Department of Radiology, New York Presbyterian Hospital, Columbia University Medical Center, New York, NY, USA.
Gustave Roussy, Université Paris-Saclay, Villejuif, France.
J Natl Cancer Inst. 2020 Sep 1;112(9):902-912. doi: 10.1093/jnci/djaa017.
The authors sought to forecast survival and enhance treatment decisions for patients with liver metastatic colorectal cancer by using on-treatment radiomics signature to predict tumor sensitiveness to irinotecan, 5-fluorouracil, and leucovorin (FOLFIRI) alone (F) or in combination with cetuximab (FC).
We retrospectively analyzed 667 metastatic colorectal cancer patients treated with F or FC. Computed tomography quality was classified as high (HQ) or standard (SD). Four datasets were created using the nomenclature (treatment) - (quality). Patients were randomly assigned (2:1) to training or validation sets: FCHQ: 78:38, FCSD: 124:62, FHQ: 78:51, FSD: 158:78. Four tumor-imaging biomarkers measured quantitative radiomics changes between standard of care computed tomography scans at baseline and 8 weeks. Using machine learning, the performance of the signature to classify tumors as treatment sensitive or treatment insensitive was trained and validated using receiver operating characteristic (ROC) curves. Hazard ratio and Cox regression models evaluated association with overall survival (OS).
The signature (area under the ROC curve [95% confidence interval (CI)]) used temporal decrease in tumor spatial heterogeneity plus boundary infiltration to successfully predict sensitivity to antiepidermal growth factor receptor therapy (FCHQ: 0.80 [95% CI = 0.69 to 0.94], FCSD: 0.72 [95% CI = 0.59 to 0.83]) but failed with chemotherapy (FHQ: 0.59 [95% CI = 0.44 to 0.72], FSD: 0.55 [95% CI = 0.43 to 0.66]). In cetuximab-containing sets, radiomics signature outperformed existing biomarkers (KRAS-mutational status, and tumor shrinkage by RECIST 1.1) for detection of treatment sensitivity and was strongly associated with OS (two-sided P < .005).
Radiomics response signature can serve as an intermediate surrogate marker of OS. The signature outperformed known biomarkers in providing an early prediction of treatment sensitivity and could be used to guide cetuximab treatment continuation decisions.
作者试图通过使用治疗中放射组学特征来预测肿瘤对伊立替康、5-氟尿嘧啶和亚叶酸(FOLFIRI)单独(F)或联合西妥昔单抗(FC)的敏感性,从而为肝转移性结直肠癌患者的生存和治疗决策提供帮助。
我们回顾性分析了 667 例接受 F 或 FC 治疗的转移性结直肠癌患者。将计算机断层扫描质量分为高(HQ)或标准(SD)。使用命名法(治疗)-(质量)创建了四个数据集。患者被随机分配到训练或验证集:FCHQ:78:38,FCSD:124:62,FHQ:78:51,FSD:158:78。四个肿瘤成像生物标志物测量了基线和 8 周标准护理计算机断层扫描之间的定量放射组学变化。使用机器学习,通过接收器工作特征(ROC)曲线对分类肿瘤对治疗敏感或不敏感的特征进行了训练和验证。风险比和 Cox 回归模型评估了与总生存(OS)的关联。
该特征(ROC 曲线下面积[95%置信区间(CI)])使用肿瘤空间异质性和边界浸润的时间下降成功预测了抗表皮生长因子受体治疗的敏感性(FCHQ:0.80 [95% CI = 0.69 至 0.94],FCSD:0.72 [95% CI = 0.59 至 0.83]),但在化疗中失败(FHQ:0.59 [95% CI = 0.44 至 0.72],FSD:0.55 [95% CI = 0.43 至 0.66])。在包含西妥昔单抗的组中,放射组学特征在检测治疗敏感性方面优于现有生物标志物(KRAS 突变状态和 RECIST 1.1 肿瘤缩小),并与 OS 密切相关(双侧 P<0.005)。
放射组学反应特征可作为 OS 的中间替代标志物。该特征在提供治疗敏感性的早期预测方面优于已知的生物标志物,可用于指导西妥昔单抗治疗的继续决策。