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Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches

Persons who inject drugs (PWID) are at increased risk for overdose death (ODD), infections with HIV, hepatitis B (HBV) and hepatitis C virus (HCV), and noninfectious health conditions. Spatiotemporal identification of PWID communities is essential for developing efficient and cost-effective public h...

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Autores principales: Campo, David S., Gussler, Joseph W., Sue, Amanda, Skums, Pavel, Khudyakov, Yury
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7721465/
https://www.ncbi.nlm.nih.gov/pubmed/33284864
http://dx.doi.org/10.1371/journal.pone.0243622
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author Campo, David S.
Gussler, Joseph W.
Sue, Amanda
Skums, Pavel
Khudyakov, Yury
author_facet Campo, David S.
Gussler, Joseph W.
Sue, Amanda
Skums, Pavel
Khudyakov, Yury
author_sort Campo, David S.
collection PubMed
description Persons who inject drugs (PWID) are at increased risk for overdose death (ODD), infections with HIV, hepatitis B (HBV) and hepatitis C virus (HCV), and noninfectious health conditions. Spatiotemporal identification of PWID communities is essential for developing efficient and cost-effective public health interventions for reducing morbidity and mortality associated with injection-drug use (IDU). Reported ODDs are a strong indicator of the extent of IDU in different geographic regions. However, ODD quantification can take time, with delays in ODD reporting occurring due to a range of factors including death investigation and drug testing. This delayed ODD reporting may affect efficient early interventions for infectious diseases. We present a novel model, Dynamic Overdose Vulnerability Estimator (DOVE), for assessment and spatiotemporal mapping of ODDs in different U.S. jurisdictions. Using Google(®) Web-search volumes (i.e., the fraction of all searches that include certain words), we identified a strong association between the reported ODD rates and drug-related search terms for 2004–2017. A machine learning model (Extremely Random Forest) was developed to produce yearly ODD estimates at state and county levels, as well as monthly estimates at state level. Regarding the total number of ODDs per year, DOVE’s error was only 3.52% (Median Absolute Error, MAE) in the United States for 2005–2017. DOVE estimated 66,463 ODDs out of the reported 70,237 (94.48%) during 2017. For that year, the MAE of the individual ODD rates was 4.43%, 7.34%, and 12.75% among yearly estimates for states, yearly estimates for counties, and monthly estimates for states, respectively. These results indicate suitability of the DOVE ODD estimates for dynamic IDU assessment in most states, which may alert for possible increased morbidity and mortality associated with IDU. ODD estimates produced by DOVE offer an opportunity for a spatiotemporal ODD mapping. Timely identification of potential mortality trends among PWID might assist in developing efficient ODD prevention and HBV, HCV, and HIV infection elimination programs by targeting public health interventions to the most vulnerable PWID communities.
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spelling pubmed-77214652020-12-15 Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches Campo, David S. Gussler, Joseph W. Sue, Amanda Skums, Pavel Khudyakov, Yury PLoS One Research Article Persons who inject drugs (PWID) are at increased risk for overdose death (ODD), infections with HIV, hepatitis B (HBV) and hepatitis C virus (HCV), and noninfectious health conditions. Spatiotemporal identification of PWID communities is essential for developing efficient and cost-effective public health interventions for reducing morbidity and mortality associated with injection-drug use (IDU). Reported ODDs are a strong indicator of the extent of IDU in different geographic regions. However, ODD quantification can take time, with delays in ODD reporting occurring due to a range of factors including death investigation and drug testing. This delayed ODD reporting may affect efficient early interventions for infectious diseases. We present a novel model, Dynamic Overdose Vulnerability Estimator (DOVE), for assessment and spatiotemporal mapping of ODDs in different U.S. jurisdictions. Using Google(®) Web-search volumes (i.e., the fraction of all searches that include certain words), we identified a strong association between the reported ODD rates and drug-related search terms for 2004–2017. A machine learning model (Extremely Random Forest) was developed to produce yearly ODD estimates at state and county levels, as well as monthly estimates at state level. Regarding the total number of ODDs per year, DOVE’s error was only 3.52% (Median Absolute Error, MAE) in the United States for 2005–2017. DOVE estimated 66,463 ODDs out of the reported 70,237 (94.48%) during 2017. For that year, the MAE of the individual ODD rates was 4.43%, 7.34%, and 12.75% among yearly estimates for states, yearly estimates for counties, and monthly estimates for states, respectively. These results indicate suitability of the DOVE ODD estimates for dynamic IDU assessment in most states, which may alert for possible increased morbidity and mortality associated with IDU. ODD estimates produced by DOVE offer an opportunity for a spatiotemporal ODD mapping. Timely identification of potential mortality trends among PWID might assist in developing efficient ODD prevention and HBV, HCV, and HIV infection elimination programs by targeting public health interventions to the most vulnerable PWID communities. Public Library of Science 2020-12-07 /pmc/articles/PMC7721465/ /pubmed/33284864 http://dx.doi.org/10.1371/journal.pone.0243622 Text en https://creativecommons.org/publicdomain/zero/1.0/ This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Research Article
Campo, David S.
Gussler, Joseph W.
Sue, Amanda
Skums, Pavel
Khudyakov, Yury
Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title_full Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title_fullStr Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title_full_unstemmed Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title_short Accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
title_sort accurate spatiotemporal mapping of drug overdose deaths by machine learning of drug-related web-searches
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7721465/
https://www.ncbi.nlm.nih.gov/pubmed/33284864
http://dx.doi.org/10.1371/journal.pone.0243622
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