A Physiology-Driven Computational Model for Post-Cardiac Arrest Outcome Prediction
Han B. Kim, Hieu Nguyen, Qingchu Jin, Sharmila Tamby, Tatiana Gelaf, Romer, Eric Sung, Ran Liu, Joseph Greenstein, Jose I. Suarez, Christian, Storm, Raimond Winslow, Robert D. Stevens

TL;DR
This study develops and compares machine learning models that integrate physiological time series and electronic health record data to accurately predict neurological and survival outcomes in post-cardiac arrest patients early after ICU admission.
Contribution
It introduces a novel integrated modeling approach combining physiological time series and EHR data, improving early outcome prediction accuracy for post-CA patients.
Findings
Integrated models outperform single-source models in prediction accuracy.
ML classifiers surpass traditional logistic regression models.
Early physiological data reveal new factors linked to recovery.
Abstract
Patients resuscitated from cardiac arrest (CA) face a high risk of neurological disability and death, however pragmatic methods are lacking for accurate and reliable prognostication. The aim of this study was to build computational models to predict post-CA outcome by leveraging high-dimensional patient data available early after admission to the intensive care unit (ICU). We hypothesized that model performance could be enhanced by integrating physiological time series (PTS) data and by training machine learning (ML) classifiers. We compared three models integrating features extracted from the electronic health records (EHR) alone, features derived from PTS collected in the first 24hrs after ICU admission (PTS24), and models integrating PTS24 and EHR. Outcomes of interest were survival and neurological outcome at ICU discharge. Combined EHR-PTS24 models had higher discrimination (area…
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Taxonomy
TopicsCardiac Arrest and Resuscitation · Heart Rate Variability and Autonomic Control · Sepsis Diagnosis and Treatment
MethodsLogistic Regression
