A Data-Driven Approach to Physical Fatigue Management Using Wearable Sensors to Classify Four Diagnostic Fatigue States

被引:23
作者
Pinto-Bernal, Maria J. [1 ]
Cifuentes, Carlos A. [1 ]
Perdomo, Oscar [2 ]
Rincon-Roncancio, Monica [3 ]
Munera, Marcela [1 ]
机构
[1] Colombian Sch Engn Julio Garavito, Dept Biomed Engn, Bogota 111166, Colombia
[2] Univ Rosario, Sch Med & Hlth Sci, Bogota 111711, Colombia
[3] Fdn Cardioinfantil Inst Cardiol, Bogota 110131, Colombia
关键词
fatigue diagnosis; classification models; inertial measurement units; EMG; walking rehabilitation; physical exercise; CORONARY-HEART-DISEASE; TIME-FREQUENCY METHODS; MUSCLE FATIGUE; ACTIVITY RECOGNITION; PERCEIVED EXERTION; BLOOD LACTATE; ALL-CAUSE; EXERCISE; INTENSITY; GAIT;
D O I
10.3390/s21196401
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Physical exercise contributes to the success of rehabilitation programs and rehabilitation processes assisted through social robots. However, the amount and intensity of exercise needed to obtain positive results are unknown. Several considerations must be kept in mind for its implementation in rehabilitation, as monitoring of patients' intensity, which is essential to avoid extreme fatigue conditions, may cause physical and physiological complications. The use of machine learning models has been implemented in fatigue management, but is limited in practice due to the lack of understanding of how an individual's performance deteriorates with fatigue; this can vary based on physical exercise, environment, and the individual's characteristics. As a first step, this paper lays the foundation for a data analytic approach to managing fatigue in walking tasks. The proposed framework establishes the criteria for a feature and machine learning algorithm selection for fatigue management, classifying four fatigue diagnoses states. Based on the proposed framework and the classifier implemented, the random forest model presented the best performance with an average accuracy of >= 98% and F-score of >= 93%. This model was comprised of <= 16 features. In addition, the prediction performance was analyzed by limiting the sensors used from four IMUs to two or even one IMU with an overall performance of >= 88%.
引用
收藏
页数:25
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