Cargando…

Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study

BACKGROUND: The early identification of clinical deterioration in patients in hospital units can decrease mortality rates and improve other patient outcomes; yet, this remains a challenge in busy hospital settings. Artificial intelligence (AI), in the form of predictive models, is increasingly being...

Descripción completa

Detalles Bibliográficos
Autores principales: Holdsworth, Laura M, Kling, Samantha M R, Smith, Margaret, Safaeinili, Nadia, Shieh, Lisa, Vilendrer, Stacie, Garvert, Donn W, Winget, Marcy, Asch, Steven M, Li, Ron C
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8295833/
https://www.ncbi.nlm.nih.gov/pubmed/34255728
http://dx.doi.org/10.2196/27532
_version_ 1783725502442242048
author Holdsworth, Laura M
Kling, Samantha M R
Smith, Margaret
Safaeinili, Nadia
Shieh, Lisa
Vilendrer, Stacie
Garvert, Donn W
Winget, Marcy
Asch, Steven M
Li, Ron C
author_facet Holdsworth, Laura M
Kling, Samantha M R
Smith, Margaret
Safaeinili, Nadia
Shieh, Lisa
Vilendrer, Stacie
Garvert, Donn W
Winget, Marcy
Asch, Steven M
Li, Ron C
author_sort Holdsworth, Laura M
collection PubMed
description BACKGROUND: The early identification of clinical deterioration in patients in hospital units can decrease mortality rates and improve other patient outcomes; yet, this remains a challenge in busy hospital settings. Artificial intelligence (AI), in the form of predictive models, is increasingly being explored for its potential to assist clinicians in predicting clinical deterioration. OBJECTIVE: Using the Systems Engineering Initiative for Patient Safety (SEIPS) 2.0 model, this study aims to assess whether an AI-enabled work system improves clinical outcomes, describe how the clinical deterioration index (CDI) predictive model and associated work processes are implemented, and define the emergent properties of the AI-enabled work system that mediate the observed clinical outcomes. METHODS: This study will use a mixed methods approach that is informed by the SEIPS 2.0 model to assess both processes and outcomes and focus on how physician-nurse clinical teams are affected by the presence of AI. The intervention will be implemented in hospital medicine units based on a modified stepped wedge design featuring three stages over 11 months—stage 0 represents a baseline period 10 months before the implementation of the intervention; stage 1 introduces the CDI predictions to physicians only and triggers a physician-driven workflow; and stage 2 introduces the CDI predictions to the multidisciplinary team, which includes physicians and nurses, and triggers a nurse-driven workflow. Quantitative data will be collected from the electronic health record for the clinical processes and outcomes. Interviews will be conducted with members of the multidisciplinary team to understand how the intervention changes the existing work system and processes. The SEIPS 2.0 model will provide an analytic framework for a mixed methods analysis. RESULTS: A pilot period for the study began in December 2020, and the results are expected in mid-2022. CONCLUSIONS: This protocol paper proposes an approach to evaluation that recognizes the importance of assessing both processes and outcomes to understand how a multifaceted AI-enabled intervention affects the complex team-based work of identifying and managing clinical deterioration. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): PRR1-10.2196/27532
format Online
Article
Text
id pubmed-8295833
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-82958332021-08-03 Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study Holdsworth, Laura M Kling, Samantha M R Smith, Margaret Safaeinili, Nadia Shieh, Lisa Vilendrer, Stacie Garvert, Donn W Winget, Marcy Asch, Steven M Li, Ron C JMIR Res Protoc Protocol BACKGROUND: The early identification of clinical deterioration in patients in hospital units can decrease mortality rates and improve other patient outcomes; yet, this remains a challenge in busy hospital settings. Artificial intelligence (AI), in the form of predictive models, is increasingly being explored for its potential to assist clinicians in predicting clinical deterioration. OBJECTIVE: Using the Systems Engineering Initiative for Patient Safety (SEIPS) 2.0 model, this study aims to assess whether an AI-enabled work system improves clinical outcomes, describe how the clinical deterioration index (CDI) predictive model and associated work processes are implemented, and define the emergent properties of the AI-enabled work system that mediate the observed clinical outcomes. METHODS: This study will use a mixed methods approach that is informed by the SEIPS 2.0 model to assess both processes and outcomes and focus on how physician-nurse clinical teams are affected by the presence of AI. The intervention will be implemented in hospital medicine units based on a modified stepped wedge design featuring three stages over 11 months—stage 0 represents a baseline period 10 months before the implementation of the intervention; stage 1 introduces the CDI predictions to physicians only and triggers a physician-driven workflow; and stage 2 introduces the CDI predictions to the multidisciplinary team, which includes physicians and nurses, and triggers a nurse-driven workflow. Quantitative data will be collected from the electronic health record for the clinical processes and outcomes. Interviews will be conducted with members of the multidisciplinary team to understand how the intervention changes the existing work system and processes. The SEIPS 2.0 model will provide an analytic framework for a mixed methods analysis. RESULTS: A pilot period for the study began in December 2020, and the results are expected in mid-2022. CONCLUSIONS: This protocol paper proposes an approach to evaluation that recognizes the importance of assessing both processes and outcomes to understand how a multifaceted AI-enabled intervention affects the complex team-based work of identifying and managing clinical deterioration. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): PRR1-10.2196/27532 JMIR Publications 2021-07-07 /pmc/articles/PMC8295833/ /pubmed/34255728 http://dx.doi.org/10.2196/27532 Text en ©Laura M Holdsworth, Samantha M R Kling, Margaret Smith, Nadia Safaeinili, Lisa Shieh, Stacie Vilendrer, Donn W Garvert, Marcy Winget, Steven M Asch, Ron C Li. Originally published in JMIR Research Protocols (https://www.researchprotocols.org), 07.07.2021. 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 Research Protocols, is properly cited. The complete bibliographic information, a link to the original publication on https://www.researchprotocols.org, as well as this copyright and license information must be included.
spellingShingle Protocol
Holdsworth, Laura M
Kling, Samantha M R
Smith, Margaret
Safaeinili, Nadia
Shieh, Lisa
Vilendrer, Stacie
Garvert, Donn W
Winget, Marcy
Asch, Steven M
Li, Ron C
Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title_full Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title_fullStr Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title_full_unstemmed Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title_short Predicting and Responding to Clinical Deterioration in Hospitalized Patients by Using Artificial Intelligence: Protocol for a Mixed Methods, Stepped Wedge Study
title_sort predicting and responding to clinical deterioration in hospitalized patients by using artificial intelligence: protocol for a mixed methods, stepped wedge study
topic Protocol
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8295833/
https://www.ncbi.nlm.nih.gov/pubmed/34255728
http://dx.doi.org/10.2196/27532
work_keys_str_mv AT holdsworthlauram predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT klingsamanthamr predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT smithmargaret predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT safaeinilinadia predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT shiehlisa predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT vilendrerstacie predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT garvertdonnw predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT wingetmarcy predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT aschstevenm predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy
AT lironc predictingandrespondingtoclinicaldeteriorationinhospitalizedpatientsbyusingartificialintelligenceprotocolforamixedmethodssteppedwedgestudy