联合nnU-Net和放射组学方法用于PET/CT图像的头颈部肿瘤分割和预后

Hui Xu, Yi-hong Li, Wei Zhao, G. Quellec, Lijun Lu, M. Hatt
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引用次数: 1

摘要

头颈癌(HNC)肿瘤和淋巴结的自动分割在优化治疗策略和预后分析中具有至关重要的作用。本研究旨在利用nnU-Net对HNC多中心队列进行自动分割,并利用预处理PET/CT图像进行无复发生存(RFS)预测。HECKTOR 2022提供了一个包含883例患者的多中心HNC数据集(524例用于培训,359例用于测试)。为每个患者检索扩展口咽区域的边界框,固定大小为224 x 224 x 224 $mm^{3}$。然后采用三维nnU-Net结构对原发肿瘤和淋巴结进行同步自动分割。基于预测分割,为每位患者提取10个常规特征和346个标准化放射组学特征。构建了三个预后模型,分别包含常规和放射组学特征,并通过多变量CoxPH模型将它们组合起来。研究了减少多中心变化的统计协调方法ComBat。分别以Dice评分和C-index作为分割和预后任务的评价指标。对于分割任务,我们使用3D nnU-Net实现了原发肿瘤和淋巴结的平均骰子得分在0.701左右。对于预后任务,常规模型和放射组学模型在测试集中的C-index分别为0.658和0.645,而联合模型的C-index为0.648,没有提高预后性能。
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Joint nnU-Net and Radiomics Approaches for Segmentation and Prognosis of Head and Neck Cancers with PET/CT images
Automatic segmentation of head and neck cancer (HNC) tumors and lymph nodes plays a crucial role in the optimization treatment strategy and prognosis analysis. This study aims to employ nnU-Net for automatic segmentation and radiomics for recurrence-free survival (RFS) prediction using pretreatment PET/CT images in multi-center HNC cohort. A multi-center HNC dataset with 883 patients (524 patients for training, 359 for testing) was provided in HECKTOR 2022. A bounding box of the extended oropharyngeal region was retrieved for each patient with fixed size of 224 x 224 x 224 $mm^{3}$. Then 3D nnU-Net architecture was adopted to automatic segmentation of primary tumor and lymph nodes synchronously.Based on predicted segmentation, ten conventional features and 346 standardized radiomics features were extracted for each patient. Three prognostic models were constructed containing conventional and radiomics features alone, and their combinations by multivariate CoxPH modelling. The statistical harmonization method, ComBat, was explored towards reducing multicenter variations. Dice score and C-index were used as evaluation metrics for segmentation and prognosis task, respectively. For segmentation task, we achieved mean dice score around 0.701 for primary tumor and lymph nodes by 3D nnU-Net. For prognostic task, conventional and radiomics models obtained the C-index of 0.658 and 0.645 in the test set, respectively, while the combined model did not improve the prognostic performance with the C-index of 0.648.
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MLC at HECKTOR 2022: The Effect and Importance of Training Data when Analyzing Cases of Head and Neck Tumors using Machine Learning Joint nnU-Net and Radiomics Approaches for Segmentation and Prognosis of Head and Neck Cancers with PET/CT images Radiomics-enhanced Deep Multi-task Learning for Outcome Prediction in Head and Neck Cancer Multi-Scale Fusion Methodologies for Head and Neck Tumor Segmentation Recurrence-free Survival Prediction under the Guidance of Automatic Gross Tumor Volume Segmentation for Head and Neck Cancers
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