Cargando…

Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients

BACKGROUND: Approaches are needed to better delineate the continuum of opioid misuse that occurs in hospitalized patients. A prognostic enrichment strategy with latent class analysis (LCA) may facilitate treatment strategies in subtypes of opioid misuse. We aim to identify subtypes of patients with...

Descripción completa

Detalles Bibliográficos
Autores principales: Afshar, Majid, Joyce, Cara, Dligach, Dmitriy, Sharma, Brihat, Kania, Robert, Xie, Meng, Swope, Kristin, Salisbury-Afshar, Elizabeth, Karnik, Niranjan S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6634397/
https://www.ncbi.nlm.nih.gov/pubmed/31310611
http://dx.doi.org/10.1371/journal.pone.0219717
_version_ 1783435778715549696
author Afshar, Majid
Joyce, Cara
Dligach, Dmitriy
Sharma, Brihat
Kania, Robert
Xie, Meng
Swope, Kristin
Salisbury-Afshar, Elizabeth
Karnik, Niranjan S.
author_facet Afshar, Majid
Joyce, Cara
Dligach, Dmitriy
Sharma, Brihat
Kania, Robert
Xie, Meng
Swope, Kristin
Salisbury-Afshar, Elizabeth
Karnik, Niranjan S.
author_sort Afshar, Majid
collection PubMed
description BACKGROUND: Approaches are needed to better delineate the continuum of opioid misuse that occurs in hospitalized patients. A prognostic enrichment strategy with latent class analysis (LCA) may facilitate treatment strategies in subtypes of opioid misuse. We aim to identify subtypes of patients with opioid misuse and examine the distinctions between the subtypes by examining patient characteristics, topic models from clinical notes, and clinical outcomes. METHODS: This was an observational study of inpatient hospitalizations at a tertiary care center between 2007 and 2017. Patients with opioid misuse were identified using an operational definition applied to all inpatient encounters. LCA with eight class-defining variables from the electronic health record (EHR) was applied to identify subtypes in the cohort of patients with opioid misuse. Comparisons between subtypes were made using the following approaches: (1) descriptive statistics on patient characteristics and healthcare utilization using EHR data and census-level data; (2) topic models with natural language processing (NLP) from clinical notes; (3) association with hospital outcomes. FINDINGS: The analysis cohort was 6,224 (2.7% of all hospitalizations) patient encounters with opioid misuse with a data corpus of 422,147 clinical notes. LCA identified four subtypes with differing patient characteristics, topics from the clinical notes, and hospital outcomes. Class 1 was categorized by high hospital utilization with known opioid-related conditions (36.5%); Class 2 included patients with illicit use, low socioeconomic status, and psychoses (12.8%); Class 3 contained patients with alcohol use disorders with complications (39.2%); and class 4 consisted of those with low hospital utilization and incidental opioid misuse (11.5%). The following hospital outcomes were the highest for each subtype when compared against the other subtypes: readmission for class 1 (13.9% vs. 10.5%, p<0.01); discharge against medical advice for class 2 (12.3% vs. 5.3%, p<0.01); and in-hospital death for classes 3 and 4 (3.2% vs. 1.9%, p<0.01). CONCLUSIONS: A 4-class latent model was the most parsimonious model that defined clinically interpretable and relevant subtypes for opioid misuse. Distinct subtypes were delineated after examining multiple domains of EHR data and applying methods in artificial intelligence. The approach with LCA and readily available class-defining substance use variables from the EHR may be applied as a prognostic enrichment strategy for targeted interventions.
format Online
Article
Text
id pubmed-6634397
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-66343972019-07-25 Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients Afshar, Majid Joyce, Cara Dligach, Dmitriy Sharma, Brihat Kania, Robert Xie, Meng Swope, Kristin Salisbury-Afshar, Elizabeth Karnik, Niranjan S. PLoS One Research Article BACKGROUND: Approaches are needed to better delineate the continuum of opioid misuse that occurs in hospitalized patients. A prognostic enrichment strategy with latent class analysis (LCA) may facilitate treatment strategies in subtypes of opioid misuse. We aim to identify subtypes of patients with opioid misuse and examine the distinctions between the subtypes by examining patient characteristics, topic models from clinical notes, and clinical outcomes. METHODS: This was an observational study of inpatient hospitalizations at a tertiary care center between 2007 and 2017. Patients with opioid misuse were identified using an operational definition applied to all inpatient encounters. LCA with eight class-defining variables from the electronic health record (EHR) was applied to identify subtypes in the cohort of patients with opioid misuse. Comparisons between subtypes were made using the following approaches: (1) descriptive statistics on patient characteristics and healthcare utilization using EHR data and census-level data; (2) topic models with natural language processing (NLP) from clinical notes; (3) association with hospital outcomes. FINDINGS: The analysis cohort was 6,224 (2.7% of all hospitalizations) patient encounters with opioid misuse with a data corpus of 422,147 clinical notes. LCA identified four subtypes with differing patient characteristics, topics from the clinical notes, and hospital outcomes. Class 1 was categorized by high hospital utilization with known opioid-related conditions (36.5%); Class 2 included patients with illicit use, low socioeconomic status, and psychoses (12.8%); Class 3 contained patients with alcohol use disorders with complications (39.2%); and class 4 consisted of those with low hospital utilization and incidental opioid misuse (11.5%). The following hospital outcomes were the highest for each subtype when compared against the other subtypes: readmission for class 1 (13.9% vs. 10.5%, p<0.01); discharge against medical advice for class 2 (12.3% vs. 5.3%, p<0.01); and in-hospital death for classes 3 and 4 (3.2% vs. 1.9%, p<0.01). CONCLUSIONS: A 4-class latent model was the most parsimonious model that defined clinically interpretable and relevant subtypes for opioid misuse. Distinct subtypes were delineated after examining multiple domains of EHR data and applying methods in artificial intelligence. The approach with LCA and readily available class-defining substance use variables from the EHR may be applied as a prognostic enrichment strategy for targeted interventions. Public Library of Science 2019-07-16 /pmc/articles/PMC6634397/ /pubmed/31310611 http://dx.doi.org/10.1371/journal.pone.0219717 Text en © 2019 Afshar et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Afshar, Majid
Joyce, Cara
Dligach, Dmitriy
Sharma, Brihat
Kania, Robert
Xie, Meng
Swope, Kristin
Salisbury-Afshar, Elizabeth
Karnik, Niranjan S.
Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title_full Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title_fullStr Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title_full_unstemmed Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title_short Subtypes in patients with opioid misuse: A prognostic enrichment strategy using electronic health record data in hospitalized patients
title_sort subtypes in patients with opioid misuse: a prognostic enrichment strategy using electronic health record data in hospitalized patients
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6634397/
https://www.ncbi.nlm.nih.gov/pubmed/31310611
http://dx.doi.org/10.1371/journal.pone.0219717
work_keys_str_mv AT afsharmajid subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT joycecara subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT dligachdmitriy subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT sharmabrihat subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT kaniarobert subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT xiemeng subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT swopekristin subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT salisburyafsharelizabeth subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients
AT karnikniranjans subtypesinpatientswithopioidmisuseaprognosticenrichmentstrategyusingelectronichealthrecorddatainhospitalizedpatients