Logistic回归分析豫北地区冠心病与出生时间的相关性
China Health Care & Nutrition(2019)
Abstract
目的:出生时间对于疾病的发生发展有重要的影响,本文通过回顾性研究系统地分析了出生时间与豫北地区冠心病风险之间的关系.方法:选取河南省心血管临床数据与样本资源库2014年--2018年出院患者25555名,运用Fisher's检验分析性别及每十年间对出生月份的影响,通过logistic回归分析豫北地区冠心病与出生时间的关系.结果:Fisher's检验显示性别及每十年间与出生月份无关(P=1);logistic回归分析示冠心病与出生月份显著相关,出生于3月份患冠心病的风险最高,其次为7月和9月(P<0.05).结论:豫北地区冠心病的疾病风险可能受出生时间的影响.
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