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초록
Objective Fatigue is a critical indicator in modern health management, and efficient, accurate methods for predicting fatigue levels using wearable devices have garnered increasing attention. Although recent advancements have enabled non-invasive cortisol measurement via wearable sensors, it remains unclear how effectively cortisol, in combination with other physiological biomarkers, predicts fatigue. Therefore, this study aimed to evaluate the effectiveness of a multimodal machine learning model that integrates cortisol levels and heart rate variability (HRV) for fatigue prediction.Methods Data from 336 participants who completed the Fatigue Severity Scale (FSS) were analyzed. Missing data mechanisms for cortisol were examined, and multivariate imputation by chained equations (MICEs) were applied. A TabNet deep-learning model was used to predict low and high fatigue levels based on HRV and cortisol data.Results The model using only HRV variables achieved a test AUC of 0.774, whereas the model incorporating both HRV and cortisol levels achieved 0.741, indicating a minimal overall performance difference. Feature importance analysis revealed that, in the cortisol-included model, predictions relied on a limited set of features. When feature selection was applied to this model, a reduced set of variables-age, cortisol, and logarithmic very low frequency-achieved comparable predictive performance (AUC = 0.759) without performance degradation.Conclusion This study demonstrated that a fatigue prediction model based on cortisol and HRV can maintain significant predictive power with a reduced number of variables. These findings suggest the potential for practical implementation in wearable devices, enabling accurate fatigue monitoring while minimizing sensor count and computational burden.
키워드
- 제목
- Machine learning-based fatigue classification using heart rate variability and cortisol: A multimodal approach to wearable health monitoring
- 저자
- Kim, Joung Eun; Kim, Na Hyeon; Choi, Soo Kyung; Lee, Ji-Yoon; Lee, Keehyuck; Han, Jong Soo
- 발행일
- 2025
- 유형
- Article
- 저널명
- DIGITAL HEALTH
- 권
- 11