Zhang Zhaotao, He Keng, Wang Zhenhua, Zhang Youming, Wu Di, Zeng Lei, Zeng Junjie, Ye Yinquan, Gu Taifu, Xiao Xinlan
Department of Radiology, The Second Affiliated Hospital of Nanchang University, Nanchang, China.
Department of Radiology, Hsiang-ya Hospital, Changsha, China.
Front Oncol. 2021 Nov 18;11:779202. doi: 10.3389/fonc.2021.779202. eCollection 2021.
To evaluate whether multiparametric magnetic resonance imaging (MRI)-based logistic regression models can facilitate the early prediction of chemoradiotherapy response in patients with residual brain gliomas after surgery.
A total of 84 patients with residual gliomas after surgery from January 2015 to September 2020 who were treated with chemoradiotherapy were retrospectively enrolled and classified as treatment-sensitive or treatment-insensitive. These patients were divided into a training group (from institution 1, 57 patients) and a validation group (from institutions 2 and 3, 27 patients). All preoperative and postoperative MR images were obtained, including T1-weighted (T1-w), T2-weighted (T2-w), and contrast-enhanced T1-weighted (CET1-w) images. A total of 851 radiomics features were extracted from every imaging series. Feature selection was performed with univariate analysis or in combination with multivariate analysis. Then, four multivariable logistic regression models derived from T1-w, T2-w, CET1-w and Joint series (T1+T2+CET1-w) were constructed to predict the response of postoperative residual gliomas to chemoradiotherapy (sensitive or insensitive). These models were validated in the validation group. Calibration curves, receiver operating characteristic (ROC) curves, and decision curve analysis (DCA) were applied to compare the predictive performances of these models.
Four models were created and showed the following areas under the ROC curves (AUCs) in the training and validation groups: Model-Joint series (AUC, 0.923 and 0.852), Model-T1 (AUC, 0.835 and 0.809), Model-T2 (AUC, 0.784 and 0.605), and Model-CET1 (AUC, 0.805 and 0.537). These results indicated that the Model-Joint series had the best performance in the validation group, followed by Model-T1, Model-T2 and finally Model-CET1. The calibration curves indicated good agreement between the Model-Joint series predictions and actual probabilities. Additionally, the DCA curves demonstrated that the Model-Joint series was clinically useful.
Multiparametric MRI-based radiomics models can potentially predict tumor response after chemoradiotherapy in patients with postoperative residual gliomas, which may aid clinical decision making, especially to help patients initially predicted to be treatment-insensitive avoid the toxicity of chemoradiotherapy.
评估基于多参数磁共振成像(MRI)的逻辑回归模型是否有助于早期预测手术后残留脑胶质瘤患者的放化疗反应。
回顾性纳入2015年1月至2020年9月期间共84例接受放化疗的手术后残留胶质瘤患者,并将其分为治疗敏感组或治疗不敏感组。这些患者被分为训练组(来自机构1,共57例患者)和验证组(来自机构2和3,共27例患者)。获取所有术前和术后的MR图像,包括T1加权(T1-w)、T2加权(T2-w)和对比增强T1加权(CET1-w)图像。从每个成像序列中提取了总共851个影像组学特征。通过单变量分析或与多变量分析相结合的方式进行特征选择。然后,构建了四个基于T1-w、T2-w、CET1-w和联合序列(T1+T2+CET1-w)的多变量逻辑回归模型,以预测术后残留胶质瘤对放化疗的反应(敏感或不敏感)。这些模型在验证组中进行了验证。应用校准曲线、受试者操作特征(ROC)曲线和决策曲线分析(DCA)来比较这些模型的预测性能。
创建了四个模型,其在训练组和验证组中的ROC曲线下面积(AUC)如下:联合序列模型(AUC分别为0.923和0.852)、T1模型(AUC分别为0.835和0.809)、T2模型(AUC分别为0.784和0.605)以及CET1模型(AUC分别为0.805和0.537)。这些结果表明联合序列模型在验证组中表现最佳,其次是T1模型、T2模型,最后是CET1模型。校准曲线表明联合序列模型的预测与实际概率之间具有良好的一致性。此外,DCA曲线表明联合序列模型在临床上是有用的。
基于多参数MRI的影像组学模型有可能预测术后残留胶质瘤患者放化疗后的肿瘤反应,这可能有助于临床决策,特别是帮助最初被预测为治疗不敏感的患者避免放化疗的毒性。