Unsupervised Learning to Subphenotype Delirium Patients from Electronic
Health Records
- URL: http://arxiv.org/abs/2111.00592v1
- Date: Sun, 31 Oct 2021 20:58:57 GMT
- Title: Unsupervised Learning to Subphenotype Delirium Patients from Electronic
Health Records
- Authors: Yiqing Zhao, Yuan Luo
- Abstract summary: Delirium is a common acute onset brain dysfunction in the emergency setting and is associated with higher mortality.
It is difficult to detect and monitor since its presentations and risk factors can be different depending on the underlying medical condition of patients.
- Score: 5.183023864443785
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Delirium is a common acute onset brain dysfunction in the emergency setting
and is associated with higher mortality. It is difficult to detect and monitor
since its presentations and risk factors can be different depending on the
underlying medical condition of patients. In our study, we aimed to identify
subtypes within the delirium population and build subgroup-specific predictive
models to detect delirium using Medical Information Mart for Intensive Care IV
(MIMIC-IV) data. We showed that clusters exist within the delirium population.
Differences in feature importance were also observed for subgroup-specific
predictive models. Our work could recalibrate existing delirium prediction
models for each delirium subgroup and improve the precision of delirium
detection and monitoring for ICU or emergency department patients who had
highly heterogeneous medical conditions.
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