Department of Science and Technology Studies, Faculty of Science, University of Malaya, Kuala Lumpur 50603, Malaysia.
Int J Environ Res Public Health. 2020 Jul 18;17(14):5201. doi: 10.3390/ijerph17145201.
As postpartum obesity is becoming a global public health challenge, there is a need to apply postpartum obesity modeling to determine the indicators of postpartum obesity using an appropriate statistical technique. This research comprised two phases, namely: (i) development of a previously created postpartum obesity modeling; (ii) construction of a statistical comparison model and introduction of a better estimator for the research framework. The research model displayed the associations and interactions between the variables that were analyzed using the Structural Equation Modeling (SEM) method to determine the body mass index (BMI) levels related to postpartum obesity. The most significant correlations obtained were between BMI and other substantial variables in the SEM analysis. The research framework included two categories of data related to postpartum women: living in urban and rural areas in Iran. The SEM output with the Bayesian estimator was 81.1%, with variations in the postpartum women's BMI, which is related to their demographics, lifestyle, food intake, and mental health. Meanwhile, the variation based on SEM with partial least squares estimator was equal to 70.2%, and SEM with a maximum likelihood estimator was equal to 76.8%. On the other hand, the output of the root mean square error (RMSE), mean absolute error (MSE) and mean absolute percentage error (MPE) for the Bayesian estimator is lower than the maximum likelihood and partial least square estimators. Thus, the predicted values of the SEM with Bayesian estimator are closer to the observed value compared to maximum likelihood and partial least square. In conclusion, the higher values of R-square and lower values of MPE, RMSE, and MSE will produce better goodness of fit for SEM with Bayesian estimators.
由于产后肥胖正成为一个全球性的公共健康挑战,因此需要应用产后肥胖模型,使用适当的统计技术来确定产后肥胖的指标。这项研究包括两个阶段,即:(i)开发以前创建的产后肥胖模型;(ii)构建统计比较模型,并为研究框架引入更好的估计器。研究模型显示了变量之间的关联和相互作用,这些变量使用结构方程建模(SEM)方法进行了分析,以确定与产后肥胖相关的体重指数(BMI)水平。在 SEM 分析中,最重要的相关性是 BMI 与其他实质性变量之间的相关性。研究框架包括与伊朗城乡地区产后妇女有关的两类数据:生活在城市和农村地区的产后妇女。贝叶斯估计器的 SEM 输出为 81.1%,产后妇女 BMI 存在变化,这与她们的人口统计学、生活方式、饮食和心理健康有关。同时,基于 SEM 和偏最小二乘估计器的变化等于 70.2%,基于最大似然估计器的 SEM 变化等于 76.8%。另一方面,贝叶斯估计器的均方根误差(RMSE)、平均绝对误差(MSE)和平均绝对百分比误差(MPE)的输出值低于最大似然和偏最小二乘估计器。因此,与最大似然和偏最小二乘相比,贝叶斯估计器的 SEM 预测值更接近观测值。总之,贝叶斯估计器的 R 平方值较高,MPE、RMSE 和 MSE 值较低,将为 SEM 提供更好的拟合优度。