Department of Radiation Oncology, The Affiliated Cancer Hospital of Zhengzhou University & Henan Cancer Hospital, Zhengzhou, China.
Department of Health Technology and Informatics, The Hong Kong Polytechnic University, Hong Kong SAR, China.
Eur J Med Res. 2023 Mar 19;28(1):126. doi: 10.1186/s40001-023-01041-6.
The study aimed to predict acute radiation esophagitis (ARE) with grade ≥ 2 for patients with locally advanced lung cancer (LALC) treated with intensity-modulated radiation therapy (IMRT) using multi-omics features, including radiomics and dosiomics.
161 patients with stage IIIA-IIIB LALC who received chemoradiotherapy (CRT) or radiotherapy by IMRT with a prescribed dose from 45 to 70 Gy from 2015 to 2019 were enrolled retrospectively. All the toxicity gradings were given following the Common Terminology Criteria for Adverse Events V4.0. Multi-omics features, including radiomics, dosiomics (including dose-volume histogram dosimetric parameters), were extracted based on the planning CT image and three-dimensional dose distribution. All data were randomly divided into training cohorts (N = 107) and testing cohorts (N = 54). In the training cohorts, features with reliably high outcome relevance and low redundancy were selected under random patient subsampling. Four classification models (using clinical factors (CF) only, using radiomics features (RFs) only, dosiomics features (DFs) only, and the hybrid features (HFs) containing clinical factors, radiomics and dosiomics) were constructed employing the Ridge classifier using two-thirds of randomly selected patients as the training cohort. The remaining patient was treated as the testing cohort. A series of models were built with 30 times training-testing splits. Their performances were assessed using the area under the ROC curve (AUC) and accuracy.
Among all patients, 51 developed ARE grade ≥ 2, with an incidence of 31.7%. Next, 8990 radiomics and 213 dosiomics features were extracted, and 3, 6, 12, and 13 features remained after feature selection in the CF, DF, RF and DF models, respectively. The RF and HF models achieved similar classification performance, with the training and testing AUCs of 0.796 ± 0.023 (95% confidence interval (CI [0.79, 0.80])/0.744 ± 0.044 (95% CI [0.73, 0.76]) and 0.801 ± 0.022 (95% CI [0.79, 0.81]) (p = 0.74), respectively. The model performances using CF and DF features were poorer, with training and testing AUCs of 0.573 ± 0.026 (95% CI [0.56, 0.58])/ 0.509 ± 0.072 (95% CI [0.48, 0.53]) and 0.679 ± 0.027 (95% CI [0.67, 0.69])/0.604 ± 0.041 (95% CI [0.53, 0.63]) compared with the above two models (p < 0.001), respectively.
In LALC patients treated with CRT IMRT, the ARE grade ≥ 2 can be predicted using the pretreatment radiotherapy image features. To predict ARE, the multi-omics features had similar predictability with radiomics features; however, the dosiomics features and clinical factors had a limited classification performance.
本研究旨在利用多组学特征(包括放射组学和剂量组学)预测接受调强放疗(IMRT)的局部晚期肺癌(LALC)患者发生急性放射性食管炎(ARE)的等级≥2。
回顾性纳入了 2015 年至 2019 年期间接受放化疗(CRT)或 IMRT 放疗的 161 例 IIIA-IIIB 期 LALC 患者,处方剂量为 45-70 Gy。所有毒性分级均按照不良事件通用术语标准第 4.0 版进行。基于计划 CT 图像和三维剂量分布,提取了多组学特征,包括放射组学、剂量组学(包括剂量-体积直方图剂量学参数)。所有数据随机分为训练队列(N=107)和测试队列(N=54)。在训练队列中,通过随机患者抽样选择具有可靠高结果相关性和低冗余性的特征。使用 Ridge 分类器构建了四种分类模型(仅使用临床因素(CF)、仅使用放射组学特征(RFs)、仅使用剂量组学特征(DFs)以及包含临床因素、放射组学和剂量组学的混合特征(HFs)),其中三分之二的随机选择患者作为训练队列。其余患者作为测试队列。使用 30 次训练-测试拆分构建了一系列模型。使用 ROC 曲线下面积(AUC)和准确性评估它们的性能。
在所有患者中,有 51 例发生 ARE 等级≥2,发生率为 31.7%。接下来,提取了 8990 个放射组学和 213 个剂量组学特征,在 CF、DF、RF 和 DF 模型中分别经过特征选择后,保留了 3、6、12 和 13 个特征。RF 和 HF 模型的分类性能相似,训练和测试 AUC 分别为 0.796±0.023(95%置信区间(CI)[0.79,0.80])和 0.801±0.022(95%CI[0.79,0.81])(p=0.74)。使用 CF 和 DF 特征的模型性能较差,训练和测试 AUC 分别为 0.573±0.026(95%CI[0.56,0.58])和 0.509±0.072(95%CI[0.48,0.53])和 0.679±0.027(95%CI[0.67,0.69])和 0.604±0.041(95%CI[0.53,0.63])(与前两种模型相比,p<0.001)。
在接受 CRT IMRT 的 LALC 患者中,可使用放疗前的放射治疗图像特征预测 ARE 等级≥2。为了预测 ARE,多组学特征与放射组学特征具有相似的预测能力;然而,剂量组学特征和临床因素的分类性能有限。