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首页> 外文期刊>Social science and medicine >Using a neural network for mining interpretable relationships of West Nile risk factors.
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Using a neural network for mining interpretable relationships of West Nile risk factors.

机译:使用神经网络挖掘西尼罗河危险因素的可解释关系。

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The West Nile Virus (WNV) is an infectious disease spreading rapidly throughout the United States, causing illness among thousands of birds, animals, and humans. Yet, we only have a rudimentary understanding of how the mosquito-borne virus operates in complex avian-human environmental systems. The four broad categories of risk factors underlying WNV incidences are: environmental (temperature, precipitation, wetlands), socioeconomic (housing age), built-environment (catch basins, ditches), and existing mosquito abatement policies. This research first built a model incorporating the non-linear relationship between WNV incidences and hypothesized risk factors and second, identified important factor(s) whose management would result in effective disease prevention and containment. The research was conducted in the Metropolitan area of Minnesota, which had experienced significant WNV outbreaks from 2002. Computational neural network (CNN) modeling was used to understand the occurrence of WNV infected dead birds because of their ability to capture complex relationships with higher accuracy than linear models. Further a detailed interpretation technique, based on weights and biases of the network, provided a means for extracting relationships between risk factors and disease occurrence. Five risk factors: proximity to bogs, lakes, temperature, housing age, and developed medium density land cover class, were selected by the model. The detailed interpretation indicated that temperature, age of houses, and developed medium density land cover were positively related, and distance to bogs and lakes were negatively related to the incidence of WNV. This paper provides both applied and methodological contributions to the field of health geography. The relationships between the risk factors and disease occurrence could contribute to vector control strategies such as targeted insecticide spraying near bogs and lakes, mosquito control treatments for older houses, and extensive mapping, inspection, and treatments of catch basins. The proposed interpretation technique expanded the role of CNN models in health sciences as both predictive and explanatory tools.
机译:西尼罗河病毒(WNV)是一种传染性疾病,在美国各地迅速传播,在成千上万的鸟类,动物和人类中引起疾病​​。但是,我们对蚊子传播的病毒如何在复杂的鸟类-人类环境系统中运行只有基本的了解。 WNV发病率的四大主要风险因素是:环境(温度,降水,湿地),社会经济(房屋年龄),建成环境(集水区,沟渠)和现有的灭蚊政策。这项研究首先建立了一个模型,该模型结合了WNV发病率与假设的风险因素之间的非线性关系,其次,确定了对其进行管理可以有效预防和控制疾病的重要因素。该研究在明尼苏达州大都市地区进行,该地区自2002年以来爆发了严重的WNV疫情。计算机神经网络(CNN)建模用于了解WNV感染的死鸟的发生,因为它们能够以比准确率高的精度捕获复杂关系线性模型。此外,基于网络的权重和偏差的详细解释技术提供了一种提取风险因素与疾病发生之间关系的方法。该模型选择了五个风险因素:接近沼泽,湖泊,温度,居住年龄和发达的中等密度土地覆盖类别。详细的解释表明,温度,房屋的年龄和发达的中等密度土地覆盖与WNV的发生呈负相关,与沼泽和湖泊的距离呈负相关。本文为健康地理学领域提供了应用和方法方面的贡献。危险因素与疾病发生之间的关系可能有助于媒介控制策略,例如在沼泽和湖泊附近喷洒有针对性的杀虫剂,对较老房屋进行蚊子控制处理以及对集水区进行广泛的制图,检查和处理。拟议的解释技术扩大了CNN模型在健康科学中的作用,将其作为预测和解释工具。

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