Radiation Oncology Department, University Hospital, Brest, France.
INSERM, UMR 1101, LaTIM, University of Brest, Brest, France.
Acta Oncol. 2022 Jan;61(1):73-80. doi: 10.1080/0284186X.2021.1983207. Epub 2021 Oct 9.
Radiotherapy (RT) for head and neck cancer is now guided by cone-beam computed tomography (CBCT). We aim to identify a CBCT radiomic signature predictive of progression to RT.
A cohort of 93 patients was split into training ( = 60) and testing ( = 33) sets. A total of 88 features were extracted from the gross tumor volume (GTV) on each CBCT. Receiver operating characteristic (ROC) curves were used to determine the power of each feature at each week of treatment to predict progression to radio(chemo)therapy. Only features with AUC > 0.65 at each week were pre-selected. Absolute differences were calculated between features from each weekly CBCT and baseline CBCT1 images. The smallest detectable change ( = 1.96 × SD, SD being the standard deviation of differences between feature values calculated on CBCT1 and CBCTn) with its confidence interval (95% confidence interval [CI]) was determined for each feature. The features for which the change was larger than C for at least 5% of patients were then selected. A radiomics-based model was built at the time-point that showed the highest AUC and compared with models relying on clinical variables.
Seven features had an AUC > 0.65 at each week, and six exhibited a change larger than the predefined CI 95%. After exclusion of inter-correlated features, only one parameter remains, Coarseness. Among clinical variable, only hemoglobin value was significant. AUC for predicting the treatment response were 0.78 ( = .006), 0.85 ( < .001), and 0.99 ( < .001) for clinical, CBCT4-radiomics (Coarseness) and clinical + radiomics based models respectively. The mean AUC of this last model on a 5-fold cross-validation was 0.80 (±0.09). On the testing cohort, the best prediction was given by the combined model (balanced accuracy [BAcc] 0.67 , < .001).
We described a feature selection methodology for delta-radiomics that is able to select reproducible features which are informative due to their change during treatment. A selected delta radiomics feature may improve clinical-based prediction models.
头颈部癌症的放射治疗(RT)现在由锥形束计算机断层扫描(CBCT)引导。我们旨在确定预测 RT 进展的 CBCT 放射组学特征。
将 93 名患者分为训练集(n=60)和测试集(n=33)。从每次 CBCT 的大体肿瘤体积(GTV)中提取了 88 个特征。使用受试者工作特征(ROC)曲线确定每个特征在治疗的每一周预测进展为放化疗的能力。仅选择每个周 AUC>0.65 的特征。从每周的 CBCT 和基线 CBCT1 图像计算每个特征之间的绝对差异。确定每个特征的最小可检测变化(SD,为 CBCT1 和 CBCTn 上特征值计算的差异的标准差)及其置信区间(95%置信区间 [CI])。对于至少 5%的患者,变化大于 C 的特征被选择。在显示最高 AUC 的时间点建立基于放射组学的模型,并与基于临床变量的模型进行比较。
每周有 7 个特征的 AUC>0.65,6 个特征的变化大于预定义的 95%置信区间(CI)。在排除相关特征后,只剩下一个参数,即粗糙度。在临床变量中,只有血红蛋白值有意义。预测治疗反应的 AUC 分别为 0.78(=0.006)、0.85(<.001)和 0.99(<.001),分别为临床、CBCT4-放射组学(粗糙度)和临床+放射组学模型。在 5 折交叉验证中,该最后模型的平均 AUC 为 0.80(±0.09)。在测试队列中,组合模型(平衡准确率 [BAcc]0.67,<.001)给出了最佳预测。
我们描述了一种用于 delta 放射组学的特征选择方法,该方法能够选择在治疗过程中因变化而具有信息性的可重复特征。选定的 delta 放射组学特征可能会改进基于临床的预测模型。