利用卷积神经网络自动分割宫颈癌近距离治疗中的高危临床靶区和危险器官

IF 1.5 4区 医学 Q4 ONCOLOGY
J. Zhu , J. Yan , J. Zhang , L. Yu , A. Song , Z. Zheng , Y. Chen , S. Wang , Q. Chen , Z. Liu , F. Zhang
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引用次数: 0

摘要

目的:本研究旨在设计一种基于卷积神经网络的自动划线模型,用于生成宫颈癌图像引导自适应近距离治疗中的高风险临床靶体积和高风险器官:使用 98 例接受图像引导自适应近距离治疗的局部晚期宫颈癌患者的 CT 扫描结果,对新型 SERes-u-net 进行了训练和测试。使用 Dice 相似性系数、第 95 百分位数 Hausdorff 距离和临床评估进行评估:在高风险临床靶体积、膀胱、直肠、乙状结肠和肠套叠方面,我们模型的平均 Dice 相似系数分别为 80.8%、91.9%、85.2%、60.4% 和 82.8%。相应的第 95 百分位数豪斯多夫距离分别为 5.23 毫米、4.75 毫米、4.06 毫米、30.0 毫米和 20.5 毫米。评估结果显示,肿瘤学家 A 和肿瘤学家 B 分别认为卷积神经网络生成的高风险临床目标容积切片的 99.3% 和 100%是可接受的,大多数高风险器官的分割在临床上是可接受的,只有 25% 的乙状结肠在肿瘤学家 A 看来需要进行重大修改:由所提出的卷积神经网络模型生成的宫颈癌高危临床靶体积和高危器官可用于临床,有可能提高图像引导自适应近距离治疗工作流程中分割的一致性和轮廓塑造的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic segmentation of high-risk clinical target volume and organs at risk in brachytherapy of cervical cancer with a convolutional neural network

Purpose

This study aimed to design an autodelineation model based on convolutional neural networks for generating high-risk clinical target volumes and organs at risk in image-guided adaptive brachytherapy for cervical cancer.

Materials and methods

A novel SERes-u-net was trained and tested using CT scans from 98 patients with locally advanced cervical cancer who underwent image-guided adaptive brachytherapy. The Dice similarity coefficient, 95th percentile Hausdorff distance, and clinical assessment were used for evaluation.

Results

The mean Dice similarity coefficients of our model were 80.8%, 91.9%, 85.2%, 60.4%, and 82.8% for the high-risk clinical target volumes, bladder, rectum, sigmoid, and bowel loops, respectively. The corresponding 95th percentile Hausdorff distances were 5.23 mm, 4.75 mm, 4.06 mm, 30.0 mm, and 20.5 mm. The evaluation results revealed that 99.3% of the convolutional neural networks-generated high-risk clinical target volumes slices were acceptable for oncologist A and 100% for oncologist B. Most segmentations of the organs at risk were clinically acceptable, except for the 25% sigmoid, which required significant revision in the opinion of oncologist A. There was a significant difference in the clinical evaluation of convolutional neural networks-generated high-risk clinical target volumes between the two oncologists (P < 0.001), whereas the score differences of the organs at risk were not significant between the two oncologists. In the consistency evaluation, a large discrepancy was observed between senior and junior clinicians. About 40% of SERes-u-net-generated contours were thought to be better by junior clinicians.

Conclusion

The high-risk clinical target volumes and organs at risk of cervical cancer generated by the proposed convolutional neural networks model can be used clinically, potentially improving segmentation consistency and efficiency of contouring in image-guided adaptive brachytherapy workflow.

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来源期刊
Cancer Radiotherapie
Cancer Radiotherapie 医学-核医学
CiteScore
2.20
自引率
23.10%
发文量
129
审稿时长
63 days
期刊介绍: Cancer/radiothérapie se veut d''abord et avant tout un organe francophone de publication des travaux de recherche en radiothérapie. La revue a pour objectif de diffuser les informations majeures sur les travaux de recherche en cancérologie et tout ce qui touche de près ou de loin au traitement du cancer par les radiations : technologie, radiophysique, radiobiologie et radiothérapie clinique.
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