Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial

Abstract Background Palliative care is a medical specialty centered on improving the quality of life (QOL) of patients with complex or life-threatening illnesses. The need for palliative care is increasing and with that the rigorous testing of triage tools that can be used quickly and reliably to id...

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Main Authors: Patrick M. Wilson, Lindsey M. Philpot, Priya Ramar, Curtis B. Storlie, Jacob Strand, Alisha A. Morgan, Shusaku W. Asai, Jon O. Ebbert, Vitaly D. Herasevich, Jalal Soleimani, Brian W. Pickering
Format: Article
Language:English
Published: BMC 2021-09-01
Series:Trials
Subjects:
AI
Online Access:https://doi.org/10.1186/s13063-021-05546-5
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spelling doaj-f8d91de6ecb14d0cacface8ddcfce08d2021-09-19T11:44:02ZengBMCTrials1745-62152021-09-012211910.1186/s13063-021-05546-5Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trialPatrick M. Wilson0Lindsey M. Philpot1Priya Ramar2Curtis B. Storlie3Jacob Strand4Alisha A. Morgan5Shusaku W. Asai6Jon O. Ebbert7Vitaly D. Herasevich8Jalal Soleimani9Brian W. Pickering10Kern Center for the Science of Health Care Delivery, Mayo ClinicDepartment of Quantitative Health Sciences, Mayo ClinicKern Center for the Science of Health Care Delivery, Mayo ClinicKern Center for the Science of Health Care Delivery, Mayo ClinicCenter for Palliative Medicine, Mayo ClinicCenter for Palliative Medicine, Mayo ClinicKern Center for the Science of Health Care Delivery, Mayo ClinicDepartment of Quantitative Health Sciences, Mayo ClinicDepartment of Anesthesiology, Mayo ClinicDepartment of Anesthesiology, Mayo ClinicDepartment of Anesthesiology, Mayo ClinicAbstract Background Palliative care is a medical specialty centered on improving the quality of life (QOL) of patients with complex or life-threatening illnesses. The need for palliative care is increasing and with that the rigorous testing of triage tools that can be used quickly and reliably to identify patients that may benefit from palliative care. Methods To that aim, we will conduct a two-armed stepped-wedge cluster randomized trial rolled out to two inpatient hospitals to evaluate whether a machine learning algorithm accurately identifies patients who may benefit from a comprehensive review by a palliative care specialist and decreases time to receiving a palliative care consult in hospital. This is a single-center study which will be conducted from August 2019 to November 2020 at Saint Mary’s Hospital & Methodist Hospital both within Mayo Clinic Rochester in Minnesota. Clusters will be nursing units which will be chosen to be a mix of complex patients from Cardiology, Critical Care, and Oncology and had previously established relationships with palliative medicine. The stepped wedge design will have 12 units allocated to a design matrix of 5 treatment wedges. Each wedge will last 75 days resulting in a study period of 12 months of recruitment unless otherwise specified. Data will be analyzed with Bayesian hierarchical models with credible intervals denoting statistical significance. Discussion This intervention offers a pragmatic approach to delivering specialty palliative care to hospital patients in need using machine learning, thereby leading to high value care and improved outcomes. It is not enough for AI to be utilized by simply publishing research showing predictive performance; clinical trials demonstrating better outcomes are critically needed. Furthermore, the deployment of an AI algorithm is a complex process that requires multiple teams with varying skill sets. To evaluate a deployed AI, a pragmatic clinical trial can accommodate the difficulties of clinical practice while retaining scientific rigor. Trial registration ClinicalTrials.gov NCT03976297 . Registered on 6 June 2019, prior to trial start.https://doi.org/10.1186/s13063-021-05546-5Palliative careElectronic medical recordArtificial intelligenceAIPragmatic clinical trialsStepped wedge trials
collection DOAJ
language English
format Article
sources DOAJ
author Patrick M. Wilson
Lindsey M. Philpot
Priya Ramar
Curtis B. Storlie
Jacob Strand
Alisha A. Morgan
Shusaku W. Asai
Jon O. Ebbert
Vitaly D. Herasevich
Jalal Soleimani
Brian W. Pickering
spellingShingle Patrick M. Wilson
Lindsey M. Philpot
Priya Ramar
Curtis B. Storlie
Jacob Strand
Alisha A. Morgan
Shusaku W. Asai
Jon O. Ebbert
Vitaly D. Herasevich
Jalal Soleimani
Brian W. Pickering
Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
Trials
Palliative care
Electronic medical record
Artificial intelligence
AI
Pragmatic clinical trials
Stepped wedge trials
author_facet Patrick M. Wilson
Lindsey M. Philpot
Priya Ramar
Curtis B. Storlie
Jacob Strand
Alisha A. Morgan
Shusaku W. Asai
Jon O. Ebbert
Vitaly D. Herasevich
Jalal Soleimani
Brian W. Pickering
author_sort Patrick M. Wilson
title Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
title_short Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
title_full Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
title_fullStr Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
title_full_unstemmed Improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
title_sort improving time to palliative care review with predictive modeling in an inpatient adult population: study protocol for a stepped-wedge, pragmatic randomized controlled trial
publisher BMC
series Trials
issn 1745-6215
publishDate 2021-09-01
description Abstract Background Palliative care is a medical specialty centered on improving the quality of life (QOL) of patients with complex or life-threatening illnesses. The need for palliative care is increasing and with that the rigorous testing of triage tools that can be used quickly and reliably to identify patients that may benefit from palliative care. Methods To that aim, we will conduct a two-armed stepped-wedge cluster randomized trial rolled out to two inpatient hospitals to evaluate whether a machine learning algorithm accurately identifies patients who may benefit from a comprehensive review by a palliative care specialist and decreases time to receiving a palliative care consult in hospital. This is a single-center study which will be conducted from August 2019 to November 2020 at Saint Mary’s Hospital & Methodist Hospital both within Mayo Clinic Rochester in Minnesota. Clusters will be nursing units which will be chosen to be a mix of complex patients from Cardiology, Critical Care, and Oncology and had previously established relationships with palliative medicine. The stepped wedge design will have 12 units allocated to a design matrix of 5 treatment wedges. Each wedge will last 75 days resulting in a study period of 12 months of recruitment unless otherwise specified. Data will be analyzed with Bayesian hierarchical models with credible intervals denoting statistical significance. Discussion This intervention offers a pragmatic approach to delivering specialty palliative care to hospital patients in need using machine learning, thereby leading to high value care and improved outcomes. It is not enough for AI to be utilized by simply publishing research showing predictive performance; clinical trials demonstrating better outcomes are critically needed. Furthermore, the deployment of an AI algorithm is a complex process that requires multiple teams with varying skill sets. To evaluate a deployed AI, a pragmatic clinical trial can accommodate the difficulties of clinical practice while retaining scientific rigor. Trial registration ClinicalTrials.gov NCT03976297 . Registered on 6 June 2019, prior to trial start.
topic Palliative care
Electronic medical record
Artificial intelligence
AI
Pragmatic clinical trials
Stepped wedge trials
url https://doi.org/10.1186/s13063-021-05546-5
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