Department of Biomedical Sciences, Humanitas University, Pieve Emanuele (Milan), Italy.
Radiotherapy and Radiosurgery, Humanitas Clinical and Research Center, Rozzano (Milan), Italy.
Strahlenther Onkol. 2019 Sep;195(9):805-818. doi: 10.1007/s00066-019-01483-0. Epub 2019 Jun 20.
To appraise the ability of a radiomics signature to predict clinical outcome after definitive radiochemotherapy (RCT) of stage III-IV head and neck cancer.
A cohort of 110 patients was included in a retrospective analysis. Radiomics texture features were extracted from the gross tumor volumes contoured on planning computed tomography (CT) images. The cohort of patients was randomly divided into a training (70 patients) and a validation (40 patients) cohorts. Textural features were correlated to survival and control data to build predictive models. All the significant predictors of the univariate analysis were included in a multivariate model. The quality of the models was appraised by means of the concordance index (CI).
A signature with 3 features was identified as predictive of overall survival (OS) with CI = 0.88 and 0.90 for the training and validation cohorts, respectively. A signature with 2 features was identified for progression-free survival (PFS; CI = 0.72 and 0.80); 2 features also characterized the signature for local control (LC; CI = 0.72 and 0.82). In all cases, the stratification in high- and low-risk groups for the training and validation cohorts led to significant differences in the actuarial curves. In the validation cohort the mean OS times (in months) were 78.9 ± 2.1 vs 67.4 ± 6.0 in the low- and high-risk groups, respectively, the PFS was 73.1 ± 3.7 and 50.7 ± 7.2, while the LC was 78.7 ± 2.1 and 63.9 ± 6.5.
CT-based radiomic signatures that correlate with survival and control after RCT were identified and allow low- and high-risk groups of patients to be identified.
评价放射组学特征预测局部晚期头颈部癌根治性放化疗后临床结局的能力。
回顾性分析 110 例患者。从计划 CT 图像勾画的大体肿瘤体积中提取放射组学纹理特征。将患者队列随机分为训练队列(70 例)和验证队列(40 例)。将纹理特征与生存和控制数据相关联,以建立预测模型。单因素分析中所有有意义的预测因子均纳入多因素模型。采用一致性指数(CI)评估模型质量。
确定了一个由 3 个特征组成的特征签名,可预测总生存(OS),训练和验证队列的 CI 分别为 0.88 和 0.90。对于无进展生存(PFS;CI=0.72 和 0.80),确定了一个由 2 个特征组成的特征签名;局部控制(LC;CI=0.72 和 0.82)的特征签名也由 2 个特征组成。在所有情况下,训练和验证队列中高风险和低风险组的分层导致了生存曲线的显著差异。在验证队列中,低风险组和高风险组的平均 OS 时间(月)分别为 78.9±2.1 和 67.4±6.0,PFS 分别为 73.1±3.7 和 50.7±7.2,LC 分别为 78.7±2.1 和 63.9±6.5。
确定了与 RCT 后生存和控制相关的基于 CT 的放射组学特征,可以识别低风险和高风险的患者组。