Jakub Mlynář, Adrien Depeursinge, John O. Prior, Roger Schaer, Alexandre Martroye de Joly, Florian Evéquoz
{"title":"Making sense of radiomics: insights on human–AI collaboration in medical interaction from an observational user study","authors":"Jakub Mlynář, Adrien Depeursinge, John O. Prior, Roger Schaer, Alexandre Martroye de Joly, Florian Evéquoz","doi":"10.3389/fcomm.2023.1234987","DOIUrl":null,"url":null,"abstract":"Technologies based on “artificial intelligence” (AI) are transforming every part of our society, including healthcare and medical institutions. An example of this trend is the novel field in oncology and radiology called radiomics, which is the extracting and mining of large-scale quantitative features from medical imaging by machine-learning (ML) algorithms. This paper explores situated work with a radiomics software platform, QuantImage (v2), and interaction around it, in educationally framed hands-on trial sessions where pairs of novice users (physicians and medical radiology technicians) work on a radiomics task consisting of developing a predictive ML model with a co-present tutor. Informed by ethnomethodology and conversation analysis (EM/CA), the results show that learning about radiomics more generally and learning how to use this platform specifically are deeply intertwined. Common-sense knowledge (e.g., about meanings of colors) can interfere with the visual representation standards established in the professional domain. Participants' skills in using the platform and knowledge of radiomics are routinely displayed in the assessment of performance measures of the resulting ML models, in the monitoring of the platform's pace of operation for possible problems, and in the ascribing of independent actions (e.g., related to algorithms) to the platform. The findings are relevant to current discussions about the explainability of AI in medicine as well as issues of machinic agency.","PeriodicalId":31739,"journal":{"name":"Frontiers in Communication","volume":null,"pages":null},"PeriodicalIF":1.5000,"publicationDate":"2024-02-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Frontiers in Communication","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3389/fcomm.2023.1234987","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"COMMUNICATION","Score":null,"Total":0}
引用次数: 1
Abstract
Technologies based on “artificial intelligence” (AI) are transforming every part of our society, including healthcare and medical institutions. An example of this trend is the novel field in oncology and radiology called radiomics, which is the extracting and mining of large-scale quantitative features from medical imaging by machine-learning (ML) algorithms. This paper explores situated work with a radiomics software platform, QuantImage (v2), and interaction around it, in educationally framed hands-on trial sessions where pairs of novice users (physicians and medical radiology technicians) work on a radiomics task consisting of developing a predictive ML model with a co-present tutor. Informed by ethnomethodology and conversation analysis (EM/CA), the results show that learning about radiomics more generally and learning how to use this platform specifically are deeply intertwined. Common-sense knowledge (e.g., about meanings of colors) can interfere with the visual representation standards established in the professional domain. Participants' skills in using the platform and knowledge of radiomics are routinely displayed in the assessment of performance measures of the resulting ML models, in the monitoring of the platform's pace of operation for possible problems, and in the ascribing of independent actions (e.g., related to algorithms) to the platform. The findings are relevant to current discussions about the explainability of AI in medicine as well as issues of machinic agency.
基于 "人工智能"(AI)的技术正在改变我们社会的方方面面,包括医疗保健和医疗机构。这一趋势的一个例子是肿瘤学和放射学中被称为放射组学的新领域,即通过机器学习(ML)算法从医学影像中提取和挖掘大规模定量特征。本文探讨了放射组学软件平台 QuantImage (v2) 的情景式工作以及与之相关的互动,在教育框架下的实践试验环节中,一对新手用户(医生和放射医学技术人员)与共同在场的导师一起完成放射组学任务,包括开发一个预测性 ML 模型。在人种方法学和会话分析(EM/CA)的启发下,研究结果表明,学习放射组学的一般知识和学习如何具体使用该平台是紧密相连的。常识性知识(如颜色的含义)可能会干扰专业领域所建立的可视化表示标准。参与者使用该平台的技能和放射组学知识通常体现在对所生成的 ML 模型的性能指标进行评估、监测平台的运行速度以发现可能存在的问题,以及将独立的操作(如与算法相关的操作)赋予平台。这些发现与当前关于人工智能在医学中的可解释性以及机器代理问题的讨论相关。