2020
DOI: 10.1371/journal.pone.0229331
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Predicting Intensive Care Unit admission among patients presenting to the emergency department using machine learning and natural language processing

Abstract: The risk stratification of patients in the emergency department begins at triage. It is vital to stratify patients early based on their severity, since undertriage can lead to increased morbidity, mortality and costs. Our aim was to present a new approach to assist healthcare professionals at triage in the stratification of patients and in identifying those with higher risk of ICU admission. Adult patients assigned Manchester Triage System (MTS) or Emergency Severity Index (ESI) 1 to 3 from a Portuguese and a … Show more

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Cited by 51 publications
(50 citation statements)
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“…We used admission vitals instead of time series data. Consistent with our decision on using admission vitals for disease stratification, Fernandes and colleagues used ML and natural language processing algorithm to predict ICU admission among patients presenting to ER [ 19 ]. As with our results in COVID-19 patients, they noted initial vitals including heart rate, oxygen saturation, RR and sBP to be highly correlated to ICU admission.…”
Section: Discussionmentioning
confidence: 99%
“…We used admission vitals instead of time series data. Consistent with our decision on using admission vitals for disease stratification, Fernandes and colleagues used ML and natural language processing algorithm to predict ICU admission among patients presenting to ER [ 19 ]. As with our results in COVID-19 patients, they noted initial vitals including heart rate, oxygen saturation, RR and sBP to be highly correlated to ICU admission.…”
Section: Discussionmentioning
confidence: 99%
“…Supervised traditional machine learning algorithms and neural networks require labeled data, which are data mapped to their appropriate target variables, to learn to predict variables. Depending on the model's task, structured data already existing within the EMR can sometimes be used as labels for clinical documents, such as diagnosis codes, 27,28 admission and discharge events, 29,30 and survival outcomes. 31 However, for many document-level and all wordlevel tasks, creating labeled data remains a manual, expertise-and time-intensive process, limiting the availability and development of high quality labeled datasets despite the large amounts of latent data within the EMR.…”
Section: Recent Technical Advances In Nlpmentioning
confidence: 99%
“…6 Another similar machine learning model based on hospital data from a Portuguese and American hospital was able to predict the risk of ICU admission. 7 A study from Denmark using a machine learning model was able to predict 90-day mortality for intensive care unit patients using time series data. 8 The key findings of this model were that the predictive performance significantly improved over the These examples underscore the capabilities of machine learning.…”
Section: Le Sson S From the Pa S Tmentioning
confidence: 99%
“…Using a longitudinal dataset of electronic health records (EHR) from more than 700 000 patients, a machine learning model was able to predict future acute kidney injury 6 . Another similar machine learning model based on hospital data from a Portuguese and American hospital was able to predict the risk of ICU admission 7 . A study from Denmark using a machine learning model was able to predict 90‐day mortality for intensive care unit patients using time series data 8 .…”
Section: Lessons From the Pastmentioning
confidence: 99%