[结构化报告和人工智能]。

4区 医学 Q3 Medicine
Radiologe Pub Date : 2021-11-01 Epub Date: 2021-10-04 DOI:10.1007/s00117-021-00920-5
Johann-Martin Hempel, Daniel Pinto Dos Santos
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引用次数: 3

摘要

背景:人工智能(AI)和结构化报告(SR)在放射学中的应用具有多种可能性。科学出版物的数量多年来不断增加。有广泛的可用人工智能算法组合,例如自动检测和预选图像中的病理模式或促进报告工作流程。甚至机器也已经在使用人工智能算法来提高操作舒适度。方法:使用SR是必不可少的,特别是从放射结果报告中提取可自动评估的语义数据。关于认证过程中的资格,对于德国癌症协会作为肿瘤中心或德国以外的肿瘤中心(如欧洲癌症中心)的认证,使用SR是强制性的。结果:SR数据可用于患者护理、研究和教学目的的自动评估和质量保证。信息的缺乏和高度的可变性经常阻碍使用神经语言编程(NLP)从自由文本报告中提取有效信息。在监督训练的背景下,人工智能算法或k近邻(KNN)需要大量的验证数据。来自SR的语义数据也可以被人工智能处理并用于训练。结论:人工智能和放射学是放射学领域内独立的实体,相互依赖,具有显著的附加价值。两者都有很大的潜力在放射学中产生深远的变化和进一步的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Structured reporting and artificial intelligence].

Background: There are a multitude of application possibilities of artificial intelligence (AI) and structured reporting (SR) in radiology. The number of scientific publications have continuously increased for many years. There is an extensive portfolio of available AI algorithms for, e.g. automatic detection and preselection of pathologic patterns in images or for facilitating the reporting workflows. Even machines already use AI algorithms for improvement of operating comfort.

Method: The use of SR is essential especially for the extraction of automatically evaluable semantic data from radiology results reports. Regarding eligibility in certification processes, the use of SR is mandatory for the accreditation of the German Cancer Society as an oncological center or outside Germany, such as the European Cancer Center.

Results: The data from SR can be automatically evaluated for the purpose of patient care, research and educational purposes and quality assurance. Lack of information and a high degree of variability often hamper the extraction of valid information from free-text reports using neurolinguistic programming (NLP). Against the background of supervised training, AI algorithms or k‑nearest neighbors (KNN) require a considerable amount of validated data. The semantic data from SR can also be processed by AI and used for training.

Conclusion: The AI and SR are separate entities within the field of radiology with mutual dependencies and significant added value. Both have a high potential for profound upcoming changes and further developments in radiology.

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来源期刊
Radiologe
Radiologe 医学-核医学
CiteScore
1.10
自引率
0.00%
发文量
61
审稿时长
6-12 weeks
期刊介绍: Der Radiologe is an internationally recognized journal dealing with all aspects of radiology and serving the continuing medical education of radiologists in clinical and practical environments. The focus is on x-ray diagnostics, angiography computer tomography, interventional radiology, magnet resonance tomography, digital picture processing, radio oncology and nuclear medicine. Comprehensive reviews on a specific topical issue focus on providing evidenced based information on diagnostics and therapy. Freely submitted original papers allow the presentation of important clinical studies and serve the scientific exchange. Review articles under the rubric ''Continuing Medical Education'' present verified results of scientific research and their integration into daily practice.
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