Submitted:
02 June 2026
Posted:
03 June 2026
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Abstract
Keywords:
1. Introduction
1.1. Advances in Survival Modeling: From Cox Regression to Deep Survival Models
1.2. Latent Representation Learning of Multi-Omics Data with VAEs for Predicting Survival Outcomes
1.3. From Black Box to Insight: Interpreting VAE-Based Survival Predictions
1.4. Advances and Limitations in Modern Deep Learning Era
2. VAE-Based Survival Models—Trending Methods
3. Strategies, Opportunities and Challenges
3.1. Advancement in Technological Strategies
3.1.1. Loss Function Minimization via Optimization
3.1.2. Overfitting via Regularization
3.1.3. Interpretation of Selected Feature via Explainability
3.1.4. Computational Efficiency via Activation Functions
3.2. Enhanced Opportunities for Risk Prediction from Multi-Omics Data
3.3. Challenges and Limitations
4. Discussion
References
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| Reference | Model Architecture |
Multi-Omics Modalities |
Survival and Demographic or Clinical Information |
Interpretation | Framework Evaluated On |
|---|---|---|---|---|---|
| AutoSurv [9] | KLPMVAE + shallower version of DeepSurv | Transcriptomics (mRNA, miRNA) + pathway | Yes | DeepSHAP | Training/testing: TCGA-BRCA, TCGA-OV, Validation: ICGC-OVAU, Caldas-BC |
| MyeVAE [12] | VAE + Non-linear version of Cox regression using neural network | Transcriptomics (mRNA, miRNA, lncRNA), Genomics (copy number variants, mutational signature, structural variants) |
Yes | DeepSHAP | Training/testing: Multiple Myeloma Research Foundation (CoMMpass) Validation: GSE24080, GSE9782, E-MTAB-4032, GSE19784 |
| VAE-Surv [10] | VAE + DeepSurv | Genomics (Genetic, cytogenetic features) | Yes | Shapley values | Training/testing: Genomed4all MDS cohort Validation: IWG-PM |
| VAE-Cox [11] | VAE + Cox PH (Transfer learning) | Transcriptomics | Yes | Literature survey + functional annotation of the genes in hidden nodes by pathway enrichment analysis |
Training/testing: 20 TCGA Pan-cancer datasets Validation: 10 of the above datasets |
| OmiVAE [14] | VAE + multi-class classifier using neural network | Transcriptomics, Epigenomics | No | Visualization | Training/testing: 33 TCGA Pan-cancer datasets + Normal Samples |
| OmiEmbed [13] | VAE + multi-class classifier using neural network | Transcriptomics, Epigenomics | Yes | Visualization | Training/testing: GDC Pan-cancer multi-omics datasets + BTM DNA methylation dataset (GSE109381) |
| XOmiVAE [18] | VAE + multi-class classifier using neural network | Transcriptomics, Epigenomics | No | DeepSHAP | Training/testing: 33 TCGA Pan-cancer datasets + Normal Samples |
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