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. 2014 May 1:138:202-8.
doi: 10.1016/j.drugalcdep.2014.02.701. Epub 2014 Mar 12.

Factors predicting development of opioid use disorders among individuals who receive an initial opioid prescription: mathematical modeling using a database of commercially-insured individuals

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Factors predicting development of opioid use disorders among individuals who receive an initial opioid prescription: mathematical modeling using a database of commercially-insured individuals

Bryan N Cochran et al. Drug Alcohol Depend. .

Abstract

Background: Prescription drug abuse in the United States and elsewhere in the world is increasing at an alarming rate with non-medical opioid use, in particular, increasing to epidemic proportions over the past two decades. It is imperative to identify individuals most likely to develop opioid abuse or dependence to inform large-scale, targeted prevention efforts.

Methods: The present investigation utilized a large commercial insurance claims database to identify demographic, mental health, physical health, and healthcare service utilization variables that differentiate persons who receive an opioid abuse or dependence diagnosis within two years of filling an opioid prescription (OUDs) from those who do not receive such a diagnosis within the same time frame (non-OUDs).

Results: When compared to non-OUDs, OUDs were more likely to: (1) be male (59.9% vs. 44.2% for non-OUDs) and younger (M=37.9 vs. 47.7); (2) have a prescription history of more opioids (1.7 vs. 1.2), and more days supply of opioids (M=272.5, vs. M=33.2; (3) have prescriptions filled at more pharmacies (M=3.3 per year vs. M=1.3); (4) have greater rates of psychiatric disorders; (5) utilize more medical and psychiatric services; and (6) be prescribed more concomitant medications. A predictive model incorporating these findings was 79.5% concordant with actual OUDs in the data set.

Conclusions: Understanding correlates of OUD development can help to predict risk and inform prevention efforts.

Keywords: Health claims database; Opioid dependence; Opioid use disorder; Prescription drug misuse.

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References

    1. American Psychiatric Association . Diagnostic and Statistical Manual of Mental Disorders: DSM-5. 5th ed. American Psychiatric Publishing; Washington, DC.: 2013.
    1. Becker WC, Fiellin DA, Desai RA. Non-medical use, abuse, and dependence on sedatives and tranquilizers among U. S. adults: psychiatric and socio-demographic correlates. Drug Alcohol Depend. 2007;90:280–287. - PMC - PubMed
    1. Becker WC, Sullivan LE, Tetrault JM, Desai RA, Fiellin DA. Non-medical use, abuse and dependence on prescription opioids among U. S. adults: psychiatric, medical, and substance use correlates. Drug Alcohol Depend. 2007;94:38–47. - PubMed
    1. Biggs D, De Ville B, Suen E. A method of choosing multi-way partitions for classification and decision trees. J. Appl. Stat. 1991;18:49–62.
    1. Bohnert ASB, Valenstein M, Bair MJ, Ganoczy D, Ilgen MA, Blow FC. Association between opioid prescribing patterns and opioid overdose-related deaths. JAMA. 2011;305:1315–21. - PubMed

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