Intersection of Perceived COVID-19 Risk, Preparedness, and Preventive Health Behaviors: Latent Class Segmentation Analysis

Osaro Mgbere, Sorochi Iloanusi, Ismaeel Yunusa, Nchebe-Jah R Iloanusi, Shrey Gohil, Ekere James Essien
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Abstract

Background COVID-19 risk perception is a factor that influences the pandemic spread. Understanding the potential behavioral responses to COVID-19, including preparedness and adoption of preventive measures, can inform interventions to curtail its spread. Objective We assessed self-perceived and latent class analysis (LCA)–based risks of COVID-19 and their associations with preparedness, misconception, information gap, and preventive practices among residents of a densely populated city in Nigeria. Methods We used data from a cross-sectional survey conducted among residents (N=140) of Onitsha, Nigeria, in March 2020, before the government-mandated lockdown. Using an iterative expectation-maximization algorithm, we applied LCA to systematically segment participants into the most likely distinct risk clusters. Furthermore, we used bivariate and multivariable logistic regression models to determine the associations among knowledge, attitude, preventive practice, perceived preparedness, misconception, COVID-19 information gap, and self-perceived and LCA-based COVID-19 risks. Results Most participants (85/140, 60.7%) had good knowledge and did not perceive themselves as at risk of contracting COVID-19. Three-quarters of the participants (102/137, 74.6%; P<.001) experienced COVID-19–related information gaps, while 62.9% (88/140; P=.04) of the participants had some misconceptions about the disease. Conversely, most participants (93/140, 66.4%; P<.001) indicated that they were prepared for the COVID-19 pandemic. The majority of the participants (94/138, 68.1%; P<.001) self-perceived that they were not at risk of contracting COVID-19 compared to 31.9% (44/138) who professed to be at risk of contracting COVID-19. Using the LCA, we identified 3 distinct risk clusters (P<.001), namely, prudent or low-risk takers, skeptics or high-risk takers, and carefree or very high-risk takers with prevalence rates (probabilities of cluster membership that represent the prevalence rate [γc]) of 47.5% (95% CI 40%-55%), 16.2% (95% CI 11.4%-20.9%), and 36.4% (95% CI 28.8%-43.9%), respectively. We recorded a significantly negative agreement between self-perceived risk and LCA-based segmentation of COVID-19 risk (κ=–0.218, SD 0.067; P=.01). Knowledge, attitude, and perceived need for COVID-19 information were significant predictors of COVID-19 preventive practices among the Onitsha city residents. Conclusions The clustering patterns highlight the impact of modifiable risk behaviors on COVID-19 preventive practices, which can provide strong empirical support for health prevention policies. Consequently, clusters with individuals at high risk of contracting COVID-19 would benefit from multicomponent interventions delivered in diverse settings to improve the population-based response to the pandemic.
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感知COVID-19风险、准备和预防性健康行为的交集:潜在类别分割分析
背景COVID-19风险认知是影响大流行传播的一个因素。了解对COVID-19的潜在行为反应,包括准备和采取预防措施,可以为采取干预措施提供信息,以遏制其传播。目的评估尼日利亚某人口稠密城市居民中基于自我感知和潜在类别分析(LCA)的COVID-19风险及其与防范、误解、信息缺口和预防措施的关系。方法我们使用了2020年3月在政府强制封锁之前对尼日利亚奥尼沙居民(N=140)进行的横断面调查的数据。使用迭代期望最大化算法,我们应用LCA系统地将参与者划分为最可能不同的风险集群。此外,我们使用双变量和多变量逻辑回归模型来确定知识、态度、预防实践、感知准备、误解、COVID-19信息差距以及自我感知和基于lca的COVID-19风险之间的关系。结果大多数参与者(85/140,60.7%)对COVID-19有良好的了解,并且没有意识到自己有感染COVID-19的风险。四分之三的参与者(102/137,74.6%;P<.001)经历了与covid -19相关的信息空白,而62.9% (88/140;P=.04)。相反,大多数参与者(93/140,66.4%;P<.001)表明他们为COVID-19大流行做好了准备。大多数参与者(94/138,68.1%;P<.001)自我认为他们没有感染COVID-19的风险,而声称有感染COVID-19风险的人为31.9%(44/138)。使用LCA,我们确定了3个不同的风险集群(P<.001),即谨慎或低风险的承担者,怀疑论者或高风险的承担者,无忧无虑或非常高风险的承担者,患病率(代表患病率的集群成员概率[γc])分别为47.5% (95% CI 40%-55%), 16.2% (95% CI 11.4%-20.9%)和36.4% (95% CI 28.8%-43.9%)。我们记录了自我感知风险与基于lca的COVID-19风险分割之间的显著负相关(κ= -0.218, SD 0.067;P = . 01)。知识、态度和对COVID-19信息的感知需求是奥尼察市居民COVID-19预防措施的重要预测因素。结论聚类模式突出了可改变风险行为对COVID-19预防实践的影响,可为卫生预防政策提供有力的实证支持。因此,个体感染COVID-19的高风险聚集性将受益于在不同环境中提供的多成分干预措施,以改善以人群为基础的大流行应对措施。
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