Background Prostate cancer (PCa), a globally prevalent malignancy, displays intricate heterogeneity within its epithelial cells, closely linked with disease progression and immune modulation. However, the clinical significance of genes and biomarkers associated with these cells remains inadequately explored. To address this gap, this study aimed to comprehensively investigate the roles and clinical value of epithelial cell-related genes in PCa. Methods Leveraging single-cell sequencing data from GSE176031, we conducted an extensive analysis to identify epithelial cell marker genes (ECMGs). Employing consensus clustering analysis, we evaluated the correlations between ECMGs, prognosis, and immune responses in PCa. Subsequently, we developed and validated an optimal prognostic signature, termed the epithelial cell marker gene prognostic signature (ECMGPS), through synergistic analysis from 101 models employing 10 machine learning algorithms across five independent cohorts. Additionally, we collected clinical features and previously published signatures from the literature for comparative analysis. Furthermore, we explored the clinical utility of ECMGPS in immunotherapy and drug selection using multi-omics analysis and the IMvigor cohort. Finally, we investigated the biological functions of the hub gene, transmembrane p24 trafficking protein 3 (TMED3), in PCa using public databases and experiments. Results We identified a comprehensive set of 543 ECMGs and established a strong correlation between ECMGs and both the prognostic evaluation and immune classification in PCa. Notably, ECMGPS exhibited robust predictive capability, surpassing traditional clinical features and 80 published signatures in terms of both independence and accuracy across five cohorts. Significantly, ECMGPS demonstrated significant promise in identifying potential PCa patients who might benefit from immunotherapy and personalized medicine, thereby moving us nearer to tailored therapeutic approaches for individuals. Moreover, the role of TMED3 in promoting malignant proliferation of PCa cells was validated. Conclusions Our findings highlight ECMGPS as a powerful tool for improving PCa patient outcomes and supply a robust conceptual framework for in-depth examination of PCa complexities. Simultaneously, our study has the potential to develop a novel alternative for PCa diagnosis and prognostication.
Integrated machine learning identifies epithelial cell marker genes for improving outcomes and immunotherapy in prostate cancer
Weian Zhu,Hengda Zeng,Jiongduan Huang,Jianjie Wu,Yu Wang,Ziqiao Wang,Hua Wang,Yun Luo,Wenjie Lai
Published 2023 in Journal of Translational Medicine
ABSTRACT
PUBLICATION RECORD
- Publication year
2023
- Venue
Journal of Translational Medicine
- Publication date
2023-11-04
- Fields of study
Medicine, Computer Science
- Identifiers
- External record
- Source metadata
Semantic Scholar, PubMed
CITATION MAP
EXTRACTION MAP
CLAIMS
CONCEPTS
- epithelial cell marker gene prognostic signature
A prognostic model built from epithelial cell marker genes for prostate cancer risk stratification.
Aliases: ECMGPS
- epithelial cell marker genes
Genes identified as markers of epithelial cells in the prostate cancer single-cell dataset.
Aliases: ECMGs
- immune classification
A categorization of prostate cancer cases according to immune-related features.
- immunotherapy
An immune-based cancer treatment context considered for patient selection.
- prostate cancer
A malignant cancer of the prostate used as the disease context for the analyses.
Aliases: PCa
- single-cell sequencing data
Single-cell transcriptomic data from GSE176031 used to identify epithelial cell marker genes.
Aliases: GSE176031
- tmed3
A transmembrane p24 trafficking protein 3 examined as the hub gene in downstream functional validation.
Aliases: transmembrane p24 trafficking protein 3
- validation cohorts
Five independent prostate cancer cohorts used to evaluate the signature's predictive performance.
Aliases: five independent cohorts
REFERENCES
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Showing 1-24 of 24 citing papers · Page 1 of 1