bims-dinmec Biomed News
on DNA methylation in cancer
Issue of 2025–09–07
two papers selected by
Lorena Ancona, Humanitas Research



  1. Genome Biol. 2025 Sep 04. 26(1): 266
      We present a new and considerably improved version of RoAM (Reconstruction of Ancient Methylation), a flexible tool for reconstructing ancient methylomes and identifying differentially methylated regions (DMRs) between populations. Through a series of filtering and quality control steps, RoAM produces highly reliable DNA methylation maps, making it a valuable tool for paleoepigenomics studies. We apply RoAM to pre-and post-Neolithic transition Balkan samples, and uncover DMRs in genes related to sugar metabolism. Notably, we observe post-Neolithic hypermethylation of PTPRN2, a regulator of insulin secretion. These results are compatible with hypoinsulinism in pre-Neolithic hunter-gatherers.
    Keywords:  Ancient DNA; Ancient DNA methylation; Dietary shifts; Human evolution; Neolithic transition
    DOI:  https://doi.org/10.1186/s13059-025-03702-7
  2. Discov Oncol. 2025 Aug 28. 16(1): 1646
      Ovarian cancer (OC) remains one of the deadliest gynecological malignancies. Immune checkpoint blockade (ICB) inhibitors efficacy in OC has been minimal, highlighting the need for a deeper understanding of the immune microenvironment in OC. Recent studies suggest that DNA methylation and transcription factors may influence the response to immunotherapy. This study aims to classify ovarian cancer into distinct immune subtypes by integrating DNA methylation and transcription factor data through comprehensive bioinformatics analysis. Using data from The Cancer Genome Atlas (TCGA), we identified twelve differentially methylated genes (DMGs) associated with transcription factors and categorized OC into two immune subtypes, C1 and C2.The C1 subtype exhibited higher levels of immune infiltration and better prognosis, characteristic of immune "hot" tumors, whereas the C2 subtype was associated with lower immune infiltration and poorer prognosis, indicative of immune "cold" tumors. A prognostic prediction model based on four key genes-KRT81, PAPPA2, FGF10, and FMO2-was developed using the least absolute shrinkage and selection operator (LASSO) and Cox regression analyses. This model effectively stratified the TCGA OC cohort into high- and low-risk groups and was validated by predicting patient survival outcomes. Additionally, drug sensitivity analysis revealed potential therapeutic targets for different risk groups, offering new avenues for precision treatment in ovarian cancer. Immunohistochemical tests confirmed the potential of KRT81 as a prognostic marker for ovarian cancer. Our findings enhance the understanding of the molecular characteristics of the OC immune microenvironment, propose novel biomarkers for prognosis, which may potentially improve the prognosis of OC.
    Keywords:  DNA methylation; Immune subtypes; Ovarian cancer; Precision medicine; Prognostic model; Transcription factors
    DOI:  https://doi.org/10.1007/s12672-025-02630-z