Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy
<i>Background:</i> As the opioid epidemic continues, understanding the geospatial, temporal, and demand patterns is important for policymakers to assign resources and interdict individual, organization, and country-level bad actors. <i>Methods:</i> GIS geospatial-temporal ana...
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doaj-ef50f69c9a8049419f9adeecfb4a77c82020-11-25T00:23:27ZengMDPI AGJournal of Clinical Medicine2077-03832019-07-018799310.3390/jcm8070993jcm8070993Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for PolicyLawrence Fulton0Zhijie Dong1F. Benjamin Zhan2Clemens Scott Kruse3Paula Stigler Granados4Department of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USASchool of Engineering, Texas State University, 601 University Drive, San Marcos, TX 78666, USADepartment of Geography, Texas State University, 601 University Drive, San Marcos, TX 78666, USADepartment of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USADepartment of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USA<i>Background:</i> As the opioid epidemic continues, understanding the geospatial, temporal, and demand patterns is important for policymakers to assign resources and interdict individual, organization, and country-level bad actors. <i>Methods:</i> GIS geospatial-temporal analysis and extreme-gradient boosted random forests evaluate ICD-10 F11 opioid-related admissions and admission rates using geospatial analysis, demand analysis, and explanatory models, respectively. The period of analysis was January 2016 through September 2018. <i>Results:</i> The analysis shows existing high opioid admissions in Chicago and New Jersey with emerging areas in Atlanta, Salt Lake City, Phoenix, and Las Vegas. High rates of admission (claims per 10,000 population) exist in the Appalachian area and on the Northeastern seaboard. Explanatory models suggest that hospital overall workload and financial variables might be used for allocating opioid-related treatment funds effectively. Gradient-boosted random forest models accounted for 87.8% of the variability of claims on blinded 20% test data. <i>Conclusions:</i> Based on the GIS analysis, opioid admissions appear to have spread geographically, while higher frequency rates are still found in some regions. Interdiction efforts require demand-analysis such as that provided in this study to allocate scarce resources for supply-side and demand-side interdiction: Prevention, treatment, and enforcement.https://www.mdpi.com/2077-0383/8/7/993opioidsGISrandom forests |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lawrence Fulton Zhijie Dong F. Benjamin Zhan Clemens Scott Kruse Paula Stigler Granados |
spellingShingle |
Lawrence Fulton Zhijie Dong F. Benjamin Zhan Clemens Scott Kruse Paula Stigler Granados Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy Journal of Clinical Medicine opioids GIS random forests |
author_facet |
Lawrence Fulton Zhijie Dong F. Benjamin Zhan Clemens Scott Kruse Paula Stigler Granados |
author_sort |
Lawrence Fulton |
title |
Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy |
title_short |
Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy |
title_full |
Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy |
title_fullStr |
Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy |
title_full_unstemmed |
Geospatial-Temporal and Demand Models for Opioid Admissions, Implications for Policy |
title_sort |
geospatial-temporal and demand models for opioid admissions, implications for policy |
publisher |
MDPI AG |
series |
Journal of Clinical Medicine |
issn |
2077-0383 |
publishDate |
2019-07-01 |
description |
<i>Background:</i> As the opioid epidemic continues, understanding the geospatial, temporal, and demand patterns is important for policymakers to assign resources and interdict individual, organization, and country-level bad actors. <i>Methods:</i> GIS geospatial-temporal analysis and extreme-gradient boosted random forests evaluate ICD-10 F11 opioid-related admissions and admission rates using geospatial analysis, demand analysis, and explanatory models, respectively. The period of analysis was January 2016 through September 2018. <i>Results:</i> The analysis shows existing high opioid admissions in Chicago and New Jersey with emerging areas in Atlanta, Salt Lake City, Phoenix, and Las Vegas. High rates of admission (claims per 10,000 population) exist in the Appalachian area and on the Northeastern seaboard. Explanatory models suggest that hospital overall workload and financial variables might be used for allocating opioid-related treatment funds effectively. Gradient-boosted random forest models accounted for 87.8% of the variability of claims on blinded 20% test data. <i>Conclusions:</i> Based on the GIS analysis, opioid admissions appear to have spread geographically, while higher frequency rates are still found in some regions. Interdiction efforts require demand-analysis such as that provided in this study to allocate scarce resources for supply-side and demand-side interdiction: Prevention, treatment, and enforcement. |
topic |
opioids GIS random forests |
url |
https://www.mdpi.com/2077-0383/8/7/993 |
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