深度学习在介入放射治疗(近距离放射治疗)中的应用:以开源和开放数据为重点的综述。

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.2022.10.005
Tobias Fechter, Ilias Sachpazidis, Dimos Baltas
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引用次数: 0

摘要

深度学习已发展成为几乎所有医学领域最重要的技术之一。特别是在与医学成像相关的领域,它发挥着重要作用。然而,在介入放射治疗(近距离放射治疗)领域,深度学习仍处于早期阶段。在这篇综述中,我们首先调查并仔细研究了深度学习在介入放射治疗的所有过程以及直接相关领域中的作用。此外,我们还总结了最新进展。为了更好地理解,我们对关键术语和解决常见深度学习问题的方法进行了解释。要重现深度学习算法的结果,必须要有源代码和训练数据。因此,这项工作的第二个重点是分析开放源代码、开放数据和开放模型的可用性。我们的分析表明,深度学习已经在介入放射治疗的某些领域发挥了重要作用,但在其他领域还很难发挥作用。不过,随着时间的推移,深度学习的影响正在不断扩大,这其中有自身的原因,但也受到了密切相关领域的影响。开放源代码、数据和模型的数量在不断增加,但仍然很少,而且在不同研究小组中分布不均。不愿公布代码、数据和模型限制了可重复性,并将评估限制在单一机构数据集上。我们的分析结论是,深度学习可以积极改变介入放射治疗的工作流程,但在结果的可重复性和标准化评估方法方面仍有改进空间。
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The use of deep learning in interventional radiotherapy (brachytherapy): A review with a focus on open source and open data

Deep learning advanced to one of the most important technologies in almost all medical fields. Especially in areas, related to medical imaging it plays a big role. However, in interventional radiotherapy (brachytherapy) deep learning is still in an early phase. In this review, first, we investigated and scrutinised the role of deep learning in all processes of interventional radiotherapy and directly related fields. Additionally, we summarised the most recent developments. For better understanding, we provide explanations of key terms and approaches to solving common deep learning problems. To reproduce results of deep learning algorithms both source code and training data must be available. Therefore, a second focus of this work is on the analysis of the availability of open source, open data and open models. In our analysis, we were able to show that deep learning plays already a major role in some areas of interventional radiotherapy, but is still hardly present in others. Nevertheless, its impact is increasing with the years, partly self-propelled but also influenced by closely related fields. Open source, data and models are growing in number but are still scarce and unevenly distributed among different research groups. The reluctance in publishing code, data and models limits reproducibility and restricts evaluation to mono-institutional datasets. The conclusion of our analysis is that deep learning can positively change the workflow of interventional radiotherapy but there is still room for improvements when it comes to reproducible results and standardised evaluation methods.

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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.
期刊最新文献
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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