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Rural-Urban Disparity in Induced Abortion in Ghana: A Multivariate Non-Linear Decomposition Analysis of Ghana Maternal Health Survey

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10 December 2024

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12 December 2024

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Abstract

Globally, 73.3 million induced abortions were recorded between 2015 and 2019. There are significant disparities in induced abortions across the rural-urban divide which is necessary for the development of targeted policies and interventions. In this study, we decomposed the rural-urban disparities in induced abortion in Ghana. Data for the study was extracted from the most recent 2017 Ghana Maternal Health Survey. The sample for this study comprised of women who have ever been pregnant resulting in a weighted sample of 18,140. A multivariate non-linear decomposition model was employed to decompose the rural-urban disparities in induced abortion. The results were presented using coefficients and percentages. The results were presented using coefficients and percentages. The proportion of women who have had induced abortions in their lifetime in the study was 27.1%. Induced abortion was higher in urban areas (34.1%) than in rural areas (19.4%). Approximately 55% of the rural-urban disparities in induced abortion were attributable to differences in women's socio-demographic and obstetric characteristics. Hence, if women’s socio-demographic and obstetric characteristics were equalled, the rural-urban disparity in induced abortion would be decreased. Region of residence (25.4%), education (16.6%), and parity (9.4%) explained approximately 51% of the rural-urban inequality in induced abortion. This study shows significant rural-urban disparities in induced abortion, with the disparities being attributable to the differences in socio-demographic and obstetrics characteristics: region of residence, education, and parity. Policymakers could focus and work on intensifying sexual and reproductive health educational messages, particularly, among women residing in the middle and southern ecological zone of Ghana, and also targeting the educated.

Keywords: 
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Subject: 
Social Sciences  -   Other

Introduction

Since the 1966 International Covenant on Economic, Social, and Cultural Rights, the rights of women to access maternal and reproductive health have been on the priority agenda of the international community [1]. Subsequently, the 1994 International Conference on Population and Development (ICPD) established the importance of women’s autonomy and their rights to access abortion services [2]. Beyond these actions, there are currently the sustainable development goals (SDGs) which target 3.1 (i.e., reduce the global maternal mortality ratio to less than 70 per 100 000 livebirths) and 3.7 (i.e., ensure universal access to sexual and reproductive healthcare services by 2030) inherently have implications on induced abortion worldwide [3]. Despite these policy frameworks, the incidence of induced abortion remains a significant public health concern as most of these abortions are categorized as unsafe. That is, “an abortion that is carried out either by a person lacking the necessary skills or in an environment that does not conform to minimal medical standards, or both” [4].  
Available evidence indicates that nearly 73.3 million induced abortions were reported across the globe yearly between 2015 and 2019 [5]. Out of this figure, 45% of these abortions were categorized as unsafe with 97% of all unsafe abortions occurring in low-and-middle-income countries [1]. Regarding adverse outcomes of induced abortion, 62% of all induced abortion-related mortalities are reported in Africa [6]. In Ghana, 57.5% of induced abortions in the country were provided by unskilled providers, thereby making the procedure unsafe [7]. Nevertheless, safe induced abortion is considered a human right of every woman [8]. Hence, accessibility to safe induced abortion reduces the incidence of unsafe abortions and its concomitant health outcomes.
There is a preponderance of evidence showing the factors that influence women to have an induced abortion. Among the factors identified in previous studies include non-use of contraceptives [9], educational attainment level [7], gender preferences [10], marital status and region of residence [11], unmet need for contraception [12], wealth status and parity [13]. Beyond these factors, it is undisputed that place of residence plays a critical role in health service utilization, including the decision to have an induced abortion. Studies conducted in China [14] and India [15] have shown that there are significant disparities in induced abortions across the rural-urban divide. For instance, Rahaman et al. [15] study showed women from poorer households were significantly more likely to have an unsafe induced abortion when they lived in rural areas than when they resided in urban areas. An understanding of the rural-urban disparities is imperative to identify the factors that influence induced abortions exclusively in either rural or urban areas or those that are uniform across both places of residence. This would ensure the development of targeted policies and interventions. Nevertheless, no study in Ghana has disaggregated the associated factors of induced abortions across the dimension of place of residence. This situation suggests a significant knowledge gap in the current discourse of induced abortion in Ghana. The current study, therefore, seeks to examine the rural-urban disparities in induced abortion in Ghana.

Theoretical Framework

This study is underpinned by the social learning theory. The social learning theory proposes that the environment is a major force in human behavior in that human behavior is influenced by observation, modeling, and imitations [16,17]. An individual learns behavior by observing others in a social setting such as family, friends, teachers, neighbors, and church groups. Individuals assimilate and imitate that behavior when they are associated with rewards or positive experiences. Bandura asserts that reinforcement can account for social learning. Reinforcement is when an individual is aware of prior experience consequences. If the consequence of abortion is positive there is the likelihood of its occurrence and vice versa.

Methods

Data source and Study Design

Data for the study was extracted from the most recent Ghana Maternal Health Survey (GMHS) conducted in 2017. We used the women’s individual recode files. The GMHS is a nationally representative cross-sectional survey that uses a two-stage cluster sampling method. The study was restricted to women who have ever been pregnant. This is because pregnancy exposes an individual to the likelihood of induced abortion.

Outcome Variable

Induced abortion was the outcome variable in this study. Women were asked ‘How many pregnancies have ended this way (abortion) in your lifetime?’ The response categories yielded responses such as none (0), 1, 2, or more. Those with none were coded as “0=no” and those who have had 1 or more were coded as “1=yes”.

Primary Exposure

The main explanatory variable was place of residence. The responses for this were “rural” and “urban”.

Potential Confounders

The potential confounders were selected based on their association with induced abortion in literature. The covariates include age, region of residence, educational attainment, marital status, ethnicity, religion, current contraceptive use, age at first sex, knowledge of ovulation, parity, knowledge of abortion legality, and migration status. The categories of each of the variables are shown in Table 1.

Statistical Analyses

Data for the study were analyzed using Stata version 16 (StataCorp, College Station, Texas, USA). First, the distribution of induced abortion across explanatory variables and covariates was examined using the chi-square test. The results were further disaggregated by place of residence. Third, multivariable binary logistic regression analysis was carried out to explore the predictors of induced abortion by place of residence. Finally, a multivariate non-linear decomposition analysis was employed to decompose rural-urban disparities in induced abortion. The multivariate non-linear decomposition analysis partitions disparity in induced abortion into components attributable to changing characteristics of women and due to changing reproductive behavior of the women. This technique also partitions the two components into segments that represent the contribution of each predictor to each of the two components (C and E) in a detailed decomposition. Component C refers to the part of change attributable to changing reproductive behavior while component E denotes disparity attributable to changing characteristics. To take care of the complex nature of the GMHS data, we used the “svyset” command during analysis, and weight and cluster were taken into consideration.

Results

Bivariate analysis of factors associated with induced abortion among women in Ghana
Table 1 presents the characteristics of the study population and factors associated with induced abortion. Most of the participants were aged 35-49 years (43.8%), 52.5% resided in urban areas and more than half (57.8%) resided in the southern region of Ghana. More than a third of the women had Middle/JHS education (40.0%), close to half (48.7%) were currently married, and approximately 8 in 10 women were Christians (79.6%). A little over half experienced sexual debut before 18 years (55.9%), 70.2% were not currently using contraceptives, 59.4% had wrong knowledge of ovulation, 57.1% had a parity of 1-3 children, 9 in 10 women (90.6%) do not have knowledge of abortion legality and 62.6% were migrant. The prevalence of induced abortion in the study was 27.1%. Induced abortion was higher in urban areas (34.1%) than in rural areas (19.4%). Except for age, there were statistically significant differences in induced abortion across all the characteristics of women (Table 1). Regarding those residing in rural areas, except for migration status, there were statistically significant differences in induced abortion across all characteristics (Table 2). Except for age and knowledge of abortion legality, there were statistically significant differences in induced abortion across all characteristics in urban areas (Table 2).
Rural-urban disparities in factors associated with induced abortion among women in Ghana
The odds of induced abortion among women residing in the southern regions in both urban (AOR=2.88; 95%CI=2.37-3.52) and rural areas (AOR=3.10; 95%CI=2.51-3.85) were high compared to those residing in northern regions of Ghana (Table 3). Nevertheless, the odds were higher in rural areas. Compared with women with no education, women with any form of formal education were more likely to have had induced abortions in both urban and rural areas. However, the odds were higher among those with primary (AOR=1.78; 95%CI=1.45-2.18) or middle/JHS education (AOR=2.16; 95%CI=1.80-2.59) in urban areas. On the other hand, the odds of induced abortion were also higher among those with secondary (AOR=2.39; 95%CI=1.81-3.15) or higher education (AOR=2.29; 95%CI=1.49-3.53) in rural areas. The likelihood of induced abortion decreased with increasing parity in both rural (AOR=0.07; 95%CI=0.05-0.10) and urban areas (AOR=0.11; 95%CI=0.08-0.15). Overall, approximately 55% of the rural-urban disparities in induced abortion were attributable to differences in women's socio-demographic and obstetric characteristics (Table 4). Therefore, if women’s socio-demographic and obstetric characteristics were equaled, the rural-urban disparity in induced abortion would be decreased. Among the socio-demographic and obstetric characteristics, region of residence (25.4%), education (16.6%), and parity (9.4%) explained approximately 51% of the rural-urban inequality in induced abortion (Table 5).

Discussion

The current study sought to examine rural-urban disparity in induced abortion in Ghana using a multivariate non-linear decomposition analysis. We found that the overall prevalence of induced abortion was 27.1%, which contradicts a previous study that reported an induced abortion of 6.0% in India [18]. In addition, the findings of this current study are inconsistent with other studies that reported an induced abortion rate of 10.1% in China [19], 13.6% in Ethiopia [20], and 16.0% in Nepal [21]. The high prevalence of induced abortion in this study could be because we limited the data to women who have had an abortion in their lifetime. Also, evidence shows that there has been an increase in contraceptive use in Ghana from 22% in 2014 to 25% in 2017% and an increase in the knowledge of the legality of abortion from 4% in 2007 to 11% in 2017 [22]. Probably, women tend to prevent unwanted pregnancies by using contraceptives, and those who get pregnant use legal means to abort a pregnancy by accessing safe abortion methods or they do not report induced abortion.
Our findings point to rural-urban differentials in induced abortion. Induced abortion was higher in urban areas (34.1%) than in rural areas (19.4%). The findings of this study corroborate other studies that reported a higher proportion of induced abortion in urban areas [18,23]. The result is also inconsistent with previous studies that have reported that rural areas have a disproportionately higher prevalence of induced abortion than urban areas [15]. Evidence shows that in rural areas there is a lack of access to safe abortion health services or procedures. Also, the socio-economic conditions make it very difficult for some people to afford safe abortions. In addition, women in rural areas have a lower degree of autonomy and high unmet need which sometimes lead to unwanted pregnancy and consequently, induced abortion [15,24]. The plausible reason why induced abortion is higher in urban areas than in rural areas could be attributed to high modern contraceptive use in rural areas (27%) compared with 23% in urban areas. Also, high unmet needs in urban areas [22], and the fear of the stigma of being pregnant are mostly for unmarried women. Also, the socio-economic conditions such as the high cost of living in the urban areas compared to the rural areas could contribute to the high induced abortion in urban areas.
Consistent with the findings of a related study by Wei et al. [25], rural-urban disparities in induced abortion were attributable to the differences in parity. The regression analyses show that the odds of induced abortion significantly declined with an increase in parity. This implies that women without a child were more likely to have induced abortions than those with a child (ren). As the number of children increases, the odds of inducing abortion decrease. The situation is the same for the pooled data as well as the rural-urban data. However, the odds were much lower for those in rural areas than those in urban areas. Evidence indicates that socioeconomic factors, especially, education, marital status, and fear of stigma have been identified as some of the reasons why women without a child may induce pregnancy more than those with a child(ren) [26]. Due to stigma or shame, unmarried women may postpone childbirth by inducing a pregnancy. Culturally, postponing childbearing to a more suitable time, especially after marrying is like a norm that regulates the behavior of both rural and urban residents in Ghana [27,28]. In addition, unwanted pregnancy and restriction of family size could explain a decrease in the odds of induced abortion when parity increases.
Education of women emerged as an important factor that explains rural-urban differentials in induced abortion. Greater odds were reported for women with education. Educated women were more likely to induce abortion at all levels than those without education. This was similar for those in rural and urban areas. The results agree with other studies [29,30]. Prior studies reported that education exposes people to many things, including higher knowledge of healthcare, and abortion laws, as well as enabling women to have greater autonomy in their decisions [31,32,33]. The abortion laws in Ghana frown on the termination of pregnancy. However, a pregnancy can be terminated based on certain factors such as rape and health conditions [31]. The probable reason why educated women in this study induce abortion could be attributed to their knowledge and awareness of the abortion laws, which could influence their decision to induce a pregnancy rather than look for a safe abortion process. In this current study, the odds of induced abortion were higher for women with Middle or Second-cycle education in both the rural and urban areas. Consequently, women in school especially in the middle, secondary, and tertiary may recourse to induced abortion to prevent unwanted pregnancies to enable them to further their education. Biggs et al. [32] argued that women perceived the difficulty of schooling and achieving their career goals when raising a child and this sometimes leads to induced abortion.
We also found that the place of region explains the rural-urban differentials in induced abortion. The results show that women in the Southern and Middle regions were more likely to induce a pregnancy than women in the northern region. Contextually, both the middle and southern regions are more developed than the northern regions. Hence, most of the residents may have autonomy and the socio-economic conditions may influence the decisions of women to induce a pregnancy.

Strengths and Limitations of the Study

The GDHS data is nationally representative and this makes it possible for our results to be generalized. However, our data was limited to women who had induced abortions in their lifetime. Hence, the results should be interpreted in line with lifetime induced abortion other than only induced abortion within five years. Again, GDHS is a cross-sectional study that cannot be used to establish causality, but rather, an association (s) between variables. In addition, the self-report measure of the outcome variable, induced abortion, has the potential for unintentional bias.

Conclusion and Recommendation

We found a significant disparity in induced abortion in urban and rural areas. The findings from this study suggest that women in urban areas have more induced abortions than women in rural areas. The difference in the rural-urban disparity is attributed to parity, education level of women, and region of residence. Policies should target women with formal education in both rural and urban areas aiming to prevent induced abortion. Women should be encouraged to use safe abortion procedures such as accessing health care for abortion services. In addition, women in urban areas should be encouraged to use contraceptives to prevent unwanted pregnancies. There should also be education on the abortion process as well as easy accessibility of abortion services for both women in rural and urban areas to reduce induced abortion.

List of Abbreviations

AOR Adjusted Odds Ratio
GDHS Ghana Demographic and Health Survey
GHS Ghana Health Service
GMHS Ghana Maternal Health Survey
GSS Ghana Statistical Service
ICPD International Conference on Population and Development
NMIMR Noguchi Memorial Institute for Medical Research
SDG Sustainable Development Goal
UN United Nations
WHO World Health Organization

Author Contributions

IY led the conceptualization and analysis of the research, MWA and MNE participated in the process. IY and MWA participated in drafting the manuscript. DD, DK, AKC and SAOK reviewed and edited the draft. All authors reviewed the manuscript.

Funding

This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.

Ethical approval

The 2017 Ghana Maternal Health Survey was conducted under the scientific guidance of the Ghana Statistical Service, Ghana Health Service (GHS), and Noguchi Memorial Institute for Medical Research (NMIMR). ICF International approved the survey and provided technical assistance. Informed consent was obtained from all the respondents before the commencement of interviews with each interviewer.

Data Availability

The datasets generated and analyzed for this study are available in the MEASURE DHS database at the repository; https://dhsprogram.com/data/dataset/Ghana_Special_2017.cfm?flag=1.

Acknowledgments

Not applicable.

Declaration of Conflicting interest

The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

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Table 1. Univariate and bivariate analysis of induced abortion among ever-pregnant women in Ghana, 2017.
Table 1. Univariate and bivariate analysis of induced abortion among ever-pregnant women in Ghana, 2017.
Characteristics Frequency Percentage (%) Induced abortion p-value
No (%) Yes (%)
Age 0.282
  15-24 3194 17.6 74.0 26.0
  25-34 6994 38.6 72.0 28.0
  35-49 7951 43.8 73.2 26.8
Place of Residence <0.001
  Rural 8622 47.5 80.6 19.4
  Urban 9517 52.5 65.9 34.1
Region of Residence <0.001
  Southern 10483 57.8 70.1 29.9
  Middle 5228 28.8 68.1 31.9
  Northern 2429 13.4 95.5 4.5
Educational Attainment <0.001
  No education 4347 24.0 87.8 12.2
  Primary education 3147 17.4 73.4 26.3
  Middle/JHS 7251 40.0 66.9 33.1
  Secondary 2314 12.8 63.3 36.7
  Higher 1081 5.8 71.1 28.9
Marital Status
  Currently married 8826 48.7 79.3 20.7 <0.001
  Cohabiting 4977 27.4 68.9 31.1
  Not in union 4337 23.9 64.5 35.5
Religion
  Catholic 1671 9.2 74.7 25.3 <0.001
  Other Christians 12775 70.4 68.4 31.6
  Muslim 2786 15.4 87.7 12.5
  Traditionalist/Spiritualist 391 2.2 93.4 6.6
  No Religion 516 2.8 82.9 17.1
Current Contraceptive use <0.001
  Yes 5405 29.8 69.9 30.1
  No 12735 70.2 76.7 23.3
Age at first Sex <0.001
  < 18 years 10143 55.9 76.9 23.1
  18 years above 7997 44.1 67.1 32.9
Knowledge of Ovulation
  Wrong Knowledge 10771 59.4
  Correct Knowledge 7369 40.6
Parity <0.001
  No birth 1118 6.2 35.5 64.5
  1-3 10348 57.1 73.7 26.3
  4-5 4060 22.4 74.6 25.4
  6+ 2613 14.4 83.2 16.8
Knowledge of Abortion Legality
  Yes 1705 9.4 68.3 31.7 0.002
  No 16435 90.6 73.4 26.6
Migration Status
  Migrant 11358 62.6 71.4 28.6 <0.001
  Non-Migrant 6782 37.4 75.5 24.5
Total 18,140 100.0 72.9 27.1
Table 2. Bivariate analysis of induced abortion among women in Ghana stratified by place of residence.
Table 2. Bivariate analysis of induced abortion among women in Ghana stratified by place of residence.
Characteristics Rural (n=8622) Urban (n=9518)
Induced abortion
Yes (%)
P value Induced abortion
Yes (%)
P-value
Age 0.049 0.732
  15-24 14.6 28.5
  25-34 13.4 28.8
  35-49 12.4 28.0
Region of Residence <0.001 <0.001
  Southern 22.9 33.8
  Middle 22.1 37.6
  Northern 4.0 8.3
Educational Attainment <0.001 <0.001
  No education 5.5 12.5
  Primary education 14.2 28.3
  Middle/JHS 22.1 35.5
  Secondary 26.0 34.0
  Higher 23.4 23.1
Marital Status <0.001 <0.001
  Currently married 8.0 20.3
  Cohabiting 21.1 38.1
  Not in union 21.8 37.9
Religion <0.001 <0.001
  Catholic 10.2 28.6
  Other Christians 19.2 35.8
  Muslim 4.9 10.7
  Traditionalist/Spiritualist 3.1 11.1
  No Religion 8.6 22.1
Current contraceptive use <0.001 <0.001
  Yes 17.5 32.2
  No 88.6 26.8
Age at first Sex <0.001 <0.001
  < 18 years 14.7 34.5
  18 years above 10.7 22.5
Knowledge of Ovulation <0.001 <0.001
  Wrong Knowledge 10.6 25.2
  Correct Knowledge 18.8 33.2
Parity <0.001 <0.001
  No birth 54.7 66.2
  1-3 13.3 25.7
  4-5 12.4 26.9
  6+ 7.9 20.5
Knowledge of Abortion Legality <0.001 0.263
  Yes 18.2 29.8
  No 12.9 28.2
Migration Status 0.684 <0.001
  Migrant 13.3 30.4
  Non-Migrant 13.0 24.9
Total 19.4 34.1
Table 3. Multivariable regression analysis of factors associated with induced abortion among women in Ghana by place of residence.
Table 3. Multivariable regression analysis of factors associated with induced abortion among women in Ghana by place of residence.
Pooled Urban Rural
aOR [95%CI] aOR [95%CI] aOR [95%CI]
Age
15-24(ref)
25-34 1.93[1.70-2.20]*** 1.97[1.66-2.34]*** 1.66[1.362.03]***
35-49 2.63[2.28-3.03]*** 2.42[2.01-2.92]*** 2.33[1.86-2.93]***
Region
Northern (ref)
Southern 3.27[2.84-3.77]*** 2.88[2.37-3.52]*** 3.10[2.51-3.85]***
Middle 3.59[3.08-4.18]*** 3.53[2.87-4.35]*** 2.92[2.31-3.69] ***
Migration Status
Migrant (ref)
Non-migrant 0.79[0.72-0.86]*** 0.77[0.69-0.86]*** 0.87[0.76-1.00]*
Religion
Catholic (ref)
Other Christian 1.13[0.99-1.29] 0.99[0.82-1.19] 1.21[0.99-1.49]
Islam 0.77[0.65-0.92]**
0.54[0.43-0.68]*** 0.93[0.70-1.23]
Traditional/Spiritualist 0.45[0.28-0.71]** 0.60[0.26-1.39] 0.49[0.27- 0.86]*
No Religion 0.76[0.56-1.03] 0.64[0.41-1.01] 0.92[0.61-1.40]
Parity
No child (ref)
1-3 0.13[0.11-0.16]*** 0.14[0.12-0.18]*** 0.12[0.09-0.16]***
4-5 0.12[0.10-0.15]*** 0.13[0.12-0.19] *** 0.10[0.08-0.14] ***
6 or more 0.08[0.06-0.10]*** 0.11[0.08-0.15] *** 0.07[0.05-0.10] ***
Knowledge of Ovulation
Wrong knowledge (ref)
Correct Knowledge 1.35[1.24-1.47]*** 1.31[1.18-1.46]*** 1.44[1.26-1.65]***
Legal Abortion
Yes (ref)
No 0.83[0.72-0.95]** 0.88[0.75-1.03] 0.77[0.60-0.99]*
Contraceptive Use
Yes (ref)
No 0.73[0.67-0.80]*** 0.77[0.68-0.86]*** 0.66[0.57-0.76]***
Marital Status
Currently married (ref)
Cohabiting 1.45[1.31-1.61]*** 1.53[1.33-1.76]*** 1.46[1.24-1.72]***
Not in union 1.54[1.38-1.71]*** 1.52[1.33-1.74] *** 1.43[1.19-1.72]***
Age at First Sex
Below 18 years (ref)
18 years above 0.49[0.45-0.54]*** 0.45[0.40-0.50]*** 0.54[0.47-0.63]***
Education
No education (ref)
Primary 1.77[1.53-2.04]*** 1.78[1.45-2.18]*** 1.52[1.23-1.87]***
Middle/JHS 2.22[1.95-2.53]*** 2.16[1.80-2.59] *** 1.85[1.53-2.24] ***
Secondary 2.59[2.20-3.04]*** 2.21[1.79-2.73] *** 2.39[1.81-3.15] ***
Higher 1.84[1.49-2.27]*** 1.49[1.15-1.93] ** 2.29[1.49-3.53]***
Note: p value < 0.05=*, p value <0.01**, p value <0.001***.
Table 4. Overall decomposition of the change in induced abortion.
Table 4. Overall decomposition of the change in induced abortion.
Components Coefficient P-value 95%CI Percent (%)
E 0.08 0.000 0.08-0.09 55.4
C 0.07 0.000 0.06-0.08 44.6
R 0.15 0.000 0.14-0.16 100.0
Table 5. Multivariate decomposition analysis of factors associated with induced abortion disparity between rural and urban residence.
Table 5. Multivariate decomposition analysis of factors associated with induced abortion disparity between rural and urban residence.
Due to differences in characteristics Due to differences in coefficient
Coefficient P value Percent Coefficient P value Percent
Age
15-24 (ref)
25-35 0.00 <0.001 2.17 0.01 0.209 4.66
36-49 0.00 <0.001 0.95 0.00 0.797 1.24
Region
Northern (ref)
Southern 0.03 <0.001 16.62 0.00 0.615 -1.72
Middle 0.01 <0.001 8.78 0.00 0.254 2.54
Migration Status
Migrant (ref)
Non migrant 0.00 <0.001 1.46 -0.01 0.168 -3.98
Religion
Catholic (ref)
Other Christians 0.00 0.917 -0.1 -0.01 0.153 -7.8
Islam 0.00 <0.001 -1 -0.01 0.005 -9.41
Traditionalist/Spiritualist 0.00 0.224 1.97 0.00 0.687 0.78
No Religion 0.00 0.054 1.03 0.00 0.25 -1.16
Parity
No child (ref)
1-3 -0.04 <0.001 -26.32 0.01 0.248 7.03
4-5 0.01 <0.001 7.64 0.01 0.087 6.51
6 or more 0.04 <0.001 28.04 0.01 0.026 9
Knowledge of Ovulation
Correct knowledge (ref)
Wrong knowledge 0.00 <0.001 2.0 0.00 0.289 -2.18
Knowledge of abortion legality
Yes (ref)
No 0.00 0.122 0.75 0.01 0.361 9.63
Current contraceptive use
Yes (ref)
No 0.00 <0.001 -0.07 0.01 0.096 7.92
Marital Status
Currently married (ref)
Cohabiting 0.00 <0.001 -1.04 0.00 0.674 0.79
Not in union 0.01 <0.001 3.57 0.00 0.581 0.76
Age at first sex
Below 18 years (ref)
18 years above -0.01 <0.001 -9.28 -0.01 0.055 -5.4
Educational Attainment
No education (ref)
Primary 0.00 <0.001 -1.1 0.00 0.302 2.03
Middle/JHS 0.01 <0.001 7.05 0.00 0.264 3.16
Secondary 0.01 <0.001 7.94 0.00 0.662 -0.35
Higher 0.00 0.002 2.75 0.00 0.09 -0.66
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