远程医疗利用率统计模型中老年人的干扰影响

IF 2.5 Q1 REHABILITATION
David Shilane, Heidi Ting’an Lu, Zhenyi Zheng
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引用次数: 0

摘要

在远程保健使用模型中,年龄可能是一个干扰变量。我们利用 2021 年全国健康访谈调查的数据,比较了统一逻辑回归模型和分层逻辑回归模型。共识别出 27626 名患者,其中 38.9% 的患者使用过远程医疗。统一模型和分层模型在定量估计方面显示出许多重要的差异,尤其是在性别、西班牙裔、心脏病、慢性阻塞性肺病、食物过敏、高胆固醇、肾脏虚弱或衰竭、肝脏疾病、自理困难、使用移动设备、工作能力受限的健康问题、支付账单问题以及最近开过处方等方面。在分层建模中,年轻患者和老年患者使用远程医疗的几率存在明显差异。在远程保健利用率模型中,传统的逻辑回归统计调整可能无法充分考虑老年患者的混杂影响。按年龄进行分层建模可能会更有效地获得临床推论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Confounding Influence of Older Age in Statistical Models of Telehealth Utilization
Older age is a potentially confounding variable in models of telehealth utilization. We compared unified and stratified logistic regression models using data from the 2021 National Health Interview Survey. A total of 27,626 patients were identified, of whom 38.9% had utilized telehealth. Unified and stratified modeling showed a number of important differences in their quantitative estimates, especially for gender, Hispanic ethnicity, heart disease, COPD, food allergies, high cholesterol, weak or failing kidneys, liver conditions, difficulty with self-care, the use of mobility equipment, health problems that limit the ability to work, problems paying bills, and filling a recent prescription. Telehealth utilization odds ratios differ meaningfully between younger and older patients in stratified modeling. Traditional statistical adjustments in logistic regression may not sufficiently account for the confounding influence of older age in models of telehealth utilization. Stratified modeling by age may be more effective in obtaining clinical inferences.
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来源期刊
CiteScore
4.60
自引率
6.10%
发文量
14
审稿时长
10 weeks
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