| Literature DB >> 32810918 |
Leonard Joseph1, Miles Standen1, Aatit Paungmali2, Raija Kuisma3, Patraporn Sitilertpisan2, Ubon Pirunsan2.
Abstract
OBJECTIVES: Professional drivers are at high risk of developing musculoskeletal pain (MSP) due to risk factors such as prolonged sitting, whole body vibration, awkward posture, and repetitive actions. This review investigates the reported prevalence of MSP among professional drivers.Entities:
Keywords: musculoskeletal pain; occupational health; prevalence; professional drivers; rehabilitation
Mesh:
Year: 2020 PMID: 32810918 PMCID: PMC7434558 DOI: 10.1002/1348-9585.12150
Source DB: PubMed Journal: J Occup Health ISSN: 1341-9145 Impact factor: 2.708
FIGURE 1Flowchart of study selection process
Characteristics of the included studies
| Author (year) | Country | Study design | N | Vehicle | Mean age (y) | Aim of study |
|---|---|---|---|---|---|---|
| Abledu, Offei and Abledu (2014a) | Ghana | Cross‐sectional | 148 | Minibus | 33 | Determine prevalence of MSD |
| Abledu, Offei and Abledu (2014b) | Ghana | Cross‐sectional | 210 | Taxi | 32.1 | Determine prevalence and predictors of MSD |
| Akinpelu et al (2011) | Nigeria | Cross‐sectional | 159 | Various | 40.4 | Determine prevalence, distribution, illness perceptions and health seeking behavior |
| Alperovitch‐Najenson et al (2010a) | Israel | Cross‐sectional | 361 | Bus | 46 | Evaluate prevalence and association between risk factors and neck pain |
| Alperovitch‐Najenson et al (2010b) | Israel | Cross‐sectional | 361 | Bus | 46 | Evaluate prevalence and association between risk factors and LBP |
| Aminian et al (2016) | Iran | Cross‐sectional | 734 | Truck and Taxi | 41 | Evaluate prevalence of MSDs and compare between truck and taxi |
| Anderson (1992) | USA | Case‐control | 128 | Bus | NR | Examine the extent of spinal problems and compare to non‐ driving control |
| Andrusaitis, Oliveira and Barros Filho (2006) | Brazil | Cross‐sectional | 410 | Truck | 40.1 | Investigate prevalence of LBP and check possible associated risk factors |
| Anjomshoae, Rani (2013) | Malaysia | Cross‐sectional | 131 | Bus | 48.3 | Assess the MSDs and psychosocial risk factors in Malaysian bus drivers |
| Boshuizen, Bongers, and Hulshof (1990) | Netherlands | Cross‐sectional | 577 | Tractor | NR | Investigate prevalence of back pain in relation to past exposure of WBV |
| Boshuizen, Bongers, and Hulshof (1992) | Netherlands | Cross‐sectional | 196 | Truck | NR | Investigate self‐reported LBP in relation to past exposure of WBV |
| Bovenzi (2009) | Italy | Prospective cohort | 537 | Various | 40 | Investigate relation between measures of daily/cumulative vibration exposure and LBP outcomes |
| Bovenzi (2010) | Italy | Prospective cohort | 202 | Various | 40 | Investigate relation between measures of daily/cumulative vibration exposure and LBP outcomes in LBP free baseline drivers |
| Bovenzi (2015) | Italy | Prospective cohort | 537 | Various | 40 | Investigate the occurrence of neck and shoulder pain in relation to occupational risk factors |
| Bovenzi and Betta (1994) | Italy | Cross‐sectional | 1155 | Tractor | 43 | Investigate the relationship between WBV dose, perceived postural load and low back complaints |
| Bovenzi et al (2006) | Italy | Cross‐sectional | 598 | Various | 40 | Investigate prevalence of LBP and association between LBP, WBV exposure, physical load and psychosocial variables |
| Bovenzi et al (2015) | Italy | Prospective cohort | 537 | Various | 40 | Investigate relation of sciatic pain to measures of WBV exposure and internal spinal load |
| Bovenzi and Zadini (1992) | Italy | Cross‐sectional | 234 | Bus | 42.5 | Investigate the prevalence of several types of back pain in relation to WBV |
| Burdorf, Naaktgeboren and Degroot (1993) | Netherlands | Cross‐sectional | 95 | Straddle‐carrier | 41 | Investigate the prevalence of LBP in three groups of sedentary workers and determine associated risk factors |
| Burgel and Elshatarat (2017) | USA | Cross‐sectional | 129 | Taxi | 45.3 | Identify associations between psychosocial risk factors and LBP in taxi drivers |
| Chen et al (2004) | Taiwan | Cross‐sectional | 1242 | Taxi | 44.5 | Explore the postulated association between daily driving time and knee pain |
| Chen et al (2005) | Taiwan | Cross‐sectional | 1242 | Taxi | 44.5 | Examine LBP in taxi drivers and its association with prolonged driving |
| Feng (2018) | China | Cross‐sectional | 162 | Taxi | 37.6 | Assess the correlations between the severity of musculoskeletal disorders (MSDs) and aberrant driving behaviors |
| Gangopadhyay and Dev (2012) | India | Cross‐sectional | 160 | Bus | 35.8 | Investigate the prevalence of LBP and determine social or professional restrictions |
| Geete et al (2013) | India | Cross‐sectional | 60 | Bus | NR | Investigate prevalence of MSK pain and analyse risk factors associated |
| Greiner and Krause (2006) | USA | Cross‐sectional | 66 | Transit | 47.2 | Determine whether risk factors are associated with prevalence of MSDs |
| Gyi and Porter (1998) | UK | Cross‐sectional | 80 | Police Car | 37.7 | Investigate the prevalence of MSK trouble in police car drivers and non‐drivers |
| Jadhav (2016a) | India | Cross‐sectional | 178 | Bus | NR | Compare the prevalence of chronic LPB and find association with occupational risk factors |
| Kaila‐Kangas et al (2011) | Finland | Cross‐sectional | 2323 | Various | NR | Investigate whether driving exposure is associated with clinically defined sciatica or other low back syndromes |
| Kim et al (2016) | USA | Cross‐sectional | 96 | Truck | NR | Characterize WBV exposures in truck driving and determine association between WBV exposures and MSK outcomes |
| Krause et al (1998) | USA | Prospective cohort | 1854 | Transit | NR | Investigate psychosocial risk factors as predictors of work‐related spinal injuries, controlling for physical workload |
| Krause et al (1997) | USA | Cross‐sectional | 1449 | Transit | 42.4 | Examine the relation between physical workload, ergonomic factors and prevalence of back and neck pain |
| Laal et al (2017) | Iran | Cross‐sectional | 60 | Bus | 40 | Examine prevalence and severity of MSDs as well as anthropometric dimensions |
| Lalit, Soni and Garg (2015) | Poland | Cross‐sectional | 300 | Bus | 42.6 | Investigate the prevalence and characteristics of WRMDs in city bus drivers |
| Magnusson et al (1996) | USA | Case‐control | 228 | Bus and Truck | 41 | Establish the effect of mechanical and psychosocial factors in reporting back, neck and shoulder pain and work loss |
| Mansfield and Marshall (2001) | UK | Cross‐sectional | 90 | Racing car | 34 | Investigate the prevalence of MSKSs after race |
| Miyamoto et al (2008) | Japan | Cross‐sectional | 1334 | Taxi | 51.5 | Investigate the prevalence of low back symptoms and associated risk factors |
| Miyamoto et al (2000) | Japan | Cross‐sectional | 153 | Truck | 41 | Determine the actual situation of drivers' LBP from the perspective of their working conditions |
| Mozafari et al (2015) | Iran | Case‐control | 346 | Truck | 37 | Determine the prevalence of MSDs and associated risk factors |
| Nazerian (2018) | Turkey | Cross sectional | 384 | Crane | 48 | Assess the association of musculoskeletal discomfort with psychosocial and physiological factors |
| Okunribido, Magnusson and Pope (2006) | UK | Cross‐sectional | 64 | Delivery van | 47 | Investigate exposures of posture demands, manual handling and WBV as well as prevalence and nature of LBP |
| Okunribido, Magnusson and Pope (2008) | UK | Cross‐sectional | 418 | Various | 47 | Investigate prevalence and nature of LBP and determine relative importance of each risk factor associated |
| Okunribido, et al (2007) | UK | Cross‐sectional | 61 | Bus | 46 | Investigate exposures of posture demands, manual handling and WBV as well as prevalence and nature of LBP |
| Porter and Gyi (2002) | UK | Cross‐sectional | 113 | Car | 39.3 | Investigate the prevalence of MSK troubles and exposure to driving |
| Raanaas and Anderson (2008) | Norway | Cross‐sectional | 823 | Taxi | 43 | Determine prevalence of MSK pain and identify occupational risk factors associated with neck, shoulder or low back pain |
| Robb and Mansfield (2007) | UK | Cross‐sectional | 192 | Truck | 45.8 | Identify the prevalence of MSK problems and assess links between risk factors and back pain |
| Rufa'I et al (2015) | Nigeria | Cross‐sectional | 200 | Car and minibus | 42.4 | Determine prevalence of LBP and identify associated risk factors and economic impact |
| Rugbeer, Neveling and Sandla (2016) | South Africa | Cross‐sectional | 89 | Bus | 45 | Determine the prevalence of WRMDs in long‐distance bus drivers |
| Sang, Gyi and Haslam (2010) | UK | Cross‐sectional | 140 | Car | 38.2 | Assess prevalence or MSKSs and associated risk factors among pharmaceutical sales representatives |
| Szeto and Lam (2007) | Hong Kong | Cross‐sectional | 481 | Bus | 47 | Investigate prevalence and characteristics of occupational MSDs in male and female bus drivers |
| Sekkay et al (2018) | Canada | Cross‐sectional | 123 | Truck | 49 | Document the prevalence of self‐reported MS pain in different body areas |
| Senthanar et al (2018) | Canada | Cross‐sectional | 107 | Truck | 45 | Assess the prevalence of musculoskeletal pain and discomfort in Canadian truck drivers |
| Tamrin et al (2007) | Malaysia | Cross‐sectional | 760 | Bus | 43 | Determine the prevalence of MSDs including LBP and revealing their physical and psychological risk factors |
| Tamrin et al (2014) | Malaysia | Cross‐sectional | 1180 | Bus | NR | Determining the prevalence of MSDs and risk factors that may contribute to MSD problems |
| Wang et al (2017) | China | Cross‐sectional | 719 | Taxi | 40 | Investigate the prevalence of LBP and associated work‐related risk factors among Chinese Taxi drivers |
| Yasobant et al (2015) | India | Cross‐sectional | 280 | Bus | 34 | Assess the personal and ergonomic risk of developing work‐related MSDs among bus drivers |
Abbreviations: N, participant sample number; NR, not reported.
Methodological quality scores of cross sectional studies
| Author (year) | External validity | Internal validity | Quality | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | ||
| Abledu et al (2014a) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Abledu et al (2014b) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Akinpelu et al (2011) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Alperovitch‐Najenson et al (2010a) | N | N | Y | N | Y | N | Y | Y | Y | Y | (6) Med |
| Alperovitch‐Najenson et al (2010b) | N | N | Y | N | Y | N | Y | Y | Y | Y | (6) Med |
| Aminian et al (2016) | N | N | N | Y | Y | N | Y | Y | Y | Y | (6) Med |
| Andrusaitis et al (2016) | N | N | N | N | Y | Y | N | Y | Y | Y | (5) Med |
| Anjomshoae et al (2013) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Boshuizen et al (1990) | N | N | N | N | Y | Y | N | Y | Y | Y | (5) Med |
| Boshuizen et al (1992) | N | N | N | N | Y | Y | N | Y | Y | Y | (5) Med |
| Bovenzi et al (2006) | Y | Y | Y | N | Y | Y | Y | Y | Y | Y | (9) High |
| Bovenzi and Betta (1994) | N | N | N | N | Y | N | N | N | Y | Y | (3) Low |
| Bovenzi and Zadini (1992) | N | N | N | Y | Y | N | Y | N | Y | Y | (5) Med |
| Burdorf, et al (1993) | N | N | N | N | Y | Y | Y | Y | Y | Y | (6) Med |
| Burgel et al (2017) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Chen et al (2004) | N | N | N | Y | Y | N | Y | Y | Y | Y | (6) Med |
| Chen et al (2005) | N | N | N | Y | Y | N | Y | Y | Y | Y | (6) Med |
|
Feng (2018) | Y | Y | N | N | Y | Y | Y | Y | Y | Y | (8) High |
| Gangopadhyay and Dev (2012) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Geete et al (2013) | N | N | N | N | Y | N | N | Y | N | Y | (3) Low |
| Greiner and Krause (2006) | N | Y | Y | Y | Y | Y | N | Y | Y | Y | (8) High |
| Gyi and Porter (1998) | N | N | Y | N | Y | N | Y | Y | Y | Y | (6) Med |
| Jadhav (2016) | N | N | N | N | Y | N | N | Y | N | Y | (3) Low |
| Kaila‐Kangas et al (2011) | Y | Y | N | Y | Y | Y | Y | Y | N | Y | (8) High |
| Kim et al (2016) | N | Y | Y | N | Y | N | Y | N | N | Y | (5) Med |
| Krause et al (1997) | N | N | N | Y | Y | Y | N | Y | N | Y | (5) Med |
| Laal et al (2017) | N | N | Y | N | Y | Y | N | Y | Y | Y | (6) Med |
| Lalit et al (2015) | N | N | N | N | Y | N | Y | Y | N | Y | (4) Low |
| Mansfield and Marshall (2001) | N | N | N | N | Y | Y | Y | N | Y | Y | (5) Med |
| Miyamoto et al (2008) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Miyamoto et al (2000) | N | N | N | N | Y | N | N | Y | Y | Y | (4) Low |
| Nazerian (2018) | Y | Y | N | Y | Y | Y | Y | Y | Y | N | (8) High |
| Okunribido et al (2006) | N | N | Y | N | Y | N | Y | N | Y | Y | (5) Med |
| Okunribido et al (2008) | N | N | Y | N | Y | N | Y | N | Y | Y | (5) Med |
| Okunribido et al (2007) | N | N | Y | N | Y | N | Y | N | Y | Y | (5) Med |
| Porter and Gyi (2002) | Y | Y | Y | N | Y | N | Y | Y | Y | Y | (8) High |
| Raanaas and Anderson (2008) | Y | Y | N | N | Y | N | Y | Y | Y | Y | (7) High |
| Robb and Mansfield (2007) | N | Y | Y | N | Y | N | Y | Y | Y | Y | (7) High |
| Rufa'i et al (2015) | N | N | N | N | Y | N | Y | Y | Y | N | (4) Low |
| Rugbeer et al (2016) | N | N | N | N | Y | N | Y | Y | Y | Y | (5) Med |
| Sang et al (2010) | N | N | Y | N | Y | N | Y | Y | Y | Y | (6) Med |
| Sekkay et al (2018) | Y | N | N | Y | Y | Y | Y | Y | Y | Y | (8) High |
| Senthanar et al (2018) | Y | Y | N | N | Y | Y | Y | N | Y | Y | (7) High |
| Szeto and Lam (2007) | N | Y | N | N | Y | N | Y | Y | Y | Y | (6) Med |
| Tamrin et al (2007) | N | Y | N | N | Y | N | Y | Y | Y | Y | (6) Med |
| Tamrin et al (2014) | N | Y | Y | N | Y | N | Y | Y | Y | Y | (7) High |
| Wang et al (2017) | N | Y | Y | N | Y | N | Y | Y | Y | Y | (7) High |
| Yasobant et al (2015) | N | N | Y | N | Y | N | Y | Y | Y | Y | (6) Med |
High, high quality (low risk of bias); Low, low quality (high risk of bias); Med, medium quality (moderate risk of bias); N, no; Y, yes; 1—Was the study's target population a close representation of the national population in relation to relevant variables, age, sex, occupation? 2—Was the sampling frame a true or close representation of the target population? 3—Was some form of random selection used to select the sample, OR, was a census undertaken? 4—Was the likelihood of non‐response bias minimal? 5—Were data collected directly from the subjects (as opposed to a proxy)? 6—Was an acceptable case definition used in the study? 7—Was the study instrument that measured the parameter of interest (eg, prevalence of low back pain) shown to have reliability and validity (if necessary)? 8—Was the same mode of data collection used for all subjects? 9—Was the length of the shortest prevalence period for the parameter of interest appropriate? 10—Were the numerator(s) and denominator(s) for the parameter of interest appropriate? (Hoy et al 2012).
Methodological quality scores of case‐control studies
| Author (year) | Overall Items | Quality | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | ||
| Anderson (1992) | Y | Y | Y | Y | N | N | N | Y | Y | (6) Med |
| Magnusson et al (1996) | N | N | N | N | N | N | N | Y | Y | (2) Low |
| Mozafari et al (2015) | Y | N | Y | Y | Y | N | N | Y | N | (5) Med |
Low, low quality (high risk of bias); Med, medium quality (moderate risk of bias); N, no; Y, yes; 1—Case definition. 2—Representation of cases. 3—Selection of controls. 4—Definition of controls. 5—Study controls for important factor. 6—Study controls for an additional factor. 7—Ascertainment of exposure. 8—Same method of ascertainment used for both cases and controls. 9—Non‐response rate.
Methodological quality scores of prospective cohort studies
| Author (year) | Overall Items | Quality | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | ||
| Bovenzi (2009) | Y | Y | Y | N | Y | Y | N | Y | Y | (7) High |
| Bovenzi (2010) | Y | Y | Y | Y | Y | Y | N | Y | N | (7) High |
| Bovenzi (2015) | Y | Y | Y | N | Y | Y | N | Y | Y | (7) High |
| Bovenzi et al (2015) | Y | Y | Y | N | Y | Y | N | Y | Y | (7) High |
| Krause et al (1998) | Y | Y | Y | N | Y | Y | N | Y | Y | (7) High |
High, high quality (low risk of bias); Low, low quality (high risk of bias); Med, medium quality (moderate risk of bias); N, no; Y, yes; 1—Representativeness of the exposed cohort. 2—Selection of the non‐exposed cohort. 3—Ascertainment of exposure. 4—Demonstration that outcome of interest was not present at the start of study. 5—Study controls for important factor. 6—Study controls for an additional factor. 7—Assessment of outcome. 8—Was follow‐up long enough for outcomes to occur? 9—Adequacy of follow‐up cohorts.
Prevalence rates of musculoskeletal disorders among professional drivers
| Author (year) | Vehicle types | Prevalence duration | Overall study quality | Total MSD prevalence | Results of prevalence rates |
|---|---|---|---|---|---|
| Abledu, Offei and Abledu (2014a) | Minibus | 12‐mo | (5) Med | 78.40% | Pain in low back 58.8%, neck 25%, upper back 22.3%, shoulder 18.2%, knee 14.9%, ankle 9.5%, wrist 7.4%, elbow 4.7%, hip/thigh 2.7% |
| Abledu, Offei and Abledu (2014b) | Taxi | 12 mo | (5) Med | 70.50% | Pain in low back 34.3%, upper back 16.7%, neck 15.2% |
| Akinpelu, et al (2011) | Various | 12‐mo | (5) Med | 89.30% |
Shoulder 11%, knee 10%, hip/thigh 2.9%, elbow 4.8%, ankle/feet 2.4%, wrist/hand 1.9% Pain in low back 64.8%, shoulder 30.8%, knee 27.0%, neck |
| Alperovitch‐Najenson et al (2010a, 2010b) | Bus | 12‐mo | (6) Med | NR | 17.0%, upper back 2.6%, Pain in low back 45.4%, neck 21.2%, shoulder 14.7% |
| Aminian et al (2016) | Truck andTaxi | 12‐mo | (6) Med | NR |
Upper back 8.3%, elbow 3.0%, wrist 3.0%. pain in neck 11.5%, upper back 9.6%, low back 19.5%, knees 9.3% Taxi drivers: pain in neck 2.7%, upper back 8.2%, low back 14.4%, knees 1.9% |
| Anderson (1992) | Bus | Point prevalence | (6) Med | 80.50% | Pain in back 66.4%, neck 50.8%. Spine pain 80.5% |
| Andrusaitis et al (2006) | Truck | During work | (5) Med | NR | 59% LBP |
| Anjomshoae et al (2013) | Bus | 12‐mo | (5) Med | NR | Pain in shoulder 79.4%, neck 66.4%. upper back 60.3% |
| Boshuizen et al (1990) | Tractor | 12‐mo | (5) Med | NR | Back 22.9%, ankle/feet 12.2%, wrist/hands 11.5%, knee, 9.9%, thigh/hips 4.6%, elbow 3.1%. Pain in back 38.4%, low back 31.3% |
| Boshuizen et al (1992) | Truck | 12‐mo | (5) Med | NR | 51% LBP |
| Bovenzi (2009, 2010, 2015) | Various | 12‐mo | (7) High | NR |
LBP ‐ 64.4% prevalence, 36.3% incidence, Neck pain ‐ 31.9% incidence, 78.8% prevalence Shoulder pain ‐ 21.4% incidence, 65.3% prevalence |
| Bovenzi and Betta (1994) | Tractor | Lifetime | (3) Low | 86.10% | LBP ‐ 81.3% lifetime; 71.9% 12 mo; 39.2% 1 mo |
| Bovenzi et al (2006) | Various | 12‐mo | (9) High | NR | LBP in vehicle populations: Bus 71.4%; garbage 61.3%; paper mills 62.8%; dockyards 53.3%; marble labs 55.4% |
| Bovenzi et al (2015) | Various | 12‐mo | (7) High | NR |
Marble quarries 58.2% 23.1% sciatic pain |
| Bovenzi and Zadini (1992) | Bus | 12‐mo | (5) Med | NR | 82.9% LBP |
| Burdorf et al (1993) | Straddle‐carrier | 12‐mo | (6) Med | NR | 44% LBP |
| Burgel et al (2017) | Taxi | 12‐mo | (5) Med | NR | 63% LBP |
| Chen et al (2004, 2005) | Taxi | 12‐mo | (6) Med | NR | 51% LBP, 19% knee pain |
| Feng (2018) | Taxi | 12‐mo | (8) High | NR | LBP 58%, NP 56.8%,SP 43.2%, H&TP 29.6%, A&FP 21%, Upper back pain 11%, EP 4.9%, KP 4.9%, W&HP 2.5% |
| Gangopadhyay et al (2012) | Bus | 12‐mo | (5) Med | NR | 73% LBP |
| Geete et al (2013) | Bus | Unclear | (3) Low | 80% | Pain in low back 70%, neck 55%, shoulder 47.5%, |
| Greiner and Krause (2006) | Transit | 12‐mo | (8) High | 49% | Pain in low back 32.3%, neck 18.5%, upper extremity 27.3%, lower extremity 30.8% |
| Gyi and Porter (1998) | Police car | Lifetime | (6) Med | 65% | 29% LBP |
| Jadhav (2016) | Bus | 10‐y | (3) Low | NR | 70.8% LBP |
| Nazerian (2018) | Crane | 12‐mo | (8) High | NR | LBP 57%, NP 55%,SP 87%, Buttock pain 32%, A&FP 26%, Upper back pain 33%, EP 21%, KP 45%, W&HP 34% |
| Kaila‐Kangas et al (2011) | Various | Lifetime | (8) High | NR | 4.0% Chronic LBP |
| Kim et al (2016) | Truck | Unclear | (5) Med | NR | LBP 72.5%. shoulder pain 55.1%, neck pain 50.7% |
| Krause et al (1998) | Transit | 5‐y | (7) High | 77.7% | Spinal injury 76.9% |
| Krause et al (1997) | Transit | Point prevalence | (5) Med | NR | Back and neck pain 14% |
| Laal et al (2017) | Bus | Point prevalence | (6) Med | NR | Severe LBP 33.3%, upper back pain 18.3%, knee pain 15%. |
| Lalit, Soni and Garg (2015) | Bus | NR | (4) Low | 53% | Pain in low back 30.3%, neck 17.3%, knee 14.7%, shoulder6.3%, ankle and feet 5.7%, upper back 4%, hip and thigh4%, elbow 1.3%, wrist and hand 1.3% |
| Magnusson et al (1996) | Bus and Truck | Point prevalence | (2) Low | NR |
Truck drivers pain: Low back 56%, neck 36%, shoulder 37% Bus drivers pain: Low back 60%, neck 45%, shoulder 36% |
| Mansfield et al (2001) | Racing Car | 12‐mo | (5) Med | NR | 70% LBP, 54% cervical spine pain |
| Miyamoto et al (2008) | Taxi | 1 wk | (5) Med | NR | 20.5% LBP |
| Miyamoto et al (2000) | Truck | 1 mo | (4) Low | NR | 50.3% LBP |
| Mozafari et al (2015) | Truck | 12‐mo | (5) Med | 78.6% | 24.3% LBP, neck pain = 27.2% |
| Okunribido et al (2006) | Delivery Van | 12‐mo | (5) Med | NR | 50% LBP |
| Okunribido et al (2008) | Various vehicles | 12‐mo | (5) Med | NR | 55.7% LBP |
| Okunribido et al (2007) | Bus | 12‐mo | (5) Med | NR | 59% LBP |
| Porter and Gyi (2002) | Car | 12‐mo | (8) High | NR | 61% LBP |
| Raanaas et al (2008) | Taxi | 12‐mo | (7) High | NR | Pain in low back 59.5%, shoulder 52.4%, neck 57.8%. |
| Robb et al (2007) | Truck | 12‐mo | (7) High | 81% | Pain in low back 60%, neck 34%, shoulder 39%, knees 36%, wrist/hands 20%, hips 15%, upper back 14%, ankles/feet13%, elbows 9%. |
| Rufa'I et al (2015) | Car and mini bus | 12‐mo | (4) Low | NR | 73.5% LBP |
| Rugbeer et al (2016) | Bus | Unclear | (5) Med | 67% | Pain in upper back 44%, lower back 42%, neck 42%, shoulder 37%, wrist/hand 31% |
| Sang et al (2010) | Car | 12‐mo | (6) Med | 84% | Pain in low back 57%, neck 46% and shoulder 45% |
| Senthanar et al (2018) | Truck | 12‐mo | (7) High | 57% | Shoulder 54%, wrist/hands 44%, upper back 39%, lower back 80%, legs/feet 41% |
| Sekkay et al (2018) | Truck | 12‐mo | (8) High | 43.1% | Neck 14.6%, shoulders 20.3%, upper back 6.5%, arms 8.1%, elbows 5.7%, lower back 21.1%, forearm/wrist/hand 12.2%, hip/thighs 8.9%, ankles/feet 5.7% |
| Szeto and Lam (2007) | Bus | 12‐mo | (6) Med | 93% | Discomfort in low back 61%, neck 52%, shoulder 48%, thigh and knee 36% |
| Tamrin et al (2007) | Bus | 12‐mo | (6) Med | NR | Pain in low back 60.4%, neck 51.6%, shoulder 35.4%, upper back 40.7%, knee 29.3% |
| Tamrin et al (2014) | Bus | 12‐mo | (7) High | 81.8% | Pain in low back 58.5%, neck 51.7%, shoulder 36.1%, elbow 10.2%, arm 17.5%, upper back 39%, hip and thigh 19.9%, knee 27.5%, leg 28.9% |
| Wang et al (2017) | Taxi | 12‐mo | (7) High | NR | 54% LBP |
| Yasobant et al (2015) | Bus | 12‐mo | (6) Med | NR | Pain in neck 26%, back 24%, upper limb 20% |
Abbreviation: LBP, low back pain; NR, not reported.
FIGURE 2Prevalence of musculoskeletal pain (MSP) reported among professional drivers across specific body regions
FIGURE 3Subgroup analysis: Prevalence of musculoskeletal pain (MSP) in (A) upper body region and (B) lower body region reported among professional drivers driving light‐moderate and heavy vehicles