Cargando…
Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City
Background: The progression of clinical manifestations in patients with coronavirus disease 2019 (COVID-19) highlights the need to account for symptom duration at the time of hospital presentation in decision-making algorithms. Methods: We performed a nested case–control analysis of 4103 adult patie...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397083/ https://www.ncbi.nlm.nih.gov/pubmed/34441819 http://dx.doi.org/10.3390/jcm10163523 |
_version_ | 1783744534451060736 |
---|---|
author | Zucker, Jason Gomez-Simmonds, Angela Purpura, Lawrence J. Shoucri, Sherif LaSota, Elijah Morley, Nicholas E. Sovic, Brit W. Castellon, Marvin A. Theodore, Deborah A. Bartram, Logan L. Miko, Benjamin A. Scherer, Matthew L. Meyers, Kathrine A. Turner, William C. Kelly, Maureen Pavlicova, Martina Basaraba, Cale N. Baldwin, Matthew R. Brodie, Daniel Burkart, Kristin M. Bathon, Joan Uhlemann, Anne-Catrin Yin, Michael T. Castor, Delivette Sobieszczyk, Magdalena E. |
author_facet | Zucker, Jason Gomez-Simmonds, Angela Purpura, Lawrence J. Shoucri, Sherif LaSota, Elijah Morley, Nicholas E. Sovic, Brit W. Castellon, Marvin A. Theodore, Deborah A. Bartram, Logan L. Miko, Benjamin A. Scherer, Matthew L. Meyers, Kathrine A. Turner, William C. Kelly, Maureen Pavlicova, Martina Basaraba, Cale N. Baldwin, Matthew R. Brodie, Daniel Burkart, Kristin M. Bathon, Joan Uhlemann, Anne-Catrin Yin, Michael T. Castor, Delivette Sobieszczyk, Magdalena E. |
author_sort | Zucker, Jason |
collection | PubMed |
description | Background: The progression of clinical manifestations in patients with coronavirus disease 2019 (COVID-19) highlights the need to account for symptom duration at the time of hospital presentation in decision-making algorithms. Methods: We performed a nested case–control analysis of 4103 adult patients with COVID-19 and at least 28 days of follow-up who presented to a New York City medical center. Multivariable logistic regression and classification and regression tree (CART) analysis were used to identify predictors of poor outcome. Results: Patients presenting to the hospital earlier in their disease course were older, had more comorbidities, and a greater proportion decompensated (<4 days, 41%; 4–8 days, 31%; >8 days, 26%). The first recorded oxygen delivery method was the most important predictor of decompensation overall in CART analysis. In patients with symptoms for <4, 4–8, and >8 days, requiring at least non-rebreather, age ≥ 63 years, and neutrophil/lymphocyte ratio ≥ 5.1; requiring at least non-rebreather, IL-6 ≥ 24.7 pg/mL, and D-dimer ≥ 2.4 µg/mL; and IL-6 ≥ 64.3 pg/mL, requiring non-rebreather, and CRP ≥ 152.5 mg/mL in predictive models were independently associated with poor outcome, respectively. Conclusion: Symptom duration in tandem with initial clinical and laboratory markers can be used to identify patients with COVID-19 at increased risk for poor outcomes. |
format | Online Article Text |
id | pubmed-8397083 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-83970832021-08-28 Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City Zucker, Jason Gomez-Simmonds, Angela Purpura, Lawrence J. Shoucri, Sherif LaSota, Elijah Morley, Nicholas E. Sovic, Brit W. Castellon, Marvin A. Theodore, Deborah A. Bartram, Logan L. Miko, Benjamin A. Scherer, Matthew L. Meyers, Kathrine A. Turner, William C. Kelly, Maureen Pavlicova, Martina Basaraba, Cale N. Baldwin, Matthew R. Brodie, Daniel Burkart, Kristin M. Bathon, Joan Uhlemann, Anne-Catrin Yin, Michael T. Castor, Delivette Sobieszczyk, Magdalena E. J Clin Med Article Background: The progression of clinical manifestations in patients with coronavirus disease 2019 (COVID-19) highlights the need to account for symptom duration at the time of hospital presentation in decision-making algorithms. Methods: We performed a nested case–control analysis of 4103 adult patients with COVID-19 and at least 28 days of follow-up who presented to a New York City medical center. Multivariable logistic regression and classification and regression tree (CART) analysis were used to identify predictors of poor outcome. Results: Patients presenting to the hospital earlier in their disease course were older, had more comorbidities, and a greater proportion decompensated (<4 days, 41%; 4–8 days, 31%; >8 days, 26%). The first recorded oxygen delivery method was the most important predictor of decompensation overall in CART analysis. In patients with symptoms for <4, 4–8, and >8 days, requiring at least non-rebreather, age ≥ 63 years, and neutrophil/lymphocyte ratio ≥ 5.1; requiring at least non-rebreather, IL-6 ≥ 24.7 pg/mL, and D-dimer ≥ 2.4 µg/mL; and IL-6 ≥ 64.3 pg/mL, requiring non-rebreather, and CRP ≥ 152.5 mg/mL in predictive models were independently associated with poor outcome, respectively. Conclusion: Symptom duration in tandem with initial clinical and laboratory markers can be used to identify patients with COVID-19 at increased risk for poor outcomes. MDPI 2021-08-11 /pmc/articles/PMC8397083/ /pubmed/34441819 http://dx.doi.org/10.3390/jcm10163523 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Zucker, Jason Gomez-Simmonds, Angela Purpura, Lawrence J. Shoucri, Sherif LaSota, Elijah Morley, Nicholas E. Sovic, Brit W. Castellon, Marvin A. Theodore, Deborah A. Bartram, Logan L. Miko, Benjamin A. Scherer, Matthew L. Meyers, Kathrine A. Turner, William C. Kelly, Maureen Pavlicova, Martina Basaraba, Cale N. Baldwin, Matthew R. Brodie, Daniel Burkart, Kristin M. Bathon, Joan Uhlemann, Anne-Catrin Yin, Michael T. Castor, Delivette Sobieszczyk, Magdalena E. Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title | Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title_full | Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title_fullStr | Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title_full_unstemmed | Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title_short | Supervised Machine Learning Approach to Identify Early Predictors of Poor Outcome in Patients with COVID-19 Presenting to a Large Quaternary Care Hospital in New York City |
title_sort | supervised machine learning approach to identify early predictors of poor outcome in patients with covid-19 presenting to a large quaternary care hospital in new york city |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397083/ https://www.ncbi.nlm.nih.gov/pubmed/34441819 http://dx.doi.org/10.3390/jcm10163523 |
work_keys_str_mv | AT zuckerjason supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT gomezsimmondsangela supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT purpuralawrencej supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT shoucrisherif supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT lasotaelijah supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT morleynicholase supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT sovicbritw supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT castellonmarvina supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT theodoredeboraha supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT bartramloganl supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT mikobenjamina supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT scherermatthewl supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT meyerskathrinea supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT turnerwilliamc supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT kellymaureen supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT pavlicovamartina supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT basarabacalen supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT baldwinmatthewr supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT brodiedaniel supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT burkartkristinm supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT bathonjoan supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT uhlemannannecatrin supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT yinmichaelt supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT castordelivette supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity AT sobieszczykmagdalenae supervisedmachinelearningapproachtoidentifyearlypredictorsofpooroutcomeinpatientswithcovid19presentingtoalargequaternarycarehospitalinnewyorkcity |