基于ct放射学特征的机器学习预测接受放化疗的头颈癌患者的残留肿瘤

E. Florez, T. V. Thomas, C. Howard, H. Khosravi, S. Lirette, A. Fatemi
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引用次数: 8

摘要

接受放化疗的HNSCC患者的监测影像学难以区分残留病变、放射改变和炎症。因此,本研究基于从放化疗前后的标准CT图像中提取的radf来评估ML模型,以预测HNSCC治疗反应。回顾性分析我院2006年至2015年间接受终期放化疗的HNSCC患者。36例在颈部软组织CT扫描中发现残留病变的患者每隔2个月被纳入研究,这些患者要么在原发部位,要么在淋巴结处,要么两者都有。将颈部治疗计划CT (CT1)、治疗后CT (CT2)和PET/CT CT部分(CT3)的GTV轮廓导出到MatLab®,在MatLab®中使用不同的方法提取2D和3D radf。最后,使用ML模型来确定radf,预测HNSCC患者接受放化疗后的变化和进展。使用从CT2中提取的2D radf的SVM模型与PET/CT检查中的残留疾病相关(AUC = 0.702)。PET/CT提取的二维radf对残余肿瘤病理阳性的预测能力中等(AUC = 0.667)。CT2和PET/CT提取的三维radf的NN和RF模型对残余肿瘤的阳性病理预测能力分别为良好和中等(AUC分别为0.720和0.678)。基于治疗前和治疗后CT数据的二维和三维radf的ML模型显示,在一小群接受放化疗的HNSCC癌症患者中,有希望预测放射变化和炎症引起的残留肿瘤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING BASED ON CT RADIOMIC FEATURES PREDICTS RESIDUAL TUMOR IN HEAD AND NECK CANCER PATIENTS TREATED WITH CHEMORADIOTHERAPY
Surveillance imaging of HNSCC in patients treated with chemoradiotherapy suffers from difficulty in differentiating residual disease from radiation changes and inflammation. Thus, this study assessed ML models based on RadFs extracted from standard CT images pre- and post-chemoradiation to predict HNSCC treatment response. A retrospective analysis of HNSCC patients treated with definitive chemoradiotherapy at our institution between 2006 and 2015 was performed. Thirty-six patients with residual disease on CT scans of the soft tissue of the neck at a two- month interval-either in the primary site, nodal stations, or both-were enrolled. GTV contours from the treatment planning CT (CT1), post-treatment CT (CT2), and CT portion of the PET/CT (CT3) of the neck were exported to MatLab®, where 2D and 3D RadFs were extracted using different methods. Finally, ML models were used to identify the RadFs that predict changes and progression in HNSCC patients treated with chemoradiotherapy. SVM models using 2D RadFs, extracted from CT2, were associated with residual disease on PET/CT exams (AUC = 0.702). 2D RadFs extracted from PET/CT had moderate predictive ability to predict positive pathology for residual tumor (AUC = 0.667). NN and RF models of 3D RadFs extracted from CT2 and PET/CT had good and moderate predictive ability to predict positive pathology for residual tumor (AUC = 0.720 and 0.678, respectively). ML models using 2D and 3D RadFs derived from pre- and post-treatment CT data show promise for predicting residual tumor from radiation changes and inflammation in a small group of HNSCC cancer patients treated with chemoradiotherapy.
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