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肠传染病和气象参数的凝聚聚类分析,以确定寒冷气候中的季节性爆发。

Agglomerative Clustering of Enteric Infections and Weather Parameters to Identify Seasonal Outbreaks in Cold Climates.

机构信息

Novosibirsk State Technical University, Novosibirsk 630087, Russia.

Friedman School of Nutrition Science and Policy, Tufts University, Boston, MA 02111, USA.

出版信息

Int J Environ Res Public Health. 2019 Jun 12;16(12):2083. doi: 10.3390/ijerph16122083.

Abstract

The utility of agglomerative clustering methods for understanding dynamic systems that do not have a well-defined periodic structure has not yet been explored. We propose using this approach to examine the association between disease and weather parameters, to compliment the traditional harmonic regression models, and to determine specific meteorological conditions favoring high disease incidence. We utilized daily records on reported salmonellosis and non-specific enteritis, and four meteorological parameters (ambient temperature, dew point, humidity, and barometric pressure) in Barnaul, Russia in 2004-2011, maintained by the CliWaDIn database. The data structure was examined using the -distributed stochastic neighbor embedding (-SNE) method. The optimal number of clusters was selected based on Ward distance using the silhouette metric. The selected clusters were assessed with respect to their density and homogeneity. We detected that a well-defined cluster with high counts of salmonellosis occurred during warm summer days and unseasonably warm days in spring. We also detected a cluster with high counts of non-specific enteritis that occurred during unusually "very warm" winter days. The main advantage offered by the proposed technique is its ability to create a composite of meteorological conditions-a rule of thumb-to detect days favoring infectious outbreaks for a given location. These findings have major implications for understanding potential health impacts of climate change.

摘要

凝聚聚类方法在理解没有明确周期性结构的动态系统方面的应用尚未得到探索。我们建议使用这种方法来研究疾病与天气参数之间的关联,以补充传统的谐波回归模型,并确定有利于高发疾病的特定气象条件。我们利用了 2004 年至 2011 年俄罗斯巴尔瑙尔市 CliWaDIn 数据库中记录的每日报告的沙门氏菌病和非特异性肠炎病例,以及四个气象参数(环境温度、露点、湿度和气压)。使用 -分布随机邻居嵌入 (-SNE) 方法检查了数据结构。根据轮廓指标使用 Ward 距离选择最佳聚类数。根据密度和均匀性评估所选聚类。我们发现,在温暖的夏季和春季异常温暖的日子里,沙门氏菌病的高发病率会出现一个明确的聚类。我们还发现一个非特异性肠炎高发病率的聚类发生在异常“非常温暖”的冬季。所提出的技术的主要优势在于它能够创建一个给定地点有利于传染病爆发的气象条件综合信息——一个经验法则。这些发现对理解气候变化对健康的潜在影响具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e63d/6617417/3e28f7c12f0b/ijerph-16-02083-g001.jpg

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