Machine Learning-Based Prognostic Model for Gastric Cancer Using Integrated Multi-Omics Data.
1/5 보강
Gastric cancer (GC) prognosis remains suboptimally defined by conventional clinicopathological parameters, necessitating integrative multi-omics approaches to unravel molecular heterogeneity.
- 95% CI 0.748-0.824
APA
Shou M, Liu Y, Shu Y (2025). Machine Learning-Based Prognostic Model for Gastric Cancer Using Integrated Multi-Omics Data.. Cancer investigation, 43(9), 834-846. https://doi.org/10.1080/07357907.2025.2575909
MLA
Shou M, et al.. "Machine Learning-Based Prognostic Model for Gastric Cancer Using Integrated Multi-Omics Data.." Cancer investigation, vol. 43, no. 9, 2025, pp. 834-846.
PMID
41114433 ↗
Abstract 한글 요약
Gastric cancer (GC) prognosis remains suboptimally defined by conventional clinicopathological parameters, necessitating integrative multi-omics approaches to unravel molecular heterogeneity. This study established a robust multi-omics prognostic framework through synergistic analysis of transcriptomic, epigenomic, and clinical data from 108 GC patients. Genome-wide expression profiling and methylation array analysis identified 1,243 survival-associated transcripts and 8,742 prognostic CpG sites, with cross-omics integration similarity network fusion revealing three molecular subtypes exhibiting distinct clinical trajectories. The aggressive Subtype 3 demonstrated a 2.87-fold increased mortality risk compared to the favorable Subtype 1, independent of age and tumor stage. A LASSO-derived prognostic signature integrating eight gene expression markers, nine methylation loci, and three clinical parameters achieved superior discrimination (C-index: 0.786 [95% CI: 0.748-0.824], compared to 0.687-0.752 in unimodal models) and 19-28% improvement in time-dependent AUC metrics. The multi-optimized nomogram incorporating molecular risk scores with conventional predictors demonstrated strong calibration (slope 0.967) and clinical utility across validation cohorts (C-index 0.742), significantly outperforming existing stratification systems. Functional characterization revealed subtype-specific enrichment in cell cycle dysregulation and immune evasion pathways, obtaining CDK/PI3K inhibitors as potential therapeutic targets. These findings establish multi-omics integration as a novel strategy for prognostic refinement and precision therapy guidance in GC.
🏷️ 키워드 / MeSH 📖 같은 키워드 OA만
- Machine Learning
- Stomach Neoplasms
- Multiomics
- Epigenomics
- Gene Expression Profiling
- DNA Methylation
- Dinucleoside Phosphates
- Gene Expression Regulation
- Neoplastic
- Nomograms
- Neoplasm Staging
- Precision Medicine
- Tumor Escape
- Phosphatidylinositol 3-Kinases
- Phosphoinositide-3 Kinase Inhibitors
- Cyclin-Dependent Kinases
- Antineoplastic Agents
- Cell Cycle
- Humans
- Male
- Female
- Adult
- Middle Aged
- Aged
… 외 9개
🏷️ 같은 키워드 · 무료전문 — 이 논문 MeSH/keyword 기반
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