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环境和基础设施对呼吸疾病恶化的影响:基于 LBSN 和 ANN 的时空建模。

Environmental and infrastructural effects on respiratory disease exacerbation: a LBSN and ANN-based spatio-temporal modelling.

机构信息

Department of RS/GIS, Science and Research Branch, Islamic Azad University, Tehran, 14778 93855, Iran.

Department of GIS, Faculty of Geodesy and Geomatics Engineering, K. N. Toosi University of Technology, Tehran, 19967 15433, Iran.

出版信息

Environ Monit Assess. 2020 Jan 4;192(2):90. doi: 10.1007/s10661-019-7987-x.

Abstract

Owing to the rise in population, lifestyle changes, high traffic rates in urban areas and environmental pollution, respiratory diseases have become much more prevalent on both regional and urban scales. Respiratory diseases affect over 300 million people worldwide and are thus among the major threats to humans' general well-being. The identification of underlying factors and the specification of accompanying risk areas for the temporal exacerbation of respiratory diseases are effective steps in managing the damage caused by such disorders. Here, we demonstrate a strategy for modelling the risk zone of respiratory diseases temporally, using a location-based social network (LBSN) and an artificial neural network (ANN). The main contribution of this paper is to consider the environmental and infrastructural factors and identify their relationships with the geographical locations of respiratory attacks. The study also utilizes Telegram, which is the most popular and conventional social media platform, in order to observe temporal changes in the location of respiratory attacks in Iran, in the form of a developed Telegram bot known as @respiratoryassociation. The relations between the factors behind and the location of respiratory attacks are determined using a multilayer perceptron (MLP) ANN. All the required data have been collected on a daily basis over a 5-year period from December 2013 to December 2018 in Tehran, Iran. The results indicated air pollution, especially pollution from carbon monoxide (CO) and suspended particulate matter (PM) as the most decisive factors. Following air pollution, the amount of exposure to the polluted area was determined as the second most decisive factor, which in turn increased as a result of escalations in traffic jams. Land use was determined as the third most decisive factor. Furthermore, the results revealed that the ANN performed satisfactorily, implying that the model can be used to examine the spatio-temporal behaviour of the time series of respiratory diseases with respect to environmental and infrastructural factors.

摘要

由于人口增长、生活方式改变、城市地区交通流量增加和环境污染,呼吸道疾病在区域和城市范围内变得更加普遍。呼吸道疾病影响着全球超过 3 亿人,因此是对人类整体健康的主要威胁之一。确定潜在因素,并确定呼吸道疾病恶化的伴随风险区域,是管理此类疾病造成的损害的有效步骤。在这里,我们展示了一种使用基于位置的社交网络 (LBSN) 和人工神经网络 (ANN) 来对呼吸道疾病的风险区域进行时间建模的策略。本文的主要贡献是考虑环境和基础设施因素,并确定它们与呼吸道攻击的地理位置之间的关系。该研究还利用了 Telegram,这是最受欢迎和传统的社交媒体平台,以便通过名为 @respiratoryassociation 的开发的 Telegram 机器人来观察伊朗呼吸道攻击地点的时间变化。使用多层感知器 (MLP) ANN 确定呼吸道攻击背后的因素与位置之间的关系。所有必需的数据都是在 2013 年 12 月至 2018 年 12 月的 5 年期间内,每天从伊朗德黑兰收集的。结果表明,空气污染,特别是一氧化碳 (CO) 和悬浮颗粒物 (PM) 污染是最决定性的因素。在空气污染之后,暴露于污染区域的程度被确定为第二个最决定性的因素,而这又因交通拥堵的升级而增加。土地利用被确定为第三个最决定性的因素。此外,结果表明 ANN 表现良好,这意味着该模型可用于检查环境和基础设施因素对呼吸道疾病时间序列的时空行为。

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