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Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System

BACKGROUND: Timely referral for specialist evaluation in patients with advanced heart failure (HF) is a Class 1 recommendation. However, the transition from stage C HF to advanced or stage D HF often goes undetected in routine care, resulting in delayed referral and higher mortality rates. OBJECTIVE...

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Autores principales: Cheema, Baljash, Mutharasan, R. Kannan, Sharma, Aditya, Jacobs, Maia, Powers, Kaleigh, Lehrer, Susan, Wehbe, Firas H., Ronald, Jason, Pifer, Lindsay, Rich, Jonathan D., Ghafourian, Kambiz, Tibrewala, Anjan, McCarthy, Patrick, Luo, Yuan, Pham, Duc T., Wilcox, Jane E., Ahmad, Faraz S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9838119/
https://www.ncbi.nlm.nih.gov/pubmed/36643021
http://dx.doi.org/10.1016/j.jacadv.2022.100123
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author Cheema, Baljash
Mutharasan, R. Kannan
Sharma, Aditya
Jacobs, Maia
Powers, Kaleigh
Lehrer, Susan
Wehbe, Firas H.
Ronald, Jason
Pifer, Lindsay
Rich, Jonathan D.
Ghafourian, Kambiz
Tibrewala, Anjan
McCarthy, Patrick
Luo, Yuan
Pham, Duc T.
Wilcox, Jane E.
Ahmad, Faraz S.
author_facet Cheema, Baljash
Mutharasan, R. Kannan
Sharma, Aditya
Jacobs, Maia
Powers, Kaleigh
Lehrer, Susan
Wehbe, Firas H.
Ronald, Jason
Pifer, Lindsay
Rich, Jonathan D.
Ghafourian, Kambiz
Tibrewala, Anjan
McCarthy, Patrick
Luo, Yuan
Pham, Duc T.
Wilcox, Jane E.
Ahmad, Faraz S.
author_sort Cheema, Baljash
collection PubMed
description BACKGROUND: Timely referral for specialist evaluation in patients with advanced heart failure (HF) is a Class 1 recommendation. However, the transition from stage C HF to advanced or stage D HF often goes undetected in routine care, resulting in delayed referral and higher mortality rates. OBJECTIVES: The authors sought to develop an augmented intelligence-enabled workflow using machine learning to identify patients with stage D HF and streamline referral. METHODS: We extracted data on HF patients with encounters from January 1, 2007, to November 30, 2020, from a HF registry within a regional, integrated health system. We created an ensemble machine learning model to predict stage C or stage D HF and integrated the results within the electronic health record. RESULTS: In a retrospective data set of 14,846 patients, the model had a good positive predictive value (60%) and low sensitivity (25%) for identifying stage D HF in a 100-person, physician-reviewed, holdout test set. During prospective implementation of the workflow from April 1, 2021, to February 15, 2022, 416 patients were reviewed by a clinical coordinator, with agreement between the model and the coordinator in 50.3% of stage D predictions. Twenty-four patients have been scheduled for evaluation in a HF clinic, 4 patients started an evaluation for advanced therapies, and 1 patient received a left ventricular assist device. CONCLUSIONS: An augmented intelligence-enabled workflow was integrated into clinical operations to identify patients with advanced HF. Endeavors such as this require a multidisciplinary team with experience in design thinking, informatics, quality improvement, operations, and health information technology, as well as dedicated resources to monitor and improve performance over time.
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spelling pubmed-98381192023-01-13 Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System Cheema, Baljash Mutharasan, R. Kannan Sharma, Aditya Jacobs, Maia Powers, Kaleigh Lehrer, Susan Wehbe, Firas H. Ronald, Jason Pifer, Lindsay Rich, Jonathan D. Ghafourian, Kambiz Tibrewala, Anjan McCarthy, Patrick Luo, Yuan Pham, Duc T. Wilcox, Jane E. Ahmad, Faraz S. JACC Adv Article BACKGROUND: Timely referral for specialist evaluation in patients with advanced heart failure (HF) is a Class 1 recommendation. However, the transition from stage C HF to advanced or stage D HF often goes undetected in routine care, resulting in delayed referral and higher mortality rates. OBJECTIVES: The authors sought to develop an augmented intelligence-enabled workflow using machine learning to identify patients with stage D HF and streamline referral. METHODS: We extracted data on HF patients with encounters from January 1, 2007, to November 30, 2020, from a HF registry within a regional, integrated health system. We created an ensemble machine learning model to predict stage C or stage D HF and integrated the results within the electronic health record. RESULTS: In a retrospective data set of 14,846 patients, the model had a good positive predictive value (60%) and low sensitivity (25%) for identifying stage D HF in a 100-person, physician-reviewed, holdout test set. During prospective implementation of the workflow from April 1, 2021, to February 15, 2022, 416 patients were reviewed by a clinical coordinator, with agreement between the model and the coordinator in 50.3% of stage D predictions. Twenty-four patients have been scheduled for evaluation in a HF clinic, 4 patients started an evaluation for advanced therapies, and 1 patient received a left ventricular assist device. CONCLUSIONS: An augmented intelligence-enabled workflow was integrated into clinical operations to identify patients with advanced HF. Endeavors such as this require a multidisciplinary team with experience in design thinking, informatics, quality improvement, operations, and health information technology, as well as dedicated resources to monitor and improve performance over time. 2022-10 2022-10-01 /pmc/articles/PMC9838119/ /pubmed/36643021 http://dx.doi.org/10.1016/j.jacadv.2022.100123 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) ).
spellingShingle Article
Cheema, Baljash
Mutharasan, R. Kannan
Sharma, Aditya
Jacobs, Maia
Powers, Kaleigh
Lehrer, Susan
Wehbe, Firas H.
Ronald, Jason
Pifer, Lindsay
Rich, Jonathan D.
Ghafourian, Kambiz
Tibrewala, Anjan
McCarthy, Patrick
Luo, Yuan
Pham, Duc T.
Wilcox, Jane E.
Ahmad, Faraz S.
Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title_full Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title_fullStr Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title_full_unstemmed Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title_short Augmented Intelligence to Identify Patients With Advanced Heart Failure in an Integrated Health System
title_sort augmented intelligence to identify patients with advanced heart failure in an integrated health system
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9838119/
https://www.ncbi.nlm.nih.gov/pubmed/36643021
http://dx.doi.org/10.1016/j.jacadv.2022.100123
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