首页> 外文期刊>Bioinformatics >Differential variability improves the identification of cancer risk markers in DNA methylation studies profiling precursor cancer lesions
【24h】

Differential variability improves the identification of cancer risk markers in DNA methylation studies profiling precursor cancer lesions

机译:差异差异改善了在DNA甲基化研究中对前体癌症病变进行分析的癌症风险标志物的鉴定

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Motivation: The standard paradigm in omic disciplines has been to identify biologically relevant biomarkers using statistics that reflect differences in mean levels of a molecular quantity such as mRNA expression or DNA methylation. Recently, however, it has been proposed that differential epigenetic variability may mark genes that contribute to the risk of complex genetic diseases like cancer and that identification of risk and early detection markers may therefore benefit from statistics based on differential variability. Results: Using four genome-wide DNA methylation datasets totalling 311 epithelial samples and encompassing all stages of cervical carcinogenesis, we here formally demonstrate that differential variability, as a criterion for selecting DNA methylation features, can identify cancer risk markers more reliably than statistics based on differences in mean methylation. We show that differential variability selects features with heterogeneous outlier methylation profiles and that these play a key role in the early stages of carcinogenesis. Moreover, differentially variable features identified in precursor non-invasive lesions exhibit significantly increased enrichment for developmental genes compared with differentially methylated sites. Conversely, differential variability does not add predictive value in cancer studies profiling invasive tumours or whole-blood tissue. Finally, we incorporate the differential variability feature selection step into a novel adaptive index prediction algorithm called EVORA (epigenetic variable outliers for risk prediction analysis), and demonstrate that EVORA compares favourably to powerful prediction algorithms based on differential methylation statistics. Conclusions: Statistics based on differential variability improve the detection of cancer risk markers in the context of DNA methylation studies profiling epithelial preinvasive neoplasias. We present a novel algorithm (EVORA) which could be used for prediction and diagnosis of precursor epithelial cancer lesions.
机译:动机:眼科学科的标准范例是使用能够反映平均分子水平差异(例如mRNA表达或DNA甲基化)的统计数据来识别生物学相关的生物标记。然而,近来,已经提出差异表观遗传变异性可以标记有助于复杂遗传疾病如癌症的风险的基因,因此,风险和早期检测标记的鉴定可以受益于基于差异变异性的统计。结果:使用总共311个上皮样品的四个全基因组DNA甲基化数据集,涵盖宫颈癌变的所有阶段,我们在这里正式证明,差异变异性作为选择DNA甲基化特征的标准,比基于统计的统计数据更可靠地识别癌症风险标志物平均甲基化差异。我们表明差异变异性选择具有异质离群甲基化配置文件的功能,并且这些在癌发生的早期阶段起着关键作用。此外,与差异甲基化位点相比,在前体非侵入性病变中鉴定出的差异变量特征显着增加了发育基因的富集。相反,在对浸润性肿瘤或全血组织进行分析的癌症研究中,差异性差异并没有增加预测价值。最后,我们将差异可变性特征选择步骤纳入了一种新的自适应指数预测算法EVORA(用于风险预测分析的表观遗传离群值),并证明EVORA与基于差异甲基化统计数据的强大预测算法相比具有优势。结论:基于差异变异性的统计数据可改善DNA甲基化研究(对上皮性浸润前肿瘤的形成)的背景,从而改善癌症风险标志物的检测。我们提出了一种新的算法(EVORA),可用于预测和诊断前体上皮癌病变。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号