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http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1
ORIGINAL ARTICLES
Musculoskeletal malignant neoplasms hospitalisation
in Victoria
Timothy Ore∗
Innovation Hub and Health System Improvement, Department of Health and Human Services, Melbourne, Australia
Received: June 16, 2015 Accepted: July 23, 2015 Online Published: July 27, 2015
DOI: 10.5430/jer.v1n1p33 URL: http://dx.doi.org/10.5430/jer.v1n1p33
ABSTRACT
The paper describes factors associated with 2,605 hospital admissions for musculoskeletal malignant neoplasms (MMN) over one
year. The rates per 10,000 population increased significantly (t=5.3, p<.01) with age, with men (4.5 per 10,000 population, 95%
CI 4.1-5.0) at greater risk than women (3.3 per 10,000 population, 95% CI 2.8-3.7). The 30-day readmission rate was 19%, the
third highest of all admission categories. The average length of stay was significantly (t=4.5, p<.01) shorter in the metropolitan
area (8.2 days) than in rural communities (10.8 days). The age-standardised rates varied inversely (r=-0.28) with socioeconomic
status. Communities with high MMN admission rates had high rates of heart failure admissions (r=0.35), alcohol consumption
(r=0.34) and receiving Disability Support Pension (r=0.32). There was a significant (t=13.8, p<.001) monthly variability in
MMN hospitalisation rates. As a leading cause of hospital readmission and disability, the condition requires closer analysis.
Key Words: Malignant neoplasms, Hospital readmission, Socioeconomic disadvantage, Musculoskeletal, Disability
1. INTRODUCTION
In developed countries, musculoskeletal conditions (MSC)
are one of the leading causes of work absence and disability,
representing 10%-20% of primary care consultations.[1,2]
MSC accounts for half of all sickness absences longer than
two weeks in Norway and is the most expensive disease in
Sweden[1]
and the United States.[3]
The direct cost of health
service utilisation from MSC, as a percentage of gross na-
tional product, was 0.7% in the Netherlands, 1.0% in Canada
and 1.2% in the United States.[1]
The purpose of this investigation is to explore the relation-
ship between hospitalisation for musculoskeletal malignant
neoplasms (MMN) and community socioeconomic status
(SES). It is hypothesised that high SES communities have
significantly lower age-adjusted MMN hospitalisation rates.
Also identified are demographic risk factors for MMN.
2. MATERIALS AND METHODS
2.1 The setting
Victoria is Australia’s second largest state, accounting for a
quarter (5.8 million) of its population. The state of Victoria
comprises 79 Local Government Areas (LGA), of which 30
are in the metropolitan area (74.6% of the population) and
49 are non-metropolitan (25.4% of the population).
Data on hospital admissions (the numerator) was taken from
the Victorian Admitted Episodes Dataset (VAED), from 1
July 2013 to 30 June 2014. The VAED, maintained by the De-
partment of Health and Human Services, contains morbidity
data on all admitted patients to Victorian public and private
acute hospitals, rehabilitation centres, extended care facilities
∗Correspondence: Timothy Ore; Email: Timothy.Ore@dhhs.vic.gov.au; Address: Innovation Hub and Health System Improvement, Department of
Health and Human Services, Level 20, 50 Lonsdale Street, Melbourne 3000, Australia.
Published by Sciedu Press 33
http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1
and day procedure centres. Also taken from the VAED were
data on chronic obstructive pulmonary disease and renal fail-
ure. The denominator data was from the Australian Bureau
of Statistics (ABS)’ Estimated Resident Population.
SES was measured using the ABS Index of Relative Socioe-
conomic Disadvantage (IRSED). The index is derived from
attributes including low income, low educational attainment,
high unemployment and jobs in relatively unskilled occupa-
tions. The higher an area’s IRSED, the less disadvantaged
that area is compared with others. A high IRSED indicates
that an area has few families of low income and few people
with little training and in unskilled occupations.
Other data, including prevalence of alcohol, arthritis, obe-
sity and cancer, were taken from the Victorian Population
Health Survey (VPHS) 2011-12 to examine associations
with MMN rates. Established in 1998, the VPHS is an an-
nual survey of Victorians aged 18 years and over on a range
of subjects, including health status, body mass index and
presence of chronic diseases. Information is collected, via
computer-assisted telephone interview, at state, regional and
LGA levels. Data on Disability Support Pension (DSP),
March 2014, was from the Commonwealth Department of
Human Services.
2.2 Statistical analysis
Rates were calculated as the number of MMN admissions per
10,000 population, age-standardised using the direct method
to the 2012 Victorian population. The data was analysed at
the LGA level. The hypothesis was tested by computing Pear-
son product-moment correlation coefficients, with two-tailed
significance tests. The coefficient is a measure of degree of
linear dependence between two variables, but does not indi-
cate causality. T-test was used to assess whether the means
of relevant demographic groups were statistically different
from each other. All statistical analyses were completed in
SPSS, version 20.
3. RESULTS
There were 2,605 MMN admissions, 27.8% to private hospi-
tals and 72.2% to public hospitals. A third of the admissions
had complications and comorbidities. MMN admissions per
10,000 population increased significantly (t=5.3, p<.01) with
age; men were at higher risk (4.5 per 10,000 population, 95%
CI 4.1-5.0) than women (3.3 per 10,000 population, 95% CI
2.8-3.7). The risk differentials were marked in the older age-
groups. The average length of stay was significantly shorter
(t=4.5, p<.01) in the metropolitan area (8.2 days) than in rural
communities (10.8 days). The 30-day readmission rate was
19%, the third highest of all admission categories. Twelve
percent of the patients (323) died in hospital.
The MMN age-adjusted rates per 10,000 population varied
inversely (r=-0.28) with SES (see Figure 1). This shows that,
in Victoria, people living in socioeconomically disadvan-
taged areas have significantly higher MMN hospitalisations.
Table 1 presents the inter-correlation coefficients for sev-
eral variables. Communities with high MMN hospitalisation
rates had high rates of multiple conditions, including age-
adjusted heart failure admissions (r=0.35), alcohol consump-
tion (r=0.34), overweight and obesity (r=0.23) and receiving
DSP (r=0.32).
Figure 1. Association between musculoskeletal malignant
neoplasms hospitalisation rates and socioeconomic status by
Local Government Area
There was a statistically significant (t=13.8, p<.001) monthly
variability in MMN hospitalisation rates. The highest rate
occurred in the month of January and the lowest in June.
4. DISCUSSION
This analysis shows a significant negative correlation be-
tween community socioeconomic status and hospitalisation
for musculoskeletal malignant neoplasms. The findings are
broadly consistent with other studies. In what was proba-
bly the earliest investigation of the potential role of SES in
osteoarthritis, Hannan et al.[4]
found that low educational at-
tainment correlated with reporting more knee pain and arthri-
tis. More recently, the Johnston County Osteoarthritis Project
studies have strengthened this link. The Johnston County
Project is an ongoing, longitudinal, population-based study
of knee and hip osteoarthritis that includes both rural and ur-
ban communities in North Carolina.[5]
Callahan et al.[6]
have
shown that both low levels of education and living in a com-
munity with a household poverty rate greater than 25% are
independently associated with the risk for radiographic and
symptomatic knee osteoarthritis. Cleveland et al.[5]
found
34 ISSN 2377-9306 E-ISSN 2377-9330
http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1
that individuals with knee osteoarthritis who are at the high-
est risk of developing disability and pain have lower SES.
Persons working in non-managerial occupations are more
likely to have worse pain scores on the Western Ontario and
McMaster Universities Index of Osteoarthritis compared to
individuals in managerial positions.[5]
Among adults with
knee and/or hip osteoarthritis, individual SES characteristics,
including education level,[7]
occupation type[8]
and social
class[9]
are related to physical function and disability.
A combination of factors may explain the interaction be-
tween lower SES and elevated risk for MMN hospitalisation.
As noted by Martin et al.,[10]
communities with high poverty
rates often have limited resources, including fewer clinics,
public transportation options, community centres and safe
places to exercise, all of which can improve health outcomes
in individuals with osteoarthritis.
Occupations requiring strenuous physical movement, such
as kneeling or heavy lifting, are associated with increased
risk for knee or hip osteoarthritis.[11,12]
As Table 1 shows,
the proportion of the population undertaking mostly heavy
labour or physically demanding activity correlated signifi-
cantly (r=0.51), at the 1 per cent level, with MMN hospitali-
sation rates. Obesity is a risk factor for osteoarthritis of the
hand, knee and hip, and Table 1 also indicates its influence
on MMN (r=0.23).
Table 1. Inter-correlation coefficients for age-standardised musculoskeletal malignant neoplasms hospitalisation rates and
key variables
SES MUS HFR ALC COD FRV SUG OCA HYP OBE REN CAN DSP ART OST
SES 1.00
MUS -0.28* 1.00
HFR -0.36** 0.35** 1.00
ALC -0.07 0.34** 0.18 1.00
COD -0.54** 0.56** 0.57** 0.39** 1.00
FRV -0.44** 0.24* 0.04 0.07 .26* 1.00
SUG -0.57** 0.33** 0.30** 0.14 0.55** 0.50** 1.00
OCA -0.51** 0.51** 0.36** 0.41** 0.62** 0.33** 0.54** 1.00
HYP -0.54** 0.25* 0.21 0.04 0.45* 0.36** 0.64** 0.47** 1.00
OBE -0.62** 0.23* 0.20 0.01 0.44** 0.59** 0.72** 0.50** 0.69** 1.00
REN -0.39** 0.33** 0.54** 0.20 0.51** 0.08 0.17 0.23* 0.21 0.18 1.00
CAN 0.02 0.27* 0.12 0.24* 0.28* -0.03 0.13 0.21 0.17 0.05 0.21 1.00
DSP -0.89** 0.32** 0.38** 0.20 0.55** 0.52** 0.57** 0.52** 0.504** 0.60** 0.32** 0.07 1.00
ART -0.44** 0.239* 0.19 0.24* 0.37** 0.37** 0.49** 0.54** 0.45** 0.62** 0.12 0.18 0.54** 1.00
OST -0.30** -0.10 0.08 0.25* 0.11 -0.04 0.01 -0.07 0.18 0.21 0.14 -0.06 0.21 0.21 1.00
Note. **Correlation is significant at the 0.01 level (2-tailed); *correlation is significant at the 0.05 level (2-tailed). SES=socioeconomic status; MUS=age-adjusted musculoskeletal malignant neoplasms
admissions per 10,000 population; HRF=age-adjusted heart failure admissions per 10,000 population; ALCO=prevalence (%) of alcohol consumption at risky or high risk level based on National Health
and Medical Research Council guidelines; COD=age-adjusted chronic obstructive pulmonary disease admissions per 10,000 population; FRV= compliance (%) with neither fruit and vegetable
consumption guidelines; SUG=prevalence (%) of sugar-sweetened soft drinks; OCA=proportion of the population undertaking mostly heavy labour or physically demanding activity; HYP=prevalence (%)
of hypertension; OBE=prevalence (%) of overweight and obesity; REN=age-adjusted renal failure admissions per 10,000 population; CAN=prevalence (%) of cancer; DSP=proportion of the population on
Disability Support Pension; ART=prevalence (%) of arthritis; and OST=prevalence (%) of osteoporosis. Data for ALC, FRV, SUG, OCA, HYP, OBE, CAN, ART and OST was taken from Victorian
Population Health Survey 2011-12, Department of Health, Victoria. DSP data was taken from the Commonwealth Department of Human Services.
The findings regarding readmissions are consistent with other
investigations. In the United States, Weeks et al.[1]
found a
13.9% 30-day readmission rate for musculoskeletal system
among older veterans. Among 432 spinal cord injury patients
in a Sydney hospital, MSC were the fourth leading cause of
30-day readmission (8%).[2]
The direct correlation between MMN admissions and DSP
is unsurprising; arthritis is the leading cause of disability.[3]
Doctor-diagnosed arthritis prevalence is estimated[13]
to in-
crease by 40% to nearly 67 million persons by 2030 in the
United States. Three out of four Australians with arthritis
report at least one other chronic condition, including car-
diovascular diseases and obesity. In Australia, arthritis and
other musculoskeletal diseases’ healthcare expenditure was
$5.7 billion (in 2008-09), with half (54%) of this for hos-
pital admitted patient services. In the United States, MSC
accounts for more disability and costs more to the healthcare
system than any other condition.[14]
The United Nations’
Bone and Joint Decade 2000-2010 recognises the need to
address MSC.
The strengths of this study include the use of hospital ad-
missions data and the large number of cases (2,605). Most
investigations exploring the relationship between socioeco-
nomic status and musculoskeletal conditions are based on
self-reported surveys, which may not capture the full severity
of the disease in the population. Admissions data are useful
for identifying variations in access to healthcare, popula-
tions with higher-than-average admission rates and health
outcomes. The paper also shows significant associations
between MNN and several conditions (see Table 1). One lim-
Published by Sciedu Press 35
http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1
itation is that the data does not reflect the general population
as it excludes non-hospitalised cases. Hospital admissions
data measures the episodes of care, and not the frequency of
a given condition in the community. Another limitation is
that using data for one year may not be representative of the
pattern for longer time periods.
5. CONCLUSION
In summary, a strong association exits between community
socioeconomic status and hospitalisation for musculoskeletal
disorders. The healthcare costs of this condition are likely to
increase with population ageing. Further analysis is required
for effective intervention.
REFERENCES
[1] Weeks WB, Lee RE, Wallace AE, et al. Do older rural and urban vet-
erans experience different rates of unplanned readmission to VA and
non-VA Hospitals? The Journal of Rural Health. 2009; 25(1): 62-69.
PMid:19166563. http://dx.doi.org/10.1111/j.1748-0361.
2009.00200.x
[2] Middleton JW, Lim K, Taylor L, et al. Patterns of morbidity and
rehospitalisation following spinal cord injury. Spinal Cord. 2004; 42:
359-367. PMid:15007376. http://dx.doi.org/10.1038/sj.sc
.3101601
[3] Haralson RH, Zuckerman JD. Prevalence, health care expenditures,
and orthopaedic surgery workforce and musculoskeletal conditions.
Journal of the American Medical Association. 2009; 302(14): 1586-
87. PMid:19826031. http://dx.doi.org/10.1001/jama.2009
.1489
[4] Hannan MT, Anderson JJ, Pincus T, et al. Educational attainment and
osteoarthritis: differential associations with radiographic changes
and symptoms reporting. Journal of Clinical Epidemiology. 1992;
45(2): 139-147. http://dx.doi.org/10.1016/0895-4356(92
)90006-9
[5] Cleveland RJ, Luong MN, Knight JB, et al. Independent associa-
tions of socioeconomic factors with disability and pain in adults with
knee osteoarthritis. BMC Musculoskeletal Disorders. 2013; 14(297):
2474-14.
[6] Callahan LF, Cleveland RJ, Shreffler J, et al. Associations of edu-
cational attainment, occupation and community poverty with knee
osteoarthritis in Johnston County (North Carolina) Osteoarthritis
Project. Arthritis Research and Therapy. 2011; 13(5): R169.
[7] Juhakoski R, Tenhonen S, Anttonen T, et al. Factors affecting self-
reported pain and physical function in patients with hip osteoarthritis.
Archives of Physical Medicine and Rehabilitation. 2008; 89(6): 1066-
73. PMid:18503801. http://dx.doi.org/10.1016/j.apmr.20
07.10.036
[8] Knight JB, Callahan LF, Luong MN, et al. The association of disabil-
ity and pain with individual and community socioeconomic status in
people with hip osteoarthritis. Open Rheumatology Journal. 2011;
5: 51-58. PMid:22046207. http://dx.doi.org/10.2174/18743
12901105010051
[9] Peters TJ, Sanders C, Dieppe P, et al. Factors associated with change
in pain and disability over time: a community-based prospective
observational study of hip and knee osteoarthritis. British Journal of
General Practice. 2005; 55(512): 205-11.
[10] Martin KR, Shreffler J, Schoster B, et al. Associations of perceived
neighbourhood environment on health status outcomes in persons
with arthritis. Arthritis Care Research (Hoboken). 2010; 62(11):
1602-11. PMid:20521309. http://dx.doi.org/10.1002/acr.2
0267
[11] Andersen S, Thygesen LC, Davidsen M, et al. Cumulative years
in occupation and the risk of hip or knee osteoarthritis in men
and women: a register-based follow-up study. Occupational and
Environmental Medicine. 2012; 69(5): 325-30. PMid:22241844.
http://dx.doi.org/10.1136/oemed-2011-100033
[12] Allen KD, Chen JC, Callahan LF, et al. Associations of occupational
tasks with knee and hip osteoarthritis: the Johnston County Os-
teoarthritis Project. Journal of Rheumatology. 2010; 37(4): 842-850.
PMid:20156951. http://dx.doi.org/10.3899/jrheum.0903
02
[13] Centres for Disease Control and Prevention. Prevalence of disabili-
ties and associated health conditions among adults – United States,
1999. Morbidity and Mortality Weekly Report. 2001; 50(7): 120-125.
PMid:11393491.
[14] Haralson RHH, Zuckerman JD. Prevalence, health care expenditures,
and orthopaedic surgery workforce and musculoskeletal conditions.
Journal of the American Medical Association. 2009; 302(14): 1586-
1587. PMid:19826031. http://dx.doi.org/10.1001/jama.20
09.1489
36 ISSN 2377-9306 E-ISSN 2377-9330

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7208-24423-1-PB.JER1

  • 1. http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1 ORIGINAL ARTICLES Musculoskeletal malignant neoplasms hospitalisation in Victoria Timothy Ore∗ Innovation Hub and Health System Improvement, Department of Health and Human Services, Melbourne, Australia Received: June 16, 2015 Accepted: July 23, 2015 Online Published: July 27, 2015 DOI: 10.5430/jer.v1n1p33 URL: http://dx.doi.org/10.5430/jer.v1n1p33 ABSTRACT The paper describes factors associated with 2,605 hospital admissions for musculoskeletal malignant neoplasms (MMN) over one year. The rates per 10,000 population increased significantly (t=5.3, p<.01) with age, with men (4.5 per 10,000 population, 95% CI 4.1-5.0) at greater risk than women (3.3 per 10,000 population, 95% CI 2.8-3.7). The 30-day readmission rate was 19%, the third highest of all admission categories. The average length of stay was significantly (t=4.5, p<.01) shorter in the metropolitan area (8.2 days) than in rural communities (10.8 days). The age-standardised rates varied inversely (r=-0.28) with socioeconomic status. Communities with high MMN admission rates had high rates of heart failure admissions (r=0.35), alcohol consumption (r=0.34) and receiving Disability Support Pension (r=0.32). There was a significant (t=13.8, p<.001) monthly variability in MMN hospitalisation rates. As a leading cause of hospital readmission and disability, the condition requires closer analysis. Key Words: Malignant neoplasms, Hospital readmission, Socioeconomic disadvantage, Musculoskeletal, Disability 1. INTRODUCTION In developed countries, musculoskeletal conditions (MSC) are one of the leading causes of work absence and disability, representing 10%-20% of primary care consultations.[1,2] MSC accounts for half of all sickness absences longer than two weeks in Norway and is the most expensive disease in Sweden[1] and the United States.[3] The direct cost of health service utilisation from MSC, as a percentage of gross na- tional product, was 0.7% in the Netherlands, 1.0% in Canada and 1.2% in the United States.[1] The purpose of this investigation is to explore the relation- ship between hospitalisation for musculoskeletal malignant neoplasms (MMN) and community socioeconomic status (SES). It is hypothesised that high SES communities have significantly lower age-adjusted MMN hospitalisation rates. Also identified are demographic risk factors for MMN. 2. MATERIALS AND METHODS 2.1 The setting Victoria is Australia’s second largest state, accounting for a quarter (5.8 million) of its population. The state of Victoria comprises 79 Local Government Areas (LGA), of which 30 are in the metropolitan area (74.6% of the population) and 49 are non-metropolitan (25.4% of the population). Data on hospital admissions (the numerator) was taken from the Victorian Admitted Episodes Dataset (VAED), from 1 July 2013 to 30 June 2014. The VAED, maintained by the De- partment of Health and Human Services, contains morbidity data on all admitted patients to Victorian public and private acute hospitals, rehabilitation centres, extended care facilities ∗Correspondence: Timothy Ore; Email: Timothy.Ore@dhhs.vic.gov.au; Address: Innovation Hub and Health System Improvement, Department of Health and Human Services, Level 20, 50 Lonsdale Street, Melbourne 3000, Australia. Published by Sciedu Press 33
  • 2. http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1 and day procedure centres. Also taken from the VAED were data on chronic obstructive pulmonary disease and renal fail- ure. The denominator data was from the Australian Bureau of Statistics (ABS)’ Estimated Resident Population. SES was measured using the ABS Index of Relative Socioe- conomic Disadvantage (IRSED). The index is derived from attributes including low income, low educational attainment, high unemployment and jobs in relatively unskilled occupa- tions. The higher an area’s IRSED, the less disadvantaged that area is compared with others. A high IRSED indicates that an area has few families of low income and few people with little training and in unskilled occupations. Other data, including prevalence of alcohol, arthritis, obe- sity and cancer, were taken from the Victorian Population Health Survey (VPHS) 2011-12 to examine associations with MMN rates. Established in 1998, the VPHS is an an- nual survey of Victorians aged 18 years and over on a range of subjects, including health status, body mass index and presence of chronic diseases. Information is collected, via computer-assisted telephone interview, at state, regional and LGA levels. Data on Disability Support Pension (DSP), March 2014, was from the Commonwealth Department of Human Services. 2.2 Statistical analysis Rates were calculated as the number of MMN admissions per 10,000 population, age-standardised using the direct method to the 2012 Victorian population. The data was analysed at the LGA level. The hypothesis was tested by computing Pear- son product-moment correlation coefficients, with two-tailed significance tests. The coefficient is a measure of degree of linear dependence between two variables, but does not indi- cate causality. T-test was used to assess whether the means of relevant demographic groups were statistically different from each other. All statistical analyses were completed in SPSS, version 20. 3. RESULTS There were 2,605 MMN admissions, 27.8% to private hospi- tals and 72.2% to public hospitals. A third of the admissions had complications and comorbidities. MMN admissions per 10,000 population increased significantly (t=5.3, p<.01) with age; men were at higher risk (4.5 per 10,000 population, 95% CI 4.1-5.0) than women (3.3 per 10,000 population, 95% CI 2.8-3.7). The risk differentials were marked in the older age- groups. The average length of stay was significantly shorter (t=4.5, p<.01) in the metropolitan area (8.2 days) than in rural communities (10.8 days). The 30-day readmission rate was 19%, the third highest of all admission categories. Twelve percent of the patients (323) died in hospital. The MMN age-adjusted rates per 10,000 population varied inversely (r=-0.28) with SES (see Figure 1). This shows that, in Victoria, people living in socioeconomically disadvan- taged areas have significantly higher MMN hospitalisations. Table 1 presents the inter-correlation coefficients for sev- eral variables. Communities with high MMN hospitalisation rates had high rates of multiple conditions, including age- adjusted heart failure admissions (r=0.35), alcohol consump- tion (r=0.34), overweight and obesity (r=0.23) and receiving DSP (r=0.32). Figure 1. Association between musculoskeletal malignant neoplasms hospitalisation rates and socioeconomic status by Local Government Area There was a statistically significant (t=13.8, p<.001) monthly variability in MMN hospitalisation rates. The highest rate occurred in the month of January and the lowest in June. 4. DISCUSSION This analysis shows a significant negative correlation be- tween community socioeconomic status and hospitalisation for musculoskeletal malignant neoplasms. The findings are broadly consistent with other studies. In what was proba- bly the earliest investigation of the potential role of SES in osteoarthritis, Hannan et al.[4] found that low educational at- tainment correlated with reporting more knee pain and arthri- tis. More recently, the Johnston County Osteoarthritis Project studies have strengthened this link. The Johnston County Project is an ongoing, longitudinal, population-based study of knee and hip osteoarthritis that includes both rural and ur- ban communities in North Carolina.[5] Callahan et al.[6] have shown that both low levels of education and living in a com- munity with a household poverty rate greater than 25% are independently associated with the risk for radiographic and symptomatic knee osteoarthritis. Cleveland et al.[5] found 34 ISSN 2377-9306 E-ISSN 2377-9330
  • 3. http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1 that individuals with knee osteoarthritis who are at the high- est risk of developing disability and pain have lower SES. Persons working in non-managerial occupations are more likely to have worse pain scores on the Western Ontario and McMaster Universities Index of Osteoarthritis compared to individuals in managerial positions.[5] Among adults with knee and/or hip osteoarthritis, individual SES characteristics, including education level,[7] occupation type[8] and social class[9] are related to physical function and disability. A combination of factors may explain the interaction be- tween lower SES and elevated risk for MMN hospitalisation. As noted by Martin et al.,[10] communities with high poverty rates often have limited resources, including fewer clinics, public transportation options, community centres and safe places to exercise, all of which can improve health outcomes in individuals with osteoarthritis. Occupations requiring strenuous physical movement, such as kneeling or heavy lifting, are associated with increased risk for knee or hip osteoarthritis.[11,12] As Table 1 shows, the proportion of the population undertaking mostly heavy labour or physically demanding activity correlated signifi- cantly (r=0.51), at the 1 per cent level, with MMN hospitali- sation rates. Obesity is a risk factor for osteoarthritis of the hand, knee and hip, and Table 1 also indicates its influence on MMN (r=0.23). Table 1. Inter-correlation coefficients for age-standardised musculoskeletal malignant neoplasms hospitalisation rates and key variables SES MUS HFR ALC COD FRV SUG OCA HYP OBE REN CAN DSP ART OST SES 1.00 MUS -0.28* 1.00 HFR -0.36** 0.35** 1.00 ALC -0.07 0.34** 0.18 1.00 COD -0.54** 0.56** 0.57** 0.39** 1.00 FRV -0.44** 0.24* 0.04 0.07 .26* 1.00 SUG -0.57** 0.33** 0.30** 0.14 0.55** 0.50** 1.00 OCA -0.51** 0.51** 0.36** 0.41** 0.62** 0.33** 0.54** 1.00 HYP -0.54** 0.25* 0.21 0.04 0.45* 0.36** 0.64** 0.47** 1.00 OBE -0.62** 0.23* 0.20 0.01 0.44** 0.59** 0.72** 0.50** 0.69** 1.00 REN -0.39** 0.33** 0.54** 0.20 0.51** 0.08 0.17 0.23* 0.21 0.18 1.00 CAN 0.02 0.27* 0.12 0.24* 0.28* -0.03 0.13 0.21 0.17 0.05 0.21 1.00 DSP -0.89** 0.32** 0.38** 0.20 0.55** 0.52** 0.57** 0.52** 0.504** 0.60** 0.32** 0.07 1.00 ART -0.44** 0.239* 0.19 0.24* 0.37** 0.37** 0.49** 0.54** 0.45** 0.62** 0.12 0.18 0.54** 1.00 OST -0.30** -0.10 0.08 0.25* 0.11 -0.04 0.01 -0.07 0.18 0.21 0.14 -0.06 0.21 0.21 1.00 Note. **Correlation is significant at the 0.01 level (2-tailed); *correlation is significant at the 0.05 level (2-tailed). SES=socioeconomic status; MUS=age-adjusted musculoskeletal malignant neoplasms admissions per 10,000 population; HRF=age-adjusted heart failure admissions per 10,000 population; ALCO=prevalence (%) of alcohol consumption at risky or high risk level based on National Health and Medical Research Council guidelines; COD=age-adjusted chronic obstructive pulmonary disease admissions per 10,000 population; FRV= compliance (%) with neither fruit and vegetable consumption guidelines; SUG=prevalence (%) of sugar-sweetened soft drinks; OCA=proportion of the population undertaking mostly heavy labour or physically demanding activity; HYP=prevalence (%) of hypertension; OBE=prevalence (%) of overweight and obesity; REN=age-adjusted renal failure admissions per 10,000 population; CAN=prevalence (%) of cancer; DSP=proportion of the population on Disability Support Pension; ART=prevalence (%) of arthritis; and OST=prevalence (%) of osteoporosis. Data for ALC, FRV, SUG, OCA, HYP, OBE, CAN, ART and OST was taken from Victorian Population Health Survey 2011-12, Department of Health, Victoria. DSP data was taken from the Commonwealth Department of Human Services. The findings regarding readmissions are consistent with other investigations. In the United States, Weeks et al.[1] found a 13.9% 30-day readmission rate for musculoskeletal system among older veterans. Among 432 spinal cord injury patients in a Sydney hospital, MSC were the fourth leading cause of 30-day readmission (8%).[2] The direct correlation between MMN admissions and DSP is unsurprising; arthritis is the leading cause of disability.[3] Doctor-diagnosed arthritis prevalence is estimated[13] to in- crease by 40% to nearly 67 million persons by 2030 in the United States. Three out of four Australians with arthritis report at least one other chronic condition, including car- diovascular diseases and obesity. In Australia, arthritis and other musculoskeletal diseases’ healthcare expenditure was $5.7 billion (in 2008-09), with half (54%) of this for hos- pital admitted patient services. In the United States, MSC accounts for more disability and costs more to the healthcare system than any other condition.[14] The United Nations’ Bone and Joint Decade 2000-2010 recognises the need to address MSC. The strengths of this study include the use of hospital ad- missions data and the large number of cases (2,605). Most investigations exploring the relationship between socioeco- nomic status and musculoskeletal conditions are based on self-reported surveys, which may not capture the full severity of the disease in the population. Admissions data are useful for identifying variations in access to healthcare, popula- tions with higher-than-average admission rates and health outcomes. The paper also shows significant associations between MNN and several conditions (see Table 1). One lim- Published by Sciedu Press 35
  • 4. http://jer.sciedupress.com Journal of Epidemiological Research 2015, Vol. 1, No. 1 itation is that the data does not reflect the general population as it excludes non-hospitalised cases. Hospital admissions data measures the episodes of care, and not the frequency of a given condition in the community. Another limitation is that using data for one year may not be representative of the pattern for longer time periods. 5. CONCLUSION In summary, a strong association exits between community socioeconomic status and hospitalisation for musculoskeletal disorders. The healthcare costs of this condition are likely to increase with population ageing. Further analysis is required for effective intervention. REFERENCES [1] Weeks WB, Lee RE, Wallace AE, et al. Do older rural and urban vet- erans experience different rates of unplanned readmission to VA and non-VA Hospitals? The Journal of Rural Health. 2009; 25(1): 62-69. PMid:19166563. http://dx.doi.org/10.1111/j.1748-0361. 2009.00200.x [2] Middleton JW, Lim K, Taylor L, et al. Patterns of morbidity and rehospitalisation following spinal cord injury. Spinal Cord. 2004; 42: 359-367. PMid:15007376. http://dx.doi.org/10.1038/sj.sc .3101601 [3] Haralson RH, Zuckerman JD. Prevalence, health care expenditures, and orthopaedic surgery workforce and musculoskeletal conditions. Journal of the American Medical Association. 2009; 302(14): 1586- 87. PMid:19826031. http://dx.doi.org/10.1001/jama.2009 .1489 [4] Hannan MT, Anderson JJ, Pincus T, et al. Educational attainment and osteoarthritis: differential associations with radiographic changes and symptoms reporting. Journal of Clinical Epidemiology. 1992; 45(2): 139-147. http://dx.doi.org/10.1016/0895-4356(92 )90006-9 [5] Cleveland RJ, Luong MN, Knight JB, et al. Independent associa- tions of socioeconomic factors with disability and pain in adults with knee osteoarthritis. BMC Musculoskeletal Disorders. 2013; 14(297): 2474-14. [6] Callahan LF, Cleveland RJ, Shreffler J, et al. Associations of edu- cational attainment, occupation and community poverty with knee osteoarthritis in Johnston County (North Carolina) Osteoarthritis Project. Arthritis Research and Therapy. 2011; 13(5): R169. [7] Juhakoski R, Tenhonen S, Anttonen T, et al. Factors affecting self- reported pain and physical function in patients with hip osteoarthritis. Archives of Physical Medicine and Rehabilitation. 2008; 89(6): 1066- 73. PMid:18503801. http://dx.doi.org/10.1016/j.apmr.20 07.10.036 [8] Knight JB, Callahan LF, Luong MN, et al. The association of disabil- ity and pain with individual and community socioeconomic status in people with hip osteoarthritis. Open Rheumatology Journal. 2011; 5: 51-58. PMid:22046207. http://dx.doi.org/10.2174/18743 12901105010051 [9] Peters TJ, Sanders C, Dieppe P, et al. Factors associated with change in pain and disability over time: a community-based prospective observational study of hip and knee osteoarthritis. British Journal of General Practice. 2005; 55(512): 205-11. [10] Martin KR, Shreffler J, Schoster B, et al. Associations of perceived neighbourhood environment on health status outcomes in persons with arthritis. Arthritis Care Research (Hoboken). 2010; 62(11): 1602-11. PMid:20521309. http://dx.doi.org/10.1002/acr.2 0267 [11] Andersen S, Thygesen LC, Davidsen M, et al. Cumulative years in occupation and the risk of hip or knee osteoarthritis in men and women: a register-based follow-up study. Occupational and Environmental Medicine. 2012; 69(5): 325-30. PMid:22241844. http://dx.doi.org/10.1136/oemed-2011-100033 [12] Allen KD, Chen JC, Callahan LF, et al. Associations of occupational tasks with knee and hip osteoarthritis: the Johnston County Os- teoarthritis Project. Journal of Rheumatology. 2010; 37(4): 842-850. PMid:20156951. http://dx.doi.org/10.3899/jrheum.0903 02 [13] Centres for Disease Control and Prevention. Prevalence of disabili- ties and associated health conditions among adults – United States, 1999. Morbidity and Mortality Weekly Report. 2001; 50(7): 120-125. PMid:11393491. [14] Haralson RHH, Zuckerman JD. Prevalence, health care expenditures, and orthopaedic surgery workforce and musculoskeletal conditions. Journal of the American Medical Association. 2009; 302(14): 1586- 1587. PMid:19826031. http://dx.doi.org/10.1001/jama.20 09.1489 36 ISSN 2377-9306 E-ISSN 2377-9330