Identifying Risk Indicators of Cardiovascular Disease in Fasa Cohort Study (FACS): An Application of Generalized Linear Mixed-Model Tree.

IF 1 4区 医学 Q3 MEDICINE, GENERAL & INTERNAL
Fariba Asadi, Reza Homayounfar, Mojtaba Farjam, Yaser Mehrali, Fatemeh Masaebi, Farid Zayeri
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引用次数: 0

Abstract

Background: Today, cardiovascular disease (CVD) is the most important cause of death around the world. In this study, our main aim was to predict CVD using some of the most important indicators of this disease and present a tree-based statistical framework for detecting CVD patients according to these indicators.

Methods: We used data from the baseline phase of the Fasa Cohort Study (FACS). The outcome variable was the presence of CVD. The ordinary Tree and generalized linear mixed models (GLMM) were fitted to the data and their predictive power for detecting CVD was compared with the obtained results from the GLMM tree. Statistical analysis was performed using the RStudio software.

Results: Data of 9499 participants aged 35‒70 years were analyzed. The results of the multivariable mixed-effects logistic regression model revealed that participants' age, total cholesterol, marital status, smoking status, glucose, history of cardiac disease or myocardial infarction (MI) in first- and second-degree relatives, and presence of other diseases (like hypertension, depression, chronic headaches, and thyroid disease) were significantly related to the presence of CVD (P<0.05). Fitting the ordinary tree, GLMM, and GLMM tree resulted in area under the curve (AUC) values of 0.58 (0.56, 0.61), 0.81 (0.77, 0.84), and 0.80 (0.76, 0.83), respectively, among the study population. In addition, the tree model had the best specificity at 81% but the lowest sensitivity at 65% compared to the other models.

Conclusion: Given the superior performance of the GLMM tree compared with the standard tree and the lack of significant difference with the GLMM, using this model is suggested due to its simpler interpretation and fewer assumptions. Using updated statistical models for more accurate CVD prediction can result in more precise frameworks to aid in proactive patient detection planning.

法萨队列研究(FACS)中心血管疾病风险指标的识别:广义线性混合模型树的应用。
背景:当今,心血管疾病(CVD)是全球最重要的死亡原因。在这项研究中,我们的主要目的是利用心血管疾病的一些最重要指标来预测心血管疾病,并根据这些指标提出一个基于树的统计框架来检测心血管疾病患者:我们使用了法萨队列研究(FACS)基线阶段的数据。结果变量为是否患有心血管疾病。对数据进行了普通树模型和广义线性混合模型(GLMM)拟合,并将其对检测心血管疾病的预测能力与 GLMM 树的结果进行了比较。统计分析使用 RStudio 软件进行:结果:分析了9499名35-70岁参与者的数据。多变量混合效应逻辑回归模型的结果显示,参与者的年龄、总胆固醇、婚姻状况、吸烟状况、血糖、一级和二级亲属心脏病或心肌梗塞(MI)病史以及是否患有其他疾病(如高血压、抑郁症、慢性头痛和甲状腺疾病)与是否患有心血管疾病有显著关系(PC结论:鉴于 GLMM 模型树的性能优于标准模型树,且与 GLMM 模型无明显差异,建议使用该模型,因为其解释更简单,假设更少。使用更新的统计模型进行更准确的心血管疾病预测,可以建立更精确的框架,帮助制定积极的患者检测计划。
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来源期刊
Archives of Iranian Medicine
Archives of Iranian Medicine 医学-医学:内科
CiteScore
4.20
自引率
0.00%
发文量
67
审稿时长
3-8 weeks
期刊介绍: Aim and Scope: The Archives of Iranian Medicine (AIM) is a monthly peer-reviewed multidisciplinary medical publication. The journal welcomes contributions particularly relevant to the Middle-East region and publishes biomedical experiences and clinical investigations on prevalent diseases in the region as well as analyses of factors that may modulate the incidence, course, and management of diseases and pertinent medical problems. Manuscripts with didactic orientation and subjects exclusively of local interest will not be considered for publication.The 2016 Impact Factor of "Archives of Iranian Medicine" is 1.20.
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