Impact of contrast-enhanced agent on segmentation using a deep learning-based software "Ai-Seg" for head and neck cancer.

IF 3.4 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Sayaka Kihara, Yoshihiro Ueda, Shuichi Harada, Akira Masaoka, Naoyuki Kanayama, Toshiki Ikawa, Shoki Inui, Takashi Akagi, Teiji Nishio, Koji Konishi
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引用次数: 0

Abstract

Objectives: In radiotherapy, auto-segmentation tools using deep learning assist in contouring organs-at-risk (OARs). We developed a segmentation model for head and neck (HN) OARs dedicated to contrast-enhanced (CE) computed tomography (CT) using the segmentation software, Ai-Seg, and compared the performance between CE and non-CE (nCE) CT.

Methods: The retrospective study recruited 321 patients with HN cancers and trained a segmentation model using CE CT (CE model). The CE model was installed in Ai-Seg and applied to additional 25 patients with CE and nCE CT. The Dice similarity coefficient (DSC) and average Hausdorff distance (AHD) were calculated between the ground truth and Ai-Seg contours for brain, brainstem, chiasm, optic nerves, cochleae, oral cavity, parotid glands, pharyngeal constrictor muscle, and submandibular glands (SMGs). We compared the CE model and the existing model trained with nCE CT available in Ai-Seg for 6 OARs.

Results: The CE model obtained significantly higher DSCs on CE CT for parotid and SMGs compared to the existing model. The CE model provided significantly lower DSC values and higher AHD values on nCE CT for SMGs than on CE CT, but comparable values for other OARs.

Conclusions: The CE model achieved significantly better performance than the existing model and can be used on nCE CT images without significant performance difference, except SMGs. Our results may facilitate the adoption of segmentation tools in clinical practice.

Advances in knowledge: We developed a segmentation model for HN OARs dedicated to CE CT using Ai-Seg and evaluated its usability on nCE CT.

使用基于深度学习的软件“Ai-Seg”对头颈癌进行对比增强剂对分割的影响。
目的:在放射治疗中,使用深度学习的自动分割工具有助于轮廓危险器官(OARs)。我们利用Ai-Seg分割软件开发了一个用于对比增强(CE)计算机断层扫描(CT)的头颈部(HN)桨的分割模型,并比较了CE和非CE (nCE) CT的性能。方法:回顾性研究招募321例HN癌患者,采用CE CT训练分割模型(CE模型)。将CE模型安装在Ai-Seg中,并应用于另外25例CE和nCE CT患者。计算脑、脑干、交叉、视神经、耳蜗、口腔、腮腺、咽缩肌和下颌下腺的ground truth与Ai-Seg等值线之间的Dice相似系数(DSC)和平均Hausdorff距离(AHD)。我们将CE模型与Ai-Seg中可用的nCE CT训练的现有模型进行了6个桨的比较。结果:与现有模型相比,CE模型在腮腺和SMGs的CE CT上获得了明显更高的dsc。CE模型在smg的nCE CT上提供的DSC值明显低于CE CT, AHD值明显高于CE CT,但在其他桨上的值可比较。结论:CE模型的性能明显优于现有模型,除smg外,CE模型可用于nCE CT图像,性能无显著差异。我们的结果可能有助于在临床实践中采用分割工具。知识进展:我们使用Ai-Seg开发了用于CE CT的HN OARs分割模型,并评估了其在nCE CT上的可用性。
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来源期刊
British Journal of Radiology
British Journal of Radiology 医学-核医学
CiteScore
5.30
自引率
3.80%
发文量
330
审稿时长
2-4 weeks
期刊介绍: BJR is the international research journal of the British Institute of Radiology and is the oldest scientific journal in the field of radiology and related sciences. Dating back to 1896, BJR’s history is radiology’s history, and the journal has featured some landmark papers such as the first description of Computed Tomography "Computerized transverse axial tomography" by Godfrey Hounsfield in 1973. A valuable historical resource, the complete BJR archive has been digitized from 1896. Quick Facts: - 2015 Impact Factor – 1.840 - Receipt to first decision – average of 6 weeks - Acceptance to online publication – average of 3 weeks - ISSN: 0007-1285 - eISSN: 1748-880X Open Access option
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