Abstract

Multimodal deep learning models have the potential to significantly improve survival predictions and treatment planning for cancer patients. These models integrate diverse data modalities using early, intermediate, or late fusion techniques. However, many existing multimodal models either underperform or show only marginal improvements over unimodal models. To establish the true efficacy of multimodal survival prediction models, it is critical to demonstrate consistent and substantial advantages over unimodal counterparts. In this thesis, we introduce the Robust Multimodal Survival Model (RMSurv), a novel discrete late fusion model that leverages synthetic data generation to compute time-dependent weights for various modalities. RMSurv utilizes up to 6 distinct data modalities from the Cancer Genome Atlas Program (TCGA) non-small cell lung cancer and the TCGA pan-cancer datasets. In our experiments, RMSurv outperforms the best unimodal model’s Concordance index (C-Index) by 0.0273 on the 6-modal TCGA Lung Adenocarcinoma (LUAD) dataset. Existing late and early fusion methods improved the C-index by only 0.0143 and 0.0072, respectively. RMSurv also performs best on the combined TCGA non-small-cell lung cancer dataset and the TCGA pan-cancer dataset. The key innovations of RMSurv are the calculation of time-dependent late fusion weights using a synthetically generated dataset and a new statistical feature normalization technique to enhance the interpretability and accuracy of discrete survival predictions. These advancements underscore RMSurv’s potential as a powerful approach for survival prediction, establishing robust multimodal benefits and setting a new benchmark for survival prediction models in pan-cancer settings.

Library of Congress Subject Headings

Oncology--Data processing; Cancer--Prognosis--Forecasting; Multisensor data fusion; Deep learning (Machine learning)

Publication Date

4-29-2025

Document Type

Thesis

Student Type

Graduate

Degree Name

Imaging Science (MS)

Department, Program, or Center

Chester F. Carlson Center for Imaging Science

College

College of Science

Advisor

Dimah Dera

Advisor/Committee Member

Ghulam Rasool

Advisor/Committee Member

Bartosz Krawczyk

Comments

This thesis has been embargoed. The full-text will be available on or around 11/28/2025.

Campus

RIT – Main Campus

Plan Codes

IMGS-MS

Available for download on Monday, November 24, 2025

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