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South African Journal of Child Health

On-line version ISSN 1999-7671
Print version ISSN 1994-3032

S. Afr. j. child health vol.18 n.2 Pretoria Jun. 2024

http://dx.doi.org/10.7196/SAJCH.2024.v18i2.1130 

ARTICLE

 

Exploring adolescent fertility inequality in Southern Africa

 

 

M Shoko

PhD; School of Public Health, Faculty of Health Sciences, University of the Witwatersrand, Johannesburg, South Africa; Stellenbosch Business School, Cape Town, South Africa; Statistics South Africa, Pretoria, South Africa

Correspondence

 

 


ABSTRACT

BACKGROUND. Globally, adolescent fertility rates (AFR) vary widely, with stark inequality in the Southern African subregion. Orphanhood and parental absence are key social factors studied in relation to adolescent fertility, but research focusing on girls aged 15 - 19 years is constrained by the international age cap of 17 years for collecting direct orphanhood and living arrangement data.
OBJECTIVES. To characterise fertility among adolescents largely excluded from research because of age restrictions in the data.
METHODS. The study uses the cross-sectional household-based Demographic and Health Survey (DHS) data for Southern Africa, defined according to both local and international geoschemes. It models parental absence and intrahousehold effects on fertility for adolescents aged 15 - 19 years old, using the fixed effects logistic regression, adjusting for inter-country differences.
RESULTS. The relationship between orphanhood, parental absence and rates of adolescent childbearing varied across countries. Parent absence was associated with a higher likelihood of childbearing (adjusted odds ratio (aOR) 3.07, p<0.05). Conversely, having an orphaned child(ren) in the household was associated with a 36% lower likelihood of childbearing, though not statistically significant. Compared with South Africa (SA), all the countries in the study showed significantly higher odds of adolescent childbearing (aOR 1.4 - 5.4, p<0.05). The probability of adolescents giving birth was generally lower when residing with orphaned children in the household, with Angola, Malawi and Zambia showing the highest differences, and SA the smallest.
CONCLUSIONS. The study underscores the critical role of household living arrangements and parental absence in understanding and addressing adolescent fertility in Southern Africa. Addressing this issue necessitates a dual approach, encompassing interventions for adolescents in general and specifically targeting those with absent parents.


 

 

The study focuses on adolescent fertility inequality in the context of orphanhood/fosterage and their potential spill-over effect in Southern Africa. This research is particularly important given the contemporary global focus on addressing inequality, including disparities in adolescent fertility,[1] as highlighted by the interconnected and inclusive development goals of the 2030 Sustainable Development Goals agenda (SDGs).[2]

Although adolescent fertility rates (AFR) have drastically declined in recent years, this remains a common issue.[3] Typically measured within the age range of 15 - 19 years, adolescent fertility continues to be a major issue despite this age group generally being considered old enough.[4] As a public health issue, adolescent fertility is both a key determinant and consequence of health and wellbeing. This is because it intersects with various other factors: HIV prevalence,[5] child marriage[6] and general socioeconomic development.[7] Adolescent fertility is also an important demographic indicator linked to overall fertility,[3] and therefore is potentially affected by living arrangements.[8]

The interconnections between adolescent childbearing and underlying socioeconomic inequalities are well-documented.[9] For instance, selection effects in adolescent fertility are closely intertwined with socioeconomic disparities.[10,1] This underscores adolescent fertility as a notable concern, particularly among female subpopulations disproportionately affected.

Research on general orphanhood, a long-recognised demographic issue,[11] and the associated parental presence[12-16] has gained traction, largely owing to the growing causes linked to adult mortality,[3] resulting in a parallel rise in orphanhood. However, research specifically addressing the link between these factors and adolescent fertility remains limited. The research gap is partly attributed to the limited availability of data on orphanhood and fosterage for 'older children' or adolescents (ages 18 - 19). This limitation arises from the international standard definition of 17 years as the upper age limit for orphanhood and fosterage, a definition adhered to by the widely used Demographic and Health Survey (DHS) surveys programme.

However, adolescents aged 18 - 19 years, while technically outside the standard orphanhood definition, often face distinct vulnerabilities.[17] For example, orphanhood in this age group is estimated to reach true orphanhood in both its extent and experiences. Demographically, adolescents aged 18 - 19 constitute the majority of orphans and may be less likely to be understated in surveys, a feature associated with the younger cohorts.[18] Older adolescents also experience disproportionate adverse wellbeing outcomes.[19] This arises from the kinship networks' preferences for fostering younger orphans, often on the pretext that younger orphans may be more vulnerable or adaptable.[20] Older orphans may also not be retained within kinship networks, especially where child fostering is incentivised.[19] Notably, the fosterage of older female orphans may be motivated by benefits received by the households, such as securing bride prices or assistance with household chores.[21] In situations where entire households consist of orphans, they may be left to their own devices if an older adolescent is present, leaving older adolescents assuming a de facto household headship status.[20]

 

Methods

The study used the DHS data for Southern Africa to conduct a multi-country analysis of adolescent fertility among girls aged 15 - 19 years. To define the geographical scope, the study employs both local and international classification frameworks for the subregion.[22,23] This includes the 10 countries that are geographically contiguous and located in the southernmost part of the African continent: Angola, Botswana, Eswatini, Lesotho, Malawi, Mozambique, Namibia, South Africa (SA), Zambia and Zimbabwe.

The decision to use the DHS surveys is based on the availability of nationally representative data. Although the individual country surveys may not be conducted concurrently, the fundamental design of these surveys facilitates cross-country and cross-temporal comparisons. DHS surveys are typically cross-sectional surveys that are conducted by participating low- and middle-income countries (LMICs) at approximately 5-year intervals. However, not all countries consistently carry out DHS surveys in each round and the DHS programme itself is continually evolving. The variation in survey frequency impacts the data availability for different countries (Fig. 1), which presents AFR trends for countries using DHS data.

 

 

Furthermore, the variability in the availability of DHS survey data for countries informs the inclusion criteria for the current study. For example, Botswana's only participation in the DHS program was in the late 1980s. The key data definitions used in that survey have since become outdated, rendering the data ineligible for inclusion in the current study.

Table 1 shows the respective DHS survey years used in the study, covering the period from 2006 - 2016 and presenting the most recently available data from the respective countries.

 

 

The choice to focus on Southern Africa is because of the subregion's distinctive characteristics, notably its pronounced global and internal disparities when compared with other regions and countries worldwide.[27] These factors are intricately connected to the fundamental determinants of adolescent fertility and are discussed below.

Despite undergoing an advanced fertility transition overall,[3] adolescent fertility remains an issue in the subregion (Fig. 1).[24] The subregion also faces a disproportionate adolescent HIV epidemic that predominantly affects the female subpopulation. This mirrors the broader HIV burden within the subregion and holds a direct link to adolescent fertility, given the heterosexual nature of HIV transmission.[25] This HIV epidemic has also adversely impacted households,[3] exacerbating the already prevalent issues of orphanhood and parental absence. These challenges stem from long-standing labour migration patterns, which in turn contribute to the prevailing marriage, childbearing and child-rearing practices.[26] Additionally, factors such as armed conflicts,[14] the more recent impact of the COVID-19 epidemic[16] and orphanhood resulting from cancer-related mortality[13] all play a role in shaping the landscape of orphanhood within the subregion. This underscores the importance of research on adolescent fertility.

The methodology used for this analysis was adopted from studies by Taiwo[28] and Jayatillake et al.[29] The study by Taiwo explored the potential spill-over effect of orphan fosterage on fertility across all women of childbearing ages, while Jayatillake et al.'s study focused on accounting for inter-country effects within a multi-country analysis. The results from the study by Taiwo suggest an independent association between the fostering of orphans and a reduction in fertility for women of childbearing age in the receiving households. However, in the current study, the focus is narrowed to female adolescents within the quinquennial age range of 15 - 19.

The main underlying assumption is that female adolescents may adjust their fertility goals based on their household circumstances. Previous research using longitudinal data spanning ages 15 - 25 years has shown that orphaned adolescents may have higher fertility compared with their non-orphan counterparts, either because of their increased vulnerability or higher fertility desires.[30]

For the analysis, the data used were generated by merging the household member (PR) and individual recodes (IR) obtained from representative samples of households and women of reproductive ages, respectively. To ensure representativity, enable inter-country comparisons and achieve a substantial sample size, the merged data were consolidated into a single aggregated data file. Subsequently, households were tagged to create the orphan index variable, identifying individuals aged 17 years and younger with at least one parent dead as orphans. The methodology is consistent with the established methodology outlined by the DHS.[31] The parental presence variable was derived using the 'relationship to the household head' question, with a focus on usual residents within the household to establish typical living arrangements. For instance, parental presence could be identified when the index individual is listed as a biological son or daughter of the household head or if they are the head of the household, and their parent is part of the household. Alternatively, if the head of the household is the grandparent and their son or daughter, along with their child(ren) are listed on the household schedule, this indicates parental presence.

Furthermore, the research uses other readily available variables from the DHS datasets, such as country-specific wealth quintiles and rural-urban residence. These variables are specifically designed to measure subnational disparities and are included as control variables in the study. Additionally, the study includes the survey country variable.

Weighting was applied using a combination of the standard individual recode and the population distribution of female adolescents aged between 15 and 19 years within the respective individual countries in the study. These population estimates were obtained from the United Nations Population Division World Population (WPP) estimates.[32] A fixed effects logistic model was then employed to account for the complex sample design across the aggregated datasets. In cases where strata consisted of single units, the analysis assumed that the strata shared the same variance as the average variance of strata from multiple sampling units. Additionally, the analysis adjusted for cluster effects to account for inter-country differences, utilising a method developed by Jayatillake et al.[29]

The following is the resultant logistic model used:

Where:

Eqn 2 bi* represents the probability of an adolescent ever giving birth,

Eqn 3 bi represents the type of residence,

Eqn 4 bf presence of an orphan in the household,

Eqn 5 the wealth index of the household,

Eqn 6Ρ presence/absence of parents in the household for the index adolescent,

Eqn 7c, the country, and

Eqn 8 εc represents the country cluster effect.

Patient and public involvement statement

The article will be shared with the DHS programme facilitating its dissemination and circulation in accordance with the stipulated conditions for data access. The study did not involve direct patient or public participation.

Ethical considerations

The DHS survey protocols are reviewed and approved by the relevant bodies in the US where the DHS programme is based, and in the respective host countries where the surveys are conducted. For the current study specifically, ethical clearance was granted by the University of the Witwatersrand Human Research Ethics Committee (Medical) (ref. no. M220548).

 

Results

The sample sizes for the study were as follows: ~1 500 each for Lesotho, Mozambique and SA, 1 700 for Namibia, ~2 000 for Zimbabwe, ~2 500 for Eswatini and Malawi and 3 000 for Angola and Zambia (Table 2). The χ2 test results showed variations in adolescent births across the selected Southern African countries based on the following household circumstances: parental presence, rural-urban residence and wealth quintiles. The findings show that parental presence was significantly associated with a lower likelihood of adolescent childbearing across all nine countries. This was also true for the presence of an orphan in the households in Angola, Lesotho, Malawi, Mozambique, Zambia and Zimbabwe.

The findings from the fixed logistic model suggested that the presence of orphans in the household was associated with a 36% lower likelihood of childbearing, although this was not statistically significant. Conversely, the absence of at least one parent for the index adolescent was statistically associated with a higher likelihood of childbearing (aOR 3.07, p<0.05). While the extent of this association varied across countries, all countries showed higher odds of adolescent fertility compared with SA, which was the reference (aOR 1.4 - 5.4, p<0.05).

Fig. 1 shows the marginal probabilities to show the variability in the effect of orphan presence in the household, on adolescent fertility among the nine included countries.

The probability of an adolescent giving birth was generally lower in most Southern African countries for adolescents residing with orphaned children in the household, compared with those who were not. Angola, Malawi and Zambia showed the highest differences, and SA the smallest difference.

 

Discussion

The findings suggest interesting but highly complex insights. The research highlights the importance of household relations variables in understanding child-parent co-residence, an aspect that has been largely overlooked in previous studies. In the current study, the absence of parents for the index adolescent was associated with a higher likelihood of adolescent fertility. The potential protective role of parental presence against adolescent fertility is supported by a recent study conducted in the Philippines. This study also used DHS data and the 'relationship to the household head' variable to examine parent-adolescent co-residency. Their findings corroborated those of the current study, showing that female adolescents aged 15 - 19 years who lived without either parent were more likely to become pregnant.[37]

The intercountry disparities shown in the study are also notable, highlighting the need to consider country-specific contexts when addressing adolescent fertility and related policies. For instance, the study confirms the established knowledge that SA has the lowest fertility rates among adolescents relative to that of the rest of the countries in the subregion and the broader sub-Saharan Africa (SSA region). [3] This conclusion also holds, independently when applying Kisambira's standard.[33] However, the low adolescent childbearing in SA should be seen in the context of high unwanted premarital adolescent fertility in the country,[34] alongside the globally record-high levels of parental absence.[38]

The results also appear to underscore the existing disparities within the Southern Africa subregion but with a notable convergence within its southernmost part. For example, there are relatively lower adolescent childbearing levels for the five southernmost countries, which also constitute 'Southern Africa' using an alternative definition, including SA, Namibia, Lesotho, Eswatini and Botswana.[35] Angola, Mozambique, Malawi and Zambia globally have some of the highest fertility overall.[31]Zimbabwe has experienced a complex fertility transition, with one of the earliest transitions, one of the longest stalls, and consistently and relatively high premarital fertility.[3,36] Zimbabwe is categorised within the 'Southern Africa' group, characterised by medium overall fertility levels.[3] In the study, results suggest that adolescent childbearing in Zimbabwe is also relatively low.

 

 

 

Table 3

 

Some results from the study seemed counterintuitive. This includes possible protective effects of orphan presence on adolescent fertility. This seemingly paradoxical finding aligns with a previous study using data collected from cities in the USA and SA, that found that living with other people who are not biological parents may be protective of adolescent sexuality.[39] Likewise, results from a longitudinal study in Ouagadougou also showed a lower risk of premarital pregnancy for females who lived with neither parent, compared with their counterparts who lived with a parent. [40] These results may be indicative of the complex interplay of living arrangements, parental presence and adolescent fertility.

Nonetheless, the study results should be interpreted in the context of important limitations. This includes temporal issues, particularly the relatively wide data window spanning 2006 - 2016 as well as whether adolescent fertility preceded the reported living arrangements or vice versa. This may have affected comparisons across countries because of the expected decline in adolescent fertility over time. This is especially relevant for temporal variations in the broader trends of orphanhood and fosterage, as well as the dynamics of household absorption over time.

The research has delved into the complex relationship between adolescent fertility, a common demographic phenomenon, and previously unexplored yet increasingly emphasised socioeconomic factors- orphanhood and parental absence. Challenges related to the utilisation of surveys in this context have also been identified.[41] For example, the household-based samples exclude non-household populations that may be at a disproportionate risk of adolescent fertility. The household typology also affects household constitution and intra-household relationships, as other 'members' may be excluded. In DHS surveys, a household typically constitutes usual members and visitors at a designated reference time.[31] This potentially excludes individuals who are away for extended periods such as migrant populations, who may still contribute to their children's lives through remittances and periodic visits. This is exacerbated by the complex African household dynamics that may be relatively difficult to decipher using the 'relationship to household head', for example, multiple household membership.

Further research using longitudinal data may unpack some of the results presented here. This underscores the importance of functional civil registrations and vital statistics systems (CRVS) systems that allow better tracking of progress in reducing adolescent fertility.

 

Conclusions

The study presents findings with important policy implications. The study explored the potential spill-over effect of orphanhood or fosterage on adolescent fertility across countries in Southern Africa. Tailored approaches are necessary to address adolescent fertility within the unique contexts of individual countries, considering factors such as orphanhood, parental presence and broader sociocultural and economic influences. Additionally, the study showcases the utility of household relations variables to identify child-parent co-residence, a largely underutilised aspect.

Declaration. The manuscript was prepared in partial fulfilment of a PhD degree at the University of the Witwatersrand.

Acknowledgements. I would like to acknowledge the DHS Program for providing the valuable data used in this study.

Author contributions. Sole author.

Funding. None.

Conflicts of interest. None.

 

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Correspondence:
M Shoko
Mercysh@statssa.gov.za

Accepted 26 January 2024