Sarini Marcello, Actis Grosso Rossana, Magrin Maria Elena, Mari Silvia, Olivero Nadia, Paganin Giulia, Simbula Silvia
Department of Psychology, University of Milano-Bicocca, Piazza Ateneo Nuovo 1, 20126 Milano, Italy.
Bicocca Center for Applied Psychology (BiCApP), University of Milano-Bicocca, Piazza Ateneo Nuovo 1, 20126 Milano, Italy.
Healthcare (Basel). 2022 May 11;10(5):888. doi: 10.3390/healthcare10050888.
Digital contact tracing apps have been introduced by governments as a strategy to limit the spread of the COVID-19 pandemic. Digital contact tracking is an alternative to traditional contact tracing performed by human tracers who have to reconstruct each contact an infected person had in the recent past by means of interviews. The Italian government proposed the Immuni digital contact tracking app as a solution. Immuni uses Bluetooth technology to anonymously register all close contacts a person had: if she tests positive for COVID-19 then all registered contacts are notified. The main aim of the paper is to propose a cluster analysis of some factors concerning the possible acceptance of the Immuni app to build behaviour profiles that explain and predict the possible behaviours of the respondents. The factors considered referred to three different pillars: the technological pillar, investigated by considering factors from the technology acceptance models family; the health pillar, where variables of the health belief model were used; and the sociopolitical pillar, where some values of the respondents were considered as possible barriers to or facilitators of the acceptance of this technology. As a result of the cluster analysis, three behavioural profiles were built: the ProApp profile, the Hesitant profile, and the AntiApp profile. The first is the profile grouping the respondents who intend to use the contact tracing app; the second is more about people who are favourable of the use of the app, but some issues such as privacy reduce the strength of their intention; the last profile is about people who are less favourable to use the app. We are confident that the behaviour profiles found would be useful to build more tailored communication campaigns to help promote the use of the app by managing factors that could either be facilitators or barriers.
各国政府已推出数字接触者追踪应用程序,作为限制新冠疫情传播的一项策略。数字接触者追踪是传统接触者追踪的一种替代方式,传统方式由人工追踪者进行,他们必须通过访谈来重构感染者近期的每一次接触情况。意大利政府提议使用Immuni数字接触者追踪应用程序作为解决方案。Immuni利用蓝牙技术匿名记录一个人所有的密切接触者:如果此人新冠病毒检测呈阳性,那么所有已记录的接触者都会收到通知。本文的主要目的是对一些与Immuni应用程序可能的接受度相关的因素进行聚类分析,以构建行为模式,从而解释和预测受访者可能的行为。所考虑的因素涉及三个不同的支柱:技术支柱,通过考虑技术接受模型家族中的因素进行研究;健康支柱,使用健康信念模型的变量;社会政治支柱,将受访者的一些价值观视为接受这项技术的可能障碍或促进因素。聚类分析的结果是构建了三种行为模式:支持应用程序模式、犹豫模式和反对应用程序模式。第一种模式是将打算使用接触者追踪应用程序的受访者归为一组;第二种模式更多涉及那些赞成使用该应用程序,但隐私等一些问题削弱了他们使用意愿的人;最后一种模式是关于不太赞成使用该应用程序的人。我们相信,所发现的行为模式将有助于开展更具针对性的宣传活动,通过管理可能成为促进因素或障碍的因素来帮助推广该应用程序的使用。