Therapist Feedback and Implications on Adoption of an Artificial Intelligence-Based Co-Facilitator for Online Cancer Support Groups: Mixed Methods Single-Arm Usability Study.

IF 3.3 Q2 ONCOLOGY JMIR Cancer Pub Date : 2023-06-09 DOI:10.2196/40113
Yvonne W Leung, Steve Ng, Lauren Duan, Claire Lam, Kenith Chan, Mathew Gancarz, Heather Rennie, Lianne Trachtenberg, Kai P Chan, Achini Adikari, Lin Fang, David Gratzer, Graeme Hirst, Jiahui Wong, Mary Jane Esplen
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Abstract

Background: The recent onset of the COVID-19 pandemic and the social distancing requirement have created an increased demand for virtual support programs. Advances in artificial intelligence (AI) may offer novel solutions to management challenges such as the lack of emotional connections within virtual group interventions. Using typed text from online support groups, AI can help identify the potential risk of mental health concerns, alert group facilitator(s), and automatically recommend tailored resources while monitoring patient outcomes.

Objective: The aim of this mixed methods, single-arm study was to evaluate the feasibility, acceptability, validity, and reliability of an AI-based co-facilitator (AICF) among CancerChatCanada therapists and participants to monitor online support group participants' distress through a real-time analysis of texts posted during the support group sessions. Specifically, AICF (1) generated participant profiles with discussion topic summaries and emotion trajectories for each session, (2) identified participant(s) at risk for increased emotional distress and alerted the therapist for follow-up, and (3) automatically suggested tailored recommendations based on participant needs. Online support group participants consisted of patients with various types of cancer, and the therapists were clinically trained social workers.

Methods: Our study reports on the mixed methods evaluation of AICF, including therapists' opinions as well as quantitative measures. AICF's ability to detect distress was evaluated by the patient's real-time emoji check-in, the Linguistic Inquiry and Word Count software, and the Impact of Event Scale-Revised.

Results: Although quantitative results showed only some validity of AICF's ability in detecting distress, the qualitative results showed that AICF was able to detect real-time issues that are amenable to treatment, thus allowing therapists to be more proactive in supporting every group member on an individual basis. However, therapists are concerned about the ethical liability of AICF's distress detection function.

Conclusions: Future works will look into wearable sensors and facial cues by using videoconferencing to overcome the barriers associated with text-based online support groups.

International registered report identifier (irrid): RR2-10.2196/21453.

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在线癌症支持小组采用基于人工智能的辅助服务商的治疗师反馈和影响:混合方法单臂可用性研究。
背景:最近爆发的COVID-19大流行和社会距离要求增加了对虚拟支持项目的需求。人工智能(AI)的进步可能会为管理挑战提供新颖的解决方案,例如在虚拟群体干预中缺乏情感联系。使用来自在线支持小组的输入文本,人工智能可以帮助识别心理健康问题的潜在风险,提醒小组协调员,并在监测患者结果的同时自动推荐量身定制的资源。目的:这项混合方法单臂研究的目的是评估canerchatcanada治疗师和参与者之间基于人工智能的共同调解人(AICF)的可行性、可接受性、有效性和可靠性,通过实时分析支持小组会议期间发布的文本来监测在线支持小组参与者的痛苦。具体来说,AICF(1)生成参与者档案,包括每次会议的讨论主题总结和情绪轨迹;(2)识别有情绪困扰增加风险的参与者,并提醒治疗师进行随访;(3)根据参与者的需求自动提出量身定制的建议。在线支持小组的参与者由不同类型的癌症患者组成,治疗师是经过临床培训的社会工作者。方法:本研究报告了AICF的混合评价方法,包括治疗师的意见和定量测量。AICF检测痛苦的能力通过患者的实时表情符号登记、语言查询和字数统计软件以及事件量表修订的影响来评估。结果:虽然定量结果显示AICF在检测痛苦方面的能力只有一些有效性,但定性结果显示AICF能够检测出可治疗的实时问题,从而使治疗师能够更积极主动地支持每个个体基础上的小组成员。然而,治疗师担心AICF的痛苦检测功能的伦理责任。结论:未来的工作将通过视频会议研究可穿戴传感器和面部线索,以克服与基于文本的在线支持小组相关的障碍。国际注册报告标识符(irrid): RR2-10.2196/21453。
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来源期刊
JMIR Cancer
JMIR Cancer ONCOLOGY-
CiteScore
4.10
自引率
0.00%
发文量
64
审稿时长
12 weeks
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