Patterns and Correlates of Prescription Opioid Receipt Among US Veterans: A National, 18-Year Observational Cohort Study.

Christopher T Rentsch ORCID logo; E Jennifer Edelman; Amy C Justice; Brandon DL Marshall; Ke Xu; Andrew H Smith; Stephen Crystal; Julie R Gaither; Adam J Gordon; Rachel V Smith; +8 more... Rachel L Kember; Renato Polimanti; Joel Gelernter; David A Fiellin; Janet P Tate; Henry R Kranzler; William C Becker; VACS Project Team; (2019) Patterns and Correlates of Prescription Opioid Receipt Among US Veterans: A National, 18-Year Observational Cohort Study. AIDS and Behavior, 23 (12). pp. 3340-3349. ISSN 1090-7165 DOI: 10.1007/s10461-019-02608-3
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A better understanding of predisposition to transition to high-dose, long-term opioid therapy after initial opioid receipt could facilitate efforts to prevent opioid use disorder (OUD). We extracted data on 69,268 patients in the Veterans Aging Cohort Study who received any opioid prescription between 1998 and 2015. Using latent growth mixture modelling, we identified four distinguishable dose trajectories: low (53%), moderate (29%), escalating (13%), and rapidly escalating (5%). Compared to low dose trajectory, those in the rapidly escalating dose trajectory were proportionately more European-American (59% rapidly escalating vs. 38% low); had a higher prevalence of HIV (31% vs. 29%) and hepatitis C (18% vs. 12%); and during follow-up, had a higher incidence of OUD diagnoses (13% vs. 3%); were hospitalised more often [18.1/100 person-years (PYs) vs. 12.5/100 PY]; and had higher all-cause mortality (4.7/100 PY vs. 1.8/100 PY, all p < 0.0001). These measures can potentially be used in future prevention research, including genetic discovery.


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