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全血基因表达分类器可区分低剂量 CT 检测到的良恶性肺结节。

A Gene Expression Classifier from Whole Blood Distinguishes Benign from Malignant Lung Nodules Detected by Low-Dose CT.

机构信息

The Wistar Institute, Philadelphia, Pennsylvania.

Roswell Park Comprehensive Cancer Center Buffalo, New York.

出版信息

Cancer Res. 2019 Jan 1;79(1):263-273. doi: 10.1158/0008-5472.CAN-18-2032. Epub 2018 Nov 28.

Abstract

Low-dose CT (LDCT) is widely accepted as the preferred method for detecting pulmonary nodules. However, the determination of whether a nodule is benign or malignant involves either repeated scans or invasive procedures that sample the lung tissue. Noninvasive methods to assess these nodules are needed to reduce unnecessary invasive tests. In this study, we have developed a pulmonary nodule classifier (PNC) using RNA from whole blood collected in RNA-stabilizing PAXgene tubes that addresses this need. Samples were prospectively collected from high-risk and incidental subjects with a positive lung CT scan. A total of 821 samples from 5 clinical sites were analyzed. Malignant samples were predominantly stage 1 by pathologic diagnosis and 97% of the benign samples were confirmed by 4 years of follow-up. A panel of diagnostic biomarkers was selected from a subset of the samples assayed on Illumina microarrays that achieved a ROC-AUC of 0.847 on independent validation. The microarray data were then used to design a biomarker panel of 559 gene probes to be validated on the clinically tested NanoString nCounter platform. RNA from 583 patients was used to assess and refine the NanoString PNC (nPNC), which was then validated on 158 independent samples (ROC-AUC = 0.825). The nPNC outperformed three clinical algorithms in discriminating malignant from benign pulmonary nodules ranging from 6-20 mm using just 41 diagnostic biomarkers. Overall, this platform provides an accurate, noninvasive method for the diagnosis of pulmonary nodules in patients with non-small cell lung cancer. SIGNIFICANCE: These findings describe a minimally invasive and clinically practical pulmonary nodule classifier that has good diagnostic ability at distinguishing benign from malignant pulmonary nodules.

摘要

低剂量 CT(LDCT)被广泛认为是检测肺结节的首选方法。然而,确定结节是良性还是恶性需要进行重复扫描或有创操作以获取肺组织样本。需要非侵入性方法来评估这些结节,以减少不必要的有创检查。在这项研究中,我们开发了一种使用保存在 PAXgene 管中的全血 RNA 进行检测的肺结节分类器(PNC),以满足这一需求。前瞻性地从 CT 扫描阳性的高危和偶发性患者中采集样本。共分析了来自 5 个临床地点的 821 个样本。恶性样本主要根据病理诊断为 1 期,97%的良性样本通过 4 年随访得到确认。从部分样本中选择了一组诊断生物标志物进行 Illumina 微阵列分析,在独立验证中获得了 0.847 的 ROC-AUC。然后使用微阵列数据设计了一个 559 个基因探针的生物标志物面板,在经过临床测试的 NanoString nCounter 平台上进行验证。使用 583 名患者的 RNA 来评估和改进 NanoString PNC(nPNC),然后在 158 个独立样本上进行验证(ROC-AUC=0.825)。nPNC 在使用仅 41 个诊断生物标志物区分 6-20mm 大小的良恶性肺结节方面优于三种临床算法。总体而言,该平台为非小细胞肺癌患者的肺结节诊断提供了一种准确、非侵入性的方法。

意义

这些发现描述了一种微创且具有临床实用性的肺结节分类器,它在区分良恶性肺结节方面具有良好的诊断能力。

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