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深度学习工具在癌症临床中的应用:具有头颈部轮廓验证功能的开源框架。

Deep learning tools for the cancer clinic: an open-source framework with head and neck contour validation.

机构信息

Roswell Park Comprehensive Cancer Center, Elm and Carlton Streets, Buffalo, NY, 14203, USA.

Jacobs School of Medicine and Biomedical Sciences, State University of New York at Buffalo, 955 Main Street, Buffalo, NY, 14203, USA.

出版信息

Radiat Oncol. 2022 Feb 8;17(1):28. doi: 10.1186/s13014-022-01982-y.

Abstract

BACKGROUND

With the rapid growth of deep learning research for medical applications comes the need for clinical personnel to be comfortable and familiar with these techniques. Taking a proven approach, we developed a straightforward open-source framework for producing automatic contours for head and neck planning computed tomography studies using a convolutional neural network (CNN).

METHODS

Anonymized studies of 229 patients treated at our clinic for head and neck cancer from 2014 to 2018 were used to train and validate the network. We trained a separate CNN iteration for each of 11 common organs at risk, and then used data from 19 patients previously set aside as test cases for evaluation. We used a commercial atlas-based automatic contouring tool as a comparative benchmark on these test cases to ensure acceptable CNN performance. For the CNN contours and the atlas-based contours, performance was measured using three quantitative metrics and physician reviews using survey and quantifiable correction time for each contour.

RESULTS

The CNN achieved statistically better scores than the atlas-based workflow on the quantitative metrics for 7 of the 11 organs at risk. In the physician review, the CNN contours were more likely to need minor corrections but less likely to need substantial corrections, and the cumulative correction time required was less than for the atlas-based contours for all but two test cases.

CONCLUSIONS

With this validation, we packaged the code framework and trained CNN parameters and a no-code, browser-based interface to facilitate reproducibility and expansion of the work. All scripts and files are available in a public GitHub repository and are ready for immediate use under the MIT license. Our work introduces a deep learning tool for automatic contouring that is easy for novice personnel to use.

摘要

背景

随着医学应用深度学习研究的快速发展,临床人员需要熟悉并掌握这些技术。我们采用一种经过验证的方法,使用卷积神经网络(CNN)为头颈部计划 CT 研究开发了一种简单的开源自动轮廓生成框架。

方法

我们使用了 2014 年至 2018 年间在我们诊所治疗头颈部癌症的 229 名患者的匿名研究数据来训练和验证网络。我们为 11 个常见的危险器官中的每一个都训练了一个单独的 CNN 迭代,然后使用之前作为测试病例预留的 19 名患者的数据进行评估。我们使用商业图谱自动勾画工具作为这些测试病例的比较基准,以确保 CNN 的性能可以接受。对于 CNN 轮廓和基于图谱的轮廓,我们使用三个定量指标进行性能评估,并通过调查和每个轮廓的可量化校正时间对医生的评价进行评估。

结果

在 11 个危险器官中的 7 个器官中,CNN 在定量指标上的得分明显优于基于图谱的工作流程。在医生评估中,CNN 轮廓更有可能需要进行小的修正,但不太可能需要进行大的修正,并且除了两个测试病例外,所需的累积校正时间都少于基于图谱的轮廓。

结论

通过这次验证,我们将代码框架和训练的 CNN 参数以及无代码、基于浏览器的界面进行打包,以促进工作的可重复性和扩展。所有脚本和文件都在一个公共的 GitHub 存储库中可用,并可根据 MIT 许可证立即使用。我们的工作引入了一种易于新手使用的深度学习自动轮廓工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8c50/8822676/07f586609e51/13014_2022_1982_Fig1_HTML.jpg

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