Background
Migration for economic reasons has become an important geo-political phenomenon of the modern era [
1,
2]. The growing aspirations of economic migrants are driven by the market demands of rapidly developing economies in the world. International migrant workers (IMW) from Sri Lanka have grown ten-fold during the past decade and around 17% of Sri Lanka’s total labour force is currently working outside its borders [
3]. Middle Eastern region is the main destination for Sri Lankan IMWs, and an average of 720 registered migrant workers departed Sri Lanka each day for foreign employment in 2011 [
4]. This figure may be considerably higher if volumes of irregular and unregistered migrant workers can be estimated. Majority of Sri Lankans are employed abroad as ‘domestic maids or labourers’ [
4]. Overall contribution from the economic migrant remittances to the Sri Lankan economy equals up to 8% of the total GDP [
3,
5].
Despite the monetary benefits to migrants, their families and to the country, evidence is emerging about numerous unfavorable effects of economic migration, including adverse health outcomes for IMWs and their left-behind families [
6,
7]. Although several studies have provided insights into the social, legal and economic impacts of economic migration in Sri Lanka, empirical evidence about the true scale of nation-wide health impact of economic migration is scarce [
8-
11]. A review of literature found three published studies from Sri Lanka which examined health status of left-behind children of migrant households [
12-
14]. There is no existing evidence of studies exploring health status of left-behind spouses or non-spouse caregivers, who has a role in providing care for children and other members of left-behind families. Although sparse, there is some evidence that migration of adult children for economic reasons can negatively affect both mental and physical health of aging parents [
15]. In most extended and traditional family units in developing countries, the aging parents of migrant workers may be additionally tasked with caring for the grandchildren of the left-behind family, precipitating increased health problems [
15]. Other studies have shown that spouses of out-migrants have increased physical and mental health problems, including depression [
16]. Some studies on the impact of migration among left-behind parents of emigrants moving to developed countries have shown mixed results. Some studies reported that the adult left-behind family members have better living standards and does not have any negative effects on their health while others reported that parents of migrants have worse self-reported health [
17-
19].
In the global context, despite the political discourse on migration becoming an important issue in the global development agenda, the public health implications for migrants and their families have received little attention [
20-
22]. A PLoS medicine series on
Migration & Health in 2011 prompted public health attention and called for an evidence-based research agenda on health of migrants [
23]. The health impact of economic out-migration and families left-behind is especially salient for majority of labour-sending countries including Sri Lanka, which are mostly low and middle income countries (LMIC) without adequate health system resources to counter the interlinked public health issues [
23,
24]. Demographic and epidemiological shifts combined with international migration affect family structures, health and long-term care provision, labour force participation, retirement and financial security [
25]. There remains a scarcity of studies on this topic despite an ever-growing international labour migration market.
The study described here aimed to explore the impact of economic migration on mental health of adult left-behind family members in Sri Lanka by establishing the prevalence of common mental disorders (CMD; depression, anxiety, somatoform disorder). It also aimed to explore associations between CMD and demographic, economic, social, migration-related and general health-related factors using standardized and culturally validated instruments.
Results
Tables
1 and
2 summarize key demographic, economic, migration-related and health-related characteristics. A total of 410 migrant worker families were recruited for the study. Within those, only spouses were recruited from 222 families and only non-spouse caregivers from 133 families. Both a spouse and a non-spouse caregiver were recruited from 55 families. In total, 277 migrant worker spouses and 188 non-spouse care givers were recruited with a total sample of 465 individuals. Mean ages (SD) of the spouse and non-spouse caregiver groups were 37.8 (0.46) and 54.1(0.86) respectively. Non-spouse caregiver group was predominantly female (95.7%), with approximately a third over 60 years of age (29.3%). Forty five percent of recruited migrant families indicated significant current debt. The majority of migrant families were found to live in rural areas.
Table 1
Socio-demographic characteristics and health-related factors among spouses and non-spouse caregivers of left-behind families
Socio-demographic factors
| | |
Gender
| | |
Male | 119 (42.9) | 8 (4.3) |
Female | 158 (57.0) | 180 (95.7) |
Age
| | |
18-30 | 51 (18.5) | 11 (5.9) |
31-60 | 224 (81.2) | 121 (64.7) |
61-above | 1 (0.7) | 55 (29.4) |
Ethnicity
| | |
Sinhala | 201 (72.6) | 151 (81.2) |
Tamil | 15 (5.4) | 20 (10.7) |
Muslim | 51 (18.4) | 14 (7.5) |
Other | 10 (3.6) | 1 (0.5) |
Education
| | |
No education | 6 (2.2) | 31 (16.6) |
Primary | 48 (17.3) | 75 (40.1) |
Secondary | 223 (80.5) | 81 (43.3) |
Civil status
| | |
Married | 274 (98.9) | 133 (71.1) |
Unmarried | 2 (0.7) | 8(4.3) |
Widowed/divorced | 1 (0.4) | 46(24.6) |
Employment
| | |
Non-employed | 156(56.3) | 141(75.4) |
Employed | 121(43.7) | 46(24.6) |
Family debt
| | |
Little or no debts | 153 (55.2) | 102(54.3) |
Significant debts | 124 (44.8) | 84 (44.7) |
Area of residence
| | |
Rural | 185 (66.8) | 140 (74.9) |
Urban | 92 (33.2) | 47 (25.1) |
Health-related factors
| | |
General health
| | |
Excellent | 35 (12.6) | 12 (6.4) |
Fair | 222 (80.1) | 131 (69.7) |
Poor | 20 (7.2) | 45 (23.9) |
Current illness
| | |
Current diagnosed illness | 72 (26.0) | 100 (53.2) |
No current illness | 204 (73.6) | 88 (46.8) |
Healthcare visits-3 months
| | |
No visits | 148 (53.4) | 65 (34.6) |
One or two visits | 78 (28.2) | 64 (34.0) |
More than two visits | 47 (17.0) | 58 (30.8) |
Table 2
Migration-related factors among spouses and non-spouse caregivers of left-behind families
Type of IMW employment
| | |
Labourer/domestic maid | 164 (59.2) | 106 (56.4) |
Services | 69 (24.9) | 12 (6.4) |
Technical | 15 (5.4) | 2 (1.1) |
Professional/other | 28 (10.1) | 11 (5.8) |
IMW return frequency
| | |
Every year | 53 (19.1) | 10 (5.3) |
Every 2-5 years | 75 (27.1) | 44 (23.4) |
Never returned/missing | 144 (52.0) | 77 (40.9) |
In-bound remittance
| | |
Every month | 155 (55.9) | 53 (28.2) |
Every 2-6 months/more | 97 (35.0) | 54 (28.7) |
Typology of employment of the migrant worker was assessed according to the Sri Lanka Bureau of Foreign Employment (SLBFE) classification of occupations [
4]. Majority (66%) belonged to the low-skilled occupation classification of ‘manual laborers’ and ‘housemaids’. Duration of employment abroad varied; 95 (23.2%) were employed for one year or less, 218 (53.2%) were employed for 1-5 years, 66 (16.1%) for 5-10 years and 29 (7.1%) were employed for over 10 years. More than half (55%) of migrant workers were reported having not returned to Sri Lanka since going abroad for work. Of those who visited, majority (29.5%) returned every two to five years. Monthly remittances in some form were received by 58% of the left-behind migrant worker families. General health was perceived to be poor by 45 (23.9%) non-spouse caregivers. Having a current diagnosed illness was reported by 100 non-spouse caregivers (53.2%). Thirty Percent of non-spouse caregivers reported of more than two visits to health care providers.
Mental disorder prevalence
Table
3 summarizes the prevalence of CMD and constituent disorders across the groups. Overall prevalence of CMD (Depression, somatoform disorder and anxiety) was 20.7% (95%CI 16.9-24.3) in the whole sample with 14.4% (95%CI 10.3-18.6) for the spouse group and 29.8% (95%CI 23.2-36.4) for non-spouse caregiver group. Prevalence of depression was higher in the non-spouse caregiver group with 25.5% (95%CI 19.2-31.8), than in the spouse group (12.3%; 95%CI 8.3-16.1). Prevalence of Somatoform disorder in spouses was 3.6% (95%CI 1.4-5.8) and 11.7% (95%CI 7.0-16.3) in non-spouse caregivers. In the non-spouse caregiver group, 47 (25.0%) females and 1 (0.5%) male had depression. Somatoform disorder (22; 11.7%) and anxiety (7; 3.7%) was only present among the females in this group. In the spouse group, 20 (7.2%) females and 14 (5.0%) males had depression. Somatoform disorder was present among 7 (2.5%) females and 3 (1.1%) males while anxiety was present among 1 (0.4%) females and 2 (0.7%) males.
Table 3
Prevalence of CMD among spouses and non-spouse caregivers of left-behind families
Any CMD
| 20.7 (16.9-24.3) | 14.4 (10.3-18.6) | 29.8 (23.2-36.4) |
Depression
| 17.6 (14.1-21.1) | 12.3 (8.3-16.1) | 25.5 (19.2-31.8) |
Somatoform disorder
| 6.9 (4.5-9.1) | 3.6 (1.4-5.8) | 11.7 (7.0-16.3) |
Anxiety
| 2.1 (0.8-3.4) | 1.1 (0.1-2.3) | 3.7 (1.0-6.4) |
CMD associations with demographic, economic, migration-related and health-related factors
Table
4 describes the models of associations explored in the current analysis. In the unadjusted analyses, significant associations were observed between CMD and having only primary education, significant debts, in-bound remittance frequency every 2-6 months or more and poor general health for the migrant worker spouse group. Having no education, being unmarried/widowed/divorced, poor general health and 2 or more visits to a healthcare provider (during the last three months) were significantly associated with CMD in the caregiver group. Notably, having a migrant worker spouse who had not returned home since going abroad for work was significantly associated (OR 3.4; 95%CI 1.1-11.1) with CMD in the spouse group after being adjusted for age and gender. Having primary education and an in-bound remittance frequency every 2-6 months or more had slightly increased in strength after adjustment, while significant debts and poor general health showed very slight decreases in strength in the spouse group. The association between CMD and being unmarried/widowed/divorced in the caregiver group was shown to become non-significant when adjusted for age and gender. Having no education, poor general health and healthcare visits of more than 2 times (during the last three months) were still significant after adjustment, albeit decreased in strength.
Table 4
Models of association between CMD and socio-economic, migration-related and health-related factors among spouse and non-spouse caregivers of left-behind families
Gender
| | | | | | |
Male | 17 (6.1) | Reference | Reference | 1 (0.5) | Reference | Reference |
Female | 23 (8.3) | 1.0 (0.5-2.0) | 1.1 (0.6-2.2) | 55 (29.2) | 3.1 (0.4-25.6) | 3.0 (0.4- 25.2) |
Age
| | | | | | |
18-30 | 4 (1.4) | Reference | Reference | 2 (1.1) | Reference | Reference |
31-60 | 36 (13.0) | 2.2 (0.8-6.6) | 2.3 (0.8-6.9) | 32 (17.0) | 1.6 (0.3-7.9) | 1.6 (0.3-7.7) |
61-above | 0 (0.0) |
-
|
-
| 22 (11.7) | 3.0 (0.6-15.2) | 2.9 (0.6-14.8) |
Education
| | | | | | |
No education | 0 (0.0) |
-
|
-
| 15 (8.0) |
3.5 (1.4-8.5)
|
3.0 (1.2-7.5)
|
Primary | 28 (10.1) |
2.3 (1.1-5.0)
|
2.7 (1.1-6.4)
| 24 (12.8) | 1.8 (0.9-3.6) | 1.6 (0.8-3.4) |
Secondary | 12 (4.3) | Reference | Reference | 17 (9.0) | Reference | Reference |
Civil status
| | | | | | |
Married | 39 (14.1) | Reference | Reference | 34 (18.1) | Reference | Reference |
Unmarried/widowed/divorced | 1 (0.4) |
-
|
-
| 22 (11.7) |
2.0 (1.0-3.9)
| 1.7 (0.9-3.5) |
Employment
| | | | | | |
Non-employed | 21 (7.6) | 1.2 (0.6-2.3) | 1.6 (0.6-4.2) | 45 (23.9) | 0.7 (0.3-1.4) | 0.8 (0.4-1.8) |
Employed | 19 (6.8) | Reference | Reference | 11 (5.8) | Reference | Reference |
Family debt
| | | | | | |
Little or no debts | 14 (5.0) | Reference | Reference | 31 (16.5) | Reference | Reference |
Significant debts | 26 (9.4) |
2.6 (1.3-5.3)
|
2.6 (1.3-5.2)
| 24 (12.8) | 0.9 (0.5-1.7) | 0.9 (0.5-1.8) |
IMW return frequency
| | | | | | |
Every year | 4 (1.4) | Reference | Reference | 3 (1.6) | Reference | Reference |
Every 2-5 years | 10 (3.6) | 1.9 (0.6-6.4) | 2.1 (0.6-7.1) | 11 (5.8) | 0.8 (0.2-3.5) | 0.9 (0.2- 4.4) |
Never returned/missing | 26 (9.4) | 2.7 (0.9-8.1) |
3.4 (1.1-11.1)
| 24 (12.8) | 1.1 (0.2-4.4) | 1.2 (0.3-5.6) |
In-bound remittance
| | | | | | |
Every month | 15 (5.4) | Reference | Reference | 15 (8.0) | Reference | Reference |
Every 2-6 months/more | 19 (6.8) |
2.3 (1.1-4.7)
|
2.7 (1.2-6.0)
| 18 (9.6) | 1.3 (0.6-2.9) | 1.2 (0.5- 2.9) |
General health
| | | | | | |
Excellent/good | 29 (10.5) | Reference | Reference | 30 (15.9) | Reference | Reference |
Poor | 11 (4.0) |
9.6 (3.7-25.1)
|
9.0 (3.4-23.8)
| 26 (13.8) |
5.1 (2.5-10.5)
|
4.6 (2.2-9.7)
|
Healthcare visits-3 months
| | | | | | |
No visits | 18 (6.5) | Reference | Reference | 10 (5.3) | Reference | Reference |
One or two visits | 13 (4.7) | 1.4 (0.7-3.1) | 1.5 (0.7-3.2) | 16 (8.5) | 1.8 (0.8-4.4) | 1.6 (0.7- 4.0) |
More than two visits | 9 (3.2) | 1.7 (0.7- 4.1) | 1.6 (0.6-3.8) | 30 (15.9) |
5.9 (2.5-13.8)
|
5.1 (2.2-12.1)
|
Discussion
This is the first study in Sri Lanka to report on the mental health of adult left-behind family members (spouse and non-spouse caregivers) of IMWs. To our knowledge, this is one of the first studies exploring the broader topic in the South Asian region, measuring mental health through standardized diagnostic instruments. Some previous studies in Asia have looked at general health and psychosocial health, albeit limited to internal economic migration and elderly populations [
15,
20,
41]. Our study, in contrast, has captured a wider representative sample of left-behind families of IMWs, highlighting both positive and negative associations at the intersection of migration and health.
Mental disorder burden
Our findings show an increased prevalence of CMD including depression among the adult left-behind family member population, when compared to Sri Lankan national prevalence levels (CMD; 13.8%, depression; 9.1%) [
35]. More importantly, the non-spouse caregiver group in the left-behind families showed more than double the burden of CMD and its constituent disorders than the spouse group. The non-spouse caregivers are older and predominantly female in according to our findings. Other studies in the Asian region have also shown high levels of depression among females and elderly left-behind family members of migrants [
15,
20]. However, dearth of empirical evidence on prevalence of CMD among similar populations from other countries prevent an accurate comparison and evaluation of disease burden and associated factors.
General health and health care utilization
In the current study, the negative effects of economic migration are reflected through the high levels of CMD amongst left-behind spouses and non-spouse caregivers. The burden of providing care may come at the cost of poor mental and general health outcomes, which in turn may increase the utilization of health services. A study in Thailand linked out-migration of adult children to increased health service utilization among elderly left-behind family members, independent of socio-economic factors [
15]. It is also well established that those suffering from somatoform disorders cause increased burden on health care systems [
42,
43]. This is especially relevant to the Sri Lankan health system, which is fully state funded and heavily subsidized.
Notably, our findings show that spouses are at increased risk of CMD when their migrant worker spouses have not returned home since going abroad. This may be due to chronic stressors linked to marital breakdown that stems from enforced separation. Together with increased burden of care for children, such enforced absences of a migrant worker spouse may lead to depression or anxiety in the left-behind spouse. However, in our study, we did not directly explore linkages between duration of separation and psychological distress. Although not directly comparable to this study on IMWs, the negative health consequences on adult members of families left-behind are similar to the study reported by Lu [2012] in an Indonesian population [
20]. In addition, care-giving arrangements in left-behind families have been linked with high ‘emotional cost’ [
44].
Social, economic and migration-related factors
Most IMWs seek overseas employment with the hope of obtaining higher incomes to alleviate poverty and develop their household capital. However, at the onset of the migratory process they may incur debt. Household remittance studies have revealed the pre-migration pathways result in significant financial costs (including hidden costs due to agent exploitation) to most economic migrants and their families, especially those within low-skilled worker categories [
5]. Our findings show that significant debt and decreased frequency of remittances are associated with increased CMD levels among the spouses of migrant workers, which interestingly is not observed in the non-spouse caregiver group. This may be due to the fact that spouses may have the sole responsibility in handling family finances in the absence of their wife or husband, and non-spouse caregivers may not be usually involved in managing daily economic affairs. Positive effects due to remittance sent to left-behind families may be instrumental in reducing the levels of indebtedness that prompts economic migration. Research has shown that the average wages earned by either male or female migrant workers during the first cycle of migration of two years is insufficient to cover pre-migration debts; hence the need for repeated migratory movements [
45,
46].
Recently, the Sri Lankan government has been promoting a more ‘skilled’ international migrant workforce. However, as yet, the vast majority of Sri Lankans entering into international labour markets are over-represented in low-skilled employment categories such as labourers and domestic maids [
4,
5]. Our study findings confirm this over-representation of low-skilled migrant categories, highlighting the need for a more robust action plan from the government to increase the ‘skilled’ migrant numbers.
Currently, there are no existing mechanisms to monitor the health of left-behind families of IMWs, either through public health and education systems or labour migration industry in Sri Lanka. There are no specific provisions offering mental health services to affected adult members of left-behind families. We advocate a multi-sectoral approach for monitoring the health of IMW left-behind families to be adopted at district and national levels with involvement of all relevant stake holders such as the Ministry of Health, SLBFE, provincial ministries of health, social services and public health agencies. The government and multiple stakeholders can also play a role in providing educational sessions on potential mental health issues for IMW families during SLFBE’s mandatory pre-departure training programs. We also advocate that the national migration health policy to be linked with relevant sections of national mental health policy, to enable seamless provision of mental health care for left-behind families of IMWs.
Strengths and limitations
As the study cannot determine causality due to the cross sectional nature, prospective cohort and longitudinal studies are needed to reveal true impact of migration on physical wellbeing and mental health outcomes, and whether the workers and their families left-behind truly recover from the migration experience. The ethnic profile of the study sample closely matched national population ratios from the 2001 national population census, with 73% of migrant families being of Sinhalese ethnicity [
47]. As mentioned before, the study sample represents a true cross-section of the left-behind families of migrant workers in Sri Lanka, which increases the generalisability of findings. However, the professional migrant category may be somewhat underrepresented in our sample as the SLBFE statistics does not fully cover all professional groups who migrate for work abroad. This fact and apparent sample size limitations should be considered in interpreting the associations shown. In addition, lack of a control group in our study (e.g. comparison with families without a migration history) prevents wider interpretation of findings. Whilst this study provided an insight into mental health issues faced by adult left-behind family members of migrant workers, further research is needed to explore the impact of migration on male versus female headed households, and how migration affects intra-household power dynamics and relationship outcomes.
Conclusions
As labour migration flow increase in a rapidly developing post-conflict Sri Lanka [
4,
5], the impact on families left-behind leave many unanswered questions. Promoting migration for economic prosperity and ensuring health and social protection for migrants and their families remains a formidable policy challenge [
48-
51]. This study provides evidence on health issues among non-spouse caregivers in migrant families in Sri Lanka. Contributions from non-spouse caregivers to support the migratory process is often unrecognized by the stakeholders involved in the labour migration process and in the border discourse on migration for development. A policy process which seeks to promote the wellbeing of the left-behind families also needs to ensure ‘care for the caregiver’. The findings from this and other commissioned studies have been used to inform an evidence-based approach in formulating the National Migration Health Policy for Sri Lanka [
52]. We advocate for migrant sensitive health policies as espoused within the World Health Assembly resolution (WHA 61.17), to promote migration for the benefit of all.
Competing interests
This study was funded by the International Organization of Migration (IOM-Sri Lanka), with approval and endorsement from the Ministry of Health and the Inter-Ministerial Taskforce on Migration Health. CS is employed at Anglia Ruskin University. PV, SW & BJ were employed as project coordinators for the study. AA, KJ & GP are employed at the Institute for Research & Development (IRD). SS is attached to Rajarata University of Sri Lanka. AS is the honorary director of IRD. KW and SP are employed at International Organization of Migration. Funding body did not have any role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Authors’ contributions
CS analyzed the data and wrote the first draft. KW, CS, AS and SS conceived the main study and participated the study management. KW reviewed and edited the manuscript. PV, SW, BJ, AA and KJ were involved in the study design and data collection. GP is the study data manager. AS, SS, SP reviewed the manuscript. All authors read and approved the final draft.