Ye Maosong, Tong Lin, Zheng Xiaoxuan, Wang Hui, Zhou Haining, Zhu Xiaoli, Zhou Chengzhi, Zhao Peige, Wang Yan, Wang Qi, Bai Li, Cai Zhigang, Kong Feng-Ming Spring, Wang Yuehong, Li Yafei, Feng Mingxiang, Ye Xin, Yang Dawei, Liu Zilong, Zhang Quncheng, Wang Ziqi, Han Shuhua, Sun Lihong, Zhao Ningning, Yu Zubin, Zhang Juncheng, Zhang Xiaoju, Katz Ruth L, Sun Jiayuan, Bai Chunxue
Department of Pulmonary and Critical Care Medicine, Zhongshan Hospital, Fudan University, Shanghai, China.
Shanghai Respiratory Research Institute, Shanghai, China.
Front Oncol. 2022 Mar 2;12:853801. doi: 10.3389/fonc.2022.853801. eCollection 2022.
Lung cancer is the leading cause of cancer-related deaths worldwide and in China. Screening for lung cancer by low dose computed tomography (LDCT) can reduce mortality but has resulted in a dramatic rise in the incidence of indeterminate pulmonary nodules, which presents a major diagnostic challenge for clinicians regarding their underlying pathology and can lead to overdiagnosis. To address the significant gap in evaluating pulmonary nodules, we conducted a prospective study to develop a prediction model for individuals at intermediate to high risk of developing lung cancer. Univariate and multivariate logistic analyses were applied to the training cohort (n = 560) to develop an early lung cancer prediction model. The results indicated that a model integrating clinical characteristics (age and smoking history), radiological characteristics of pulmonary nodules (nodule diameter, nodule count, upper lobe location, malignant sign at the nodule edge, subsolid status), artificial intelligence analysis of LDCT data, and liquid biopsy achieved the best diagnostic performance in the training cohort (sensitivity 89.53%, specificity 81.31%, area under the curve [AUC] = 0.880). In the independent validation cohort (n = 168), this model had an AUC of 0.895, which was greater than that of the Mayo Clinic Model (AUC = 0.772) and Veterans' Affairs Model (AUC = 0.740). These results were significantly better for predicting the presence of cancer than radiological features and artificial intelligence risk scores alone. Applying this classifier prospectively may lead to improved early lung cancer diagnosis and early treatment for patients with malignant nodules while sparing patients with benign entities from unnecessary and potentially harmful surgery.
ChiCTR1900026233, URL: http://www.chictr.org.cn/showproj.aspx?proj=43370.
肺癌是全球及中国癌症相关死亡的主要原因。低剂量计算机断层扫描(LDCT)筛查肺癌可降低死亡率,但导致了肺结节的发生率急剧上升,这给临床医生对其潜在病理的诊断带来了重大挑战,并可能导致过度诊断。为填补评估肺结节方面的重大差距,我们开展了一项前瞻性研究,以建立一个针对肺癌中高风险个体的预测模型。对训练队列(n = 560)进行单因素和多因素逻辑分析,以建立早期肺癌预测模型。结果表明,一个整合临床特征(年龄和吸烟史)、肺结节的放射学特征(结节直径、结节数量、上叶位置、结节边缘恶性征象、亚实性状态)、LDCT数据的人工智能分析和液体活检的模型在训练队列中具有最佳诊断性能(敏感性89.53%,特异性81.31%,曲线下面积[AUC]=0.880)。在独立验证队列(n = 168)中,该模型的AUC为0.895,大于梅奥诊所模型(AUC = 0.772)和退伍军人事务部模型(AUC = 0.740)。这些结果在预测癌症存在方面明显优于单独的放射学特征和人工智能风险评分。前瞻性应用该分类器可能会改善早期肺癌诊断,并为恶性结节患者带来早期治疗,同时避免良性病变患者接受不必要的、可能有害的手术。
ChiCTR1900026233,网址:http://www.chictr.org.cn/showproj.aspx?proj=43370 。