|国家预印本平台
首页|Designing and validating a Markov model for hospital-based addiction consult service impact on 12-month drug and non-drug related mortality

Designing and validating a Markov model for hospital-based addiction consult service impact on 12-month drug and non-drug related mortality

Designing and validating a Markov model for hospital-based addiction consult service impact on 12-month drug and non-drug related mortality

来源:medRxiv_logomedRxiv
英文摘要

Abstract IntroductionAddiction consult services (ACS) engage hospitalized patients with opioid use disorder (OUD) in care and help meet their goals for substance use treatment. Little is known about how ACS affect mortality for patients with OUD. The objective of this study was to design and validate a model that estimates the impact of ACS care on 12-month mortality among hospitalized patients with OUD. MethodsWe developed a Markov model of referral to an ACS, post-discharge engagement in SUD care, and 12-month drug-related and non-drug related mortality among hospitalized patients with OUD. We populated our model using Oregon Medicaid data and validated it using international modeling standards. ResultsThere were 6,654 patients with OUD hospitalized from April 2015 through December 2017. There were 114 (1.7%) drug-related deaths and 408 (6.1%) non-drug related deaths at 12 months. Bayesian logistic regression models estimated four percent (4%, 95% CI= 2%, 6%) of patients were referred to an ACS. Of those, 47% (95% CI= 37%, 57%) engaged in post-discharge OUD care, versus 20% not referred to an ACS (95% CI= 16%, 24%). The risk of drug-related death at 12 months among patients in post-discharge OUD care was 3% (95% CI= 0%, 7%) versus 6% not in care (95% CI = 2%, 10%). The risk of non-drug related death was 7% (95% CI =1%, 13%) among patients in post-discharge OUD treatment, versus 9% not in care (95% CI= 5%, 13%). DiscussionOur novel Markov model reflects trajectories of care and survival for patients hospitalized with OUD. This model can be used to evaluate the impact of other clinical and policy changes to improve patient survival.

Barocas Joshua A.、McConnell K. John、Morris Cynthia D.、King Caroline A.、Englander Honora、Cook Ryan、Korthuis P. Todd

Section of Infectious Diseases, Boston University School of Medicine and Boston Medical CenterCenter for Health Systems Effectiveness, Oregon Health & Science UniversityDepartment of Medical Informatics and Clinical Epidemiology, Oregon Health & Science UniversityDept. of Biomedical Engineering, School of Medicine, Oregon Health & Science UniversityDepartment of Medicine, Section of Addiction Medicine, Oregon Health & Science UniversityDepartment of Medicine, Section of Addiction Medicine, Oregon Health & Science UniversityDepartment of Medicine, Section of Addiction Medicine, Oregon Health & Science University

10.1101/2020.12.01.20242164

医学研究方法医药卫生理论

OregonMedicaidAftercareBayes TheoremOpioid-Related DisordersPatient DischargeLogistic ModelsAddictive BehaviorReferral and Consultation1

Barocas Joshua A.,McConnell K. John,Morris Cynthia D.,King Caroline A.,Englander Honora,Cook Ryan,Korthuis P. Todd.Designing and validating a Markov model for hospital-based addiction consult service impact on 12-month drug and non-drug related mortality[EB/OL].(2025-03-28)[2025-06-06].https://www.medrxiv.org/content/10.1101/2020.12.01.20242164.点此复制

评论