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Directed acyclic graphs helped to identify confounding in the association of disability and electrocardiographic findings: Results from the KORA-Age study

机译:有向无环图有助于确定残疾与心电图检查结果之间的混淆:KORA-Age研究的结果

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Objectives To examine the association between electrocardiographic (ECG) findings and disability status in older adults. Study Design and Setting KORA-Age, a population-based cross-sectional study of the MONICA/KORA project, a randomized sample from Southern Germany of people aged 65 years or older. Results A total of 534 (51.5%) of 1,037 participants were characterized as disabled. Disabled participants were on average 4.5 years older than those who were not disabled. Crude associations of left-axis deviation, ventricular conduction defects, atrial fibrillation, and QT prolongation with disability status were significant (P < 0.05). In models controlled for age and sex, these effects remained constant except for QT prolongation. In the models adjusted for the minimal sufficient adjustment set (consisting of the variables sex, physical activity, age, obesity, diabetes, education, heart diseases, income, lung diseases, and stroke) identified by a directed acyclic graph (DAG), no significant association could be shown. Conclusion Associations between specific ECG findings and disability were found in unadjusted analysis and logistic models adjusted for age and sex. However, when adjusting for other possible confounders identified by the DAG, all these associations were no longer significant. It is important to adequately identify confounding in such settings.
机译:目的探讨老年人心电图(ECG)发现与残疾状况之间的关系。研究设计和设置KORA-Age是MONICA / KORA项目的一项基于人群的横断面研究,该研究是来自德国南部65岁以上老年人的随机样本。结果1,037名参与者中有534名(51.5%)被定性为残疾。残疾参与者平均比未残疾者大4.5岁。左轴偏差,心室传导缺陷,心房颤动和QT延长与残疾状态之间的关联很明显(P <0.05)。在受年龄和性别控制的模型中,除了QT延长以外,这些影响保持不变。在针对有向无环图(DAG)识别的最小充分调整集(包括变量,性别,身体活动,年龄,肥胖,糖尿病,教育,心脏病,收入,肺部疾病和中风)进行调整的模型中,没有可以显示显着的关联。结论在针对年龄和性别进行调整的未经调整的分析和逻辑模型中,发现了特定的ECG发现与残疾之间的关联。但是,当调整DAG确定的其他可能的混杂因素时,所有这些关联不再重要。充分识别这种情况下的混淆很重要。

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