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Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm

IMPORTANCE: Goal-concordant care is an ongoing challenge in hospital settings. Identification of high mortality risk within 30 days may call attention to the need to have serious illness conversations, including the documentation of patient goals of care. OBJECTIVE: To examine goals of care discussi...

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Autores principales: Chi, Stephen, Kim, Seunghwan, Reuter, Matthew, Ponzillo, Katharine, Oliver, Debra Parker, Foraker, Randi, Heard, Kevin, Liu, Jingxia, Pitzer, Kyle, White, Patrick, Moore, Nathan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10114011/
https://www.ncbi.nlm.nih.gov/pubmed/37071421
http://dx.doi.org/10.1001/jamanetworkopen.2023.8795
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author Chi, Stephen
Kim, Seunghwan
Reuter, Matthew
Ponzillo, Katharine
Oliver, Debra Parker
Foraker, Randi
Heard, Kevin
Liu, Jingxia
Pitzer, Kyle
White, Patrick
Moore, Nathan
author_facet Chi, Stephen
Kim, Seunghwan
Reuter, Matthew
Ponzillo, Katharine
Oliver, Debra Parker
Foraker, Randi
Heard, Kevin
Liu, Jingxia
Pitzer, Kyle
White, Patrick
Moore, Nathan
author_sort Chi, Stephen
collection PubMed
description IMPORTANCE: Goal-concordant care is an ongoing challenge in hospital settings. Identification of high mortality risk within 30 days may call attention to the need to have serious illness conversations, including the documentation of patient goals of care. OBJECTIVE: To examine goals of care discussions (GOCDs) in a community hospital setting with patients identified as having a high risk of mortality by a machine learning mortality prediction algorithm. DESIGN, SETTING, AND PARTICIPANTS: This cohort study took place at community hospitals within 1 health care system. Participants included adult patients with a high risk of 30-day mortality who were admitted to 1 of 4 hospitals between January 2 and July 15, 2021. Patient encounters of inpatients in the intervention hospital where physicians were notified of the computed high risk mortality score were compared with patient encounters of inpatients in 3 community hospitals without the intervention (ie, matched control). INTERVENTION: Physicians of patients with a high risk of mortality within 30 days received notification and were encouraged to arrange for GOCDs. MAIN OUTCOMES AND MEASURES: The primary outcome was the percentage change of documented GOCDs prior to discharge. Propensity-score matching was completed on a preintervention and postintervention period using age, sex, race, COVID-19 status, and machine learning-predicted mortality risk scores. A difference-in-difference analysis validated the results. RESULTS: Overall, 537 patients were included in this study with 201 in the preintervention period (94 in the intervention group; 104 in the control group) and 336 patients in the postintervention period. The intervention and control groups included 168 patients per group and were well-balanced in age (mean [SD], 79.3 [9.60] vs 79.6 [9.21] years; standardized mean difference [SMD], 0.03), sex (female, 85 [51%] vs 85 [51%]; SMD, 0), race (White patients, 145 [86%] vs 144 [86%]; SMD 0.006), and Charlson comorbidities (median [range], 8.00 [2.00-15.0] vs 9.00 [2.00 to 19.0]; SMD, 0.34). Patients in the intervention group from preintervention to postintervention period were associated with being 5 times more likely to have documented GOCDs (OR, 5.11 [95% CI, 1.93 to 13.42]; P = .001) by discharge compared with matched controls, and GOCD occurred significantly earlier in the hospitalization in the intervention patients as compared with matched controls (median, 4 [95% CI, 3 to 6] days vs 16 [95% CI, 15 to not applicable] days; P < .001). Similar findings were observed for Black patient and White patient subgroups. CONCLUSIONS AND RELEVANCE: In this cohort study, patients whose physicians had knowledge of high-risk predictions from machine learning mortality algorithms were associated with being 5 times more likely to have documented GOCDs than matched controls. Additional external validation is needed to determine if similar interventions would be helpful at other institutions.
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spelling pubmed-101140112023-04-20 Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm Chi, Stephen Kim, Seunghwan Reuter, Matthew Ponzillo, Katharine Oliver, Debra Parker Foraker, Randi Heard, Kevin Liu, Jingxia Pitzer, Kyle White, Patrick Moore, Nathan JAMA Netw Open Original Investigation IMPORTANCE: Goal-concordant care is an ongoing challenge in hospital settings. Identification of high mortality risk within 30 days may call attention to the need to have serious illness conversations, including the documentation of patient goals of care. OBJECTIVE: To examine goals of care discussions (GOCDs) in a community hospital setting with patients identified as having a high risk of mortality by a machine learning mortality prediction algorithm. DESIGN, SETTING, AND PARTICIPANTS: This cohort study took place at community hospitals within 1 health care system. Participants included adult patients with a high risk of 30-day mortality who were admitted to 1 of 4 hospitals between January 2 and July 15, 2021. Patient encounters of inpatients in the intervention hospital where physicians were notified of the computed high risk mortality score were compared with patient encounters of inpatients in 3 community hospitals without the intervention (ie, matched control). INTERVENTION: Physicians of patients with a high risk of mortality within 30 days received notification and were encouraged to arrange for GOCDs. MAIN OUTCOMES AND MEASURES: The primary outcome was the percentage change of documented GOCDs prior to discharge. Propensity-score matching was completed on a preintervention and postintervention period using age, sex, race, COVID-19 status, and machine learning-predicted mortality risk scores. A difference-in-difference analysis validated the results. RESULTS: Overall, 537 patients were included in this study with 201 in the preintervention period (94 in the intervention group; 104 in the control group) and 336 patients in the postintervention period. The intervention and control groups included 168 patients per group and were well-balanced in age (mean [SD], 79.3 [9.60] vs 79.6 [9.21] years; standardized mean difference [SMD], 0.03), sex (female, 85 [51%] vs 85 [51%]; SMD, 0), race (White patients, 145 [86%] vs 144 [86%]; SMD 0.006), and Charlson comorbidities (median [range], 8.00 [2.00-15.0] vs 9.00 [2.00 to 19.0]; SMD, 0.34). Patients in the intervention group from preintervention to postintervention period were associated with being 5 times more likely to have documented GOCDs (OR, 5.11 [95% CI, 1.93 to 13.42]; P = .001) by discharge compared with matched controls, and GOCD occurred significantly earlier in the hospitalization in the intervention patients as compared with matched controls (median, 4 [95% CI, 3 to 6] days vs 16 [95% CI, 15 to not applicable] days; P < .001). Similar findings were observed for Black patient and White patient subgroups. CONCLUSIONS AND RELEVANCE: In this cohort study, patients whose physicians had knowledge of high-risk predictions from machine learning mortality algorithms were associated with being 5 times more likely to have documented GOCDs than matched controls. Additional external validation is needed to determine if similar interventions would be helpful at other institutions. American Medical Association 2023-04-18 /pmc/articles/PMC10114011/ /pubmed/37071421 http://dx.doi.org/10.1001/jamanetworkopen.2023.8795 Text en Copyright 2023 Chi S et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Chi, Stephen
Kim, Seunghwan
Reuter, Matthew
Ponzillo, Katharine
Oliver, Debra Parker
Foraker, Randi
Heard, Kevin
Liu, Jingxia
Pitzer, Kyle
White, Patrick
Moore, Nathan
Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title_full Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title_fullStr Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title_full_unstemmed Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title_short Advanced Care Planning for Hospitalized Patients Following Clinician Notification of Patient Mortality by a Machine Learning Algorithm
title_sort advanced care planning for hospitalized patients following clinician notification of patient mortality by a machine learning algorithm
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10114011/
https://www.ncbi.nlm.nih.gov/pubmed/37071421
http://dx.doi.org/10.1001/jamanetworkopen.2023.8795
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