Department of Pulmonary Medicine, Zhongshan Hospital, Fudan University, Shanghai, China.
Chinese Alliance Against Lung Cancer, China.
Cancer. 2018 Jan 15;124(2):262-270. doi: 10.1002/cncr.31020. Epub 2017 Sep 20.
The authors built a model for lung cancer diagnosis previously based on the blood biomarkers progastrin-releasing peptide (ProGRP), carcinoembryonic antigen (CEA), squamous cell carcinoma antigen (SCC), and cytokeratin 19 fragment (CYFRA21-1). In the current study, they examined whether modification of the model to include relevant clinical information, risk factors, and low-dose chest computed tomography screening would improve the performance of the biomarker panel in large cohorts of Chinese adults.
The current study was a large-scale multicenter study (ClinicalTrials.gov identifier NCT01928836) performed in a Chinese population. A total of 715 participants were enrolled from 5 regional centers in Beijing, Henan, Nanjing, Shanghai, and Chongqing between October 2012 and February 2014. Serum biomarkers ProGRP, CEA, SCC, and CYFRA21-1 were analyzed on the ARCHITECT i2000SR. Relevant clinical information was collected and used to develop a patient risk model and a nodule risk model.
The resulting patient risk model had an area under the receiver operating characteristic (ROC) curve of 0.7037 in the training data set and 0.7190 in the validation data set. The resulting nodule risk model had an area under the ROC curve of 0.9151 in the training data set and 0.5836 in the validation data set. Moreover, the nodule risk model had a relatively higher area under the ROC curve (0.9151 vs 0.8360; P = 0.001) compared with the American College of Chest Physician model in patients with lung nodules.
Both the patient risk model and the nodule risk model, developed for the early diagnosis of lung cancer, demonstrated excellent discrimination, allowing for the stratification of patients with different levels of lung cancer risk. These new models are applicable in high-risk Chinese populations. Cancer 2018;124:262-70. © 2017 American Cancer Society.
作者先前基于血液生物标志物胃泌素释放肽前体(ProGRP)、癌胚抗原(CEA)、鳞状细胞癌抗原(SCC)和细胞角蛋白 19 片段(CYFRA21-1)构建了一个肺癌诊断模型。在当前的研究中,他们研究了对模型进行修改以纳入相关临床信息、风险因素和低剂量胸部 CT 筛查是否会提高生物标志物组合在大量中国成年人队列中的性能。
本研究为一项大规模多中心研究(ClinicalTrials.gov 标识符 NCT01928836),在中国人群中进行。2012 年 10 月至 2014 年 2 月期间,从北京、河南、南京、上海和重庆的 5 个地区中心共招募了 715 名参与者。血清生物标志物 ProGRP、CEA、SCC 和 CYFRA21-1 均在 ARCHITECT i2000SR 上进行分析。收集相关临床信息,用于开发患者风险模型和结节风险模型。
在训练数据集中,所得患者风险模型的受试者工作特征(ROC)曲线下面积为 0.7037,在验证数据集中为 0.7190。所得结节风险模型在训练数据集中的 ROC 曲线下面积为 0.9151,在验证数据集中为 0.5836。此外,与美国胸科医师学会模型相比,结节风险模型在肺结节患者中具有更高的 ROC 曲线下面积(0.9151 比 0.8360;P = 0.001)。
为早期诊断肺癌而开发的患者风险模型和结节风险模型均具有出色的判别能力,能够对具有不同肺癌风险水平的患者进行分层。这些新模型适用于高危中国人群。癌症 2018;124:262-70。©2017 美国癌症协会。