Using AI chatbots (e.g., CHATGPT) in seeking health-related information online: The case of a common ailment

Pouyan Esmaeilzadeh , Mahed Maddah , Tala Mirzaei
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Abstract

In the age of AI, healthcare practices and patient-provider communications can be significantly transformed via AI-based tools and systems that distribute Intelligence on the Internet. This study employs a quantitative approach to explore the public value perceptions of using conversational AI (e.g., CHATGPT) to find health-related information online under non-emergency conditions related to a common ailment. Using structural equation modeling on survey data collected from 231 respondents in the US, our study examines the hypotheses linking hedonic and utilitarian values, user satisfaction, willingness to reuse conversational AI, and intentions to take recommended actions. The results show that both hedonic and utilitarian values strongly influence users' satisfaction with conversational AI. The utilitarian values of ease of use, accuracy, relevance, completeness, timeliness, clarity, variety, timesaving, cost-effectiveness, and privacy concern, and the hedonic values of emotional impact and user engagement are significant predictors of satisfaction with conversational AI. Moreover, satisfaction directly influences users' continued intention to use and their willingness to adopt generated results and medical advice. Also, the mediating effect of satisfaction is crucial as it helps to understand the underlying mechanisms of the relationship between value perceptions and desired use behavior. The study emphasizes considering not only the instrumental benefits but also the enjoyment derived from interacting with conversational AI for healthcare purposes. We believe that this study offers valuable theoretical and practical implications for stakeholders interested in advancing the application of AI chatbots for health information provision. Our study provides insights into AI research by explaining the multidimensional nature of public value grounded in functional and emotional gratification. The practical contributions of this study can be useful for developers and designers of conversational AI, as they can focus on improving the design features of AI chatbots to meet users’ expectations, preferences, and satisfaction and promote their adoption and continued use.
使用人工智能聊天机器人(例如CHATGPT)在线查找与健康相关的信息:常见疾病的情况
在人工智能时代,通过基于人工智能的工具和系统,在互联网上分发智能,可以显著改变医疗保健实践和患者与提供者的通信。本研究采用定量方法,探讨在与常见疾病相关的非紧急情况下,使用会话人工智能(例如CHATGPT)在线查找与健康相关信息的公众价值观。我们的研究使用结构方程模型对从美国231名受访者收集的调查数据进行建模,检验了享乐主义和功利主义价值观、用户满意度、重复使用会话人工智能的意愿以及采取建议行动的意图之间的假设。结果表明,享乐主义和功利主义价值观都强烈影响用户对会话式人工智能的满意度。易用性、准确性、相关性、完整性、及时性、清晰度、多样性、节省时间、成本效益和隐私关注等实用价值,以及情感影响和用户参与的享乐价值,是会话式人工智能满意度的重要预测因素。此外,满意度直接影响用户持续使用的意愿,以及他们是否愿意接受生成的结果和医疗建议。此外,满意度的中介作用是至关重要的,因为它有助于理解价值感知和期望使用行为之间关系的潜在机制。该研究强调,不仅要考虑工具上的好处,还要考虑与对话式人工智能互动所带来的享受。我们认为,这项研究为有兴趣推进人工智能聊天机器人在健康信息提供方面的应用的利益相关者提供了有价值的理论和实践意义。我们的研究通过解释基于功能和情感满足的公共价值的多维性,为人工智能研究提供了见解。本研究的实际贡献对会话AI的开发人员和设计人员很有用,因为他们可以专注于改进AI聊天机器人的设计特征,以满足用户的期望、偏好和满意度,并促进它们的采用和持续使用。
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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