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一项针对 1041 名放射科医生和放射科住院医师的人工智能在放射学中的国际调查 第 2 部分:期望、实施障碍和教育。

An international survey on AI in radiology in 1041 radiologists and radiology residents part 2: expectations, hurdles to implementation, and education.

机构信息

Department of Radiology, University Medical Center Utrecht, Utrecht, The Netherlands.

Department of Radiology, Elisabeth-TweeSteden Ziekenhuis, Tilburg, The Netherlands.

出版信息

Eur Radiol. 2021 Nov;31(11):8797-8806. doi: 10.1007/s00330-021-07782-4. Epub 2021 May 11.

DOI:10.1007/s00330-021-07782-4
PMID:33974148
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8111651/
Abstract

OBJECTIVES

Currently, hurdles to implementation of artificial intelligence (AI) in radiology are a much-debated topic but have not been investigated in the community at large. Also, controversy exists if and to what extent AI should be incorporated into radiology residency programs.

METHODS

Between April and July 2019, an international survey took place on AI regarding its impact on the profession and training. The survey was accessible for radiologists and residents and distributed through several radiological societies. Relationships of independent variables with opinions, hurdles, and education were assessed using multivariable logistic regression.

RESULTS

The survey was completed by 1041 respondents from 54 countries. A majority (n = 855, 82%) expects that AI will cause a change to the radiology field within 10 years. Most frequently, expected roles of AI in clinical practice were second reader (n = 829, 78%) and work-flow optimization (n = 802, 77%). Ethical and legal issues (n = 630, 62%) and lack of knowledge (n = 584, 57%) were mentioned most often as hurdles to implementation. Expert respondents added lack of labelled images and generalizability issues. A majority (n = 819, 79%) indicated that AI should be incorporated in residency programs, while less support for imaging informatics and AI as a subspecialty was found (n = 241, 23%).

CONCLUSIONS

Broad community demand exists for incorporation of AI into residency programs. Based on the results of the current study, integration of AI education seems advisable for radiology residents, including issues related to data management, ethics, and legislation.

KEY POINTS

• There is broad demand from the radiological community to incorporate AI into residency programs, but there is less support to recognize imaging informatics as a radiological subspecialty. • Ethical and legal issues and lack of knowledge are recognized as major bottlenecks for AI implementation by the radiological community, while the shortage in labeled data and IT-infrastructure issues are less often recognized as hurdles. • Integrating AI education in radiology curricula including technical aspects of data management, risk of bias, and ethical and legal issues may aid successful integration of AI into diagnostic radiology.

摘要

目的

目前,人工智能(AI)在放射学中的应用障碍是一个备受争议的话题,但尚未在整个放射学界进行调查。此外,如果以及在何种程度上将 AI 纳入放射学住院医师培训计划也存在争议。

方法

2019 年 4 月至 7 月,针对 AI 对专业和培训的影响进行了一项国际性调查。该调查可供放射科医生和住院医师使用,并通过多个放射学会进行分发。使用多变量逻辑回归评估独立变量与意见、障碍和教育之间的关系。

结果

该调查共收到来自 54 个国家的 1041 名受访者的回复。大多数(n = 855,82%)预计 AI 将在 10 年内改变放射学领域。在临床实践中最常期望 AI 扮演的角色是第二读者(n = 829,78%)和工作流程优化(n = 802,77%)。实施障碍方面,受访者最常提到的是伦理和法律问题(n = 630,62%)和缺乏知识(n = 584,57%)。专家受访者还提到了缺乏标记图像和普遍性问题。大多数(n = 819,79%)表示 AI 应该纳入住院医师培训计划,但对将影像学信息学和 AI 作为一个亚专业的支持较少(n = 241,23%)。

结论

社区内广泛需要将 AI 纳入住院医师培训计划。基于本研究的结果,对于放射科住院医师来说,似乎需要整合 AI 教育,包括与数据管理、伦理和立法相关的问题。

关键点

  1. 放射学界广泛要求将 AI 纳入住院医师培训计划,但对将影像学信息学视为放射学亚专业的支持较少。

  2. 伦理和法律问题以及缺乏知识是放射学界认识到的 AI 实施的主要障碍,而标记数据和 IT 基础设施不足等问题则较少被视为障碍。

  3. 将 AI 教育纳入放射学课程,包括数据管理的技术方面、偏倚风险以及伦理和法律问题,可能有助于将 AI 成功整合到诊断放射学中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30db/8523492/36cf77bd01e1/330_2021_7782_Fig2_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30db/8523492/1553de35b5a8/330_2021_7782_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30db/8523492/36cf77bd01e1/330_2021_7782_Fig2_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30db/8523492/1553de35b5a8/330_2021_7782_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30db/8523492/36cf77bd01e1/330_2021_7782_Fig2_HTML.jpg

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