Assessing the Short-Term Efficacy of Digital Cognitive Behavioral Therapy for Insomnia With Different Types of Coaching: Randomized Controlled Comparative Trial.

IF 4.8 2区 医学 Q1 PSYCHIATRY Jmir Mental Health Pub Date : 2024-08-07 DOI:10.2196/51716
Wai Sze Chan, Wing Yee Cheng, Samson Hoi Chun Lok, Amanda Kah Mun Cheah, Anna Kai Win Lee, Albe Sin Ying Ng, Tobias Kowatsch
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Abstract

Background: Digital cognitive behavioral therapy for insomnia (dCBTi) is an effective intervention for treating insomnia. The findings regarding its efficacy compared to face-to-face cognitive behavioral therapy for insomnia are inconclusive but suggest that dCBTi might be inferior. The lack of human support and low treatment adherence are believed to be barriers to dCBTi achieving its optimal efficacy. However, there has yet to be a direct comparative trial of dCBTi with different types of coaching support.

Objective: This study examines whether adding chatbot-based and human coaching would improve the treatment efficacy of, and adherence to, dCBTi.

Methods: Overall, 129 participants (n=98, 76% women; age: mean 34.09, SD 12.05 y) whose scores on the Insomnia Severity Index [ISI] were greater than 9 were recruited. A randomized controlled comparative trial with 5 arms was conducted: dCBTi with chatbot-based coaching and therapist support (dCBTi-therapist), dCBTi with chatbot-based coaching and research assistant support, dCBTi with chatbot-based coaching only, dCBTi without any coaching, and digital sleep hygiene and self-monitoring control. Participants were blinded to the condition assignment and study hypotheses, and the outcomes were self-assessed using questionnaires administered on the web. The outcomes included measures of insomnia (the ISI and the Sleep Condition Indicator), mood disturbances, fatigue, daytime sleepiness, quality of life, dysfunctional beliefs about sleep, and sleep-related safety behaviors administered at baseline, after treatment, and at 4-week follow-up. Treatment adherence was measured by the completion of video sessions and sleep diaries. An intention-to-treat analysis was conducted.

Results: Significant condition-by-time interaction effects showed that dCBTi recipients, regardless of having any coaching, had greater improvements in insomnia measured by the Sleep Condition Indicator (P=.003; d=0.45) but not the ISI (P=.86; d=-0.28), depressive symptoms (P<.001; d=-0.62), anxiety (P=.01; d=-0.40), fatigue (P=.02; d=-0.35), dysfunctional beliefs about sleep (P<.001; d=-0.53), and safety behaviors related to sleep (P=.001; d=-0.50) than those who received digital sleep hygiene and self-monitoring control. The addition of chatbot-based coaching and human support did not improve treatment efficacy. However, adding human support promoted greater reductions in fatigue (P=.03; d=-0.33) and sleep-related safety behaviors (P=.05; d=-0.30) than dCBTi with chatbot-based coaching only at 4-week follow-up. dCBTi-therapist had the highest video and diary completion rates compared to other conditions (video: 16/25, 60% in dCBTi-therapist vs <3/21, <25% in dCBTi without any coaching), indicating greater treatment adherence.

Conclusions: Our findings support the efficacy of dCBTi in treating insomnia, reducing thoughts and behaviors that perpetuate insomnia, reducing mood disturbances and fatigue, and improving quality of life. Adding chatbot-based coaching and human support did not significantly improve the efficacy of dCBTi after treatment. However, adding human support had incremental benefits on reducing fatigue and behaviors that could perpetuate insomnia, and hence may improve long-term efficacy.

Trial registration: ClinicalTrials.gov NCT05136638; https://www.clinicaltrials.gov/study/NCT05136638.

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通过不同类型的辅导评估数字认知行为疗法对失眠症的短期疗效:随机对照比较试验。
背景失眠症数字认知行为疗法(dCBTi)是治疗失眠症的一种有效干预方法。与面对面的失眠认知行为疗法相比,dCBTi 的疗效尚无定论,但研究结果表明,dCBTi 的疗效可能较差。缺乏人力支持和治疗依从性低被认为是 dCBTi 达到最佳疗效的障碍。然而,目前还没有将 dCBTi 与不同类型的辅导支持进行直接比较试验:本研究探讨了添加聊天机器人和人工辅导是否会提高 dCBTi 的疗效和依从性:共招募了 129 名失眠严重程度指数[ISI]大于 9 分的参与者(n=98,76% 为女性;年龄:平均 34.09 岁,标准差 12.05 岁)。随机对照比较试验分为 5 个部分:带有聊天机器人辅导和治疗师支持的 dCBTi(dCBTi-治疗师)、带有聊天机器人辅导和研究助理支持的 dCBTi、仅带有聊天机器人辅导的 dCBTi、不带任何辅导的 dCBTi,以及数字睡眠卫生和自我监控对照组。参与者在条件分配和研究假设方面均为盲人,研究结果通过网络问卷进行自我评估。结果包括对失眠(ISI 和睡眠状况指标)、情绪障碍、疲劳、白天嗜睡、生活质量、对睡眠的功能失调信念以及与睡眠相关的安全行为的测量,分别在基线、治疗后和 4 周随访时进行。治疗依从性通过完成视频课程和睡眠日记来衡量。进行了意向治疗分析:结果:显著的条件-时间交互效应显示,无论是否接受过任何辅导,dCBTi 受试者在睡眠状况指标(P=.003;d=0.45)而非 ISI(P=.86;d=-0.28)、抑郁症状(PConclusions:我们的研究结果表明,dCBTi 在治疗失眠、减少导致失眠的想法和行为、减少情绪障碍和疲劳以及提高生活质量方面具有疗效。在治疗后,添加基于聊天机器人的辅导和人工支持并不能显著提高 dCBTi 的疗效。但是,增加人工支持对减少疲劳和可能导致失眠长期存在的行为有增量效益,因此可能会提高长期疗效:试验注册:ClinicalTrials.gov NCT05136638;https://www.clinicaltrials.gov/study/NCT05136638。
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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
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