Alcohol detection model

Detection rationale

Alcohol produces a characteristic multi-signal biometric signature: HRV suppression, elevated resting heart rate, and disrupted sleep architecture. The combination is more discriminative than any single signal.

Primary signals

SignalDirectionMagnitudeDuration
RMSSD30–50% below baseline24–48 h
Resting HR+10–25 bpm above baseline12–24 h
REM sleep20–50% reduction1–2 nights
Sleep efficiencyMeasurable dropSame night
WASOIncreased arousalsSame night

Feature stack

Optimal multi-signal model combines:

  1. HRV delta from personal baseline (most important)
  2. RHR delta from personal baseline (corroborating)
  3. Sleep efficiency drop (context)
  4. Motion absence (rules out exercise-induced HRV suppression)
  5. REM suppression (strongest sleep-stage signal)

Wearable accuracy

  • Oura Gen 4: CCC=0.99, MAPE=5.96% for HRV — most accurate consumer wearable
  • Oura Gen 3: MAPE=7.15%
  • WHOOP: MAPE=8.17%
  • No wearable can specifically attribute HRV suppression to alcohol without contextual features

Differentiation from other stressors

StressorHRVRHRREMMotion
Alcohol↓↓↓↓
Vigorous exercise↑ (recovery REM)↑↑
Illness/infectionVariable
Poor sleep (behavioral)Variable↓ REMNormal

Expected AUC

  • Occasional users: AUC ~0.75–0.85
  • Heavy users: AUC worse unless tolerance-adjusted
  • Acute signals (same night): stronger than next-day signals

Limitations

  • Cannot specifically identify alcohol — only detects “physiological stress pattern consistent with alcohol”
  • Heavy drinkers with tolerance: acute HRV spike muted; must weight sleep signals more
  • Combining with self-report or contextual data (evening motion = low, no gym) dramatically improves specificity

Alcohol, HRV signatures (alcohol), Sleep architecture (alcohol)