Division of Cellular and Molecular Research, National Cancer Centre Singapore, 30 Hospital Boulevard, Singapore, 168583, Republic of Singapore.
DNA Diagnostic and Research Laboratory, KK Women's and Children's Hospital, 100 Bukit Timah Rd, Singapore, 229899, Singapore.
Clin Epigenetics. 2024 May 15;16(1):66. doi: 10.1186/s13148-024-01674-2.
There is an unmet need for precise biomarkers for early non-invasive breast cancer detection. Here, we aimed to identify blood-based DNA methylation biomarkers that are associated with breast cancer.
DNA methylation profiling was performed for 524 Asian Chinese individuals, comprising 256 breast cancer patients and 268 age-matched healthy controls, using the Infinium MethylationEPIC array. Feature selection was applied to 649,688 CpG sites in the training set. Predictive models were built by training three machine learning models, with performance evaluated on an independent test set. Enrichment analysis to identify transcription factors binding to regions associated with the selected CpG sites and pathway analysis for genes located nearby were conducted.
A methylation profile comprising 51 CpGs was identified that effectively distinguishes breast cancer patients from healthy controls achieving an AUC of 0.823 on an independent test set. Notably, it outperformed all four previously reported breast cancer-associated methylation profiles. Enrichment analysis revealed enrichment of genomic loci associated with the binding of immune modulating AP-1 transcription factors, while pathway analysis of nearby genes showed an overrepresentation of immune-related pathways.
This study has identified a breast cancer-associated methylation profile that is immune-related to potential for early cancer detection.
目前,人们迫切需要精准的生物标志物来实现早期非侵入性乳腺癌检测。本研究旨在寻找与乳腺癌相关的血液 DNA 甲基化生物标志物。
采用 Infinium MethylationEPIC 芯片,对 524 名亚洲中国人(包括 256 名乳腺癌患者和 268 名年龄匹配的健康对照者)进行 DNA 甲基化谱分析。在训练集中对 649688 个 CpG 位点进行特征选择。通过训练三种机器学习模型构建预测模型,并在独立测试集上评估性能。对与选定 CpG 位点相关的转录因子结合区域进行富集分析,并对附近基因进行通路分析。
发现了一个包含 51 个 CpG 的甲基化谱,可有效区分乳腺癌患者和健康对照者,在独立测试集中 AUC 为 0.823。值得注意的是,它优于之前报道的所有四种与乳腺癌相关的甲基化谱。富集分析显示,与免疫调节 AP-1 转录因子结合的基因组位点富集,而附近基因的通路分析显示免疫相关通路过度表达。
本研究确定了一种与乳腺癌相关的甲基化谱,与免疫相关,有用于早期癌症检测的潜力。