Journal article

Value of laboratory results in addition to vital signs in a machine learning algorithm to predict in-hospital cardiac arrest: A singlecenter retrospective cohort study

R Ueno, L Xu, W Uegami, H Matsui, J Okui, H Hayashi, T Miyajima, Y Hayashi, D Pilcher, D Jones

Plos One | PUBLIC LIBRARY SCIENCE | Published : 2020

Open access

Abstract

Background Although machine learning-based prediction models for in-hospital cardiac arrest (IHCA) have been widely investigated, it is unknown whether a model based on vital signs alone (Vitals-Only model) can perform similarly to a model that considers both vital signs and laboratory results (Vitals+Labs model). Methods All adult patients hospitalized in a tertiary care hospital in Japan between October 2011 and October 2018 were included in this study. Random forest models with/without laboratory results (Vitals+Labs model and Vitals-Only model, respectively) were trained and tested using chronologically divided datasets. Both models use patient demographics and eighthourly vital signs co..

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University of Melbourne Researchers

Grants

Funding Acknowledgements

RU is supported by the Masason Foundation (MF) and has received a grant from MF. MF has not contributed to the study design, collection, management, analysis, and interpretation of data; the manuscript preparation; or the decision to submit the report for publication.