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格鲁吉亚军人中流行病学风险因素与动物源感染之间的多变量关系:非线性典范相关分析。

Multivariate relationships between epidemiologic risk factors and zoonotic infections among military personnel in the country of Georgia: A non-linear canonical correlation analysis.

机构信息

US Army Medical Research Directorate-Georgia, Tbilisi, Georgia.

The National Center for Disease Control and Public Health, Tbilisi, Georgia.

出版信息

Zoonoses Public Health. 2019 Nov;66(7):835-841. doi: 10.1111/zph.12632. Epub 2019 Jul 23.

DOI:10.1111/zph.12632
PMID:31338987
Abstract

Zoonotic diseases are endemic in the country of Georgia. Using the non-linear canonical correlation (NCC) method, the aim of this study was to examine the relationship between thirteen epidemiological risk factors and seropositivity to five zoonotic infections (anthrax, Q fever, tularemia, leptospirosis, and Crimean-Congo hemorrhagic fever [CCHF]) among Georgian military recruits during 2014-2016. According to this multivariate statistical technique, which is suitable for the analysis of two or more sets of qualitative variables simultaneously, two canonical variables were identified. These variables accounted for 68% of the variation between the two sets of categorical variables ("risk factors" and "zoonotic infections"). For the first canonical variable, there was a relationship among CCHF (canonical loading, which is interpreted in the same way as the Pearson's correlation coefficient, [cl] = 0.715), tick bites (cl = 0.418) and slaughter of animals (cl = 0.351). As for the second canonical variable, Q fever (cl = -0.604) and leptospirosis (cl = -0.486) were related to rodents inside and outside home (cl = -0.346) and sweeping in or around home (cl = -0.317). The NCC method allows researchers to obtain additional insights into the complex relationship between epidemiological risk factors and multiple zoonotic infections.

摘要

该国格鲁吉亚流行动物源性传染病。本研究采用非线性典型相关(NCC)分析法,旨在探讨 2014-2016 年格鲁吉亚新兵中 13 种流行病学危险因素与五种动物源性感染(炭疽、Q 热、兔热病、钩端螺旋体病和克里米亚-刚果出血热)血清阳性率之间的关系。该多元统计技术适用于同时分析两组或多组定性变量,本研究确定了两个典型变量。这两个变量解释了两组分类变量(“危险因素”和“动物源性感染”)之间 68%的差异。对于第一个典型变量,CCHF(典型负荷,其解释与 Pearson 相关系数相同,[cl] = 0.715)、蜱叮咬(cl = 0.418)和动物屠宰(cl = 0.351)之间存在关联。对于第二个典型变量,Q 热(cl = -0.604)和钩端螺旋体病(cl = -0.486)与家庭内外的啮齿动物(cl = -0.346)和家庭内或周围的清扫(cl = -0.317)有关。NCC 方法可以帮助研究人员深入了解流行病学危险因素与多种动物源性感染之间复杂的关系。

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