74 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 Differences in Mental Health among Migrants and Non-migrants in South Africa: Evidence from the National Income Dynamics Study Hemish Govera* and Amiena Bayat** * University of the Western Cape, South Africa Email: hgovera@gmail.com ** University of the Western Cape, South Africa The literature associates migration with poor mental health outcomes. Despite exten- sive empirical research in other countries, there is a paucity of research examining the mental health consequences of migration in South Africa, and the factors that com- pound the relationship between the two variables. The study objective was to evaluate the differences in the mental health status of internal migrants and that of non-mi- grants in South Africa with a special focus on depressive symptoms. The study con- sidered the influence of various vulnerability and sociodemographic factors such as gender, age, educational attainment, race, income group, marital status and province of residence. Mental health disorders are already considered the largest contributor to the global disease burden. Hence, understanding the nature of the relationship between migration and mental health is critical for public health prevention efforts. To make the determination, the study applied descriptive analysis and logistic modelling based on the South African National Income Dynamics Study (NIDS) panel datasets of 2008, 2010, 2014/15 and 2017. Descriptive statistics were employed to derive the frequency distribution of sociodemographic characteristics and migration factors. Logistic re- gression analysis was used to assess the associations between depression, migration and sociodemographic factors. Keywords: Migration, acculturation, gender, depression, sociodemographic factors 75 INTRODUCTION The process of migration is complex and stress-inducing, regardless of whether mi- gration is internal or international (Bhugra, 2004; Carroll et al., 2020). This is due to the association of migration with stressful experiences of change, inadequacy, per- ceptions of discrimination and social marginalization (Bhugra, 2004; Gkiouleka et al., 2018; Bauer et al., 2020). The migration process entails social change of cultural settings for the migrants and this change has implications for mental health (Ajaero et al., 2017). Therefore, migration has the potential to negatively influence mental health and has been identified as one of the social determinants of negative mental health outcomes (Satcher, 2000). The association between mental health issues and migration bears a considerable influence on health disparities (Ai et al., 2015). Em- pirical evidence has established sociodemographic inequalities in migrants’ health (Giannoni et al., 2016). As such, migration and health inequalities continue to be a key concern of public and policy debates (Bircan et al., 2020). The concept of migration is not new in South Africa. The country is one of the main destinations of immigration in Africa (Fauvelle-Aymar, 2014). Within the country, the Western Cape and Gauteng account for most of the inter-provincial mi- gration (Kleinhans and Yu, 2020). Evidence suggests that the population of internal migrants has increased in the post-apartheid era (Ajaero et al., 2017). A significant proportion of internal migration within the country is intra-district and economi- cally motivated (Rogan et al., 2009). Despite extensive empirical research in other countries, there is a paucity of research examining the mental health consequences of internal migration in South Africa. In this context, it therefore becomes pertinent to examine if migrants actually have better mental health than non-migrants in South Africa. Understanding the nature of the relationship between migration and mental health is critical for public health prevention efforts. BACKGROUND AND CONTEXTUALIZATION In South Africa, internal migration is historically associated with the social engineer- ing and enforced fragmentation of families that took place under apartheid (Hall, 2016). This was part of the apartheid strategy to entrench minority rule through spa- tial arrangements that strategically divided families and split generations and sepa- rated breadwinners from dependants (Hall, 2016). Such social conditions have been conceptualized as a challenge to the emotional resilience of individuals who may experience psychological distress, personal crisis and could precipitate poor mental health (Portes and Rumbaut, 2006). In this context, it becomes relevant to examine if internal migrants have worse mental health than non-migrants in South Africa. LITERATURE REVIEW/THEORETICAL/CONCEPTUAL FRAMEWORK There are various theoretical frameworks in the literature that provide concepts that may be useful in analyzing the association between migration and mental health Differences in Mental Health among Migrants and Non-migrants in South Africa 76 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 outcomes. Theories of acculturative stress posit that tensions due to living in a for- eign culture contribute to mental disorders (Gutierrez-Vazquez et al., 2018). Bhugra (2004) developed a contingency model which hypothesizes vulnerability (risk fac- tors) or resiliency (protective factors) for psychological disorders based on the per- son’s situation and migration stage. In physical health literature, the selection hypothesis predicts that more pre- pared and healthier individuals are more likely to migrate compared to their coun- terparts in worse conditions (Akresh and Frank, 2008). Migrant selectivity could be evident in both observable and unobservable characteristics such as preparedness to migrate. As a result, migrants could be positively selected on the sociodemographic characteristics that are protective against poor mental health outcomes such as gen- der and family background. This implies that migrants could be better positioned to handle uncertainty and stress compared to those who select not to migrate. However, given the high prevalence of poor mental health among migrants, it could be that selection can negatively impact on mental health. According to Gutierrez-Vazquez et al. (2018), if migrants are negatively selected with respect to sociodemographic background, or have underlying traits that make them more prone to dissatisfaction, then selection could be an important contributor to adverse mental health outcomes. The literature provides evidence of the significant prevalence of depressive symptoms within migrant population groups compared to non-migrants. Mulcahy and Kollamparambil (2016) investigated the impact of rural-urban migration on subjective well-being in South Africa between 2008 and 2012. The study adopted the use of instrumental variables to control for endogeneity caused by shock-induced self-selection, and propensity score matching to control for migration self-selection bias. The results indicated that rural-urban migration leads to decreased subjective well-being which could be due to unrealized expectations and changing reference groups used to peg aspirations, as well as the emotional cost of being away from fam- ily and a home environment. Gkiouleka et al. (2018) researched the prevalence of depressive symptoms among migrant and non-migrant communities in 21 European countries. The re- search looked into the impact of gender, childhood experiences, sociodemograph- ic factors and social support on depressive symptoms using data from the seventh round of the European Social Survey and the Greek Migheal survey. The study found that migrants reported significantly higher levels of depressive symptoms in seven of the examined countries, while in Greece and in the UK, they reported significantly lower levels compared with non-immigrant populations. The findings suggest that the impact of migration status on depressive symptoms is subject to additional deter- minants of mental health as well as on contextual factors. Gutierrez-Vazquez et al. (2018) sought to explore the link between migration and depressive symptoms among Mexicans residing in the United States of America (USA) and those residing in the sending communities in Mexico. The study reviewed the standard explanations for the links between migration and depression, such as ac- 77 culturative stress, lack of social support, and powerlessness and isolation. The study also tested the migration selection hypothesis using propensity matching scores. The study results indicated a higher prevalence of depressive symptoms among migrant communities compared to non-migrant community groups. The study also found little support for selection as an important source of migrant depression. Instead, the study found strong evidence that migration itself was primarily responsible for depressive symptoms mainly due to the disruption of social networks that it entails. Family separation was found to be the strongest predictor of depressive symptoms and could account for a significant proportion of the poor mental health among mi- grants. Akresh and Frank (2008) sought to quantify the extent of health selection among contemporary US immigrant groups. This entails checking the degree to which potential immigrants migrate, or fail to migrate, on the basis of their health status. Data for the study came from the New Immigrant Survey 2003 cohort which included unique series of questions to evaluate the health of immigrants in the Unit- ed States to that of citizens in their country of origin. The study found that the extent of positive health selection differed significantly across immigrant groups and was related to compositional differences in the sociodemographic profiles of immigrant streams. Past studies on migration highlight four key sociodemographic risk factors for depression among the general population: (i) low sociodemographic status; (ii) female gender; (iii) being unmarried; and (iv) undesired life events (Alegria et al., 2007). Mental health outcomes were found to be worse for immigrants who are un- employed, young, and female (Ai et al., 2015). However, in a completely different finding, Bauer et al. (2020) found that a high sociodemographic status does not nec- essarily protect refugees from the negative influences during migration and the first months or years in the new country. There are several theoretical models and perspectives mainly focusing on ru- ral-urban and international migration. However, migration research lacks theoreti- cal advancement with empirical research disconnected from the theories (Kureková, 2010; Bircan et al., 2020). The existing migration theories do not adequately capture the dynamics of internal migration and depression. In the presence of these theoreti- cal gaps, this study looks at confirming the hypothesis that migrants report greater rates of depressive symptoms than non-migrants after controlling for sociodemo- graphic factors. Also, while there is extensive empirical literature on the impact of mental health on international migration, relatively little is known about internal mi- gration and mental health outcomes, especially in the South African context. There is a paucity of research examining the mental health consequences of migration in South Africa, and the factors that compound the relationship between the two vari- ables. Therefore, the key objective of this empirical research is to examine whether internal migrants are more likely to report poor mental health outcomes compared to non-migrants in South Africa, and if they do, to also determine the sociodemo- Differences in Mental Health among Migrants and Non-migrants in South Africa 78 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 graphic predictors of migrant status and mental health outcomes. METHODOLOGY Data The study used data from the five waves of the National Income Dynamics Study (NIDS) survey: wave 1 (2008), wave 2 (2010–2011), wave 3 (2012), wave 4 (2014– 2015) and wave 5 (2017) (SALDRU, 2020). The NIDS is a face-to-face, longitudinal, nationally representative panel survey of individuals and households focusing pri- marily on sociodemographics, labor market participation, grants received, education and health in South Africa. The NIDS adopted a stratified, two-stage cluster sample design in sampling the households and individuals identified in the 2008 base wave. In waves 2 to 5, the survey included the original sample members as well as new members who had joined the original households. Response rates in the NIDS sur- vey were high, with over 81% of households being successfully interviewed in wave 5. This study considered only respondents who were 18 years of age or older at the time of the interview. For the data analysis, the dataset was weighted to account for attrition and under- or over-sampling errors. Measures/Instruments Depression variable The depression variable was derived from responses to the emotional health ques- tions in the survey questionnaires. Across all the waves, respondents were asked 10 questions relating to their mental well-being. The responses were scored on a 4-point Likert scale indicating the frequency of experiencing the depressive symptom. To calculate a total score for depressive symptoms, the survey responses were summed up using the 10-item version of the Centre for Epidemiological Studies-Depression (CES-D) scale (Radloff, 1977). This study used the threshold of 10 and above to de- fine the presence of significant depressive symptoms (SDS). The threshold was also recommended by Radloff (1977). The same scale was adopted by other studies as- sessing depression using the NIDS such as Mungai and Bayat (2018) and Dowdall et al. (2017). The CES-D scale is a common psychiatric measurement tool for as- sessing depressive symptoms and has good psychometric properties (Dowdall et al., 2017; Mungai and Bayat, 2018). The Cronbach’s alpha for this scale in the sample was 0.75. Following from Schuckit et al. (1993: 5), who asserted that “symptoms are not diagnoses”, and the methodology employed by Mungai and Bayat (2018), the study did not attempt to diagnose depression but rather assessed the symptomatology that suggests significant vulnerability to being depressed. Migration variable This research followed Hall’s (2016) methodology in defining migrants as those who 79 moved across municipal boundaries. It is a single variable that captures movements between waves 1 and 5, or any of the intervening waves. For instance, persons who moved between waves 1 and 2, but not between waves 3 and 4 are defined as mi- grants, on the basis that they had moved place at some time between waves 1 and 5. Empirical model The study uses logit models to analyze the likelihood of migration status to impact on mental health status. The adoption of logit models is appropriate, given that the dependent variables can be structured as binary outcomes. Logistic regression allows the research to predict the probability of the outcomes falling between the unit in- tervals. The technique can be used to model a response variable as a function of one or more explanatory variables. The study follows the approach of Chear (2015) and formulates the logistic model in the general form below: log 1-P = α + βi Xi + ε The regression equation considers depression status as the dependent variable. In the equation, P is the probability that the participant exhibits depressive symptoms and 1-P is the probability that the participant does not exhibit depressive symptoms. P/ (1-P) is the odds that the participant exibits significant depressive symptoms. X is the vector of independent variables hypothesized to impact the probability of dem- onstrating significant depressive symptoms. The model included several sociodemo- graphic characteristic indicators such as age, race, gender, educational attainment, and marital status. β are the coefficients of the independent variables and ε is the error term. After fitting the logistic regression model to the survey data, the study conducted model diagnostic tests for goodness of fit of the fitted model. The Hosmer- Lemeshow (HL) test was used to check the goodness of fit of the specified models. The independent variables were tested for symptoms of multi-collinearity through the Variance Inflation Factor (VIF) test. All the statistical tests were based on a p- value of a less than 5% level of significance. Data analysis The data analysis included the use of descriptive analysis and regression analysis to assess the association between depressive symptoms and migration status. The study applied multivariate logistic regression analysis to assess the likelihood of sample members to experience significant depressive symptoms taking into account their migration status and controlling for sociodemographic characteristics. The study used race, gender, educational attainment, age, marital and occupational status as indicator variables for sociodemographic status based on prior literature such as studies by Moussavi et al. (2007), Atwoli et al. (2013), and Mungai and Bayat (2018). P Differences in Mental Health among Migrants and Non-migrants in South Africa 80 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 Ethical considerations Ethical approval was not needed for the study due to the use of secondary data that was anonymous. RESULT Table 1 provides an overview of the sociodemographic characteristics of the study population. The sample consisted of more females compared to males in both the migrant and non-migrant population groups. The sample majority is also predomi- nantly African, with 76% of the study sample being of the African race. Over 60% of both the migrant and non-migrant population groups have secondary school educa- tion. The unemployed comprised a bigger proportion of the study sample across both migrant statuses. More than half of the sample were aged between 18 and 44 years. Within provinces, the majority of the sample members were from KwaZulu-Natal. 81 Table 1: Characteristics of the study sample Source: Authors’ own calculations, based on NIDS 2008, 2010, 2012 and 2014/15 (SALDRU, 2020) Migrants Non-migrants Overall n Proportion % n Proportion % n Proportion % Gender Male 743 46% 3,983 39% 4,726 40% Female 884 54% 6,146 61% 7,030 60% Race African 1395 86% 7500 74% 8895 76% Coloured 138 8% 1771 17% 1909 16% Asian/Indian 24 1% 195 2% 219 2% White 70 4% 663 7% 733 6% Educational attainment No schooling 98 7% 1220 14% 1318 13% Some primary 171 12% 2198 26% 2369 24% Some secondary 555 40% 2813 33% 3368 34% Completed secondary 341 25% 1205 14% 1546 16% Tertiary or more 211 15% 1107 13% 1318 13% Employment status Employed 537 39% 4,007 47% 4,544 46% Unemployed 839 61% 4,536 53% 5,375 54% Age group 18-24 695 43% 1748 17% 2443 21% 25-34 458 28% 2320 23% 2778 24% 35-44 221 14% 2211 22% 2432 21% 45-54 143 9% 1855 18% 1998 17% 55-64 64 4% 1158 11% 1222 10% 65+ 46 3% 837 8% 883 8% Province Western Cape 130 8% 1653 16% 1783 15% Eastern Cape 186 11% 1134 11% 1320 11% Northern Cape 72 4% 772 8% 844 7% Free State 85 5% 644 6% 729 6% KwaZulu-Natal 487 30% 2528 25% 3015 26% North West 149 9% 852 8% 1001 9% Gauteng 211 13% 1007 10% 1218 10% Mpumalanga 90 6% 689 7% 779 7% Limpopo 217 13% 850 8% 1067 9% Differences in Mental Health among Migrants and Non-migrants in South Africa 82 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 Figure 1 displays the overall distribution of depressive symptoms by migration status and gender. Based on the information in the figure, the pattern is similar for females with roughly the same distribution within both the migrant and non-migrant groups. For females, roughly 25% reported depression scores between 10 and 20 across both the migrant and non-migrant categories. It is also evident that there are more female outliers reporting higher depression scores for migrants compared to non-migrants. Figure 1: Distribution of symptoms in CES-D depression screening by migration status and gender Source: Authors’ own construction, based on NIDS 2008, 2010, 2012, 2014/5 and 2017 (SALDRU, 2020) However, there is a marked difference between the distribution of depressive symp- toms in the migrant and non-migrant groups of males. More migrant males dis- played higher depressive scores compared to non-migrant males. Over 25% of mi- grant males reported depressive scores greater than 10 compared to about 15% for non-migrant males. In Figure 2, we report the distribution of symptoms by migration status and race. The migrant sub-population group reported higher depressive scores across all the races. A total of 25% of migrant Asian/Indians had depressive scores above the cut-off of 10, followed by African migrants at slightly below 25%. Close to 20% of migrant Coloureds also reported depressive scores higher than 10. Despite a high number of outliers, the proportion of non-migrants reporting depressive scores of 10 or higher was less than that of migrants. 83 Figure 2: Distribution of symptoms in CES-D depression screening by migration status and race Source: Authors’ own construction, based on NIDS 2008, 2010, 2012, 2014/5 and 2017 (SALDRU, 2020) Figure 3 provides an overview of the distribution of symptoms in CES-D depres- sion screening by migration status, race and gender. Based on information in the figure, there is no significant variation in the distribution scores of both migrants and non-migrants across both genders within the African racial group. About 25% of female migrants, male migrants and male non-migrants exceeded the threshold of 10 to qualify as displaying significant depressive symptoms. The only exception is the category of African non-migrant females who have more than 25% displaying significant depressive symptoms. The African race constituted the group with the highest depression scores compared to the other racial groups followed by Coloureds and lastly, the White racial group. Differences in Mental Health among Migrants and Non-migrants in South Africa 84 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 Figure 3: Distribution of symptoms in CES-D depression screening by migration status, race and gender Source: Authors’ own construction, based on NIDS 2008, 2010, 2012, 2014/5 and 2017 (SALDRU, 2020) The figure shows that overall, the African population group exhibits the highest in- tensity and prevalence of depressive symptoms followed by the Coloured group and the White group. The female non-migrant African group accounted for the highest depression scores. The same group also constituted the group with the highest pro- portion of members with depression scores greater than 10. Within the Coloured ra- cial group, females reported higher depression scores compared to males across both the migrant and non-migrant categories. White non-migrants across both genders reported similar patterns of depression in both intensity and distribution. However, female White migrants reported higher depression scores compared to male White migrants. The study employed logistic regression analysis to ascertain the association between the depression status, migrant status and their sociodemographic character- istics. Table 3 displays the results of the logistic regression analysis, using data from the NIDS waves 1 to 5, pooled into cross-section. Model 1 is specified to control for migrant status only. Model 2 is a specification that controls for gender as well, while Model 3 controls for educational attainment, age, income groups, employment status, marital status and province of domicile. The majority of the predictors were statistically significant. An exception was race and migration status (White non-mi- grants) across all three models, race and migration status (Coloured non-migrant), 85 educational attainment (some primary education) and province (Free State and North West) in Model 3. Table 2: Logistic regression on depression status by migration status and sociodemographic characteristics Source: Authors’ own calculations, based on NIDS 2008, 2010, 2012 and 2014/15 (SALDRU, 2020) *** denotes significance at 5% level and * denotes significance at 10% level Variables (1) Model 1: Simple specification (2) Model 2: Some controls (3) Model 3: Full specification: Race and migration status (Base: White migrant) African migrant 1.1135*** (0.2149) 1.1177*** (0.2151) 0.9459*** (0.2327) Coloured migrant 0.7303*** (0.2423) 0.7401*** (0.2425) 0.5825*** (0.2632) African non-migrant 1.2246*** (0.2132) 1.2054*** (0.2134) 0.8826*** (0.2309) Coloured non-migrant 0.586*** (0.215) 0.5737*** (0.2152) 0.2679 (0.233) White non-migrant 0.1736 (0.2243) 0.1702 (0.2245) 0.0631 (0.2418) Gender (Base: Female) Male -0.2688*** (0.022) -0.157*** (0.0257) Educational attainment (Base: No education) Some primary education -0.0614 (0.0388) Some secondary education -0.2407*** (0.0425) Completed secondary education -0.3777*** (0.0529) Tertiary or more -0.4269*** (0.0533) Income quartiles (Base: Lowest income group) Second quartile -0.1057*** (0.032) Third quartile -0.1555*** (0.0342) Fourth quartile -0.2864*** (0.0416) Age 0.0038*** (0.0011) Marital status (Base: Married) Widowed 0.2541*** (0.0414) Separated 0.3512*** (0.0679) Never married 0.1914*** (0.0288) Employment Status (Base: Unemployed) Employed -0.1466*** (0.0265) Province (Base: Western Cape) Eastern Cape -0.1835*** (0.0582) Northern Cape -0.3437*** (0.0608) Free State -0.0628 (0.0655) KwaZulu-Natal -0.164*** (0.055) North West -0.1188* (0.0624) Gauteng -0.1502*** (0.0601) Mpumalanga -0.627*** (0.0693) Limpopo -0.5398*** (0.0636) Constant -2.0228*** (0.2128) -1.9128*** (0.2132) -1.3231*** (0.2439) Differences in Mental Health among Migrants and Non-migrants in South Africa 86 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 The regression results in Table 2 reveal that all other racial groups in both migrant and non-migrant groups were more likely to be depressed compared to White mi- grants in models 1 and 2. The results were statistically significant except for White non-migrants across all 3 models. However, there were no statistically significant dif- ferences between White migrants and Coloured non-migrants, as reflected in Model 3. On gender, being male compared to being female, reduces the likelihood of being depressed and this is apparent in both Model 2 and Model 3 results. Using ‘no education’ as the base category, moving into a higher educational attainment catego- ry reduces the odds of being depressed. With age, each year-increase in age, increases the chances of being depressed. The same patterns extend to income brackets. Taking the lowest income quartile as the base category, being in a higher income category re- duces the chances of being depressed. Compared to being married, all other marital statuses are associated with higher odds of being depressed. Being employed rather than unemployed reduces the chances of being depressed. On province of residence, if we take the Western Cape province as the reference point, residing in any of the other 8 provinces is associated with lower odds of being depressed. The study then appraises the determinants of mental health status in South Africa by gender and sociodemographic variables. Table 3 summarizes the logistic regression models to give a clearer picture of how gender influences the risk of de- pressive symptoms. Model 1 evaluates the effects of migrant status and sociodemo- graphic variables on depression status for males. Model 2 undertakes a similar analy- sis for females, with Model 3 reporting the combined effect. 87 Table 3: Logistic regression on depression status by migration status, gender and sociodemographic characteristics Sources: Authors’ own calculations, based on NIDS 2008, 2010, 2012 and 2014/15 (SALD- RU, 2020) *** denotes significance at 5% level and * denotes significance at 10% level of significance Based on the regression output, the overall finding was that compared to White migrants, male Africans across both migrant and non-migrant categories had Variables (1) Model 1: Male (2) Model 1: Female (3) Model 1: Combined Race and migration status (Base: White migrant) African migrant 1.767*** (0.52) 0.6128*** (0.2667) 0.9344*** (0.2326) Coloured migrant 1.4524*** (0.5522) 0.2241 (0.3128) 0.5762*** (0.2631) African non-migrant 1.6585*** (0.5182) 0.5735*** (0.2639) 0.8791*** (0.2309) Coloured non-migrant 1.0548*** (0.5208) -0.046 (0.2669) 0.2717 (0.233) White non-migrant 0.9152* (0.5305) -0.3063 (0.2796) 0.0629 (0.2418) Educational attainment (Base: No education) Some primary education -0.085 (0.0718) -0.059 (0.0463) -0.0616 (0.0388) Some secondary education -0.2784*** (0.0755) -0.2274*** (0.0518) -0.2367*** (0.0424) Completed secondary education -0.4106*** (0.0893) -0.3667*** (0.0664) -0.3741*** (0.0528) Tertiary or more -0.4642*** (0.0905) -0.4146*** (0.0668) -0.4145*** (0.0532) Income quartiles (Base: Lowest income group) Second quartile -0.1183*** (0.0601) -0.1055*** (0.0379) -0.1098*** (0.032) Third quartile -0.1497*** (0.061) -0.1704*** (0.0418) -0.1686*** (0.0342) Fourth quartile -0.2617*** (0.0696) -0.3058*** (0.0533) -0.3097*** (0.0414) Age 0.0044*** (0.002) 0.0039*** (0.0013) 0.0039*** (0.0011) Marital status (Base: Married) Widowed 0.5763*** (0.1145) 0.2014*** (0.0462) 0.2967*** (0.0408) Separated 0.5291*** (0.1238) 0.2539*** (0.0815) 0.371*** (0.0678) Never-married 0.2686*** (0.0543) 0.1419*** (0.035) 0.1929*** (0.0289) Employment status (Base: Unemployed) Employed -0.2408*** (0.0461) -0.0817*** (0.0327) -0.1658*** (0.0263) Province (Base: Western Cape) Eastern Cape -0.2079*** (0.0994) -0.1764*** (0.0719) -0.1858*** (0.0582) Northern Cape -0.3788*** (0.1007) -0.3214*** (0.0765) -0.3511*** (0.0608) Free State -0.041 (0.1106) -0.0776 (0.0816) -0.0643 (0.0655) KwaZulu-Natal -0.1021 (0.0943) -0.1952*** (0.0679) -0.1591*** (0.055) North West -0.1269 (0.1038) -0.1172 (0.0785) -0.1258*** (0.0624) Gauteng -0.2097*** (0.1003) -0.1063 (0.0755) -0.1502*** (0.0601) Mpumalanga -0.6952*** (0.1183) -0.5913*** (0.0859) -0.6271*** (0.0693) Limpopo -0.4139*** (0.1093) -0.5976*** (0.0783) -0.5367*** (0.0636) Constant -2.2792*** (0.5375) -0.9999*** (0.2807) -1.3709*** (0.2438) Differences in Mental Health among Migrants and Non-migrants in South Africa 88 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 significantly higher chances of being depressed. This finding is evident from the significant results of all the 3 models. The impact is more pronounced for the male group compared to the female group with significant association for Coloured and White males and insignificant effect for their female counterparts. Poor sociodemographic status was significantly associated with reduced probability of good mental health across all 3 models. The factors include poor educational attainment, lower income, higher age, being widowed, separated or never married (using married as the base category), being unemployed and residing in any province other than the Western Cape ceteris paribus (except for Free State and North West across both genders and Gauteng province for females). DISCUSSION The aim of this study was to determine whether the prevalence of depressive symptoms is higher among migrants than non-migrants in South Africa. The study also sought to examine the association of migration status with a wide set of sociodemographic factors in the same context. The a priori expectation was that migrants would report higher depressive symptoms compared to non-migrants. In supporting findings, the study found that both migrant and non-migrant African groups were more vulnerable to depressive symptoms than Coloured and White migrants and non- migrants. The result had greater effect for males compared to females. The findings were consistent with the existing literature that suggests migration as a risk factor for depressive symptoms in South Africa with sociodemographic status having a modifying effect. This finding is consistent with the research by Ajaero et al. (2017) who found a similar association between migrant status and depressive symptoms in South Africa, using the 2012 NIDS data (SALDRU, 2020). These results were also consistent with findings by Bhugra (2004), Hwang et al. (2010), Gkiouleka et al. (2018), Gutierrez-Vazquez et al. (2018) and Carroll et al. (2020), who identified migration as a risk factor for depressive symptoms in various contexts. The study also hypothesized that depressive symptoms would be more prevalent among those with low sociodemographic status after controlling for the migrant status. The research found significant associations between low sociodemographic status and the risk of poor mental health. Poor mental health was associated with lower educational status, unemployment and being part of a lower income group, in findings consistent with Alegria et al. (2007) and Gkiouleka et al. (2018). The current study found significant gender disparities in mental health status with females, especially African migrant women, who displayed poorer mental health status compared to males across both migrant and non-migrant communities. The result is consistent with findings by Dalgard and Thapa (2007). A possible explanation for this, is that in South Africa, women have less economic and social power than males, yet they carry heavy family responsibilities (Mungai and Bayat, 2018). This factor can have a modifying effect on the risk of depressive symptoms when combined with the challenges of social integration for migrants. 89 Furthermore, age appears to be a significantly strong predictor of depressive symptoms with an increase in age being associated with increased risk of depressive symptoms. This finding is consistent with the study by Ardington and Case (2010), who also found that the likelihood of depression increases with age. This result can be explained in part, by older adults being more troubled by poverty compared to the relatively young members of the society. This study found that marital status was significantly associated with depres- sive symptoms. It is apparent from the study results that all marital status categories have poorer mental health relative to the married category. This is consistent with the findings of Das et al. (2007) who also found that respondents who were separated, divorced or widowed, reported worse mental health compared to those who were married. This could be linked to the lack of social support, which adds to stress and lowers mental health. The place of residence was also identified as a significant determinant of men- tal health status in the study. Compared to the Western Cape, residing in the rest of the South African provinces was associated with a lower risk of poor mental health after controlling for migration status. LIMITATIONS Notwithstanding the robust findings, the study has some limitations. First, the num- bers in some of the racial sub-categories such as Whites and Indians/Asians con- stitute very few respondents, which makes it difficult to draw inferences from the results for these groups. Second, the available data makes it difficult to determine if a move represents a ‘return’ rather than ‘migration’. Future research should consider employing more representative data for inferences regarding under-represented ra- cial groups such as Whites and Indians/Asians. CONCLUSION AND RECOMMENDATIONS The aim of the study was to evaluate whether there are differences in the mental health status of migrants and non-migrants in the South African context, consid- ering sociodemographic factors. The results highlighted significant associations between migrants and non-migrants with the relationship being compounded by sociodemographic characteristics. The study found empirical evidence that African migrants are at heightened risk of depressive symptoms, compared to other races. Both migrant and non-migrant African groups were more vulnerable to depressive symptoms than Coloured and White migrants and non-migrants. There were also significant differences in the way sociodemographic characteristics were associated with mental health status. Migrants with lower sociodemographic status were more susceptible to poor mental health, highlighting the unique challenges and threats that are faced by economically-deprived migrants. The gender analysis revealed signifi- cant differences in the mental health status of males and females, with male migrants Differences in Mental Health among Migrants and Non-migrants in South Africa 90 AHMR African Human Mobilty Review - Volume 6 No 3, Sep-Dec 2020 being impacted more than females. Being married was significantly associated with better mental health status. 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