Identification of physiological shock in intensive care units via Bayesian regime switching models
arXiv stat.ML / 3/24/2026
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Key Points
- The paper proposes a Bayesian regime switching model to detect occult hemorrhage in ICU patients by inferring a patient’s underlying physiological state from trends in vitals and labs.
- It uses longitudinal ICU data (33,924 encounters curated from Mayo Clinic) and models measurements with a vector autoregressive process conditioned on latent states that evolve via a Markov process.
- The method includes a novel Bayesian sampling routine to learn posterior probabilities over physiological states over time, enabling probabilistic assessment rather than deterministic detection.
- The approach also accounts for physiological changes that occurred before ICU admission, addressing baseline shifts that could otherwise confound detection.
- Simulation experiments and a real case study are presented to demonstrate the effectiveness of the regime-switching approach for earlier intervention potential.
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