| Literature DB >> 27897395 |
Marta Gonzalez-Freire1, Richard D Semba2, Ceereena Ubaida-Mohien1, Elisa Fabbri1, Paul Scalzo1, Kurt Højlund3,4, Craig Dufresne5, Alexey Lyashkov1, Luigi Ferrucci1.
Abstract
Skeletal muscle is a large organ that accounts for up to half the total mass of the human body. A progressive decline in muscle mass and strength occurs with ageing and in some individuals configures the syndrome of 'sarcopenia', a condition that impairs mobility, challenges autonomy, and is a risk factor for mortality. The mechanisms leading to sarcopenia as well as myopathies are still little understood. The Human Skeletal Muscle Proteome Project was initiated with the aim to characterize muscle proteins and how they change with ageing and disease. We conducted an extensive review of the literature and analysed publically available protein databases. A systematic search of peer-reviewed studies was performed using PubMed. Search terms included 'human', 'skeletal muscle', 'proteome', 'proteomic(s)', and 'mass spectrometry', 'liquid chromatography-mass spectrometry (LC-MS/MS)'. A catalogue of 5431 non-redundant muscle proteins identified by mass spectrometry-based proteomics from 38 peer-reviewed scientific publications from 2002 to November 2015 was created. We also developed a nosology system for the classification of muscle proteins based on localization and function. Such inventory of proteins should serve as a useful background reference for future research on changes in muscle proteome assessed by quantitative mass spectrometry-based proteomic approaches that occur with ageing and diseases. This classification and compilation of the human skeletal muscle proteome can be used for the identification and quantification of proteins in skeletal muscle to discover new mechanisms for sarcopenia and specific muscle diseases that can be targeted for the prevention and treatment.Entities:
Keywords: Ageing; Mass spectrometry; Post-translational modifications; Proteomics; Skeletal muscle
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Year: 2016 PMID: 27897395 PMCID: PMC5326819 DOI: 10.1002/jcsm.12121
Source DB: PubMed Journal: J Cachexia Sarcopenia Muscle ISSN: 2190-5991 Impact factor: 12.910
Changes in skeletal muscle protein composition caused by aging, age‐related diseases and skeletal muscle disease. Black arrow: downregulation; Red arrow: upregulation
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Figure 1Mass spectrometry‐based human skeletal muscle publications and proteins. We compiled mass spectrometry‐based human skeletal muscle proteome papers since 2003. The X axis contains the first author, year of publication, and how many new proteins were discovered in skeletal muscle in the study. Colour‐coded circles show what mass spectrometer was primarily used by each study. The Y axis shows the total number of proteins identified by each study.
Figure 2Top 20 proteins in human skeletal muscle proteome. Most reported skeletal muscle proteome from all 38 publications.
Figure 3Comparison of approaches to human skeletal muscle proteome. The 5024 genes identified from 38 human skeletal muscle publications (complied skeletal muscle human) were compared with Genotype‐tissue Expression V6 and Protein Atlas skeletal muscle transcriptomics data (10 962) and mouse skeletal muscle proteome data (9887). Mouse skeletal muscle shared 6559 genes (skeletal muscle mouse) and transcriptome skeletal muscle from Protein Atlas and Genotype‐tissue Expression shared 5258 genes (skeletal muscle transcriptome human). Two thousand, two hundred and eighty‐three genes were common between all three skeletal muscle studies. Text in italics are genes unique for each study. Eighty‐eight per cent of the compiled skeletal muscle proteins were present in the transcriptome and mouse skeletal muscle datasets.
Figure 4Classification of the human skeletal muscle proteome. Based on gene ontology, Uniprot keywords and manual curation skeletal muscle proteome were classified. (A) Classification of the skeletal muscle proteome based on cellular components, (B) classification of the skeletal muscle proteome based on molecular function, and (C) classification of the skeletal muscle proteome based on the biological process.
Figure 5(A) Bioenergetics process from skeletal muscle proteome. The major energy production chains and the number of proteins compiled for each process as shown next to process. (B) Molecular function of enzymes. Enzymes predominate skeletal muscle protein molecular function. Text shows molecular function of enzymes and number of proteins compiled next.