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人工智能在医学影像转化研究路线图:来自 2018 年美国国立卫生研究院/北美放射学会/美国放射学院/美国学院的研讨会。

A Road Map for Translational Research on Artificial Intelligence in Medical Imaging: From the 2018 National Institutes of Health/RSNA/ACR/The Academy Workshop.

机构信息

Department of Radiology, Grandview Medical Center, Birmingham, Alabama.

Radiology Department, Brigham and Women's Hospital, Boston, Massachusetts; Radiology, Harvard Medical School, Boston, Massachusetts.

出版信息

J Am Coll Radiol. 2019 Sep;16(9 Pt A):1179-1189. doi: 10.1016/j.jacr.2019.04.014. Epub 2019 May 28.

Abstract

Advances in machine learning in medical imaging are occurring at a rapid pace in research laboratories both at academic institutions and in industry. Important artificial intelligence (AI) tools for diagnostic imaging include algorithms for disease detection and classification, image optimization, radiation reduction, and workflow enhancement. Although advances in foundational research are occurring rapidly, translation to routine clinical practice has been slower. In August 2018, the National Institutes of Health assembled multiple relevant stakeholders at a public meeting to discuss the current state of knowledge, infrastructure gaps, and challenges to wider implementation. The conclusions of that meeting are summarized in two publications that identify and prioritize initiatives to accelerate foundational and translational research in AI for medical imaging. This publication summarizes key priorities for translational research developed at the workshop including: (1) creating structured AI use cases, defining and highlighting clinical challenges potentially solvable by AI; (2) establishing methods to encourage data sharing for training and testing AI algorithms to promote generalizability to widespread clinical practice and mitigate unintended bias; (3) establishing tools for validation and performance monitoring of AI algorithms to facilitate regulatory approval; and (4) developing standards and common data elements for seamless integration of AI tools into existing clinical workflows. An important goal of the resulting road map is to grow an ecosystem, facilitated by professional societies, industry, and government agencies, that will allow robust collaborations between practicing clinicians and AI researchers to advance foundational and translational research relevant to medical imaging.

摘要

在学术机构和工业界的研究实验室中,医学影像机器学习的发展步伐正在迅速加快。用于诊断成像的重要人工智能 (AI) 工具包括用于疾病检测和分类、图像优化、减少辐射和增强工作流程的算法。尽管基础研究取得了迅速进展,但向常规临床实践的转化速度较慢。2018 年 8 月,美国国立卫生研究院召集了多个相关利益攸关方在一次公开会议上讨论当前的知识状况、基础设施差距以及更广泛实施的挑战。会议的结论总结在两份出版物中,确定并优先考虑了加速人工智能在医学影像领域基础和转化研究的举措。本文总结了研讨会制定的转化研究的主要重点,包括:(1) 创建结构化的 AI 用例,定义和突出 AI 可能解决的临床挑战;(2) 建立方法鼓励用于训练和测试 AI 算法的数据共享,以促进向广泛的临床实践推广和减轻意外偏见;(3) 建立用于验证和监测 AI 算法性能的工具,以促进监管批准;以及 (4) 制定标准和通用数据元素,以便将 AI 工具无缝集成到现有的临床工作流程中。由此产生的路线图的一个重要目标是通过专业协会、行业和政府机构促进生态系统的发展,使临床医生和 AI 研究人员之间能够进行强大的合作,从而推进与医学影像相关的基础和转化研究。

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