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通过宫颈刮片的 DNA 甲基化检测卵巢癌。

Ovarian cancer detection by DNA methylation in cervical scrapings.

机构信息

Department of Obstetrics and Gynecology, School of Medicine, College of Medicine, Taipei Medical University, Taipei, Taiwan.

Department of Obstetrics and Gynecology, Wan Fang Hospital, Taipei Medical University, Taipei, Taiwan.

出版信息

Clin Epigenetics. 2019 Nov 27;11(1):166. doi: 10.1186/s13148-019-0773-3.

Abstract

BACKGROUND

Ovarian cancer (OC) is the most lethal gynecological cancer, worldwide, largely due to its vague and nonspecific early stage symptoms, resulting in most tumors being found at advanced stages. Moreover, due to its relative rarity, there are currently no satisfactory methods for OC screening, which remains a controversial and cost-prohibitive issue. Here, we demonstrate that Papanicolaou test (Pap test) cervical scrapings, instead of blood, can reveal genetic/epigenetic information for OC detection, using specific and sensitive DNA methylation biomarkers.

RESULTS

We analyzed the methylomes of tissues (50 OC tissues versus 6 normal ovarian epithelia) and cervical scrapings (5 OC patients versus 10 normal controls), and integrated public methylomic datasets, including 79 OC tissues and 6 normal tubal epithelia. Differentially methylated genes were further classified by unsupervised hierarchical clustering, and each candidate biomarker gene was verified in both OC tissues and cervical scrapings by either quantitative methylation-specific polymerase chain reaction (qMSP) or bisulfite pyrosequencing. A risk-score by logistic regression was generated for clinical application. One hundred fifty-one genes were classified into four clusters, and nine candidate hypermethylated genes from these four clusters were selected. Among these, four genes fulfilled our selection criteria and were validated in training and testing set, respectively. The OC detection accuracy was demonstrated by area under the receiver operating characteristic curves (AUCs) in 0.80-0.83 of AMPD3, 0.79-0.85 of AOX1, 0.78-0.88 of NRN1, and 0.82-0.85 of TBX15. From this, we found OC-risk score, equation generated by logistic regression in training set and validated an OC-associated panel comprising AMPD3, NRN1, and TBX15, reaching a sensitivity of 81%, specificity of 84%, and OC detection accuracy of 0.91 (95% CI, 0.82-1) in testing set.

CONCLUSIONS

Ovarian cancer detection from cervical scrapings is feasible, using particularly promising epigenetic biomarkers such as AMPD3/NRN1/TBX15. Further validation is warranted.

摘要

背景

卵巢癌(OC)是全球最致命的妇科癌症,主要原因是其早期症状模糊且非特异性,导致大多数肿瘤在晚期才被发现。此外,由于其相对罕见,目前还没有令人满意的 OC 筛查方法,这仍然是一个有争议且成本高昂的问题。在这里,我们证明巴氏涂片(Pap 测试)宫颈刮片而不是血液,可以通过特定且敏感的 DNA 甲基化生物标志物揭示 OC 检测的遗传/表观遗传信息。

结果

我们分析了组织(50 个 OC 组织与 6 个正常卵巢上皮)和宫颈刮片(5 个 OC 患者与 10 个正常对照)的甲基组,并整合了公共甲基组数据集,包括 79 个 OC 组织和 6 个正常输卵管上皮。通过无监督层次聚类进一步对差异甲基化基因进行分类,并用定量甲基化特异性聚合酶链反应(qMSP)或亚硫酸氢盐焦磷酸测序分别在 OC 组织和宫颈刮片中验证每个候选生物标志物基因。通过逻辑回归生成用于临床应用的风险评分。151 个基因被分为四个聚类,从这四个聚类中选择了 9 个候选高甲基化基因。其中,有 4 个基因满足我们的选择标准,并分别在训练集和测试集中得到验证。AMP3、AOX1、NRN1 和 TBX15 的 AUC 在 0.80-0.83 之间,验证了 OC 的检测准确性。从这里,我们发现 OC 风险评分、训练集中逻辑回归生成的方程和验证的 OC 相关面板,包括 AMPD3、NRN1 和 TBX15,在测试集中的敏感性为 81%,特异性为 84%,OC 检测准确性为 0.91(95%CI,0.82-1)。

结论

从宫颈刮片中检测卵巢癌是可行的,使用了特别有前途的表观遗传生物标志物,如 AMPD3/NRN1/TBX15。需要进一步验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/edad/6881994/d7f1e6d9adc6/13148_2019_773_Fig1_HTML.jpg

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