肌肉基因组学与有氧训练

IF 0.5 Q4 SPORT SCIENCES Journal of Human Sport and Exercise Pub Date : 2021-01-13 DOI:10.14198/JHSE.2022.173.11
Yecid Mina-Paz, D. C. Zambrano, A. J. Matta, A. Rodríguez, F. García-Vallejo
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引用次数: 1

摘要

体育活动的表现不仅取决于年龄、身体成分、性别和训练程度等生理过程,还取决于训练过程中发生的基因组学甚至表观遗传学事件。在这种情况下,利用生物信息学资源,我们旨在分析股外侧样本中与肌肉功能相关的基因的表达。我们使用了NCBI GEO DataSet数据库中序列号为GSE117070的DNA微阵列实验数据。微分表达式使用Z比率方程计算。我们还使用Cytoscape 3.6软件构建了一个具有过度表达基因的蛋白质-蛋白质相互作用网络。我们发现,根据统计方法,在41名接受有氧运动的人中分析的397个基因中,有7个基因过度表达,训练强度通过VO2max的百分比增加。蛋白质-蛋白质相互作用(PPI)网络显示477个节点、两个连接组件、17个多边缘节点对和2.092个平均邻居。交互次数最多的节点是具有150次交互的TPM1。与网络最相关的GO类生物过程包括肌肉功能和收缩不可或缺的过程,如肌动蛋白丝的聚合和电子传输链合成ATP。
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Muscle genomics and aerobic training
The performance in physical activity is determined not only by physiological processes such as age, body composition, gender and degree of training, but also by the genomics and even epigenetic events occurring during the training programs. In this context, using bioinformatics resources, we aimed to analyse the expression of genes associated with muscle function in vastus lateral samples. We used data from DNA microarray experiments reported in NCBI's GEO DataSet database under the series number GSE117070. Differential expression was calculated using the Z-ratio equation. We also used the software Cytoscape 3.6 to build a protein-protein interaction network with over-expressed genes. We found that seven genes out of the 397 genes analysed in the 41 individuals subjected to aerobic exercise with an increase in training intensity through the percentage of VO 2max , were over-expressed based on the statistical approach. The Protein-Protein Interaction (PPI) network showed 477 nodes, two connected components, 17 multi-edge node pairs and an average number of neighbours of 2.092. The node with the highest number of interactions was TPM1 with 150. GO categories of biological processes most relevant of the network included indispensable processes for muscle function and contraction such as polymerization of actin filaments and ATP synthesis from electron transport chain.
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来源期刊
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
6 weeks
期刊介绍: JHSE contributes to the continuing professional development of sport and exercise sciences, including a high-level research in biomechanics, exercise physiology, sports history, nutrition, and a wide range of social and ethical issues in physical activity, and other aspects of sports medicine related quality of life and biophysical investigation of sports performance.
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