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利用回归树分析研究2021年5月至2022年4月美国全国免疫调查成人新冠模块中随时间变化的新冠疫苗接种趋势的人口统计学和地理特征。

Using regression tree analysis to examine demographic and geographic characteristics of COVID-19 vaccination trends over time, United States, May 2021-April 2022, National Immunization Survey Adult COVID Module.

作者信息

Earp Morgan, Meng Lu, Black Carla L, Carter Rosalind J, Lu Peng-Jun, Singleton James A, Chorba Terence

机构信息

U.S. Centers for Disease Control and Prevention, National Center for Health Statistics, United States.

U.S. Centers for Disease Control and Prevention, National Center for Emerging and Zoonotic Infectious Diseases, United States.

出版信息

Vaccine. 2024 Dec 2;42(26):126372. doi: 10.1016/j.vaccine.2024.126372. Epub 2024 Oct 4.

Abstract

Using data from the nationally representative National Immunization Survey (NIS), we applied conditional linear regression tree methodology to examine relationships between demographic and geographic factors and propensity of receiving various doses of COVID-19 vaccine over time; these analyses identified temporal changes in these relationships that heretofore had not been identified using conventional logistical regression methodologies. Three regression tree models were built using an R package, Recursive Partitioning for Modeling Survey (rpms), to examine propensities over time of receiving a (1) first dose of a two-dose COVID-19 mRNA primary vaccination series or single dose of the Janssen vaccine (vaccine initiation), (2) primary series completion, and (3) monovalent booster dose, using a conditional linear effect model. Persons ≥50 years were more likely to complete a primary series and receive a first booster dose; persons reporting having received non-COVID-19 vaccines recently were more likely to initiate vaccination, complete the primary series, and get a first booster dose; persons reporting having work or school requirements were more likely to complete the primary series. Persons not reporting having received non-COVID-19 vaccines in 2 years but reporting having work or school vaccination requirements were more likely to initiate vaccination than those without work/school requirements. Among persons not reporting having received non-COVID-19 vaccines in 2 years and not reporting having work or school vaccination requirements, those aged ≥50 years were more likely to initiate vaccination than were younger adults. Propensity of receiving various doses was correlated with age, having recently received non-COVID 19 vaccines, and having vaccination requirements at work or school. Regression tree methodology enabled modeling of different COVID-19 vaccination dose propensities as a linear effect of time, revealed changes in relationships over time between demographic factors and propensity of receipt of different doses, and identified populations that may benefit from vaccination outreach efforts.

摘要

利用具有全国代表性的国家免疫调查(NIS)的数据,我们应用条件线性回归树方法来研究人口统计学和地理因素与不同时间点接种各种剂量新冠疫苗倾向之间的关系;这些分析确定了这些关系随时间的变化,而这些变化是以往使用传统逻辑回归方法所未发现的。我们使用R包“用于调查建模的递归划分”(rpms)构建了三个回归树模型,以使用条件线性效应模型研究在不同时间接种(1)两剂新冠mRNA疫苗初级接种系列的第一剂或单剂杨森疫苗(疫苗起始)、(2)初级系列完成以及(3)单价加强剂的倾向。50岁及以上的人更有可能完成初级系列接种并接受第一剂加强针;报告近期接种过非新冠疫苗的人更有可能开始接种、完成初级系列接种并接受第一剂加强针;报告有工作或学校接种要求的人更有可能完成初级系列接种。在过去两年未报告接种过非新冠疫苗但报告有工作或学校接种要求的人中,有工作或学校接种要求的人比没有工作或学校接种要求的人更有可能开始接种。在过去两年未报告接种过非新冠疫苗且未报告有工作或学校接种要求的人群中,50岁及以上的人比年轻人更有可能开始接种。接种各种剂量的倾向与年龄、近期是否接种过非新冠疫苗以及工作或学校是否有接种要求相关。回归树方法能够将不同新冠疫苗接种剂量倾向建模为时间的线性效应,揭示人口统计学因素与不同剂量接种倾向之间随时间的关系变化,并确定可能从疫苗推广工作中受益的人群。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d487/12024164/18cb1c8467ce/nihms-2063482-f0001.jpg

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