Key Points
Question
What are indication-specific opioid prescribing rates for nonsurgical acute or chronic pain or postoperative pain conditions and pain related to cancer or sickle cell disease?
Findings
In this cross-sectional analysis examining data from 18 016 259 patients with private insurance and 11 453 392 patients with Medicaid benefits, opioid prescribing rates, days’ supply, and daily dosage varied widely across clinical indications and by insurance type.
Meaning
Potential inconsistencies between indication-specific prescribing patterns and relevant clinical recommendations highlight opportunities for selection of safer and more effective pain treatment options.
Abstract
Importance
Although opioids can be effective medications in certain situations, they are associated with harms, including opioid use disorder and overdose. Studies have revealed unexplained prescribing variation and prescribing mismatched with patient-reported pain for many indications.
Objective
To summarize opioid prescribing frequency, dosages, and durations, stratified across numerous painful medical indications.
Design, Setting, and Participants
Retrospective cross-sectional analysis of 2017 US administrative claims data among outpatient clinical settings, including postsurgical discharge. Participants had any of 41 different indications associated with nonsurgical acute or chronic pain or postsurgical pain or pain associated with sickle cell disease or active cancer and were enrolled in either private insurance (including Medicare Advantage) in the OptumLabs Data Warehouse data set (n = 18 016 259) or Medicaid in the IBM MarketScan Multi-State Medicaid Database (n = 11 453 392). OptumLabs data were analyzed from October 2018 to March 2019; MarketScan data were analyzed from January to April 2019.
Exposures
Nonsurgical acute or chronic pain or postsurgical pain; pain related to sickle cell disease or active cancer.
Main Outcomes and Measures
Indication-specific opioid prescribing rates; days’ supply per prescription; daily opioid dosage in morphine milligram equivalents; and for chronic pain indications, the number of opioid prescriptions.
Results
During the study period, of 18 016 259 eligible patients with private insurance, the mean (95% CI) age was 42.7 (42.7-42.7) years, and 50.3% were female; of 11 453 392 eligible Medicaid enrollees, the mean (95% CI) age was 20.4 (20.4-20.4) years, and 56.1% were female. A pain-related indication under study occurred in at least 1 visit among 6 380 694 patients with private insurance (35.4%) and 3 169 831 Medicaid enrollees (27.7%); 2 270 596 (35.6% of 6 380 694) privately insured patients and 1 126 508 (35.5% of 3 169 831) Medicaid enrollees had 1 or more opioid prescriptions. Nonsurgical acute pain opioid prescribing rates were lowest for acute migraines (privately insured, 4.6% of visits; Medicaid, 6.6%) and highest for rib fractures (privately insured, 44.8% of visits; Medicaid, 56.3%), with variable days’ supply but similar daily dosage across most indications. Opioid prescribing for a given chronic pain indication varied depending on a patient’s opioid use history. Days’ supply for postoperative prescriptions was longest for combined spinal decompression and fusion (privately insured, 9.5 days [95% CI, 9.4-9.7 days]) or spinal fusion (Medicaid, 9.1 days [95% CI, 8.9-9.2 days]) and was shortest for vaginal delivery (privately insured, 4.1 days [95% CI, 4.1-4.1 days] vs Medicaid, 4.2 days [95% CI, 4.2-4.2 days]).
Conclusions and Relevance
Indication-specific opioid prescribing rates were not always aligned with existing guidelines. Potential inconsistencies between prescribing practice and clinical recommendations, such as for acute and chronic back pain, highlight opportunities to enhance pain management and patient safety.
This cross-sectional study uses administrative claims data for outpatient clinical settings, including postsurgical discharge, from patients with private insurance or Medicaid beneficiaries to summarize opioid prescribing frequency, dosages, and durations for numerous painful medical indications.
Introduction
Opioids can be essential drugs for pain management but carry significant risk for harm. In 2017, more than one-third of the 47 600 opioid overdose deaths in the US involved prescription opioids.1 In 2018, approximately 1.7 million Americans aged 12 or older struggled with prescription opioid use disorder (OUD).2 Although an increasing proportion of people entering OUD treatment report initiating opioid use with heroin, a majority report that their problematic use began with prescription opioids.3 Longer duration of opioid therapy is associated with increased OUD risk,4 and higher dosages are associated with increased overdose risk.5 Harms extend beyond patients with prescriptions—a majority of people misusing prescription opioids report obtaining them from friends or family with prescriptions.2
Guidelines provide recommendations to help clinicians and patients determine when the benefits of opioids might outweigh the risks and inform dosage and duration.6,7,8 However, there is variation in opioid prescribing practices across indications that does not match the level of evidence for treatment effectiveness. For example, chronic pain indications are the most common indications for which opioids are prescribed, despite evidence being insufficient to demonstrate long-term benefit of opioids for chronic pain.6 Furthermore, prescribing characteristics, such as initial days’ supply, have been associated with the likelihood of continued opioid use regardless of clinical factors such as pain etiology.9 Opioid prescribing has been shown to vary even across similar patients and indications within the same institution.10 Unexplained prescribing variation and reports that patients often use only a fraction of opioids prescribed postoperatively11 suggest there are opportunities to reduce unnecessary opioid prescribing.
At the same time, there have been reports of undertreatment or delay in pain treatment in instances in which the benefits of opioids might outweigh the risks.12,13,14 For example, a recent systematic review found that approximately one-third of cancer patients did not receive sufficient pharmacologic pain therapy,12 and several studies document delays and barriers among patients with sickle cell disease (SCD) receiving analgesics, including opioids.13,14
The objective of the present study was to estimate rates and amounts of opioids prescribed for specific indications to outpatients in the United States. Findings can provide greater insight into current prescribing practices, prescribing variance across indications and populations, and indications for which amplification of recommendations could improve pain management and patient safety.
Methods
Data Sources and Study Sample
We conducted a retrospective cross-sectional analysis of national deidentified administrative claims data from OptumLabs Data Warehouse (OLDW)15 and MarketScan Multi-State Medicaid Database (MMD). The OLDW covers 14% of the commercially insured population and 21% of the Medicare Advantage (collectively, “privately insured”) population throughout the US in 2016 and 2017. The OLDW population is nationally representative of privately insured patients with regard to age and sex. It covers all census regions although it overrepresents the South and Midwest. The MMD data set contains all Medicaid beneficiaries (fee for service and managed care) enrolled between 2016 and 2017 in 9 anonymized states distributed across census regions. This study adheres to the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) reporting guideline and the RECORD (REporting of studies Conducted using Observational Routinely-collected Data (RECORD) guideline for cross-sectional studies. The CDC National Center for Injury Prevention and Control determined that the research was conducted with existing data without individual identifiers; thus, the activity is research but does not involve human subjects and therefore institutional review board approval was not required.
The study period for identifying any index diagnosis was from January 1, 2017, to December 31, 2017, for OLDW and from October 1, 2016, to September 30, 2017, for MMD. Additional details on data sources, access, and sampling can be found in eAppendix 1 in the Supplement.
Identification of Pain-Related Indications and Associated Opioid Prescriptions
We identified 41 different indications associated with pain, including acute and chronic conditions, surgical procedures, SCD, and cancer. Lists of indications, their selection criteria, and their associated International Statistical Classification of Diseases, Tenth Revision, Clinical Modification diagnosis and Current Procedural Terminology codes are described in eAppendix 1 and eAppendix 2 in the Supplement.
We identified opioid prescription claims during the study period using previously compiled National Drug Codes.16 We calculated daily morphine milligram equivalents (MME) for opioid prescriptions using days’ supply and quantity dispensed from opioid claims and MME conversion factors.16 We developed algorithms to link patients’ opioid prescriptions to their medical encounters (“visits”) for each indication using data such as patient identification, visit date, dispensing date, clinician identification, and index diagnosis (see eAppendix 1 in the Supplement for both written and visual descriptions of this linking algorithm). For acute pain indications and surgical procedures, the index diagnosis represents primarily the first appearance of the indication. However, for chronic pain indications as well as for SCD and cancer, the index diagnosis captured in our analysis represents both preexisting indications (for which patients may or may not have received opioids previously) as well as new indications (the first instance of an indication that becomes chronic) (eAppendix 1 in the Supplement).
Expert Consultation
The Centers for Disease Control and Prevention (CDC) presented the research protocol and incorporated recommendations from the National Center for Injury Prevention and Control Board of Scientific Counselors, a federal advisory committee, based on expert input from the Board of Scientific Counselors Opioid Prescribing Estimates Workgroup (see eAppendix 1 in the Supplement for detailed discussion of the clinical specialties that comprised this expert Workgroup; the Workgroup’s series of meetings and resulting report to the Board of Scientific Counselors; and a full roster of Workgroup members).
Statistical Analysis
For nonsurgical acute or chronic pain or postsurgical pain indications, we calculated the number of visits, patients, or procedures, respectively, associated with each indication; prescribing rate for each indication, overall and by age group (0-18 years, 19-64 years, and ≥65 years); the mean with its 95% CI and the median with its interquartile range (IQR) of daily opioid dosage in MME; and the mean (95% CI) and median (IQR) days of opioids supplied. For SCD and cancer, we calculated prescribing rates overall and by age group. For postsurgical and nonsurgical acute pain indications, which generally represent individual events at a single point in time, reported outcome data (prescribing rate, MME, and days’ supply) reflect prescriptions supplied for a specific procedure or visit, meaning that the prescribing rate is anchored to visits or procedures. For chronic pain indications, SCD, and cancer, for which a single patient may receive multiple prescriptions for the same indication over time, reported outcome data (prescribing rate, MME, days’ supply, and number of prescriptions) are anchored to patients, reflecting all prescriptions supplied to a specific patient for visits related to that indication during the 3 months following the index diagnosis. Prescribing measures among chronic pain and postsurgical indications were stratified by opioid use history. Long-term opioid therapy (LTOT) was defined as having (1) 3 or more opioid prescriptions in the 3 months prior to the index visit; (2) more than 60 total days of opioid supply; and (3) a gap between the end of one prescription and the next prescription of less than 10 days. Patients not receiving LTOT were those whose prescriptions did not meet LTOT criteria. Only patients not receiving LTOT were included in the nonsurgical acute pain analysis to increase confidence in opioid prescription linkage to the acute indication. All analyses were conducted using SAS software, version 9.4 (SAS Institute Inc), and Stata SE, version 14 (StataCorp). OptumLabs data were analyzed from October 2018 to March 2019; MarketScan data were analyzed from January to April 2019.
Results
Among 18 016 259 patients with private insurance and 11 453 392 Medicaid enrollees during the study period, 50.3% privately insured (eTable 1 in the Supplement) and 56.1% Medicaid-insured (eTable 2 in the Supplement) eligible patients were female and had a mean (95% CI) age of 42.7 (42.7-42.7) years (privately insured) and 20.4 (20.4-20.4) years (Medicaid), with a mean (95% CI) of 14 421 317 (14 326 784-14 515 840) privately insured patients and 9 742 711 (9 704 260-9 781 162) Medicaid enrollees per month. We identified 6 380 694 (35.4%) privately insured patients and 3 169 831 (27.7%) Medicaid enrollees with 1 or more visits that contained 1 or more pain-related diagnoses or surgical procedures from our indication list, including SCD and cancer. At least 1 opioid prescription during the study period was identified for 2 270 596 privately insured patients (35.6% of 6 380 694) and 1 126 508 Medicaid enrollees (35.5% of 3 169 831), and in total, this accounted for 87.7% of all 11 941 359 opioid prescriptions identified in 2017 OLDW data and 75.5% of all 7 157 341 opioid prescriptions in Medicaid data.
Indications Associated With Nonsurgical Acute Pain
We identified 2 013 810 visits among patients with private insurance and 1 672 500 visits among Medicaid enrollees meeting our nonsurgical acute pain criteria. Overall, 13.4% privately insured patients and 15.6% Medicaid enrollees were linked with an opioid prescription. Ninety-seven percent of these linkages among privately insured patients and 98% among Medicaid enrollees involved a single prescription associated with a single visit.
Opioid prescribing rates associated with privately insured visits for nonsurgical acute pain ranged from 4.6% (acute migraines) to 44.8% (rib fractures) of visits (Table 1), slightly lower overall than for Medicaid-associated visits, which ranged from 6.6% (acute migraines) to 56.3% (rib fractures; Table 1). One notable exception was dental pain, for which patients with Medicaid were prescribed opioids in a lower percentage of visits (11.8%, Medicaid; 27.2%, privately insured), which may be partially attributable to the different patterns of dental claims included in each sample. Mean (95% CI) days’ supply varied, from 4.1 (4.1-4.2) days for dental pain (4.0 [4.0-4.0] days for Medicaid) to 11.8 (11.7-11.8) days for acute low back pain and 12.6 (12.3-12.8) days for acute migraine (9.9 [9.7-10.1] for acute migraine and 9.9 [9.8-10.0] for acute low back pain in Medicaid-covered visits). Mean daily opioid dosage was relatively constant across conditions in both data sets, approximately 30 MME/d, which is equivalent to 6 tablets containing a combination of 500 mg of acetaminophen and 5 mg of hydrocodone taken daily or to 4 tablets of oxycodone, 5 mg, taken daily.
Table 1. Opioid Prescribing Rates and Amounts Associated With Nonsurgical Acute Pain Indications Among Patients Not Receiving LTOT in the US, by Indication and Insurance Type, 2017a,b.
Indication | Visits with Rx, No. (%) [95% CI] | No. of days’ supply | Daily dosage, MME | ||
---|---|---|---|---|---|
Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | ||
Abdominal pain | |||||
Private insurancec | 42 902 (11.5) [11.4-11.6] | 5.9 (5.8-5.9) | 4.0 (3.0-5.0) | 31.4 (31.2-31.6) | 27.0 (20.0-37.5) |
Medicaidd | 41 936 (13.0) [12.9-13.1] | 4.8 (4.8-4.9) | 3.0 (2.0-5.0) | 30.2 (30.0-30.3) | 25.0 (20.0-37.5) |
Acute low back pain | |||||
Private insurance | 88 799 (13.7) [13.6-13.7] | 11.8 (11.7-11.8) | 7.0 (4.0-15.0) | 27.7 (27.6-27.8) | 21.4 (15.4-33.3) |
Medicaid | 61 217 (19.0) [18.9-19.2] | 9.9 (9.8-10.0) | 5.0 (3.0-15.0) | 28.2 (28.0-28.4) | 22.5 (16.9-33.3) |
Acute migraine | |||||
Private insurance | 8221 (4.6) [4.5-4.7] | 12.6 (12.3-12.8) | 7.0 (4.0-20.0) | 29.1 (28.6-29.7) | 22.5 (15.0-36.0) |
Medicaid | 9797 (6.6) [6.5-6.7] | 9.9 (9.7-10.1) | 5.0 (3.0-15.0) | 28.5 (28.1-28.9) | 22.5 (16.7-33.8) |
Dental pain | |||||
Private insurance | 19 127 (27.2) [26.9-27.6] | 4.1 (4.1-4.2) | 3.0 (2.0-5.0) | 33.9 (33.6-34.1) | 30.0 (21.4-45.0) |
Medicaid | 40 513 (11.8) [11.7-11.9] | 4.0 (4.0-4.0) | 3.0 (2.0-5.0) | 28.0 (27.9-28.2) | 25.0 (20.0-33.3) |
Herpes zoster | |||||
Private insurance | 11 288 (15.5) [15.2-15.8] | 8.4 (8.3-8.6) | 5.0 (4.0-10.0) | 27.3 (27.0-27.5) | 22.5 (18.0-33.3) |
Medicaid | 3247 (26.1) [25.3-26.8] | 6.3 (6.0-6.5) | 4.0 (3.0-7.0) | 28.3 (27.8-28.9) | 25.0 (20.0-33.3) |
Musculoskeletal sprains and strains | |||||
Private insurance | 69 434 (12.9) [12.8-13.0] | 6.7 (6.6-6.7) | 5.0 (3.0-7.0) | 32.0 (31.9-32.2) | 25.0 (20.0-37.5) |
Medicaid | 62 354 (14.8) [14.7-14.9] | 5.1 (5.1-5.2) | 3.0 (2.0-5.0) | 28.0 (27.9-28.1) | 25.0 (18.8-33.3) |
Renal colic | |||||
Private insurance | 27 885 (20.1) [19.9-20.3] | 5.2 (5.1-5.2) | 4.0 (3.0-5.0) | 35.5 (35.3-35.7) | 30.0 (20.0-45.0) |
Medicaid | 16 618 (34.0) [33.6-34.4] | 4.6 (4.6-4.7) | 3.0 (2.0-5.0) | 33.3 (33.0-33.6) | 30.0 (20.0-40.0) |
Rib fractures | |||||
Private insurance | 9455 (44.8) [44.1-45.4] | 6.9 (6.7-7.0) | 5.0 (3.0-8.0) | 32.9 (32.5-33.3) | 30.0 (20.0-40.0) |
Medicaid | 4484 (56.3) [55.2-57.4] | 5.6 (5.5-5.8) | 4.0 (3.0-6.0) | 32.5 (31.9-33.1) | 30.0 (20.0-37.5) |
Abbreviations: IQR, interquartile range; LTOT, long-term opioid therapy; MME, morphine milligram equivalents16; Rx, prescriptions.
Reported outcome data (prescribing rate, MME, and days’ supply) reflect Rx supplied for a specific procedure or visit, meaning that the prescribing rate is anchored to visits or procedures.
Patients whose Rx do not meet LTOT criteria.
Data from the OptumLabs Data Warehouse, 2017.
Data from the MarketScan Multi-State Medicaid Database, from quarter 4 2016 to quarter 3 2017.
Indications Associated With Chronic Pain
We identified 1 474 731 unique privately insured patients (eTable 1 in the Supplement) and 513 131 Medicaid patients meeting our chronic pain criteria (eTable 2 in the Supplement), among whom 22.7% privately insured patients and 18.6% Medicaid beneficiaries had several concurrent chronic pain indications. Back pain (radicular and nonradicular) was the most common chronic pain indication, affecting 49.3% of the 1 474 731 privately insured patients with chronic pain (52.2% of Medicaid enrollees) and 75.4% of privately insured patients with multiple concurrent chronic pain indications (80.4% of Medicaid enrollees). Overall, more than 30% of these 1 474 731 privately insured patients and almost 50% of these 513 131 Medicaid-covered patients had 1 or more opioid prescriptions linked to their chronic pain indication in the 3 months following the index diagnosis during the study period. Opioid prescribing rates and amounts differed markedly depending on chronic pain indication and opioid use history (Table 2).
Table 2. Opioid Prescribing Rates and Amounts Associated With Chronic Noncancer Pain Indications Among Patients in the US, by Indication, Insurance Type, and History of Opioid Use, 2017a.
Indication | Patients with Rx, No. (%) [95% CI] | No. of Rx | No. of days’ supply | Daily dosage, MME | |||
---|---|---|---|---|---|---|---|
Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | ||
Chronic nonradicular back pain | |||||||
Privately insuredb | |||||||
No LTOTc | 113 112 (19.8) [19.7-19.9] | 1.7 (1.7-1.7) | 1 (1-2) | 29.8 (29.6-30.0) | 24 (8-35) | 29.5 (29.4-29.7) | 22.5 (15.0-37.5) |
LTOT | 103 270 (87.7) [87.5-87.8] | 2.9 (2.9-2.9) | 2 (1-4) | 80.2 (79.9-80.6) | 60 (30-107) | 56.2 (55.8-56.5) | 40.0 (27.5-62.0) |
Medicaidd | |||||||
No LTOT | 60 580 (32.6) [32.4-32.8] | 1.9 (1.9-1.9) | 1 (1-2) | 30.7 (30.4-31.0) | 20 (5-44) | 28.6 (28.4-28.8) | 22.5 (16.7-33.6) |
LTOT | 61 751 (90.4) [90.1-90.6] | 2.8 (2.8-2.8) | 2 (1-4) | 74.0 (73.6-74.3) | 60 (30-90) | 47.7 (47.0-48.3) | 37.5 (22.5-60.0) |
Chronic radicular back pain | |||||||
Privately insured | |||||||
No LTOT | 34 582 (28.3) [28.0-28.5] | 1.8 (1.8-1.8) | 1 (1-2) | 34.9 (34.6-35.3) | 30 (12-49) | 30.2 (29.9-30.4) | 22.5 (15.0-37.5) |
LTOT | 40 511 (87.5) [87.2-87.8] | 2.9 (2.8-2.9) | 2 (1-4) | 80.5 (79.9-81.0) | 60 (30-110) | 58.5 (58.0-59.0) | 45.0 (30.0-67.5) |
Medicaid | |||||||
No LTOT | 15 727 (44.0) [43.5-44.5] | 2.0 (2.0-2.0) | 2 (1-3) | 36.6 (36.0-37.1) | 30 (10-60) | 28.7 (28.4-29.1) | 22.5 (16.6-33.8) |
LTOT | 20 808 (88.2) [87.8-88.7] | 2.7 (2.6-2.7) | 2 (1-3) | 71.8 (71.2-72.5) | 60 (30-90) | 47.5 (46.9-48.0) | 37.5 (22.5-60.0) |
Chronic neck pain | |||||||
Privately insured | |||||||
No LTOT | 33 233 (15.8) [15.7-16.0] | 1.7 (1.7-1.7) | 1 (1-2) | 29.9 (29.6-30.2) | 23 (8-35) | 30.6 (30.3-30.8) | 25.0 (16.1-37.5) |
LTOT | 35 645 (87.3) [87.0-87.6] | 2.9 (2.9-2.9) | 2 (1-4) | 81.3 (80.8-81.9) | 60 (30-112) | 59.4 (58.9-60.0) | 44.4 (30.0-69.4) |
Medicaid | |||||||
No LTOT | 17 103 (31.1) [30.7-31.5] | 1.9 (1.9-1.9) | 1 (1-2) | 32.3 (31.8-32.8) | 24 (6-46) | 28.8 (28.5-29.1) | 22.5 (16.7-33.8) |
LTOT | 20 435 (88.4) [88.0-88.8] | 2.7 (2.6-2.7) | 2 (1-3) | 71.1 (70.5-71.8) | 60 (30-90) | 48.4 (47.9-49.0) | 40.0 (22.5-60.0) |
Fibromyalgia | |||||||
Privately insured | |||||||
No LTOT | 6489 (23.5) [23.0-24.0] | 1.5 (1.5-1.5) | 1 (1-2) | 33.5 (32.8-34.2) | 30 (15-35) | 29.5 (28.8-30.1) | 22.0 (15.0-36.0) |
LTOT | 9714 (77.9) [77.2-78.6] | 2.4 (2.3-2.4) | 2 (1-3) | 67.2 (66.2-68.2) | 60 (30-90) | 56.3 (55.3-57.4) | 40.0 (24.0-63.3) |
Medicaid | |||||||
No LTOT | 4239 (28.9) [28.2-29.7] | 1.7 (1.7-1.7) | 1 (1-2) | 30.1 (29.2-31.0) | 28 (7-35) | 27.7 (27.1-28.3) | 22.5 (15.0-33.3) |
LTOT | 5877 (81.7) [80.8-82.6] | 2.3 (2.2-2.3) | 2 (1-3) | 61.8 (60.6-63.0) | 58 (30-84) | 44.2 (43.2-45.2) | 30.0 (20.0-52.5) |
Inflammatory joint disorder | |||||||
Privately insured | |||||||
No LTOT | 90 261 (19.6) [19.5-19.7] | 1.5 (1.5-1.5) | 1 (1-2) | 22.8 (22.7-23.0) | 15 (7-30) | 31.7 (31.6-31.9) | 25.0 (17.5-40.0) |
LTOT | 56 676 (82.1) [81.8-82.4] | 2.5 (2.5-2.5) | 2 (1-3) | 68.5 (68.1-68.9) | 60 (30-90) | 53.5 (53.1-53.9) | 40.0 (24.6-60.0) |
Medicaid | |||||||
No LTOT | 46 566 (29.6) [29.4-29.8] | 1.8 (1.8-1.8) | 1 (1-2) | 23.1 (22.9-23.4) | 13 (5-30) | 29.0 (28.8-29.2) | 23.4 (17.5-33.8) |
LTOT | 34 096) (85.3) [84.9-85.6] | 2.5 (2.4-2.5) | 2 (1-3) | 63.3 (62.8-63.7) | 60 (30-90) | 45.6 (45.1-46.1) | 33.8 (22.5-58.1) |
Irritable bowel syndrome | |||||||
Privately insured | |||||||
No LTOT | 1524 (6.5) [6.2-6.8] | 1.2 (1.2-1.3) | 1 (1-1) | 21.0 (20.0-21.9) | 15 (6-30) | 29.3 (28.1-30.4) | 22.5 (15.0-37.5) |
LTOT | 1090 (63.4) [61.1-65.6] | 1.8 (1.7-1.8) | 1 (1-2) | 48.1 (46.2-50.1) | 30 (30-60) | 48.3 (45.4-51.1) | 34.5 (20.0-60.0) |
Medicaid | |||||||
No LTOT | 948 (13.4) [12.6-14.2] | 1.4 (1.3-1.5) | 1 (1-2) | 16.8 (15.6-18.0) | 10 (4-30) | 29.1 (27.8-30.4) | 22.5 (16.7-33.8) |
LTOT | 639 (66.4) [63.4-69.3] | 1.7 (1.6-1.8) | 1 (1-2) | 44.2 (42.1-46.4) | 30 (30-60) | 40.4 (37.6-43.1) | 30.0 (20.0-45.0) |
Nonmigraine headaches | |||||||
Privately insured | |||||||
No LTOT | 7826 (11.6) [11.4-11.9] | 1.4 (1.4-1.4) | 1 (1-1) | 18.5 (18.0-18.9) | 10 (5-30) | 28.7 (28.2-29.2) | 22.5 (16.3-33.8) |
LTOT | 5434 (75.0) [74.0-76.0] | 2.1 (2.1-2.2) | 2 (1-3) | 56.4 (55.2-57.5) | 35 (30-60) | 52.6 (51.2-53.9) | 40.0 (22.5-60.0) |
Medicaid | |||||||
No LTOT | 9255 (13.9) [13.6-14.1] | 1.5 (1.4-1.5) | 1 (1-2) | 13.5 (13.1-13.8) | 6 (3-16) | 28.1 (27.7-28.5) | 24.0 (18.0-33.3) |
LTOT | 4301 (74.1) [73.0-75.2] | 1.9 (1.9-1.9) | 1 (1-2) | 45.8 (44.8-46.8) | 30 (30-60) | 43.9 (42.7-45.1) | 30.0 (20.0-55.0) |
Osteoarthritis or joint cartilage conditions | |||||||
Privately insured | |||||||
No LTOT | 65 305 (18.8) [18.6-18.9] | 1.4 (1.4-1.4) | 1 (1-2) | 23.6 (23.4-23.8) | 17 (8-30) | 31.6 (31.4-31.8) | 25.0 (15.0-40.0) |
LTOT | 43 065 (77.6) [77.2-77.9] | 2.2 (2.2-2.2) | 2 (1-3) | 60.1 (59.7-60.5) | 53 (30-84) | 49.1 (48.6-49.5) | 37.5 (21.6-60.0) |
Medicaid | |||||||
No LTOT | 18 784 (33.2) [32.9-33.6] | 1.7 (1.7-1.8) | 1 (1-2) | 27.1 (26.7-27.5) | 20 (7-30) | 30.2 (29.9-30.6) | 23.4 (15.8-37.5) |
LTOT | 19 345 (83.1) [82.6-83.6] | 2.3 (2.3-2.4) | 2 (1-3) | 60.9 (60.3-61.5) | 56 (30-90) | 44.5 (43.9-45.1) | 33.8 (22.5-54.0) |
Periarticular or soft-tissue disorders | |||||||
Privately insured | |||||||
No LTOT | 27 773 (16.4) [16.2-16.6] | 1.4 (1.4-1.4) | 1 (1-2) | 17.4 (17.2-17.6) | 10 (5-26) | 37.8 (37.5-38.1) | 30.0 (20.0-50.0) |
LTOT | 12 683 (74.9) [74.3-75.6] | 2.2 (2.2-2.2) | 2 (1-3) | 59.5 (58.7-60.2) | 50 (30-75) | 51.8 (51.0-52.7) | 40.0 (22.5-60.0) |
Medicaid | |||||||
No LTOT | 9785 (28.3) [27.8-28.8] | 1.7 (1.7-1.7) | 1 (1-2) | 19.9 (19.5-20.3) | 12 (5-30) | 32.4 (32.0-32.8) | 27.8 (18.8-40.0) |
LTOT | 6254 (78.0) [77.1-78.9] | 2.1 (2.0-2.1) | 2 (1-3) | 51.3 (50.5-52.2) | 33 (30-60) | 43.4 (42.3-44.4) | 31.3 (21.3-52.5) |
Abbreviations: IQR, interquartile range; LTOT, long-term opioid therapy; MME, morphine milligram equivalents16; Rx, prescriptions.
Reported outcome data (prescribing rate, MME, days’ supply, and number of Rx) are anchored to patients, reflecting all Rx supplied to a patient for visits related to that indication during the 3 months following the index diagnosis.
Data from the OptumLabs Data Warehouse, 2017.
Patients whose Rx do not meet LTOT criteria.
Data from the MarketScan Multi-State Medicaid Database, from quarter 4 2016 to quarter 3 2017.
Patients Not Receiving LTOT
We categorized 87.4% of 1 474 731 privately insured patients and 80.0% of 513 131 Medicaid-insured patients with chronic pain as not receiving LTOT based on our criteria. Among privately insured patients not receiving LTOT, opioid prescribing rates ranged from 6.5% (irritable bowel syndrome) to 28.3% (chronic radicular back pain), overall lower than rates for patients with Medicaid, which ranged from 13.4% (irritable bowel syndrome) to 44.0% (chronic radicular back pain). Mean days’ supply ranged from 17.4 to 34.9 days (privately insured) and 13.5 to 36.6 days (Medicaid); patients with back pain, neck pain, and fibromyalgia received longer days’ supplies (typically approaching or exceeding 30 days) than other patients not receiving LTOT with chronic pain across both patient samples. An approximate mean dosage of 30 MME/d was associated with most conditions.
Patients Already Receiving LTOT
We categorized 12.6% of privately insured patients and 20.0% of Medicaid enrollees with chronic pain as already receiving LTOT prior to the study index diagnosis. Among them, 60.4% (privately insured) and 61.2% (Medicaid) had the same chronic pain indication in the lookback period prior to the study index diagnosis, suggesting that for the majority of patients already receiving LTOT, it is likely that their LTOT was for this same preexisting chronic pain indication. Patients already receiving LTOT were highly likely to continue to receive opioids coincident with a visit for a chronic pain diagnosis, ranging from 63.4% of privately insured patients (66.4% for Medicaid insured) with irritable bowel syndrome to 87.7% of patients (90.4% for Medicaid insured) with chronic nonradicular back pain. Most patients already prescribed LTOT with 1 or more prescriptions linked to a visit for a chronic pain diagnosis received sufficient opioids for at least half the days of the 3 months following the visit across both patient populations. For privately insured patients already prescribed LTOT, mean daily dosage exceeded 50 MME per day for all conditions except irritable bowel syndrome (48.3; 95% CI, 45.4-51.1 MME) and osteoarthritis or joint cartilage conditions (49.1; 95% CI, 48.6-49.5 MME), in contrast to Medicaid enrollees who received fewer than 50 MME per day for the chronic conditions under study.
Indications Associated With Postsurgical Pain
In total, we identified 385 254 surgical procedures among privately insured patients and 285 996 among Medicaid enrollees. Overall, opioids were prescribed at hospital discharge for 66% of these procedures for the privately insured patients and 55% for Medicaid enrollees (Table 3). The lowest hospital discharge prescribing rates among patients not receiving LTOT occurred after vaginal delivery (private insurance: 23.6%; 95% CI, 23.3%-23.9% vs Medicaid: 30.7%; 95% CI, 30.4%-30.9%), open colectomy (private insurance: 34.8%; 95% CI, 33.2%-36.4% vs Medicaid: 35.6%; 95% CI, 32.9%-38.4%), coronary artery bypass surgery (private insurance: 34.8%; 95% CI, 33.7%-35.8% vs Medicaid: 39.8%; 95% CI, 37.0%-42.6%), and tonsillectomy (private insurance: 44.2%; 95% CI, 43.3%-45.0% vs Medicaid, 35.9%; 95% CI, 35.4%-36.4%) (Table 3). Among privately insured patients, arthroscopic rotator cuff repair (93.0% of procedures), arthroscopic knee surgery (92.9%), lumbar decompression (86.0%), and laparoscopic abdominal solid organ resection (85.9%) had the highest rates, whereas among Medicaid enrollees, the highest rates were observed for arthroscopic rotator cuff repair (94.4%), laparoscopic abdominal solid organ resection (92.4%), arthroscopic knee surgery (92.1%), and laparoscopic cholecystectomy (87.6%). Mean days’ supply of opioids for postsurgical pain among patients not receiving LTOT ranged from 4.1 days (95% CI, 4.1-4.1 days) for vaginal delivery to 9.5 days (95% CI, 9.4-9.7 days) for combined spinal fusion and lumbar decompression in the privately insured population, and 4.2 (95% CI, 4.2-4.2 days) for vaginal delivery to 9.1 (95% CI, 8.9-9.2 days) for spinal fusion in the Medicaid population. Mean (95% CI) daily dosage across all indications among privately insured patients ranged from 37.4 (37.0-37.9) MME for lumpectomies or partial mastectomies to 63.5 (62.5-64.4) MME for combined spinal fusion and lumbar decompression; among Medicaid-insured patients, the range was 27.3 (27.0-27.7) MME for tonsillectomies to 62.9 (60.4-65.4) MME for combined spinal fusion and lumbar decompression.
Table 3. Opioid Prescribing Rates and Amounts for Postsurgical Pain Management Among Patients Not Receiving Long-term Opioid Therapy in the US, by Indication and Insurance Type, 2017a,b.
Procedure | Private insurancec | Medicaidd | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Procedures with Rx, No. (%) [95% CI] | No. of days’ supply | Daily dosage, MME | Procedures with Rx, No. (%) [95% CI] | No. of days’ supply | Daily dosage, MME | |||||
Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | |||
Vaginal delivery | 14 166 (23.6) [23.3-23.9] | 4.1 (4.1-4.1) | 4.0 (3.0-5.0) | 39.0 (38.8-39.3) | 37.5 (27.0-50.0) | 35 208 (30.7) [30.4-30.9] | 4.2 (4.2-4.2) | 4.0 (3.0-5.0) | 38.2 (38.0-38.4) | 33.3 (25.0-45.0) |
Total knee arthroplasty | 27 528 (79.5) [79.1-79.9] | 8.5 (8.5-8.6) | 8.0 (5.0-10.0) | 62.0 (61.6-62.3) | 57.7 (37.5-85.7) | 2753 (85.7) [84.5-86.9] | 8.3 (8.2-8.5) | 7.0 (5.0-10.0) | 61.1 (60.0-62.3) | 55.6 (30.9-85.7) |
Sinus surgery | 21 661 (63.5) [63.0-64.0] | 4.9 (4.8-4.9) | 4.0 (3.0-5.0) | 42.2 (41.9-42.6) | 40.0 (30.0-50.0) | 5905 (59.8) [58.9-60.8] | 5.3 (5.2-5.4) | 5.0 (3.0-7.0) | 39.9 (39.2-40.6) | 37.5 (25.0-50.0) |
Cholecystectomy, laparoscopic | 23 664 (80.2) [79.7-80.6] | 4.7 (4.7-4.8) | 4.0 (3.0-5.0) | 42.1 (41.8-42.3) | 37.5 (28.6-50.0) | 14 081 (87.6) [87.1-88.2] | 4.8 (4.7-4.8) | 4.0 (3.0-5.0) | 42.3 (42.0-42.6) | 37.5 (25.0-50.0) |
Cesarean section | 24 247 (78.0) [77.6-78.5] | 4.9 (4.9-5.0) | 5.0 (3.0-5.0) | 48.5 (48.2-48.7) | 45.0 (31.5-60.0) | 42 560 (83.3) [83.0-83.6] | 5.1 (5.1-5.1) | 5.0 (4.0-6.0) | 49.3 (49.1-49.5) | 45.0 (32.1-60.0) |
Total hip arthroplasty | 14 375 (76.4) [75.8-77.0] | 8.4 (8.3-8.4) | 7.0 (5.0-10.0) | 57.6 (57.1-58.0) | 50.0 (31.3-80.0) | 1745 (83.4) [81.8-85.0] | 8.4 (8.2-8.6) | 7.0 (5.0-10.0) | 61.6 (60.0-63.3) | 56.3 (30.8-85.7) |
Lumpectomy or partial mastectomy | 6355 (69.8) [68.9-70.8] | 4.2 (4.2-4.3) | 4.0 (3.0-5.0) | 37.4 (37.0-37.9) | 33.3 (25.0-50.0) | 2073 (81.0) [79.5-82.5] | 4.7 (4.6-4.8) | 5.0 (3.0-5.0) | 37.3 (36.5-38.1) | 32.5 (25.0-45.0) |
Combined spinal fusion and lumbar decompression surgery | 10 620 (75.5) [74.8-76.2] | 9.5 (9.4-9.7) | 8.0 (5.0-10.0) | 63.5 (62.5-64.4) | 57.1 (35.0-85.7) | 1796 (74.1) [72.3-75.8] | 8.9 (8.6-9.2) | 8.0 (5.0-10.0) | 62.9 (60.4-65.4) | 56.3 (33.3-85.7) |
Lumbar decompression | 11 844 (86.0) [85.4-86.6] | 8.1 (8.0-8.1) | 7.0 (5.0-10.0) | 53.9 (53.5-54.4) | 45.0 (30.0-67.5) | 1987 (81.9) [80.4-83.5] | 8.1 (7.9-8.3) | 7.0 (5.0-10.0) | 50.1 (49.0-51.3) | 45.0 (30.0-64.3) |
Arthroscopic rotator cuff repair | 12 538 (93.0) [92.6-93.5] | 6.6 (6.6-6.7) | 5.0 (5.0-8.0) | 62.6 (62.1-63.1) | 60.0 (40.0-84.4) | 1837 (94.4) [93.4-95.4] | 7.3 (7.1-7.4) | 7.0 (5.0-10.0) | 56.4 (55.3-57.6) | 50.0 (30.0-75.0) |
Spinal fusion | 9206 (81.3) [80.6-82.0] | 9.0 (8.9-9.1) | 8.0 (5.0-10.0) | 58.4 (57.7-59.0) | 50.0 (31.3-75.0) | 3136 (78.5) [77.2-79.8] | 9.1 (8.9-9.2) | 8.0 (5.0-10.0) | 54.7 (53.7-55.8) | 45.0 (30.0-75.0) |
Tonsillectomy | 6229 (44.2) [43.3-45.0] | 7.2 (7.1-7.4) | 7.0 (5.0-9.0) | 42.2 (41.5-42.9) | 34.6 (19.3-59.1) | 12 800 (35.9) [35.4-36.4] | 7.4 (7.3-7.5) | 7.0 (5.0-10.0) | 27.3 (27.0-27.7) | 21.4 (12.5-35.0) |
Abdominal solid organ resection, laparoscopic | 10 197 (85.9) [85.3-86.5] | 5.0 (4.9-5.0) | 5.0 (3.0-6.0) | 46.2 (45.7-46.6) | 45.0 (30.0-56.3) | 4531 (92.4) [91.7-93.2] | 5.1 (5.0-5.2) | 5.0 (3.0-7.0) | 46.7 (46.0-47.3) | 45.0 (30.0-60.0) |
Appendectomy, laparoscopic | 8649 (69.0) [68.2-69.8] | 4.6 (4.5-4.6) | 4.0 (3.0-5.0) | 42.4 (42.0-42.8) | 37.5 (30.0-50.0) | 5605 (64.9) [63.8-65.9] | 4.5 (4.4-4.5) | 4.0 (3.0-5.0) | 36.9 (36.3-37.4) | 30.0 (20.4-45.0) |
Inguinal hernia repair, open | 8250 (78.0) [77.2-78.8] | 4.9 (4.8-4.9) | 5.0 (3.0-5.0) | 43.0 (42.6-43.5) | 40.0 (30.0-50.0) | 2580 (61.9) [60.5-63.4] | 5.0 (4.9-5.1) | 5.0 (3.0-6.0) | 34.6 (33.7-35.5) | 30.0 (15.0-46.9) |
Excisional biopsy | 2148 (48.5) [47.0-49.9] | 5.1 (4.9-5.2) | 5.0 (3.0-6.0) | 41.1 (39.9-42.3) | 35.0 (27.0-50.0) | 1051 (49.5) [47.4-51.7] | 5.1 (4.9-5.3) | 5.0 (3.0-7.0) | 37.9 (36.6-39.3) | 30.0 (20.8-45.0) |
Coronary artery bypass | 2835 (34.8) [33.7-35.8] | 7.2 (7.0-7.3) | 6.0 (5.0-9.0) | 44.0 (43.2-44.9) | 40.0 (30.0-56.3) | 463 (39.8) [37.0-42.6] | 7.1 (6.7-7.5) | 7.0 (5.0-9.0) | 46.8 (44.1-49.6) | 42.9 (28.6-57.1) |
Inguinal hernia repair, laparoscopic | 6614 (83.0) [82.2-83.9] | 4.8 (4.7-4.8) | 4.0 (3.0-5.0) | 45.3 (44.8-45.8) | 45.0 (30.0-56.3) | 1040 (79.1) [77.0-81.3] | 5.2 (5.0-5.3) | 5.0 (3.0-7.0) | 42.9 (41.5-44.3) | 40.0 (25.0-56.3) |
Simple mastectomy | 2096 (83.3) [81.9-84.8] | 5.5 (5.3-5.6) | 5.0 (4.0-7.0) | 51.1 (49.8-52.4) | 45.0 (30.0-64.3) | 338 (87.3) [84.0-90.7] | 5.6 (5.2-6.0) | 5.0 (4.0-7.0) | 48.6 (45.6-51.7) | 45.0 (30.0-60.0) |
Arthroscopic knee surgery | 6887 (92.9) [92.3-93.5] | 6.2 (6.2-6.3) | 5.0 (4.0-7.0) | 60.9 (60.3-61.6) | 56.3 (40.0-75.0) | 3021 (92.1) [91.2-93.0] | 6.8 (6.7-6.9) | 6.0 (5.0-8.0) | 54.0 (53.1-55.0) | 46.9 (30.0-75.0) |
Colectomy, laparoscopic | 2316 (60.4) [58.9-62.0] | 5.3 (5.2-5.4) | 5.0 (3.0-7.0) | 45.8 (44.9-46.8) | 43.8 (30.0-56.3) | 403 (64.6) [60.8-68.3] | 5.5 (5.2-5.8) | 5.0 (4.0-7.0) | 50.4 (47.6-53.2) | 45.0 (30.0-60.0) |
Parathyroid or thyroid surgery | 3057 (71.1) [69.8-72.5] | 4.8 (4.7-4.8) | 4.0 (3.0-5.0) | 41.7 (41.0-42.4) | 37.5 (30.0-50.0) | 1267 (81.8) [79.9-83.7] | 5.2 (5.0-5.3) | 5.0 (3.0-7.0) | 43.1 (41.9-44.3) | 37.5 (28.6-50.0) |
Cholecystectomy, open | 512 (50.5) [47.4-53.6] | 5.4 (5.1-5.6) | 5.0 (3.0-6.0) | 41.3 (39.5-43.0) | 37.5 (28.1-50.0) | 234 (58.9) [54.1-63.8] | 5.3 (4.9-5.6) | 5.0 (3.0-7.0) | 45.2 (42.4-48.1) | 38.8 (28.1-60.0) |
Colectomy, open | 1196 (34.8) [33.2-36.4] | 5.7 (5.5-5.9) | 5.0 (4.0-7.0) | 43.5 (42.2-44.9) | 37.5 (28.1-50.0) | 422 (35.6) [32.9-38.4] | 5.5 (5.3-5.7) | 5.0 (3.0-7.0) | 48.9 (45.8-52.1) | 41.7 (28.6-60.0) |
Abbreviations: IQR, interquartile range; MME, morphine milligram equivalents16; Rx, prescriptions.
Reported outcome data (prescribing rate, MME, and days’ supply) reflect Rx supplied for a specific procedure or visit, meaning that the prescribing rate is anchored to visits or procedures.
Patients whose Rx do not meet LTOT criteria.
Data from the OptumLabs Data Warehouse, 2017.
Data from the MarketScan Multi-State Medicaid Database, from quarter 4 2016 to quarter 3 2017.
Across both patient populations, patients already receiving LTOT who underwent surgery nearly always were prescribed opioids to treat postsurgical pain. Also, postsurgical mean days’ supply and mean daily dosage was nearly universally higher among patients already receiving LTOT across both patient populations (eTable 3 in the Supplement).
Sickle Cell Disease
Almost half of privately insured patients (42.6%) and Medicaid-enrolled patients (44.9%) with SCD received an opioid prescription overall (Table 4). However, there were marked differences by age. More than twice as many children with SCD covered under Medicaid received an opioid prescription (29.0%) compared with children with SCD and private insurance (12.2%). A higher percentage of nonelderly adults with SCD and Medicaid received opioids, with a mean (95% CI) days’ supply nearly twice as high (117.3 [112.1-122.6] days) as that prescribed for those with private insurance (59.2 [53.8-64.6] days).
Table 4. Opioid Prescribing Rates and Amounts Among Patients With Sickle Cell Disease in the US, by Age Group and Insurance Type, 2017a.
Insurance type | Patients with Rx, No. (%) [95% CI] | No. of Rx | No. of days’ supply | Daily dosage, MME | |||
---|---|---|---|---|---|---|---|
Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | ||
At 0-18 y | |||||||
Privateb | 34 (12.2) [8.4-16.1] | 1.8 (1.3-2.3) | 1 (1-2) | 15.7 (6.0-25.5) | 6 (3-12) | 34.3 (28.6-40.0) | 30.2 (24.6-46.5) |
Medicaidc | 1279 (29.0) [27.6-30.3] | 3.4 (3.2-3.5) | 2 (2-4) | 24.4 (22.4-26.4) | 14 (10-24) | 31.9 (30.8-33.1) | 30 (18-45) |
At 19-64 y | |||||||
Private | 479 (52.5) [49.2-55.7] | 3.2 (3.0-3.4) | 2 (1-4) | 59.2 (53.8-64.6) | 40 (15-87) | 85.1 (76.7-93.5) | 58.1 (35.9-106.7) |
Medicaid | 1829 (72.9) [71.2-74.7] | 7.5 (7.2-7.8) | 6 (4-10) | 117.3 (112.1-122.6) | 80 (30-180) | 88.8 (85.3-92.4) | 60 (40-108) |
At ≥65 y | |||||||
Private | 45 (37.5) [28.8-46.2] | 2.5 (2.0-3.0) | 2 (1-3) | 54.1 (39.8-68.3) | 38 (18-76) | 54.1 (40.6-67.5) | 40.0 (21.4-72.6) |
Medicaid | NA | NA | NA | NA | NA | NA | NA |
Overall | |||||||
Private | 558 (42.6) [39.9-45.2] | 3.0 (2.8-3.3) | 2 (1-4) | 56.1 (51.3-61.0) | 34 (12-82) | 79.5 (72.1-86.9) | 52.5 (30.7-96.0) |
Medicaid | 3108 (44.9) [43.8-46.1] | 5.8 (5.6-6.0) | 4 (2-8) | 79.1 (75.5-82.7) | 32 (14-110) | 65.6 (63.2-67.9) | 45 (28-75) |
Abbreviations: IQR, interquartile range; MME, morphine milligram equivalents16; Rx, prescriptions.
Reported outcome data (prescribing rate, MME, days’ supply, and number of Rx) are anchored to patients, reflecting all Rx supplied to a patient for visits related to that indication during the 3 months following the index diagnosis.
Data from the OptumLabs Data Warehouse, 2017.
Data from the MarketScan Multi-State Medicaid Database, from quarter 4 2016 to quarter 3 2017.
Cancer
A third of privately insured patients with cancer received an opioid prescription compared with more than half (56.6%) of patients with Medicaid. Patients with Medicaid received a higher days’ supply and dosage compared with privately insured patients (Medicaid: 115.2 [95% CI, 112.9-117.5] days; 61.1 [95% CI, 59.9-62.4] MME/d; privately insured: 34.2 [95% CI, 33.8-34.6] days; 46.2 [95% CI, 45.8-46.5] MME/d) (Table 5).
Table 5. Opioid Prescribing Rates and Amounts Among Patients With Cancer in the US, by Age Group and Insurance Type, 2017a.
Insurance type | Patients with Rx, No. (%) [95% CI] | No. of Rx | No. of days’ supply | Daily dosage, MME | |||
---|---|---|---|---|---|---|---|
Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | Mean (95% CI) | Median (IQR) | ||
At 0-18 y | |||||||
Privateb | 244 (23.0) [20.4-25.5] | 1.8 (1.6-2.0) | 1 (1-2) | 13.4 (10.0-16.9) | 7 (4-12) | 27.7 (25.3-30.1) | 23.9 (14.1-39.3) |
Medicaidc | 489 (25.5) [23.5-27.4] | 3.9 (3.6-4.2) | 2 (2-4) | 31.0 (26.3-35.6) | 16 (10-30) | 28.2 (26.1-30.4) | 23 (12-38) |
At 19-64 y | |||||||
Private | 18 588 (40.6) [40.1-41.0] | 2.4 (2.4-2.5) | 2 (1-3) | 37.5 (36.8-38.2) | 15 (5-50) | 52.6 (51.9-53.2) | 42.8 (30.0-60.0) |
Medicaid | 8854 (60.9) [60.1-61.6] | 6.9 (6.8-7.0) | 6 (2-10) | 120.9 (118.5-123.4) | 86 (30-180) | 63.5 (62.2-64.8) | 45 (30-75) |
At ≥65 y | |||||||
Private | 27 551 (27.7) [27.4-27.9] | 2.0 (2.0-2.0) | 1 (1-2) | 32.2 (31.8-32.7) | 15 (5-41) | 42.0 (41.6-42.4) | 33.5 (22.5-50.0) |
Medicaid | 323 (54.4) [50.4-58.4] | 5.4 (4.9-5.9) | 4 (2-6) | 86.1 (75.8-96.4) | 60 (18-124) | 45.3 (41.0-49.5) | 35 (25-51) |
Overall | |||||||
Private | 46 383 (31.7) [31.4-31.9] | 2.2 (2.1-2.2) | 1 (1-3) | 34.2 (33.8-34.6) | 15 (5-45) | 46.2 (45.8-46.5) | 37.5 (25.0-55.0) |
Medicaid | 9666 (56.6) [55.9-57.4] | 6.7 (6.6-6.8) | 6 (2-8) | 115.2 (112.9-117.5) | 74 (24-180) | 61.1 (59.9-62.4) | 45 (30-71) |
Abbreviations: IQR, interquartile range; MME, morphine milligram equivalents16; Rx, prescriptions.
Reported outcome data (prescribing rate, MME, days’ supply, and number of Rx) are anchored to patients, reflecting all Rx supplied to a patient for visits related to that indication during the 3 months following the index diagnosis.
Data from the OptumLabs Data Warehouse, 2017.
Data from the MarketScan Multi-State Medicaid Database, from quarter 4 2016 to quarter 3 2017.
Opioid Prescribing Variation by Age Group
Opioids were prescribed for fewer patients and visits, and in lower amounts, for children aged 18 years or younger compared with adults for most indications (Table 4 and Table 5; eTables 4-9 in the Supplement). Compared with adults, children prescribed opioids received shorter durations for most indications; lower dosages for SCD, postsurgical pain, and cancer; and similar dosages for nonsurgical acute pain. There were insufficient data to report on pediatric patients with private insurance prescribed opioids for chronic pain, but among children with Medicaid coverage, a lower percentage received opioids for chronic pain compared with adults (eg, 4.4% of children vs 37.4% of nonelderly adults among Medicaid enrollees not receiving LTOT with nonradicular back pain).
Opioids were prescribed in a lower percentage of visits for adults aged 65 years or older for dental pain, renal colic, most surgical procedures, and cancer compared with other adults, but prescribing rates were similar to those for other adults for most other nonsurgical acute and chronic pain indications (Table 4 and Table 5; eTables 4-9 in the Supplement). Days’ supply and dosages were similar for adults aged 19 to 64 years and those aged 65 years or older, except that adults younger than 65 years who were also receiving LTOT, who underwent surgery, or had SCD or cancer received higher mean daily dosages than older adults in these categories.
Discussion
In our analysis, we linked opioid prescriptions to 13% to 16% of nonsurgical acute pain visits, 30% to 50% of patients with chronic pain indications, 55% to 66% of surgical procedures, 43% to 45% of patients with SCD, and 32% to 57% of patients with cancer, with rates, days’ supply, and daily dosage varying widely across indications. For many indications, opioid prescribing rates, days’ supply, and dosage did not align with evidence-based guidelines and practice-informed recommendations. For example, published guidance recommends nonopioid treatment of fibromyalgia,17,18 chronic17,19,20 and acute back pain,17,19,20 musculoskeletal strains or sprains,21 and dental pain22,23 with no more than 3 to 7 days of opioids when needed for acute pain.6 Opioid prescriptions were issued to patients for all of these indications across both study populations in this analysis. We found that across both patient populations, patients with fibromyalgia not already receiving LTOT were typically prescribed at least a full month’s supply of opioids; that 28.3% (privately insured) and 44.0% (Medicaid) of patients with chronic radicular back pain not already receiving LTOT were started on opioids; and that opioid prescriptions with mean treatment durations of 11.8 (privately insured) and 9.9 days (Medicaid) were issued for acute low back pain.
For many patients with chronic pain conditions receiving LTOT, daily dosages of opioids exceeded 50 MME, a threshold beyond which the risk for adverse events, including overdose, is increased.6 Previous analyses have found associations between longer durations of opioid therapy and higher opioid dosages,24 potentially reflecting increasing dosages as patients develop tolerance to pain-relieving effects of opioids. It is important for clinicians to increase long-term opioid dosages only when it is clear that benefits of increasing dosage will outweigh risks.6 Once patients are receiving high opioid dosages long term, it can be difficult to reverse course.25 Successful dosage reduction is likely to require strong collaboration between the patient and clinician, behavioral support, multimodal pain treatment, and time (often months to years) to taper slowly enough to minimize withdrawal symptoms.6,26
Postoperative opioid prescribing at hospital discharge exceeds published recommendations for nearly all surgical procedures included in this analysis. For example, the Michigan Surgical Quality Collaborative27 recommends up to 10 tablets of oxycodone, 5 mg, at discharge for opioid-naive patients after laparoscopic cholecystectomy, totaling 75 MME. One tablet taken every 4 hours would exhaust a 10-tablet supply in less than 2 days; we found 4.7 (privately insured) and 4.8 (Medicaid) days’ supply provided to patients not receiving LTOT. Numerous studies report that patients frequently take fewer opioids than prescribed.11,28,29,30,31 Therefore, larger amounts of prescribed opioids suggest excess opioids potentially accessible to others, increasing risks of misuse and overdose. To minimize risks of excess opioids while meeting individual pain control needs, 1 institution32 calculates postsurgical discharge opioid prescriptions based on inpatient opioid use on the day prior to discharge.
Among patients with cancer, about one-third in private insurance and about half in Medicaid were prescribed opioids. One study of outpatients with recurrent or metastatic cancer found that 62% reported moderate to severe pain,33 for which opioids are recommended.34 It is possible that many patients with cancer in our sample did not have pain or had pain that was managed effectively with nonopioid treatment. However, some patients might not have received pain management proportionate to their pain severity, as has been reported previously.12
Among patients with SCD, fewer than half with either insurance type were prescribed opioids. Suboptimal management of acute SCD pain has been reported13,14 and might have affected some patients. However, claims data cannot identify whether prescriptions were associated with acute sickle cell crisis or with chronic pain. Privately insured adults and those with Medicaid diagnosed as having SCD were much more likely than children to receive opioids, and adults received substantially higher opioid dosages and for longer durations than children did. This finding is consistent with previous studies35 and likely reflects increased incidence of SCD complications as individuals age. Other studies have found that adults and patients with Medicaid were less likely to fill hydroxyurea prescriptions or receive specialty care for SCD,35 suggesting that lack of access to care may be associated with complications such as vaso-occlusive crisis and with a need to treat complications with opioids. In addition, clinicians often do not offer multimodal pain management for SCD pain,14 and many adults with SCD use opioids for chronic pain as well as for acute pain crises,14 which may increase tolerance and opioid requirements when patients experience acute pain. Other research has found that opioid use among SCD patients has been substantial but stable across recent years (2008-2012), while use increased in the broader US population, and that opioid-related overdose deaths among individuals with SCD were substantially lower than among individuals with other diseases associated with pain.35 Because of the unique challenges in managing painful SCD complications, readers of the 2016 CDC Guideline for Prescribing Opioids for Chronic Pain were referred to other guidelines specific to SCD for more guidance.36 Despite this, there have been reports of inappropriate misapplication of CDC guideline recommendations to patients with SCD14 as well as with cancer pain,37 and the CDC has released statements emphasizing that the intended, stated scope of the guideline did not include pain in the setting of acute cancer or acute sickle cell crisis.37
Overall, opioid prescribing rates were higher among Medicaid than privately insured patients, but Medicaid patients were prescribed lower daily dosages and shorter durations. These findings merit closer examination; they may reflect greater use of drug utilization strategies by Medicaid in comparison with commercial payers, such as prior authorization and condition or referral requirements for use of nonopioid medications and nonpharmacologic therapies.38
Limitations
Caution is needed in interpreting several aspects of this analysis. We relied on claims data and were unable to assess clinical details, such as pain severity or function, or to assess opioid prescriptions not covered by insurance. Other pain treatments that patients may have received, such as nonopioid medications or nonpharmacologic treatments, were not directly assessed. We did not assess uninsured patients, those with fee-for-service Medicare, or those whose prescriptions were covered under other means, including cash payments or other insurance plans. Variation in plans and inability to identify specific state Medicaid populations in the MMD data limit interpretation of prescribing rates in the context of opioid prescribing policies, such as prior authorization and duration limits. We used a linkage procedure to connect opioid prescriptions to the most likely indications at the patient or visit level; some prescriptions could have been misattributed to specific indications that were not the actual intent of the prescription or intended for an indication not included in our analysis. However, the patients identified using our list of pain indications accounted for the vast majority (87.7%) of total opioid prescriptions among privately insured patients in the OLDW data set in 2017. Dental procedures in OLDW were those covered by medical benefits and may not be representative of dental procedures for which medical claims are not billed. By contrast, the Medicaid data included direct claims from dentists, limiting direct comparisons between insurance plans. In the SCD analysis, we are unable to differentiate between LTOT for SCD and opioids prescribed to treat an acute vaso-occlusive crisis, and the small number of patients with SCD and private insurance may not represent the general SCD population. The amount of time that elapsed between the date of an inpatient surgical procedure and hospital discharge may affect the amount of pain medication prescribed for an individual patient at the point of discharge. Our outcome of interest was overall prescribing for specific indications, rather than prescribing by individual prescribers owing to data set limitations, which may affect estimates of precision. Lastly, prescribing rates do not reflect national estimates of overall opioid prescribing; rates are based on specific patient populations for specific indications, and geographic constraints of the data sources used in this analysis may limit national application of calculated rates.
Conclusions
This comprehensive analysis of opioid prescribing across a broad variety of indications suggested that prescribing patterns for some indications were incongruent with existing evidence-based clinical guidelines. These results may reflect low clinician awareness of applicable guidelines or reluctance to adhere to guidance. Implementation guidance that emphasizes evidence-based recommendations has the potential to better align opioid prescribing practices with evidence on opioid benefits and risks and improve pain management and patient safety.
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