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首页> 外文期刊>Frontiers in Public Health >Discovering Multi-Scale Co-Occurrence Patterns of Asthma and Influenza with Oak Ridge Bio-Surveillance Toolkit
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Discovering Multi-Scale Co-Occurrence Patterns of Asthma and Influenza with Oak Ridge Bio-Surveillance Toolkit

机译:使用Oak Ridge生物监测工具包发现哮喘和流行性感冒的多尺度同时发生模式

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摘要

We describe a data-driven unsupervised machine learning approach to extract geo-temporal co-occurrence patterns of asthma and the flu from large-scale electronic healthcare reimbursement claims (eHRC) datasets. Specifically, we examine the eHRC data from 2009 to 2010 pandemic H1N1 influenza season and analyze whether different geographic regions within the United States (US) showed an increase in co-occurrence patterns of the flu and asthma. Our analyses reveal that the temporal patterns extracted from the eHRC data show a distinct lag time between the peak incidence of the asthma and the flu. While the increased occurrence of asthma contributed to increased flu incidence during the pandemic, this co-occurrence is predominant for female patients. The geo-temporal patterns reveal that the co-occurrence of the flu and asthma are typically concentrated within the south-east US. Further, in agreement with previous studies, large urban areas (such as New York, Miami, and Los Angeles) exhibit co-occurrence patterns that suggest a peak incidence of asthma and flu significantly early in the spring and winter seasons. Together, our data-analytic approach, integrated within the Oak Ridge Bio-surveillance Toolkit platform, demonstrates how eHRC data can provide novel insights into co-occurring disease patterns.
机译:我们描述了一种数据驱动的无监督机器学习方法,可从大规模电子医疗费用报销(eHRC)数据集中提取哮喘和流感的地时共生模式。具体来说,我们检查了2009年至2010年H1N1流感大流行季节的eHRC数据,并分析了美国(美国)不同地理区域是否显示流感和哮喘的共存模式增加。我们的分析表明,从eHRC数据中提取的时间模式显示,哮喘的高峰发病率与流感之间存在明显的滞后时间。尽管大流行期间哮喘的发生增加导致流感的发生率增加,但这种同时发生主要发生在女性患者中。地理时间格局显示,流感和哮喘的并发通常集中在美国东南部。此外,与先前的研究一致,大城市地区(例如纽约,迈阿密和洛杉矶)表现出共现模式,表明在春季和冬季的早期,哮喘和流感的发病率达到峰值。结合在一起,我们的数据分析方法已整合到Oak Ridge生物监测工具包平台中,展示了eHRC数据如何能够为共现疾病模式提供新颖的见解。

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