设计持续人工智能支持的视觉标记

Niels van Berkel, O. Ahmad, D. Stoyanov, L. Lovat, A. Blandford
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引用次数: 15

摘要

结肠镜检查是使用内窥镜对大肠进行目视检查,通过检测和切除癌前息肉,可以预防癌症。关于息肉检测的文献显示,临床医生的漏诊率差异很大,平均在22%-27%之间。虽然最近的工作考虑了将人工智能支持系统用于息肉检测,但如何将这些系统可视化并集成到临床实践中是一个悬而未决的问题。在这项工作中,我们探索了结肠镜检查人工智能支持系统中使用的视觉标记的设计。在我们团队胃肠病学家的支持下,我们设计了七个独特的视觉标记,并将其呈现在真实的患者视频片段中。通过一项针对相关临床工作人员(N=36)的在线调查,我们评估了这些设计,并对临床工作人员设想人工智能融入日常工作环境的方式获得了初步的见解和理解。我们的研究结果为未来在连续、适应性场景中部署人工智能支持系统提供了具体建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing Visual Markers for Continuous Artificial Intelligence Support
Colonoscopy, the visual inspection of the large bowel using an endoscope, offers protection against colorectal cancer by allowing for the detection and removal of pre-cancerous polyps. The literature on polyp detection shows widely varying miss rates among clinicians, with averages ranging around 22%--27%. While recent work has considered the use of AI support systems for polyp detection, how to visualise and integrate these systems into clinical practice is an open question. In this work, we explore the design of visual markers as used in an AI support system for colonoscopy. Supported by the gastroenterologists in our team, we designed seven unique visual markers and rendered them on real-life patient video footage. Through an online survey targeting relevant clinical staff (N = 36), we evaluated these designs and obtained initial insights and understanding into the way in which clinical staff envision AI to integrate in their daily work-environment. Our results provide concrete recommendations for the future deployment of AI support systems in continuous, adaptive scenarios.
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CiteScore
10.30
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