1La Trobe Rural Health School, College of Science, Health and Engineering, La Trobe University, Bendigo, Australia.
2Diabetes Centre, Goulburn Valley Health, Shepparton, Australia.
J Foot Ankle Res. 2019 May 20;12:29. doi: 10.1186/s13047-019-0340-3. eCollection 2019.
Smart insole technologies that provide biofeedback on foot health can support foot-care in adults with diabetes. However, the factors that influence patient uptake and acceptance of this technology are unclear. Therefore, the aim of this mixed-methods study was to use an established theoretical framework to determine a model of psychosocial factors that best predicts participant intention to use smart insoles.
Fifty-three adults with diabetes from regional Australia completed the validated Unified Theory of Acceptance and Use of Technology (UTAUT) questionnaire. Multiple regression analysis was used to determine the psychosocial factors that best predict behavioural intention to adopt a smart insole. Additionally, a focus group was conducted and thematic analysis was performed to explore barriers and enablers to adopting this technology.
The multiple regression model that best predicted intention to adopt the smart insole (adjusted R = 0.51, < 0.001) identified that self-efficacy (β = 0.67, = 0.001) and attitude (β = 0.72, p < 0.001) were significant predictors of behavioural intention, while effort expectancy (β = - 0.52, = 0.003) and performance expectancy (β = - 0.40, = 0.040) were moderating factors. Thematic analysis illustrates the importance of attitude and self-efficacy on participants' behavioural intentions, influenced by participant's belief in the device's clinical efficacy and anticipated effort expectancy.
This mixed-methods study demonstrates that attitude, self-efficacy, performance expectancy and effort expectancy combine to predict intention to adopt smart insole technology. Clinicians should consider these psychosocial factors when they prescribe and implement smart soles with patients at high risk of foot ulceration.
提供足部健康生物反馈的智能鞋垫技术可以为糖尿病成人的足部护理提供支持。然而,影响患者接受和接受这种技术的因素尚不清楚。因此,本混合方法研究的目的是使用既定的理论框架来确定预测参与者使用智能鞋垫意图的最佳心理社会因素模型。
来自澳大利亚地区的 53 名成年糖尿病患者完成了经过验证的统一接受和使用技术理论(UTAUT)问卷。多元回归分析用于确定预测采用智能鞋垫的行为意图的最佳心理社会因素。此外,还进行了焦点小组讨论,并进行了主题分析,以探讨采用该技术的障碍和促进因素。
最佳预测采用智能鞋垫意图的多元回归模型(调整 R2=0.51,p<0.001)确定自我效能感(β=0.67,p=0.001)和态度(β=0.72,p<0.001)是行为意图的重要预测因素,而努力期望(β=-0.52,p=0.003)和绩效期望(β=-0.40,p=0.040)是调节因素。主题分析说明了态度和自我效能感对参与者行为意图的重要性,这受到参与者对设备临床疗效和预期努力期望的信念的影响。
这项混合方法研究表明,态度、自我效能感、绩效期望和努力期望共同预测采用智能鞋垫技术的意图。临床医生在为有足部溃疡高风险的患者开具和实施智能鞋底时应考虑这些心理社会因素。