Department of Economics, University Ca' Foscari Venezia, Venezia, Italy.
Division of Pharmacoepidemiology and Pharmacoeconomics, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, Massachusetts, USA.
Stat Med. 2022 Nov 20;41(26):5189-5202. doi: 10.1002/sim.9560. Epub 2022 Aug 31.
We analyze repeated cross-sectional survey data collected by the Institute of Global Health Innovation, to characterize the perception and behavior of the Italian population during the Covid-19 pandemic, focusing on the period that spans from April 2020 to July 2021. To accomplish this goal, we propose a Bayesian dynamic latent-class regression model, that accounts for the effect of sampling bias including survey weights into the likelihood function. According to the proposed approach, attitudes towards covid-19 are described via ideal behaviors that are fixed over time, corresponding to different degrees of compliance with spread-preventive measures. The overall tendency toward a specific profile dynamically changes across survey waves via a latent Gaussian process regression, that adjusts for subject-specific covariates. We illustrate the evolution of Italians' behaviors during the pandemic, providing insights on how the proportion of ideal behaviors has varied during the phases of the lockdown, while measuring the effect of age, sex, region and employment of the respondents on the attitude toward covid-19.
我们分析了全球健康创新研究所收集的重复横断面调查数据,以描述意大利在新冠疫情期间的认知和行为,重点关注 2020 年 4 月至 2021 年 7 月的时间段。为了实现这一目标,我们提出了一种贝叶斯动态潜在类别回归模型,该模型将抽样偏差的影响(包括调查权重)纳入似然函数。根据提出的方法,通过固定随时间变化的理想行为来描述对新冠病毒的态度,对应于不同程度的遵守预防传播措施。通过针对每个个体的协变量进行调整的潜在高斯过程回归,整体倾向于特定的个体特征会在调查波之间动态变化。我们说明了意大利人在疫情期间行为的演变,提供了有关在封锁阶段理想行为的比例如何变化的见解,同时衡量了受访者的年龄、性别、地区和就业状况对新冠病毒态度的影响。