Comparative Analysis of Some Structural Equation Model Estimation Methods with Application to Coronary Heart Disease Risk

IF 1 Q3 STATISTICS & PROBABILITY Journal of Probability and Statistics Pub Date : 2020-09-22 DOI:10.1155/2020/4181426
D. Adedia, A. Adebanji, S. Appiah
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引用次数: 7

Abstract

This study compared a ridge maximum likelihood estimator to Yuan and Chan (2008) ridge maximum likelihood, maximum likelihood, unweighted least squares, generalized least squares, and asymptotic distribution-free estimators in fitting six models that show relationships in some noncommunicable diseases. Uncontrolled hypertension has been shown to be a leading cause of coronary heart disease, kidney dysfunction, and other negative health outcomes. It poses equal danger when asymptomatic and undetected. Research has also shown that it tends to coexist with diabetes mellitus (DM), with the presence of DM doubling the risk of hypertension. The study assessed the effect of obesity, type II diabetes, and hypertension on coronary risk and also the existence of converse relationship with structural equation modelling (SEM). The results showed that the two ridge estimators did better than other estimators. Nonconvergence occurred for most of the models for asymptotic distribution-free estimator and unweighted least squares estimator whilst generalized least squares estimator had one nonconvergence of results. Other estimators provided competing outputs, but unweighted least squares estimator reported unreliable parameter estimates such as large chi-square test statistic and root mean square error of approximation for Model 3. The maximum likelihood family of estimators did better than others like asymptotic distribution-free estimator in terms of overall model fit and parameter estimation. Also, the study found that increase in obesity could result in a significant increase in both hypertension and coronary risk. Diastolic blood pressure and diabetes have significant converse effects on each other. This implies those who are hypertensive can develop diabetes and vice versa.
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几种结构方程模型估计方法在冠心病危险性评估中的应用比较分析
本研究将岭最大似然估计量与Yuan和Chan(2008)的岭最大似然、最大似然、未加权最小二乘、广义最小二乘和无渐近分布估计量进行了比较,以拟合六个显示某些非传染性疾病关系的模型。失控的高血压已被证明是冠心病、肾功能障碍和其他负面健康后果的主要原因。当没有症状和未被发现时,它会带来同样的危险。研究还表明,它往往与糖尿病共存,糖尿病的存在会使患高血压的风险增加一倍。该研究评估了肥胖、II型糖尿病和高血压对冠状动脉风险的影响,以及与结构方程模型(SEM)的逆关系的存在。结果表明,这两种岭估计比其他估计做得更好。无渐近分布估计和未加权最小二乘估计的大多数模型都存在不收敛性,而广义最小二乘估计的结果只有一个不收敛性。其他估计量提供了竞争性的输出,但未加权最小二乘估计量报告了不可靠的参数估计,如模型3的大卡方检验统计量和近似均方根误差。在整体模型拟合和参数估计方面,最大似然估计族比其他类似于无渐近分布估计的估计族做得更好。此外,研究发现,肥胖的增加可能会导致高血压和冠状动脉风险的显著增加。舒张压和糖尿病有显著的相反影响。这意味着那些高血压患者可能会发展成糖尿病,反之亦然。
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
0.00%
发文量
14
审稿时长
18 weeks
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