提高心理治疗患者对智能传感的接受度:随机对照试验的结果

Fabian Rottstädt, Eduard Becker, Gabriele Wilz, Ilona Croy, Harald Baumeister, Y. Terhorst
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引用次数: 0

摘要

智能传感有可能使心理治疗更加有效。它涉及对数字设备产生的数据进行被动分析和收集。然而,心理治疗患者对智能传感的接受程度仍不明确。基于技术接受和使用的统一理论(UTAUT),本研究调查了(1)心理治疗患者对智能传感的接受程度(2)促进接受的干预措施(AFI)的有效性(3)接受的决定因素。患者(N = 116)被随机分配到对照组(CG)或干预组(IG)。干预组(IG)接受关于智能传感的 AFI 视频,对照组(CG)接受对照视频。通过在线问卷对智能传感的接受度、表现预期、努力预期、便利条件和社会影响进行评估。调查了 AFI 对接受度的干预效果。接受度的决定因素通过结构方程模型(SEM)进行了分析。IG 的接受度为中等水平(M = 3.16,SD = 0.97),而 CG 的接受度为低水平(M = 2.76,SD = 1.0)。在干预组中,接受度的提高显示出中等程度的效果(p < .05,d = 0.4)。在综合督导组中,成绩期望值(M = 3.92,SD = 0.7)、努力期望值(M = 3.90,SD = 0.98)和促进条件(M = 3.91,SD = 0.93)都达到了较高水平。绩效预期(γ = 0.63,p < .001)和努力预期(γ = 0.36,p < .001)被认为是接受度的核心决定因素,解释了接受度方差的 71.1%。拟合指数支持模型的有效性(CFI = .95,TLI = .93,RMSEA = .08)。CG 的接受度较低,这表明应考虑提高接受度,从而增加对技术的使用和坚持。目前的 AFI 在这方面很有效,因此是一种很有前途的方法。IG 也显示出明显更高的绩效预期和社会影响,总体而言,UTAUT 因素的表达也很强烈。研究结果表明,UTAUT 适用于临床样本中的智能传感,因为所包含的预测因子能够解释接受度的大量差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the acceptance of smart sensing in psychotherapy patients: findings from a randomized controlled trial
Smart sensing has the potential to make psychotherapeutic treatments more effective. It involves the passive analysis and collection of data generated by digital devices. However, acceptance of smart sensing among psychotherapy patients remains unclear. Based on the unified theory of acceptance and use of technology (UTAUT), this study investigated (1) the acceptance toward smart sensing in a sample of psychotherapy patients (2) the effectiveness of an acceptance facilitating intervention (AFI) and (3) the determinants of acceptance.Patients (N = 116) were randomly assigned to a control group (CG) or intervention group (IG). The IG received a video AFI on smart sensing, and the CG a control video. An online questionnaire was used to assess acceptance of smart sensing, performance expectancy, effort expectancy, facilitating conditions and social influence. The intervention effects of the AFI on acceptance were investigated. The determinants of acceptance were analyzed with structural equation modeling (SEM).The IG showed a moderate level of acceptance (M = 3.16, SD = 0.97), while the CG showed a low level (M = 2.76, SD = 1.0). The increase in acceptance showed a moderate effect in the intervention group (p < .05, d = 0.4). For the IG, performance expectancy (M = 3.92, SD = 0.7), effort expectancy (M = 3.90, SD = 0.98) as well as facilitating conditions (M = 3.91, SD = 0.93) achieved high levels. Performance expectancy (γ = 0.63, p < .001) and effort expectancy (γ = 0.36, p < .001) were identified as the core determinants of acceptance explaining 71.1% of its variance. The fit indices supported the model's validity (CFI = .95, TLI = .93, RMSEA = .08).The low acceptance in the CG suggests that enhancing the acceptance should be considered, potentially increasing the use and adherence to the technology. The current AFI was effective in doing so and is thus a promising approach. The IG also showed significantly higher performance expectancy and social influence and, in general, a strong expression of the UTAUT factors. The results support the applicability of the UTAUT in the context of smart sensing in a clinical sample, as the included predictors were able to explain a great amount of the variance of acceptance.
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