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Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients.

Publication ,  Journal Article
Walter, J; Ma, J; Platt, A; Acker, Y; Sendak, M; Gao, M; Gardner, M; Balu, S; Setji, N
Published in: Journal of Brown hospital medicine
January 2024

Advance care planning (ACP) is an important aspect of patient care that is underutilized. Machine learning (ML) models can help identify patients appropriate for ACP. The objective was to evaluate the impact of using provider notifications based on an ML model on the rate of ACP documentation and patient outcomes.This was a pre-post QI intervention study at a tertiary academic hospital. Adult patients admitted to general medicine teams identified to be at elevated risk of mortality using an ML model were included in the study. The intervention consisted of notifying a provider by email and page for a patient identified by the ML model.A total of 479 encounters were analyzed of which 282 encounters occurred post-intervention. The covariate-adjusted proportion of higher-risk patients with documented ACP rose from 6.0% at baseline to 56.5% (Risk Ratio (RR)= 9.42, 95% CI: 4.90 - 18.11). Patients with ACP were more than twice as likely to have code status reduced when ACP was documented (29.0% vs. 10.8% RR=2.69, 95% CI: 1.64 - 4.27). Additionally, patients with ACP had twice the odds of hospice referral (22.2% vs. 12.6% Odds Ratio=2.16, 95% CI: 1.16 - 4.01). However, patients with ACP documented had a longer mean LOS (9.7 vs. 7.6 days, Event time ratio = 1.29, 95% CI: 1.10 - 1.53).Provider notifications using an ML model can lead to an increase in completion of ACP documentation by frontline clinicians in the inpatient setting.

Duke Scholars

Published In

Journal of Brown hospital medicine

DOI

EISSN

2994-5593

ISSN

2994-5593

Publication Date

January 2024

Volume

3

Issue

3

Start / End Page

120907
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Walter, J., Ma, J., Platt, A., Acker, Y., Sendak, M., Gao, M., … Setji, N. (2024). Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients. Journal of Brown Hospital Medicine, 3(3), 120907. https://doi.org/10.56305/001c.120907
Walter, Jonathan, Jessica Ma, Alyssa Platt, Yvonne Acker, Mark Sendak, Michael Gao, Matt Gardner, Suresh Balu, and Noppon Setji. “Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients.Journal of Brown Hospital Medicine 3, no. 3 (January 2024): 120907. https://doi.org/10.56305/001c.120907.
Walter J, Ma J, Platt A, Acker Y, Sendak M, Gao M, et al. Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients. Journal of Brown hospital medicine. 2024 Jan;3(3):120907.
Walter, Jonathan, et al. “Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients.Journal of Brown Hospital Medicine, vol. 3, no. 3, Jan. 2024, p. 120907. Epmc, doi:10.56305/001c.120907.
Walter J, Ma J, Platt A, Acker Y, Sendak M, Gao M, Gardner M, Balu S, Setji N. Quality Improvement Study Using a Machine Learning Mortality Risk Prediction Model Notification System on Advance Care Planning in High-Risk Patients. Journal of Brown hospital medicine. 2024 Jan;3(3):120907.

Published In

Journal of Brown hospital medicine

DOI

EISSN

2994-5593

ISSN

2994-5593

Publication Date

January 2024

Volume

3

Issue

3

Start / End Page

120907