Background

Globally, 36.7 million people were living with human immune deficiency virus (HIV) / Acquired immune deficiency syndrome (AIDS) in 2015 with 70 % of infected people were living in sub-Saharan Africa [1, 2]. Developing countries account for 97% of worldwide HIV cases and Sub-Saharan Africa is the world's first disease-affected region [3]. In 2017, the United Nations Joint AIDS Program reported that approximately 3.9 million young people worldwide were infected with HIV [4]. Around 2.9 million of the 4.9 million young people living with HIV / AIDS live in eastern and southern Africa [5]. Only 15 % of young women aged 15-24 years in sub-Saharan Africa were aware of their HIV status in 2013 [6]. The prevalence of HIV testing among young woman in Africa ranges from 23.5% to 60.10% [4,5,6,7]. Despite a high prevalence of HIV infection among adolescents and young women in sub-Saharan Africa, policymakers give less attention to HIV testing and counseling services. Young women are exposed to HIV in two stages of their lives, from mother to child, at an early age and during their adolescence because of their sexual preference and gender differences [8]. Also, young women are vulnerable to HIV due to extreme peer pressure and the emergence of their sexual and social identities [9]. Factors associated with young people's HIV testing include demographic factors (age, education, wealth) [10, 11], HIV risk behavior [12] psychosocial variables associated with HIV awareness [8], and stigma attitudes [12]. Multiple sexual partners [12, 13] and age at sexual initiation [8] were also other factors associated with HIV testing and counseling. Although HIV counseling and testing (HCT) is very important for all strategies related to care, prevention, and treatment of HIV, health care planners and policymakers give less attention, particularly in developing countries [1, 4]. Understanding the factors affecting HIV testing and counseling utilization also helps policymakers to formulate effective strategies for HIV prevention and control. Besides, there is limited studies in HIV testing prevalence and associated factors in the study area using advanced model. Most previous studies in different regions of Africa on the prevalence of HIV testing have been focused on samples of adults and pregnant women [8]. This study extends previous studies focused on the populations of adult and/or pregnant women and attempts to fill the literature gap by addressing the determinants of HIV testing among young women. This study was therefore aimed at investigating the pooled prevalence and factors related to HIV testing among young women in east Africa.

Methods

Data sources

A secondary data analysis using the pooled data from recent demographic and health surveys (DHS) conducted in east Africa was done. The data were extracted from the DHS calculation software. The survey of each country consists of men, women, infants, birth and household datasets. The women's datasets (IR files) were used for this analysis. The study included only youth, described by the United nation (UN) as “individuals between the ages of 15 and 24” [14].

The DHS used two stages stratified sampling technique to select the study participants. The women's data of the most recent DHS done in the 11 east African countries were appended. A total weighted sample of 73,661 young women was used for this study. The number of young women included in each country is presented in Table 1.

Table 1 Study participants included in the study by country and year of survey in east Africa

Variables

The outcome variable for this study was “ever tested for HIV”. The individual-level factor includes respondent age, marital status, age at first sex, stigmatized attitude, educational statues, household wealth status, knowledge about HIV/AIDS, risky sexual behavior and health care facility visit, number of lifetime sexual partners, media exposure and occupational status. Factors at the community level were community-level women's education, residence and country. The community women's educational level was created by aggregating the individual-level variables, using the proportion of women in the community who were not educated and classified as high and low based on the median value (Table 2).

Table 2 Description and measurement of independent variables

Operational definition

HIV knowledge: generated based on three questions related to HIV prevention and three questions related to the modes of HIV transmission and graded as low (if a woman answered ≤3 questions), high (if a woman answered 4–5 questions), or comprehensive (if a woman answered all the 6 questions) [15].

Risky sexual behaviors: assessed based on five questions; having had STI in last 12 months, genital sore/ulcer in last 12 months, genital discharge in last 12 months, having at least one sexual partner other than the husband in the last 12 months and multiple lifetimes sexual partnership. These were combined into an index of risky sexual behavior with three categories: “no risk” (if the response is no for all questions), “some risk” (if the response is yes for one of the five questions) and “high risk” (if the response is yes to at least two questions) [15].

HIV Stigma indicator: Six questions, which indicate negative attitudes towards people living with HIV / AIDS were used to this variable. This was categorized as “no stigma” (if we got a score of 6), “low stigma” (if we got a score of 4–5), “moderate stigma” (if we got a score of 2–3), and “High stigma” (if we got only score 1) [15].

Data management and analysis

The data was extracted, recorded and analyzed using Stata 14 software. For the representativeness of the data and to have an accurate estimate and standard error, weighting was done before any statistical analysis. Since the DHS data violates the independent assumptions of the standard logistic regression model, a multilevel logistic regression was fitted. Also, consideration of variability among clusters was addressed through the use of these advanced models. To determine whether or not there was a clustering, the Interclass Correlation Coefficient (ICC) and Median Odds Ratio (MOR) were calculated. Deviance (-2LL) was used for model comparison. Four models: null model - a model without explanatory variables, model I - a model with individual-level factors, model II - a model with community-level factors and model III - a model with both individual and community-level factors were fitted. Since it had the lowest deviance among all fitted models, model III was selected. Multi-level logistic regression was performed with both bivariable and multivariable mixed-effects. At the bivariable analysis, variables with a p-value of less than 0.2 were included for the multivariable analysis. In the multivariable analysis variables with a P-value of less than 0.05 were considered as a factor associated with HIV testing among young women [5, 14,15,16,17,18,19,20,21,22].

Results

Socio-demographic characteristics of study participants

More than half (53.64%) of the women were in the age group of 15-19 years. Around 49.06 % of the participant had primary education and 8.22% had no formal education. The majority of the participants (56.66%) did not have a stigmatized attitude towards people living with HIV / AIDS. Regarding sexual behavior, the majority of the participants (83.12 %) had no risky sexual behavior and only 4.23 % had higher risky sexual behavior. Considering household wealth status, 45.36% were from the richest households. Approximately half (50.41%) of the respondents were from the community with a low level of education (Table 3).

Table 3 Sociodemographic characteristics of the respondents in eastern Africa (N=73, 661)

Random effects model

As indicated in Table 4, the null model's ICC value, which was 0.4 suggests that around 4% of the overall HIV testing variance was due to cluster variability. Furthermore, the MOR value in the null model was 1.42 suggests a substantial clustering of HIV testing across clusters occurred. Besides, the PCV (0.36) in the final model (model III) suggested that 36% of the variation in HIV testing was explained by both individual and community levels factors. The final model (Model III) was the best fit since it had the lowest deviance.

Table 4 Random effect model and model fitness for the assessment of HIV testing among reproductive-age women in eastern Africa

Prevalence of HIV testing among young women

The prevalence of HIV testing and counseling among young women was 55.3 %( 95% CI = 54.97%, 55.69%) with the lowest prevalence (6.27%) in Madagascar and highest (73.51%) in Uganda (Fig 1).

Fig. 1
figure 1

Showing prevalence of HIV testing among young women in east Africa

Factors associated with HIV testing among young women

We consider the final model for determining factors associated with HIV testing, as it had the lowest deviance. Women aged 20-24 years were more likely to be tested for HIV compared to women of early age. The chances of HIV testing were 2.48 (AOR= 2.49; 95 % CI=2.39, 2.58) times higher for women visiting health centers in the last 12 months compared with their counterparts. Looking at household wealth status, young women from rich households (AOR=0.86; 95 % CI=0.81, 0.91) had lower chances of being tested for HIV compared with young women from poor households. Married women were 1.88 times more likely to be tested for HIV compared to unmarried women (AOR=1.88; 95 % CI=1.79, 1.99). Individuals who initiate sex after 20 years of age had a 66 % lower odds of being tested for HIV compared to those who initiate sex at an earlier age (AOR=0.34; 95% CI=0.33, 0.36). Women from rural dwellers had 19% lower chances of being tested for HIV (AOR=0.80; 95% CI=0.77, 0.85). Regarding stigma attitude, there were 1.36 (AOR=1.36; 95% CI=1.24, 1.48), 1.63 (AOR=1.63; % CI=1.55, 1.71) and 1.59 (AOR=1.59; % CI=1.51, 1.67) times higher chances of being tested for HIV testing for young women with higher, moderate and low stigma score, respectively. Importantly, women with higher (AOR=5.6; 95% CI=5.27, 5.95) and comprehensive (AOR=8.04; 95% CI=7.55, 8.56) knowledge about HIV / AIDS were more likely to be tested for HIV compared to those with low knowledge. Women with a multiple-sex partner had 38% lower chances of being tested for HIV (AOR=0.62; 95% CI=0.52, 0.74) compared to their counterparts. Being from a community with a low educational level had 15 % lower chances of being tested for HIV (AOR=0.85; 95% CI=0.80, 0.90) (Table 5).

Table 5 Bivariable and multivariable multilevel binary logistic regression analysis of factors associated with HIV testing in east Africa in the final model

Discussion

Most studies have shown that knowing one's serostatus helps to prevent and monitor the spread of infection [16]. The pooled prevalence of HIV testing among young women in east Africa was 55.3% (95% CI = 54.97%, 55.69%). The prevalence in this study was greater than the report in Ethiopia and sub-Saharan Africa [4, 8]. The prevalence in this study was smaller than many studies conducted in Africa [5, 11, 17,18,19]. Regional variations in access to HIV testing facilities as well as knowledge related to HIV / AIDS may also be the reasons for the reported regional inequalities in HIV testing implementation [18]. Young women who had primary and above education had a higher chance of being tested for HIV compared with women without formal education. This finding was supported by a study conducted elsewhere [4, 18, 20]. The explanation for this might be as education will enhance awareness about HIV and empowers women to make healthcare decisions by visiting the health facility [4]. Older women are more likely to get HIV tests than younger women. This is in line with the studies conducted in South Africa and sub-Saharan Africa [5, 8]. The variation in the odds of being tested for HIV among different age groups may be attributable to the possibility that younger women have a shorter sexual experience and are less knowledgeable about sexual issues than older people [10].

Married women had a higher chance of HIV testing than their counterparts, which is similar to the findings in Zambia and Ethiopia [4, 11]. This might be explained by the fact that married women used HIV counseling and testing better than unmarried women as they had regularly visited health facilities during pregnancy [12]. Young women living in rural areas had 20% lower odds of being tested for HIV compared to their urban counterparts. A similar conclusion was drawn from studies conducted in Ethiopia [4] and Nigeria [21]. Women attending health facilities were more likely to be tested for HIV compared to their counterparts. This finding was similar to studies conducted in South Africa [22, 23]. This may be because health professionals advise people who have visited health facilities to have HIV counseling and testing and this service is offered by almost all governmental and public health facilities [24]. Young women who had an experience of risky sexual activity were more likely to use HIV testing and counseling. The study conducted in Ethiopia and Ghana supported this finding [12, 25]. Besides, age at first sex is a significant predictor of HIV testing, which is in agreement with a study conducted in Malawi [17]. This may be explained as early age is associated with a higher risk of contracting various sexually transmitted diseases and risky sexual behavior, which could contribute to a higher risk of HIV infection [26]. Compared with those with one sexual partner, young women with multiple sexual partners had lower odds of being tested for HIV which is consistent with the study conducted in Ethiopia [4]. This might be because women with multiple sexual partners had a higher perceived risk of acquiring HIV infection which in turn, increases their motive to be tested [23]. Concerning HIV / AIDS knowledge, young women having higher and comprehensive knowledge about HIV had higher chances of being tested compared to women with low knowledge. This finding was supported by different studies [5, 8]. This might be justified by people with a good understanding of HIV / AIDS, including its transmission and preventive measures keeps themselves away from these devastating problems [13]. Looking at media exposure, there was a significant association between media exposure and HIV testing, which is supported by another study conducted in sub-Saharan Africa [8]. This outcome underlines the potential importance of media exposure for behavioral change, playing a key role in promoting young women's sexual and reproductive health [25].

Strength and limitation of the study

The study has many strengths, first, the study was based on weighted nationally representative data from 11 east African countries with large sample size. Second, the analysis was using the multilevel analysis to accommodate the hierarchical nature of the DHS data to get reliable standard error and estimates. Moreover, since it is based on the national survey data the study has the potential to give insight for policy-makers and program planners to design appropriate intervention strategies both at national and regional levels. However, this study had limitations in that the DHS survey was based on respondents’ self-report, this might have the possibility of recall bias. Besides, since this study was based on cross-sectional DHS data, we are unable to show the temporal relationship between HIV testing and the independent variables.

Conclusion

The pooled prevalence of HIV testing among young women is higher in east Africa compared to the report from other studies. In the multilevel multivariable analysis; respondent age, marital status, educational level, knowledge about HIV/AIDS, HIV stigma indicator, risky sexual activity, women who have visited health care facilities, early sex initiation and community educational level were positively associated with HIV testing among young women. While being a rural dweller, wealth status and being having multiple sexual partners were negatively associated with HIV testing and counseling. So there should be a systematic and integrated approach and policy for HIV counseling and testing among young women to prevent the transmission and spread of HIV/AIDS in these populations. Besides, all the stakeholders should have an integrated approach to increase awareness of the benefit of HIV testing and counseling to control the spread of HIV/AIDS.