Handayani, Lilies and Chegodaev, Denis and Steven, Ray and Satou, Kenji (2025) Identification of Key Genes Associated with Overall Survival in Glioblastoma Multiforme Using TCGA RNA-Seq Expression Data. Genes, 16 (755). pp. 1-20. ISSN 2073-4425
Full text not available from this repository.Abstract
Background/Objectives: Glioblastoma multiforme (GBM) is an aggressive and heterogeneous brain tumor with poor prognosis, emphasizing the need for reliable molecular biomarkers to improve patient stratification and treatment planning. This study aimed to identify key genes associated with overall survival in GBM by employing and comparing machine learning (ML) and deep learning (DL) approaches using RNA-Seq gene expression data. Methods: RNA-Seq expression and clinical data for primary GBM tumors were obtained from The Cancer Genome Atlas (TCGA). A univariate Cox proportional hazards regression was used to identify survival-associated genes. For survival prediction, MLbased feature selection techniques—RF, GB, SVM-RFE, RF-RFE, and PCA—were used to construct multivariate Cox models. Separately, DeepSurv, a DL-based survival model, was trained using the significant genes from the univariate analysis. Gradient-based importance scoring was applied to determine key genes from the DeepSurv model. Results: Univariate analysis yielded 694 survival-associated genes. The best ML-based Cox model (RF-RFE with 90% training data) achieved a c-index of 0.725. In comparison, DeepSurv demonstrated superior performance with a c-index of 0.822. The top 10 genes were identified from the DeepSurv analysis, including CMTR1, GMPR, and PPY. Kaplan–Meier survival curves confirmed their prognostic significance, and network analysis highlighted their roles in processes such as purine metabolism, RNA processing, and neuroendocrine signaling. Conclusions: This study demonstrates the effectiveness of combining ML and DL models to identify prognostic gene expression biomarkers in GBM, with DeepSurv providing higher predictive accuracy. The findings offer valuable insights into GBM biology and highlight candidate biomarkers for further validation and therapeutic development.
| Item Type: | Article |
|---|---|
| Subjects: | Q Science > Q Science (General) Q Science > QH426 Genetics |
| Divisions: | Fakultas Matematika dan IPA > Statistika Library of Congress Subject Areas > Q Science > Statistika |
| Depositing User: | LILIES HANDAYANI |
| Date Deposited: | 22 Nov 2025 03:48 |
| Last Modified: | 22 Nov 2025 03:48 |
| URI: | https://repository.untad.ac.id/id/eprint/151836 |
| Baca Full Text: | Baca Sekarang |

