A Multi-modal Fusion Framework Based on Multi-task Correlation Learning for Cancer Prognosis Prediction
Kaiwen Tan, Weixian Huang, Xiaofeng Liu, Jinlong Hu, Shoubin Dong

TL;DR
This paper introduces MultiCoFusion, a multi-modal, multi-task learning framework that integrates histopathological images and genomic data to improve cancer prognosis prediction and grading accuracy.
Contribution
The study presents a novel multi-modal fusion framework that simultaneously performs survival analysis and cancer grade classification using multi-task correlation learning.
Findings
MultiCoFusion outperforms traditional feature extraction methods.
Multi-task learning enhances performance across tasks.
Simple multi-modal concatenation with multi-task training yields superior results.
Abstract
Morphological attributes from histopathological images and molecular profiles from genomic data are important information to drive diagnosis, prognosis, and therapy of cancers. By integrating these heterogeneous but complementary data, many multi-modal methods are proposed to study the complex mechanisms of cancers, and most of them achieve comparable or better results from previous single-modal methods. However, these multi-modal methods are restricted to a single task (e.g., survival analysis or grade classification), and thus neglect the correlation between different tasks. In this study, we present a multi-modal fusion framework based on multi-task correlation learning (MultiCoFusion) for survival analysis and cancer grade classification, which combines the power of multiple modalities and multiple tasks. Specifically, a pre-trained ResNet-152 and a sparse graph convolutional…
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