山东大学学报 (医学版) ›› 2026, Vol. 64 ›› Issue (3): 116-123.doi: 10.6040/j.issn.1671-7554.0.2025.0209
• 公共卫生与预防医学 • 上一篇
廖原1,门丹2,李一帆3,李怀臣4,龙飞3,刘铱1
LIAO Yuan1, MEN Dan2, LI Yifan3, LI Huaichen4, LONG Fei3, LIU Yi1
摘要: 目的 探讨短期细颗粒物(2.5-micrometer particulate matter, PM2.5)暴露对结核发病风险的影响及其人群和时空异质性,为制定精准公共卫生干预策略提供科学依据。 方法 收集2015年1月至2019年12月济南市1 207例新发结核病例数据,结合机器学习模型与地理信息系统,构建百米级网格化PM2.5暴露评估模型,精准估计个体PM2.5暴露水平;采用时间分层的病例交叉设计,通过条件logistic回归分析PM2.5短期暴露(滞后0~3 d)与结核发病的关联,并评估年龄、性别、季节和居住地的效应差异。 结果 PM2.5的质量浓度每增加1 μg/m3,结核发病风险在滞后2 d升高0.45%(95%CI:0.12%~0.78%,P<0.05)。亚组分析显示,老年人(OR=1.14, 95%CI: 0.974~1.32)、女性(OR=1.07, 95%CI: 1.03~1.11)、寒冷季节(OR=1.11, 95%CI: 1.05~1.19)及农村地区(OR=1.05, 95%CI: 1.02~1.08)的结核发病风险更高,关联有统计学意义(P<0.05)。 结论 PM2.5短期暴露可显著增加结核发病风险,且在山东省济南市存在人群和季节异质性,需针对高风险群体及污染季节制定精准防控策略。
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