| Literature DB >> 35865008 |
Eric Tatara1,2, John Schneider3, Madeline Quasebarth3, Nicholson Collier1,2, Harold Pollack4, Basmattee Boodram5, Sam Friedman6, Elizabeth Salisbury-Afshar7, Mary Ellen Mackesy-Amiti5, Jonathan Ozik1,2.
Abstract
Criminal justice involved (CJI) individuals with a history of opioid use disorder (OUD) are at high risk of overdose and death in the weeks following release from jail. We developed the Justice-Community Circulation Model (JCCM) to investigate OUD/CJI dynamics post-release and the effects of interventions on overdose deaths. The JCCM uses a synthetic agent-based model population of approximately 150,000 unique individuals that is generated using demographic information collected from multiple Chicago-area studies and data sets. We use a high-performance computing (HPC) workflow to implement a sequential approximate Bayesian computation algorithm for calibrating the JCCM. The calibration results in the simulated joint posterior distribution of the JCCM input parameters. The calibrated model is used to investigate the effects of a naloxone intervention for a mass jail release. The simulation results show the degree to which a targeted intervention focusing on recently released jail inmates can help reduce the risk of death from opioid overdose.Entities:
Keywords: Bayesian calibration; HPC workflow; agent-based modeling; high-performance computing
Year: 2021 PMID: 35865008 PMCID: PMC9297575 DOI: 10.1109/ipdpsw52791.2021.00157
Source DB: PubMed Journal: IEEE Int Symp Parallel Distrib Process Workshops Phd Forum ISSN: 2164-7062