Liu Guixue, Xu Zhihan, Ge Yingqian, Jiang Beibei, Groen Harry, Vliegenthart Rozemarijn, Xie Xueqian
Department of Radiology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Siemens Healthineers Ltd, Shanghai, China.
Transl Lung Cancer Res. 2020 Aug;9(4):1212-1224. doi: 10.21037/tlcr-20-122.
To establish a radiomic approach to identify epidermal growth factor receptor (EGFR) mutation status in lung adenocarcinoma patients based on CT images, and to distinguish exon-19 deletion and exon-21 L858R mutation.
Two hundred sixty-three patients who underwent pre-surgical contrast-enhanced CT and molecular testing were included, and randomly divided into the training (80%) and test (20%) cohort. Tumor images were three-dimensionally segmented to extract 1,672 radiomic features. Clinical features (age, gender, and smoking history) were added to build classification models together with radiomic features. Subsequently, the top-10 most relevant features were used to establish classifiers. For the classifying tasks including EGFR mutation, exon-19 deletion, and exon-21 L858R mutation, four logistic regression models were established for each task.
The training and test cohort consisted of 210 and 53 patients, respectively. Among the established models, the highest accuracy and sensitivity among the four models were 75.5% (61.7-86.2%) and 92.9% (76.5-99.1%) to classify EGFR mutation, respectively. The highest specificity values were 86.7% (69.3-96.2%) and 70.4% (49.8-86.3%) to classify exon-19 deletion and exon-21 L858R mutation, respectively.
CT radiomics can sensitively identify the presence of EGFR mutation, and increase the certainty of distinguishing exon-19 deletion and exon-21 L858R mutation in lung adenocarcinoma patients. CT radiomics may become a helpful non-invasive biomarker to select EGFR mutation patients for invasive sampling.
基于CT图像建立一种放射组学方法,以识别肺腺癌患者的表皮生长因子受体(EGFR)突变状态,并区分外显子19缺失和外显子21 L858R突变。
纳入263例术前行增强CT检查并进行分子检测的患者,随机分为训练组(80%)和测试组(20%)。对肿瘤图像进行三维分割,提取1672个放射组学特征。将临床特征(年龄、性别和吸烟史)与放射组学特征一起纳入构建分类模型。随后,使用前10个最相关的特征建立分类器。对于包括EGFR突变、外显子19缺失和外显子21 L858R突变的分类任务,每项任务建立四个逻辑回归模型。
训练组和测试组分别由210例和53例患者组成。在所建立的模型中,四个模型中对EGFR突变进行分类的最高准确率和灵敏度分别为75.5%(61.7-86.2%)和92.9%(76.5-99.1%)。对外显子19缺失和外显子21 L858R突变进行分类的最高特异性值分别为86.7%(69.3-96.2%)和70.4%(49.8-86.3%)。
CT放射组学可敏感地识别EGFR突变的存在,并提高区分肺腺癌患者外显子19缺失和外显子21 L858R突变的确定性。CT放射组学可能成为一种有用的非侵入性生物标志物,用于选择EGFR突变患者进行侵入性采样。