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基于DNA甲基化的肾细胞癌预后亚组分类与鉴定

DNA methylation-based classification and identification of renal cell carcinoma prognosis-subgroups.

作者信息

Chen Wenbiao, Zhuang Jia, Wang Peizhong Peter, Jiang Jingjing, Lin Chenhong, Zeng Ping, Liang Yan, Zhang Xujun, Dai Yong, Diao Hongyan

机构信息

1State Key Laboratory for Diagnosis and Treatment of Infectious Diseases, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, The First Affiliated Hospital, College of Medicine, Zhejiang University, 79 Qing Chun Road, Hangzhou, China.

3Department of Urinary Surgery, Puning People's Hospital, Puning People's Hospital Affiliated To Southern Medical University, 30 Liusha Avenue, Jieyang, Guangdong China.

出版信息

Cancer Cell Int. 2019 Jul 16;19:185. doi: 10.1186/s12935-019-0900-4. eCollection 2019.

Abstract

BACKGROUND

Renal cell carcinoma (RCC) is the most common kidney cancer and includes several molecular and histological subtypes with different clinical characteristics. The combination of DNA methylation and gene expression data can improve the classification of tumor heterogeneity, by incorporating differences at the epigenetic level and clinical features.

METHODS

In this study, we identified the prognostic methylation and constructed specific prognosis-subgroups based on the DNA methylation spectrum of RCC from the TCGA database.

RESULTS

Significant differences in DNA methylation profiles among the seven subgroups were revealed by consistent clustering using 3389 CpGs that indicated that were significant differences in prognosis. The specific DNA methylation patterns reflected differentially in the clinical index, including TNM classification, pathological grade, clinical stage, and age. In addition, 437 CpGs corresponding to 477 genes of 151 samples were identified as specific hyper/hypomethylation sites for each specific subgroup. A total of 277 and 212 genes corresponding to DNA methylation at promoter sites were enriched in transcription factor of GKLF and RREB-1, respectively. Finally, Bayesian network classifier with specific methylation sites was constructed and was used to verify the test set of prognoses into DNA methylation subgroups, which was found to be consistent with the classification results of the train set. DNA methylation-based classification can be used to identify the distinct subtypes of renal cell carcinoma.

CONCLUSIONS

This study shows that DNA methylation-based classification is highly relevant for future diagnosis and treatment of renal cell carcinoma as it identifies the prognostic value of each epigenetic subtype.

摘要

背景

肾细胞癌(RCC)是最常见的肾癌类型,包括几种具有不同临床特征的分子和组织学亚型。DNA甲基化和基因表达数据的结合可以通过纳入表观遗传水平的差异和临床特征来改善肿瘤异质性的分类。

方法

在本研究中,我们从TCGA数据库中基于RCC的DNA甲基化谱鉴定了预后甲基化并构建了特定的预后亚组。

结果

使用3389个CpG进行一致性聚类,揭示了七个亚组之间DNA甲基化谱的显著差异,这表明预后存在显著差异。特定的DNA甲基化模式在临床指标中有所不同,包括TNM分类、病理分级、临床分期和年龄。此外,151个样本中与477个基因对应的437个CpG被鉴定为每个特定亚组的特定高甲基化/低甲基化位点。启动子位点DNA甲基化对应的总共277个和212个基因分别在GKLF和RREB-1转录因子中富集。最后,构建了具有特定甲基化位点的贝叶斯网络分类器,并用于将预后测试集验证为DNA甲基化亚组,发现其与训练集的分类结果一致。基于DNA甲基化的分类可用于识别肾细胞癌的不同亚型。

结论

本研究表明,基于DNA甲基化的分类与肾细胞癌未来的诊断和治疗高度相关,因为它确定了每个表观遗传亚型的预后价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fb83/6636124/3b540d086b3f/12935_2019_900_Fig1_HTML.jpg

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