论文标题
一种合奏神经网络方法,以预测基于气候条件的登革热爆发
An ensemble neural network approach to forecast Dengue outbreak based on climatic condition
论文作者
论文摘要
登革热是一种有毒的疾病,在非洲,美洲和亚洲传播了100多个热带和亚热带国家。这种arboviral疾病在全球范围内影响约4亿人,使医疗系统严重困扰。特定药物和现成的疫苗的不可用使情况恶化。因此,决策者必须依靠预警系统来控制与干预相关的决策。预测通常为危险流行事件提供关键信息。但是,可用的预测模型(例如,天气驱动的机理,统计时间序列和机器学习模型)缺乏对不同组件的清晰了解,无法提高预测准确性,并且通常提供不稳定和不可靠的预测。这项研究提出了一个具有外源性因子(XEWNET)模型的集成小波神经网络,该网络可以为三个地理区域(即圣胡安,IQUITOS和Ahmedabad)产生可靠的登革热爆发预测估计。所提出的Xewnet模型是灵活的,可以轻松地合并其可扩展框架中统计因果关系测试确认的外源气候变量。提出的模型是一种集成方法,该方法将小波转换用于整体神经网络框架,有助于产生更可靠的长期预测。拟议的Xewnet允许登革热发生率和降雨之间的复杂非线性关系。但是,在数学上可以解释,执行快速,并且易于理解。该提案的竞争力是使用基于各种统计指标和几个统计比较检验的计算实验来衡量的。与统计,机器学习和深度学习方法相比,我们提出的XEWNET在75%的案例中,用于短期和长期预测登革热发病率。
Dengue fever is a virulent disease spreading over 100 tropical and subtropical countries in Africa, the Americas, and Asia. This arboviral disease affects around 400 million people globally, severely distressing the healthcare systems. The unavailability of a specific drug and ready-to-use vaccine makes the situation worse. Hence, policymakers must rely on early warning systems to control intervention-related decisions. Forecasts routinely provide critical information for dangerous epidemic events. However, the available forecasting models (e.g., weather-driven mechanistic, statistical time series, and machine learning models) lack a clear understanding of different components to improve prediction accuracy and often provide unstable and unreliable forecasts. This study proposes an ensemble wavelet neural network with exogenous factor(s) (XEWNet) model that can produce reliable estimates for dengue outbreak prediction for three geographical regions, namely San Juan, Iquitos, and Ahmedabad. The proposed XEWNet model is flexible and can easily incorporate exogenous climate variable(s) confirmed by statistical causality tests in its scalable framework. The proposed model is an integrated approach that uses wavelet transformation into an ensemble neural network framework that helps in generating more reliable long-term forecasts. The proposed XEWNet allows complex non-linear relationships between the dengue incidence cases and rainfall; however, mathematically interpretable, fast in execution, and easily comprehensible. The proposal's competitiveness is measured using computational experiments based on various statistical metrics and several statistical comparison tests. In comparison with statistical, machine learning, and deep learning methods, our proposed XEWNet performs better in 75% of the cases for short-term and long-term forecasting of dengue incidence.