AthleteGuard โ Non-Invasive Cortisol Prediction
A machine learning system that predicts cortisol levels from wearable physiological signals (HRV, ECG, EDA, EMG, Respiration) without blood tests.
Model Details
- Model: Gradient Boosting Regressor (tuned)
- Dataset: WESAD (15 subjects, chest-worn sensors)
- Target: RMSSD (cortisol proxy)
- Validation: Leave-One-Subject-Out Cross-Validation (LOSO-CV)
Performance
| Metric | Value |
|---|---|
| Test MAE | 6.82 ms |
| Test Rยฒ | 0.859 |
| LOSO Mean MAE | 9.93 ยฑ 7.31 ms |
| LOSO Mean Rยฒ | 0.756 |
Outputs
- Recovery Score (0-100) โ Daily training readiness
- Overtraining Risk Index โ Low / Medium / High via ACWR
- Pre-Competition Zone โ Underactivated / Optimal / Overactivated
Additional Models
- LSTM + Attention โ temporal cortisol trend tracking
- Autoencoder โ physiological anomaly detection (76.4% stress detection rate)
Authors
Shubhankur โ SRM Institute of Science and Technology
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