基于异构数据流的复杂哮喘危险因素识别

Laleh Jalali, Minh-Son Dao, R. Jain, K. Zettsu
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引用次数: 7

摘要

关于环境因素,特别是空气污染与哮喘恶化之间的关系,有许多研究。这些研究大多忽略了一系列这些因素与哮喘发作之间存在特定时间滞后的潜在混淆效应。在本文中,我们提出了一种新的方法来识别环境因素和哮喘发作之间的复杂模式形式的后果关系。这些数据之间的时间结构和顺序关系及其对哮喘加重的影响构成了称为哮喘危险因素的复杂模式。通过提取这些模式,我们创建了一个对哮喘患者和公共卫生都很重要的风险预测模型。为了进行实验评估,我们收集了东京都的污染和气象数据,发现了32种可能导致哮喘暴发的复杂风险因素模式。实验结果表明,提取的模型精度为71.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complex asthma risk factor recognition from heterogeneous data streams
There are many studies regarding the relationships between environmental factors, particularly air pollution, and asthma exacerbation. Most of these studies ignore the potential confounding effects of a sequence of these factors with a specific time lag between them and asthma outbreaks. In this paper we present a new method for identifying consequential relations in the form of complex patterns between environmental factors and asthma attacks. Temporal structure and order relation between these data and their effect on asthma exacerbation comprise complex patterns called asthma risk factors. By extracting such patterns we create a risk prediction model that is important both for an asthmatic patient and public health. For experimental evaluations, we have collected pollution and meteorological data in Tokyo city and found 32 complex risk factor patterns that might result in asthma outbreaks. The experimental results show that extracted model has 71.15% precision.
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