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Citation: Evans-Lacko S, Corker E., Williams P, Henderson C, Thornicroft G. Effect of the Time to Change anti-stigma campaign on trends in mental-illness-related public stigma among the English population in 2003–13: an analysis of survey data. Lancet Psychiatry. 2014. 1 (2): 121-28
Link to article online:
http://www.thelancet.com/journals/lanpsy/article/PIIS2215-0366(14)70243-3/fulltext
Effect of the Time to Change anti-stigma campaign on trends in mental-illness-related public stigma among the English population in 2003–13: an analysis of survey data
Sara Evans-Lacko, Elizabeth Corker, Paul Williams,
Claire Henderson*, Graham Thornicroft*
*authors contributed equally to the work
Health Service and Population Research Department, Institute of Psychiatry, King's College
London, UK
Corresponding Author Full Contact Details:
Sara Evans-Lacko, PhD
King’s College London
Institute of Psychiatry
Health Service and Population Research Department
Box P029
De Crespigny Park
2
London SE5 8AF
United Kingdom
Telephone: + 44 (0) 20 7848 5076
Facsimile: + 44 (0) 20 7277 1462
Email: [email protected]
Author Information:
Elizabeth Corker, MSc
King's College London
Institute of Psychiatry
Health Service and Population Research Department
Box P029
De Crespigny Park
London SE5 8AF
United Kingdom
Paul Williams, MPH
King's College London
Institute of Psychiatry
Health Service and Population Research Department
Box P029
De Crespigny Park
London SE5 8AF
United Kingdom
Claire Henderson, PhD
King's College London
Institute of Psychiatry
3
Health Service and Population Research Department
Box P029
De Crespigny Park
London SE5 8AF
United Kingdom
Graham Thornicroft, PhD
King's College London
Institute of Psychiatry
Health Service and Population Research Department
Box P029
De Crespigny Park
London SE5 8AF
United Kingdom
4
Abstract
Background: Given the consequences of public stigma for people personally affected by
mental health problems, it is important to understand trends and also effective mechanisms
which may reduce stigma and discrimination.
Methods: We investigated ten-year trends in public attitudes across England before and
during the Time to Change anti-stigma campaign, and whether there is a dose-effect
response between campaign awareness and regional outcomes.
Findings: There was a significant increase in positive attitudes following the Time to Change
campaign. Our findings demonstrated a significant increase in relation to prejudice /
exclusion following the launch of Time to Change (B=0.02 95% CI: 0.01, 0.05), though not for
tolerance and support for community care (B=0.01 95% CI: -0.01, 0.03). We also found
evidence for a dose-effect relationship between campaign awareness and regional
improvement in knowledge and attitudes, but not intended behaviour.
Interpretation: The positive effects of Time to Change appear significant and moderate.
Although attitudes may be more at risk of deterioration during times of economic hardship,
anti-stigma programmes may still play an active role in long-term reduction of stigma and
discrimination especially in relation to prejudice / exclusion of people with mental health
problems.
Funding: SEL, EC, PW and CH were supported by a grant to Time to Change from the
Government Department of Health in England and Comic Relief. CH and GT were funded by
National Institute for Health Research (NIHR) Programme Grant for Applied Research (RP-
PG-0606-1053) (PI: GT) awarded to the South London and Maudsley NHS Foundation Trust.
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Introduction
Public stigma and discrimination in relation to mental illness, i.e., the mental health related
knowledge, attitudes or behaviour, of the general public can have important consequences
for people personally affected by mental health problems. There is a growing evidence base
for wide ranging and significant consequences of public stigma for individuals with mental
illness. Recent research provides evidence linking the degree of public stigma with self-
stigma among people with mental health problems,1 disadvantage in relation to
employment,2 higher prevalence of suicide,3 lower perceived health status4 and lower rates
of help-seeking for mental health problems5, all of which shape and maintain health
inequalities.6 Given the persistence of public stigma over recent decades, in the UK7 and
abroad,8,9 there is also, a recognised need for effective interventions to reduce public
stigma.10
The Time to Change anti-stigma campaign is England’s largest programme ever aimed at
reducing stigma and discrimination against people with mental health problems. Evaluation
of phase one (2009-2012) of the Time to Change anti-stigma and social marketing campaign
showed that important gains were made in terms of reducing public stigma and
discrimination in England. Specifically, improvement was shown in intended behavior
among the general public i.e., increased willingness to live with, work with, live nearby or
continue a relationship with someone with a mental health problem11 and reduction in
experiences of discrimination among service users.12,13 Moreover findings suggested that
the campaign represented a potentially cost-effective and low cost intervention, especially
when taking into account effects on the wider economy such as service utilisation and
employment.14 Overall the campaign was associated with modest but significant changes in
public stigma. The evaluation was limited, however, in that it included only one year of
6
baseline data and thus, was not able to establish a context for public attitude trends before
the launch of the campaign.
This paper sets out to improve on our understanding of public attitude trends in England in
three ways: (i) we examine the longer-term trends in population attitudes beginning in 2003
(six years before the initiation of the Time to Change anti-stigma campaign in 2009); (ii) we
investigate whether the time trend has changed significantly after the launch of the
campaign; and (iii) we examine whether there is a dose-effect relationship whereby regions
in England with higher campaign awareness also demonstrate greater improvement in
mental health related knowledge, attitudes and intended behaviour.
Methods
Data source
We used data from the 2003 and 2007-2013 national Attitudes to Mental Illness survey (the
survey was not carried out during the years 2004-2006 and so data are not available for
these years). This is an Omnibus Survey commissioned by the Department of Health and
carried out among a nationally representative sample of adults residing in England. There
were approximately 1700 respondents surveyed each year. Assessment of mental health
related attitudes was performed at each year; however, assessment of mental health
related knowledge and intended behaviour did not begin until 2009, in line with the
evaluation of the Time to Change anti-stigma campaign. The survey is carried out using a
quota sample, with sample points selected by a random location methodology. Census small
area statistics and the Postcode Address File were used to define sample points which were
stratified by Government Office Region and social grade. Interviews were carried out in the
participants' home by fully trained personnel using computer assisted personal interviewing
7
and demographic information was collected at the end of the interview. Additional
information regarding the survey methods can be found at:
https://catalogue.ic.nhs.uk/publications/mental-health/legislation/atti-ment-illn-2011/atti-ment-
illn-2011-apx.pdf. The study was classified as exempt by the King’s College London Psychiatry,
Nursing and Midwifery Research Ethics Subcommittee.
Measures
Mental health related knowledge
Mental health related knowledge was measured by the Mental Health Knowledge Schedule
[MAKS]).15 The MAKS comprises 6 items covering stigma-related mental health knowledge
areas: help seeking, recognition, support, employment, treatment, and recovery, and 6
items that inquire about classification of various conditions as mental illnesses.16 Overall
test-retest reliability of the MAKS is 0∙71 (Lin’s concordance statistic) and the overall internal
consistency among items is 0∙65 (Cronbach’s alpha).15 The MAKS intentionally includes items
of a multidimensional structure which investigate different types of mental health related
knowledge and this is reflected in an alpha score which is somewhat low by conventional
standards.15 The MAKS was not developed to function as a scale; however, it provides an
indication of overall trends in knowledge. The total score was calculated so that higher
MAKS scores indicate greater knowledge.
Mental health related attitudes.
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The survey includes 26 attitude items derived from the Community Attitudes toward the
Mentally Ill scales (CAMI)17 and an added item on employment-related attitudes. A two-
factor structure has been established for this scale:18 one factor comprises items related to
prejudice and exclusion (M = 2∙1, SD = 0∙7; Cronbach’s alpha 0∙84) and the other factor
comprises items about tolerance and support for community care (M = 4∙0, SD = 0∙5;
Cronbach’s alpha 0∙78). Items were rated from 1 (strong disagreement) to 5 (strong
agreement). The total score for each subscale was calculated so that higher scores indicate
more positive and / or less stigmatizing attitudes.
Mental health related intended behaviour
Intended behaviour (the level of intended future contact with people with mental health
problems) was measured by the Reported and Intended Behaviour Scale (RIBS).19 The scale
assesses intended behavior across four domains: living with, working with, living nearby and
continuing a relationship with someone with a mental health problem. Assessment of
intended behaviour allowed for brief and feasible evaluation at the population level. Overall
test-retest reliability of the RIBS is 0∙75 (Lin’s concordance statistic). The overall internal
consistency of the scale is 0∙85 (Cronbach’s alpha). The total score was calculated so that
higher RIBS scores indicate higher levels of intended contact.
Socioeconomic status
Socioeconomic status of the respondent was categorized into one of four categories (i.e.,
AB, C1, C2 and DE) according to the Market Research Society’s classification system.
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Classification was based on the occupation of the chief income earner in the household.
Category AB represents individuals with professional/managerial occupations, C1 represents
individuals with other non-manual occupations, C2 represents individuals having skilled
manual occupations and DE represents individuals with semi-/unskilled manual occupations
and people dependent on state benefits.
Regional prevalence of respondents reporting campaign awareness and familiarity with the
Time to Change campaign
Prompted awareness of the Time to Change campaign was assessed in 2012 and 2013.
Participants were first shown several pictures from different Time to Change attitudes that
appeared on television, radio, magazines or on the web. Overall awareness was then
determined via the following item: Do you think you have seen this advertising, or similar
during the last year? (Mental health advertising stills shown). Individuals who reported ‘yes’
or’ yes, seen similar’ were categorised as campaign aware while those who responded ‘no’
or ‘don’t know’ were categorised as ‘not campaign aware’. Respondents who reported some
campaign awareness were then asked: ‘How many times, before this interview, have you
seen or heard ANY of the advertising in the pictures’. Response options included: (i) Once or
twice, (ii) Three to five times and (iii) Six times or more.
We then calculated regional prevalence of respondents reporting overall awareness of the
Time to Change campaign. We also created an index of familiarity with the campaign (0=no
awareness, 1=seen/heard advertising once or twice, 2=seen/heard advertising three to five
times and 3= seen/heard advertising six times or more). Based on this index, we calculated
mean regional familiarity with the Time to Change campaign based on the mean score by
region.
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Regional unemployment
Rates of unemployment among adults by region were obtained from the Labour Force
Survey commissioned by the UK Office for National Statistics20 and we look specifically at
change in regional unemployment rate. In this case ‘region’ refers to nine former
government regions. These regions were established across England in 1994. They reflect
administrative boundaries and to date are the primary classification for the presentation of
regional statistics used by the Office for National Statistics. Some research suggests that
negative attitudes towards minority groups, including people with mental health problems
may be associated with economic hardship, especially where there is greater competition
for employment.2,21 There was a differential impact across regions of England in relation to
the macroeconomic recession, with London experiencing less change in unemployment
rates compared to the North of England. As the macroeconomic recession coincided with
the Time to Change campaign and because changes in regional unemployment rates could
have been associated with changes in stigma outcomes, change in regional unemployment
rate was included as a covariate in the regression model when examining the relationship
between regional campaign awareness changes in mental health related knowledge,
attitudes and intended behavior.
Statistical analysis
We present the annual mean item score of the English population for attitude items related
to (i) prejudice and exclusion and (ii) tolerance and support for community care. We also
present an extrapolated linear trend line for the years 2009-2013 which project what
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population attitude scores may have been without the Time to Change campaign. The trend
is based on earlier time points continuing along the same trend. Unadjusted and adjusted
linear regression models examine factors associated with (i) prejudice / exclusion and (ii)
tolerance and support for community care. Both attitude outcomes variables were
standardised according to the z-score. Independent variables included: gender, age
(categorical: 16-24, 25-44, 45-64 and 65+). To examine whether there was a change over
time, we included year as a continuous variable. For these models, we did not impute
attitude data for years where data were not collected. We assigned each year a value in
relation to the number of years following baseline data collection. To investigate whether
there was a change in attitude score after relative to before the campaign, we included a
binary variable pre / post. In order to better understand whether the time trend had changed
after relative to before the campaign, we also included an interaction term between year
and pre / post.
In addition to examining trends over time at the national level, to better understand if there
was a dose effect relationship between campaign awareness and reduction in stigma we
investigated factors associated with regional improvements in mental health related
knowledge, attitudes and intended behaviour, within each geographical region of England
(i.e., North East, North West, Yorkshire and Humberside, East Midlands, West Midlands,
East of England, London and South East). We examined changes in stigma between 2009
and 2013. Multivariable models were fitted to data aggregated by region. Multivariable
linear regression models adjusted by region were used to estimate the mean change in
standardised knowledge, attitudes (prejudice / exclusion and tolerance / support for
community care) and intended behaviour scores by region. Estimates and 95 percent
12
confidence intervals are presented for each of the outcomes. Model covariates included:
campaign awareness, regional unemployment rate and within region baseline knowledge,
attitude and intended behaviour score. Survey sampling weights were applied in all analyses
so that respondents reflected a nationally representative sample in terms of socio-
demographic characteristics within each region of England. For all regression models, we
formally tested whether the data met the regression assumptions. We tested for normality
of residuals and heteroscedasticity using scatterplots and quantile-quantile plots. To check
for multicollinearity, we examined tolerance (reciprocal of the variance inflation factor) and
we did not identify any values less than 0.1. We also examined non-linearity by plotting the
independent vs. dependent variable and found no indication of violation of the
assumptions. Akaike’s Information Criteria (AIC) was used to evaluate the goodness of fit of
the regression models. Analyses were carried out using SAS version 9.3.
Results
Table 1 provides a summary of survey respondent characteristics in terms of gender, age,
and socioeconomic group, by survey year.
TABLE 1 ABOUT HERE
Figure 1 displays the mean weighted population attitude scores for the prejudice / exclusion
factor and the tolerance for community care factor. Actual population attitudes from 2003-
2013 are depicted alongside simulated linear trend lines for the years 2009-2013 which
project what population attitude scores may have been without the Time to Change
campaign.
13
FIGURE 1 ABOUT HERE
Table 2 describes factors associated with more positive attitudes regarding; (i) tolerance and
(ii) prejudice and / or exclusion. The unadjusted analyses suggest that attitudes related to
prejudice / exclusion are becoming more positive over time (year) at 0∙014 standard
deviations per year (p <0∙001). The analysis also shows that attitudes were significantly
more positive after the Time to Change campaign compared to before the campaign (p
<0∙01). In the multivariable analysis, we also investigated the interaction between year and
pre / post (i.e., before and after the Time to Change campaign) to see whether the change
was significantly more positive following the campaign compared to before the campaign
was launched and the interaction term was positive and significant (p <0∙05). Additional
factors associated with more positive attitudes in relation to prejudice / exclusion include:
female gender, higher social class and being less than 65 years of age.
Attitude trends regarding tolerance, were similar to those related to prejudice / exclusion,
though the adjusted interaction term for time by pre / post was not significant in the
multivariable analysis (p=0∙27). The unadjusted analyses suggest that attitudes related to
tolerance improved over time, to a slightly greater degree compared to prejudice /
exclusion , i.e., 0∙021 standard deviations per year (p<0∙001) and that attitudes regarding
tolerance were significantly more positive after the Time to Change campaign (p<0∙01).
Additional characteristics associated with greater tolerance include: female gender, being of
middle age (i.e., 45-64 compared to 65+) and higher socioeconomic status. Individuals aged
16-44 were significantly less tolerant compared to individuals greater than or equal to 65
years of age.
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TABLE 2 ABOUT HERE
Table 3 describes factors associated with regional changes in mental health related
knowledge, attitudes and intended behavior (during the years 2009-2013), specifically
addressing the question of whether there is a ‘dose effect’ relationship between campaign
awareness and intended reduction in stigma. In the multivariable models, level of regional
campaign awareness was associated with increased knowledge (p =0∙004) and tolerance
(p<0∙0001) and decreased prejudice (p =0∙001); but, not intended behaviour (p =0∙20). All
models controlled for baseline stigma (mean knowledge, tolerance, prejudice and intended
behaviour score per region in 2009). This was significant in all models suggesting that those
regions with lower levels of tolerance at baseline (in 2009) had greater increases in
tolerance over the period of the campaign (i.e., 2009-2013). We also examined how change
in unemployment rate (over the years 2007 to 2013) was related to change in stigma
outcomes. In the unadjusted models, an increase in unemployment rates was associated
with less positive changes in knowledge, prejudice and intended behaviour scores; however,
these relationships were not significant in the multivariable model.
TABLE 3 ABOUT HERE
We further investigated the relationship between campaign awareness and intended
reduction in stigma by looking at an index of regional familiarity with the Time to Change
campaign in relation to stigma outcomes. In the multivariable regression models, level of
regional campaign familiarity was associated with increased knowledge (z-score estimate =
0.58, p =0∙001), increased tolerance (z-score estimate = 0.58, p<0∙0001), and lower levels of
prejudice (z-score estimate = 0.51, p =0∙008). There was, however, no significant association
with intended behaviour (z-score estimate = 0∙32, p =0∙26).
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Discussion
This study investigated trends in mental health related knowledge, attitudes and intended
behavior among a representative sample of the English population. We were able to look at
trends in population attitudes beginning in 2003 (six years before the initiation of the Time
to Change anti-stigma campaign in 2009). Our findings suggest that there was a step change
increase and also a change in the slope associated with prejudice / exclusion attitudes
following the launch of the Time to Change campaign, though this trend was not significant
for tolerance and support for community care attitudes. This follows an earlier trend of
decline in positive attitudes in England during the decade before 2003.7 We also identified
factors associated with regional variation throughout England for changes in knowledge,
attitudes and intended behavior from 2009 to 2013. These analyses support the hypothesis
of a dose-effect relationship between campaign awareness (regional prevalence of
respondents reporting awareness of the Time to Change campaign) and regional increases
in knowledge, prejudice / exclusion related attitudes and tolerance and support for
community care; but, not intended behavior.
In term of long terms trends, our findings suggest that population attitudes related to
prejudice / exclusion demonstrated a greater positive change following the Time to Change
campaign compared to those related to tolerance and support for community care (which
did not demonstrate a significant difference). This suggests that the campaign may have
been better at disconfirming negative ideas around prejudice and exclusion rather than
enhancing positive attitudes and support.18 The value of long term data, establishing
baseline trends and investigation of contextual factors is further emphasized in the context
16
of previous findings which suggested a decline in positive attitudes in England from 1993-
2003 which may have been influenced by implementation of mental health reforms.7 It is
possible that other factors in the sociopolitical context which coincided with the launch of
the Time to Change campaign contributed to the differential change or mediated the
influence of the campaign; however, given that the launch of Time to Change coincided with
an economic recession, it is not likely that this would have been associated with a natural
increase in positive attitudes.2,22,23 This, however, does not eliminate the possibility that
other factors may have mediated or influenced changes in public stigma. There was a
significant positive change in tolerance and support for community care attitudes between
2008 and 2009 and it is unclear what precipitated this change. There were community level
activities including: Get Moving! A Mass Participation Event and local and regional grass
roots projects mainly run by service users such as ‘Open Up’, which were launched during
2008 as a part of Time to Change. These, however, were small scale projects and thus it is
not likely that they account for the entire change. Stephen Fry also released a documentary
‘The Secret Life of the Manic Depressive’ which gained significant popularity and won an
Emmy award for the best documentary in 2007. It is possible that these factors contributed
toward the change, but these conclusions are post-hoc and so we cannot be certain about
the specific event or combination of events which influenced this change in attitudes related
to tolerance.
Similar to other studies5,17 this research showed that females and individuals from a higher
socio-economic group tended to have greater tolerance / support for community care and
less prejudice / exclusion compared to males, though to a greater extent for attitudes
17
related to prejudice / exclusion than those related to tolerance / support for community
care. Relationship between age and attitudes differed for the two constructs. Attitudes
related to tolerance / support for community care showed a u-shaped curve (with those
aged 45-64 having the best attitudes) and those related to prejudice / exclusion showed a
more linear trend with attitudes improving as age increased, except for those greater than
65 years; however, we cannot be certain whether these are due to fluctuations in attitudes
over the life span or a cohort effect.
The findings also suggest that there was a dose response relationship between campaign
exposure and stigma outcome in those regions which achieved greater awareness of the
Time to Change campaign also demonstrated greater positive increases in knowledge and
attitudes, when controlling for baseline stigma score and unemployment rates. This
suggests that even at the aggregate level, increased campaign activity was associated with
greater positive increases in knowledge and attitudes. It could be that increased campaign
activity and awareness / engagement could facilitate a type of herd immunity in which
communities become protected against stigma with increasing exposure. This dose
response relationship, however, was not evident for the intended behaviour outcome.
Although previous findings suggested that there was a positive and significant relationship
between awareness of the Time to Change campaign and intended behaviour score24 and a
significant overall positive increases in intended behavior from 2009 to 2012,11 a dose effect
relationship, in terms of campaign awareness at the regional level was not evident in these
data. It could be that we did not have sufficient data points to identify a relationship here.
However, it could also be that level of awareness of the social marketing campaign is less
important for improving population intended behavior compared to other types of more
18
active campaign engagement. Changes at the community level are likely to result both from
direct exposure to campaign media but also indirect effects facilitated by e.g., increasing
discussion and openness around mental health problems in the community. We were not
able to measure ‘grassroots activity’ at the local level or amount of ‘face-to-face contact’
which occurred. This is important as it has been suggested that this type of activity is the
most relevant when trying to achieve meaningful behaviour change.25
Strengths / Limitations
We had several years of data from a large nationally representative sample of individuals,
including population stigma indicators before and after the launch of the Time to Change
anti-stigma campaign which allowed us to establish a trend and to infer whether the pattern
changed significantly following the launch of the campaign. Although we collected data on
several stigma related outcomes between 2009 and 2013, only attitude data were available
before 2009 and these data were not collected annually. Additionally, campaign awareness
was not available before 2011 and so we cannot track this over time alongside the
indicators. Intensity of campaign activity varied throughout England and we were able to
look at the dose response relationship by region; however, we could not investigate
anything smaller than regional level. Moreover, there were no regions without anti-stigma
campaign activity which could act as a control group. Identifying an appropriate, non-
exposed control group is a significant challenge when evaluating such large scale national
interventions. Smaller scale controlled experiments would allow for a control group but
these would not tell us about the campaign’s potential to work in real life as a national
programme and the indirect effects which may result in relation to the intervention.
19
Although the lack of a control group makes it difficult to know to what extent changes are
attributable to the Time to Change campaign, we have used various methods, for example,
time trend and dose effect relationship, to triangulate our findings. We have also accounted
for secular trends, such as changes in unemployment rates associated with the economic
recession in the analysis to the extent possible. We assessed different individuals at each
time point to establish population trends, but were not able to look at change among the
same individuals over time. These data however, do represent an indicator, from the
perspective of the population. As all data were self-report data, it is possible that social
desirability influenced responses.26
Although our data comprise several different attitude statements, we do not look at how
each attitude changed over time. We focus on attitude trends at an aggregate level and so
we don’t report on how, for example, views about dangerousness have changed over time.
We do, however, explore specific attitudes in relation to the Time to Change social
marketing campaign elsewhere.24 Our data do not allow us to differentiate stigma outcomes
by type of mental illness. This is a limitation as attitudes may vary according to condition; for
instance, levels of stigma are generally lower for depression compared to schizophrenia.27
Additional research suggests that the general public associates the term 'mental illness' with
severe conditions28 and that variations in the conceptualisation of mental illness are related
to likelihood of disclosure and seeking help for a mental health problem.29 Future work
should consider how to better understand these variations in types of stigma and how these
may be addressed and evaluated in anti-stigma interventions.30;31
Conclusions
20
The effects of the Time to Change campaign to reduce stigma and discrimination among the
English adult population appear to be significant but moderate. It is encouraging that
attitudes continued to become more positive during a period of macroeconomic recession
and at a time when there is little evidence for positive increases elsewhere.9 Although
attitudes may be more at risk of decline during times of hardship, social marketing and anti-
stigma activity may provide an opportunity to reduce stigma and discrimination. Future
studies would benefit from more directly tying population indicators related to stigma and
discrimination against people with mental health problems to social, health and economic
consequences for people with mental health problems.1,6,12 and to investigate both direct
and indirect pathways to change in public stigma.
Panel: Research in context
Systematic Review
To identify scientific papers which have investigated trends in public stigma against people
with mental health problems and effectiveness of population level anti-stigma
interventions, we searched Medline and Web of Knowledge with search terms including:
public attitudes, mental health literacy, stigmatization, anti-stigma campaigns.
Interpretation
This study provides new evidence on trends in public attitudes in relation to people with
mental health problems across England over ten years. Findings suggest a step change
increase and also a change in the slope associated with prejudice / exclusion attitudes
following the launch of the Time to Change anti-stigma campaign, though this trend was not
21
significant for tolerance and support for community care related attitudes. This follows an
earlier trend of decline in positive attitudes in England during the decade before 2003. We
also found evidence for a dose-effect relationship between campaign awareness and
regional positive increases in knowledge and attitudes, but not intended behaviour. The
positive effects of Time to Change appear significant and moderate. Although attitudes may
be more at risk of deterioration during times of economic hardship, anti-stigma
programmes may still play an active role in long-term reduction of stigma and
discrimination.
Acknowledgments
We are grateful for the feedback and collaboration on the evaluation from Sarah Hamilton
and Vanessa Pinfold, both based at The McPin Foundation. We would also like to thank Sue
Baker, Paul Farmer, Maggie Gibbons and Paul Corry, for their collaboration.
22
Figure 1. Population attitude trends across England 2003 - 2013
Note: Estimates for population attitude scores for the years 2004, 2005 and 2006 are
based on a linear trend based on the closest year that data were available i.e., years
2003 and 2007.
* The prejudice / exclusion subscale was reverse coded so that all results could be
calculated in a way where going up indicated more positive and / or less stigmatizing
attitudes.
3.6
3.8
4.0
4.2
2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013
Prejudice / exclusion - Reverse coded*
Tolerance / support for community care
Prejudice / exclusion - Reverse coded* (simulated with no campaign)
Tolerance / support for community care (simulated with no campaign)
Official launch of Time to Change anti-
stigma social marketing campaign
23
Table 1. Participant characteristics stratified by survey year (unweighted frequency and weighted percentage)
2003 n=1897
n (%)
2007 n=1729
n (%)
2008 n=1703
n (%)
2009 n=1751
n (%)
2010 n=1745
n (%)
2011 n=1741
n (%)
2012 n=1717
n (%)
2013 n=1727
n (%)
Gender n (%)
Female 864 (48.8) 798 (48.7) 778 (48.3) 939 (51.5) 939 (51.7) 912 (51.5) 924 (51.3) 801 (49.0)
Male 1033 (51.3) 931 (51.3) 925 (51.7) 812 (48.5) 806 (48.3) 829 (48.5) 793 (48.7) 926 (51.0)
Age n (%)
16-24 275 (13.7) 206 (13.9) 188 (13.2) 247 (14.3) 240 (14.1) 322 (20.5) 258 (14.6) 289 (14.6)
25-44 693 (37.8) 581 (34.8) 562 (36.0) 633 (35.9) 540 (35.1) 450 (29.8) 580 (34.8) 568 (36.1)
45-64 543 (29.4) 526 (31.2) 525 (32.1) 512 (31.3) 549 (31.5) 340 (21.1) 506 (31.3) 486 (31.0)
65+ 386 (19.1) 416 (20.1) 428 (18.7) 359 (18.5) 416 (19.4) 629 (28.6) 373 (19.3) 384 (18.3)
Socioeconomic
status n (%)
AB 262 (16.1) 342 (21.3) 315 (21.0) 279 (19.4) 300 (20.2) 322 (20.5) 292 (19.3) 302 (20.5)
C1 499 (30.0) 448 (28.8) 433 (29.6) 454 (32.2) 464 (31.7) 450 (29.8) 456 (31.0) 445 (30.4)
C2 434 (23.0) 409 (20.6) 363 (21.1) 389 (20.8) 342 (19.2) 340 (21.1) 368 (21.6) 362 (20.8)
DE 702 (30.9) 530 (29.2) 592 (28.2) 629 (27.6) 639 (28.8) 629 (28.6) 601 (28.1) 618 (28.4)
24
Table 2. Attitude trends among the English population before and after the Time to Change anti-stigma campaign 2004-20131
Total tolerance/support for community care
attitude score (z-score, unadjusted)
Total tolerance/support for community care
attitude score (z-score, adjusted)
Total prejudice/ exclusion attitudes-
reverse codeda (z-score, unadjusted)
Total prejudice/ exclusion attitudes
reverse codeda (z-score, adjusted)
Gender Female Male
***0∙14 (0∙10, 0∙17)
Reference
***0∙14 (0∙11, 0∙18)
Reference
***0∙20 (0∙17, 0∙23)
Reference
***0∙22 (0∙19, 0∙25)
Reference
Age 16-24 25-44 45-64 65+
***-0∙35 (-0∙41, -0∙30)
***-0∙14, (-0∙18, -0∙09) ***0∙11 (0∙07, 0∙16)
Reference
***-0∙35 (-0∙40, -0∙29) ***-0∙14 (-0∙19, -0∙10)
***0∙10 (0∙06, 0∙15) Reference
**0∙09 (0.03, 0∙14)
***0∙23 (0∙19, 0∙28) ***0∙41 (0∙36, 0∙45)
Reference
***0∙10 (0∙05, 0∙16) ***0∙22 (0∙18, 0∙26) ***0∙39 (0∙35, 0∙44)
Reference
Class AB C1 C2 DE
***0∙24 (0∙19, 0∙29) ***0∙11 (0∙07, 0∙15) ***0∙08 (0∙04, 0∙13)
Reference
***0∙23 (0∙18, 0∙28) ***0∙14 (0∙10, 0∙18) ***0∙11 (0∙06, 0∙15)
Reference
***0∙55 (0∙50, 0∙59) ***0∙34 (0∙30, 0∙38) ***0∙16 (0∙12, 0∙21)
Reference
0∙54 (0∙49, 0∙59)
***0∙34 (0∙30, 0∙38) ***0∙17 (0∙13, 0∙21)
Reference
Year (continuous) ***0∙021 (0∙016, 0∙026) 0∙02 (0∙01, 0∙04) ***0∙014 (0∙01, 0∙02) *0∙03 (0∙01, 0∙05)
Pre/Post TTC2 Post Pre
***0∙12 (0∙09, 0∙16)
Reference
0∙03 (-0∙15, 0∙21)
Reference
**0∙07 (0∙04, 0∙10)
Reference
*0∙16 (-0∙02, 0∙34)
Reference
Year*pre/post -- 0∙01 (-0∙01, 0∙03) -- *0∙02 (0∙01, 0∙05)
*p<0∙05, **p<0∙01, ***p<0∙001
1 All results are given in the form of standardized regression coefficients with 95% confidence intervals in parenthesis.
2 The additional effect (mean difference) between pre and post at initiation of Time to Change (i.e. 2009)
a The prejudice / exclusion subscale was reverse coded so that all results could be calculated in a way where going up indicated more positive and / or less
stigmatizing attitudes.
25
Table 3. Factors associated with regional improvements in knowledge, attitude and
intended behaviour scores following the launch of the Time to Change campaign, 2009-
2013 (linear regression) 1
Change in knowledge score (z-score, unadjusted)
Change in knowledge score (z-score, adjusted)
Campaign awareness achieved in 2013
0∙002 (-0∙01, 0∙02)
**0∙01 (0∙004, 0∙02)
Baseline knowledge score **-0∙03 (-0∙05, -0∙002) ***-0∙03 (-0∙04, -0∙02)
Change in unemployment 2009-2013
*-0∙13 (-0∙27, 0∙01)
-0∙01 (-0∙07, 0∙05)
Change in Tolerance/ support for community
care attitudes (z-score, unadjusted)
Change in Tolerance/ support for community
care attitudes (z-score, adjusted)
Campaign awareness achieved in 2013
0∙004 (-0∙01, 0∙02)
***0∙01 (0∙007, 0∙013)
Baseline tolerance/ support for community care score
**-0∙08 (-0∙13, -0∙03) ***-0∙09 (-0∙11, -0∙08)
Change in unemployment 2009-2013
-0∙13 (-0∙29, 0∙03)
0∙02 (-0∙02, 0∙05)
Change in Prejudice/ Exclusion attitudes
(z-score, unadjusted)
Change in Prejudice/ Exclusion attitudes (z-score, adjusted)
Campaign awareness achieved in 2013
-0∙0004 (-0∙02, 0∙01)
*0∙01 (0∙001, 0∙02)
Baseline prejudice/ exclusion score
**-0∙04 (-0∙08, -0∙004) **-0∙05 (-0∙07, -0∙02)
Change in unemployment 2009-2013
*-0∙13 (-0∙25, -0∙02) -0∙03 (-0∙10, 0∙03)
Change in intended behaviour
(z-score, unadjusted)
Change in intended behaviour
(z-score, adjusted)
Campaign awareness achieved in 2013
-0∙01 (-0∙02, 0∙01)
0∙007 (-0∙004, 0∙02)
Baseline intended behaviour score
**-0∙17 (-0∙25, -0∙08) *-0∙20 (-0∙35, 0∙06)
Change in unemployment 2009-2013
*-0∙16 (-0∙28, -0∙05)
0∙02 (-0∙13, 0∙17)
* p<0∙05, ** p<0∙01, *** p<0∙001
1 All results are given in the form of standardized regression coefficients with 95%
confidence intervals in parenthesis.
26
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