Deep Survival Analysis in Multimodal Medical Data: A Parametric and Probabilistic Approach with Competing Risks
Journal:
arXiv
Published Date:
Jul 10, 2025
Abstract
Accurate survival prediction is critical in oncology for prognosis and
treatment planning. Traditional approaches often rely on a single data
modality, limiting their ability to capture the complexity of tumor biology. To
address this challenge, we introduce a multimodal deep learning framework for
survival analysis capable of modeling both single and competing risks
scenarios, evaluating the impact of integrating multiple medical data sources
on survival predictions. We propose SAMVAE (Survival Analysis Multimodal
Variational Autoencoder), a novel deep learning architecture designed for
survival prediction that integrates six data modalities: clinical variables,
four molecular profiles, and histopathological images. SAMVAE leverages
modality specific encoders to project inputs into a shared latent space,
enabling robust survival prediction while preserving modality specific
information. Its parametric formulation enables the derivation of clinically
meaningful statistics from the output distributions, providing patient-specific
insights through interactive multimedia that contribute to more informed
clinical decision-making and establish a foundation for interpretable,
data-driven survival analysis in oncology. We evaluate SAMVAE on two cancer
cohorts breast cancer and lower grade glioma applying tailored preprocessing,
dimensionality reduction, and hyperparameter optimization. The results
demonstrate the successful integration of multimodal data for both standard
survival analysis and competing risks scenarios across different datasets. Our
model achieves competitive performance compared to state-of-the-art multimodal
survival models. Notably, this is the first parametric multimodal deep learning
architecture to incorporate competing risks while modeling continuous time to a
specific event, using both tabular and image data.