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Psicologia, Saúde & Doenças

versão impressa ISSN 1645-0086

Psic., Saúde & Doenças vol.16 no.2 Lisboa set. 2015

https://doi.org/10.15309/15psd160204 

The economic recession and mental health: analysis of the Portuguese situation

A recessão económica e a saúde mental: análise da situação portuguesa

 

João Nuno Ribeiro Viseu 1, Saul Neves de Jesus 1, Rita Leal1 , Patrícia Valle 1 , Joana Santos1Rafaela Dias Matavelli1, & Esther Greenglass2

1 Research Centre for Spatial and Organizational Dynamics, University of Algarve, Faro, Portugal;

2 York University, Department of Psychology, Toronto, Canada.

 

Endereço para Correspondência

 

ABSTRACT

Recently, some European countries (e.g., Greece, Ireland, and Portugal) suffered an economic recession, mainly due to problems in the banking system and high sovereign debt. Economic stressors, such as economic hardship, financial threat, and financial well-being may contribute negatively to individuals’ psychological health, potentiating the appearance of negative psychological outcomes. The objective of the current research was to analyze the impact of economic stressors (i.e., economic hardship, financial threat, and financial well-being) on mental health indicators (i.e., stress, anxiety, and depression). Data from a sample of 729 Portuguese participants was collected, 482 (66.1%) women and 247 (33.9%) men, with an average age of, approximately, 37 years old (M=36.99; SD=12.81). Structural Equation Modeling (SEM) was used to examine the relationship between the economic stress and psychological health variables. The obtained results demonstrated a model with economic hardship and financial threat as significant predictors of stress, anxiety, and depression, while financial well-being was a significant predictor of anxiety and depression. Some implications of these results are discussed.

Key-words: Anxiety, depression, economic stressors, mental health, stress

 

RESUMO

Recentemente, alguns países europeus (e.g., Grécia, Irlanda e Portugal) sofreram uma recessão económica, principalmente devido a problemas no sistema bancário e a uma elevada dívida soberana. Stressores económicos, tais como dificuldades económicas, ameaça financeira e bem-estar financeiro podem contribuir negativamente para a saúde psicológica dos indivíduos, potenciando o aparecimento de psicopatologia. O objetivo da presente investigação foi analisar o impacto de stressores económicos (i.e., dificuldades económicas, ameaça financeira e bem-estar financeiro) em indicadores de saúde mental (stresse, ansiedade e depressão). Foram recolhidos dados de uma amostra de 729 participantes portugueses, 482 (66,1%) do género feminino e 247 (33,9%) do masculino, com uma média de idades de, aproximadamente, 37 anos (M=36,99; DP=12,81). Foi utilizado um Modelo de Equações Estruturais para examinar a relação entre as variáveis de stresse económico e saúde psicológica. Os resultados obtidos apresentaram um modelo em que as dificuldades económicas e a ameaça financeira eram preditores significativos de stresse, ansiedade e depressão, ao passo que o bem-estar financeiro se assumiu como uma variável preditora da ansiedade e depressão. Algumas implicações destes resultados são discutidas.

Palavras-chave: Ansiedade, depressão, saúde mental, stresse, stressores económicos.

 

The current global economic downturn, which emerged in 2007, has had a negative impact on economies all over the world (Yurtsever, 2011). Various countries (e.g., Greece, Ireland, and Portugal), have been facing problems in the banking system and vulnerabilities in the sovereign debt (Monastiriotis, 2013). In order to deal with these situations, some countries (e.g., Portugal) have implemented austerity measures (Monastiriotis, 2013).

Economic downturns generate uncertainty in populations (Cooper, 2012), especially because of decreases in: (a) job security; (b) wages; (c) social service benefits; and (d) healthcare expenditures (Keegan, Thomas, Normand, & Portela, 2013; Marjanovic, Greenglass, Fiksenbaum, & Bell, 2013). On the other hand, increases in: (a) debt levels; (b) investment losses; (c) unemployment, mainly youth unemployment; and (d) household costs, also contribute to an increase in threat perceptions (Boone, van Ours, Wuellrich, & Zweimuller, 2011; Keegan et al., 2013; Mielcova, 2012).

Personal financial situations have worsened, for some to the point of exasperation (Barr, Taylor-Robinson, Scott-Samuel, McKee, & Stuckler, 2012). According to a study of Sperling, Bleich, and Reulbach (2008), the public’s initial reaction to the crisis was characterized by fear, anxiety, and a generalized sense of panic. Several years into the crisis, the mood of populations about their health and the trajectory of their economies remains largely negative (Barr et al., 2012). Health-related consequences, such as substance abuse (e.g., alcohol), coronary heart problems, and suicide are common in difficult economic periods (Catalano, 1991; Ferrie, Kivimaki, Shipley, Smith, & Virtanen, 2013; Vijayasiri, Richman, & Rospenda, 2012).

Recent studies across the social sciences have shown that the deterioration of personal finances, which is itself exacerbated by economic downturns, is a major source psychological turmoil (Althouse, Allem, Childers, Dredze, & Ayers, 2014; Astell-Bur & Feng, 2013; Catalano et al., 2011; Sargent-Cox, Butterworth, & Anstey, 2011). In fact, studies have linked personal financial problems as a contributing factor to a wide array of negative psychosocial outcomes, such as psychological distress, mental illness (Fitch, Hamilton, Bassett, & Davey, 2011), depression (Mirowsky & Ross,2001), dissatisfaction with life, and dysfunctional impulsivity (Bechtel, 2012; Norvilitis, Szablicki, & Wilson, 2003).

A set of studies that indicate the existence of an association between the aforesaid constructs (i.e., distress, anxiety, and depression) and economic hardship, financial threat, and financial well-being (i.e., economic stressors) is presented below.

In Catalano’s (1991) review about the effects of economic insecurity in health, it was demonstrated that stress levels increase during adverse economic periods. Aspects such as unemployment, an aspect that rises in economic recessions, is also associated with distress (Catalano et al., 2011). Two researches (Butterworth, Rodgers, & Windsor, 2009; Sargent-Cox et al., 2011) observed that anxiety and depression were significantly correlated with economic hardship. Similar results were verified by Greenglass, Marjanovic, and Fiksenbaum (2013). A recent study (Leal, Viseu, Jesus, Paixão, & Greenglass, 2014), conducted in Portugal, presented some explanatory results about the influence of financial threat and economic hardship on the variance of stress, depression, and anxiety.

If financial satisfaction is an integral component of overall life satisfaction and well-being (Stevenson & Wolfers, 2008), than the accumulation of stressful financial events may cause financial stress and lower financial well-being. Norvilitis et al. (2003), Diener, Ng, Harter, and Arora (2010), and Stevenson and Wolfers (2008) demonstrated that perceived financial well-being is related to one’s overall psychological well-being. Research has also shown that lack of financial well-being may cause social, physical, and emotional stress (Weisman, 2002).

In the Portuguese case, it is very important to study the psychological impact of the economic crisis. This country was the third, within Europe, to have an assistance program developed by the International Monetary Fund (IMF), European Comission (EC), and European Central Bank (ECB) (Yurtsever, 2011). However, before the execution of the abovementioned program, Portugal was already implementing austerity measures defined by the country’s Government (Cabral, 2013). Cabral (2013) argued that the main consequences of the Portuguese crisis were: (a) high sovereign debt; (b) high external debt; and (c) lack of equilibrium in the balance of payments, since the volume of imports was higher than the level of exports. Wage cuts, reduction of retirement pensions, and a large increase in taxes, namely in the value-added tax (VAT), were the key financial consolidation measures introduced (Cabral, 2013). As a result, and due to the external environment of the country, it was verified, between 2007-2013, a growth in the number of companies that requested insolvency or bankruptcy (Directorate-General for Justice Policy, 2013) and a raise in unemployment taxes, between January-April of 2011 Portugal had 12.4% unemployment rate, nevertheless that value expanded to 15.8% between January-April 2012 (Cabral, 2013). Relating to youth unemployment, it was possible to observe an enlargement of this rate by about 20% between late 2010 and January-March of 2013 (2010: 23%; 2012: 40%; January-March 2013: 42.1%) (Statistics Portugal, 2013). As a consequence of this situation, there has been an increased flow of emigration in highly qualified graduates (Cairns, 2013).

The objectives of the current research were to analyze the relationship between economic stressors (i.e., economic hardship, financial threat, and financial well-being) and mental health indicators (i.e., stress, anxiety, and depression) (figure 1). This paper aims to contribute to the current state of the art about the effects of the current economic recession in mental health, presenting the case of a country, Portugal, which was severely affected by this adverse economic environment.

 

 

To accomplish this objective, nine research hypotheses were proposed:

To sum up, the following hypotheses were defined:

H1. Financial threat positively influences stress.

H2. Financial threat positively influences anxiety.

H3. Financial threat positively influences depression.

H4. Economic hardship positively influences stress.

H5. Economic hardship positively influences anxiety.

H6. Economic hardship positively influences depression.

H7. Financial well-being positively influences stress.

H8. Financial well-being positively influences anxiety.

H9. Financial well-being positively influences depression.

 

Method

Participants

The study’s sample was composed by 729 Portuguese participants who answered a research protocol designed by Greenglass (2008). In the present research economic stressors (i.e., economic hardship, financial threat, and financial well-being) and mental health indicators (i.e., stress, anxiety, and depression) were evaluated. The respondent’s mean age was, approximately, 37 years old (M=36.77; SD=12.81). A description of the sample is presented in table 1.

 

 

Material

Economic hardship was measured by the Economic Hardship Questionnaire (EHQ) (Lempers, Clark-Lempers, & Simons, 1989), which presented 10 items with four answer options (1 – Never; 4 – Very often). In its’ validation study (Lempers et al., 1989) this questionnaire presented a Cronbach’s Alpha of 0.85 (M=2.49; SD=0.65).

In turn, financial threat was assessed by the Financial Threat Scale (FTS) (Marjanovic et al., 2013) composed by five items organized in a five-point Likert-scale (1 – Not at all; 5 – Extremely Uncertain). In the validation study of FTS (Marjanovic et al., 2013) a Cronbach’s Alpha value of 0.91 was obtained (M=3.30; SD=0.86).

Financial well-being was evaluated with the Financial Well-Being Scale (FWBS) (Norvilitis et al., 2003) that included eight items with a five-point Likert-Scale (1 – Strongly Disagree; 5– Strongly Agree). The Cronbach’s Alpha achieved in the validation process of FWBS (Norvilitis et al., 2003) was 0.74 (M=24.77; SD=5.92).

Lastly, stress, anxiety, and depression were measured by the Depression Anxiety Stress Scale 21-item version (DASS-21) (Lovibond & Lovibond, 1995), using the adapted version for the Portuguese population of Pais-Ribeiro, Honrado, and Leal (2004). This scale was composed by 21 items, seven items for each construct (i.e, stress, anxiety, and depression), and possessed a four-point answer scale (0 - Did not aply to me at all - Never; 3 - Applied to me very much, or most of the time - Almost Always). The Cronbach's Alpha of this scale for the constructs stress, anxiety, and depression was, respectively: (a) 0.92 (M=7.17; SD= 5.39); (b) 0.90 (M=4.06; SD=4.51); and (c) 0.86 (M=4.85; SD=4.84) (Lovibond & Lovibond, 1995). In the adaptation study for Portugal, the Cronbach’s Alpha values achieved were higher than 0.70 (Pais-Ribeiro et al., 2004).

Procedures

The questionnaire, developed by Greenglass (2008), was applied between March-June 2013, through an online survey which was distributed via an email that explained the objectives of the research and provided information about the response link. An inclusion criterion set for the questionnaires’ answer was that the respondents had to be over eighteen years old. As a result, responses from participants younger than the abovementioned age were excluded from the sample. The contacted participants were integrated in a contact database created from previous researches at a Portuguese University. Furthermore, in the email sent to the participants, they were asked to forward that message to their personal contacts. In the instructions section of the questionnaire, which preceded the presentation of the instruments, a paragraph was included informing potential participants that all the obtained responses were confidential and the information provided by the respondents would only serve the purpose of this study.

Data Analysis Methods

In a first moment, an exploratory reliability analysis was conducted on the study’s variables and items that compose their measurement. Some items’ scale on one measure were reverted, in order that high values in all items express the same positive or negative perception on that measure. To assess the measures’ reliability, the commonly indicators of scale reliability, Cronbach’s Alpha and the Cronbach’s Alpha if Item Deleted, were observed. The Corrected Item-Total Correlation (CI-TC) was computed, in order to inform about the relationships between individual items and each scale. Items with a CI-TC lower than 0.3 can be excluded from the scale, since they reveal a weak correlation with it (Betz, 2000). The items that were not eliminated as a result from the reliability analysis were considered as indicators in the structural equation model (SEM) used to test the research hypotheses (Table 2).

 

 

SEM requires that data follows a multivariate normal distribution. There is no consensus about the departures from normality that compromise the conclusions about the quality of the model (Finney & DiSefano, 2006). However, these authors and others (e.g., Curran, West, & Finch, 1996) refer that the most commonly used estimation methods in SEM, the maximum likelihood (ML) and the generalized least squares (GLS) estimation methods, still produce proper results if items report skewness and kurtosis values lower than 2 and 7, respectively. Regarding our study, all items presented in Table 2 fulfilled this condition. SEM was then used to examine the relationship between the economic stress variables and the psychological health variables. AMOS 20 was used to estimate and evaluate the model and the ML estimation method was applied. The analysis of the overall model fit relied on three types of measures: (a) absolute fit; (b) incremental fit; and (c) parsimonious fit (Hair, Anderson, Tatham, & Black, 1998). The measurement model was assessed in terms of reliability and (convergent and discriminant) validity. The research hypotheses were tested by observing the sign and statistical significance of the estimated path coefficients.

 

Results

Overall model fit

Overall model fit indicates the extent to which the chosen indicators represent the hypothesized constructs. Regarding the absolute fit evaluation, the Chi-square statistics is high and statistically significant (χ2=2001.65; p < 0.0001), failing to support a non-significant difference between the actual and the predicted models. However, since this statistics is quite sensitive to sample size and model complexity, other indices assessing the discrepancy between the actual and the predicted models should be observed (Anderson & Gerbing, 1982). The results for these indices are summarized in Table 2. The Goodness of Fit Index (GFI) and the Root Mean Square Error of Approximation (RMSEA) are 0.86 and 0.06, respectively. The registered fit value for the RMSEA can be considered as satisfactory, however the value of the GFI (0.86) is lower than the cut-off of 0.90, which indicates a good fit according to Marôco (2014). Nonetheless, due to the proximity of these values (i.e., 0.86 and 0.90) it was decided to accept the GFI score, considering it as suggesting an acceptable fit. Incremental fit measures, which compare the model’s fit compared to a null model (i.e., a model with no relations among the constructs and the indicators), ranged from 0.84 to 0.92, suggesting a moderate to good incremental adjustment. The same finding applies to the parsimonious fit indices that assess the model’s goodness of fit, but considering the number of parameters being estimated.

Measurement model fit

Before assessing the structural model (and thus make conclusions about the research hypotheses), an adequate measurement model is necessary (Anderson & Gerbing, 1982). So, with an acceptable overall model fit, our evaluation proceeds with the analysis of the measurement model in terms of reliability and validity (Table 3). Starting with individual reliability, we can see that all standardized factor loadings are higher than the threshold value of 0.5 and are significant at the 0.01 level (p < 0.0001).

 

 

These results show that all indicators are positively and significantly related to their specified constructs. Construct reliability is also very good since the Cronbach’s Alpha and the composite reliability (CR) coefficients exceed 0.8 (Kline, 1998).

The average variance extracted (AVE) is a commonly used measure of convergent validity showing the degree to which items’ behaviour is explained by the construct. One construct is considered to have sufficient convergent validity when its AVE is higher than 0.5 (Fornell & Lacker, 1981). In our study, all six constructs surpass this threshold value. Lastly, discriminant validity evaluates the extent to which the indicators of one construct are not too related with other constructs. A commonly used way to detect discriminant validity is to verify if the AVE value for one construct is higher than any squared correlation between this construct and the remaining. Table 4 shows that discriminant validity is upheld for our measurement model regarding both the economic stress variables (variables 1 to 3) and the psychological health variables (variables 4 to 6).

 

 

Structural model parameters

Figure 2 shows the standardized path estimates on the model itself. Results show that all estimated coefficients have the expected positive signal. With the exception of the path relationship between stress and financial well-being, all paths proposed in the conceptual model are statistically significant (p < 0.01). So, excluding hypothesis 7, all the research hypotheses are not rejected, supporting causal relationships among the economic stress variables and the psychological health variables. The squared multiple correlations (SMC) for the endogenous constructs (i.e., stress, anxiety, and depression) are within the ellipses. The low values for the SMCs are not surprising, because it is expected that other constructs, not considered in this study, are also important predictors of the psychological health variables. Since the regression weights are standardized, we can conclude that the stronger relationships are those involving economic hardship and stress (path estimate = 0.26), on one hand, and financial threat and stress (path estimate = 0.24), on the other hand. The weaker relationships were found between financial well-being and depression (path estimate = 0.11), and economic hardship and depression (path estimate = 0.18).

 

 

Discussion

In sum, our study demonstrated that during phases of economic turmoil aspects like financial threat and economic hardship (i.e., economic stressors) have a significant impact on stress, anxiety, and depression (i.e., mental health indicators). The obtained results are congruent with the existing literature. The reviews of Catalano (1991) and Catalano et al. (2011) verified that symptoms of stress, anxiety, and depression increase in periods of economic recession. Past researches performed by Butterworth et al. (2009), Greenglass et al. (2013), and Sargent-Cox et al. (2011) demonstrated that anxiety and depression are highly correlated with adverse financial cycles. Lastly, Leal et al. (2014) also observed the existence of a significant impact of economic stressors on mental health indicators. However, although financial well-being has been significantly associated with anxiety and depression, it was not a significant predictor of stress. This is partially confirmed by other studies (e.g., Weisman, 2002; Norvilitis et al. 2003), which have demonstrated that perceived financial well-being is related to one’s overall psychological well-being. 

In other words, our data confirms that, overall, the economic recession influences individual’s psychological health, since economic stressors (i.e., economic hardship and financial threat) are significant predictors of mental health indicators (i.e., stress, anxiety, and depression). Therefore, the present research contributes to the current state of the art about the psychological impact of the economic recession, since eight of the nine hypotheses created were confirmed, and the only hypothesis that was not confirmed, given that the statistical results were not significant, pointed in the same direction, the existence of an influence of economic stressors on subject’s mental health.

Future researches performed about the relationship established between economic stressors and mental health indicators should use other methodological designs (e.g., longitudinal designs), because that will allow comparisons between the aforementioned aspects in distinct economic periods (e.g., economic recession vs. economic growth). Furthermore, the sampling criteria ought to be more accurate, including subjects that belong to different social and economic backgrounds. Another interesting proposal is try to understand the reason why financial well-being does not have a significant impact on stress. Ultimately, it would be useful to realize similar studies in other European countries affected by financial crises (e.g., Cyprus, Greece, Ireland, and Spain) and compare the obtained results.

 

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Endereço para Correspondência

Centre for Spatial and Organizational Dynamics, University of Algarve, Campus de Gambelas – Building 9., 8005-139 Faro, Portugal. Telef.: (+351)961482781. E-mail: joaonrviseu@gmail.com

 

Recebido em 04 de Novembro de 2014/ Aceite em 06 de Junho de 2015

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