Towards quality management of artificial intelligence systems for medical applications

IF 2.4 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Zeitschrift fur Medizinische Physik Pub Date : 2024-05-01 DOI:10.1016/j.zemedi.2024.02.001
Lorenzo Mercolli, Axel Rominger, Kuangyu Shi
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引用次数: 0

Abstract

The use of artificial intelligence systems in clinical routine is still hampered by the necessity of a medical device certification and/or by the difficulty of implementing these systems in a clinic’s quality management system. In this context, the key questions for a user are how to ensure robust model predictions and how to appraise the quality of a model’s results on a regular basis.

In this paper we discuss some conceptual foundation for a clinical implementation of a machine learning system and argue that both vendors and users should take certain responsibilities, as is already common practice for high-risk medical equipment.

We propose the methodology from AAPM Task Group 100 report No. 283 as a conceptual framework for developing risk-driven a quality management program for a clinical process that encompasses a machine learning system. This is illustrated with an example of a clinical workflow. Our analysis shows how the risk evaluation in this framework can accommodate artificial intelligence based systems independently of their robustness evaluation or the user’s in–house expertise. In particular, we highlight how the degree of interpretability of a machine learning system can be systematically accounted for within the risk evaluation and in the development of a quality management system.

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实现医疗应用人工智能系统的质量管理。
人工智能系统在临床常规工作中的应用仍然受到医疗设备认证和/或在诊所质量管理系统中实施这些系统的困难的阻碍。在这种情况下,用户面临的关键问题是如何确保模型预测的准确性,以及如何定期评估模型结果的质量。在本文中,我们讨论了机器学习系统临床实施的一些概念基础,并认为供应商和用户都应承担一定的责任,这已是高风险医疗设备的普遍做法。我们提出了 AAPM 第 100 工作组第 283 号报告中的方法,作为为包含机器学习系统的临床流程制定风险驱动型质量管理计划的概念框架。我们以临床工作流程为例进行说明。我们的分析表明了该框架中的风险评估如何能够独立于人工智能系统的稳健性评估或用户的内部专业知识而适应人工智能系统。我们特别强调了如何在风险评估和质量管理系统开发过程中系统地考虑机器学习系统的可解释性程度。
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来源期刊
CiteScore
3.70
自引率
10.00%
发文量
69
审稿时长
65 days
期刊介绍: Zeitschrift fur Medizinische Physik (Journal of Medical Physics) is an official organ of the German and Austrian Society of Medical Physic and the Swiss Society of Radiobiology and Medical Physics.The Journal is a platform for basic research and practical applications of physical procedures in medical diagnostics and therapy. The articles are reviewed following international standards of peer reviewing. Focuses of the articles are: -Biophysical methods in radiation therapy and nuclear medicine -Dosimetry and radiation protection -Radiological diagnostics and quality assurance -Modern imaging techniques, such as computed tomography, magnetic resonance imaging, positron emission tomography -Ultrasonography diagnostics, application of laser and UV rays -Electronic processing of biosignals -Artificial intelligence and machine learning in medical physics In the Journal, the latest scientific insights find their expression in the form of original articles, reviews, technical communications, and information for the clinical practice.
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Editorial Board Contents Development and clinical implementation of a digital system for risk assessments for radiation therapy End-to-end testing for stereotactic radiotherapy including the development of a Multi-Modality phantom Note on uncertainty in Monte Carlo dose calculations and its relation to microdosimetry
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