Tang S, Yen A, Wang K, Albuquerque K, Wang J
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX, USA; Advanced Imaging and Informatics for Radiation Therapy Laboratory and Medical Artificial Intelligence and Automation Laboratory, University of Texas Southwestern Medical Center, Dallas, TX, USA.
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX, USA.
Clin Oncol (R Coll Radiol). 2025 Feb;38:103702. doi: 10.1016/j.clon.2024.103702. Epub 2024 Nov 29.
A significant proportion of locally advanced cervical cancer (LACC) patients experience disease progression post chemoradiotherapy (CRT). Currently existing clinical variables are suboptimal predictors of treatment response. This study reported a radiomics-based model leveraging information extracted from magnetic resonance (MR) T2-weighted image (T2WI) to predict the progression-free survival (PFS) for LACC following CRT.
Radiomics features were extracted from pre-treatment MR T2WI in 105 LACC patients. Following pre-feature selection and a step forward feature selection method, an optimal feature set was determined with a Cox proportional hazard (CPH) model. The PFS predictions were generated through a radiomics-clinical combined model utilized five repeated nested 5-fold cross-validation (5-fold CV). Disease progression risk was stratified into high- and low-risk groups based on the predicted PFS and assessed by Kaplan-Meier analysis.
The radiomics texture feature extracted from MR T2WI significantly predict PFS in LACC after CRT. In comparison with the model using clinical variables alone, the radiomics-clinical combined model achieves significantly improved performance in testing patient cohort, achieving higher C-index (0.748 vs 0.655) and area under the curve (0.798 vs 0.660 for 2-year PFS). Meanwhile, the proposed method significantly differentiated the high- and low-risk patients groups for disease progression (P < 0.001).
An MR T2WI-based radiomics and clinical combined model provided improved prognostic capabilities in predicting the PFS for LACC patients treated with CRT, outperforming a model using clinical variables alone. The incorporation of MR T2WI-based radiomics is promising in assisting in personalized management in LACC, indicating the potential of MR T2WI radiomics as imaging biomarker.
相当一部分局部晚期宫颈癌(LACC)患者在放化疗(CRT)后会出现疾病进展。目前现有的临床变量对治疗反应的预测效果欠佳。本研究报告了一种基于影像组学的模型,该模型利用从磁共振(MR)T2加权图像(T2WI)中提取的信息来预测LACC患者CRT后的无进展生存期(PFS)。
从105例LACC患者的治疗前MR T2WI中提取影像组学特征。经过特征预选和逐步向前特征选择方法,使用Cox比例风险(CPH)模型确定最佳特征集。通过一个影像组学-临床联合模型生成PFS预测结果,该模型采用了五次重复的嵌套五折交叉验证(5折CV)。根据预测的PFS将疾病进展风险分为高风险和低风险组,并通过Kaplan-Meier分析进行评估。
从MR T2WI中提取的影像组学纹理特征能够显著预测LACC患者CRT后的PFS。与仅使用临床变量的模型相比,影像组学-临床联合模型在测试患者队列中的表现有显著改善,C指数更高(分别为0.748和0.655),两年PFS的曲线下面积更大(分别为0.798和0.660)。同时,所提出的方法能够显著区分疾病进展的高风险和低风险患者组(P < 0.001)。
基于MR T2WI的影像组学和临床联合模型在预测接受CRT治疗的LACC患者的PFS方面具有更好的预后能力,优于仅使用临床变量的模型。基于MR T2WI的影像组学的纳入在协助LACC的个性化管理方面很有前景,表明MR T2WI影像组学作为影像生物标志物的潜力。