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基于深度学习的头颈部癌症患者 PET/CT 图像中大体肿瘤体积和累及淋巴结的自动勾画。

Deep learning-based auto-delineation of gross tumour volumes and involved nodes in PET/CT images of head and neck cancer patients.

机构信息

Faculty of Science and Technology, Norwegian University of Life Sciences, Ås, Norway.

Department of Oncology, Oslo University Hospital, Oslo, Norway.

出版信息

Eur J Nucl Med Mol Imaging. 2021 Aug;48(9):2782-2792. doi: 10.1007/s00259-020-05125-x. Epub 2021 Feb 9.

Abstract

PURPOSE

Identification and delineation of the gross tumour and malignant nodal volume (GTV) in medical images are vital in radiotherapy. We assessed the applicability of convolutional neural networks (CNNs) for fully automatic delineation of the GTV from FDG-PET/CT images of patients with head and neck cancer (HNC). CNN models were compared to manual GTV delineations made by experienced specialists. New structure-based performance metrics were introduced to enable in-depth assessment of auto-delineation of multiple malignant structures in individual patients.

METHODS

U-Net CNN models were trained and evaluated on images and manual GTV delineations from 197 HNC patients. The dataset was split into training, validation and test cohorts (n= 142, n = 15 and n = 40, respectively). The Dice score, surface distance metrics and the new structure-based metrics were used for model evaluation. Additionally, auto-delineations were manually assessed by an oncologist for 15 randomly selected patients in the test cohort.

RESULTS

The mean Dice scores of the auto-delineations were 55%, 69% and 71% for the CT-based, PET-based and PET/CT-based CNN models, respectively. The PET signal was essential for delineating all structures. Models based on PET/CT images identified 86% of the true GTV structures, whereas models built solely on CT images identified only 55% of the true structures. The oncologist reported very high-quality auto-delineations for 14 out of the 15 randomly selected patients.

CONCLUSIONS

CNNs provided high-quality auto-delineations for HNC using multimodality PET/CT. The introduced structure-wise evaluation metrics provided valuable information on CNN model strengths and weaknesses for multi-structure auto-delineation.

摘要

目的

在放射治疗中,识别和描绘医学图像中的大体肿瘤和恶性淋巴结体积(GTV)至关重要。我们评估了卷积神经网络(CNN)在全自动勾画头颈部癌症(HNC)患者 FDG-PET/CT 图像中的 GTV 方面的适用性。将 CNN 模型与经验丰富的专家进行的手动 GTV 勾画进行了比较。引入了新的基于结构的性能指标,以能够深入评估个体患者中多个恶性结构的自动勾画。

方法

在 197 例 HNC 患者的图像和手动 GTV 勾画上训练和评估 U-Net CNN 模型。数据集分为训练集、验证集和测试集(n=142、n=15 和 n=40)。使用 Dice 评分、表面距离指标和新的基于结构的指标进行模型评估。此外,还对测试集中的 15 名随机选择的患者进行了手动评估。

结果

自动勾画的平均 Dice 评分分别为 CT 基、PET 基和 PET/CT 基 CNN 模型的 55%、69%和 71%。PET 信号对于勾画所有结构至关重要。基于 PET/CT 图像的模型识别了 86%的真实 GTV 结构,而仅基于 CT 图像的模型仅识别了 55%的真实结构。肿瘤学家报告说,随机选择的 15 名患者中有 14 名患者的自动勾画质量非常高。

结论

使用多模态 PET/CT,CNN 对头颈部癌症提供了高质量的自动勾画。引入的基于结构的评估指标为多结构自动勾画的 CNN 模型优缺点提供了有价值的信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f5c8/8263429/275f6a8b8171/259_2020_5125_Fig1_HTML.jpg

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