CrossFusion: A Multi-Scale Cross-Attention Convolutional Fusion Model for Cancer Survival Prediction
- URL: http://arxiv.org/abs/2503.02064v1
- Date: Mon, 03 Mar 2025 21:34:52 GMT
- Title: CrossFusion: A Multi-Scale Cross-Attention Convolutional Fusion Model for Cancer Survival Prediction
- Authors: Rustin Soraki, Huayu Wang, Joann G. Elmore, Linda Shapiro,
- Abstract summary: Cancer survival prediction from whole slide images (WSIs) is a challenging task in computational pathology.<n>We propose CrossFusion, a novel multi-scale feature integration framework.<n>By effectively modeling both scale-specific patterns and their interactions, CrossFusion generates a rich feature set that enhances survival prediction accuracy.
- Score: 1.8720735308601646
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Cancer survival prediction from whole slide images (WSIs) is a challenging task in computational pathology due to the large size, irregular shape, and high granularity of the WSIs. These characteristics make it difficult to capture the full spectrum of patterns, from subtle cellular abnormalities to complex tissue interactions, which are crucial for accurate prognosis. To address this, we propose CrossFusion, a novel multi-scale feature integration framework that extracts and fuses information from patches across different magnification levels. By effectively modeling both scale-specific patterns and their interactions, CrossFusion generates a rich feature set that enhances survival prediction accuracy. We validate our approach across six cancer types from public datasets, demonstrating significant improvements over existing state-of-the-art methods. Moreover, when coupled with domain-specific feature extraction backbones, our method shows further gains in prognostic performance compared to general-purpose backbones. The source code is available at: https://github.com/RustinS/CrossFusion
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