应用前处理CT预测头颈部鳞状细胞癌放射治疗预后的空间放射学图。

IF 5.6 Q1 ONCOLOGY
Joseph Bae, Kartik Mani, Lukasz Czerwonka, Christopher Vanison, Samuel Ryu, Prateek Prasanna
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引用次数: 0

摘要

目的建立一种放射学图像框架RadGraph,用于对预处理CT图像进行空间分析,以提高头颈部鳞状细胞癌(HNSCC)局部复发(LR)和远处转移(DM)的预测。材料与方法本回顾性研究纳入了4个公开的HNSCC患者放疗前CT数据集,这些数据集来自癌症影像档案馆(Cancer Imaging Archive),采集时间为2003年至2018年。利用计算图和图注意深度学习方法对头颈部解剖中的多个区域进行整体建模。收集临床特征,包括年龄、性别和人乳头瘤病毒感染状况,建立基线模型。通过受试者工作特征曲线下面积(AUC)和模型注意力的定性解释来评估模型预测LR和DM的性能。结果3434例患者(61岁±11 [SD],男性2774例)被分为训练组(n = 1576)、验证组(n = 379)和检验组(n = 1479)。RadGraph预测LR和DM的auc分别高达0.83和0.90。与临床基线(LR预测的auc高达0.73,DM预测的auc高达0.83)和先前发表的方法(LR预测的auc高达0.81,DM预测的auc高达0.87)相比,RadGraph显示出更高的性能。图形注意地图集使与颈部淋巴结链相吻合的区域可视化,这对结果预测很重要。结论RadGraph利用来自肿瘤和非肿瘤区域的信息,有效地预测了放射治疗的HNSCC患者的LR和DM。图表注意地图集可以解释模型预测。关键词:CT,信息学,神经网络,放射治疗,头颈部,计算机应用-通用(信息学),肿瘤反应,头颈部鳞状细胞癌,局部复发,放疗,深度学习,放射组学。©rsna, 2025。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial Radiomic Graphs for Outcome Prediction in Radiation Therapy-treated Head and Neck Squamous Cell Carcinoma Using Pretreatment CT.

Purpose To develop a radiomic graph framework, RadGraph, for spatial analysis of pretreatment CT images to improve prediction of local-regional recurrence (LR) and distant metastasis (DM) in head and neck squamous cell carcinoma (HNSCC). Materials and Methods This retrospective study included four public pre-radiotherapy treatment CT datasets of patients with HNSCC obtained from The Cancer Imaging Archive (images collected between 2003 and 2018). Computational graphs and graph attention deep learning methods were leveraged to holistically model multiple regions in the head and neck anatomy. Clinical features, including age, sex, and human papillomavirus infection status, were collected for a baseline model. Model performance in predicting LR and DM was evaluated via area under the receiver operating characteristic curve (AUC) and qualitative interpretation of model attention. Results A total of 3434 patients (61 years ± 11 [SD], 2774 male) were divided into training (n = 1576), validation (n = 379), and testing (n = 1479) datasets. RadGraph achieved AUCs of up to 0.83 and 0.90 for LR and DM prediction, respectively. RadGraph showed higher performance compared with the clinical baseline (AUCs up to 0.73 for LR prediction and 0.83 for DM prediction) and previously published approaches (AUCs up to 0.81 for LR prediction and 0.87 for DM prediction). Graph attention atlases enabled visualization of regions coinciding with cervical lymph node chains as important for outcome prediction. Conclusion RadGraph leveraged information from tumor and nontumor regions to effectively predict LR and DM in a large multi-institutional dataset of patients with radiation therapy-treated HNSCC. Graph attention atlases enabled interpretation of model predictions. Keywords: CT, Informatics, Neural Networks, Radiation Therapy, Head/Neck, Computer Applications-General (Informatics), Tumor Response, Head and Neck Squamous Cell Carcinoma, Locoregional Recurrence, Radiotherapy, Deep Learning, Radiomics Supplemental material is available for this article. © RSNA, 2025.

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