4.7 Article

Self-supervised learning-based Multi-Scale feature Fusion Network for survival analysis from whole slide images

Journal

COMPUTERS IN BIOLOGY AND MEDICINE
Volume 153, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.106482

Keywords

Whole slide images; Survival analysis; Self-supervised learning; Sampling strategy; Multi-scale representation

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Understanding prognosis and mortality is crucial for evaluating patient treatment plans. With advancements in digital pathology and deep learning, performing survival analysis in whole slide images (WSIs) has become practical. However, current methods using random patch sampling and hand-crafted features or CNNs pre-trained on ImageNet have limitations. To address these challenges, a novel patch sampling strategy based on image information entropy and a Multi-Scale feature Fusion Network (MSFN) based on self-supervised feature extraction are proposed. The method achieves competitive results on popular WSIs survival analysis datasets, TCGA-GBM and TCGA-LUSC.
Understanding prognosis and mortality is critical for evaluating the treatment plan of patients. Advances in digital pathology and deep learning techniques have made it practical to perform survival analysis in whole slide images (WSIs). Current methods are usually based on a multi-stage framework which includes patch sampling, feature extraction and prediction. However, the random patch sampling strategy is highly unstable and prone to sampling non-ROI. Feature extraction typically relies on hand-crafted features or convolutional neural networks (CNNs) pre-trained on ImageNet, while the artificial error or domain gaps may affect the survival prediction performance. Besides, the limited information representation of local sampling patches will create a bottleneck limitation on the effectiveness of prediction. To address the above challenges, we propose a novel patch sampling strategy based on image information entropy and construct a Multi-Scale feature Fusion Network (MSFN) based on self-supervised feature extractor. Specifically, we adopt image information entropy as a criterion to select representative sampling patches, thereby avoiding the noise interference caused by random to blank regions. Meanwhile, we pretrain the feature extractor utilizing self -supervised learning mechanism to improve the efficiency of feature extraction. Furthermore, a global-local feature fusion prediction network based on the attention mechanism is constructed to improve the survival prediction effect of WSIs with comprehensive multi-scale information representation. The proposed method is validated by adequate experiments and achieves competitive results on both of the most popular WSIs survival analysis datasets, TCGA-GBM and TCGA-LUSC. Code and trained models are made available at: https://github.com/Mercuriiio/MSFN.

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