Department of Radiology, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, No. 1 Shuaifuyuan, Dongcheng District, Beijing, 100730, China.
4+4 MD Program, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, 100730, China.
Eur Radiol. 2021 Apr;31(4):2034-2047. doi: 10.1007/s00330-020-07331-5. Epub 2020 Nov 4.
To develop a nomogram to identify anaplastic lymphoma kinase (ALK) mutations in lung adenocarcinoma patients using clinical, CT, PET/CT, and histopathological features.
This retrospective study included 399 lung adenocarcinoma patients (129 ALK-rearranged patients and 270 ALK-negative patients) that were randomly divided into a training cohort and an internal validation cohort (4:1 ratio). Clinical factors, radiologist-defined CT features, maximum standard uptake values (SUVmax), and histopathological features were used to construct predictive models with stepwise backward-selection multivariate logistic regression (MLR). The models were then evaluated using the AUC. The integrated model was compared to the clinico-radiological model using the DeLong test to evaluate the role of histopathological features. An associated individualized nomogram was established.
The integrated model reached an AUC of 0.918 (95% CI, 0.886-0.950), sensitivity of 0.774, and specificity of 0.934 in the training cohort and an AUC of 0.857 (95% CI, 0.777-0.937), sensitivity of 0.739, and specificity of 0.810 in the validation cohort. The MLR analysis showed that younger age, never smoker, lymph node enlargement, the presence of cavity, high SUVmax, solid or micropapillary predominant histology subtype, and local invasiveness were strong and independent predictors of ALK rearrangements. The nomogram calculated the risk of harboring ALK mutation for lung adenocarcinoma patients and exhibited a good generalization ability.
Our study demonstrates that histopathological features added value to the imaging characteristics-based model. The nomogram with clinical, imaging, and histopathological features can serve as a supplementary non-invasive tool to evaluate the probability of ALK rearrangement in lung adenocarcinoma.
• The developed nomogram can accurately predict the probability of lung adenocarcinoma harboring ALK-fused gene. • Pathological analysis is important to predict ALK rearrangement in lung adenocarcinoma. • Lung adenocarcinoma with lepidic predominant growth pattern and TTF-1 negativity is unlikely to have ALK rearrangement.
利用临床、CT、PET/CT 和组织病理学特征,建立肺腺癌患者间变性淋巴瘤激酶(ALK)突变的列线图预测模型。
本回顾性研究纳入了 399 例肺腺癌患者(129 例 ALK 重排患者和 270 例 ALK 阴性患者),随机分为训练队列和内部验证队列(4:1 比例)。使用逐步向后选择多变量逻辑回归(MLR)构建包含临床因素、放射科定义的 CT 特征、最大标准摄取值(SUVmax)和组织病理学特征的预测模型。使用 AUC 评估模型。通过 DeLong 检验比较整合模型与临床-影像学模型,以评估组织病理学特征的作用。建立相关的个体化列线图。
在训练队列中,整合模型的 AUC 为 0.918(95%CI,0.886-0.950),敏感度为 0.774,特异度为 0.934;在验证队列中,AUC 为 0.857(95%CI,0.777-0.937),敏感度为 0.739,特异度为 0.810。MLR 分析表明,年龄较小、从不吸烟、淋巴结肿大、有空腔、高 SUVmax、实性或微乳头状为主的组织学亚型和局部侵袭性是 ALK 重排的强且独立的预测因素。该列线图计算了肺腺癌患者携带 ALK 突变的风险,具有良好的泛化能力。
本研究表明,组织病理学特征为基于影像学特征的模型提供了附加价值。包含临床、影像学和组织病理学特征的列线图可以作为一种辅助的非侵入性工具,用于评估肺腺癌中 ALK 重排的概率。
开发的列线图可以准确预测肺腺癌携带 ALK 融合基因的概率。
病理分析对于预测肺腺癌的 ALK 重排很重要。
具有贴壁样生长模式和 TTF-1 阴性的肺腺癌不太可能发生 ALK 重排。