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1.
BMC Med Inform Decis Mak ; 20(1): 79, 2020 04 29.
Artículo en Inglés | MEDLINE | ID: mdl-32349766

RESUMEN

BACKGROUND: Automated de-identification methods for removing protected health information (PHI) from the source notes of the electronic health record (EHR) rely on building systems to recognize mentions of PHI in text, but they remain inadequate at ensuring perfect PHI removal. As an alternative to relying on de-identification systems, we propose the following solutions: (1) Mapping the corpus of documents to standardized medical vocabulary (concept unique identifier [CUI] codes mapped from the Unified Medical Language System) thus eliminating PHI as inputs to a machine learning model; and (2) training character-based machine learning models that obviate the need for a dictionary containing input words/n-grams. We aim to test the performance of models with and without PHI in a use-case for an opioid misuse classifier. METHODS: An observational cohort sampled from adult hospital inpatient encounters at a health system between 2007 and 2017. A case-control stratified sampling (n = 1000) was performed to build an annotated dataset for a reference standard of cases and non-cases of opioid misuse. Models for training and testing included CUI codes, character-based, and n-gram features. Models applied were machine learning with neural network and logistic regression as well as expert consensus with a rule-based model for opioid misuse. The area under the receiver operating characteristic curves (AUROC) were compared between models for discrimination. The Hosmer-Lemeshow test and visual plots measured model fit and calibration. RESULTS: Machine learning models with CUI codes performed similarly to n-gram models with PHI. The top performing models with AUROCs > 0.90 included CUI codes as inputs to a convolutional neural network, max pooling network, and logistic regression model. The top calibrated models with the best model fit were the CUI-based convolutional neural network and max pooling network. The top weighted CUI codes in logistic regression has the related terms 'Heroin' and 'Victim of abuse'. CONCLUSIONS: We demonstrate good test characteristics for an opioid misuse computable phenotype that is void of any PHI and performs similarly to models that use PHI. Herein we share a PHI-free, trained opioid misuse classifier for other researchers and health systems to use and benchmark to overcome privacy and security concerns.


Asunto(s)
Aprendizaje Automático , Procesamiento de Lenguaje Natural , Trastornos Relacionados con Opioides/diagnóstico , Adulto , Registros Electrónicos de Salud , Humanos , Pacientes Internos , Registros Médicos , Unified Medical Language System
2.
J Addict Med ; 17(2): 169-173, 2023.
Artículo en Inglés | MEDLINE | ID: mdl-36084213

RESUMEN

OBJECTIVES: Even where treatment is available, people who use drugs (PWUD) may not seek help. Few published studies examine beliefs, experiences, and perceptions of evidence-based treatment among PWUD who are not actively engaged in care. This study aimed to explore the experiences of PWUD in considering or accessing treatment and gauge receptiveness to low-threshold treatment models. METHODS: A purposeful sample of participants actively using opioids and with previous interest in or experience with treatment was recruited from a harm reduction program in Chicago. Semistructured interviews were conducted to explore key phenomena while allowing for unanticipated themes. The instrument included questions about historical drug use, treatment experience, and perceptions of how to improve treatment access and services. Private interviews were audio recorded, transcribed, and double coded by 2 analysts. Queries of coded data were analyzed using issue-focused analysis to identify themes. RESULTS: The sample (N = 40) approximated groups at highest risk of fatal overdose in Chicago, with more than 80% between the ages of 45 to 64 years, 65% African American, and 62% male identified. The majority had prior treatment experience, although all resumed use after completing or leaving treatment. The most prevalent barriers to treatment included structural barriers related to social determinants, lack of readiness for abstinence, burdensome intake procedures, and regulatory/programmatic requirements. Most participants expressed interest in low-threshold treatment. CONCLUSIONS: Existing treatment barriers may be addressed by shifting to lower-threshold intake processes and/or outreach-based delivery of opioid agonist treatment. Engaging PWUD in efforts to create lower-threshold treatment programs is necessary to ensure that needs are met.


Asunto(s)
Sobredosis de Droga , Trastornos Relacionados con Sustancias , Humanos , Masculino , Persona de Mediana Edad , Femenino , Analgésicos Opioides/uso terapéutico , Trastornos Relacionados con Sustancias/tratamiento farmacológico , Sobredosis de Droga/tratamiento farmacológico , Reducción del Daño , Chicago
3.
PLoS One ; 14(7): e0219717, 2019.
Artículo en Inglés | MEDLINE | ID: mdl-31310611

RESUMEN

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.


Asunto(s)
Analgésicos Opioides/efectos adversos , Registros Electrónicos de Salud , Pacientes Internos , Trastornos Relacionados con Opioides/epidemiología , Mal Uso de Medicamentos de Venta con Receta/estadística & datos numéricos , Adulto , Alcoholismo/diagnóstico , Alcoholismo/epidemiología , Femenino , Hospitalización , Humanos , Análisis de Clases Latentes , Aprendizaje Automático , Masculino , Persona de Mediana Edad , Modelos Teóricos , Procesamiento de Lenguaje Natural , Trastornos Relacionados con Opioides/clasificación , Trastornos Relacionados con Opioides/diagnóstico , Alta del Paciente , Medicina de Precisión , Mal Uso de Medicamentos de Venta con Receta/clasificación , Pronóstico , Centros de Atención Terciaria , Resultado del Tratamiento , Adulto Joven
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