头颈部肿瘤患者多器官CT分割的分类不平衡处理

Samuel Cros, Eugene Vorontsov, S. Kadoury
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引用次数: 3

摘要

头颈癌患者的放疗计划需要从规划的CT图像中准确描绘几个危险器官(OAR),以便确定减少毒性和挽救正常组织的剂量计划。然而,针对多个器官训练单个深度神经网络对头颈部区域内多个结构之间的类不平衡和大小变异性高度敏感。在本文中,我们为每个桨叶提出了一个单类分割模型,以处理在跨输出类(每个结构一个类)的训练过程中,12个桨叶之间存在严重差异的类不平衡问题。基于U-net架构,我们提出了一种相似的桨叶之间的迁移学习方法,以利用共同的学习特征,以及一种简单的加权平均策略,将模型初始化为多个模型的平均值,每个模型都在一个单独的器官上训练。在200名接受外束放疗的h&n癌症患者的内部数据集上进行的实验表明,与尝试同时训练多个OAR的基线多器官分割模型相比,所提出的模型有显著改进。通过使用跨OAR的迁移学习和加权平均策略,所提出的模型产生的总体Dice分数为0.75 \pm 0.12$,这表明可以通过利用来自周围结构的额外数据来实现合理的分割性能,限制了真值注释的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Managing Class Imbalance in Multi-Organ CT Segmentation in Head and Neck Cancer Patients
Radiotherapy planning of head and neck cancer patients requires an accurate delineation of several organs at risk (OAR) from planning CT images in order to determine a dose plan which reduces toxicity and salvages normal tissue. However training a single deep neural network for multiple organs is highly sensitive to class imbalance and variability in size between several structures within the head and neck region. In this paper, we propose a single-class segmentation model for each OAR in order to handle class imbalance issues during training across output classes (one class per structure), where there exists a severe disparity between 12 OAR. Based on a U-net architecture, we present a transfer learning approach between similar OAR to leverage common learned features, as well as a simple weight averaging strategy to initialize a model as the average of multiple models, each trained on a separate organ. Experiments performed on an internal dataset of 200 H & N cancer patients treated with external beam radiotherapy, show the proposed model presents a significant improvement compared to the baseline multi-organ segmentation model, which attempts to simultaneously train several OAR. The proposed model yields an overall Dice score of $0.75 \pm 0.12$, by using both transfer learning across OAR and a weight averaging strategy, indicating that a reasonable segmentation performance can be achieved by leveraging additional data from surrounding structures, limiting the uncertainty in ground-truth annotations.
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