Literature DB >> 26004825

Automated high-content morphological analysis of muscle fiber histology.

Mauro Miazaki1, Matheus P Viana2, Zhong Yang3, Cesar H Comin2, Yaming Wang4, Luciano da F Costa5, Xiaoyin Xu6.   

Abstract

In the search for a cure for many muscular disorders it is often necessary to analyze muscle fibers under a microscope. For this morphological analysis, we developed an image processing approach to automatically analyze and quantify muscle fiber images so as to replace today's less accurate and time-consuming manual method. Muscular disorders, that include cardiomyopathy, muscular dystrophies, and diseases of nerves that affect muscles such as neuropathy and myasthenia gravis, affect a large percentage of the population and, therefore, are an area of active research for new treatments. In research, the morphological features of muscle fibers play an important role as they are often used as biomarkers to evaluate the progress of underlying diseases and the effects of potential treatments. Such analysis involves assessing histopathological changes of muscle fibers as indicators for disease severity and also as a criterion in evaluating whether or not potential treatments work. However, quantifying morphological features is time-consuming, as it is usually performed manually, and error-prone. To replace this standard method, we developed an image processing approach to automatically detect and measure the cross-sections of muscle fibers observed under microscopy that produces faster and more objective results. As such, it is well-suited to processing the large number of muscle fiber images acquired in typical experiments, such as those from studies with pre-clinical models that often create many images. Tests on real images showed that the approach can segment and detect muscle fiber membranes and extract morphological features from highly complex images to generate quantitative results that are readily available for statistical analysis.
Copyright © 2015 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Cross sections; Morphology of muscle fibers; Muscular dystrophy; Quantification; Segmentation

Mesh:

Year:  2015        PMID: 26004825      PMCID: PMC4492853          DOI: 10.1016/j.compbiomed.2015.04.020

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  12 in total

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4.  Active contours without edges.

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5.  Automated image analysis of skeletal muscle fiber cross-sectional area.

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7.  Automated image segmentation of haematoxylin and eosin stained skeletal muscle cross-sections.

Authors:  F Liu; A L Mackey; R Srikuea; K A Esser; L Yang
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8.  Noninvasive optical imaging of firefly luciferase reporter gene expression in skeletal muscles of living mice.

Authors:  J C Wu; G Sundaresan; M Iyer; S S Gambhir
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9.  Inducible activation of Akt increases skeletal muscle mass and force without satellite cell activation.

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  9 in total

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2.  A neural network approach to analyze cross-sections of muscle fibers in pathological images.

Authors:  Ye Li; Zhong Yang; Yaming Wang; Xinhua Cao; Xiaoyin Xu
Journal:  Comput Biol Med       Date:  2018-11-12       Impact factor: 4.589

Review 3.  The emerging role of the sympathetic nervous system in skeletal muscle motor innervation and sarcopenia.

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4.  Semiautomatic morphometric analysis of skeletal muscle obtained by needle biopsy in older adults.

Authors:  Henry J Bonilla; Maria L Messi; Khalima A Sadieva; Craig A Hamilton; Aron S Buchman; Osvaldo Delbono
Journal:  Geroscience       Date:  2020-09-18       Impact factor: 7.581

5.  Open-CSAM, a new tool for semi-automated analysis of myofiber cross-sectional area in regenerating adult skeletal muscle.

Authors:  Thibaut Desgeorges; Sophie Liot; Solene Lyon; Jessica Bouvière; Alix Kemmel; Aurélie Trignol; David Rousseau; Bruno Chapuis; Julien Gondin; Rémi Mounier; Bénédicte Chazaud; Gaëtan Juban
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6.  Approach for semi-automated measurement of fiber diameter in murine and canine skeletal muscle.

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7.  MyoSight-semi-automated image analysis of skeletal muscle cross sections.

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8.  A User-Friendly Approach for Routine Histopathological and Morphometric Analysis of Skeletal Muscle Using CellProfiler Software.

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Review 9.  Computational pathology for musculoskeletal conditions using machine learning: advances, trends, and challenges.

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  9 in total

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