Medical Physics Unit, McGill University, Cedars Cancer Centre, McGill University Health Centre - Glen Site, 1001 boulevard Décarie, Montréal, QC, H4A 3J1, Canada.
Radiation Oncology Division, Hôpital général juif, 3755 Côte Ste. Catherine, Montréal, QC, H3T 1E2, Canada.
Sci Rep. 2017 Aug 31;7(1):10117. doi: 10.1038/s41598-017-10371-5.
Quantitative extraction of high-dimensional mineable data from medical images is a process known as radiomics. Radiomics is foreseen as an essential prognostic tool for cancer risk assessment and the quantification of intratumoural heterogeneity. In this work, 1615 radiomic features (quantifying tumour image intensity, shape, texture) extracted from pre-treatment FDG-PET and CT images of 300 patients from four different cohorts were analyzed for the risk assessment of locoregional recurrences (LR) and distant metastases (DM) in head-and-neck cancer. Prediction models combining radiomic and clinical variables were constructed via random forests and imbalance-adjustment strategies using two of the four cohorts. Independent validation of the prediction and prognostic performance of the models was carried out on the other two cohorts (LR: AUC = 0.69 and CI = 0.67; DM: AUC = 0.86 and CI = 0.88). Furthermore, the results obtained via Kaplan-Meier analysis demonstrated the potential of radiomics for assessing the risk of specific tumour outcomes using multiple stratification groups. This could have important clinical impact, notably by allowing for a better personalization of chemo-radiation treatments for head-and-neck cancer patients from different risk groups.
从医学图像中提取高维可挖掘数据的定量方法称为放射组学。放射组学被认为是癌症风险评估和肿瘤内异质性定量的重要预后工具。在这项工作中,我们分析了来自四个不同队列的 300 名患者的预处理 FDG-PET 和 CT 图像中的 1615 个放射组学特征(量化肿瘤图像的强度、形状和纹理),以评估头颈部癌症的局部区域复发(LR)和远处转移(DM)风险。通过随机森林和不平衡调整策略,结合放射组学和临床变量构建预测模型,并在另外两个队列上进行模型的预测和预后性能的独立验证(LR:AUC=0.69,CI=0.67;DM:AUC=0.86,CI=0.88)。此外,通过 Kaplan-Meier 分析获得的结果表明,放射组学具有通过多个分层组评估特定肿瘤结局风险的潜力。这可能具有重要的临床意义,特别是通过允许针对不同风险组的头颈部癌症患者进行更好的化疗放疗个体化治疗。