Al-Harrasi Ayaman, Pinto Avinash Daniel, Jayapal Sathish Kumar, Morsi Magdi, Al-Mawali Adhra
Centre of Studies & Research, Ministry of Health, Muscat, Oman.
Centre of Studies & Research, Ministry of Health, Muscat, Oman; Strategic Research Program for Non-Communicable Diseases, The Research Council (TRC), Muscat, Oman.
Am J Med Sci. 2022 Sep;364(3):274-280. doi: 10.1016/j.amjms.2022.03.003. Epub 2022 Mar 11.
Few previous studies have investigated the multiple pathways that contribute to diabetes mellitus (DM) because of the complex, simultaneous interplay of attributing covariates. Structural equation modelling (SEM) is a robust multivariate approach that measures both direct and indirect effects of variables by simultaneously utilizing several regression equations. The current study applied SEM to test a hypothesized model of the covariates affecting DM among the adult population of the Sultanate of Oman.
Data from a large nationally representative 2017 WHO STEPwise approach to surveillance survey were analyzed. Stata 16 software was used to perform SEM and path analysis of the sociodemographic, behavioral, anthropometric, and metabolic variables affecting normoglycemia and DM. A priori factor structure was hypothesized with special emphasis on observing direct and indirect effects, and the correlations that defined them.
Eight paths that directly affected DM status were established based on eight sociodemographic, metabolic, and behavioral variables (age, sex, educational status, physical activity level, body mass index, waist-to-hip ratio, systolic blood pressure, and family history of DM). The remaining variables (marital status, employment status, smoking, high-density lipoprotein level, total blood cholesterol level, fruit and vegetable intake, and type of oil used for cooking) showed variable indirect effects.
The results of this study further reinforce the evidence that lifestyle changes are vital for the prevention and control of DM. Individuals with a family history of DM and a high waist-to-hip ratio comprise a high-risk group and should be targeted with screening and lifestyle-intervention programs.
由于导致糖尿病(DM)的协变量之间存在复杂且同时的相互作用,以往很少有研究调查导致糖尿病的多种途径。结构方程模型(SEM)是一种强大的多变量方法,通过同时使用多个回归方程来测量变量的直接和间接效应。本研究应用结构方程模型来检验阿曼苏丹国成年人群中影响糖尿病的协变量的假设模型。
分析了来自2017年具有全国代表性的世界卫生组织逐步监测调查的大型数据。使用Stata 16软件对影响血糖正常和糖尿病的社会人口学、行为、人体测量和代谢变量进行结构方程模型和路径分析。假设了先验因素结构,特别强调观察直接和间接效应以及定义它们的相关性。
基于八个社会人口学、代谢和行为变量(年龄、性别、教育程度、身体活动水平、体重指数、腰臀比、收缩压和糖尿病家族史)建立了八条直接影响糖尿病状态的路径。其余变量(婚姻状况、就业状况、吸烟、高密度脂蛋白水平、总胆固醇水平、水果和蔬菜摄入量以及烹饪用油类型)显示出不同的间接效应。
本研究结果进一步强化了生活方式改变对于糖尿病预防和控制至关重要的证据。有糖尿病家族史且腰臀比高的个体构成高危人群,应针对他们开展筛查和生活方式干预项目。