Lineberger Comprehensive Cancer Center, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
J Mol Diagn. 2013 Jul;15(4):485-97. doi: 10.1016/j.jmoldx.2013.03.007. Epub 2013 May 20.
Lung cancer histologic diagnosis is clinically relevant because there are histology-specific treatment indications and contraindications. Histologic diagnosis can be challenging owing to tumor characteristics, and it has been shown to have less-than-ideal agreement among pathologists reviewing the same specimens. Microarray profiling studies using frozen specimens have shown that histologies exhibit different gene expression trends; however, frozen specimens are not amenable to routine clinical application. Herein, we developed a gene expression-based predictor of lung cancer histology for FFPE specimens, which are routinely available in clinical settings. Genes predictive of lung cancer histologies were derived from published cohorts that had been profiled by microarrays. Expression of these genes was measured by quantitative RT-PCR (RT-qPCR) in a cohort of patients with FFPE lung cancer. A histology expression predictor (HEP) was developed using RT-qPCR expression data for adenocarcinoma, carcinoid, small cell carcinoma, and squamous cell carcinoma. In cross-validation, the HEP exhibited mean accuracy of 84% and κ = 0.77. In separate independent validation sets, the HEP was compared with pathologist diagnoses on the same tumor block specimens, and the HEP yielded similar accuracy and precision as the pathologists. The HEP also exhibited good performance in specimens with low tumor cellularity. Therefore, RT-qPCR gene expression from FFPE specimens can be effectively used to predict lung cancer histology.
肺癌的组织学诊断在临床上具有重要意义,因为不同的组织学类型具有特定的治疗适应证和禁忌证。由于肿瘤的特征,组织学诊断具有一定的挑战性,而且已经证明同一批标本由不同病理学家进行复查时,其诊断结果的一致性较差。利用冷冻标本进行的微阵列分析研究表明,不同的组织学类型具有不同的基因表达趋势;然而,冷冻标本并不适合常规的临床应用。在此,我们针对 FFPE 标本开发了一种基于基因表达的肺癌组织学预测方法,FFPE 标本在临床环境中是常规使用的。用于预测肺癌组织学的基因是从经过微阵列分析的已发表队列中获得的。通过对一组 FFPE 肺癌患者的标本进行定量 RT-PCR(RT-qPCR)测量这些基因的表达。使用腺癌、类癌、小细胞癌和鳞状细胞癌的 RT-qPCR 表达数据来开发组织学表达预测器(HEP)。在交叉验证中,HEP 的平均准确性为 84%,κ 值为 0.77。在单独的独立验证组中,HEP 与病理学家对同一肿瘤块标本的诊断进行了比较,HEP 的准确性和精度与病理学家相当。HEP 在肿瘤细胞数量较低的标本中也表现出良好的性能。因此,FFPE 标本的 RT-qPCR 基因表达可有效用于预测肺癌的组织学类型。