基于遗传功能方法的低存活率癌症DNA甲基化生物标志物分析。

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in bioinformatics Pub Date : 2025-01-28 eCollection Date: 2025-01-01 DOI:10.3389/fbinf.2025.1523524
Yi-Hsuan Tsai, Prasenjit Mitra, David Taniar, Tun-Wen Pai
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引用次数: 0

摘要

通过DNA甲基化分析识别癌症生物标志物是检测与早期癌症类型相关的表观遗传调控异常变化的有效方法。在所有癌症类型中,五年生存率相对较低、发病率较高的癌症是胰腺癌(10%)、食管癌(20%)、肝癌(20%)、肺癌(21%)和脑癌(27%)。本研究整合了全基因组DNA甲基化谱和共病模式,通过多功能分析识别上述五种癌症类型的共同生物标志物。此外,利用基因本体将生物标志物划分为几个功能群,并建立基因功能与癌症的关系。ALX3、HOXD8、IRX1、HOXA9、HRH1、PTPRN2、TRIM58和NPTX2被确定为5年生存率低的5种癌症的重要甲基化生物标志物。为了扩大这些生物标志物的适用性,我们通过GO和KEGG通路分析探索了它们注释的遗传功能。ALX3、NPTX2和TRIM58的组合从不同的官能团中选择。通过验证10种最常见的癌症,包括最初的5种低存活率癌症类型,预测的准确率可以达到93.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DNA methylation biomarker analysis from low-survival-rate cancers based on genetic functional approaches.

Identifying cancer biomarkers through DNA methylation analysis is an efficient approach toward the detection of aberrant changes in epigenetic regulation associated with early-stage cancer types. Among all cancer types, cancers with relatively low five-year survival rates and high incidence rates were pancreatic (10%), esophageal (20%), liver (20%), lung (21%), and brain (27%) cancers. This study integrated genome-wide DNA methylation profiles and comorbidity patterns to identify the common biomarkers with multi-functional analytics across the aforementioned five cancer types. In addition, gene ontology was used to categorize the biomarkers into several functional groups and establish the relationships between gene functions and cancers. ALX3, HOXD8, IRX1, HOXA9, HRH1, PTPRN2, TRIM58, and NPTX2 were identified as important methylation biomarkers for the five cancers characterized by low five-year survival rates. To extend the applicability of these biomarkers, their annotated genetic functions were explored through GO and KEGG pathway analyses. The combination of ALX3, NPTX2, and TRIM58 was selected from distinct functional groups. An accuracy prediction of 93.3% could be achieved by validating the ten most common cancers, including the initial five low-survival-rate cancer types.

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