Zhang Song, Han Benhao, Fan Mengnan
School of Business, Qingdao University, Qingdao City, Shandong Province, China.
Digit Health. 2025 Jun 12;11:20552076251350001. doi: 10.1177/20552076251350001. eCollection 2025 Jan-Dec.
This study establishes a research model based on the theories of affordance and the theory of psychological empowerment to understand users' intentions in using artificial intelligence-based medical consultations (AIMCs), offering implications for their effective design.
A two-stage mixed-methods research design was employed. The first stage involved qualitative interviews to conceptualize the main affordances of AIMCs and usage intentions, and the second phase comprised a quantitative study with 425 valid samples analyzed via partial least squares structural equation modeling.
The research results identified four AIMC affordances (i.e., human-AI interaction, human-like diagnosis, personalized treatment, and health information security) and two usage intentions (i.e., assist health decisions, and relieve health anxiety). The results of the quantitative analysis indicate that the four affordances significantly enhance perceived cognitive empowerment, whereas three affordances (excluding health information security) positively influence perceived emotional empowerment. Both cognitive and emotional empowerments were found to significantly affect users' AIMCs usage intentions. Additionally, we found that different disease types (acute and chronic) play an important moderating role in the relationship between perceived cognitive empowerment and relieve health anxiety.
To increase psychological motivation and user adoption, AIMCs should be optimized with intuitive interactions, human-like diagnoses, and personalized care, while features should be tailored to the needs associated with acute and chronic conditions. On the basis of affordance and psychological empowerment theories, this study provides actionable insights for the development, design, and implementation of AIMCs.
本研究基于可供性理论和心理授权理论建立一个研究模型,以了解用户使用基于人工智能的医疗咨询(AIMC)的意图,为其有效设计提供启示。
采用两阶段混合方法研究设计。第一阶段包括定性访谈,以概念化AIMC的主要可供性和使用意图,第二阶段包括一项定量研究,对425个有效样本通过偏最小二乘结构方程模型进行分析。
研究结果确定了AIMC的四种可供性(即人机交互、类人诊断、个性化治疗和健康信息安全)和两种使用意图(即协助健康决策和缓解健康焦虑)。定量分析结果表明,这四种可供性显著增强了感知认知授权,而三种可供性(不包括健康信息安全)对感知情感授权有积极影响。发现认知授权和情感授权均显著影响用户的AIMC使用意图。此外,我们发现不同疾病类型(急性和慢性)在感知认知授权与缓解健康焦虑之间的关系中起重要调节作用。
为了提高心理动机和用户采用率,AIMC应通过直观交互、类人诊断和个性化护理进行优化,同时功能应根据急性和慢性疾病相关需求进行定制。基于可供性和心理授权理论,本研究为AIMC的开发、设计和实施提供了可操作的见解。