基于深度学习的两步危险器官自动分割模型用于腮腺癌近距离治疗计划。

IF 1.1 4区 医学 Q4 ONCOLOGY
Zhen-Yu Li, Jing-Hua Yue, Wei Wang, Wen-Jie Wu, Fu-Gen Zhou, Jie Zhang, Bo Liu
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引用次数: 0

摘要

目的:划定危险器官(OARs)是近距离放射治疗中定制放射剂量和预防辐射诱发毒性的关键步骤。针对头颈部肿瘤的自动分割方法缺乏相关研究,本研究提出了一种基于深度学习的腮腺癌近距离放疗中危险器官自动分割的两步方法。材料和方法:使用200例腮腺癌患者的计算机断层扫描图像来训练和评估我们自主开发的基于nnu - net的两步3D OARs自动分割模型。在近距离治疗时,桨被定义为耳廓、髁突、皮肤、乳突、外耳道和下颌支。将自动分割结果与肿瘤专家手工分割结果进行比较。通过骰子相似系数(DSC)、Jaccard指数、第95百分位豪斯多夫距离(95HD)、查准率和查全率对准确率进行定量评价。对自动分割结果进行了定性评价。结果:各参数的平均DSC值分别为0.88、0.91、0.75、0.89、0.74和0.93,表明自动分割的结果与人工轮廓的结果非常接近。此外,自动分割可以在1分钟内完成,而人工分割则需要20多分钟。所有生成的结果均被认为是临床可接受的。结论:我们提出的基于深度学习的两步OARs自动分割模型具有较高的分割效率,且与黄金标准人工轮廓吻合良好。因此,这种新方法在加快腮腺癌近距离放射治疗的治疗计划过程中具有潜力,同时允许更准确的放射传递以最小化毒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning-based two-step organs at risk auto-segmentation model for brachytherapy planning in parotid gland carcinoma.

Deep learning-based two-step organs at risk auto-segmentation model for brachytherapy planning in parotid gland carcinoma.

Deep learning-based two-step organs at risk auto-segmentation model for brachytherapy planning in parotid gland carcinoma.

Deep learning-based two-step organs at risk auto-segmentation model for brachytherapy planning in parotid gland carcinoma.

Purpose: Delineation of organs at risk (OARs) represents a crucial step for both tailored delivery of radiation doses and prevention of radiation-induced toxicity in brachytherapy. Due to lack of studies on auto-segmentation methods in head and neck cancers, our study proposed a deep learning-based two-step approach for auto-segmentation of organs at risk in parotid carcinoma brachytherapy.

Material and methods: Computed tomography images of 200 patients with parotid gland carcinoma were used to train and evaluate our in-house developed two-step 3D nnU-Net-based model for OARs auto-segmentation. OARs during brachytherapy were defined as the auricula, condyle process, skin, mastoid process, external auditory canal, and mandibular ramus. Auto-segmentation results were compared to those of manual segmentation by expert oncologists. Accuracy was quantitatively evaluated in terms of dice similarity coefficient (DSC), Jaccard index, 95th-percentile Hausdorff distance (95HD), and precision and recall. Qualitative evaluation of auto-segmentation results was also performed.

Results: The mean DSC values of each OAR were 0.88, 0.91, 0.75, 0.89, 0.74, and 0.93, respectively, indicating close resemblance of auto-segmentation results to those of manual contouring. In addition, auto-segmentation could be completed within a minute, as compared with manual segmentation, which required over 20 minutes. All generated results were deemed clinically acceptable.

Conclusions: Our proposed deep learning-based two-step OARs auto-segmentation model demonstrated high efficiency and good agreement with gold standard manual contours. Thereby, this novel approach carries the potential in expediting the treatment planning process of brachytherapy for parotid gland cancers, while allowing for more accurate radiation delivery to minimize toxicity.

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来源期刊
Journal of Contemporary Brachytherapy
Journal of Contemporary Brachytherapy ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
2.40
自引率
14.30%
发文量
54
审稿时长
16 weeks
期刊介绍: The “Journal of Contemporary Brachytherapy” is an international and multidisciplinary journal that will publish papers of original research as well as reviews of articles. Main subjects of the journal include: clinical brachytherapy, combined modality treatment, advances in radiobiology, hyperthermia and tumour biology, as well as physical aspects relevant to brachytherapy, particularly in the field of imaging, dosimetry and radiation therapy planning. Original contributions will include experimental studies of combined modality treatment, tumor sensitization and normal tissue protection, molecular radiation biology, and clinical investigations of cancer treatment in brachytherapy. Another field of interest will be the educational part of the journal.
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