The impact of comorbid personality dysfunction on the outcome of treatment for depression remains unclear. Some systematic reviews have pointed towards there being no association, Reference Mulder1,Reference Kool, Schoevers, de Maat, Van, Molenaar and Vink2 whereas others have reported as much as a twofold increase in poor response among individuals with depression with comorbid personality dysfunction. Reference Newton-Howes, Tyrer and Johnson3 Equally, the nature of the relationship between prior depression and personality dysfunction is unclear. Personality dysfunction may emerge as a complication or ‘scar’ following repeated depressive episodes; indeed currently this is formally recognised in ICD–10, under the category ‘enduring personality change after psychiatric illness’ (F62.1). 4 Nonetheless, empirical support for the category is limited and it remains possible that personality dysfunction may have a pathoplastic effect on the manifestation and course of subsequent depressive episodes. With these issues in mind, we set out to examine the relationship between the number of prior depressive episodes, risk of personality dysfunction and treatment response for current depression in a large out-patient cohort.
Method
The rationale and full details of the methods used in the study are described elsewhere. Reference Gorwood, Corruble, Falissard and Goodwin5 In brief, the original sample was recruited to a previous study devoted to memory impairments in people with major depressive dysfunction. In total 1844 medical doctors included at least 1 depressed patient in the study. Inclusion criteria were as follows: meeting DSM–IV 6 criteria for a major depressive disorder; people for whom a new (or different) prescription of antidepressant had to be made (all antidepressants were accepted in order to reflect usual clinical practice) for a major depressive episode (average length 8.4 weeks, s.d. = 10.8); over 18 years old, speaking fluent French, with social security coverage and able to give informed consent. Exclusion criteria were the diagnosis of bipolar affective disorder and the use of a mood stabiliser in treatment. The DSM–IV criteria for a major depressive episode were assessed by the clinician. The study was approved by the local research ethics committee and all participants gave full written informed consent. A total of 9515 people were included in the study and all were followed up at 6 weeks.
Instruments
The Hospital Anxiety and Depression Scale (HAD) Reference Zigmond and Snaith7 was chosen as a self-report instrument to measure symptom severity and was completed by all participants at the first and the second visit. A score above eight for the depression domain and the presence of five symptoms or more, i.e. the DSM–IV diagnosis of major depressive disorder, were required for inclusion. Responders were defined as having at least a 50% decrease in their depression score between the two visits.
The initial assessment also included the number of past depressive episodes, either treated or not treated with an antidepressant, and the cumulative length of past mood disorder.
A brief screening interview for personality disorders (Standardised Assessment of Personality – Abbreviated Scale, SAPAS) Reference Moran, Leese, Lee, Walters, Thornicroft and Mann8 was also administered to all participants (n = 9515). The SAPAS is a short, simple-to-administer screening test, which demonstrates good psychometric properties. Reference Moran, Leese, Lee, Walters, Thornicroft and Mann8,Reference Hesse, Rasmussen and Pedersen9 The interview consists of eight questions, corresponding to a descriptive statement about the person. Each of the questions can be scored 0 (no) or 1 (yes) and the scores on the eight items are added together to produce a total score of between 0 and 8.
Statistics
Variables, including SAPAS total score, were graphically checked for normality of distribution (quantile–quantile plots) before using parametric statistics.
Parametric correlation (Pearson test) was used to compare two continuous variables, and analysis of variance (ANOVA) for the analysis of the role of a qualitative factor to explain continuous parameters.
Structural equation modelling is a statistical technique for estimating so-called causal relationships using a combination of qualitative causal assumptions. The structural equation modelling was performed, using Mplus software 10 (www.statmodel.com), to analyse the impact of adding the SAPAS score as an intermediate step between the number of past depressive episodes and treatment response, while tackling the impact of confounding factors. In these models, the SAPAS score was considered as an ordinal variable.
Results
The final sample for analysis consisted of 8229 people (86.50% of the initial sample). Individuals were excluded at baseline if the HAD score was below eight for depression and/or anxiety (644 people) or because of missing or incomplete data (n = 642), representing a 13.59% rate of protocol violation and losses to follow-up. The subsample of the latter individuals had shorter length of the present episode (t = 2.15, d.f. = 6798, P = 0.016), were more frequently males (χ2 = 172.9, d.f. = 8, P<0.001) and had a lower final HAD score for depression (t = 3.974, d.f. = 9512, P<0.001) and for anxiety (t = 5.212, d.f. = 9512, P<0.001) and accordingly included a higher proportion of responders (χ2 = 3.71, d.f. = 1, P = 0.012).
At the first visit, the mean SAPAS score was 3.82 (s.d. = 1.82). After 6 weeks of antidepressant treatment, 2424 participants (29.5%) were responders according to the HAD score at the second visit. Their characteristics are displayed in Table 1.
Characteristics | Non-responders (n = 5805) | Responders (n = 2424) | P |
---|---|---|---|
Gender, female: % | 71.25 | 68.19 | <0.001 |
Age, years: mean (s.d.) | 48.94 (14.37) | 45.80 (13.11) | <0.001 |
Marital status (%) | <0.001 | ||
Single | 17.08 | 19.22 | |
Married | 55.24 | 57.34 | |
Divorced | 18.33 | 17.14 | |
Widow | 9.34 | 6.30 | |
Educational level (%) | <0.001 | ||
School | 51.15 | 44.29 | |
College | 29.51 | 31.21 | |
University | 19.34 | 24.50 | <0.001 |
Professional activity (%) | |||
Currently active | 55.49 | 63.57 | |
Unemployed | 12.44 | 12.43 | |
Retired | 20.90 | 14.76 | |
Student | 0.07 | 0.21 | |
Other | 11.10 | 9.03 | |
Number of past episodes, mean (s.d.) | 1.00 (1.48) | 0.87 (1.26) | <0.001 |
Episodes, % | |||
0 episodes | 48.89 | 53.09 | |
1 episode | 26.15 | 24.27 | |
2 episodes | 14.57 | 14.37 | |
3 episode | 6.48 | 5.26 | |
4 episode | 2.40 | 2.21 | |
5 or more episodes | 2.62 | 1.70 | |
Length of current episode, weeks: mean (s.d.) | 8.92 (12.14) | 7.09 (6.80) | <0.001 |
Length of depressive disorder, weeks: mean (s.d.) | 23.00 (37.74) | 17.16 (22.27) | <0.001 |
Average SAPAS score, mean (s.d.) | 3.89 (1.78) | 3.67 (1.91) | <0.001 |
Baseline Hospital Anxiety and Depression Scale score, mean (s.d.) | 28.11 (5.12) | 30.23 (4.98) | <0.001 |
Number of DSM—IV criteria for major depressive disorder, mean (s.d.) | 6.56 (1.29) | 6.75 (1.16) | <0.001 |
Delays between the two visits, days: mean (s.d.) | 41.90 (9.22) | 42.56 (8.17) | 0.001 |
Responders were more likely to be male, younger, single or married (rather than divorced or widowed), of a higher educational level and engaged in professionally active work at baseline. Furthermore, they were depressed for a shorter period of time, regarding the present episode but also the cumulative length of depressive disorder, and, accordingly, had less past depressive episodes (Table 1). Treatment response was indeed associated with a lower number of previous depressive episodes (odds ratio (OR) = 0.931, 95% CI 0.897–0.966, P<0.001). In addition, there was a strong statistical association between the SAPAS score and treatment response, the former being higher in the non-responder group (t = 4.92, d.f. = 8227, P<0.001).
The relationships between the SAPAS score and sociodemographic and clinical variables are displayed in Table 2.
Correlations | Mean comparisons | |||
---|---|---|---|---|
Variable | r | P | F | P |
Number of past episodes | 0.148 | <0.001 | ||
Hospital Anxiety and Depression Scale total score (baseline) | 0.146 | <0.001 | ||
Number of DSM—IV symptoms | 0.129 | <0.001 | ||
Duration of depressive disorder | 0.108 | <0.001 | ||
Educational level | -0.060 | <0.001 | ||
Duration of present episode | 0.055 | <0.001 | ||
Age | -0.003 | 0.788 | ||
Gendera | F(1,8228) = 1.36 | 0.257 | ||
Marital status | F(2,8228) = 5.52 | 0.004 |
The SAPAS score was significantly correlated with all clinical parameters and all sociodemographic factors, except age and gender. The variable most highly correlated (r = 0.148, P<0.001) with SAPAS score was the number of past episodes of depression, and there was a relatively linear association between the two variables (Fig.1).
In order to examine more closely the association between comorbid personality dysfunction and treatment response, we used structural equation modelling. As anticipated, the number of past episodes was robustly associated with treatment response (P<0.001). This association was still observed after controlling for the period of time between the initial and the follow-up visit (which was fixed at 6 weeks, but in fact had some variance), educational status, marital status, gender, professional activity and age (Fig. 2a, P = 0.02). When the SAPAS score was then added to the equation as a mediating variable (Fig. 2b) a highly significant association was detected between SAPAS score and treatment response and with the number of past depressive episodes (P<0.001 for both associations). However, adding this path diminished the role of past depressive episodes below the 5% level of significance (P = 0.21).
Discussion
Main findings
In a sample of more than 8000 out-patients treated for a major depressive episode, the level of personality dysfunction and the number of previous depressive episodes were both associated with poor short-term treatment response. In addition, a linear association was detected between the number of previous episodes of depression and the severity of personality dysfunction. Finally, in a structural equation model examining predictors of treatment response, the number of previous episodes of depression had little impact on treatment outcome, once the effect of other factors, including personality dysfunction, had been controlled for.
Explanations for the detected associations
The two potential but not mutually exclusive explanations for this association are referred to as the ‘scar’ and the ‘vulnerability’ hypotheses. The vulnerability hypothesis states that people with higher levels of personality dysfunction are at increased risk of recurrence of depression Reference Johnson, Cohen, Kasen, Ehrensaft and Crawford10 whereas the alternative scar hypothesis claims that cumulative episodes of depression have a detrimental effect on personality that would secondarily impair treatment response. The ‘scarring’ effect of cumulative depressive episodes on personality has been previously explored. In a prospective study that assessed a sample of 1733 twins from female–female pairs, Kendler et al found that neuroticism was increased after a major depressive episode. Reference Kendler, Neale, Kessler, Heath and Eaves11 Increasing vulnerability through new episodes is also in accordance with the kindling hypothesis proposed by Post. Reference Post12 Conversely, in a 6-year follow-up study of 812 first-degree relatives of people with depression, Shea et al, observed that personality status was relatively unchanged after, compared with before, the episode. Reference Shea, Leon, Mueller, Solomon, Warshaw and Keller13 We were unable to distinguish between these two alternative explanations as personality dysfunction and prior depression were assessed concurrently in our study. Nevertheless, our results from structural equation modelling suggest that the effect of past depressive episodes on treatment response may be accounted for by the level of pre-existing personality dysfunction.
Methodological considerations
To the best of our knowledge, this is the largest study of depression and personality dysfunction to date. We adopted rigorous case definition for depression, a prospective follow-up, and appropriate statistical methods. Nevertheless, there were some limitations.
First, we observed a 29.5% treatment response rate, which may appear low compared with what is generally reported in controlled clinical trials. However, in the STAR*D trial (Sequenced Treatment Alternatives to Relieve Depression), Reference Rush, Trivedi, Wisniewski, Nierenberg, Stewart and Warden14 the participants who were engaged in the second treatment step experienced a response rate of 28.5% after 12 to 14 weeks, very close to the proportion of responders we recorded at 6 weeks.
Second, we deliberately chose to use a brief measure of personality dysfunction, in order to facilitate efficient fieldwork with a large sample in a real-life clinical setting. Arguably, a more detailed measure of personality dysfunction may have been preferable. However, against this, the SAPAS demonstrates good psychometric properties Reference Moran, Leese, Lee, Walters, Thornicroft and Mann8 and is a valid screen for personality disorder.
Third, the SAPAS instrument was designed to screen for personality disorder in a psychiatric setting and we do not know its predictive value in primary care. Furthermore, we restricted the analyses to the global SAPAS score and it is unclear whether the SAPAS is a truly continuous variable in relation to personality. Nevertheless, in a large unrelated study, global SAPAS score has been shown to independently predict retention in treatment for people with personality disorder, over a 30-month period and the global score therefore appears to have predictive validity and thus clinical utility. Reference Crawford, Price, Gordon, Josson, Taylor and Bateman15
Fourth, we assessed personality dysfunction and prior depression concurrently. Acute depression can colour the assessment of personality and hence the personality dysfunction detected in this study could represent a manifestation of depression, Reference Costa, Bagby, Herbst and McCrae16 although self-reports are considered by some authors as concurrently reliable and valid during acute depressive episodes. Reference Costa, Bagby, Herbst and McCrae16
Fifth, the effect size explaining treatment response in this study is weak, which may reduce the utility of the present results at the individual level. Indeed, the standardised regression coefficient between the number of past episodes and treatment response, when all confounders are being controlled for, is of small amplitude (r = −0.03). Nevertheless, numerous factors are known to be involved in treatment response, and were also detected in our sample (Table 1). Controlling for such a larger number of important variables (with the structural equation modelling) is logically reducing the regression coefficient. Independent replication of the present finding would be the most appropriate approach to eliminate a chance finding.
Finally, we did not measure a number of potential confounding factors, including comorbid addiction – such factors would be important to capture in any future attempts to replicate our findings.
The relative ‘vulnerability’ and ‘scarring’ effects on treatment response were difficult to disentangle in this study and further research should investigate this issue within prospective studies with multiple assessment periods. From a clinical perspective, comorbid personality dysfunction should not be regarded as an inescapably poor prognostic indicator. However, our findings emphasise the challenging requirement of treating both personality dysfunction and depression, and hence the potential merits of combining complex psychotherapeutic interventions with pharmacological treatments for depression.
Funding
The present work was supported by a research grant from Servier.
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