肿瘤相关自身抗体检测在中国人群肺癌早期检测中的诊断价值:一项前瞻性、观察性和多中心临床试验方案

Lin Tong , Jiayuan Sun , Xiaoju Zhang , Di Ge , Yimin Yang , Jian Zhou , Dong Wang , Xin Hu , Hao Liu , Chunxue Bai
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引用次数: 1

摘要

肺癌是癌症死亡的主要原因。尽管靶向治疗和程序性细胞死亡蛋白1 (PD-1)阻断已经取得了很大进展,但5年生存率仍然很低。在早期阶段诊断肺癌是提高生存率的最有效方法。肿瘤相关自身抗体(Tumor associated autoantibodies, TAAb)已被证明是一种很有前景的创新型肺癌生物标志物。我们旨在通过一项多中心前瞻性观察性临床试验,综合评价taab在肺癌特别是早期患者检测中的敏感性、特异性和准确性,筛选出对中国人群最具检测价值的新型taab组合。我们的目标是从三个临床中心招募1400名参与者,并分为两个队列。一组为新病理确诊的肺癌患者作为病例组,另一组为良性结节患者、匹配健康对照者及其他肺部良性疾病患者作为对照组。病例和对照组随机分布到训练集或验证集。检测血浆中14种候选自身抗体的水平。采用蒙特卡罗模拟退火方法建立了一个自身抗体的复合面板,以区分训练集中匹配的肺癌病例和对照组。新开发的自身抗体面板在验证集中进行敏感性,特异性和准确性测试。这是第一个也是最大的临床试验,旨在开发一种专门为中国人检测肺癌的新型自身抗体面板。我们进行了一项多中心、前瞻性、观察性研究,以寻找一组新的自身抗体标志物,以帮助中国人群肺癌的诊断和肺结节的特征。该结果可能有助于为临床医生提供肺癌早期发现和肺结节管理的循证建议。该研究已在ClinicalTrials.gov注册(NCT04216511)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic value of tumor associated autoantibody panel in early detection of lung cancer in Chinese population: Protocol for a prospective, observational, and multicenter clinical trial

Lung cancer is the leading cause of cancer deaths. Although targeted therapies and programmed cell death protein 1 (PD-1) blockade have offered great advances, five-year survival rates remained low. Diagnosis of lung cancer at an earlier stage is the most efficient approach to improve survival. Tumor associated autoantibodies (TAAb) have been proven a promising innovative biomarker of lung cancer. We aimed to comprehensively evaluate the sensitivity, specificity, and accuracy of TAAbs in lung cancer detection, especially in early-stage patients, through a multicenter prospective observational clinical trial, and to screen out the novel combination of TAAbs with the best detection value for Chinese population. We aimed to enroll 1,400 participants from three clinical centers and divide into two cohorts. One cohort is participants with newly pathologically confirmed lung cancer as the case cohort, and the other is participants with benign nodules, matched healthy controls and other benign lung diseases as the control cohort. Cases and controls were randomly distributed into training or validation set. The level of 14 autoantibody candidates in their plasma were detected. A Monte-Carlo Simulated Annealing method was implemented to develop a composite panel of autoantibodies to distinguish between matched lung cancer cases and controls in the training set. The newly developed autoantibody panel was tested in the validation set for sensitivity, specificity and accuracy. This is the first and largest clinical trial designed to develop a novel autoantibody panel for lung cancer detection specifically for Chinese people. We performed a multicenter, prospective, observational study to find a novel panel of autoantibody markers that can help the diagnosis of lung cancer and the characterization of pulmonary nodules in Chinese population. The results may help to provide evidence-based recommendations to clinicians for lung cancer early detection and pulmonary nodule management. This study is registered in the ClinicalTrials.gov (NCT04216511).

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