1. Prediction of muscle performance during dynamic repetitive movement.
- Author
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Byerly DL, Byerly KA, Sognier MA, and Squires WG
- Subjects
- Adult, Electromyography, Feasibility Studies, Female, Humans, Linear Models, Lumbar Vertebrae physiology, Male, Predictive Value of Tests, Space Flight, Task Performance and Analysis, Models, Biological, Movement physiology, Muscle, Skeletal physiology, Physical Endurance physiology
- Abstract
Background: During long-duration spaceflight, astronauts experience progressive muscle atrophy and often perform strenuous extravehicular activities. Post-flight, there is a lengthy recovery period with an increased risk for injury. Currently, there is a critical need for an enabling tool to optimize muscle performance and to minimize the risk of injury to astronauts while on-orbit and during post-flight recovery. Consequently, these studies were performed to develop a method to address this need., Methods: Eight test subjects performed a repetitive dynamic exercise to failure at 65% of their upper torso weight using a Lordex spinal machine. Surface electromyography (SEMG) data was collected from the erector spinae back muscle. The SEMG data was evaluated using a 5th order autoregressive (AR) model and linear regression analysis., Results: The best predictor found was an AR parameter, the mean average magnitude of AR poles, with r = 0.75 and p = 0.03. This parameter can predict performance to failure as early as the second repetition of the exercise., Conclusion: A method for predicting human muscle performance early during dynamic repetitive exercise was developed. The capability to predict performance to failure has many potential applications to the space program including evaluating countermeasure effectiveness on-orbit, optimizing post-flight recovery, and potential future real-time monitoring capability during extravehicular activity.
- Published
- 2003