Chen Xiuyuan, Qi Qingyi, Sun Zewen, Wang Dawei, Sun Jinlong, Tan Weixiong, Liu Xianping, Liu Taorui, Hong Nan, Yang Fan
Department of Thoracic Surgery, Peking University People's Hospital, Beijing, China.
Department of Radiology, Peking University People's Hospital, Beijing, China.
Ann Transl Med. 2022 Jan;10(2):33. doi: 10.21037/atm-21-3231.
Almost every patient with lung cancer has multiple pulmonary nodules; however, the significance of nodule multiplicity in locally advanced non-small cell lung cancer (NSCLC) remains unclear.
We identified patients who had undergone surgical resection for stage I-III NSCLC at the Peking University People's Hospital from 2005 to 2018 for whom preoperative chest computed tomography (CT) scans were available. Deep learning-based artificial intelligence (AI) algorithms using convolutional neural networks (CNN) were applied to detect and classify pulmonary nodules (PNs). Maximally selected log-rank statistics were used to determine the optimal cutoff value of the total nodule number (TNN) for predicting survival.
A total of 33,410 PNs were detected by AI among the 2,126 participants. The median TNN detected per person was 12 [interquartile range (IQR) 7-20]. It was revealed that AI-detected TNN (analyzed as a continuous variable) was an independent prognostic factor for both recurrence-free survival (RFS) [hazard ratio (HR) 1.012, 95% confidence interval (CI): 1.002 to 1.022, P=0.021] and overall survival (OS) (HR 1.013, 95% CI: 1.002 to 1.025, P=0.021) in multivariate analyses of the stage III cohort. In contrast, AI-detected TNN was not significantly associated with survival in the stage I and II cohorts. In a survival tree analysis, rather than using traditional IIIA and IIIB classifications, the model grouped cases according to AI-detected TNN (lower . higher: log-rank P<0.001), which led to a more effective determination of survival rates in the stage III cohort.
The AI-detected TNN is significantly associated with survival rates in patients with surgically resected stage III NSCLC. A lower TNN detected on preoperative CT scans indicates a better prognosis for patients who have undergone complete surgical resection.
几乎每位肺癌患者都有多个肺结节;然而,在局部晚期非小细胞肺癌(NSCLC)中结节多发性的意义仍不明确。
我们确定了2005年至2018年期间在北京大学人民医院接受I-III期NSCLC手术切除且术前有胸部计算机断层扫描(CT)图像的患者。应用基于深度学习的人工智能(AI)算法,利用卷积神经网络(CNN)检测并分类肺结节(PNs)。采用最大选择对数秩统计量来确定预测生存的总结节数(TNN)的最佳截断值。
在2126名参与者中,AI共检测到33410个PNs。每人检测到的TNN中位数为12[四分位数间距(IQR)7-20]。结果显示,在III期队列的多变量分析中,AI检测到的TNN(作为连续变量分析)是无复发生存(RFS)[风险比(HR)1.012,95%置信区间(CI):1.002至1.022,P=0.021]和总生存(OS)(HR 1.013,95%CI:1.002至1.025,P=0.021)的独立预后因素。相比之下,AI检测到的TNN在I期和II期队列中与生存无显著关联。在生存树分析中,该模型并非使用传统的IIIA和IIIB分类,而是根据AI检测到的TNN对病例进行分组(低……高:对数秩P<0.001),这使得在III期队列中更有效地确定生存率。
AI检测到的TNN与接受手术切除的III期NSCLC患者的生存率显著相关。术前CT扫描检测到的TNN较低表明接受完全手术切除的患者预后较好。