Cargando…
QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology
Skeletal muscle injury provokes a regenerative response, characterized by the de novo generation of myofibers that are distinguished by central nucleation and re-expression of developmentally restricted genes. In addition to these characteristics, myofiber cross-sectional area (CSA) is widely used t...
Autores principales: | , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2019
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6895564/ https://www.ncbi.nlm.nih.gov/pubmed/31849692 http://dx.doi.org/10.3389/fphys.2019.01416 |
_version_ | 1783476583619624960 |
---|---|
author | Kastenschmidt, Jenna M. Ellefsen, Kyle L. Mannaa, Ali H. Giebel, Jesse J. Yahia, Rayan Ayer, Rachel E. Pham, Phillip Rios, Rodolfo Vetrone, Sylvia A. Mozaffar, Tahseen Villalta, S. Armando |
author_facet | Kastenschmidt, Jenna M. Ellefsen, Kyle L. Mannaa, Ali H. Giebel, Jesse J. Yahia, Rayan Ayer, Rachel E. Pham, Phillip Rios, Rodolfo Vetrone, Sylvia A. Mozaffar, Tahseen Villalta, S. Armando |
author_sort | Kastenschmidt, Jenna M. |
collection | PubMed |
description | Skeletal muscle injury provokes a regenerative response, characterized by the de novo generation of myofibers that are distinguished by central nucleation and re-expression of developmentally restricted genes. In addition to these characteristics, myofiber cross-sectional area (CSA) is widely used to evaluate muscle hypertrophic and regenerative responses. Here, we introduce QuantiMus, a free software program that uses machine learning algorithms to quantify muscle morphology and molecular features with high precision and quick processing-time. The ability of QuantiMus to define and measure myofibers was compared to manual measurement or other automated software programs. QuantiMus rapidly and accurately defined total myofibers and measured CSA with comparable performance but quantified the CSA of centrally-nucleated fibers (CNFs) with greater precision compared to other software. It additionally quantified the fluorescence intensity of individual myofibers of human and mouse muscle, which was used to assess the distribution of myofiber type, based on the myosin heavy chain isoform that was expressed. Furthermore, analysis of entire quadriceps cross-sections of healthy and mdx mice showed that dystrophic muscle had an increased frequency of Evans blue dye(+) injured myofibers. QuantiMus also revealed that the proportion of centrally nucleated, regenerating myofibers that express embryonic myosin heavy chain (eMyHC) or neural cell adhesion molecule (NCAM) were increased in dystrophic mice. Our findings reveal that QuantiMus has several advantages over existing software. The unique self-learning capacity of the machine learning algorithms provides superior accuracy and the ability to rapidly interrogate the complete muscle section. These qualities increase rigor and reproducibility by avoiding methods that rely on the sampling of representative areas of a section. This is of particular importance for the analysis of dystrophic muscle given the “patchy” distribution of muscle pathology. QuantiMus is an open source tool, allowing customization to meet investigator-specific needs and provides novel analytical approaches for quantifying muscle morphology. |
format | Online Article Text |
id | pubmed-6895564 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-68955642019-12-17 QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology Kastenschmidt, Jenna M. Ellefsen, Kyle L. Mannaa, Ali H. Giebel, Jesse J. Yahia, Rayan Ayer, Rachel E. Pham, Phillip Rios, Rodolfo Vetrone, Sylvia A. Mozaffar, Tahseen Villalta, S. Armando Front Physiol Physiology Skeletal muscle injury provokes a regenerative response, characterized by the de novo generation of myofibers that are distinguished by central nucleation and re-expression of developmentally restricted genes. In addition to these characteristics, myofiber cross-sectional area (CSA) is widely used to evaluate muscle hypertrophic and regenerative responses. Here, we introduce QuantiMus, a free software program that uses machine learning algorithms to quantify muscle morphology and molecular features with high precision and quick processing-time. The ability of QuantiMus to define and measure myofibers was compared to manual measurement or other automated software programs. QuantiMus rapidly and accurately defined total myofibers and measured CSA with comparable performance but quantified the CSA of centrally-nucleated fibers (CNFs) with greater precision compared to other software. It additionally quantified the fluorescence intensity of individual myofibers of human and mouse muscle, which was used to assess the distribution of myofiber type, based on the myosin heavy chain isoform that was expressed. Furthermore, analysis of entire quadriceps cross-sections of healthy and mdx mice showed that dystrophic muscle had an increased frequency of Evans blue dye(+) injured myofibers. QuantiMus also revealed that the proportion of centrally nucleated, regenerating myofibers that express embryonic myosin heavy chain (eMyHC) or neural cell adhesion molecule (NCAM) were increased in dystrophic mice. Our findings reveal that QuantiMus has several advantages over existing software. The unique self-learning capacity of the machine learning algorithms provides superior accuracy and the ability to rapidly interrogate the complete muscle section. These qualities increase rigor and reproducibility by avoiding methods that rely on the sampling of representative areas of a section. This is of particular importance for the analysis of dystrophic muscle given the “patchy” distribution of muscle pathology. QuantiMus is an open source tool, allowing customization to meet investigator-specific needs and provides novel analytical approaches for quantifying muscle morphology. Frontiers Media S.A. 2019-11-29 /pmc/articles/PMC6895564/ /pubmed/31849692 http://dx.doi.org/10.3389/fphys.2019.01416 Text en Copyright © 2019 Kastenschmidt, Ellefsen, Mannaa, Giebel, Yahia, Ayer, Pham, Rios, Vetrone, Mozaffar and Villalta. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Physiology Kastenschmidt, Jenna M. Ellefsen, Kyle L. Mannaa, Ali H. Giebel, Jesse J. Yahia, Rayan Ayer, Rachel E. Pham, Phillip Rios, Rodolfo Vetrone, Sylvia A. Mozaffar, Tahseen Villalta, S. Armando QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title | QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title_full | QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title_fullStr | QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title_full_unstemmed | QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title_short | QuantiMus: A Machine Learning-Based Approach for High Precision Analysis of Skeletal Muscle Morphology |
title_sort | quantimus: a machine learning-based approach for high precision analysis of skeletal muscle morphology |
topic | Physiology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6895564/ https://www.ncbi.nlm.nih.gov/pubmed/31849692 http://dx.doi.org/10.3389/fphys.2019.01416 |
work_keys_str_mv | AT kastenschmidtjennam quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT ellefsenkylel quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT mannaaalih quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT giebeljessej quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT yahiarayan quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT ayerrachele quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT phamphillip quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT riosrodolfo quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT vetronesylviaa quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT mozaffartahseen quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology AT villaltasarmando quantimusamachinelearningbasedapproachforhighprecisionanalysisofskeletalmusclemorphology |