|
Keywords
|
Prostate cancer, Microarray, DNA metabolism, Machine learning, Algorithm
|
|
Abstract
|
DNA metabolism genes play pivotal roles in the regulation of cellular processes that contribute
to cancer progression, immune modulation, and therapeutic response in prostate cancer (PC).
Understanding the mechanisms by which these genes influence the tumor microenvironment and
immune evasion is crucial for identifying prognostic biomarkers and developing targeted therapies.
We performed an integrative analysis using transcriptomic data from the TCGA cohort and external
validation datasets. Differentially expressed genes (DEGs) were identified using the edgeR algorithm
with an FDR < 0.01 and a minimum fold change of 1.5. Gene enrichment analysis was conducted
through GO and KEGG pathways to explore the biological significance of DNA metabolism genes in PC.
In addition, clustering analyses, machine learning models, and single-cell RNA sequencing (scRNAseq)
were employed to investigate the immune characteristics, prognostic value, and therapeutic
relevance of these genes. A total of 536 DEGs were identified across six subtypes of prostate cancer,
with key DNA metabolism genes such as POLD2, RAD9A, REV3L, MSH6, and WRNIP1 highlighted
as critical players. Gene enrichment analyses revealed that these DEGs were significantly associated
with pathways involved in DNA repair, cellular aging, and telomere maintenance. Clustering analysis
identified two distinct subgroups (C1 and C2) based on DNA metabolism gene expression, with C1
exhibiting a more aggressive phenotype, higher immune infiltration, and poorer prognosis. Machine
learning models, particularly the CoxBoost algorithm, identified 21 key genes contributing to an
effective prognostic model. Furthermore, scRNA-seq analysis confirmed the upregulation of DNA
metabolism genes in PC cells compared to normal cells. Our findings highlight the importance of
DNA metabolism genes in the progression and immune dynamics of PC. These genes not only serve
as potential biomarkers for prognosis but also offer promising targets for p
|