Campion John R, O'Connor Donal B, Lahiff Conor
Department of Gastroenterology, Mater Misericordiae University Hospital, Dublin D07 AX57, Ireland.
School of Medicine, University College Dublin, Dublin D04 C7X2, Ireland.
World J Gastrointest Endosc. 2024 Mar 16;16(3):126-135. doi: 10.4253/wjge.v16.i3.126.
The number and variety of applications of artificial intelligence (AI) in gastrointestinal (GI) endoscopy is growing rapidly. New technologies based on machine learning (ML) and convolutional neural networks (CNNs) are at various stages of development and deployment to assist patients and endoscopists in preparing for endoscopic procedures, in detection, diagnosis and classification of pathology during endoscopy and in confirmation of key performance indicators. Platforms based on ML and CNNs require regulatory approval as medical devices. Interactions between humans and the technologies we use are complex and are influenced by design, behavioural and psychological elements. Due to the substantial differences between AI and prior technologies, important differences may be expected in how we interact with advice from AI technologies. Human-AI interaction (HAII) may be optimised by developing AI algorithms to minimise false positives and designing platform interfaces to maximise usability. Human factors influencing HAII may include automation bias, alarm fatigue, algorithm aversion, learning effect and deskilling. Each of these areas merits further study in the specific setting of AI applications in GI endoscopy and professional societies should engage to ensure that sufficient emphasis is placed on human-centred design in development of new AI technologies.
人工智能(AI)在胃肠(GI)内镜检查中的应用数量和种类正在迅速增长。基于机器学习(ML)和卷积神经网络(CNN)的新技术正处于不同的开发和部署阶段,以协助患者和内镜医师为内镜检查程序做准备、在内镜检查期间检测、诊断和分类病理状况以及确认关键性能指标。基于ML和CNN的平台作为医疗设备需要监管批准。人类与我们所使用技术之间的相互作用是复杂的,并且受到设计、行为和心理因素的影响。由于AI与先前技术之间存在重大差异,我们与AI技术建议的交互方式可能会出现重要差异。通过开发AI算法以尽量减少假阳性并设计平台界面以最大限度地提高可用性,可以优化人机交互(HAII)。影响HAII的人为因素可能包括自动化偏差、警报疲劳、算法厌恶、学习效应和技能退化。在GI内镜检查中AI应用的特定背景下,这些领域中的每一个都值得进一步研究,专业协会应参与其中,以确保在开发新的AI技术时充分重视以人为本的设计。