戒烟对话聊天机器人:用户中心设计十一步开发流程报告》。

IF 5.4 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Jonathan B Bricker, Brianna Sullivan, Kristin Mull, Margarita Santiago-Torres, Juan M Lavista Ferres
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引用次数: 0

摘要

背景对话聊天机器人是一种新兴的戒烟数字干预方法。目前还没有关于戒烟聊天机器人整个开发过程的研究报告:目的:描述一款名为 "戒烟机器人"(QuitBot)的新颖、全面的戒烟对话式聊天机器人以用户为中心的设计开发过程:开发 QuitBot 的四年形成性研究经历了十一个步骤:(1)确定概念模型;(2)对现有干预措施进行内容分析(63 小时的干预记录);(3)评估用户需求;(4)开发聊天角色("个性");(5)内容和角色原型;(6)开发全部功能、(7) 编写戒烟机器人程序,(8) 进行日记研究,(9) 进行试点随机试验,(10) 审查试验结果,(11) 根据试点试验结果中的用户反馈添加自由问答(QnA)功能。添加 QnA 功能的过程本身包括三个步骤:(a) 生成 QnA 对,(b) 微调 QnA 对上的大型语言模型 (LLM),(c) 评估 LLM 模型输出:一项为期 42 天的戒烟计划由 2 到 3 分钟的对话组成,对话主题包括戒烟动机、设定戒烟日期、选择 FDA 批准的戒烟药物、应对诱因以及从失误/复吸中恢复。在一项试点随机试验中,三个月的结果数据保留率为96%,与美国国家癌症研究所的SmokefreeTXT(SFT)短信项目相比,QuitBot的用户参与度很高,戒烟率也很可观--尤其是那些观看了全部42天项目内容的用户:在三个月的随访中,QuitBot的30天完全戒烟率(PPA)为63%(39/62),而SFT为38%(45/117)(OR = 2.58; 95% CI: 1.34, 4.99; P =.005)。然而,Facebook Messenger(FM)间歇性地阻止了参与者访问 QuitBot,因此我们将 FM 转换为独立的智能手机应用程序作为交流渠道。参与者对戒烟机器人无法回答他们的开放式问题感到沮丧,这促使我们开发了一项核心对话功能,使用户能够提出有关戒烟的开放式问题,并让戒烟机器人做出准确、专业的回答。为了支持这一功能,我们开发了一个包含 11,000 对戒烟相关主题的 QnA 库。模型测试结果表明,微软基于 Azure 的 QnA 制造商能够有效处理与我们的 11,000 对 QnA 库相匹配的问题。经过微调、符合上下文的 GPT3.5 可应对不在我们的 QnA 对库中的问题:开发过程产生了第一个基于 LLM 的戒烟程序,该程序以对话聊天机器人的形式提供。迭代测试带来了重大改进,包括交付渠道的改进。一个关键的新增功能是加入了由 LLM 支持的核心对话功能,允许用户提出开放式问题:临床试验:ClinicalTrials.gov Identifier,NCT03585231。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conversational Chatbot for Cigarette Smoking Cessation: Results From the 11-Step User-Centered Design Development Process and Randomized Controlled Trial.

Background: Conversational chatbots are an emerging digital intervention for smoking cessation. No studies have reported on the entire development process of a cessation chatbot.

Objective: We aim to report results of the user-centered design development process and randomized controlled trial for a novel and comprehensive quit smoking conversational chatbot called QuitBot.

Methods: The 4 years of formative research for developing QuitBot followed an 11-step process: (1) specifying a conceptual model; (2) conducting content analysis of existing interventions (63 hours of intervention transcripts); (3) assessing user needs; (4) developing the chat's persona ("personality"); (5) prototyping content and persona; (6) developing full functionality; (7) programming the QuitBot; (8) conducting a diary study; (9) conducting a pilot randomized controlled trial (RCT); (10) reviewing results of the RCT; and (11) adding a free-form question and answer (QnA) function, based on user feedback from pilot RCT results. The process of adding a QnA function itself involved a three-step process: (1) generating QnA pairs, (2) fine-tuning large language models (LLMs) on QnA pairs, and (3) evaluating the LLM outputs.

Results: We developed a quit smoking program spanning 42 days of 2- to 3-minute conversations covering topics ranging from motivations to quit, setting a quit date, choosing Food and Drug Administration-approved cessation medications, coping with triggers, and recovering from lapses and relapses. In a pilot RCT with 96% three-month outcome data retention, QuitBot demonstrated high user engagement and promising cessation rates compared to the National Cancer Institute's SmokefreeTXT text messaging program, particularly among those who viewed all 42 days of program content: 30-day, complete-case, point prevalence abstinence rates at 3-month follow-up were 63% (39/62) for QuitBot versus 38.5% (45/117) for SmokefreeTXT (odds ratio 2.58, 95% CI 1.34-4.99; P=.005). However, Facebook Messenger intermittently blocked participants' access to QuitBot, so we transitioned from Facebook Messenger to a stand-alone smartphone app as the communication channel. Participants' frustration with QuitBot's inability to answer their open-ended questions led to us develop a core conversational feature, enabling users to ask open-ended questions about quitting cigarette smoking and for the QuitBot to respond with accurate and professional answers. To support this functionality, we developed a library of 11,000 QnA pairs on topics associated with quitting cigarette smoking. Model testing results showed that Microsoft's Azure-based QnA maker effectively handled questions that matched our library of 11,000 QnA pairs. A fine-tuned, contextualized GPT-3.5 (OpenAI) responds to questions that are not within our library of QnA pairs.

Conclusions: The development process yielded the first LLM-based quit smoking program delivered as a conversational chatbot. Iterative testing led to significant enhancements, including improvements to the delivery channel. A pivotal addition was the inclusion of a core LLM-supported conversational feature allowing users to ask open-ended questions.

Trial registration: ClinicalTrials.gov NCT03585231; https://clinicaltrials.gov/study/NCT03585231.

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来源期刊
JMIR mHealth and uHealth
JMIR mHealth and uHealth Medicine-Health Informatics
CiteScore
12.60
自引率
4.00%
发文量
159
审稿时长
10 weeks
期刊介绍: JMIR mHealth and uHealth (JMU, ISSN 2291-5222) is a spin-off journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR mHealth and uHealth is indexed in PubMed, PubMed Central, and Science Citation Index Expanded (SCIE), and in June 2017 received a stunning inaugural Impact Factor of 4.636. The journal focusses on health and biomedical applications in mobile and tablet computing, pervasive and ubiquitous computing, wearable computing and domotics. JMIR mHealth and uHealth publishes since 2013 and was the first mhealth journal in Pubmed. It publishes even faster and has a broader scope with including papers which are more technical or more formative/developmental than what would be published in the Journal of Medical Internet Research.
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