Shen Ke, Kejriwal Mayank
Information Sciences Institute, University of Southern California, Marina del Rey, Marina del Rey, California, United States of America.
PLOS Glob Public Health. 2023 May 12;3(5):e0001151. doi: 10.1371/journal.pgph.0001151. eCollection 2023.
COVID-19 vaccine hesitancy has become a major issue in the U.S. as vaccine supply has outstripped demand and vaccination rates slow down. At least one recent global survey has sought to study the covariates of vaccine acceptance, but an inferential model that makes simultaneous use of several socio-demographic variables has been lacking. This study has two objectives. First, we quantify the associations between common socio-demographic variables (including, but not limited to, age, ethnicity, and income) and vaccine acceptance in the U.S. Second, we use a conditional inference tree to quantify and visualize the interaction and conditional effects of relevant socio-demographic variables, known to be important correlates of vaccine acceptance in the U.S., on vaccine acceptance. We conduct a retrospective analysis on a COVID-19 cross-sectional Gallup survey data administered to a representative sample of U.S.-based respondents. Our univariate regression results indicate that most socio-demographic variables, such as age, education, level of household income and education, have significant association with vaccine acceptance, although there are key points of disagreement with the global survey. Similarly, our conditional inference tree model shows that trust in the (former) Trump administration, age and ethnicity are the most important covariates for predicting vaccine hesitancy. Our model also highlights the interdependencies between these variables using a tree-like visualization.
随着疫苗供应超过需求且接种率放缓,对新冠疫苗的犹豫在美国已成为一个主要问题。最近至少有一项全球调查试图研究疫苗接受度的协变量,但一直缺乏一个同时利用多个社会人口变量的推理模型。本研究有两个目标。第一,我们量化美国常见社会人口变量(包括但不限于年龄、种族和收入)与疫苗接受度之间的关联。第二,我们使用条件推理树来量化和可视化相关社会人口变量(已知是美国疫苗接受度的重要相关因素)对疫苗接受度的相互作用和条件效应。我们对一项针对美国受访者代表性样本进行的新冠横断面盖洛普调查数据进行回顾性分析。我们的单变量回归结果表明,大多数社会人口变量,如年龄、教育程度、家庭收入水平和教育程度,与疫苗接受度有显著关联,尽管与全球调查存在一些关键分歧点。同样,我们的条件推理树模型表明,对(前)特朗普政府的信任、年龄和种族是预测疫苗犹豫的最重要协变量。我们的模型还使用树状可视化突出了这些变量之间的相互依存关系。