Publication | Open Access
Fatigue Evaluation through Machine Learning and a Global Fatigue Descriptor
39
Citations
43
References
2020
Year
Physical ActivityEngineeringMachine LearningWearable TechnologySubjective FatigueIntelligent SystemsFatigueFatigue ManagementKinesiologyData SciencePattern RecognitionMachine-learning SystemPatient MonitoringApplied PhysiologyBiostatisticsSport PhysiologyHealth SciencesSports ScienceStructural Health MonitoringFatigue EvaluationRehabilitationLow-cycle FatiguePredictive MaintenanceElectromyographyHealth MonitoringAthletic TrainingHealth Management System
Research in physiology and sports science has shown that fatigue, a complex psychophysiological phenomenon, has a relevant impact in performance and in the correct functioning of our motricity system, potentially being a cause of damage to the human organism. Fatigue can be seen as a subjective or objective phenomenon. Subjective fatigue corresponds to a mental and cognitive event, while fatigue referred as objective is a physical phenomenon. Despite the fact that subjective fatigue is often undervalued, only a physically and mentally healthy athlete is able to achieve top performance in a discipline. Therefore, we argue that physical training programs should address the preventive assessment of both subjective and objective fatigue mechanisms in order to minimize the risk of injuries. In this context, our paper presents a machine-learning system capable of extracting individual fatigue descriptors (IFDs) from electromyographic (EMG) and heart rate variability (HRV) measurements. Our novel approach, using two types of biosignals so that a global (mental and physical) fatigue assessment is taken into account, reflects the onset of fatigue by implementing a combination of a dimensionless (0-1) global fatigue descriptor (GFD) and a support vector machine (SVM) classifier. The system, based on 9 main combined features, achieves fatigue regime classification performances of 0.82 ± 0.24, ensuring a successful preventive assessment when dangerous fatigue levels are reached. Training data were acquired in a constant work rate test (executed by 14 subjects using a cycloergometry device), where the variable under study (fatigue) gradually increased until the volunteer reached an objective exhaustion state.
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