Effects of User Experience in Automated Information Processing on Perceived Usefulness of Digital Contact-Tracing Apps: Cross-Sectional Survey Study.

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES
JMIR Human Factors Pub Date : 2024-06-25 DOI:10.2196/53940
Tim Schrills, Lilian Kojan, Marthe Gruner, André Calero Valdez, Thomas Franke
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引用次数: 0

Abstract

Background: In pandemic situations, digital contact tracing (DCT) can be an effective way to assess one's risk of infection and inform others in case of infection. DCT apps can support the information gathering and analysis processes of users aiming to trace contacts. However, users' use intention and use of DCT information may depend on the perceived benefits of contact tracing. While existing research has examined acceptance in DCT, automation-related user experience factors have been overlooked.

Objective: We pursued three goals: (1) to analyze how automation-related user experience (ie, perceived trustworthiness, traceability, and usefulness) relates to user behavior toward a DCT app, (2) to contextualize these effects with health behavior factors (ie, threat appraisal and moral obligation), and (3) to collect qualitative data on user demands for improved DCT communication.

Methods: Survey data were collected from 317 users of a nationwide-distributed DCT app during the COVID-19 pandemic after it had been in app stores for >1 year using a web-based convenience sample. We assessed automation-related user experience. In addition, we assessed threat appraisal and moral obligation regarding DCT use to estimate a partial least squares structural equation model predicting use intention. To provide practical steps to improve the user experience, we surveyed users' needs for improved communication of information via the app and analyzed their responses using thematic analysis.

Results: Data validity and perceived usefulness showed a significant correlation of r=0.38 (P<.001), goal congruity and perceived usefulness correlated at r=0.47 (P<.001), and result diagnosticity and perceived usefulness had a strong correlation of r=0.56 (P<.001). In addition, a correlation of r=0.35 (P<.001) was observed between Subjective Information Processing Awareness and perceived usefulness, suggesting that automation-related changes might influence the perceived utility of DCT. Finally, a moderate positive correlation of r=0.47 (P<.001) was found between perceived usefulness and use intention, highlighting the connection between user experience variables and use intention. Partial least squares structural equation modeling explained 55.6% of the variance in use intention, with the strongest direct predictor being perceived trustworthiness (β=.54; P<.001) followed by moral obligation (β=.22; P<.001). Based on the qualitative data, users mainly demanded more detailed information about contacts (eg, place and time of contact). They also wanted to share information (eg, whether they wore a mask) to improve the accuracy and diagnosticity of risk calculation.

Conclusions: The perceived result diagnosticity of DCT apps is crucial for perceived trustworthiness and use intention. By designing for high diagnosticity for the user, DCT apps could improve their support in the action regulation of users, resulting in higher perceived trustworthiness and use in pandemic situations. In general, automation-related user experience has greater importance for use intention than general health behavior or experience.

自动信息处理的用户体验对数字联络追踪应用程序实用性认知的影响:横断面调查研究
背景:在大流行情况下,数字接触追踪(DCT)是评估个人感染风险和在感染情况下通知他人的有效方法。DCT 应用程序可为用户追踪联系人的信息收集和分析过程提供支持。然而,用户对 DCT 信息的使用意向和使用情况可能取决于对追踪接触者所带来的益处的感知。虽然现有研究已经考察了用户对 DCT 的接受程度,但与自动化相关的用户体验因素却被忽视了:我们的目标有三个:(目标:我们有三个目标:(1)分析与自动化相关的用户体验(即感知到的可信度、可追踪性和有用性)如何与用户使用 DCT 应用程序的行为相关联;(2)将这些影响与健康行为因素(即威胁评估和道德义务)联系起来;(3)收集有关用户对改进 DCT 通信需求的定性数据:方法: 在 COVID-19 大流行期间,我们通过基于网络的便利抽样调查,收集了 317 位使用一款全国性 DCT 应用程序的用户的调查数据,当时该应用程序已在应用程序商店中销售超过一年。我们评估了与自动化相关的用户体验。此外,我们还评估了有关 DCT 使用的威胁评估和道德义务,以估计预测使用意向的偏最小二乘法结构方程模型。为了提供改善用户体验的实际步骤,我们调查了用户对通过应用程序改善信息沟通的需求,并使用主题分析法对他们的回答进行了分析:结果:数据有效性和感知有用性显示出显著的相关性,r=0.38(PC结论:DCT 应用程序的感知结果诊断性对于感知可信度和使用意向至关重要。通过为用户设计高诊断性,DCT 应用程序可以改善其对用户行动调节的支持,从而提高感知可信度和在大流行情况下的使用率。一般来说,与自动化相关的用户体验对于使用意向的重要性要高于一般的健康行为或体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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