Dynamic Prediction of ICU Mortality Risk Using Domain Adaptation
Tiago Alves, Alberto Laender, Adriano Veloso, Nivio Ziviani

TL;DR
This paper develops a domain adaptation approach for dynamic ICU mortality risk prediction using multivariate time-series data, improving accuracy across diverse patient populations and providing interpretable risk factors.
Contribution
It introduces a novel domain adaptation method for dynamic ICU mortality prediction that outperforms existing models across different ICU populations.
Findings
AUC improvements of 4-8% over baselines
Achieved AUC up to 0.88 in Cardiac ICU
Model provides interpretable factors for clinical use
Abstract
Early recognition of risky trajectories during an Intensive Care Unit (ICU) stay is one of the key steps towards improving patient survival. Learning trajectories from physiological signals continuously measured during an ICU stay requires learning time-series features that are robust and discriminative across diverse patient populations. Patients within different ICU populations (referred here as domains) vary by age, conditions and interventions. Thus, mortality prediction models using patient data from a particular ICU population may perform suboptimally in other populations because the features used to train such models have different distributions across the groups. In this paper, we explore domain adaptation strategies in order to learn mortality prediction models that extract and transfer complex temporal features from multivariate time-series ICU data. Features are extracted in…
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