Christensen Brock C, Marsit Carmen J, Houseman E Andres, Godleski John J, Longacker Jennifer L, Zheng Shichun, Yeh Ru-Fang, Wrensch Margaret R, Wiemels Joseph L, Karagas Margaret R, Bueno Raphael, Sugarbaker David J, Nelson Heather H, Wiencke John K, Kelsey Karl T
Department of Community Health, Center for Environmental Health and Technology, Brown University, Providence, Rhode Island 02903, USA.
Cancer Res. 2009 Aug 1;69(15):6315-21. doi: 10.1158/0008-5472.CAN-09-1073. Epub 2009 Jul 28.
Pathologic differentiation of tissue of origin in tumors found in the lung can be challenging, with differentiation of mesothelioma and lung adenocarcinoma emblematic of this problem. Indeed, proper classification is essential for determination of treatment regimen for these diseases, making accurate and early diagnosis critical. Here, we investigate the potential of epigenetic profiles of lung adenocarcinoma, mesothelioma, and nonmalignant pulmonary tissues (n = 285) as differentiation markers in an analysis of DNA methylation at 1413 autosomal CpG loci associated with 773 cancer-related genes. Using an unsupervised recursively partitioned mixture modeling technique for all samples, the derived methylation profile classes were significantly associated with sample type (P < 0.0001). In a similar analysis restricted to tumors, methylation profile classes significantly predicted tumor type (P < 0.0001). Random forests classification of CpG methylation of tumors--which splits the data into training and test sets--accurately differentiated mesothelioma from lung adenocarcinoma over 99% of the time (P < 0.0001). In a locus-by-locus comparison of CpG methylation between tumor types, 1266 CpG loci had significantly different methylation between tumors following correction for multiple comparisons (Q < 0.05); 61% had higher methylation in adenocarcinoma. Using the CpG loci with significant differential methylation in a pathway analysis revealed significant enrichment of methylated gene-loci in Cell Cycle Regulation, DNA Damage Response, PTEN Signaling, and Apoptosis Signaling pathways in lung adenocarcinoma when compared with mesothelioma. Methylation profile-based differentiation of lung adenocarcinoma and mesothelioma is highly accurate, informs on the distinct etiologies of these diseases, and holds promise for clinical application.
确定肺部肿瘤的组织起源病理分化具有挑战性,间皮瘤和肺腺癌的分化就是这一问题的典型代表。事实上,正确分类对于确定这些疾病的治疗方案至关重要,因此准确早期诊断至关重要。在此,我们研究了肺腺癌、间皮瘤和非恶性肺组织(n = 285)的表观遗传谱作为分化标志物的潜力,分析了与773个癌症相关基因相关的1413个常染色体CpG位点的DNA甲基化情况。对所有样本使用无监督递归划分混合建模技术,得出的甲基化谱类别与样本类型显著相关(P < 0.0001)。在仅限于肿瘤的类似分析中,甲基化谱类别显著预测肿瘤类型(P < 0.0001)。对肿瘤的CpG甲基化进行随机森林分类(将数据分为训练集和测试集),在超过99%的情况下能准确区分间皮瘤和肺腺癌(P < 0.0001)。在肿瘤类型之间逐位点比较CpG甲基化时,经过多重比较校正后,1266个CpG位点在肿瘤之间的甲基化存在显著差异(Q < 0.05);61%在腺癌中甲基化程度更高。在通路分析中使用具有显著差异甲基化的CpG位点,结果显示与间皮瘤相比,肺腺癌中甲基化基因位点在细胞周期调控、DNA损伤反应、PTEN信号传导和凋亡信号传导通路中显著富集。基于甲基化谱的肺腺癌和间皮瘤分化高度准确,揭示了这些疾病不同的病因,具有临床应用前景。