Radiation Oncology, Azienda Ospedaliero-Universitaria Careggi, University of Florence, Florence, Italy.
Section for Biomedical Physics, Department of Radiation Oncology, Eberhard Karls University Tübingen, Tübingen, Germany.
Radiat Oncol. 2022 Apr 28;17(1):84. doi: 10.1186/s13014-022-02053-y.
To report on the discriminative ability of a simulation Computed Tomography (CT)-based radiomics signature for predicting response to treatment in patients undergoing neoadjuvant chemo-radiation for locally advanced adenocarcinoma of the rectum.
Consecutive patients treated at the Universities of Tübingen (from 1/1/07 to 31/12/10, explorative cohort) and Florence (from 1/1/11 to 31/12/17, external validation cohort) were considered in our dual-institution, retrospective analysis. Long-course neoadjuvant chemo-radiation was performed according to local policy. On simulation CT, the rectal Gross Tumor Volume was manually segmented. A feature selection process was performed yielding mineable data through an in-house developed software (written in Python 3.6). Model selection and hyper-parametrization of the model was performed using a fivefold cross validation approach. The main outcome measure of the study was the rate of pathologic good response, defined as the sum of Tumor regression grade (TRG) 3 and 4 according to Dworak's classification.
Two-hundred and one patients were included in our analysis, of whom 126 (62.7%) and 75 (37.3%) cases represented the explorative and external validation cohorts, respectively. Patient characteristics were well balanced between the two groups. A similar rate of good response to neoadjuvant treatment was obtained in in both cohorts (46% and 54.7%, respectively; p = 0.247). A total of 1150 features were extracted from the planning scans. A 5-metafeature complex consisting of Principal component analysis (PCA)-clusters (whose main components are LHL Grey-Level-Size-Zone: Large Zone Emphasis, Elongation, HHH Intensity Histogram Mean, HLL Run-Length: Run Level Variance and HHH Co-occurence: Cluster Tendency) in combination with 5-nearest neighbour model was the most robust signature. When applied to the explorative cohort, the prediction of good response corresponded to an average Area under the curve (AUC) value of 0.65 ± 0.02. When the model was tested on the external validation cohort, it ensured a similar accuracy, with a slightly lower predictive ability (AUC of 0.63).
Radiomics-based, data-mining from simulation CT scans was shown to be feasible and reproducible in two independent cohorts, yielding fair accuracy in the prediction of response to neoadjuvant chemo-radiation.
报告基于模拟计算机断层扫描(CT)的放射组学特征对接受新辅助放化疗的局部晚期直肠腺癌患者的治疗反应的预测能力。
在我们的双机构回顾性分析中,考虑了在图宾根大学(2007 年 1 月 1 日至 2010 年 12 月 31 日)和佛罗伦萨大学(2011 年 1 月 1 日至 2017 年 12 月 31 日)接受治疗的连续患者。根据当地政策进行长程新辅助放化疗。在模拟 CT 上,手动分割直肠大体肿瘤体积。通过内部开发的软件(用 Python 3.6 编写)进行特征选择过程,从而产生可挖掘的数据。使用五重交叉验证方法进行模型选择和模型超参数化。研究的主要观察指标是病理良好反应率,定义为 Dworak 分类的肿瘤消退分级(TRG)3 和 4 的总和。
共有 210 例患者纳入本分析,其中 126 例(60.7%)和 75 例(37.3%)分别为探索性和外部验证队列。两组患者的特征在两组之间均衡。两组新辅助治疗的良好反应率相似(分别为 46%和 54.7%;p=0.247)。从计划扫描中提取了 1150 个特征。由主成分分析(PCA)聚类组成的 5 元特征复合物(其主要成分是 LHL 灰度大小区:大区强调、伸长、HHH 强度直方图均值、HLL 运行长度:运行水平方差和 HHH 共现:簇趋势)与 5 个最近邻模型相结合是最稳健的特征。当应用于探索性队列时,良好反应的预测对应于平均曲线下面积(AUC)值为 0.65±0.02。当在外部验证队列中测试该模型时,它确保了类似的准确性,但预测能力略低(AUC 为 0.63)。
基于放射组学的从模拟 CT 扫描中进行的数据挖掘在两个独立的队列中是可行和可重复的,在预测新辅助放化疗的反应方面具有良好的准确性。