Suppr超能文献

利用基因座特异性表观遗传异质性提高基于血液的 DNA 甲基化生物标志物的性能。

Leveraging locus-specific epigenetic heterogeneity to improve the performance of blood-based DNA methylation biomarkers.

机构信息

Translational Functional Genomics Branch, National Human Genome Research Institute, National Institutes of Health, Bethesda, MD, 20892, USA.

Institute for NanoBioTechnology, Johns Hopkins University, Baltimore, MD, 21218, USA.

出版信息

Clin Epigenetics. 2020 Oct 20;12(1):154. doi: 10.1186/s13148-020-00939-w.

Abstract

BACKGROUND

Variation in intercellular methylation patterns can complicate the use of methylation biomarkers for clinical diagnostic applications such as blood-based cancer testing. Here, we describe development and validation of a methylation density binary classification method called EpiClass (available for download at https://github.com/Elnitskilab/EpiClass ) that can be used to predict and optimize the performance of methylation biomarkers, particularly in challenging, heterogeneous samples such as liquid biopsies. This approach is based upon leveraging statistical differences in single-molecule sample methylation density distributions to identify ideal thresholds for sample classification.

RESULTS

We developed and tested the classifier using reduced representation bisulfite sequencing (RRBS) data derived from ovarian carcinoma tissue DNA and controls. We used these data to perform in silico simulations using methylation density profiles from individual epiallelic copies of ZNF154, a genomic locus known to be recurrently methylated in numerous cancer types. From these profiles, we predicted the performance of the classifier in liquid biopsies for the detection of epithelial ovarian carcinomas (EOC). In silico analysis indicated that EpiClass could be leveraged to better identify cancer-positive liquid biopsy samples by implementing precise thresholds with respect to methylation density profiles derived from circulating cell-free DNA (cfDNA) analysis. These predictions were confirmed experimentally using DREAMing to perform digital methylation density analysis on a cohort of low volume (1-ml) plasma samples obtained from 26 EOC-positive and 41 cancer-free women. EpiClass performance was then validated in an independent cohort of 24 plasma specimens, derived from a longitudinal study of 8 EOC-positive women, and 12 plasma specimens derived from 12 healthy women, respectively, attaining a sensitivity/specificity of 91.7%/100.0%. Direct comparison of CA-125 measurements with EpiClass demonstrated that EpiClass was able to better identify EOC-positive women than standard CA-125 assessment. Finally, we used independent whole genome bisulfite sequencing (WGBS) datasets to demonstrate that EpiClass can also identify other cancer types as well or better than alternative methylation-based classifiers.

CONCLUSIONS

Our results indicate that assessment of intramolecular methylation density distributions calculated from cfDNA facilitates the use of methylation biomarkers for diagnostic applications. Furthermore, we demonstrated that EpiClass analysis of ZNF154 methylation was able to outperform CA-125 in the detection of etiologically diverse ovarian carcinomas, indicating broad utility of ZNF154 for use as a biomarker of ovarian cancer.

摘要

背景

细胞间甲基化模式的变异会使基于血液的癌症检测等临床诊断应用中的甲基化生物标志物的使用复杂化。在这里,我们描述了一种称为 EpiClass 的甲基化密度二进制分类方法的开发和验证(可在 https://github.com/Elnitskilab/EpiClass 上下载),该方法可用于预测和优化甲基化生物标志物的性能,特别是在具有挑战性的、异质的样本中,如液体活检。这种方法基于利用单分子样本甲基化密度分布的统计学差异来确定样本分类的理想阈值。

结果

我们使用来自卵巢癌组织 DNA 和对照的 RRBS 数据开发和测试了分类器。我们使用这些数据,通过对 ZNF154 中单个等位基因拷贝的甲基化密度分布进行模拟,从理论上预测了分类器在液体活检中对上皮性卵巢癌 (EOC) 的检测性能。该基因座在许多癌症类型中都存在反复甲基化。从这些图谱中,我们预测了基于循环无细胞 DNA (cfDNA) 分析的甲基化密度图谱,利用 EpiClass 可以更好地识别癌症阳性的液体活检样本。通过实施与从循环 cfDNA 分析中得出的甲基化密度图谱相关的精确阈值,对 DREAMing 进行数字甲基化密度分析的模拟分析证实了这一预测。使用从 26 名 EOC 阳性和 41 名癌症阴性女性中获得的低体积(1 毫升)血浆样本的队列,使用 DREAMing 进行数字甲基化密度分析,对这些预测进行了实验验证。然后,在一个来自 8 名 EOC 阳性女性的纵向研究的 24 个血浆样本和 12 个健康女性的 12 个血浆样本的独立队列中验证了 EpiClass 的性能,分别获得了 91.7%/100.0%的敏感性/特异性。EpiClass 与 CA-125 测量值的直接比较表明,EpiClass 能够比标准的 CA-125 评估更好地识别 EOC 阳性女性。最后,我们使用独立的全基因组亚硫酸氢盐测序 (WGBS) 数据集证明,EpiClass 也可以识别其他癌症类型,或者比其他基于甲基化的分类器更好地识别。

结论

我们的研究结果表明,对来自 cfDNA 的分子内甲基化密度分布的评估有助于基于血液的癌症检测等诊断应用中的甲基化生物标志物的使用。此外,我们证明了 EpiClass 对 ZNF154 甲基化的分析能够优于 CA-125 在病因多样化的卵巢癌中的检测,这表明 ZNF154 作为卵巢癌生物标志物具有广泛的应用潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b8dc/7574234/b5e1a53546b4/13148_2020_939_Fig1_HTML.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验