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首页> 外文期刊>JMIR Research Protocols >Natural Language Processing–Based Virtual Cofacilitator for Online Cancer Support Groups: Protocol for an Algorithm Development and Validation Study
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Natural Language Processing–Based Virtual Cofacilitator for Online Cancer Support Groups: Protocol for an Algorithm Development and Validation Study

机译:基于自然语言处理的虚拟COFACILITOR用于在线癌症支持组:算法开发和验证研究的协议

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Background Cancer and its treatment can significantly impact the short- and long-term psychological well-being of patients and families. Emotional distress and depressive symptomatology are often associated with poor treatment adherence, reduced quality of life, and higher mortality. Cancer support groups, especially those led by health care professionals, provide a safe place for participants to discuss fear, normalize stress reactions, share solidarity, and learn about effective strategies to build resilience and enhance coping. However, in-person support groups may not always be accessible to individuals; geographic distance is one of the barriers for access, and compromised physical condition (eg, fatigue, pain) is another. Emerging evidence supports the effectiveness of online support groups in reducing access barriers. Text-based and professional-led online support groups have been offered by Cancer Chat Canada. Participants join the group discussion using text in real time. However, therapist leaders report some challenges leading text-based online support groups in the absence of visual cues, particularly in tracking participant distress. With multiple participants typing at the same time, the nuances of the text messages or red flags for distress can sometimes be missed. Recent advances in artificial intelligence such as deep learning–based natural language processing offer potential solutions. This technology can be used to analyze online support group text data to track participants’ expressed emotional distress, including fear, sadness, and hopelessness. Artificial intelligence allows session activities to be monitored in real time and alerts the therapist to participant disengagement. Objective We aim to develop and evaluate an artificial intelligence–based cofacilitator prototype to track and monitor online support group participants’ distress through real-time analysis of text-based messages posted during synchronous sessions. Methods An artificial intelligence–based cofacilitator will be developed to identify participants who are at-risk for increased emotional distress and track participant engagement and in-session group cohesion levels, providing real-time alerts for therapist to follow-up; generate postsession participant profiles that contain discussion content keywords and emotion profiles for each session; and automatically suggest tailored resources to participants according to their needs. The study is designed to be conducted in 4 phases consisting of (1) development based on a subset of data and an existing natural language processing framework, (2) performance evaluation using human scoring, (3) beta testing, and (4) user experience evaluation. Results This study received ethics approval in August 2019. Phase 1, development of an artificial intelligence–based cofacilitator, was completed in January 2020. As of December 2020, phase 2 is underway. The study is expected to be completed by September 2021. Conclusions An artificial intelligence–based cofacilitator offers a promising new mode of delivery of person-centered online support groups tailored to individual needs.
机译:背景技术癌症及其治疗可以显着影响患者和家庭的短期和长期心理福祉。情绪困扰和抑郁症术通常与治疗粘附性差,减少生活质量和更高的死亡率有关。癌症支持团体,特别是由医疗保健专业人员领导的群体,为参与者提供安全的地方,以讨论恐惧,正常化压力反应,分享团结,并了解构建恢复力的有效策略,并加强应对。但是,个人支持群体可能并不总是可以访问;地理距离是访问的障碍之一,并且损害身体状况(例如,疲劳,疼痛)是另一个。新兴证据支持在线支持群体减少访问障碍的有效性。癌症聊天加拿大提供了基于文本和专业LED的在线支持小组。参与者实时使用文本加入小组讨论。然而,治疗师领导人报告了一些挑战在没有视觉线索的情况下领先的基于文本的在线支持群体,特别是在跟踪参与者的困境方面。通过同时键入多个参与者,有时可以错过遇险的短信或红色标志的细微差别。深度学习的自然语言处理等人工智能最近的进展提供了潜在的解决方案。该技术可用于分析在线支持组文本数据,以跟踪参与者表达的情绪困扰,包括恐惧,悲伤和绝望。人工智能允许实时监测会话活动,并提醒治疗师参与者脱离。目标我们的目标是通过对同步会话期间发布的基于文本的消息的实时分析,开发和评估基于人工智能的Cofacilitator原型来跟踪和监控在线支持组参与者的痛苦。方法制定人工智能的基于人工智能的CofaciLitator,以识别有风险的参与者,以增加情绪困扰和跟踪参与者参与和会话群体凝聚力水平,为治疗师进行随访,提供实时警报;生成包含每个会话的讨论内容关键字和情感配置文件的博士参与者配置文件;并根据其需求自动建议对参与者进行量身定制的资源。该研究旨在以4个阶段进行,由(1)开发基于数据的子集和现有的自然语言处理框架,(2)使用人为评分的性能评估,(3)Beta测试和(4)用户经验评估。结果本研究于2019年8月获得道德批准。第1阶段,人工智能的CofaciLitator的开发,于1月2020年完成。截至2020年12月,阶段正在进行中。该研究预计将于9月2021年度完成。结论一个人工智能的CofaciLitator提供了一个有希望的新交付,以适应个人需求量量身定制的人为中心的在线支持群体。

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