Chatbot for Social Need Screening and Resource Sharing With Vulnerable Families: Iterative Design and Evaluation Study.

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES
JMIR Human Factors Pub Date : 2024-07-19 DOI:10.2196/57114
Emre Sezgin, A Baki Kocaballi, Millie Dolce, Micah Skeens, Lisa Militello, Yungui Huang, Jack Stevens, Alex R Kemper
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引用次数: 0

Abstract

Background: Health outcomes are significantly influenced by unmet social needs. Although screening for social needs has become common in health care settings, there is often poor linkage to resources after needs are identified. The structural barriers (eg, staffing, time, and space) to helping address social needs could be overcome by a technology-based solution.

Objective: This study aims to present the design and evaluation of a chatbot, DAPHNE (Dialog-Based Assistant Platform for Healthcare and Needs Ecosystem), which screens for social needs and links patients and families to resources.

Methods: This research used a three-stage study approach: (1) an end-user survey to understand unmet needs and perception toward chatbots, (2) iterative design with interdisciplinary stakeholder groups, and (3) a feasibility and usability assessment. In study 1, a web-based survey was conducted with low-income US resident households (n=201). Following that, in study 2, web-based sessions were held with an interdisciplinary group of stakeholders (n=10) using thematic and content analysis to inform the chatbot's design and development. Finally, in study 3, the assessment on feasibility and usability was completed via a mix of a web-based survey and focus group interviews following scenario-based usability testing with community health workers (family advocates; n=4) and social workers (n=9). We reported descriptive statistics and chi-square test results for the household survey. Content analysis and thematic analysis were used to analyze qualitative data. Usability score was descriptively reported.

Results: Among the survey participants, employed and younger individuals reported a higher likelihood of using a chatbot to address social needs, in contrast to the oldest age group. Regarding designing the chatbot, the stakeholders emphasized the importance of provider-technology collaboration, inclusive conversational design, and user education. The participants found that the chatbot's capabilities met expectations and that the chatbot was easy to use (System Usability Scale score=72/100). However, there were common concerns about the accuracy of suggested resources, electronic health record integration, and trust with a chatbot.

Conclusions: Chatbots can provide personalized feedback for families to identify and meet social needs. Our study highlights the importance of user-centered iterative design and development of chatbots for social needs. Future research should examine the efficacy, cost-effectiveness, and scalability of chatbot interventions to address social needs.

用于弱势家庭社会需求筛查和资源共享的聊天机器人:迭代设计与评估研究。
背景未满足的社会需求会严重影响健康结果。尽管对社会需求的筛查在医疗机构中已十分普遍,但在确定需求后,资源链接往往不畅。帮助满足社会需求的结构性障碍(如人员、时间和空间)可以通过基于技术的解决方案来克服:本研究旨在介绍聊天机器人 DAPHNE(基于对话的医疗保健和需求生态系统助理平台)的设计和评估,该平台可筛查社会需求并将患者和家属与资源联系起来:本研究采用了三阶段研究方法:(1)最终用户调查,以了解未满足的需求和对聊天机器人的看法;(2)与跨学科利益相关者小组进行迭代设计;(3)可行性和可用性评估。在研究 1 中,对美国低收入居民家庭(n=201)进行了网络调查。随后,在研究 2 中,与跨学科利益相关者小组(人数=10)举行了网络会议,使用主题和内容分析为聊天机器人的设计和开发提供信息。最后,在研究 3 中,在对社区卫生工作者(家庭倡导者;人数=4)和社会工作者(人数=9)进行情景可用性测试后,通过网络调查和焦点小组访谈相结合的方式完成了可行性和可用性评估。我们报告了家庭调查的描述性统计和卡方检验结果。内容分析和主题分析用于分析定性数据。对可用性评分进行了描述性报告:在调查参与者中,与年龄最大的群体相比,就业者和年轻人使用聊天机器人满足社交需求的可能性更高。关于聊天机器人的设计,利益相关者强调了提供商与技术合作、包容性对话设计和用户教育的重要性。参与者认为聊天机器人的功能符合预期,而且易于使用(系统可用性量表得分=72/100)。然而,人们普遍担心建议资源的准确性、电子健康记录的整合以及对聊天机器人的信任:聊天机器人可为家庭提供个性化反馈,以识别和满足社会需求。我们的研究强调了以用户为中心迭代设计和开发满足社会需求的聊天机器人的重要性。未来的研究应考察聊天机器人干预的有效性、成本效益和可扩展性,以满足社会需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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