Computable Phenotypes to Characterize Changing Patient Brain Dysfunction in the Intensive Care Unit
Yuanfang Ren (1, 2), Tyler J. Loftus (1, 3), Ziyuan Guan (1 and, 2), Rayon Uddin (1), Benjamin Shickel (1, 2), Carolina B. Maciel (4),, Katharina Busl (4), Parisa Rashidi (1, 5), Azra Bihorac (1, 2), and, Tezcan Ozrazgat-Baslanti (1, 2) ((1) Intelligent Critical Care Center,

TL;DR
This study developed automated algorithms to characterize and track ICU patients' brain dysfunction states, revealing distinct clinical trajectories and phenotypes, which could improve prognosis and decision-making in critical care.
Contribution
The paper introduces novel computable phenotypes and scoring algorithms for ICU brain dysfunction states, enabling detailed longitudinal analysis of patient trajectories.
Findings
Identified three main brain dysfunction phenotypes: persistent coma/delirium, normal, and transition states.
Quantified transition probabilities among brain states every 12 hours in ICU patients.
Demonstrated potential for these phenotypes to inform prognosis and resource allocation.
Abstract
In the United States, more than 5 million patients are admitted annually to ICUs, with ICU mortality of 10%-29% and costs over $82 billion. Acute brain dysfunction status, delirium, is often underdiagnosed or undervalued. This study's objective was to develop automated computable phenotypes for acute brain dysfunction states and describe transitions among brain dysfunction states to illustrate the clinical trajectories of ICU patients. We created two single-center, longitudinal EHR datasets for 48,817 adult patients admitted to an ICU at UFH Gainesville (GNV) and Jacksonville (JAX). We developed algorithms to quantify acute brain dysfunction status including coma, delirium, normal, or death at 12-hour intervals of each ICU admission and to identify acute brain dysfunction phenotypes using continuous acute brain dysfunction status and k-means clustering approach. There were 49,770…
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Taxonomy
TopicsIntensive Care Unit Cognitive Disorders · Machine Learning in Healthcare · Traumatic Brain Injury and Neurovascular Disturbances
Methodsk-Means Clustering
