Cargando…

Physiologic signatures within six hours of hospitalization identify acute illness phenotypes

During the early stages of hospital admission, clinicians use limited information to make decisions as patient acuity evolves. We hypothesized that clustering analysis of vital signs measured within six hours of hospital admission would reveal distinct patient phenotypes with unique pathophysiologic...

Descripción completa

Detalles Bibliográficos
Autores principales: Ren, Yuanfang, Loftus, Tyler J., Li, Yanjun, Guan, Ziyuan, Ruppert, Matthew M., Datta, Shounak, Upchurch, Gilbert R., Tighe, Patrick J., Rashidi, Parisa, Shickel, Benjamin, Ozrazgat-Baslanti, Tezcan, Bihorac, Azra
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9802629/
https://www.ncbi.nlm.nih.gov/pubmed/36590701
http://dx.doi.org/10.1371/journal.pdig.0000110
_version_ 1784861717220556800
author Ren, Yuanfang
Loftus, Tyler J.
Li, Yanjun
Guan, Ziyuan
Ruppert, Matthew M.
Datta, Shounak
Upchurch, Gilbert R.
Tighe, Patrick J.
Rashidi, Parisa
Shickel, Benjamin
Ozrazgat-Baslanti, Tezcan
Bihorac, Azra
author_facet Ren, Yuanfang
Loftus, Tyler J.
Li, Yanjun
Guan, Ziyuan
Ruppert, Matthew M.
Datta, Shounak
Upchurch, Gilbert R.
Tighe, Patrick J.
Rashidi, Parisa
Shickel, Benjamin
Ozrazgat-Baslanti, Tezcan
Bihorac, Azra
author_sort Ren, Yuanfang
collection PubMed
description During the early stages of hospital admission, clinicians use limited information to make decisions as patient acuity evolves. We hypothesized that clustering analysis of vital signs measured within six hours of hospital admission would reveal distinct patient phenotypes with unique pathophysiological signatures and clinical outcomes. We created a longitudinal electronic health record dataset for 75,762 adult patient admissions to a tertiary care center in 2014–2016 lasting six hours or longer. Physiotypes were derived via unsupervised machine learning in a training cohort of 41,502 patients applying consensus k-means clustering to six vital signs measured within six hours of admission. Reproducibility and correlation with clinical biomarkers and outcomes were assessed in validation cohort of 17,415 patients and testing cohort of 16,845 patients. Training, validation, and testing cohorts had similar age (54–55 years) and sex (55% female), distributions. There were four distinct clusters. Physiotype A had physiologic signals consistent with early vasoplegia, hypothermia, and low-grade inflammation and favorable short-and long-term clinical outcomes despite early, severe illness. Physiotype B exhibited early tachycardia, tachypnea, and hypoxemia followed by the highest incidence of prolonged respiratory insufficiency, sepsis, acute kidney injury, and short- and long-term mortality. Physiotype C had minimal early physiological derangement and favorable clinical outcomes. Physiotype D had the greatest prevalence of chronic cardiovascular and kidney disease, presented with severely elevated blood pressure, and had good short-term outcomes but suffered increased 3-year mortality. Comparing sequential organ failure assessment (SOFA) scores across physiotypes demonstrated that clustering did not simply recapitulate previously established acuity assessments. In a heterogeneous cohort of hospitalized patients, unsupervised machine learning techniques applied to routine, early vital sign data identified physiotypes with unique disease categories and distinct clinical outcomes. This approach has the potential to augment understanding of pathophysiology by distilling thousands of disease states into a few physiological signatures.
format Online
Article
Text
id pubmed-9802629
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-98026292022-12-30 Physiologic signatures within six hours of hospitalization identify acute illness phenotypes Ren, Yuanfang Loftus, Tyler J. Li, Yanjun Guan, Ziyuan Ruppert, Matthew M. Datta, Shounak Upchurch, Gilbert R. Tighe, Patrick J. Rashidi, Parisa Shickel, Benjamin Ozrazgat-Baslanti, Tezcan Bihorac, Azra PLOS Digit Health Research Article During the early stages of hospital admission, clinicians use limited information to make decisions as patient acuity evolves. We hypothesized that clustering analysis of vital signs measured within six hours of hospital admission would reveal distinct patient phenotypes with unique pathophysiological signatures and clinical outcomes. We created a longitudinal electronic health record dataset for 75,762 adult patient admissions to a tertiary care center in 2014–2016 lasting six hours or longer. Physiotypes were derived via unsupervised machine learning in a training cohort of 41,502 patients applying consensus k-means clustering to six vital signs measured within six hours of admission. Reproducibility and correlation with clinical biomarkers and outcomes were assessed in validation cohort of 17,415 patients and testing cohort of 16,845 patients. Training, validation, and testing cohorts had similar age (54–55 years) and sex (55% female), distributions. There were four distinct clusters. Physiotype A had physiologic signals consistent with early vasoplegia, hypothermia, and low-grade inflammation and favorable short-and long-term clinical outcomes despite early, severe illness. Physiotype B exhibited early tachycardia, tachypnea, and hypoxemia followed by the highest incidence of prolonged respiratory insufficiency, sepsis, acute kidney injury, and short- and long-term mortality. Physiotype C had minimal early physiological derangement and favorable clinical outcomes. Physiotype D had the greatest prevalence of chronic cardiovascular and kidney disease, presented with severely elevated blood pressure, and had good short-term outcomes but suffered increased 3-year mortality. Comparing sequential organ failure assessment (SOFA) scores across physiotypes demonstrated that clustering did not simply recapitulate previously established acuity assessments. In a heterogeneous cohort of hospitalized patients, unsupervised machine learning techniques applied to routine, early vital sign data identified physiotypes with unique disease categories and distinct clinical outcomes. This approach has the potential to augment understanding of pathophysiology by distilling thousands of disease states into a few physiological signatures. Public Library of Science 2022-10-13 /pmc/articles/PMC9802629/ /pubmed/36590701 http://dx.doi.org/10.1371/journal.pdig.0000110 Text en © 2022 Ren et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Ren, Yuanfang
Loftus, Tyler J.
Li, Yanjun
Guan, Ziyuan
Ruppert, Matthew M.
Datta, Shounak
Upchurch, Gilbert R.
Tighe, Patrick J.
Rashidi, Parisa
Shickel, Benjamin
Ozrazgat-Baslanti, Tezcan
Bihorac, Azra
Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title_full Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title_fullStr Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title_full_unstemmed Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title_short Physiologic signatures within six hours of hospitalization identify acute illness phenotypes
title_sort physiologic signatures within six hours of hospitalization identify acute illness phenotypes
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9802629/
https://www.ncbi.nlm.nih.gov/pubmed/36590701
http://dx.doi.org/10.1371/journal.pdig.0000110
work_keys_str_mv AT renyuanfang physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT loftustylerj physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT liyanjun physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT guanziyuan physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT ruppertmatthewm physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT dattashounak physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT upchurchgilbertr physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT tighepatrickj physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT rashidiparisa physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT shickelbenjamin physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT ozrazgatbaslantitezcan physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes
AT bihoracazra physiologicsignatureswithinsixhoursofhospitalizationidentifyacuteillnessphenotypes