MyoV: a deep learning-based tool for the automated quantification of muscle fibers.

Brief Bioinform

State Key Laboratory of Animal Biotech Breeding and Frontier Science Center for Molecular Design Breeding, China Agricultural University, Beijing 100193, China.

Published: January 2024

AI Article Synopsis

  • - This study addresses the limitations of current methods for counting muscle fibers by creating a large dataset of over 660,000 manually and semiautomatically labeled muscle fibers.
  • - The researchers developed an automated tool called MyoV using advanced neural networks, which shows excellent performance in detecting and quantifying muscle fibers, achieving detection rates of 0.93-0.96 and precision levels of 0.91-0.97, outperforming traditional methods and software.
  • - MyoV can analyze muscle fibers from various species, including mice and agricultural animals, and is integrated into user-friendly visualization software that allows for efficient processing and labeling of muscle fibers from whole slide images (WSIs), making it accessible for researchers.

Article Abstract

Accurate approaches for quantifying muscle fibers are essential in biomedical research and meat production. In this study, we address the limitations of existing approaches for hematoxylin and eosin-stained muscle fibers by manually and semiautomatically labeling over 660 000 muscle fibers to create a large dataset. Subsequently, an automated image segmentation and quantification tool named MyoV is designed using mask regions with convolutional neural networks and a residual network and feature pyramid network as the backbone network. This design enables the tool to allow muscle fiber processing with different sizes and ages. MyoV, which achieves impressive detection rates of 0.93-0.96 and precision levels of 0.91-0.97, exhibits a superior performance in quantification, surpassing both manual methods and commonly employed algorithms and software, particularly for whole slide images (WSIs). Moreover, MyoV is proven as a powerful and suitable tool for various species with different muscle development, including mice, which are a crucial model for muscle disease diagnosis, and agricultural animals, which are a significant meat source for humans. Finally, we integrate this tool into visualization software with functions, such as segmentation, area determination and automatic labeling, allowing seamless processing for over 400 000 muscle fibers within a WSI, eliminating the model adjustment and providing researchers with an easy-to-use visual interface to browse functional options and realize muscle fiber quantification from WSIs.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10810329PMC
http://dx.doi.org/10.1093/bib/bbad528DOI Listing

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