Department of Radiation Oncology, Graduate School of Medicine, Yamaguchi University, Yamaguchi, Japan.
Department of Respiratory Medicine and Infectious Disease, Graduate School of Medicine, Yamaguchi University, Yamaguchi, Japan.
Phys Eng Sci Med. 2023 Mar;46(1):395-403. doi: 10.1007/s13246-023-01232-9. Epub 2023 Feb 14.
The purpose of this study is to develop the predictive models for epidermal growth factor receptor (EGFR) mutation status and subtypes [exon 21-point mutation (L858R) and exon 19 deletion mutation (19Del)] and evaluate their clinical usefulness. Total 172 patients with lung adenocarcinoma were retrospectively analyzed. The analysis of variance and the least absolute shrinkage were used for feature selection from plain computed tomography images. Then, radiomic score (rad-score) was calculated for the training and test cohorts. Two machine learning (ML) models with 5-fold were applied to construct the predictive models with rad-score, clinical features, and the combination of rad-score and clinical features. The nomogram was developed using rad-score and clinical features. The prediction performance was evaluated by the area under the receiver operating characteristic curve (AUC). Finally, decision curve analysis (DCA) was performed using the best ML and nomogram models. In the test cohorts, the AUC of the best ML and the nomogram model were 0.73 (95% confidence interval, 0.59-0.87) and 0.79 (0.65-0.92) in the EGFR mutation groups, 0.83 (0.67-0.99) and 0.85 (0.72-0.97) in the L858R mutation groups, as well as 0.77 (0.58-0.97) and 0.77 (0.60-0.95) in the 19Del groups. The DCA showed that the nomogram models have comparable results with ML models. We constructed two predictive models for EGFR mutation status and subtypes. The nomogram models had comparable results to the ML models. Because the superiority of the performance of ML and nomogram models varied depending on the prediction groups, appropriate model selection is necessary.
本研究旨在开发预测表皮生长因子受体(EGFR)突变状态和亚型(外显子 21 点突变(L858R)和外显子 19 缺失突变(19Del))的预测模型,并评估其临床应用价值。回顾性分析了 172 例肺腺癌患者。采用方差分析和最小绝对值收缩法(LASSO)从普通 CT 图像中进行特征选择。然后,计算放射组学评分(rad-score),用于训练和测试队列。应用 5 折交叉验证的两种机器学习(ML)模型构建基于 rad-score、临床特征以及 rad-score 和临床特征组合的预测模型。采用 rad-score 和临床特征构建列线图。采用受试者工作特征曲线(ROC)下面积(AUC)评估预测性能。最后,采用最佳 ML 和列线图模型进行决策曲线分析(DCA)。在测试队列中,最佳 ML 和列线图模型在 EGFR 突变组中的 AUC 分别为 0.73(95%置信区间,0.59-0.87)和 0.79(0.65-0.92),在 L858R 突变组中的 AUC 分别为 0.83(0.67-0.99)和 0.85(0.72-0.97),在 19Del 突变组中的 AUC 分别为 0.77(0.58-0.97)和 0.77(0.60-0.95)。DCA 显示,列线图模型与 ML 模型具有相似的结果。我们构建了两种预测 EGFR 突变状态和亚型的预测模型。列线图模型与 ML 模型具有相似的结果。由于 ML 和列线图模型的性能优势因预测组而异,因此需要适当的模型选择。