The Clustering of Lifestyle Risk Factors in the Serbian Adult Population and Association with Self-Rated Health.

IF 2.4 4区 医学 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Nataša Dragnić, Sanja Harhaji, Vesna Mijatović Jovanović, Sonja Čanković, Snežana Ukropina, Ivana Radić
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引用次数: 0

Abstract

Introduction: Our objective was to identify clusters of lifestyle risk factors among Serbian adults and assess associations with socio-demographic characteristics and self-rated health.

Methods: The sample included 7,885 adults aged 18 and over from the 2019 Serbian National Health Survey, who provided information on all four lifestyle risk factors (smoking, physical inactivity, low fruit and vegetable intake and risky drinking). The Two-Step Cluster Analysis was used to identify different health-related lifestyle clusters. Logistic regression models were used to assess the association of obtained clusters with socio-demographic characteristics and self-rated health.

Results: Five distinct clusters of lifestyle risk factors were identified: Healthy lifestyle (cluster 1), Low fruit and vegetable intake (cluster 2), Physical inactivity (cluster 3), Smoking and other risk factors (cluster 4), Risky drinking and other risk factors (cluster 5). Multi-risk groups (cluster 4, cluster 5) exhibit specific socio-demographic characteristics (men, younger adults, living alone, less educated). Adults in unhealthy lifestyle clusters were more likely to report poor self-rated health than adults in the healthy lifestyle cluster.

Conclusions: Individuals who were men, younger, living alone, less educated and those with poor self-reported health were more likely to engage in clusters of lifestyle risk factors and represent high-priority population groups for multiple health behaviour change interventions.

塞尔维亚成年人生活方式风险因素聚类及其与自评健康的关系
前言:我们的目的是确定塞尔维亚成年人生活方式风险因素的集群,并评估其与社会人口特征和自评健康的关系。方法:样本包括来自2019年塞尔维亚国家健康调查的7885名18岁及以上的成年人,他们提供了所有四种生活方式风险因素(吸烟、缺乏身体活动、水果和蔬菜摄入量低以及危险饮酒)的信息。两步聚类分析用于识别不同的健康相关生活方式聚类。使用逻辑回归模型来评估获得的群集与社会人口统计学特征和自评健康之间的关系。结果:确定了5类不同的生活方式危险因素:健康的生活方式(第1类)、低水果和蔬菜摄入量(第2类)、缺乏运动(第3类)、吸烟等危险因素(第4类)、危险饮酒等危险因素(第5类)。多风险群体(第4类、第5类)表现出特定的社会人口统计学特征(男性、年轻人、独居、受教育程度较低)。生活方式不健康的成年人比生活方式健康的成年人更有可能报告自己的健康状况不佳。结论:男性、年轻、独居、受教育程度较低和自我报告健康状况较差的个人更有可能参与生活方式风险因素的群集,并且是多种健康行为改变干预措施的高优先人群。
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来源期刊
Zdravstveno Varstvo
Zdravstveno Varstvo PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
3.00
自引率
20.00%
发文量
30
审稿时长
23 weeks
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