| Literature DB >> 27449045 |
Zibo Li1, Xinwu Guo2, Lili Tang3, Limin Peng2, Ming Chen2, Xipeng Luo2, Shouman Wang3, Zhi Xiao3, Zhongping Deng2,4,5, Lizhong Dai2,4,5, Kun Xia1, Jun Wang6.
Abstract
Circulating cell-free DNA (cfDNA) has been considered as a potential biomarker for non-invasive cancer detection. To evaluate the methylation levels of six candidate genes (EGFR, GREM1, PDGFRB, PPM1E, SOX17, and WRN) in plasma cfDNA as biomarkers for breast cancer early detection, quantitative analysis of the promoter methylation of these genes from 86 breast cancer patients and 67 healthy controls was performed by using microfluidic-PCR-based target enrichment and next-generation bisulfite sequencing technology. The predictive performance of different logistic models based on methylation status of candidate genes was investigated by means of the area under the ROC curve (AUC) and odds ratio (OR) analysis. Results revealed that EGFR, PPM1E, and 8 gene-specific CpG sites showed significantly hypermethylation in cancer patients' plasma and significantly associated with breast cancer (OR ranging from 2.51 to 9.88). The AUC values for these biomarkers were ranging from 0.66 to 0.75. Combinations of multiple hypermethylated genes or CpG sites substantially improved the predictive performance for breast cancer detection. Our study demonstrated the feasibility of quantitative measurement of candidate gene methylation in cfDNA by using microfluidic-PCR-based target enrichment and bisulfite next-generation sequencing, which is worthy of further validation and potentially benefits a broad range of applications in clinical oncology practice. Quantitative analysis of methylation pattern of plasma cfDNA by next-generation sequencing might be a valuable non-invasive tool for early detection of breast cancer.Entities:
Keywords: Breast cancer; Cell-free DNA; Methylation; Microfludic PCR; Next-generation sequencing; Plasma
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Year: 2016 PMID: 27449045 DOI: 10.1007/s13277-016-5190-z
Source DB: PubMed Journal: Tumour Biol ISSN: 1010-4283