Byrd Thomas F, Kim Jane S, Yeh Chen, Lee Jungwha, O'Leary Kevin J
Department of Medicine (Hospital Medicine), Northwestern University Feinberg School of Medicine, USA.
Department of Medicine (Hospital Medicine), Northwestern University Feinberg School of Medicine, USA.
J Biomed Inform. 2021 May;117:103749. doi: 10.1016/j.jbi.2021.103749. Epub 2021 Mar 23.
Secure mobile communication technologies are being implemented at an increasing rate across health care organizations, though providers' use of these tools can remain limited by a perceived lack of other users to communicate with. Enabling acceptance and driving provider utilization of these tools throughout an organization requires attention to the interplay between perceived peer usage (i.e. perceived critical mass) and local user needs within the social context of the care team (e.g. inpatient nursing access to the mobile app). To explain these influences, we developed and tested a consolidated model that shows how mobile health care communication technology acceptance and utilization are influenced by the moderating effects of social context on perceptions about the technology.
The theoretical model and questionnaire were derived from selected technology acceptance models and frameworks. Survey respondents (n = 1254) completed items measuring perceived critical mass, perceived usefulness, perceived ease of use, personal innovativeness in information technology, behavioral intent, and actual use of a recently implemented secure mobile communication tool. Actual use was additionally measured by logged usage data. Use group was defined as whether a hospital's nurses had access to the tool (expanded use group) or not (limited use group).
The model accounted for 61% and 72% of the variance in intent to use the communication tool in the limited and expanded use groups, respectively, which in turn accounted for 53% and 33% of actual use. The total effects coefficient of perceived critical mass on behavioral intent was 0.57 in the limited use group (95% CI 0.51-0.63) and 0.70 in the expanded use group (95% CI 0.61-0.80).
Our model fit the data well and explained the majority of variance in acceptance of the tool amongst participants. The overall influence of perceived critical mass on intent to use the tool was similarly large in both groups. However, the strength of multiple model pathways varied unexpectedly by use group, suggesting that combining sociotechnical moderators with traditional technology acceptance models may produce greater insights than traditional technology acceptance models alone. Practically, our results suggest that healthcare institutions can drive acceptance by promoting the recruitment of early adopters though liberal access policies and making these users and the technology highly visible to others.
安全移动通讯技术在医疗保健机构中的应用率正在不断提高,不过,由于认为缺乏与之交流的其他用户,医疗服务提供者对这些工具的使用可能仍然有限。要促使整个机构接受并推动医疗服务提供者使用这些工具,就需要关注在护理团队的社会背景下(如住院护士对移动应用程序的使用),感知到的同伴使用情况(即感知到的临界数量)与当地用户需求之间的相互作用。为了解释这些影响,我们开发并测试了一个综合模型,该模型展示了移动医疗通讯技术的接受和使用是如何受到社会背景对技术认知的调节作用影响的。
理论模型和调查问卷源自选定的技术接受模型和框架。调查对象(n = 1254)完成了一些项目,这些项目测量了感知到的临界数量、感知到的有用性、感知到的易用性、信息技术方面的个人创新性、行为意图以及对最近实施的安全移动通讯工具的实际使用情况。实际使用情况还通过记录的使用数据进行了测量。使用组被定义为医院护士是否能够使用该工具(扩大使用组)或不能使用(有限使用组)。
该模型分别解释了有限使用组和扩大使用组中使用通讯工具意图差异的61%和72%,而这又分别解释了实际使用情况差异的53%和33%。在有限使用组中,感知到的临界数量对行为意图的总效应系数为0.57(95%置信区间0.51 - 0.63),在扩大使用组中为0.70(95%置信区间0.61 - 0.80)。
我们的模型与数据拟合良好,并解释了参与者中该工具接受度差异的大部分原因。在两组中,感知到的临界数量对使用该工具意图的总体影响同样很大。然而,多个模型路径的强度因使用组而异,这表明将社会技术调节因素与传统技术接受模型相结合可能比单独使用传统技术接受模型产生更深刻的见解。实际上,我们的结果表明,医疗机构可以通过宽松的访问政策促进早期采用者的招募,并使这些用户和技术对其他人高度可见,从而推动接受度。