Centre for Mental Health Research, The Australian National University, Canberra, Australia
Correspondence: Ailsa Korten, Centre for Mental Health Research, The Australian National University, Canberra, A.C.T. 0200, Australia; e-mail: ailsa.korten{at}anu.edu.au
Declaration of interest No conflict of interest. Funding detailed in Acknowledgements.
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ABSTRACT |
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Aims To examine the distribution of common psychological symptoms and associated disablement in the Australian population.
Method A household sample of 10 641 individuals representative of the adult population of Australia was interviewed using the Composite International Diagnostic Interview and completed scales measuring recent symptoms and disablement.
Results Symptom scales showed similar associations with socio-economic variables as did diagnoses, although only a small amount of variance in symptom levels was explained by these variables.
Considerable disablement was associated with symptom levels indicating distress but not reaching levels for formal diagnoses of anxiety or depression.
Conclusions Symptom scales provide parsimonious measures of psychological distress and are appropriate for use in large-scale surveys of mental health and disablement.
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INTRODUCTION |
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METHOD |
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The sample
Approximately 13 600 private dwellings across Australia were selected using
stratified multi-stage area sampling to ensure that all persons living in
private dwellings aged 18 years and over within each State and Territory in
Australia were represented. The size of this population is estimated to be
13.5 million. One person aged 18 years or over was randomly chosen from each
dwelling and invited to take part in what the interviewers explicitly told
them was "the National Survey of Mental Health and
Well-Being".
Measures of symptoms, well-being and disability
The instrument forming the core of the interview was the Composite
International Diagnostic Interview Automated (CIDI-A), Version 2.1
(Robins et al, 1988;
Andrews & Peters, 1998).
The authors of the CIDI-A have been primarily intent on establishing diagnoses
for most of the syndromes in ICD-10 and DSM-IV. To conserve interview time and
costs, skips have been extensively introduced. For example, if neither of two
depression screen items was endorsed, the depression module was skipped. As a
consequence, it is not possible to obtain frequency counts of symptoms for all
respondents.
To go some way to overcoming this handicap, all respondents also completed the 12-item General Health Questionnaire (GHQ-12; Goldberg & Williams, 1988). Other related measures were the 12 neuroticism items in the Short Form of the Eysenck Personality Questionnaire Revised (EPQ-R; Eysenck et al, 1985) and the Short Form 12 General Health Survey (SF-12; Ware et al, 1996), which provides both a physical and a mental health scale based on responses to 12 questions on limitations owing to health across different domains. Disablement was measured by the two items of the Brief Disability Questionnaire (Ormel et al, 1994) that ask, "During the last one month, how many days in total were you unable to carry out your usual activities fully?" and "During the last one month, how many days in total did you stay in bed all or most of the day because of illness or injury?" The larger of these two numbers was taken as the number of days out of role, when the respondent was unable to meet social role obligations. In only 1.7% of the sample did this correspond to the number of days in bed. The interview was further supplemented with additional items, all by self-report, on socio-demographic variables, including education, labour force status and house-hold composition.
Fieldwork
The ABS selected its most experienced field staff for this national survey
and they were given extensive training. The interview was well received by
respondents. The survey was conducted between May and August 1997.
Data analysis
The data were analysed using the STATA 6.0 package
(StataCorp, 1999), which makes
appropriate adjustments for the different selection probabilities and response
rates of the population sample. A series of regression analyses (linear and
logistic) were conducted with either the GHQ-12 score or a diagnostic variable
as a dependent variable, and the contribution of socio-demographic variables
and physical health was evaluated. A similar series of analyses investigated
the predictors of disablement as measured by days out of role. The possible
effects of the highly skewed distributions of the GHQ-12 score and days out of
role were investigated by careful examination of the regression diagnostics
and analyses using alternative negative binomial models. These indicated that
the models proposed were satisfactory.
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RESULTS |
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Age trends
There was a trend for symptoms to be fewer among the older age groups. The
decline was greater among women than men, so that gender differences in the
oldest age groups were reduced. This is illustrated in
Fig. 1, which shows the
standardised GHQ-12 score by age and gender. Between the ages of 18 and 25
years, the GHQ-12 score increased for men but decreased for women. The
prevalence of a diagnosis of any ICD-10 anxiety or depressive disorder
followed a similar pattern. It was higher in women than men, with declines for
both men and women after the age of 55 years.
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Given the different pattern of responses by age and gender, subsequent regression analyses treated age group as a categorical variable and men and women were analysed separately.
Symptoms and socio-demographic variables
Independent variables studied included age, educational qualifications,
occupation, urban/rural residence, marital status, labour force status, main
source of income, housing tenure and household type. Men and women differed in
their distributions across each of the independent variables, except for
urban/rural residence (P<0.01 on 2 tests). The
GHQ-12 scores were compared across categories using analyses of variance and
adjusting for age group. There were no significant differences by educational
qualification or occupational class. Mean GHQ-12 scores were significantly
different (P<0.01) for both men and women across categories of
marital status, urban/rural residence, labour force status, housing tenure,
main source of income and house-hold type (see
Table 2).
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When all variables were included in a regression, only a small proportion of the overall variance was explained. For men, only age, rural residence, labour force status and household type remained significantly related to GHQ-12 score, and the total explained variance (R2) was 4.9%. For women, only 3.7% of variance was explained by all variables, with only age, marital status, labour force status, housing tenure and household type remaining significant (P<0.01).
Neuroticism measures a trait that confers vulnerability to anxiety and depression, although it is also affected by current symptom states (Clark et al, 1994). It could therefore be argued that some of the differences in symptoms could be a result of the differences in the underlying trait of neuroticism. When neuroticism was included in the regression, the variance explained increased to 19.6% for men and 15.6% for women, whereas the associations with the socio-demographic variables remained almost unchanged. Similarly, adding physical health (SF-12 physical health scale and number of chronic medical conditions) explained additional variance in GHQ-12 scores (1.3% for men and 1.7% for women), but differences in the other independent variables again remained almost unchanged.
Predictors of ICD-10 anxiety and depressive disorders
A series of logistic regression analyses were conducted to investigate the
contribution of GHQ-12 score to the prediction of an ICD-10 diagnosis of
anxiety or depressive disorder. Adjustments were made for socio-demographic
predictors, with age, marital status, labour force status, education and
physical health being significant. Place of residence, occupation, source of
income or type of household were not significant. With each unit increase in
the GHQ-12 score, the adjusted odds of a diagnosis increased by about 50% for
men (adjusted OR=1.49, 95% CI 1.42-1.57) and 40% for women (adjusted OR=1.39,
95% CI 1.34-1.44).
Although the probability of a diagnosis increases rapidly with GHQ-12 score, a substantial number of persons who have high levels of symptoms have no diagnosis. Table 3 shows the percentage of the total population estimated to have a CIDI-A diagnosis of anxiety or depression, by GHQ-12 score, after adjusting for socio-demographic variables. A GHQ-12 score of 2 or more may be taken to indicate psychological distress in populations where the mean GHQ-12 score lies between 1 and 2. Although 19.4% of the Australian adult population fell into this category, only one-third of these (6.3%) actually received a diagnosis of anxiety or depression. That is, 13.1% of the population are estimated to have a GHQ-12 score indicating distress but do not have a diagnosis of anxiety or depression.
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Disablement
In the total sample, days out of role were higher among women (mean=2.05,
s.e.=0.08) than among men (mean=1.72, s.e.=0.08) and increased with age.
Analyses indicated that there were no significant interactions of predictors
with gender, so men and women were analysed together. A series of regression
analyses investigated the contribution of symptoms to disablement after
controlling for age, physical health and other socio-demographic variables. It
was found that after controlling for age, physical health and labour force
status, the number of depression screen items endorsed explained an additional
1.2% of the variance (B=0.38, s.e.=0.11) and the GHQ-12 score 3.4% of
variance (B=0.56, s.e.=0.05). Total explained variance was 31.4%. A
diagnosis of substance use was not associated with disablement. The only
social indicator that was significant was labour force status: not being in
the labour force was associated with increased disablement (B=0.73,
s.e.=0.16). None of the other social indicators was significant, and nor was
neuroticism once the GHQ-12 score was included.
It was notable that once the GHQ-12 score and depression screen items were included as independent variables, a diagnosis of depression or anxiety did not add significantly to the prediction of disablement. The estimated mean number of days out of role in the previous month for different levels of GHQ-12 symptoms is illustrated in Fig. 2. The total estimated number of such disability days in the population is shown in Table 4. The burden of disablement carried by the 13.1% of the population who have high GHQ-12 symptoms but who do not have a diagnosis of anxiety or depressive disorder (7.4 million days) is similar to the total burden carried by the 13.5% of the population who received a diagnosis (7.1 million days). Together the two groups with impaired mental health, accounting for 26.6% of the population, are associated with 57% of the disablement for the total population. This estimate does not necessarily include disablement associated with persons with other psychiatric diagnoses such as schizophrenia.
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DISCUSSION |
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Response
The response rate of 78% is close to that achieved in other national
surveys (Robins & Regier,
1991; Kessler et al,
1994; Jenkins et al,
1997). Data have not yet been made available on non-responders.
The sample may be biased downwards in morbidity because non-responders are
more likely to have symptoms (Kessler
et al, 1995).
Symptoms in relation to socio-demographic factors
Mental ill health as indicated by the GHQ-12 is worse in women than men, in
younger age groups and in larger rural areas and urban centres. These are
consistent findings in many surveys measuring both symptoms and diagnoses of
anxiety and depression (Jenkins et
al, 1997). The decrease in symptoms in older age groups
persisted once other age-dependent risk factors were controlled. This is again
consistent with findings in many studies for both symptoms and diagnoses
(Jorm, 2000).
Women who were separated had poorer mental health according to their GHQ-12 scores and had significantly higher mean scores than the divorced, whose scores were no different from those of married women. This may be because women who are separated are younger than the divorced, so the marital breakdown may be more recent and they may experience greater financial insecurity and a greater burden of child care than the already divorced. Among men, there was no difference between the separated and divorced, both of whom had higher GHQ-12 scores than men who were married or in a de facto relationship. Marital disruption has been found elsewhere to differ in its effect on men and women (Bruce & Kim, 1992).
The household a person belongs to is also an important indicator of relative mental health. Those living in a household consisting of a couple, with or without children, had better mental health than those living alone or in a household consisting of one person with his or her children. When adjustments were made for other covariates, this difference remained significant. Differences by marital status remained significant only for women once household composition was accounted for, implying that protection conferred on those in stable relationships may come more from the resultant living arrangements than from the marital relationship itself (Kramer et al, 1987). Those living alone or as single parents have been identified as vulnerable in several studies (Rodgers, 1991; Jenkins et al, 1997).
Symptoms and socio-economic factors
In this Australian sample, symptoms were not found to be related to
specific level or type of occupation or level of education. Mental health as
indicated by the GHQ-12 is better in the full-time employed of both genders.
This is a consistent finding across many studies
(Rodgers, 1991;
Jenkins et al, 1997;
Weich & Lewis,
1998a,b).
Men in full-time employment had lower GHQ-12 scores than men in part-time
employment; but women in part-time employment had the same low level of
symptoms as those in full-time employment, possibly reflecting different
family roles. For men, mental distress associated with less than full-time
work or with unemployment is particularly strong in the youngest age groups
(18-24 and 25-34 years) and may be a reflection of associated financial
difficulties. There was no indication that the length of unemployment affected
GHQ-12 scores.
Further evidence of the importance of financial difficulties is that people on a pension, especially in the younger age groups, and those in rented accommodation have higher GHQ-12 scores. In Australia, the majority (66%) of the population either own or are in the process of purchasing their home. To be renting is likely to be associated with being young, with economic disadvantage or with having recently moved. The finding is congruent with those of Rodgers (1991) and Weich and Lewis (1998a,b), who found that measures of financial difficulties or standard of living rather than measures of education or occupational class were associated with poorer mental health.
The most surprising finding of all is that only a tiny amount of the variance in GHQ-12 score was explained by all of the socio-demographic variables taken together: 4.7% in men and 3.7% in women. Although there are statistically significant differences in GHQ-12 scores by socio-demographic characteristics, these differences account for very little of the variance, implying that changes in the socio-demographic profile of the population, undertaken as a public health intervention, would make small differences in the overall distribution of mental ill health. This does not mean that specific subgroups, such as the unemployed, would not experience considerable improvement in mental health were their conditions to change.
Symptoms and being a case
The GHQ-12 questionnaire, which is usually completed in under 3 minutes, is
a highly parsimonious measure of the probability of having an ICD-10 anxiety
or depressive disorder. The average time taken to complete the anxiety and
depression sections of the CIDI-A was 14 minutes, but up to 1 hour for those
passing the screen.
The CIDI-A provides no information on sub-syndromal levels of symptoms, except the screening questions. But, more important for population studies, the GHQ-12 provides an adequate measure of symptoms for those who may not reach the diagnostic threshold. Although the present study is only cross-sectional in design, it has been shown repeatedly (Horwath et al, 1992) that persons with sub-threshold symptoms are at increased risk of developing a future diagnosable depressive disorder. The GHQ-12 therefore has the capacity readily to identify persons at risk of further mental health impairment.
Symptoms and disablement
The GHQ-12 score is closely associated with disablement in daily life,
expressed as the number of days in the previous month with social role
impairment (Fig. 2). The
regression analyses show that after symptoms were known, whether or not the
person had a diagnosis of anxiety or depression did not influence the amount
of disablement. The significance of this is that some future population
studies of mental health that focus specifically on disablement need not
include detailed psychiatric assessments. As has been found elsewhere
(Broadhead et al,
1990), where the concern is to identify the population levels of
disablement associated with impaired mental health, a symptom measure is more
appropriate than diagnoses alone. The GHQ-12 serves well for this purpose.
Because there are many more individuals with symptoms than with ICD-10 diagnoses, the total burden of disablement in the community in symptomatic persons is greater than in the formal ICD-10 cases of anxiety and depression: in 1 month, in a population of 13.5 million people, there were estimated to be 7.4 million and 7.1 million days out of role, respectively. Adding these two together, in one month, there were 14.5 million days with disablement associated with mental ill health. This stands in contrast to the 10.9 million days of disablement in mentally healthy persons who had both low GHQ-12 scores and no ICD-10 diagnosis of anxiety or depression. In interpreting these data, it would be unjustified to attribute all of the 14.5 million days of disablement to impaired mental health. This is because of comorbidity with physical disorders, which is known to be considerable in this sample (Andrews et al, 1999). But the findings suggest that: there is a strong association between impaired mental health and impaired social role performance; and the group in the population who have sub-syndromal symptoms carry at least half of this burden of disablement. The administrative significance of these observations cannot be over-estimated, because they provide powerful evidence to justify changes in the deployment of health service resources, especially to primary care, to reduce the disablement associated with impaired mental health.
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Clinical Implications and Limitations |
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LIMITATIONS
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ACKNOWLEDGMENTS |
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REFERENCES |
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Received for publication October 14, 1999. Revision received May 4, 2000. Accepted for publication May 9, 2000.