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Utilization of integrated HIV and sexual and reproductive health services among women in Uganda

BMC Health Services ResearchBMC series – open, inclusive and trusted201616:494

https://doi.org/10.1186/s12913-016-1761-3

Received: 21 August 2015

Accepted: 15 September 2016

Published: 20 September 2016

Abstract

Background

While the rationale for integration of HIV and sexual and reproductive health (HIV and SRH) services is strong, there is paucity of information on which population groups most utilize these services. Such studies would inform policy and programs on integration of services. The overall objective of this assessment is to provide information to researchers, planners and policy makers on the best practices for integrated services in order to maximize feasibility of scaling up. Specifically, this research paper identifies demographic and socioeconomic factors that are most related to utilization of integrated services in Uganda.

Methods

This manuscript uses data from a sample of 9,691 women interviewed during the Uganda AIDS Indicator Survey (UAIS) of 2011. The selection criteria of the study respondents for this paper included women of reproductive age 15 – 49 years. The dependent variable is whether the respondent utilized integrated HIV and SRH services during pregnancy and delivery of the last child, while independent variables include; region of residence, age-group of woman, marital status, rural-urban residence, wealth indicator and educational level attainment. In the main analysis, a binary logistic regression model was fitted to the data.

Results

Log-odds of utilizing integrated services were significantly higher among those women with a primary education (OR = 1.2, 95 % CI = 1.0-1.4, p < 0.05) compared to those with no education. Women from the Central part of Uganda were more likely to utilize integrated HIV and SRH services (OR = 1.3, 95 % CI = 1.0-1.7, p < 0.05), further the log-odds of utilizing integrated HIV and SRH services were significantly higher among women residing in Northern region (OR = 1.6, 95 % CI = 1.2-2.2, p < 0.01). The odds of utilization of integrated HIV and SRH services were higher for currently married women (OR = 6.6, 95 % CI = 5.5-8.0, p < 0.01) and the formerly married (OR = 3.4, 95 % CI = 2.7-4.2, p < 0.01), compared to the never married group. The odds of utilizing integrated HIV and SRH services were higher for younger women of ages less than 35 years compared to older women aged 40 – 49 years.

Conclusions

Utilization of integrated HIV and SRH services in Uganda is influenced greatly by demographic and socioeconomic characteristics. This study contributes to the current debate as it shows the on how best ways to improve HIV and SRH service delivery to the people.

Keywords

Utilization Integrated HIV Sexual Reproductive Health Women and Uganda

Background

Offering integrated HIV and Sexual and Reproductive Health (SRH) services is considered an effective means to manage and deliver care [1]. This is so because integration of SRH and HIV services has the potential to simultaneously address multiple patient needs in one location. For example, there has been broad international consensus that the goal of preventing mother-to-child transmission-PMTCT of HIV cannot be met without increasing access to family planning-FP services [24].

Whereas HIV and SRH services are related, and there are important potential benefits for both the client and health system associated with linking and integrating the provision of these services [1, 2, 5]. The rationale for utilization of integrated services is that there is potential for increase in the coverage of HIV services, as individuals who use SRH services can benefit from HIV services and vice-versa, as well as increase cost-savings [1, 68]. Within high HIV prevalence settings, the integration of HIV and SRH services has been widely regarded as beneficial in not only improving individual outcomes and reducing HIV transmission, but also improving the efficiency of service delivery [9]. In a study of integration opportunities in Addis Ababa Ethiopia, it was found that due to lack of integration, women were at risk of not receiving needed FP or HIV care services [10].

Despite the inadequate evidence on the procedure of operationalizing integrated programs, the dual family planning-HIV needs for clients are clear. Some studies have documented the levels of unmet need for family planning ranging from 14 to 67 % among clients of voluntary counselling and testing (VCT) [11], and from 9 % to 56 % among ART clients in Ghana [12]. Likewise, levels of unplanned pregnancies among HIV positive women appear to be much higher: from 51 % to 99 % of HIV positive women reported among studies in Côte d’Ivoire, South Africa, and Uganda [1315]. A study in South Africa, examining the feasibility and acceptability of integrating counseling and testing services in family planning clinics, found that family planning clients were at risk of contracting HIV and other sexually transmitted infections (STIs). Although 17 % had multiple partners, 30 % knew their HIV status, and 40 % did not use a condom at last sex, while only 23 % of clients perceived a high risk of HIV [16]. This study further investigated the predictors of utilization of HIV and SRH services, the latter encompassing family planning services, prenatal, delivery care and post-delivery.

Admchack, and others [17], in their framework identified three models of integrated HIV and FP services. These were included in the study: family planning in HIV counseling and testing (FP-CT), family planning services in care and treatment services (FP-C&Tx), and HIV services (particularly CT) in family planning (HIV-FP). These models were selected a priori because they have the potential to: 1). Increase access to FP services for clients who do not use traditional FP services (FP-CT). 2). Increase uptake of contraception among women with HIV (FP-C&TX). 3) Increase access to HIV services such as CT and referrals for treatment among clients of reproductive age (HIV-FP).

The framework of Adamchack and others guides the choice of the outcome variable examined in this manuscript. Furthermore, the Andersen’s behavioral model of health care services utilization, which has been widely applied on survey data and various health services and populations [1820], was used to guide selection of covariates that could affect utilization of both HIV and SRH services utilization.

Studies suggest that ANC service provision and the quality of services offered, are key components of healthcare delivery [21]. Evidence from health facilities three countries, namely Uganda, Tanzania and Burkina Faso suggest that health workers did not follow the recommended guidelines for health services delivery even when medical supplies were made available at the health facilities [22]. Furthermore, evidence from a Nepalese study suggest that a number of factors including: distance to the maternity hospital, low amenity score status, education, multi-parity, and antenatal care during pregnancy were associated with place of delivery by the mother [23, 24].

Whereas utilization of post-natal care services remains very low in many countries [2426], PNC also appears to be related to the degree of awareness of availability of such services as well as to other factors including: level of awareness of the services, women’s occupation, ethnicity, the number of pregnancies and children, and the husbands’ socioeconomic status, occupation and education [25]. It is also possible that women experiencing postnatal health problems will always have a high propensity of seeking postnatal care compared to those who do not have such health complications. In addition, women who do not use ANC services would be less likely to utilize PNC. Finally, women who had a smooth delivery would be less likely to use PNC services compared to those who had prior complications during delivery.

In their study that focused on a systematic review of the Spaulding and others, suggest that combining family planning and HIV services was a feasible and effective intervention [27]. While the rationale for integration is strong [2830], there is no firm evidence that suggests that integrated HIV and SRH services delivery result in increased contraceptive or HIV services utilization. Whereas the latter question may not be fully answered by the current study, it is important that the context of integrated HIV and SRH service delivery be clearly examined and for research evidence in this area to be developed. This paper seeks to explore the relationship between a number of predictor variables and utilization of integrated HIV and SRH services in Uganda. The reason for exploring these characteristics is that nearly all-existing studies have dwelt on benefits and effectiveness of offering integrated services. Understanding the characteristics of the clients is necessary for guiding programmes and elimination of inequality in access to services.

Methods

Data source

The 2011 Uganda AIDS Indicator Survey (UAIS) data were used for this study. Authorization to use the data was obtained from MEASURE DHS by providing a brief description of the study through their website. Permission to use the UAIS data for this study was obtained from ICF Macro International USA. Informed consent was obtained from all study participants at the time of data collection. Only eligible respondents who were willing to participate in the study were interviewed. The survey collected both background information as well as indicators on HIV and AIDS for all regions of Uganda, separate for urban and rural areas. The survey was conducted between February and September 2011 by the Uganda Ministry of Health [31].

Explanatory variables

In this study, Andersen’s behavioral model of health service use was adapted to examine the relationship between individual-level socioeconomic and demographic factors and the utilization of a specific package of maternal health services. According to Andersen’s behavioral model, healthcare utilization is a function of three major elements: predisposing factors (socio-demographic factors), enabling factors (e.g. income and health insurance) and healthcare needs such as functional disability and chronic illnesses [18, 32, 33]. The predisposing factors in the model were: age, education level attainment, and region of residence, type of place of residence, religion, marital status and number of children ever born. Wealth indicator was considered an enabling factor, while visiting the health facility in the year prior to the survey was included in the model as a proxy for the need factor.

Outcome variable

In this study the framework by Adamchack, and others [17] was adapted to derive the outcome variable. There are conceptual issues regarding the meaning of ‘integrated care’ and its measurement [34]. Whereas it may mean a combination of two previously separate components of care, it could also imply the addition of a new intervention dimensions into existing services [35]. In this manuscript therefore, integration is used to imply utilization of any of the HIV and SRH services jointly at a health service delivery facility during the pregnancy and delivery of the last child. The dependent variable was therefore dichotomous, that is, whether the respondent indicated that they had received any of the integrated HIV and SRH services. Women were asked a number of binary questions, which we combined to generate the variable “integrated HIV and SRH services”. The response variable was coded 1 if the individual answered affirmatively on any of the questions and zero otherwise. The following were the questions used:
  1. 1.

    Whether the individual woman sought STI advice from a family planning clinic.

     
  2. 2.

    Whether place of HIV test was family planning clinic.

     
  3. 3.

    Whether HIV testing was part of ANC visit

     
  4. 4.

    Whether individual got HIV test results as part of ANC visit.

     
  5. 5.

    Whether at last ANC visit individual talked about HIV; prevention of HIV and about getting a test for HIV.

     

Sampling

This study utilized data from a sample of 9,691 women of ages 15–49 years, who were interviewed during the 2011 UAIS [36]. The 2011 UAIS collected information from over 11,000 households including 22,000 women of ages 15–49 years and men aged 15–59. Using the 2002 Uganda population and housing census sampling frame, a two stage sampling design was adopted, in which the first stage involved selecting 470 clusters (79 urban and 391 rural from a list of enumeration areas. At the second stage of sampling, 25 households were selected from each of the 470 clusters identified in the first stage. The inclusion criterion for survey participants was all individuals (men and women) age 15–59 years present in the household the night before the survey. Furthermore, blood sample testing for HIV was done on a voluntary basis for all survey respondents. Blood samples were also collected from children under age 5 with the consent of their parents or caretakers. Additional explanation on the study design and procedures for data collection are available in the main UAIS report [31].

Statistical analyses

Univariate and bivariate analyses were done in order to describe the characteristics of women and their utilization of integrated HIV and SRH services. All explanatory variables with significant difference (p ≤ 0.05) were chosen and incorporated in the multivariate analyses. In the main analyses, a binary logit model was fitted to the data in order to predict whether individual woman utilized integrated HIV and SRH services or not. The odds ratios (ORs) based on a 95 % confidence interval (CI) were estimated for each of the categories of the independent covariates (Table 3). The regression model used is presented below:
$$ \mathrm{logit}\left[P\left(Y=1\right)\right]={\beta}_0+{\displaystyle \sum_{j=1}^k{\beta}_j{X}_j} $$
(1)

Where logit [P(Y = 1)] refers to the natural log-odds that a woman utilized integrated HIV and SRH services; β0 is the intercept of the equation fitted; and β j X j are the regression estimates for a set of independent covariates (numbered 1 through k) contained in the model.

For purposes of accounting for the complex sample design used in the UAIS, we weighted the data during the analysis. The latter procedure was intended to account for the effects of clustering and stratification as well as the sampling weights when computing the variance, standard error and confidence intervals (the svyset option was used). The variables included in the regression model were checked for multi-collinearity before being added to the analysis model. Finally all analysis was conducted using STATA data analysis software version 13.

Results

Descriptive results

Table 1 presents the descriptive findings of our study. According to the results the percentage of respondents increased from 12 % for age group 15–19 to 21 % for the next category 20–24 years. More than 52 % of the study population was in the ages below 25 years, while only about 18 % were in the ages above 40 years. The findings also show that 79 % of the respondents in the study sample were resident in rural areas, while nearly 16 % had never attended school. Only about one quarter (24 %) had attained at least a secondary education level. Furthermore, 73 % of the respondents were currently married, together with those previously married, those ever married comprised nearly 90 % of the study population A considerable percentage (36.5 %) of the women was poor, while 45 % belonged to top two wealth quintiles (richer category). In terms of religious affiliation, 87 % of the study sample was Christian while Moslems formed only 8.5 % of the study sample. Regarding region of residence, Western region had a fairly bigger sample representation compared to all other regions (25.2 %), followed by Northern region (24.9 %), and Kampala region had the least representation (11 %). Finally, Table 1 also shows that nearly 59 % of the respondents indicated that they had received integrated HIV and SRH services at their last visit to a health facility.
Table 1

Weighted percentage distribution of respondents by selected background characteristics (n = 9720)

Variable/category

Number

Percent

Age group

 15-19

1,162

12.0

 20-24

2,041

21.0

 25-29

1,928

19.8

 30-34

1,472

15.1

 35-39

1,353

13.9

 40-44

948

9.8

 45-49

816

8.4

Rural/urban residence

 Urban

2,008

20.7

 Rural

7,712

79.3

Education level

 None

1,535

15.8

 Primary

5,829

60.0

 At least secondary

2,356

24.2

Marital status

 Never married

1,202

12.4

 Currently married

7,097

73.0

 Previously married

1,422

14.6

Wealth indicator

 Poor

3,545

36.5

 Middle

1,772

18.2

 Richer

4,403

45.3

Religion

 Catholic

3,951

40.6

 Protestant

4,506

46.4

 Moslem

822

8.5

 Other

441

4.5

Region of residence

 Kampala

1,073

11.0

 Central

1,754

18.1

 Eastern

2,019

20.8

 Northern

2,422

24.9

 Western

2,453

25.2

Received integrated services

 No

3,992

41.1

 Yes

5,728

58.9

Table 2 shows the percentage distribution of women aged 15–49 years by their use of integrated HIV and SRH services. There was a strong association between utilization of integrated HIV and SRH services and women’s background characteristics, with exception of religious affiliation. Consequently we dropped religious affiliation from the multivariate logistic regression model due to non-significance at the bivariate stage of analysis.
Table 2

Distribution of women respondents by selected explanatory variables and by utilization of integrated HIV and SRH services (n = 9691)

Variable/category

Utilization of integrated HIV and SRH services

Pearson χ2

Significance

No

Yes

Age group

 15-19

16.9

8.3

  

 20-24

14.9

25.3

  

 25-29

10.8

25.8

  

 30-34

10.8

18.0

1400.0

p = 0.00

 35-39

14.3

13.8

  

 40-44

14.9

6.2

  

 45-49

17.4

2.6

  

Rural/urban residence

 Urban

23.1

18.7

27.6

p = 0.00

 Rural

76.9

81.3

  

Education level

 None

18.9

14.9

  

 Primary

55.3

62.6

54.4

p = 0.00

 At least secondary

25.9

22.6

  

Marital status

 Never married

21.5

5.4

  

 Currently married

59.1

82.8

774.2

p = 0.00

 Previously married

19.4

11.8

  

Wealth indicator

 Poor

35.0

41.5

  

 Middle

17.2

18.1

56.9

p = 0.00

 Richer

47.8

40.3

  

Religion

 Catholic

41.4

42.3

  

 Protestant

46.1

45.5

1.0

p = 0.80

 Moslem

8.3

8.0

  

 Other

4.2

4.2

  

Region of residence

 Kampala

9.3

9.3

  

 Central

21.7

19.0

  

 Eastern

24.0

18.7

100.3

p = 0.00

 Northern

24.3

32.9

  

 Western

20.7

20.1

  

Multivariate results

The findings of the logistic regression equation fitted to predict the log-odds for utilizing integrated services are presented in Table 3. Three models were estimated (Table 3), and the results for the three models are presented in this section of the manuscript.
Table 3

Logistic regression model predicting the odds of utilizing integrated HIV and SRH services by women in Uganda

Variable/category

Model 1 (combined)

Model 2 (Rural)

Model 3 (Urban)

Odds ratio

95 % CI

Odds ratio

95 % CI

Odds ratio

95 % CI

Rural/urban residence

 Urban rc

1.000

-

-

-

-

-

 Rural

1.118

[0.9-1.3]

-

-

-

-

Age group

 15-19 rc

1.000

-

-

-

-

-

 20-24

***2.130

[1.8-2.6]

***2.039

[1.7-2.5]

***2.43

[1.5-4.0]

 25-29

***2.526

[2.1-3.1]

***2.434

[2.0-3.0]

***2.87

[1.7-4.8]

 30-34

***1.521

[1.2-1.9]

***1.514

[1.2-1.9]

1.55

[0.9-2.7]

 35-39

0.874

[0.7-1.1]

0.943

[0.8-1.2]

*0.62

[0.4-1.1]

 40-44

***0.375

[0.3-0.5]

***0.401

[0.3-0.5]

***0.25

[0.1-0.5]

 45-49

***0.146

[0.1-0.2]

***0.156

[0.1-0.2]

***0.08

[0.0-0.2]

Education level

 None rc

1.000

-

-

-

-

-

 Primary

**1.220

[1.0-1.4]

**1.222

[1.0-1.4]

1.49

[0.9-2.4]

 At least secondary

*1.190

[1.0-1.4]

1.194

[1.0-1.5]

1.43

[0.9-2.3]

Marital status

 Never married rc

1.000

-

-

-

-

-

 Currently married

***6.613

[5.5-8.0]

***5.785

[4.6-7.2]

***9.01

6.3-13.0]

 Previously married

***3.369

[2.7-4.2]

***3.035

[2.4-3.9]

***4.27

2.8-6.6]

Wealth indicator

 Poor rc

1.000

-

-

-

-

-

 Middle

0.982

[0.8-1.1]

0.982

[0.8-1.1]

1.04

[0.3-4.2]

 Richer

0.921

[0.8-1.1]

0.960

[0.8-1.1]

0.41

[0.1-1.3]

Region of residencea

 Kampala rc

1.000

-

-

-

-

-

 Central

**1.337

[1.0-1.7]

-

-

**1.56

[1.1-2.2]

 Eastern

0.895

[0.7-1.1]

***0.699

[0.6-0.8]

0.96

[0.7-1.4]

 Northern

***1.572

[1.2-2.0]

***1.302

[1.1-1.6]

0.92

[0.6-1.4]

 Western

1.163

[0.9-1.5]

0.907

[0.8-1.1]

1.20

[0.8-1.8]

Model constant

***0.186

[0.1-0.3]

***0.289

[0.2-0.4]

**0.28

[0.1-1.0]

Number of cases

9691

 

7707

 

1984

 

F-statistic

82.1

 

73.1

 

18.1

 

Model significance (p)

0.000

 

0.000

 

0.000

 

Note

*** significant at p < 1 %; ** significant at p < 5 %; * significant at p < 10 %

a For the variable region of residence in model 1 (combined) Kampala is reference category, while in model 2 (rural) Central region is the reference category

rc reference category

The findings in Model 1 show that age, rural/urban residence, education, marital status and region of residence were significantly associated with utilization of integrated HIV and SRH services. The results further show that the odds of utilizing integrated HIV and SRH services were higher in the age groups 20–24 through 30–34 years compared to the reference category (age group 15–19). The pattern of age coefficients from the logistic regression model also show that the log-odds were significantly lower than the reference category for the age groups40–44 and 45–49. Women in the age group 25–29 has 2.5 times (OR = 2.5; 95 % CI = 2.1-3.1; p < 0.01) the odds of utilizing integrated HIV and SRH services compared to those in the age group 15–19, while women in the age group 45–49 had 0.15 times (OR = 0.1; 95 % CI = 0.1-0.2; p < 0.01) the odds of utilizing integrated HIV and SRH services compare to those in the reference category.

Concerning geographical region of residence, utilization of integrated HIV and SRH services was significantly higher in Central region of Uganda compared to Kampala the reference category (OR = 1.3; 95 % CI = 1.0-1.7; p < 0.01). Furthermore utilization of integrated services was highest in northern region of Uganda (OR = 1.6; 95 % CI = 1.2-2.0; p < 0.01).

Education of respondent was significantly associated with the level of utilization of integrated HIV and SRH services. The log-odds of utilizing integrated services were significantly higher among those women with a primary (OR = 1.2; 95 % CI = 1.0-1.4; p < 0.05), while those women with a secondary and higher level of education did not show any significant difference compared to those with no education, respectively. Finally, the log odds of utilizing integrated HIV and SRH services were significantly higher among the currently married (OR = 6.6; 95 % CI = 5.5-8.0; p < 0.01) and also among the formerly married women (OR = 3.4; 95 % CI = 2.7-4.2; p < 0.01) categories, compared to the never married group of women. The variables wealth indicator and rural-urban residence were not significant in the regression models.

The findings presented in Model 2 follow a similar pattern as in Model 1 for all the variables included in the regressions. It is important to note that the effect of education on utilization of integrated HIV and SRH services was significant in rural areas, and this effect disappears in and was not significant in Model 3 for urban areas. The wealth indicator variable was not significant in all the three models estimated. The three models showed varied odds ratios for the region of residence variable.

Discussion

This study examined the relationship between some selected socioeconomic factors and utilization of integrated HIV and SRH services in Uganda. We observed that utilization of HIV and SRH integrated services in Uganda varied significantly by demographic and socioeconomic characteristics. It is therefore important to understand these differentials in order to ensure that policy and program efforts are targeted toward the groups that are most in need. The findings from this study show that women in Central and Northern Uganda were more likely to use integrated HIV and SRH services compared to those in Kampala region. Regional differences in utilization of HIV and SRH services could perhaps be explained by the differences in access to health services, the varying socio-cultural contexts and economic opportunities available to women in the respective regions of the country [37].

The variations in the findings of region of residence variable for the three models estimated can be explained by the fact that Kampala region is classified as 100 % urban and therefore was excluded from model 2 as a category. Rather Eastern region was used as a reference category in Model 2. Because of the latter reason, comparison of results of the three Models may not be appropriate.

Our analyses suggest that the age of the woman was significantly associated with the chances of utilization of integrated HIV and SRH services. The findings showed that younger women less than 35 years were more likely to utilize integrated HIV and SRH services compared to those in ages above 35 years. The latter finding could invariably be attributed to the age-varying integrated HIV and SRH services needs of women as the go through their reproductive life span. Therefore, higher levels of utilization of such integrated services tend to be in the lower ages as opposed to the higher ages after age 35. The implication for this finding is that whereas programs aimed at provision of integrated HIV and SRH services should target younger women, given that their effective demand for integrated HIV and SRH services is higher, addressing the needs of older women could prove effective in positively influencing HIV and SRH service provision in the country, given that women in Uganda continue to produce children even in ages 35–49 years.

The current findings indicate an increased level of utilization of integrated services among women with a primary level of education compared to those with no education. Attainment of a secondary and higher education level did not seem to increase the levels of utilization of integrated HIV and SRH services in Uganda. The latter finding suggests that the pattern of utilization of integrated HIV and SRH services is different from utilization of maternal health services generally, where secondary and higher education substantially increased women’s utilization of services [19, 3739]. The possible explanation for this finding is that women who have a higher education tend to be wealthier and can afford the stand-alone services. It is therefore important that any policies and programs targeting improved utilization of services should be sensitive to educational level attainment of individuals.

Finally, as expected women who were ever married were more likely to use integrated HIV and SRH services compared to single women. This is because ever-married women tend to me more exposed to sexual encounter and therefore their need for both HIV and SRH services tends to be higher compared to that of single women.

Study Limitations

The current study was based on cross-sectional individual level data and does not address health systems and community related factors that are known to influence health services utilization. Other limitations of this study relate to self-report measures that are often unreliable. This implies that information was self-reported which comes with respondent bias characteristic of cross-sectional surveys. Perhaps most importantly the study does not establish whether utilization of integrated HIV and SRH services improves overall utilization of HIV and SRH services, thereby improving the attendant health outcomes. The authors generated the measurement of the outcome variable therefore could have some limitations and could influenced the results. Despite these limitations, the current study utilized reliable data and appropriate analysis methods. The sample is representative of the whole country given the rigorous survey design and sample selection procedures. Consequently, the findings of this study reflect accurately on the relationship between selected socioeconomic factors and utilization of integrated HIV and SRH services.

Conclusion

Given the intricate background in which HIV and SRH services are manifest in Uganda, it is important to understand and interpret these programs within their demographic and socioeconomic contexts, hence the relevance of this study. The nature and scope of the HIV epidemic, and the populations most affected within a country, determine the range and distribution of health services offered. Regional and local health policies, as well as program operational procedures, can facilitate or impede health service delivery. Strong reproductive health programs may be better positioned to incorporate new HIV-related services than weaker programs hampered by systemic resource constraints. Therefore, this paper contributes to the current debate on how best to improve HIV and SRH service delivery to the people in need and to the population of Uganda in particular. In order to harness the benefits of utilization of HIV and SRH services offered in an integrated manner, these intervention programs should target the geographic regions of the country that are less likely to utilize the latter services such as the urban areas. Education, age of woman and marital status are also important considerations for effective HIV and SRH integrated service delivery.

Abbreviations

ANC: 

Antenatal care

ART: 

Anti-Retroviral Therapy

CDC: 

Centers for disease control and prevention

CI: 

Confidence interval

DHS: 

Demographic and health survey

FP: 

Family planning

FP-C&Tx: 

Family planning services in care and treatment services

FP-CT: 

Family planning in HIV counseling and testing

PMTCT: 

Prevention of mother- to- child transmission

SRH: 

Sexual and reproductive health

STIs: 

Sexually transmitted infections

UAIS: 

Uganda AIDS indicator survey

UBOS: 

Uganda bureau of statistics

UVRI: 

Uganda virus research institute

VCT: 

Voluntary COUNSELING AND TESting

Declarations

Acknowledgements

The authors would like to thank the United Nations Economic Commission for Africa-ECA for providing support towards this study. We thank MEASURE DHS for availing us the data. We are also grateful to the Uganda Bureau of Statistics (UBOS) and ICF Macro International Inc. for providing the dataset. The contents are solely the responsibility of the authors and do not necessarily represent the official views of the supporting offices.

Funding

Authors declare no funding was sought for this study.

Availability of data and materials

All the data used in this study are available in public domain and can be obtained from ICF Macro International U.S.A on their website: http://dhsprogram.com/data/available-datasets.cfm

Authors’ contributions

GR participated in all aspects of preparation of this manuscript; conceived the study, selected data, conducted data analyses, reviewed the scientific content, and interpretation of findings, discussion, and conclusions. AK participated in data analysis, interpretation of the results and reviewed the scientific content of the MS. All authors read and approved the final manuscript.

Competing interests

The authors declare that they have no competing interests.

Consent for publication

Not applicable

Ethics approval and consent to participate

All parties to the survey developed the protocol for the UAIS data collection and analysis jointly. It was reviewed and approved by the Science and Ethics Committee of the Uganda Virus Research Institute (UVRI), ICF Macro’s Institutional Review Board, and a review committee at the Centers for Disease Control and Prevention (CDC) in Atlanta. It was also cleared by the Ethics Committee of the Uganda National Council of Science and Technology. Participant information used in the analysis was an anonymous to protect their identity.

Authors information

1Dr.Gideon Rutaremwa works with the Population and Youth Section at the United Nations Economic Commission for Africa (ECA), in Addis Ababa, Ethiopia. He was previously employed as Associate Professor in the Department of Population Studies at Makerere University and was also Director of the Center for Population and Applied Statistics (CPAS) at the same university.2Allen Kabagenyi has a PhD in Population Studies. She is a researcher and lecturer in the Department of Population Studies, School of Statistics and Planning, Makerere University.

Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

Authors’ Affiliations

(1)
United Nations Economic Commission for Africa (ECA), Social Development Policy Division
(2)
Center for Population and Applied Statistics (CPAS) and Department of Population Studies, Makerere University

References

  1. Union A. 2013 Status Report on Maternal Newborn and Child Health. Ethiopia: Addis Ababa; 2013.Google Scholar
  2. Sweat M, O’Reilly KR, Schmid G, Denison J, De-Zoysa I. Cost-effectiveness of nevirapine to prevent mother-to-child HIV transmission in eight African countries. AIDS. 2004;18:1661–71.View ArticlePubMedGoogle Scholar
  3. UNFPA. The Glion Call to Action on Family Planning and HIV/AIDS in Women and Children. New York; 2004. Available at: http://www.who.int/hiv/pub/advocacymaterials/glionconsultationsummary_DF.pdf.
  4. Sarnquist CC, Moyo P, Stranix-Chibanda L, Chipato T, Kang JL, Maldonado YA. Integrating family planning and prevention of mother to child HIV transmission in Zimbabwe. Contraception. 2014;89:209–14.View ArticlePubMedGoogle Scholar
  5. Sweeney S, Obure CD, Maier CB, Greener R, Dehne K, Vassall A. Costs and efficiency of integrating HIV/AIDS services with other health services: a systematic review of evidence and experience. Sex Transm Infect. 2012;88:85–99.View ArticlePubMedGoogle Scholar
  6. Obure CD, Sweeney S, Darsamo V, Michaels-Igbokwe C, Guinness L, Terris-Prestholt F, Muketo E, Nhlabatsi Z, Warren CE, Mayhew S. The Costs of Delivering Integrated HIV and Sexual Reproductive Health Services in Limited Resource Settings. PLoS ONE. 2015;10(5):e0124476.View ArticlePubMedPubMed CentralGoogle Scholar
  7. Warren CE, Mayhew SH, Vassall A, Kimani JK, Church K, Obure CD, Du-Preez NF, Abuya T, Mutemwa R, Colombini M. Study protocol for the Integra Initiative to assess the benefits and costs of integrating sexual and reproductive health and HIV services in Kenya and Swaziland. BMC Public Health. 2012;12:973.View ArticlePubMedPubMed CentralGoogle Scholar
  8. Warren CE, Mayhew SH, Vassall A, Kimani JK, Church K, Obure CD, Du-Preez NF, Mayhew SH. Study protocol for the Integra Initiative to assess the benefits and costs of integrating sexual and reproductive health and HIV services in Kenya and Swaziland. BMC Public Health. 2012;12:973.View ArticlePubMedPubMed CentralGoogle Scholar
  9. Obure CA. Economics of integrating HIV and sexual and reproductive health services: An examination of technical and cost efficiency in Kenya and Swaziland. 2015Google Scholar
  10. Thomas JC, Reynolds H, Bevc C, Tsegaye A. Integration opportunities for HIV and family planning services in Addis Ababa, Ethiopia: an organizational network analysis. BMC Health Serv Res. 2014;14:22.View ArticlePubMedPubMed CentralGoogle Scholar
  11. Reynolds HW, Steiner MJ, Cates W. Contraception’s proved potential to fight HIV. Sex Transm Infect. 2005;81:184–5.View ArticlePubMedPubMed CentralGoogle Scholar
  12. Adamchak SE, Grey TE, Otterness C, Katz K, Janowitz B. Introducing family planning services into antiretroviral programs in Ghana: an evaluation of a pilot intervention. Arlington: Family Health International; 2007. p 1–36.Google Scholar
  13. Rochat T, Richter L, Doll H, Buthelezi N, Tomkins A, Stein A. Depression Among Pregnant Rural South African Women Undergoing HIV Testing. JAMA. 2006;295:176–8.View ArticleGoogle Scholar
  14. Desgrées-du-Loû A, Msellati P, Viho I, Yao A, Yapi D, Kassi P, Al E. Contraceptive use, protected sexual intercourse and incidence of pregnancies among African HIV-infected women. DITRAME ANRS 049 Project, Abidjan 1995-2000. Int J STD AIDS. 2002;13:462–8.View ArticlePubMedGoogle Scholar
  15. Smart T. PEPFAR: Unexpected and Unwanted Pregnancies in Women on ART Highlights Family Planning Gap. Aidsmap. 2006Google Scholar
  16. Mullick S. Integrating Prevention, Counseling and Testing for HIV into Family Planning Services in South Africa: Results from Client Provider Observations. Baltimore, MD: In Improving Client-Provider Interaction meeting; 2007.Google Scholar
  17. Adamchak S, Janowitz B, Liku J, Munyambanza E, Grey T, Keyes E. Study of family planning and HIV integrated services in five countries. USA: Fam Heal Int Res Triangle Park NC; 2010.Google Scholar
  18. Andersen RM. Revisiting the behavioral model and access to medical care: does it matter? J Health Soc Behav. 1995;36(1):1–10.View ArticlePubMedGoogle Scholar
  19. Andersen RM. National health surveys and the behavioral model of health services use. Med Care. 2008;46:647–53.View ArticlePubMedGoogle Scholar
  20. Irfan FB, Irfan BB, Spiegel DA. Barriers to Accessing Surgical Care in Pakistan: Healthcare Barrier Model and Quantitative Systematic Review. J Surg Res. 2012;176:84–94.View ArticlePubMedGoogle Scholar
  21. Adjiwanou V, LeGrand T. Does antenatal care matter in the use of skilled birth attendance in rural Africa: A multi-country analysis. Soc Sci Med. 2013;86:26–34.View ArticlePubMedGoogle Scholar
  22. Conrad P, Schmid G, Tientrebeogo J, Moses A, Kirenga S, Neuhann F, Müller O, Sarker M. Compliance with focused antenatal care services: Do health workers in rural Burkina Faso, Uganda and Tanzania perform all ANC procedures? Trop Med Int Heal. 2012;17:300–7.Google Scholar
  23. Wagle R, Sabroe S, Nielsen B. Socioeconomic and physical distance to the maternity hospital as predictors for place of delivery: an observation study from Nepal. BMC Pregnancy Childbirth. 2004;4:8.View ArticlePubMedPubMed CentralGoogle Scholar
  24. Gabrysch S, Campbell O. Still too far to walk: Literature review of the determinants of delivery service use. BMC Pregnancy Childbirth. 2009;9:34.View ArticlePubMedPubMed CentralGoogle Scholar
  25. Dhakal S, Chapman G, Simkhada P, van Teijlingen E, Stephens J, Raja A. Utilisation of postnatal care among rural women in Nepal. BMC Pregnancy Childbirth. 2007;7:19.View ArticlePubMedPubMed CentralGoogle Scholar
  26. Matijasevich A, Santos I, Silveira M, Domingues M, Barros A, Marco P, Barros F. Inequities in maternal postnatal visits among public and private patients: 2004 Pelotas cohort study. BMC Public Health. 2009;9:335.View ArticlePubMedPubMed CentralGoogle Scholar
  27. Spaulding AB, Brickley DB, Kennedy C, Almers L, Packel L, Mirjahangir J, Kennedy G, Collins L, Osborne K, Mbizvo M. Linking family planning with HIV/AIDS interventions: a systematic review of the evidence. Aids. 2009;23:S79–88.View ArticlePubMedGoogle Scholar
  28. Schwartz S, Papworth E, Thiam-Niangoin M, Abo K, Drame F, Diouf D, Bamba A, Ezouatchi R, Tety J, Grover E. An Urgent Need for Integration of Family Planning Services Into HIV Care: The High Burden of Unplanned Pregnancy, Termination of Pregnancy, and Limited Contraception Use Among Female Sex Workers in Côte d’Ivoire. JAIDS J Acquir Immune Defic Syndr. 2015;68:S91–8.View ArticlePubMedGoogle Scholar
  29. World Health Organisation. The Global Health Sector Strategy on HIV/AIDS 2011-2015: An Interim Review of Progress. Geneva: World Health Organization; 2014.Google Scholar
  30. Lusti-Narasimhan M, Collins L, Hopkins J. Lessons learnt from sexual and reproductive health and HIV linkages for multipurpose prevention technology service delivery. BJOG An Int J Obstet Gynaecol. 2014;121:87–91.View ArticleGoogle Scholar
  31. Ministry of Health Kampala Uganda et al. AIDS Indicator Survey (AIS) 2011. Kampala, Uganda; 2012.Google Scholar
  32. Andersen R, Newman JF. Societal and individual determinants of medical care utilization in the United States. Milbank Meml Fund Heal Soc. 1973;51:95–124.View ArticleGoogle Scholar
  33. Andersen R, Aday L. Access to medical care in the US: Realized and potential. Med Care. 1978;16:533–46.View ArticlePubMedGoogle Scholar
  34. Lindegren M, Kennedy C, Bain-Brickley D, Azman H, Creanga A, Butler L, Spaulding A, Horvath T, Kennedy G. Integration of HIV/AIDS services with maternal, neonatal and child health, nutrition, and family planning services. Cochrane Database Syst Rev. 2012;9:CD010119.PubMedGoogle Scholar
  35. Ekman B, Pathmanathan I, Liljestrand J. Integrating health interventions for women, newborn babies, and children: a framework for action. Lancet. 2008;372:990–1000.View ArticlePubMedGoogle Scholar
  36. Republic of Uganda et al. Uganda AIDS Indicator Survey Report 2011. Kampala; 2012.Google Scholar
  37. Rutaremwa G, Wandera SO, Jhamba T, Akiror E, Kiconco A. Determinants of maternal health services utilization in Uganda. BMC Health Serv Res. 2015;15:271.View ArticlePubMedPubMed CentralGoogle Scholar
  38. Ricketts TC, Goldsmith LJ. Access in health services research: The battle of the frameworks. Nurs Outlook. 2005;53:274–80.View ArticlePubMedGoogle Scholar
  39. Bbaale E. Factors influencing timing and frequency of antenatal care in Uganda. Australas Med J. 2011;4:431–8.View ArticlePubMedPubMed CentralGoogle Scholar

Copyright

© The Author(s). 2016