| Literature DB >> 32223746 |
Georgia C Richards1,2, Kamal R Mahtani3,4, Tonny B Muthee3,4, Nicholas J DeVito3,4,5, Constantinos Koshiaris4, Jeffrey K Aronson3, Ben Goldacre4,5, Carl J Heneghan3,4.
Abstract
BACKGROUND: The risks of harms from opioids increase substantially at high doses, and high-dose prescribing has increased in primary care. However, little is known about what leads to high-dose prescribing, and studies exploring this have not been synthesized. We, therefore, systematically synthesized factors associated with the prescribing of high-dose opioids in primary care.Entities:
Keywords: Benzodiazepines; Depression; Emergency department; High dose; Opioids; Primary care; Systematic review
Year: 2020 PMID: 32223746 PMCID: PMC7104520 DOI: 10.1186/s12916-020-01528-7
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1PRISMA flow diagram of the study selection. OME oral morphine equivalent
Characteristics of participants and included studies ordered by study design and year of publication
| Study ID | Data source | Population | Duration to determine the opioid dose | Dose groups | |||
|---|---|---|---|---|---|---|---|
| High dose | Low dose | ||||||
Morasco, 2019 USA [ | Electronic medical records and self-reported measures | 51 patients aged 18–70 years receiving opioids for musculoskeletal pain | 90-day average | ≥ 100 | 17 | 5–99 | 34 |
Chang, 2018a USA [ | QuintilesIMS’ LifeLink longitudinal prescription database linked to patient and prescriber files | 4,046,275 patients aged ≥ 18 years prescribed an opioid | 90-day average | > 100 | 150,814 | ≤ 100 | 3,895,461 |
Chang, 2018b USA [ | QuintilesIMS patient-level administrative claims | 191,405 patients aged 18–64 years with at least one prescription opioid claim | 90-day average | > 100 | 2778 | ≤ 100 | 188,627 |
Campbell, 2015 Australia [ | Telephone interviews, self-reported questionnaire, and medication diary | 1085 patients aged ≥ 18 years with CNCP prescribed an opioid for > 6 weeks | 1-week average | ≥ 91 | 425 | 1–90 | 660 |
Chapman, 2013 UK [ | CPRD | 4035 patients with CNCP, ≥ 2 office visits and ≥ 1 prescription of fentanyl, hydromorphone, morphine, and/or oxycodone | Dose measured at each visit | > 200 | 262 | ≤ 200 | 3773 |
Kobus, 2012 USA [ | Kaiser Permanente Northwest virtual data warehouse | 5268 patients aged ≥ 18 years with low-back pain and > 90 consecutive days of opioid use | Last dispensed dose | ≥ 100 | 453 | 1–99 | 4815 |
CNCP chronic non-cancer pain, CPRD Clinical Practice Research Datalink, UK United Kingdom, USA United States of America
Fig. 2Forrest plots of the factors associated with the prescribing of high-dose opioids in primary care
Factors associated with high-dose opioids reported by individual studies
| Study ID [Ref] | Variable | High-dose | Low-dose | RR (95% CI) | NNTH (95% CI) |
|---|---|---|---|---|---|
| Count (%) | Count (%) | ||||
| Chang, 2018a [ | State of residence | ||||
| California | 47,446 (31%) | 1,416,000 (36%) | 0.87 (0.86, 0.87) | NA | |
| Florida | 54,338 (36%) | 1,207,982 (31%) | 1.16 (1.15, 1.17) | ||
| Georgia | 20,692 (14%) | 689,886 (18%) | 0.77 (0.76, 0.78) | ||
| Maryland | 12,487 (8%) | 250,868 (6%) | 1.29 (1.26, 1.31) | ||
| Washington | 15,866 (11%) | 330,335 (8%) | 1.24 (1.22, 1.26) | ||
| Kobus, 2012 [ | Insurance coverage | ||||
| Medicare | 154 (34%) | 1352 (28%) | 1.21 (1.06 to 1.39) | NA | |
| Ethnicity | |||||
| Unknown/declined to answer | 64 (14%) | 879 (18%) | 0.77 (0.61, 0.98) | NA | |
| Campbell, 2015 [ | Antidepressants | 246 (58%) | 323 (49%) | 1.18 (1.06 to 1.32) | NA |
| Type of opioid drug | |||||
| Morphine | 86 (20%) | 75 (11%) | 1.78 (1.34 to 2.37) | NA | |
| ICD-10 lifetime pharmaceutical opioid dependence | 49 (12%) | 28 (4%) | 2.72 (1.7 to 4.25) | NA | |
| ICD-10 12-month pharmaceutical opioid dependence | 26 (6%) | 13 (2%) | 3.11 (1.61 to 5.98) | NA | |
| Prescribed opioid difficulty scale (PODS) intermediate-high (≥ 8) | 297 (70%) | 367 (56%) | 1.26 (1.15 to 1.38) | NA | |
| Past 3-month tampering | 38 (9%) | 29 (4%) | 2.03 (1.27 to 3.25) | 22 (13 to 64) | |
| Past 3-month different drug route | 7 (2%) | 1 (0.2%) | 10.87 (1.34 to 88.04) | NA | |
| Kobus, 2012 [ | Long-acting opioids | 400 (88%) | 1637 (34%) | 2.60 (2.47, 2.74) | NA |
| Chang, 2018b [ | Opioid disorders | 530 (19%) | 1243 (1%) | 28.95 (26.34, 31.82) | NA |
| Campbell, 2015 [ | Illicit drug use past 12 months | 71 (17%) | 67 (10%) | 11.03 (5.75 to 21.14) | NA |
| Kobus, 2012 [ | Substance use disorder | 141 (31%) | 1151 (24%) | 1.30 (1.13 to 1.51) | NA |
| Campbell, 2015 [ | Back or neck problems | 344 (81%) | 484 (73%) | 1.10 (1.03 to 1.18) | NA |
| Frequent/severe headaches | 134 (32%) | 170 (26%) | 1.22 (1.01 to 1.48) | NA | |
| Chang, 2018a [ | Opioids from ≥ 4 unique prescribers and pharmacies over 90 days | 1176 (0.78%) | 1948 (0.05%) | 15.6 (14.51 to 16.76) | 137 (129 to 145) |
| Chang, 2018b [ | > 1 Hospitalizations | ||||
| Concurrent 2012 | 443 (16%) | 17,061 (9%) | 1.76 (1.62, 1.92) | 14 (12 to 18) | |
| Prospective 2013 | 396 (14%) | 11,110 (6%) | 2.42 (2.21, 2.66) | 12 (10 to 14) | |
| Kobus, 2012 [ | Any pain clinic visits 6 months before/after index date | 104 (23%) | 530 (11%) | 2.09 (1.73 to 2.51) | 8 (6 to 12) |
| Filled opioid prescription 5 days after emergency department visit | 285 (63%) | 2696 (56%) | 1.12 (1.04 to 1.21) | 14 (9 to 46) | |
| Kobus, 2012 [ | Posttraumatic stress disorder diagnostic code 309.81 | 20 (4%) | 96 (2%) | 2.21 (1.38 to 3.55) | NA |
| Chang, 2018a [ | Proportion of prescriptions from high-risk* prescribers | 122,159 (81%) | 973,865 (25%) | 3.24 (3.23 to 3.25) | NA |
| 100% of opioid prescriptions from high-risk* prescribers | 77,217 (51%) | 572,633 (15%) | 3.48 (3.46 to 3.50) | NA | |
| 50–99% of prescriptions from high-risk* prescribers | 51,277 (34%) | 471,351 (12%) | 2.81 (2.79 to 2.83) | NA | |
CI confidence interval, ICD-10 international classification of diseases 10th revision, NNT number needed to harm, RR relative risk, *high-risk prescribers were defined as those in the top 5th percentile of opioid volume