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Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods

BACKGROUND: COVID-19 has led to an unprecedented strain on health care facilities across the United States. Accurately identifying patients at an increased risk of deterioration may help hospitals manage their resources while improving the quality of patient care. Here, we present the results of an...

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Autores principales: Cummings, Brandon C, Ansari, Sardar, Motyka, Jonathan R, Wang, Guan, Medlin Jr, Richard P, Kronick, Steven L, Singh, Karandeep, Park, Pauline K, Napolitano, Lena M, Dickson, Robert P, Mathis, Michael R, Sjoding, Michael W, Admon, Andrew J, Blank, Ross, McSparron, Jakob I, Ward, Kevin R, Gillies, Christopher E
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8061893/
https://www.ncbi.nlm.nih.gov/pubmed/33818393
http://dx.doi.org/10.2196/25066
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author Cummings, Brandon C
Ansari, Sardar
Motyka, Jonathan R
Wang, Guan
Medlin Jr, Richard P
Kronick, Steven L
Singh, Karandeep
Park, Pauline K
Napolitano, Lena M
Dickson, Robert P
Mathis, Michael R
Sjoding, Michael W
Admon, Andrew J
Blank, Ross
McSparron, Jakob I
Ward, Kevin R
Gillies, Christopher E
author_facet Cummings, Brandon C
Ansari, Sardar
Motyka, Jonathan R
Wang, Guan
Medlin Jr, Richard P
Kronick, Steven L
Singh, Karandeep
Park, Pauline K
Napolitano, Lena M
Dickson, Robert P
Mathis, Michael R
Sjoding, Michael W
Admon, Andrew J
Blank, Ross
McSparron, Jakob I
Ward, Kevin R
Gillies, Christopher E
author_sort Cummings, Brandon C
collection PubMed
description BACKGROUND: COVID-19 has led to an unprecedented strain on health care facilities across the United States. Accurately identifying patients at an increased risk of deterioration may help hospitals manage their resources while improving the quality of patient care. Here, we present the results of an analytical model, Predicting Intensive Care Transfers and Other Unforeseen Events (PICTURE), to identify patients at high risk for imminent intensive care unit transfer, respiratory failure, or death, with the intention to improve the prediction of deterioration due to COVID-19. OBJECTIVE: This study aims to validate the PICTURE model’s ability to predict unexpected deterioration in general ward and COVID-19 patients, and to compare its performance with the Epic Deterioration Index (EDI), an existing model that has recently been assessed for use in patients with COVID-19. METHODS: The PICTURE model was trained and validated on a cohort of hospitalized non–COVID-19 patients using electronic health record data from 2014 to 2018. It was then applied to two holdout test sets: non–COVID-19 patients from 2019 and patients testing positive for COVID-19 in 2020. PICTURE results were aligned to EDI and NEWS scores for head-to-head comparison via area under the receiver operating characteristic curve (AUROC) and area under the precision-recall curve. We compared the models’ ability to predict an adverse event (defined as intensive care unit transfer, mechanical ventilation use, or death). Shapley values were used to provide explanations for PICTURE predictions. RESULTS: In non–COVID-19 general ward patients, PICTURE achieved an AUROC of 0.819 (95% CI 0.805-0.834) per observation, compared to the EDI’s AUROC of 0.763 (95% CI 0.746-0.781; n=21,740; P<.001). In patients testing positive for COVID-19, PICTURE again outperformed the EDI with an AUROC of 0.849 (95% CI 0.820-0.878) compared to the EDI’s AUROC of 0.803 (95% CI 0.772-0.838; n=607; P<.001). The most important variables influencing PICTURE predictions in the COVID-19 cohort were a rapid respiratory rate, a high level of oxygen support, low oxygen saturation, and impaired mental status (Glasgow Coma Scale). CONCLUSIONS: The PICTURE model is more accurate in predicting adverse patient outcomes for both general ward patients and COVID-19 positive patients in our cohorts compared to the EDI. The ability to consistently anticipate these events may be especially valuable when considering potential incipient waves of COVID-19 infections. The generalizability of the model will require testing in other health care systems for validation.
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spelling pubmed-80618932021-05-07 Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods Cummings, Brandon C Ansari, Sardar Motyka, Jonathan R Wang, Guan Medlin Jr, Richard P Kronick, Steven L Singh, Karandeep Park, Pauline K Napolitano, Lena M Dickson, Robert P Mathis, Michael R Sjoding, Michael W Admon, Andrew J Blank, Ross McSparron, Jakob I Ward, Kevin R Gillies, Christopher E JMIR Med Inform Original Paper BACKGROUND: COVID-19 has led to an unprecedented strain on health care facilities across the United States. Accurately identifying patients at an increased risk of deterioration may help hospitals manage their resources while improving the quality of patient care. Here, we present the results of an analytical model, Predicting Intensive Care Transfers and Other Unforeseen Events (PICTURE), to identify patients at high risk for imminent intensive care unit transfer, respiratory failure, or death, with the intention to improve the prediction of deterioration due to COVID-19. OBJECTIVE: This study aims to validate the PICTURE model’s ability to predict unexpected deterioration in general ward and COVID-19 patients, and to compare its performance with the Epic Deterioration Index (EDI), an existing model that has recently been assessed for use in patients with COVID-19. METHODS: The PICTURE model was trained and validated on a cohort of hospitalized non–COVID-19 patients using electronic health record data from 2014 to 2018. It was then applied to two holdout test sets: non–COVID-19 patients from 2019 and patients testing positive for COVID-19 in 2020. PICTURE results were aligned to EDI and NEWS scores for head-to-head comparison via area under the receiver operating characteristic curve (AUROC) and area under the precision-recall curve. We compared the models’ ability to predict an adverse event (defined as intensive care unit transfer, mechanical ventilation use, or death). Shapley values were used to provide explanations for PICTURE predictions. RESULTS: In non–COVID-19 general ward patients, PICTURE achieved an AUROC of 0.819 (95% CI 0.805-0.834) per observation, compared to the EDI’s AUROC of 0.763 (95% CI 0.746-0.781; n=21,740; P<.001). In patients testing positive for COVID-19, PICTURE again outperformed the EDI with an AUROC of 0.849 (95% CI 0.820-0.878) compared to the EDI’s AUROC of 0.803 (95% CI 0.772-0.838; n=607; P<.001). The most important variables influencing PICTURE predictions in the COVID-19 cohort were a rapid respiratory rate, a high level of oxygen support, low oxygen saturation, and impaired mental status (Glasgow Coma Scale). CONCLUSIONS: The PICTURE model is more accurate in predicting adverse patient outcomes for both general ward patients and COVID-19 positive patients in our cohorts compared to the EDI. The ability to consistently anticipate these events may be especially valuable when considering potential incipient waves of COVID-19 infections. The generalizability of the model will require testing in other health care systems for validation. JMIR Publications 2021-04-21 /pmc/articles/PMC8061893/ /pubmed/33818393 http://dx.doi.org/10.2196/25066 Text en ©Brandon C Cummings, Sardar Ansari, Jonathan R Motyka, Guan Wang, Richard P Medlin Jr, Steven L Kronick, Karandeep Singh, Pauline K Park, Lena M Napolitano, Robert P Dickson, Michael R Mathis, Michael W Sjoding, Andrew J Admon, Ross Blank, Jakob I McSparron, Kevin R Ward, Christopher E Gillies. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 21.04.2021. 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 work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on http://medinform.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Cummings, Brandon C
Ansari, Sardar
Motyka, Jonathan R
Wang, Guan
Medlin Jr, Richard P
Kronick, Steven L
Singh, Karandeep
Park, Pauline K
Napolitano, Lena M
Dickson, Robert P
Mathis, Michael R
Sjoding, Michael W
Admon, Andrew J
Blank, Ross
McSparron, Jakob I
Ward, Kevin R
Gillies, Christopher E
Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title_full Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title_fullStr Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title_full_unstemmed Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title_short Predicting Intensive Care Transfers and Other Unforeseen Events: Analytic Model Validation Study and Comparison to Existing Methods
title_sort predicting intensive care transfers and other unforeseen events: analytic model validation study and comparison to existing methods
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8061893/
https://www.ncbi.nlm.nih.gov/pubmed/33818393
http://dx.doi.org/10.2196/25066
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