Differing Behaviors Around Adult Nonmedical Use of Prescription Stimulants and Opioids: Latent Class Analysis

Background The availability of central nervous system stimulants has risen in recent years, along with increased dispensing of stimulants for treatment of, for example, parent-reported attention-deficit/hyperactivity disorder in children and new diagnoses during adulthood. Typologies of drug use, as has been done with opioids, fail to include a sufficient range of behavioral factors to contextualize person-centric circumstances surrounding drug use. Understanding these patterns across drug classes would bring public health and regulatory practices toward precision public health. Objective The objective of this study was to quantitatively delineate the unique behavioral profiles of adults who currently nonmedically use stimulants and opioids using a latent class analysis and to contrast the differences in findings by class. We further evaluated whether the subgroups identified were associated with an increased Drug Abuse Screening Test-10 (DAST-10) score, which is an indicator of average problematic drug use. Methods This study used a national cross-sectional web-based survey, using 3 survey launches from 2019 to 2020 (before the COVID-19 pandemic). Data from adults who reported nonmedical use of prescription stimulants (n=2083) or prescription opioids (n=6127) in the last 12 months were analyzed. A weighted latent class analysis was used to identify the patterns of use. Drug types, motivations, and behaviors were factors in the model, which characterized unique classes of behavior. Results Five stimulant nonmedical use classes were identified: amphetamine self-medication, network-sourced stimulant for alertness, nonamphetamine performance use, recreational use, and nondiscriminatory behaviors. The drug used nonmedically, acquisition through a friend or family member, and use to get high were strong differentiators among the stimulant classes. The latter 4 classes had significantly higher DAST-10 scores than amphetamine self-medication (P<.001). In addition, 4 opioid nonmedical use classes were identified: moderate pain with low mental health burden, high pain with higher mental health burden, risky behaviors with diverse motivations, and nondiscriminatory behaviors. There was a progressive and significant increase in DAST-10 scores across classes (P<.001). The potency of the opioid, pain history, the routes of administration, and psychoactive effect behaviors were strong differentiators among the opioid classes. Conclusions A more precise understanding of how behaviors tend to co-occur would improve efficacy and efficiency in developing interventions and supporting the overall health of those who use drugs, and it would improve communication with, and connection to, those at risk for severe drug outcomes.

[1]  M. Kleinjan,et al.  Latent Classes of Substance Use in Young Adults – A Systematic Review , 2022, Substance use & misuse.

[2]  T. Kerr,et al.  Latent patterns of polysubstance use among people who use opioids: A systematic review. , 2022, The International journal on drug policy.

[3]  T. Wilens,et al.  Trajectories of Prescription Drug Misuse Among US Adults From Ages 18 to 50 Years , 2022, JAMA network open.

[4]  J. Schwarz,et al.  Drug product dispensing and estimates of use in a general population survey as a signal detection problem , 2021, Pharmacoepidemiology and drug safety.

[5]  M. Kariisa,et al.  Trends and Geographic Patterns in Drug and Synthetic Opioid Overdose Deaths — United States, 2013–2019 , 2021, MMWR. Morbidity and mortality weekly report.

[6]  R. Dart,et al.  Association of Medical Stimulants With Mortality in the US From 2010 to 2017. , 2021, JAMA internal medicine.

[7]  Allen W. Barton,et al.  Opioid use at the transition to emerging adulthood: A latent class analysis of non-medical use of prescription opioids and heroin use. , 2020, Addictive behaviors.

[8]  Zsuzsa Bakk,et al.  Relating latent class membership to external variables: An overview , 2020, The British journal of mathematical and statistical psychology.

[9]  Christopher M. Jones,et al.  Trends in stimulant dispensing by age, sex, state of residence, and prescriber specialty - United States, 2014-2019. , 2020, Drug and alcohol dependence.

[10]  N. Bowen,et al.  Latent Class Analysis: A Guide to Best Practice , 2020, Journal of Black Psychology.

[11]  Nabarun Dasgupta,et al.  An Online Survey for Pharmacoepidemiological Investigation (Survey of Non-Medical Use of Prescription Drugs Program): Validation Study , 2019, Journal of medical Internet research.

[12]  C. Timko,et al.  Polysubstance Use by Stimulant Users: Health Outcomes Over Three Years. , 2018, Journal of studies on alcohol and drugs.

[13]  P. Chokka,et al.  Adult ADHD and comorbid disorders: clinical implications of a dimensional approach , 2017, BMC Psychiatry.

[14]  R. Chou,et al.  CDC Guideline for Prescribing Opioids for Chronic Pain--United States, 2016. , 2016, JAMA.

[15]  W. Riley,et al.  Precision Public Health for the Era of Precision Medicine. , 2016, American journal of preventive medicine.

[16]  P. Chokka,et al.  Re , 2016, Canadian journal of psychiatry. Revue canadienne de psychiatrie.

[17]  Christopher N. Kaufmann,et al.  Patterns of concurrent substance use among nonmedical ADHD stimulant users: results from the National Survey on Drug Use and Health. , 2014, Drug and alcohol dependence.

[18]  Brady T. West,et al.  Medical and nonmedical use of prescription stimulants: results from a national multicohort study. , 2013, Journal of the American Academy of Child and Adolescent Psychiatry.

[19]  H. Skinner,et al.  The drug abuse screening test. , 2013, Addictive behaviors.

[20]  S. Shiffman,et al.  Nonmedical Use of Prescription ADHD Stimulants and Preexisting Patterns of Drug Abuse , 2013, Journal of addictive diseases.

[21]  C. Blanco,et al.  Probability and predictors of transition from first use to dependence on nicotine, alcohol, cannabis, and cocaine: results of the National Epidemiologic Survey on Alcohol and Related Conditions (NESARC). , 2011, Drug and alcohol dependence.

[22]  R. Dart Monitoring risk: post marketing surveillance and signal detection. , 2009, Drug and alcohol dependence.

[23]  S. Bálint,et al.  Prevalence and correlates of adult attention-deficit hyperactivity disorder: meta-analysis , 2009, British Journal of Psychiatry.

[24]  Stephanie T. Lanza,et al.  PROC LCA: A SAS Procedure for Latent Class Analysis , 2007, Structural equation modeling : a multidisciplinary journal.

[25]  O. Lozhkina,et al.  A comprehensive review of the psychometric properties of the Drug Abuse Screening Test. , 2007, Journal of substance abuse treatment.

[26]  S. McCabe,et al.  Illicit Use of Specific Prescription Stimulants Among College Students: Prevalence, Motives, and Routes of Administration , 2006, Pharmacotherapy.

[27]  M. Vitiello,et al.  Pharmacotherapy for excessive daytime sleepiness. , 2004, Sleep medicine reviews.

[28]  S. Faraone,et al.  Systematic Review: Nonmedical Use of Prescription Stimulants: Risk Factors, Outcomes, and Risk Reduction Strategies. , 2019, Journal of the American Academy of Child and Adolescent Psychiatry.

[29]  Megan E. Patrick,et al.  Non-medical use of prescription opioids during the transition to adulthood: a multi-cohort national longitudinal study. , 2014, Addiction.

[30]  D. Nagin Group-based modeling of development , 2005 .