Quantitative Imaging Research and Artificial Intelligence Lab, Department of Radiation Oncology, Unit 2, Dr Ida B Scudder Cancer Centre, Christian Medical College, Vellore, Tamil Nadu, 632004, India.
Department of Clinical Radiology, Christian Medical College, Vellore, India.
J Gastrointest Cancer. 2024 Sep;55(3):1199-1211. doi: 10.1007/s12029-024-01073-z. Epub 2024 Jun 10.
OBJECTIVE(S): The treatment response to neoadjuvant chemoradiation (nCRT) differs largely in individuals treated for rectal cancer. In this study, we investigated the role of radiomics to predict the pathological response in locally advanced rectal cancers at different treatment time points: (1) before the start of any treatment using baseline T2-weighted MRI (T2W-MR) and (2) at the start of radiation treatment using planning CT.
Patients on nCRT followed by surgery between June 2017 to December 2019 were included in the study. Histopathological tumour response grading (TRG) was used for classification, and gross tumour volume was defined by the radiation oncologists. Following resampling, 100 and 103 pyradiomic features were extracted from T2W-MR and planning CT images, respectively. Synthetic minority oversampling technique (SMOTE) was used to address class imbalance. Four machine learning classifiers built clinical, radiomic, and merged models. Model performances were evaluated on a held-out test dataset following 3-fold cross-validation using area under the receiver operator characteristic curves (AUC) with bootstrap 95% confidence intervals.
One hundred and fifty patients were included; 58/150 with TRG 1 were classified as complete responders, and rest were incomplete responders (IR). Clinical models performed better (AUC = 0.68) compared to radiomics models (AUC = 0.62). Overall, the clinical + T2W-MR model showed best performance (AUC = 0.72) in predicting the pathological response prior to therapy. Clinical + Planning CT-merged models could only achieve the highest AUC of 0.66.
Merging clinical and baseline T2W-MR radiomics enhances predicting pathological response in rectal cancer. Validation in larger cohorts is warranted, especially for watch and wait strategies.
新辅助放化疗(nCRT)的治疗反应在接受直肠癌治疗的个体中存在很大差异。本研究旨在探讨放射组学在预测局部晚期直肠癌不同治疗时间点的病理反应中的作用:(1)在基线 T2 加权磁共振成像(T2W-MRI)开始任何治疗之前,(2)在开始放射治疗时使用计划 CT。
本研究纳入了 2017 年 6 月至 2019 年 12 月接受 nCRT 后手术的患者。组织病理学肿瘤反应分级(TRG)用于分类,肿瘤体积由放射肿瘤学家定义。在重新采样后,分别从 T2W-MRI 和计划 CT 图像中提取 100 和 103 个 pyradiomic 特征。采用合成少数过采样技术(SMOTE)解决类别不平衡问题。构建了四个机器学习分类器的临床、放射组学和合并模型。采用 3 折交叉验证,使用接收者操作特征曲线(AUC)下面积(AUC)和 bootstrap 95%置信区间对模型性能进行评估,在保留的测试数据集上进行评估。
共纳入 150 例患者;58/150 例 TRG1 患者被归类为完全缓解者,其余为不完全缓解者(IR)。与放射组学模型(AUC=0.62)相比,临床模型的性能更好(AUC=0.68)。总体而言,在治疗前预测病理反应方面,临床+T2W-MR 模型表现最佳(AUC=0.72)。仅临床+计划 CT 合并模型可达到最高 AUC(0.66)。
合并临床和基线 T2W-MR 放射组学可增强预测直肠癌的病理反应。需要在更大的队列中进行验证,特别是对于观察和等待策略。