Callahan Damien M, Umberger Brian R, Kent Jane A
Department of Kinesiology, University of Massachusetts, Amherst, MA, USA.
J Physiol. 2016 Jun 15;594(12):3407-21. doi: 10.1113/JP271400. Epub 2016 Mar 2.
Muscle fatigue can be defined as the transient decrease in maximal force that occurs in response to muscle use. Fatigue develops because of a complex set of changes within the neuromuscular system that are difficult to evaluate simultaneously in humans. The skeletal muscle of older adults fatigues less than that of young adults during static contractions. The potential sources of this difference are multiple and intertwined. To evaluate the individual mechanisms of fatigue, we developed an integrative computational model based on neural, biochemical, morphological and physiological properties of human skeletal muscle. Our results indicate first that the model provides accurate predictions of fatigue and second that the age-related resistance to fatigue is due largely to a lower reliance on glycolytic metabolism during contraction. This model should prove useful for generating hypotheses for future experimental studies into the mechanisms of muscle fatigue.
During repeated or sustained muscle activation, force-generating capacity becomes limited in a process referred to as fatigue. Multiple factors, including motor unit activation patterns, muscle fibre contractile properties and bioenergetic function, can impact force-generating capacity and thus the potential to resist fatigue. Given that neuromuscular fatigue depends on interrelated factors, quantifying their independent effects on force-generating capacity is not possible in vivo. Computational models can provide insight into complex systems in which multiple inputs determine discrete outputs. However, few computational models to date have investigated neuromuscular fatigue by incorporating the multiple levels of neuromuscular function known to impact human in vivo function. To address this limitation, we present a computational model that predicts neural activation, biomechanical forces, intracellular metabolic perturbations and, ultimately, fatigue during repeated isometric contractions. This model was compared with metabolic and contractile responses to repeated activation using values reported in the literature. Once validated in this way, the model was modified to reflect age-related changes in neuromuscular function. Comparisons between initial and age-modified simulations indicated that the age-modified model predicted less fatigue during repeated isometric contractions, consistent with reports in the literature. Together, our simulations suggest that reduced glycolytic flux is the greatest contributor to the phenomenon of age-related fatigue resistance. In contrast, oxidative resynthesis of phosphocreatine between intermittent contractions and inherent buffering capacity had minimal impact on predicted fatigue during isometric contractions. The insights gained from these simulations cannot be achieved through traditional in vivo or in vitro experimentation alone.
肌肉疲劳可定义为因肌肉使用而出现的最大力量的短暂下降。疲劳的产生是由于神经肌肉系统内一系列复杂的变化,而这些变化在人体中难以同时进行评估。在静态收缩过程中,老年人的骨骼肌比年轻人的骨骼肌更不容易疲劳。造成这种差异的潜在原因是多方面且相互交织的。为了评估疲劳的个体机制,我们基于人类骨骼肌的神经、生化、形态和生理特性开发了一个综合计算模型。我们的结果首先表明该模型能够准确预测疲劳,其次表明与年龄相关的抗疲劳能力很大程度上是由于收缩过程中对糖酵解代谢的依赖较低。该模型对于为未来关于肌肉疲劳机制的实验研究生成假设应是有用的。
在重复或持续的肌肉激活过程中,产生力量的能力在一个被称为疲劳的过程中会受到限制。多种因素,包括运动单位激活模式、肌纤维收缩特性和生物能量功能,会影响产生力量能力,进而影响抗疲劳能力。鉴于神经肌肉疲劳取决于相互关联的因素,在体内无法量化它们对产生力量能力的独立影响。计算模型可以深入了解多个输入决定离散输出的复杂系统。然而,迄今为止,很少有计算模型通过纳入已知影响人体体内功能的多个神经肌肉功能水平来研究神经肌肉疲劳。为解决这一局限性,我们提出一个计算模型,该模型可预测重复等长收缩期间的神经激活、生物力学力、细胞内代谢扰动以及最终的疲劳。使用文献中报道的值将该模型与重复激活后的代谢和收缩反应进行了比较。以这种方式验证后,对模型进行了修改以反映神经肌肉功能的年龄相关变化。初始模拟与年龄修正模拟之间的比较表明,年龄修正模型预测重复等长收缩期间的疲劳较少,这与文献报道一致。总之,我们的模拟表明糖酵解通量降低是与年龄相关的抗疲劳现象的最大促成因素。相比之下,间歇性收缩之间磷酸肌酸的氧化再合成以及固有缓冲能力对等长收缩期间预测的疲劳影响最小。仅通过传统的体内或体外实验无法获得从这些模拟中获得的见解。