| Literature DB >> 32365132 |
Phillip O Coffin1,2, Christopher Rowe1,3, Natalie Oman1, Katie Sinchek1, Glenn-Milo Santos1,2, Mark Faul4, Rita Bagnulo1, Deeqa Mohamed1, Eric Vittinghoff2.
Abstract
BACKGROUND: After decades of increased opioid pain reliever prescribing, providers are rapidly reducing prescribing. We hypothesized that reduced access to prescribed opioid pain relievers among patients previously reliant upon opioid pain relievers would result in increased illicit opioid use. METHODS ANDEntities:
Year: 2020 PMID: 32365132 PMCID: PMC7197848 DOI: 10.1371/journal.pone.0232538
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Participant baseline characteristics and longitudinal measures (n = 598).
| Characteristic/Measure | n | (%) |
|---|---|---|
| Baseline Characteristics | ||
| 598 | ||
| 52 | (46–59) | |
| Non-Hispanic white | 159 | (26.6) |
| Non-Hispanic black | 262 | (43.8) |
| Hispanic | 95 | (15.9) |
| Non-Hispanic other/mixed race | 82 | (13.7) |
| Male | 345 | (57.7) |
| Female | 227 | (38.0) |
| Transgender or other gender | 26 | (4.3) |
| Less than high school | 130 | (21.7) |
| High school graduate | 190 | (31.8) |
| Some College, Associate's degree, or vocational training | 224 | (37.5) |
| Bachelor's degree or higher | 54 | (9.0) |
| 300 | (50.2) | |
| Used heroin prior to baseline | 224 | (37.5) |
| Used non-prescribed OPRs prior to baseline | 241 | (40.3) |
| 19 | (18–21) | |
| (# prescribed any opioids during year prior to baseline = 537 [90%]) | 182.0 | (445.0) |
| 2013 (n = 587; # prescribed any opioids during year = 550 [94%]) | 196.3 | (407.4) |
| 2014 (n = 598; # prescribed any opioids during year = 571 [95%]) | 173.1 | (357.3) |
| 2015 (n = 598; # prescribed any opioids during year = 532 [89%]) | 171.4 | (338.9) |
| 2016 (n = 598; # prescribed any opioids during year = 504 [84%]) | 167.7 | (315.6) |
| 2017 (n = 598; # prescribed any opioids during year = 467 [78%]) | 158.7 | (295.9) |
| 2018 (n = 459; # prescribed any opioids during year = 313 [68%]) | 163.2 | (321.8) |
| 382 | (63.9) | |
| 279 | (46.7) | |
| 237 | (39.6) | |
| 181 | (30.3) | |
| Reported heroin use during follow-up | 79 | (13.2) |
| Reported non-prescribed OPR use during follow-up | 151 | (25.3) |
| 38 | (6.4) | |
| Initiated heroin use during follow-up | 9 | (1.5) |
| Initiated non-prescribed OPR use during follow-up | 31 | (5.2) |
| 381 | (63.7) | |
| 214 | (35.8) | |
| 178 | (29.8) | |
| 463 | (77.4) | |
| 375 | (62.7) | |
| 273 | (45.7) | |
| 354 | (59.2) | |
| 96 | (16.1) | |
| 22 | (3.7) |
*Baseline is defined as the first quarter included in the analysis
Multivariable continuation ratio regression assessing the association between changes in prescribed opioid dose and use frequency of heroin and non-prescribed opioid pain relievers.
| Continuation Ratio Model with Constant Odds Ratios | Continuation Ratio Model with Variable Odds Ratio | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Any vs. None | Weekly/Daily vs. Intermittently | Daily vs. Weekly | |||||||
| Outcome | Dose Change | OR | (95%CI) | OR | (95%CI) | OR | (95%CI) | OR | (95%CI) |
| More Frequent Heroin Use | No Change | Reference | Reference | Reference | Reference | ||||
| Increase | 1.67 | (1.32–2.12) | 1.19 | (0.97–1.47) | 3.79 | (1.76–8.15) | 7.48 | (2.80–20.03) | |
| Decrease | 0.87 | (0.68–1.12) | 0.99 | (0.77–1.28) | 0.66 | (0.37–1.20) | 0.61 | (0.27–1.34) | |
| Discontinued | 1.57 | (1.25–1.97) | 1.55 | (1.24–1.94) | 1.27 | (0.78–2.08) | 2.14 | (1.16–3.96) | |
| More Frequent Non-Prescribed Opioid Pain Reliever Use | No Change | Reference | Reference | Reference | Reference | ||||
| Increase | 0.96 | (0.84–1.11) | 1.03 | (0.89–1.18) | 0.74 | (0.55–1.00) | 1.10 | (0.53–2.30) | |
| Decrease | 1.14 | (0.94–1.38) | 1.32 | (1.08–1.61) | 0.68 | (0.45–1.04) | 0.99 | (0.36–2.75) | |
| Discontinued | 1.75 | (1.45–2.11) | 1.26 | (1.04–1.53) | 3.94 | (2.70–5.77) | 2.52 | (1.42–4.47) | |
*n = 56,484 nested cohort observations for heroin outcome; n = 56,372 for non-prescribed opioid pain reliever model