Office of Research Management and Education Administration, Sun Yat-sen University Cancer Center, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Guangzhou, China.
Department of Anthropology, School of Sociology and Anthropology, Sun Yat-sen University, Guangzhou, China.
J Med Internet Res. 2021 Sep 30;23(9):e27122. doi: 10.2196/27122.
An artificial intelligence (AI)-assisted contouring system benefits radiation oncologists by saving time and improving treatment accuracy. Yet, there is much hope and fear surrounding such technologies, and this fear can manifest as resistance from health care professionals, which can lead to the failure of AI projects.
The objective of this study was to develop and test a model for investigating the factors that drive radiation oncologists' acceptance of AI contouring technology in a Chinese context.
A model of AI-assisted contouring technology acceptance was developed based on the Unified Theory of Acceptance and Use of Technology (UTAUT) model by adding the variables of perceived risk and resistance that were proposed in this study. The model included 8 constructs with 29 questionnaire items. A total of 307 respondents completed the questionnaires. Structural equation modeling was conducted to evaluate the model's path effects, significance, and fitness.
The overall fitness indices for the model were evaluated and showed that the model was a good fit to the data. Behavioral intention was significantly affected by performance expectancy (β=.155; P=.01), social influence (β=.365; P<.001), and facilitating conditions (β=.459; P<.001). Effort expectancy (β=.055; P=.45), perceived risk (β=-.048; P=.35), and resistance bias (β=-.020; P=.63) did not significantly affect behavioral intention.
The physicians' overall perceptions of an AI-assisted technology for radiation contouring were high. Technology resistance among Chinese radiation oncologists was low and not related to behavioral intention. Not all of the factors in the Venkatesh UTAUT model applied to AI technology adoption among physicians in a Chinese context.
人工智能(AI)辅助勾画系统通过节省时间和提高治疗准确性,使放射肿瘤学家受益。然而,人们对这类技术充满了希望和恐惧,这种恐惧可能表现为医疗保健专业人员的抵制,从而导致 AI 项目的失败。
本研究旨在开发和测试一种模型,以调查在中国背景下驱动放射肿瘤学家接受 AI 勾画技术的因素。
基于统一技术接受和使用理论(UTAUT)模型,通过添加本研究提出的感知风险和抵制变量,开发了 AI 辅助勾画技术接受模型。该模型包括 8 个构念和 29 个问卷项目。共有 307 名受访者完成了问卷。采用结构方程模型评估模型的路径效应、显著性和拟合度。
评估了模型的整体拟合度指标,表明模型与数据拟合良好。行为意向显著受绩效期望(β=.155;P=.01)、社会影响(β=.365;P<.001)和便利条件(β=.459;P<.001)的影响。努力期望(β=.055;P=.45)、感知风险(β=-.048;P=.35)和抵制偏见(β=-.020;P=.63)对行为意向没有显著影响。
中国放射肿瘤学家对 AI 辅助放疗勾画技术的整体看法较高。中国放射肿瘤学家的技术抵制情绪较低,与行为意向无关。Venkatesh UTAUT 模型中的并非所有因素都适用于中国背景下医生对 AI 技术的采用。