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Main Authors: Yamaoka, Yu, Chan, Weng Ian, Seno, Shigeto, Fukada, Soichiro, Matsuda, Hideo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.04150
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author Yamaoka, Yu
Chan, Weng Ian
Seno, Shigeto
Fukada, Soichiro
Matsuda, Hideo
author_facet Yamaoka, Yu
Chan, Weng Ian
Seno, Shigeto
Fukada, Soichiro
Matsuda, Hideo
contents Evaluating the regeneration process of damaged muscle tissue is a fundamental analysis in muscle research to measure experimental effect sizes and uncover mechanisms behind muscle weakness due to aging and disease. The conventional approach to assessing muscle tissue regeneration involves whole-slide imaging and expert visual inspection of the recovery stages based on the morphological information of cells and fibers. There is a need to replace these tasks with automated methods incorporating machine learning techniques to ensure a quantitative and objective analysis. Given the limited availability of fully labeled data, a possible approach is Learning from Label Proportions (LLP), a weakly supervised learning method using class label proportions. However, current LLP methods have two limitations: (1) they cannot adapt the feature extractor for muscle tissues, and (2) they treat the classes representing recovery stages and cell morphological changes as nominal, resulting in the loss of ordinal information. To address these issues, we propose Ordinal Scale Learning from Similarity Proportion (OSLSP), which uses a similarity proportion loss derived from two bag combinations. OSLSP can update the feature extractor by using class proportion attention to the ordinal scale of the class. Our model with OSLSP outperforms large-scale pre-trained and fine-tuning models in classification tasks of skeletal muscle recovery stages.
format Preprint
id arxiv_https___arxiv_org_abs_2505_04150
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning from Similarity Proportion Loss for Classifying Skeletal Muscle Recovery Stages
Yamaoka, Yu
Chan, Weng Ian
Seno, Shigeto
Fukada, Soichiro
Matsuda, Hideo
Computer Vision and Pattern Recognition
Machine Learning
Evaluating the regeneration process of damaged muscle tissue is a fundamental analysis in muscle research to measure experimental effect sizes and uncover mechanisms behind muscle weakness due to aging and disease. The conventional approach to assessing muscle tissue regeneration involves whole-slide imaging and expert visual inspection of the recovery stages based on the morphological information of cells and fibers. There is a need to replace these tasks with automated methods incorporating machine learning techniques to ensure a quantitative and objective analysis. Given the limited availability of fully labeled data, a possible approach is Learning from Label Proportions (LLP), a weakly supervised learning method using class label proportions. However, current LLP methods have two limitations: (1) they cannot adapt the feature extractor for muscle tissues, and (2) they treat the classes representing recovery stages and cell morphological changes as nominal, resulting in the loss of ordinal information. To address these issues, we propose Ordinal Scale Learning from Similarity Proportion (OSLSP), which uses a similarity proportion loss derived from two bag combinations. OSLSP can update the feature extractor by using class proportion attention to the ordinal scale of the class. Our model with OSLSP outperforms large-scale pre-trained and fine-tuning models in classification tasks of skeletal muscle recovery stages.
title Learning from Similarity Proportion Loss for Classifying Skeletal Muscle Recovery Stages
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2505.04150