Li Shu, Luo Ting, Ding Changwei, Huang Qinlai, Guan Zhihao, Zhang Hao
School of Medical Informatics, China Medical University, Shenyang, Liaoning, 110122, China.
Department of Radiology, Liaoning Cancer Hospital & Institute, Shenyang, Liaoning, 110042, China.
Med Phys. 2020 Aug;47(8):3458-3466. doi: 10.1002/mp.14238. Epub 2020 Jun 3.
To investigate the use of radiomics in the in-depth identification of epidermal growth factor receptor (EGFR) mutation status in patients with lung adenocarcinoma.
Computed tomography images of 438 patients with lung adenocarcinoma were collected in two different institutions, and 496 radiomic features were extracted. In the training set, lasso logistic regression was used to establish radiomic signatures. Combining radiomic index and clinical features, five machine learning methods, and a tenfold cross-validation strategy were used to establish combined models for EGFR vs EGFR , and 19Del vs L858R, groups. The predictive power of the models was then evaluated using an independent external validation cohort.
In the EGFR vs EGFR and 19Del vs L858R groups, radiomic signatures consisting of 12 and 7 radiomic features were established, respectively; the area under the curves (AUCs) of the lasso logistic regression model on the validation set was 0.76 and 0.71, respectively. After inclusion of the clinical features, the maximum AUC of combined models on the validation set was 0.79 and 0.74, respectively. Logistic regression analysis showed good performance in the two groups, with AUCs of 0.79 and 0.71 on the validation set. Additionally, the AUC of combined models in the EGFR vs EGFR group was higher than that of the 19Del vs L858R group.
Our study shows the potential of radiomics to predict EGFR mutation status. There are imaging phenotypic differences between EGFR and EGFR , and between 19Del and L858R; these can be used to allow patients with lung adenocarcinoma to choose more appropriate and personalized treatment options.
探讨放射组学在深入鉴别肺腺癌患者表皮生长因子受体(EGFR)突变状态中的应用。
在两个不同机构收集了438例肺腺癌患者的计算机断层扫描图像,并提取了496个放射组学特征。在训练集中,采用套索逻辑回归建立放射组学特征。结合放射组学指标和临床特征,使用五种机器学习方法和十倍交叉验证策略,为EGFR与EGFR、19Del与L858R组建立联合模型。然后使用独立的外部验证队列评估模型的预测能力。
在EGFR与EGFR组以及19Del与L858R组中,分别建立了由12个和7个放射组学特征组成的放射组学特征;验证集上套索逻辑回归模型的曲线下面积(AUC)分别为0.76和0.71。纳入临床特征后,验证集上联合模型的最大AUC分别为0.79和0.74。逻辑回归分析在两组中表现良好,验证集上的AUC分别为0.79和0.71。此外,EGFR与EGFR组联合模型的AUC高于19Del与L858R组。
我们的研究显示了放射组学预测EGFR突变状态的潜力。EGFR与EGFR之间以及19Del与L858R之间存在影像学表型差异;这些差异可用于让肺腺癌患者选择更合适的个性化治疗方案。