Department of Radiological Technology, Faculty of Medicine, School of Health Sciences, Tohoku University, 21 Seiryo-machi, Aoba-ku, Sendai, Miyagi, 980-8575, Japan.
Department of Radiation Oncology, Tohoku University Graduate School of Medicine, 1-1 Seiryo-machi, Aoba-ku, Sendai, Miyagi, 980-8574, Japan.
J Radiat Res. 2023 Sep 22;64(5):783-794. doi: 10.1093/jrr/rrad052.
In external radiotherapy of head and neck (HN) cancers, the reduction of irradiation accuracy due to HN volume reduction often causes a problem. Adaptive radiotherapy (ART) can effectively solve this problem; however, its application to all cases is impractical because of cost and time. Therefore, finding priority cases is essential. This study aimed to predict patients with HN cancers are more likely to need ART based on a quantitative measure of large HN volume reduction and evaluate model accuracy. The study included 172 cases of patients with HN cancer who received external irradiation. The HN volume was calculated using cone-beam computed tomography (CT) for irradiation-guided radiotherapy for all treatment fractions and classified into two groups: cases with a large reduction in the HN volume and cases without a large reduction. Radiomic features were extracted from the primary gross tumor volume (GTV) and nodal GTV of the planning CT. To develop the prediction model, four feature selection methods and two machine-learning algorithms were tested. Predictive performance was evaluated by the area under the curve (AUC), accuracy, sensitivity and specificity. Predictive performance was the highest for the random forest, with an AUC of 0.662. Furthermore, its accuracy, sensitivity and specificity were 0.692, 0.700 and 0.813, respectively. Selected features included radiomic features of the primary GTV, human papillomavirus in oropharyngeal cancer and the implementation of chemotherapy; thus, these features might be related to HN volume change. Our model suggested the potential to predict ART requirements based on HN volume reduction .
在头颈部(HN)癌症的外部放射治疗中,由于 HN 体积缩小导致的照射精度降低常常会引发问题。自适应放射治疗(ART)可以有效地解决这个问题;然而,由于成本和时间的原因,将其应用于所有病例是不切实际的。因此,找到优先病例是至关重要的。本研究旨在基于对大 HN 体积缩小的定量测量,预测更有可能需要 ART 的 HN 癌症患者,并评估模型的准确性。
该研究纳入了 172 例接受外部照射的 HN 癌症患者。使用锥形束 CT(CBCT)对头颈部放疗引导下的所有治疗分次进行 HN 体积计算,并将 HN 体积分为两组:HN 体积大量减少的病例和 HN 体积无明显减少的病例。从计划 CT 的原发大体肿瘤体积(GTV)和淋巴结 GTV 中提取放射组学特征。为了开发预测模型,测试了四种特征选择方法和两种机器学习算法。通过曲线下面积(AUC)、准确性、敏感度和特异性评估预测性能。
随机森林的预测性能最高,AUC 为 0.662。此外,其准确性、敏感度和特异性分别为 0.692、0.700 和 0.813。选定的特征包括原发 GTV 的放射组学特征、口咽癌中的人乳头瘤病毒和化疗的实施;因此,这些特征可能与 HN 体积变化有关。我们的模型表明,基于 HN 体积缩小,预测 ART 需求具有一定潜力。