Zhang Yiyu, Liu Chaoyuan, Luo Shuoming, Xie Yuting, Liu Fang, Li Xia, Zhou Zhiguang
Department of Metabolism and Endocrinology, The Second Xiangya Hospital, Central South University, Changsha, China.
Key Laboratory of Diabetes Immunology, Ministry of Education, Changsha, China.
J Med Internet Res. 2019 Aug 13;21(8):e15023. doi: 10.2196/15023.
Diabetes poses heavy social and economic burdens worldwide. Diabetes management apps show great potential for diabetes self-management. However, the adoption of diabetes management apps by diabetes patients is poor. The factors influencing patients' intention to use these apps are unclear. Understanding the patients' behavioral intention is necessary to support the development and promotion of diabetes app use.
This study aimed to identify the determinants of patients' intention to use diabetes management apps based on an integrated theoretical model.
The hypotheses of our research model were developed based on an extended Unified Theory of Acceptance and Use of Technology (UTAUT). From April 20 to May 20, 2019, adult patients with diabetes across China, who were familiar with diabetes management apps, were surveyed using the Web-based survey tool Sojump. Structural equation modeling was used to analyze the data.
A total of 746 participants who met the inclusion criteria completed the survey. The fitness indices suggested that the collected data fit well with the research model. The model explained 62.6% of the variance in performance expectancy and 57.1% of the variance in behavioral intention. Performance expectancy and social influence had the strongest total effects on behavioral intention (β=0.482; P=.001). Performance expectancy (β=0.482; P=.001), social influence (β=0.223; P=.003), facilitating conditions (β=0.17; P=.006), perceived disease threat (β=0.073; P=.005), and perceived privacy risk (β=-0.073; P=.012) had direct effects on behavioral intention. Additionally, social influence, effort expectancy, and facilitating conditions had indirect effects on behavioral intention that were mediated by performance expectancy. Social influence had the highest indirect effects among the three constructs (β=0.259; P=.001).
Performance expectancy and social influence are the most important determinants of the intention to use diabetes management apps. Health care technology companies should improve the usefulness of apps and carry out research to provide clinical evidence for the apps' effectiveness, which will benefit the promotion of these apps. Facilitating conditions and perceived privacy risk also have an impact on behavioral intention. Therefore, it is necessary to improve facilitating conditions and provide solid privacy protection. Our study supports the use of UTAUT in explaining patients' intention to use diabetes management apps. Context-related determinants should also be taken into consideration.
糖尿病在全球范围内带来了沉重的社会和经济负担。糖尿病管理应用程序在糖尿病自我管理方面显示出巨大潜力。然而,糖尿病患者对糖尿病管理应用程序的采用情况不佳。影响患者使用这些应用程序意愿的因素尚不清楚。了解患者的行为意愿对于支持糖尿病应用程序的开发和推广至关重要。
本研究旨在基于综合理论模型确定患者使用糖尿病管理应用程序意愿的决定因素。
我们研究模型的假设是基于扩展的技术接受与使用统一理论(UTAUT)开发的。2019年4月20日至5月20日,使用网络调查工具“问卷星”对中国各地熟悉糖尿病管理应用程序的成年糖尿病患者进行了调查。采用结构方程模型分析数据。
共有746名符合纳入标准的参与者完成了调查。拟合指数表明收集到的数据与研究模型拟合良好。该模型解释了绩效期望方差的62.6%和行为意愿方差的57.1%。绩效期望和社会影响对行为意愿的总效应最强(β=0.482;P=0.001)。绩效期望(β=0.482;P=0.001)、社会影响(β=0.223;P=0.003)、促进条件(β=0.17;P=0.006)、感知疾病威胁(β=0.073;P=0.005)和感知隐私风险(β=-0.073;P=0.012)对行为意愿有直接影响。此外,社会影响、努力期望和促进条件通过绩效期望对行为意愿有间接影响。社会影响在这三个构念中具有最高的间接效应(β=0.259;P=0.001)。
绩效期望和社会影响是使用糖尿病管理应用程序意愿的最重要决定因素。医疗技术公司应提高应用程序的实用性,并开展研究以提供应用程序有效性的临床证据,这将有助于这些应用程序的推广。促进条件和感知隐私风险也对行为意愿有影响。因此,有必要改善促进条件并提供可靠的隐私保护。我们的研究支持使用UTAUT来解释患者使用糖尿病管理应用程序的意愿。还应考虑与背景相关的决定因素。