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Erschienen in: Population Health Metrics 1/2011

Open Access 01.12.2011 | Research

Patterns of multimorbidity in working Australians

verfasst von: Libby Holden, Paul A Scuffham, Michael F Hilton, Alexander Muspratt, Shu-Kay Ng, Harvey A Whiteford

Erschienen in: Population Health Metrics | Ausgabe 1/2011

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Abstract

Background

Multimorbidity is becoming more prevalent. Previously-used methods of assessing multimorbidity relied on counting the number of health conditions, often in relation to an index condition (comorbidity), or grouping conditions based on body or organ systems. Recent refinements in statistical approaches have resulted in improved methods to capture patterns of multimorbidity, allowing for the identification of nonrandomly occurring clusters of multimorbid health conditions. This paper aims to identify nonrandom clusters of multimorbidity.

Methods

The Australian Work Outcomes Research Cost-benefit (WORC) study cross-sectional screening dataset (approximately 78,000 working Australians) was used to explore patterns of multimorbidity. Exploratory factor analysis was used to identify nonrandomly occurring clusters of multimorbid health conditions.

Results

Six clinically-meaningful groups of multimorbid health conditions were identified. These were: factor 1: arthritis, osteoporosis, other chronic pain, bladder problems, and irritable bowel; factor 2: asthma, chronic obstructive pulmonary disease, and allergies; factor 3: back/neck pain, migraine, other chronic pain, and arthritis; factor 4: high blood pressure, high cholesterol, obesity, diabetes, and fatigue; factor 5: cardiovascular disease, diabetes, fatigue, high blood pressure, high cholesterol, and arthritis; and factor 6: irritable bowel, ulcer, heartburn, and other chronic pain. These clusters do not fall neatly into organ or body systems, and some conditions appear in more than one cluster.

Conclusions

Considerably more research is needed with large population-based datasets and a comprehensive set of reliable health diagnoses to better understand the complex nature and composition of multimorbid health conditions.
Hinweise

Electronic supplementary material

The online version of this article (doi:10.​1186/​1478-7954-9-15) contains supplementary material, which is available to authorized users.
Paul A Scuffham, Michael F Hilton, Alexander Muspratt, Shu-Kay Ng and Harvey A Whiteford contributed equally to this work.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

LH developed the methods for this study in collaboration with co-investigators, conducted data analysis with help from statistician, wrote first draft and revisions to paper, corresponding author; PAS assisted with developing methods, advised on statistical analysis methods, and reviewed drafts of paper; MH coordinated data collection and reviewed drafts of paper. AM and SKN helped with the data analysis, and HAW chief investigator of parent study which collected the data used in this study and reviewed drafts of paper. All co-authors read and approved the final manuscript.
Abkürzungen
CFI
Comparative fit index
CIRS
Cumulative Illness Rating Scale
COPD
Chronic obstructive pulmonary disease
CVD
Cardiovascular disease
HPQ
Health and Productivity Questionnaire (World Health Organization)
K6
Kessler 6 screening tool for psychological distress
TLI
Tucker Lewis index
SRMR
Standardized root mean square residual
WORC
Work Outcomes Research Cost-benefit project (Australian-based)

Background

The term 'comorbidity' was first used in 1970 by Feinstein (as cited by Kessler et al, 2001 [1]) and by van den Akker et al [2, 3] to refer to situations where an individual has two or more physical and/or mental health conditions. More recently, the term multimorbidity was introduced [24]. Although comorbidity and multimorbidity are both used to describe two or more health conditions, a distinction is made between these two terms. Comorbidity is used when an index condition of interest is being discussed, and multimorbidity is used when no reference condition is considered [4]. Although these distinctions often are not clearly applied, and both terms are used interchangeably in the literature, we will use this definition of these terms in this paper. Sometimes health conditions can be comorbid purely by chance; however, certain comorbidity clusters can also occur at higher than chance levels[1].
International and Australian research demonstrates the prevalence of comorbidity or multimorbidity as increasing significantly with age [36], indicating that patients with multimorbidity in general practice represent the rule, rather than the exception[5, 7, 8]. For example, an Australian study exploring data obtained through 305 general practitioners in 2005 reported that the prevalence of multimorbidity increased with age, with 83% of surveyed patients aged 75 years or older having multimorbidity [6].
The study of patterns of multimorbidity is a new field. While there is a growing body of evidence regarding the prevalence of comorbidity and multimorbidity [35, 9], most studies use either a count of the number of comorbidities, such as the Charlson Index [10], or a Cumulative Illness Rating Scale (CIRS), which groups conditions by body systems affected [6, 1113]. These methods do not use statistical approaches to identify the nonrandom cluster patterns of individual health conditions into groups of multimorbid conditions, perhaps due to the limitations of statistical methods to date. Most statistical packages that can perform exploratory factor analysis (EFA) require the data to be in a continuous format, but health conditions are usually dichotomously represented; that is, the person either has the condition or does not.
The objective of this study was to use software and statistical analysis methods that allow for the dichotomous nature of disease data to identify nonrandomly occurring clusters of multimorbid health conditions. Identifying clusters of multimorbidity is important due to rising health care costs associated with servicing an increasingly aging population with complex health care needs. Health service providers need to better understand the complexity of the health status of consumers to ensure more strategic and tailored health care is provided.

Methods

Data

The Australian Work Outcomes Research Cost-benefit (WORC) project (http://​www.​qcmhr.​uq.​edu.​au/​worc/​) provides a large cross-sectional data set of 78,430 working Australians to explore clusters of nonrandomly occurring multimorbid health conditions.
Study sample: Employees of 58 large Australian-based companies were invited to participate in the WORC study. The survey was undertaken between October 2004 and December 2005.
Study measures: The Health and Productivity Questionnaire (HPQ) from the World Health Organization [14] was used to collect self-reported health status on 22 health conditions. The Kessler 6 (K6) [15], a validated measure of psychological distress, which is included within the HPQ, was used to collect psychological distress data. In total, 23 conditions were explored for multimorbidity patterns in this study. The following health conditions were included in the analyses, as these were available in the HPQ: arthritis, asthma, back/neck pain, cancers (excluding skin cancer), skin cancers, chronic obstructive pulmonary disease (COPD) (including chronic bronchitis and emphysema), cardiovascular disease (CVD), psychological distress (defined as a K6 score of 13 and above [16]), drug and alcohol problems, diabetes, fatigue (including sleep problems), high blood pressure, high cholesterol, injury (workplace injury requiring medical treatment), migraine (and severe headache), obesity (using self reported height and weight to calculate body mass index), bladder problems, heartburn, irritable bowel disorder, ulcers, osteoporosis, or other chronic pain. Self-reported health status was coded for this study as "yes" if respondents reported having the condition and were either currently or had previously received professional treatment for that condition, and "no" if they reported never having the condition. Respondents were excluded if they reported having a condition but never received treatment, as these respondents may have incorrectly self-diagnosed the health problem. An average of 0.05% respondents were excluded for each condition.

Statistical analysis

Exploratory factor analysis was performed in the software package Mplus[17], which accommodates for dichotomous variables by calculating tetrachoric correlations among the variables. When working with tetrachoric correlations, there are no assumptions concerning the shapes of the frequency distributions, and as a consequence, there is no need to be concerned that some distributions are skewed. Factor solutions for the one-factor solution through to the eight-factor solution were explored. The optimal number of factors was determined after applying a number of rules and indices: the scree test (in a plot of eigenvalues against factor number, a kink in the plot gives the optimal number of factors [18]); the eigenvalues-greater-than-one rule [18]; standardized root mean square residual (SRMR), which should be less than 0.05 [19]; comparative fit index (CFI) and Tucker Lewis index (TLI), both of which should be greater than 0.95 [19]; and a rule which says that more than two items should contribute to the definition of a factor [17]. An orthogonal quartimin rotation was applied to facilitate interpretation of factor loadings.

Results

The sample demographic characteristics are listed in Table 1. The sample included part-time, full-time, and casual workers. In the sample, 65% were female and 35% male. The two largest age groups were those aged 30-44 years and those aged 45-59 years, comprising 80% of the sample. Those aged less than 18 years and over 70 years were excluded from the study, as these age groups are not usually in the Australian workforce (0.2% deleted). A total of 71% was married or cohabiting, 69% had no children, 48% had completed a tertiary qualification, and 53% earned $50,000 or more per year.
Table 1
Sample Demographic Characteristics
Demographic Independent Variable
N
%
AGE ¥
78410
 
   18-29 years
 
17
   30-44 years
 
43
   45-59 years
 
37
   60-70 years
 
3
SEX
78430
 
   Female
 
65
   Male
 
35
MARITAL STATUS
78212
 
   Separated, divorced, widowed, never married
 
29
   Married or cohabitating
 
71
NUMBER OF CHILDREN
78209
 
   Nil
 
69
   1-3 children
 
28
   4 or more children
 
3
EDUCATION LEVEL
78430
 
   Did not complete high school
 
14
   Completed high school
 
10
   Some college
 
27
   Completed college or university
 
48
ANNUAL WAGE β
76778
 
   ≤$29,999 pa
 
13
   $30,000-39,999 pa
 
14
   $40,000-49,999 pa
 
21
   $50,000-74,999 pa
 
36
   $75,000-99,999 pa
 
10
   ≥ $100,000 pa
 
7
¥: only persons aged 18-70 included in analysis; β: excludes hourly rate < $7.50 ph in case fortnightly income reported instead of annual income
We obtained all solutions from the one-factor solution to the eight-factor solution. The scree test (Figure 1) suggests that the optimal number of factors is two or three. However, all of the other indices suggest a larger number of factors. The CFI and TLI goodness-of-fit statistics (Table 2) suggest a five-factor solution, whereas SRMR suggests a six-factor solution. The eigenvalues-greater-than-one rule suggests a six- or perhaps a seven-factor solution. However, the seven-factor solution does not meet the requirement of having a minimum of three items in a factor, and so is not considered ideal. Therefore, the six factor solution was selected. Table 3 provides the loadings for the six-factor solution (loadings exceeding the cut-off of ± 0.40 appear in bold).
Table 2
Exploratory Factor Analysis Goodness-of-fit Statistics for the One Factor Solution through to the Eight Factor Solution
Factors
CFI
TLI
df
SRMR
1
0.471
0.713
94
0.128
2
0.742
0.852
164
0.091
3
0.845
0.903
150
0.079
4
0.923
0.947
136
0.062
5
0.950
0.962
122
0.051
6
0.965
0.971
114
0.043
7
0.981
0.982
100
0.032
8
0.987
0.986
86
0.027
Table 3
Loadings for the Six-factor Solution following an Exploratory Factor Analysis Based on a Polychoric Correlation matrix
 
Factor 1
Factor 2
Factor 3
Factor 4
Factor 5
Factor 6
Arthritis
0.578
0.255
-0.545
0.346
0.401
0.378
Asthma
0.116
0.950
-0.207
0.168
0.055
0.202
Back/neck problems
0.274
0.206
-0.747
0.127
0.071
0.261
COPD
0.348
0.634
-0.248
0.276
0.261
0.275
CVD
0.276
0.067
-0.078
0.377
0.773
0.259
diabetes
0.088
0.125
-0.064
0.883
0.567
0.129
High cholesterol
0.204
0.132
-0.134
0.439
0.807
0.276
Fatigue
0.234
0.230
-0.298
1.000
0.461
0.245
High blood pressure
0.083
0.158
-0.177
0.521
0.769
0.259
Injuries
0.203
0.101
-0.393
0.167
0.025
0.139
Migraine
0.141
0.280
-0.562
0.159
-0.036
0.269
Obesity
-0.025
0.197
-0.255
0.502
0.368
0.216
Drug & alcohol
0.334
0.229
-0.293
0.388
0.088
0.387
Psychological distress
0.083
0.121
-0.295
0.271
-0.033
0.218
Cancer (not skin)
0.319
0.102
-0.157
0.138
0.140
0.189
Irritable bowel
0.424
0.302
-0.391
0.230
0.021
0.653
Other chronic pain
0.587
0.230
-0.614
0.361
0.166
0.472
Ulcer
0.252
0.224
-0.311
0.173
0.216
0.934
Heartburn
0.260
0.326
-0.376
0.212
0.322
0.841
Allergies
0.237
0.800
-0.377
0.127
0.053
0.379
Bladder problems
0.469
0.247
-0.312
0.323
0.188
0.370
Skin cancer
0.374
0.116
-0.122
0.139
0.253
0.138
Osteoporosis
0.614
0.232
-0.279
0.150
0.227
0.214
CFI: 0.965, TLI: 0.971; SRMR 0.043; Loadings are shown after the application of the Quartimax orthogonal rotation; Loadings are bolded if they exceed ± 0.4
The following factors were identified:
  • Factor 1: arthritis, osteoporosis, other chronic pain, bladder problems, and irritable bowel
  • Factor 2: asthma, COPD, and allergies
  • Factor 3: back/neck pain, migraine, other chronic pain, and arthritis
  • Factor 4: high blood pressure, high cholesterol, obesity, diabetes, and fatigue
  • Factor 5: CVD, diabetes, fatigue, high blood pressure, high cholesterol, and arthritis
  • Factor 6: irritable bowel, ulcer, heartburn, and other chronic pain

Discussion

Some conditions appear in more than one factor. (One reason exploratory factor analysis was used for this study is that it allows for more than one factor per condition.) Previous studies that use statistical methods to explore relationships of multimorbid conditions or clusters of organ systems have also found that some conditions appear in more than one factor [6, 20, 21]. Of the 23 conditions available for analysis in our study, we found chronic pain to be in three of the six clusters; diabetes, high blood pressure, and high cholesterol to be in the same two of the six clusters; and arthritis and irritable bowel to be in two different clusters.
We found that health conditions do not cluster neatly into organ or body system, as has been assumed in the methods underpinning the CIRS [22]. A study by Britt et al [20] demonstrates this. They explored patterns of multimorbidity and found that groups of individuals fit into between two and eight combinations of CIRS domains [20].
Only one other study was found that explored patterns of multimorbidity among individual health conditions [21]. A study by Cornell et al included more than 1.3 million primary care patients cared for by the Veterans Health Care System with two or more comorbidities and categorized 45 health conditions. Similarities exist between our fifth group of health conditions and Cornell's "metabolic cluster," the cluster that had the highest degree of association in their study. They reported that 83% of their sample fell into this cluster; three of the conditions in this cluster were also represented in our fifth factor [21]. Differences between the study by Cornell et al and this study include statistical method (Cornell's methods of cluster analysis relies on prevalence, so conditions with low prevalence will be underrepresented), sample size and composition (Cornell's sample was much larger, and all study participants had two or more health conditions; our sample included people well enough and young enough to attend work), and the number of health conditions (these were greater in the Cornell study). These differences may account for discrepancies in the cluster composition between the two studies.
Other existing measures either calculate a comorbidity score based on the number of coexisting conditions, with some weights applied to adjust for severity of condition, such as the Charlson Index [10, 2325], or calculate the impact on functional status, such as the Functional Comorbidity Index [26]. Studies that explore multimorbidity tend to use one of these instruments to determine comorbidity and/or multimorbidity. Because the Charlson Index requires hospital admission data and accurate International Classification of Diseases 10th Revision (ICD-10) records, many of these studies do not reflect the population as a whole. Our study uses those still in the workforce, perhaps skewing to those in better health in the community. Further research is required in this area to determine prevalence and structure of multimorbid clusters of health complaints occurring in Australia.
This study adds to the only other available study [21] that uses statistical methods on a group of individual health conditions to explore nonrandom clustering of multimorbidity. With an increasingly aging population and evidence that comorbidity and multimorbidity increase with age [35], combined with rising health care costs associated with new procedures and treatments, a better understanding of how health conditions cluster together will enable better care management of individuals with chronic and complex diseases.
There are some limitations to our study that need to be considered, and extrapolation of these findings to the general population should be done with caution. This is an opportunistic sample of willing employees from 58 large organizations. The response rate was low (22%). A comparison of respondents and nonrespondents was not possible, so the implications of the poor response rate are not known. For example, only those at work during the data collection period responded. People on extended sick leave or out of the workforce are not represented. The sample also has overrepresentation of females. The self-reported nature of health conditions, and the number and type of health conditions available also need to be considered. For example, there is an absence of some high-cost conditions, such as kidney disease. Therefore, extrapolation of these findings to the general population should be done with caution. The findings are relevant, however, to those sectors and groups where the demographic profile is similar. Fatigue, which may be either chronic or acute, was included in the model. Fatigue is mostly acute, so one might question whether it should be included. However, the results demonstrate that fatigue is included in two of the multimorbidity groupings, highlighting its importance for inclusion in multimorbidity analyses.

Conclusions

This study identified clinically meaningful clusters of multimorbid health conditions that do not fall neatly into organ or body systems. Some conditions appear in more than one cluster. Few studies are available that use statistical methods to explore patterns of multimorbidity in a group of individual health conditions. A large population-based sample with reliable diagnosis data at an individual level is required.

Acknowledgements

The authors would like to acknowledge the contribution of Professor Ron Kessler and Dr. Philip Wang for their guidance in establishing the study protocol and Cathy Cleary and Judith Sheridan for implementation of the protocol. This work was financially supported by the Department of Health and Ageing, Mental Health Strategy Branch, Australian Government, Canberra, ACT, beyondblue: the national depression initiative, Melbourne, VIC, Australia, and the Australian Rotary Health Research Fund, Parramatta, NSW, Australia.
This article is published under license to BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://​creativecommons.​org/​licenses/​by/​2.​0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

LH developed the methods for this study in collaboration with co-investigators, conducted data analysis with help from statistician, wrote first draft and revisions to paper, corresponding author; PAS assisted with developing methods, advised on statistical analysis methods, and reviewed drafts of paper; MH coordinated data collection and reviewed drafts of paper. AM and SKN helped with the data analysis, and HAW chief investigator of parent study which collected the data used in this study and reviewed drafts of paper. All co-authors read and approved the final manuscript.
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Literatur
1.
2.
Zurück zum Zitat van den Akker M, Buntinx F, Metsemakers J, Knottnerus J: Marginal impact of psychosocial factors on multimorbidity: results of an explorative nested case-control study. Social Science & Medicine 2000, 50: 1679-1693. 10.1016/S0277-9536(99)00408-6CrossRef van den Akker M, Buntinx F, Metsemakers J, Knottnerus J: Marginal impact of psychosocial factors on multimorbidity: results of an explorative nested case-control study. Social Science & Medicine 2000, 50: 1679-1693. 10.1016/S0277-9536(99)00408-6CrossRef
3.
Zurück zum Zitat van den Akker M, Buntinx F, Metsemakers JF, Roos S, Knottnerus JA: Multimorbidity in general practice: prevalence, incidence, and determinants of co-occurring chronic and recurrent diseases. J Clin Epidemiol 1998, 51: 367-375. 10.1016/S0895-4356(97)00306-5CrossRefPubMed van den Akker M, Buntinx F, Metsemakers JF, Roos S, Knottnerus JA: Multimorbidity in general practice: prevalence, incidence, and determinants of co-occurring chronic and recurrent diseases. J Clin Epidemiol 1998, 51: 367-375. 10.1016/S0895-4356(97)00306-5CrossRefPubMed
4.
Zurück zum Zitat van den Akker M, Buntinx F, Roos S, Knottnerus J: Problems in determining occurrence rates of multimorbidity. Journal of Clinical Epidemiology 2001, 54: 675-679. 10.1016/S0895-4356(00)00358-9CrossRefPubMed van den Akker M, Buntinx F, Roos S, Knottnerus J: Problems in determining occurrence rates of multimorbidity. Journal of Clinical Epidemiology 2001, 54: 675-679. 10.1016/S0895-4356(00)00358-9CrossRefPubMed
5.
Zurück zum Zitat Fortin M, Bravo G, Hudon C, Vanasse A, Lapointe L: Prevalence of multimorbidity among adults seen in family practice. Annals of Family Medicine 2005, 3: 223. 10.1370/afm.272CrossRefPubMedPubMedCentral Fortin M, Bravo G, Hudon C, Vanasse A, Lapointe L: Prevalence of multimorbidity among adults seen in family practice. Annals of Family Medicine 2005, 3: 223. 10.1370/afm.272CrossRefPubMedPubMedCentral
6.
Zurück zum Zitat Britt H, Harrison C, Miller G, Knox S: Prevalence and patterns of multimorbidity in Australia. Medical Journal of Australia 2008, 189: 72-77.PubMed Britt H, Harrison C, Miller G, Knox S: Prevalence and patterns of multimorbidity in Australia. Medical Journal of Australia 2008, 189: 72-77.PubMed
7.
8.
Zurück zum Zitat Fortin M, Hudon C, Bayliss E, Soubhi H, Lapointe L: Caring for body and soul: the importance of recognising and managing psychological distress in persons with multimorbidity. International Journal of Psychiatry in Medicine 2007, 37: 1-9. 10.2190/41X8-42QW-2571-H20GCrossRefPubMed Fortin M, Hudon C, Bayliss E, Soubhi H, Lapointe L: Caring for body and soul: the importance of recognising and managing psychological distress in persons with multimorbidity. International Journal of Psychiatry in Medicine 2007, 37: 1-9. 10.2190/41X8-42QW-2571-H20GCrossRefPubMed
9.
Zurück zum Zitat Loeppke R, Taitel M, Haufle V, Parry T, Kessler R, Jinnett K: Health and Productivity as a Business Strategy: A Multi-employer Study. Journal of Occupational & Environmental Medicine 2009, 51: 411-428. 10.1097/JOM.0b013e3181a39180CrossRef Loeppke R, Taitel M, Haufle V, Parry T, Kessler R, Jinnett K: Health and Productivity as a Business Strategy: A Multi-employer Study. Journal of Occupational & Environmental Medicine 2009, 51: 411-428. 10.1097/JOM.0b013e3181a39180CrossRef
10.
Zurück zum Zitat Nuttall M, van der Meulen J, Emberton M: Charlson scores based on ICD-10 administrative data were valid in assessing comorbidity in patients undergoing urological cancer surgery. J Clin Epidemiol 2006, 59: 265-273. 10.1016/j.jclinepi.2005.07.015CrossRefPubMed Nuttall M, van der Meulen J, Emberton M: Charlson scores based on ICD-10 administrative data were valid in assessing comorbidity in patients undergoing urological cancer surgery. J Clin Epidemiol 2006, 59: 265-273. 10.1016/j.jclinepi.2005.07.015CrossRefPubMed
11.
Zurück zum Zitat Fortin M, Bravo G, Hudon C, Lapointe L, Dubois M-F, Almirall J: Psychological Distress and Multimorbidity in Primary Care. Annals of Family Medicine 2006, 5: 417-422.CrossRef Fortin M, Bravo G, Hudon C, Lapointe L, Dubois M-F, Almirall J: Psychological Distress and Multimorbidity in Primary Care. Annals of Family Medicine 2006, 5: 417-422.CrossRef
12.
Zurück zum Zitat Fortin M, Hudon C, Dubois M-F, Almirall J, Lapointe L, Soubhi H: Comparative assessment of three different indices of multimorbidity for studies on health-related quality of life. Health and Quality of Life Outcomes 2005., 3: Fortin M, Hudon C, Dubois M-F, Almirall J, Lapointe L, Soubhi H: Comparative assessment of three different indices of multimorbidity for studies on health-related quality of life. Health and Quality of Life Outcomes 2005., 3:
13.
Zurück zum Zitat Hudon C, Fortin M, Vanasse A: Cumulative Illness Rating Scale was a relaible and valid index in a family practice context. Journal of Clinical Epidemiology 2005, 58: 603-608. 10.1016/j.jclinepi.2004.10.017CrossRefPubMed Hudon C, Fortin M, Vanasse A: Cumulative Illness Rating Scale was a relaible and valid index in a family practice context. Journal of Clinical Epidemiology 2005, 58: 603-608. 10.1016/j.jclinepi.2004.10.017CrossRefPubMed
14.
Zurück zum Zitat Kessler R, Barber C, Beck A, Berglund P, Cleary P, McKenas D, Pronk N, Simon G, Stang P, Ustun T, Wang P: The World Health Organisation Health and Work Performance Questionnaire (HPQ). Journal of Occupational and Environmental Medicine 2003, 45: 156-174. 10.1097/01.jom.0000052967.43131.51CrossRefPubMed Kessler R, Barber C, Beck A, Berglund P, Cleary P, McKenas D, Pronk N, Simon G, Stang P, Ustun T, Wang P: The World Health Organisation Health and Work Performance Questionnaire (HPQ). Journal of Occupational and Environmental Medicine 2003, 45: 156-174. 10.1097/01.jom.0000052967.43131.51CrossRefPubMed
15.
Zurück zum Zitat Kessler R, Andrews G, Colpe L, Hirip E, Mroczek D, Normand S, Walters E, AM Z: Short screening scales to monitor population prevalences and trends in non-specific psychological distress. Psychological Medicine 2002, 32: 959-976. 10.1017/S0033291702006074CrossRefPubMed Kessler R, Andrews G, Colpe L, Hirip E, Mroczek D, Normand S, Walters E, AM Z: Short screening scales to monitor population prevalences and trends in non-specific psychological distress. Psychological Medicine 2002, 32: 959-976. 10.1017/S0033291702006074CrossRefPubMed
16.
Zurück zum Zitat Kessler R, Barker P, Colpe L, Epstien J, Gfroerer J, Hiripi E, Howes M, Normand S-L, Maunderscheid R, Walters E, Zaslavsky A: Screening for Serious Mental Illness in the General Population. Archives of General Psychiatry 2003, 60: 184-189. 10.1001/archpsyc.60.2.184CrossRefPubMed Kessler R, Barker P, Colpe L, Epstien J, Gfroerer J, Hiripi E, Howes M, Normand S-L, Maunderscheid R, Walters E, Zaslavsky A: Screening for Serious Mental Illness in the General Population. Archives of General Psychiatry 2003, 60: 184-189. 10.1001/archpsyc.60.2.184CrossRefPubMed
17.
Zurück zum Zitat Muthen L, Muthen B: MPlus: Statistical analysis with latent variables: Users Guide. Volume 5. Los angeles: Muthen & Muthen; 2007. Muthen L, Muthen B: MPlus: Statistical analysis with latent variables: Users Guide. Volume 5. Los angeles: Muthen & Muthen; 2007.
18.
Zurück zum Zitat Tabchnick B, Fidell L: Using Multivariate Statistics. 5th edition. Boston: Allyn & Bacon; 2006. Tabchnick B, Fidell L: Using Multivariate Statistics. 5th edition. Boston: Allyn & Bacon; 2006.
19.
Zurück zum Zitat Byrne B: Structural equation modeling with AMOS: Basic concepts, applications and programming. 2nd edition. New York: Routledge; 2009. Byrne B: Structural equation modeling with AMOS: Basic concepts, applications and programming. 2nd edition. New York: Routledge; 2009.
21.
Zurück zum Zitat Cornell JE, Pugh JA, Williams JW, Kazis L, Lee AFS, Parchman ML, Zeber J, Pederson T, Montgomery KA, Hitchcock Nokl P: Multimorbidity clusters: Clustering binary data from multimorbidity clusters: Clustering binary data from a large administrative medical database. Applied Multivariate Research 2007, 12: 163-182. Cornell JE, Pugh JA, Williams JW, Kazis L, Lee AFS, Parchman ML, Zeber J, Pederson T, Montgomery KA, Hitchcock Nokl P: Multimorbidity clusters: Clustering binary data from multimorbidity clusters: Clustering binary data from a large administrative medical database. Applied Multivariate Research 2007, 12: 163-182.
22.
Zurück zum Zitat Hudon C, Fortin M, Soubhi H: Abbreviated guidelines for scoring the Cumulative Illness Rating Scale (CIRS) in family practice. Journal of Clinical Epidemiology 2007., 60: Letter to the Editor Hudon C, Fortin M, Soubhi H: Abbreviated guidelines for scoring the Cumulative Illness Rating Scale (CIRS) in family practice. Journal of Clinical Epidemiology 2007., 60: Letter to the Editor
23.
Zurück zum Zitat Sundararajan V, Henderson T, Perry C, Muggivan A, Quan H, Ghali WA: New ICD-10 version of the Charlson comorbidity index predicted in-hospital mortality. J Clin Epidemiol 2004, 57: 1288-1294. 10.1016/j.jclinepi.2004.03.012CrossRefPubMed Sundararajan V, Henderson T, Perry C, Muggivan A, Quan H, Ghali WA: New ICD-10 version of the Charlson comorbidity index predicted in-hospital mortality. J Clin Epidemiol 2004, 57: 1288-1294. 10.1016/j.jclinepi.2004.03.012CrossRefPubMed
24.
Zurück zum Zitat Rius C, Perez G, Martinez JM, Bares M, Schiaffino A, Gispert R, Fernandez E: An adaptation of Charlson comorbidity index predicted subsequent mortality in a health survey. J Clin Epidemiol 2004, 57: 403-408. 10.1016/j.jclinepi.2003.09.016CrossRefPubMed Rius C, Perez G, Martinez JM, Bares M, Schiaffino A, Gispert R, Fernandez E: An adaptation of Charlson comorbidity index predicted subsequent mortality in a health survey. J Clin Epidemiol 2004, 57: 403-408. 10.1016/j.jclinepi.2003.09.016CrossRefPubMed
25.
Zurück zum Zitat Harse JD, Holman CD: Charlson's Index was a poor predictor of quality of life outcomes in a study of patients following joint replacement surgery. J Clin Epidemiol 2005, 58: 1142-1149. 10.1016/j.jclinepi.2005.02.017CrossRefPubMed Harse JD, Holman CD: Charlson's Index was a poor predictor of quality of life outcomes in a study of patients following joint replacement surgery. J Clin Epidemiol 2005, 58: 1142-1149. 10.1016/j.jclinepi.2005.02.017CrossRefPubMed
26.
Zurück zum Zitat Groll DL, To T, Bombardier C, Wright JG: The development of a comorbidity index with physical function as the outcome. J Clin Epidemiol 2005, 58: 595-602. 10.1016/j.jclinepi.2004.10.018CrossRefPubMed Groll DL, To T, Bombardier C, Wright JG: The development of a comorbidity index with physical function as the outcome. J Clin Epidemiol 2005, 58: 595-602. 10.1016/j.jclinepi.2004.10.018CrossRefPubMed
Metadaten
Titel
Patterns of multimorbidity in working Australians
verfasst von
Libby Holden
Paul A Scuffham
Michael F Hilton
Alexander Muspratt
Shu-Kay Ng
Harvey A Whiteford
Publikationsdatum
01.12.2011
Verlag
BioMed Central
Erschienen in
Population Health Metrics / Ausgabe 1/2011
Elektronische ISSN: 1478-7954
DOI
https://doi.org/10.1186/1478-7954-9-15

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