| Literature DB >> 31461466 |
Bastian Rosner1, Jessica Neicun2, Justin Christopher Yang1, Andres Roman-Urrestarazu1,2.
Abstract
INTRODUCTION: Opioids are one of the most important and effective drug classes in pain medicine with a key role in most medical fields. The increase of opioid prescription over time has led to higher numbers of prescription opioid misuse, abuse and opioid-related deaths in most developed OECD (Organisation for Economic Co-operation and Development) countries around the world. Whilst reliable data on the prevalence of opioid treatment is accessible for many countries, data on Germany specifically is still scarce. Considering Germany being the largest country in the European Union, the lack of evidence-based strategies from long-term studies is crucial. The aim of this work is to review and summarise relevant published literature on the prevalence of opioid prescription in Germany to adequately inform health policy strategies.Entities:
Year: 2019 PMID: 31461466 PMCID: PMC6713321 DOI: 10.1371/journal.pone.0221153
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Classification of opioids used in Germany.
Adapted from Trivedi et al. [32].
| Potency | Origin | Function |
|---|---|---|
* Numbers in brackets present the market share of the respective opioid according to packages sold for patients of statutory health insurances in Germany in 2011 (1.4% of market share devoted to “other opioids”). (Kieble M., 2012)
** Codeine and Tramadol do not require a special opioid prescription but can be obtained with a standard prescription.
Inclusion and exclusion criteria for study selection.
| Inclusion criteria | Exclusion criteria |
|---|---|
| 1. Full-text accessible at University of Cambridge | 1. Full-text not accessible at University of Cambridge |
Search terms used in database search.
| Database | Search Strategy |
|---|---|
| 1. prescription [MeSH] | |
| 1. prescription* |
Fig 1Literature search strategy.
Summary of studies included in the systematic review.
| # | Reference | Journal | Year | Region | Age Range (years) | Total # of patients | Study period | Type of data / Primary data source | Study type | Descriptive measures reported in studies |
|---|---|---|---|---|---|---|---|---|---|---|
| Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz | 2017 | Schleswig-Holstein, Hamburg, Bremen, Nieder-sachsen | Not given | ≈ 11,000,000 | 2005 to 2011 | Prescription data / North German Pharmacy Computing Centre (Norddeutsches Apo- thekenrechenzentrum, NARZ) | Retrospective repeated measures cross-sectional study | Prevalence of patients with opioid prescriptions (subgroups analysis of age groups, mean duration of treatment/age groups), prevalence of LTOT, mean DDD/patient | ||
| Schmerz | 2008 | Germany | Not given | 1,534,034 | 2000 to 2003 | Insurance claims data / Statutory health insurance in Germany | Retrospective cross-sectional study | Prevalence of patients with opioid prescriptions | ||
| Schmerz | 2012 | Germany | Not given | 9,100,000 | 2011 | Insurance claims data / BARMER GEK | Retrospective cross-sectional study | Strong opioids only: Prevalence of patients with opioid prescriptions, DDD/user (subgroup analysis for different opioids) | ||
| Pharmacoepidemiology and Drug Safety | 2012 | Hesse | Not given, mean age 43.9 (2000) | 326,598 (2000) | 2000 to 2009 | Insurance claims data / AOK Hesse | Retrospective repeated measures cross-sectional study | Prevalence of patients with opioid prescriptions, DDD/user, DDD increase | ||
| Postgraduate Medicine | 2018 | Germany | ≥ 18 | 4,270,142 | 2016 | Data from patient records / Disease Analyzer database (QuintilesIMS) | Retrospective cross-sectional study | Prevalence of patients with pain medicine prescriptions (opioids as subgroup) | ||
| Schmerz | 1996 | Germany | Not given | 1,218,436 | 1990 to 1996 | Market share data, prescription data, survey data, data from a questionnaire / Der Deutsche Pharmamarkt (DPM), Mediplus, telephone survey, questionnaire for clinicians | Retrospective repeated measures cross-sectional study | Strong opioids only: Prevalence of patients with opioid prescriptions | ||
| European Journal of Pain | 2016 | Germany | Any age | 870,000 | 2012 | Insurance claims data / BARMER GEK | Retrospective cross-sectional study | LTOT for CNCP only: Prevalence of prescriptions for CNCP among all insureds, Prevalence of insureds with high-dose opioids among LTOT | ||
| Deutsches Ärzteblatt International | 2013 | Hesse | Not given, mean age 43.9 (2000) | 326,554 (2000) | 2000 to 2010 | Insurance claims data / AOK Hesse | Retrospective repeated measures cross-sectional study | Prevalence of patients with opioid prescriptions, DDD/user, DDD increase | ||
| Schmerz | 1990 | Hannover | Not given | 322,467 (1985) | 1985 & 1988 | Insurance claims data / AOK Hannover | Retrospective repeated measures cross-sectional study | Strong opioids only: Prevalence of patients with opioid prescriptions, total DDD Germany | ||
| Pain Physician | 2015 | Germany | Not given, mean age 42.2 | 6,800,000 | 2006 to 2010 | Insurance claims data / BARMER GEK | Retrospective repeated measures cross-sectional study | Prevalence of patients with opioid prescriptions, total DDD CNCP & CCP | ||
| Schmerz | 1992 | Bochum | Not given | 92,842 | 1989 to 1990 | Insurance claims data / AOK Bochum | Retrospective cross-sectional study | Strong opioids only: Prevalence of patients with opioid prescriptions | ||
| Journal of Pain and Symptom Management | 1995 | West Germany | Not given | 1,104,435 | 1990 to 1993 | Computerised patient records data / 330 practices in West Germany | Retrospective cross-sectional study | Strong opioids for cancer pain only: Prevalence of patients with opioid prescriptions |
Fig 2Prevalence of opioid prescription by opioid class included in study.
Comparison of descriptive measures.
| # | Reference | Patients with opioid prescription (%) | Mean duration of treatment (days) | Prevalence of LTOT among patients with opioid prescription (%) | DDD/user | Mean DD of LTOT (mg) | Treatment for CNCP/CCP (%) | Additional measures |
|---|---|---|---|---|---|---|---|---|
| - | - | - | ||||||
| - | - | - | - | - | - | |||
| - | - | - | - | Opioid prescribed most: Fentanyl, | ||||
| - | - | 2000–2009: | - | DDD increased by | ||||
| - | - | - | - | - | - | |||
| - | - | - | - | |||||
| - | - | - | - | Insureds with high-dose opioids among LTOT: | ||||
| - | - | 2000–2010: | - | DDD increased by | ||||
| - | - | - | - | - | Total DDD Germany: | |||
| - | - | - | - | - | DDD CCP: | |||
| - | - | - | - | - | ||||
| - | - | - | - | - |
* Strong opioids only
** Prevalence of LTOT prescriptions for CNCP among all insureds
*** DDD per insured, not per user
**** LTOT only
***** Strong opioids for cancer pain only
Fig 3Comparison of opioid prescription prevalence over time.
Fig 4Geographical distribution of study population including prevalence of opioid prescription in % [49].
Fig 5Prescription quantities of high-potency opioids in DDD/100 insureds according to postcode regions in 2011.
(Hoffmann et al.) [40].
Fig 6Proportion of cancer and non-cancer patients within the group of patients with opioid prescriptions.
Confidence intervals not given.
Strengths and limitations of the included data.
| Strengths | Limitations |
|---|---|
| • Studies in German and English were included in this review | • Only three studies randomised their study sample to reduce confounding [ |