Singh Tavleen, Truong Michael, Roberts Kirk, Myneni Sahiti
McWilliams School of Biomedical Informatics, The University of Texas Health Science Center, Houston, Texas, USA.
Digit Health. 2024 Feb 13;10:20552076241228430. doi: 10.1177/20552076241228430. eCollection 2024 Jan-Dec.
Risky health behaviors place an enormous toll on public health systems. While relapse prevention support is integrated with most behavior modification programs, the results are suboptimal. Recent advances in artificial intelligence (AI) applications provide us with unique opportunities to develop just-in-time adaptive behavior change solutions.
In this study, we present an innovative framework, grounded in behavioral theory, and enhanced with social media sequencing and communications scenario builder to architect a conversational agent (CA) specialized in the prevention of relapses in the context of tobacco cessation. We modeled peer interaction data (n = 1000) using the taxonomy of behavior change techniques (BCTs) and speech act (SA) theory to uncover the socio-behavioral and linguistic context embedded within the online social discourse. Further, we uncovered the sequential patterns of BCTs and SAs from social conversations (n = 339,067). We utilized grounded theory-based techniques for extracting the scenarios that best describe individuals' needs and mapped them into the architecture of the virtual CA.
The frequently occurring sequential patterns for BCTs were and ; for SAs were and . Five cravings-related scenarios describing users' needs as they deal with nicotine cravings were identified along with the kinds of behavior change constructs that are being elicited within those scenarios.
AI-led virtual CAs focusing on behavior change need to employ data-driven and theory-linked approaches to address issues related to engagement, sustainability, and acceptance. The sequential patterns of theory and intent manifestations need to be considered when developing effective behavior change CAs.
危险的健康行为给公共卫生系统带来了巨大负担。虽然复发预防支持已融入大多数行为改变计划,但效果并不理想。人工智能(AI)应用的最新进展为我们提供了独特的机会,来开发即时自适应行为改变解决方案。
在本研究中,我们提出了一个创新框架,该框架以行为理论为基础,并通过社交媒体排序和通信场景构建器进行强化,以构建一个专门用于预防戒烟过程中复发的对话代理(CA)。我们使用行为改变技术(BCT)分类法和言语行为(SA)理论对同伴互动数据(n = 1000)进行建模,以揭示在线社交话语中所蕴含的社会行为和语言背景。此外,我们还从社交对话(n = 339,067)中发现了BCT和SA的顺序模式。我们利用基于扎根理论的技术来提取最能描述个人需求的场景,并将其映射到虚拟CA的架构中。
BCT常见的顺序模式是 和 ;SA的常见顺序模式是 和 。确定了五个与渴望相关的场景,描述了用户在应对尼古丁渴望时的需求,以及在这些场景中引发的行为改变结构类型。
专注于行为改变的人工智能主导的虚拟CA需要采用数据驱动和理论关联的方法来解决与参与度、可持续性和接受度相关的问题。在开发有效的行为改变CA时,需要考虑理论和意图表现的顺序模式。