| Literature DB >> 28376873 |
Jordan Edwards1, Jill Hayden2, Mark Asbridge2, Bruce Gregoire2, Kirk Magee3.
Abstract
BACKGROUND: Low back pain may be having a significant impact on emergency departments around the world. Research suggests low back pain is one of the leading causes of emergency department visits. However, in the peer-reviewed literature, there has been limited focus on the prevalence and management of back pain in the emergency department setting. The aim of the systematic review was to synthesize evidence about the prevalence of low back pain in emergency settings and explore the impact of study characteristics including type of emergency setting and how the study defined low back pain.Entities:
Mesh:
Year: 2017 PMID: 28376873 PMCID: PMC5379602 DOI: 10.1186/s12891-017-1511-7
Source DB: PubMed Journal: BMC Musculoskelet Disord ISSN: 1471-2474 Impact factor: 2.362
Fig. 1Flow chart of the selection of studies to be included in our systematic review
Methods and results of included studies
| Study | Location of study | Duration of data collection | ED Setting | Health Care System Funding | Age (Mean/ Median) | Sex (%Fem) | Definition of LBP | Coding System, | Sample Size | Prevalence Estimate |
|---|---|---|---|---|---|---|---|---|---|---|
| Angeletti, 2013 | Italy | 1-12 months | Non-Standard ED: Presidium (Post Seismic Period) | Private | 53c | 36d | Narrow | Diagnosis-Patient Charts | 958 | 4.9% |
| Astete, 2016 | Spain | 1-5 Years | Standard ED: Metropolitan | Public | 57 | 61 | Narrow | Diagnosis | 2000g | 2.9% |
| Cordell, 2002 | USA | <Month | Standard ED: Metropolitan | Private | 30 | 55 | Narrow | Complaint | 1665 | 7.6% |
| Dutch, 2008 | Australia | 1-5 Years | 3 Standard EDs: Metropolitan | Private | >18 | - | Broad | Complaint | 104 705g | 3.3% |
| Fialho, 2011 | Brazil | <Month | Standard ED: Metropolitan | Public | 41c | 58d | Narrow | Complaint- Patient Charts | 392 | 8.4% |
| Hoppe, 2013 | USA | 1-12 Months | Standard ED: Metropolitan | Private | 38 | 49 | Broad | Complaint-EDIS | 3007 | 5.4% |
| Kao, 2014a | USA | ≥5 Years | Standard ED: National Representation | Private | 44 | 45 | Broad | Diagnosis-ICD-9f | 323 186- 1.1 Billion | 3.99% |
| Friedman, 2010a | USA | ≥5 Years | Standard ED: National Representation | Private | 40 | 51 | Narrowe | Diagnosis-ICD-9f | 183 64 | 2.3% |
| Niska, 2010a | USA | 1-5 Years | Standard ED: National Representation | Private | >18 | 47 | Narrow | Diagnosis-ICD-9f | 39 393 000 | 1.9% |
| Lovegrove, 2011 | Australia | 1-5 Years | Standard ED: Metropolitan (All EDs in Perth) | Private | 46c | 51d | Broad | Complaint-EDIS | 1 171 731 | 1.9% |
| Mapoure, 2015 | Cameroon | ≥5 Years | Standard ED: Metropolitan | Public | 40 | 51 | Narrowe | Diagnosis-ICD-9f | 183 633 | 2.3% |
| Marinos, 2008 | Greece | 1-5 Years | Non-Standard ED: Orthopedic | Private | >18 | 47 | Narrow | Diagnosis-ICD-9 | 39 172 | 17.1% |
| NHAMCS, 2010 | USA | 1-5 Years | Standard ED: National Representation | Private | 37b | 57 | Narrow | Diagnosis-ICD-9 | 84 886 000 | 3.7% |
| Owens, 2008 | USA | 1-5 Years | Standard ED: National Representation | Private | 47 | 57 | Broad | Complaint-ICD-9f | 128 350 000 | 5.8% |
| Philips 2012 | Barbados | 1-12 Months | Non-Standard ED: Emergency Calls | Private | - | - | Broad | Complaint | 8875 | 0.9% |
| Ross, 2003 | USA | ≥5 Years | Standard ED: Metropolitan Observation Unit | Private | 53 | 59 | Broad | Diagnosis | 22530 | 4.9% |
| Silman, 2000 | UK | 1-12 months | 2 Standard EDs: Metropolitan | Public | >18 | - | Narrow | Complaint-Survey | A: 5147 | A: 3.2% |
| Tcherny-Lessenot, 2003 | France | <Month | Standard ED: Metropolitan | Public | 37 | 50 | Broad | Complaint-Survey | 729g | 10.8% |
| Thiruga-nasamban-damoorthy, 2014 | Canada | 1-12 months | 2 Standard EDs: Metropolitan | Public | 49c | 51d | Narrow | Diagnosis-ICD-10f | 31705 | 2.2% |
| Waterman, 2012 | USA | ≥5 Years | Standard ED: National Representation | Private | 39c | 49d | Narrow | Diagnosis-ICD-9f | 1 820 000 | 3.15% |
| Yan, 2015 | Cambodia | 1-12 months | 2 Standard EDs: Metropolitan | Private | 42 | 64 | Broad | Complaint | 1295 | 5.6% |
Notes: “Definition of LBP”, “Narrow” indicates studies using narrow definitions of low back pain. They used a definition of ‘low back pain’ or ‘non-specific low back pain’, or were limited to pain complaints in the lumbar region, while “Broad” indicates studies using broad definitions of low back pain. They used a general definition of ‘back pain’ to define their prevalence estimate, which may have included some individuals with back pain in regions other than the low back pain (for example, thoracic spine). “Coding System”. “Complaint” indicates studies using presenting complaints for their definitions of low back pain while “Diagnosis” indicates studies using diagnosis codes for their definition. a: Indicates that studies used the same database. b: Had to calculate age using age ranges. c: indicates that the age calculation was derived from the back pain population, not the entire presenting population, (>18) indicates that the study collected data from an adult population 18+. d: indicates that the % female calculation was derived from the back pain population, as opposed to the entire presenting population to the ED. e: Complaint, patients presenting with a complaint of back pain to the ED, Diagnosis, patients diagnosed with back pain in the ED. 5 = NON-SPECIFIC. f: indicates that the study used and presented specific codes for their definitions of LBP. g: Astete: random sample chosen from all patients presenting to the ED, Dutch: excluded younger than 18, left before being seen by a physician, dead on arrival and trauma patients. Tcherny-Lessenot: Survey data, missing some individuals who could not fill out survey or too many presenting to the ED at one time, Hoppe: Individuals were receiving opioid in the population they used to explore back pain, Thirun: Used age and sex for patients with serious pathology
Risk of bias analysis for all studies included in the review. Hoy et al., 2012, developed this risk of bias tool.
| Authors | Sampling frame represent target population? | Random selection for sample or census? | Likelihood of nonresponse bias minimal? | Data collected directly from subjects? | Acceptable case definition? | Study Instrument has validity and reliability? | Same mode of data collection for all subjects? | Length of prevalence period appropriate? | Appropriate numerator and denominator? | Overall Risk Assessment |
|---|---|---|---|---|---|---|---|---|---|---|
| Angeletti | L | L | L | L | L | H | L | H | L | Mod |
| Astete | L | L | L | L | L | H | L | L | L | Mod |
| Cordell | L | L | L | L | L | H | L | H | L | Mod |
| Dutch | L | L | L | L | H | H | L | L | L | Mod |
| Fialho | L | L | L | L | L | H | L | H | L | Mod |
| Hoppe | L | L | L | L | H | H | L | H | L | High |
| Kaoa | L | L | L | L | L | L | L | L | L | Low |
| Friedmana | L | L | L | L | L | L | L | L | L | Low |
| Niskaa | L | L | L | L | L | H | L | L | L | Mod |
| Lovegrove | L | L | L | L | L | L | L | L | L | Low |
| Mapoure | L | L | L | L | L | H | L | H | L | Mod |
| Marinos | L | L | L | L | H | H | L | L | L | Mod |
| NHAMCS | L | L | L | L | L | H | L | L | L | Mod |
| Owens | L | L | L | L | L | L | L | L | L | Low |
| Philips | L | L | L | L | H | H | L | L | L | Mod |
| Ross | L | L | L | L | H | H | L | L | L | Mod |
| Silman | L | H | H | L | L | H | L | H | L | High |
| Tcherny-Lessenot | H | H | H | L | H | H | L | H | L | High |
| Thiruga-nasamban-damoorthy | L | L | L | L | L | L | L | H | L | Mod |
| Waterman | L | L | L | L | L | L | L | L | L | Low |
| Yan | L | L | L | L | H | H | L | H | L | High |
a: Indicates studies using the same database
Fig. 2Random effects meta-analyses of prevalence estimates from included studies with standard emergency settings (n = 16)
Subgroup analyses presenting pooled prevalence estimates for various subgroups with and without sensitivity analyses
| Subgroup | Category | Arcsine prevalence, 95% CI | Inter-group heterogeneity | Sensitivity analysis, 95% CI (Arcsine Excluding High ROB), | Inter-group heterogeneity |
|---|---|---|---|---|---|
| Back Pain Definition | Broad | 4.9% (3.1-7.1) |
| 3.9% (1.9-6.4) |
|
| Narrow | 3.6% (3.2-4.0) | 3.6% (3.2-4.1) | |||
| Coding | Complaint | 5.5% (3.5-7.8) |
| 5.0% (2.6-8.2) |
|
| Diagnosis | 3.4% (3.1-3.8) | 3.4% (3.1-3.8) | |||
| Health System | Private | 4.3% (3.4-5.3) |
| 4.1% (3.2-5.2) |
|
| Public | 4.4% (3.4-5.3) | 3.3% (2.6-4.1) | |||
| Emergency Setting | Standard | 4.4% (3.7-5.2) |
| 4.0% (3.2-4.9) |
|
| Non-Standard | 6.1% (0.0-2.3) | 6.1% (0.00-23.2) |
Notes: Back Pain Definition; “Narrow” indicates studies using narrow definitions of low back pain. They used a definition of ‘low back pain’ or ‘non-specific low back pain’, or were limited to pain complaints in the lumbar region, while “Broad” indicates studies using broad definitions of low back pain. They used a general definition of ‘back pain’ to define their prevalence estimate, which may have included some individuals with back pain in regions other than the low back pain (for example, thoracic spine). Coding System; “Complaint” indicates studies using presenting complaints for their definitions of low back pain while “Diagnosis” indicates studies using diagnosis codes for their definition. Health System; “Private” indicates studies conducted in regions with private healthcare funding and “Public” indicates studies conducted in regions with public healthcare funding. Emergency Setting; “Standard” indicates studies provide initial treatment to patients with a broad spectrum of illness and injuries, while “Non-Standard” indicates settings, which provide care for a limited population and/or limited spectrum of illness and injuries
Fig. 3Random effects meta-analyses of prevalence estimates from included studies with standard emergency settings (n = 16). The pooled estimate (red line) is representative of the 16 studies included in each subgroup. Studies are grouped by the approach used to define the definition of low back pain: Meta-analysis 1 – Studies grouped by coding system used for the definition of low back pain, 1a “Complaint” indicates studies using presenting complaints for their definitions of low back pain, 1b “Diagnosis” indicates studies using diagnosis codes for their definition. Meta analysis 2- Studies are grouped by healthcare system funding, 2a “Private” indicates studies conducted in regions with private healthcare funding. 2b “Public” indicates studies conducted in regions with public healthcare funding. Meta analysis 3- Studies are grouped by definition of low back pain, 3a “Narrow” indicates studies using narrow definitions of low back pain. They used a definition of ‘low back pain’ or ‘non-specific low back pain’, or were limited to pain complaints in the lumbar region. 3b “Broad” indicates studies using broad definitions of low back pain. They used a general definition of ‘back pain’ to define their prevalence estimate, which may have included some individuals with back pain in regions other than the low back pain (for example, thoracic spine)
Meta regression analysis
| Covariate | Coefficient | 95% Confidence interval |
| |
|---|---|---|---|---|
| Coding | -0.01989 | -0.04472 | 0.00493 | 0.106 |
| ROB | 0.01032 | -0.02085 | 0.04149 | 0.485 |
| Health System | 0.00309 | -0.02580 | 0.03199 | 0.819 |
Notes: “Coding” includes studies grouped by coding system used for the definition of low back pain. In our analysis 1 was given to studies using diagnosis codes for their definition, while 0 was given to studies using presenting complaints for their definition. “ROB” includes studies grouped by risk of bias. In our analysis 1 was given to studies judged to have a moderate to high risk of bias and 0 was given to studies judged to have a low risk of bias. “Health System” includes studies grouped by healthcare system funding. In our analysis 1 was given to studies conducted in regions with private healthcare funding and 0 was given to studies conducted in regions with public healthcare funding