on influenza vaccination, and spatial-temporal data of historical influenza patients. The performance of three comparison models, CNN, recurrent neural network (RNN), and long short-term memory (LSTM) was compared by the root mean squared error metric (RMSE). The findings revealed that the CNN model represents human interaction at intervals of 12, 16, 20, 24, and 28 weeks resulting in the best effectiveness of the lowest RMSE=0.00376 with learning rate=0.0001.
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整合气候变量和时空特性的卷积神经网络预测流感趋势
流感的传播取决于多种与疫情有关的因素,包括病毒变异、气候条件、获得免疫力、拥挤环境、疫苗效力、社交聚会以及与受感染者接触的个人的健康和年龄状况。该地区的疫情受到邻近地区空间传播风险的影响。一些流感流行模型开始强调流感患者与地理上相邻地区之间的空间相关性。所提出的模型基于气候、免疫和空间相关性的概念,通过卷积神经网络(CNN)来表示,用于流感疫情预测。本研究整合了预测流感爆发的三个决定因素:多变量气候数据、流感疫苗接种的空间数据以及历史流感患者的时空数据。通过均方根误差指标(RMSE)比较了 CNN、递归神经网络(RNN)和长短期记忆(LSTM)三种比较模型的性能。研究结果表明,CNN 模型在 12、16、20、24 和 28 周的时间间隔内代表了人与人之间的互动,其效果最佳,在学习率=0.0001 的情况下,RMSE=0.00376 最低。
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