Monitoring ANC4 + coverage and associated inequities requires quantifying and describing the coverage across population groups defined along socioeconomic and geographic equity lines within countries (19, 20). This should be at a high resolution, the so-called precise public health (72), to highlight hotspots areas within a country. Our findings show that ANC4 + coverage was moderate, with six in every ten pregnant women reporting having received at least four ANC visits in the three East African countries. At the national level, this is short of the 70% coverage anticipated to be achieved by 2025 under the EPMM strategy. However, national targets set by the governments of each of the three countries were achieved. Compared to similar national estimates about decade ago (since 2021), there have been slight improvements. In the early 2010s, between four and five in 10 pregnant women had ANC4 + visits - that is, 47.1% in Kenya (2009), 47.6% in Uganda (2011) and 42.8% in Tanzania (2010) (13). These improvements may be explained by the concerted efforts of stakeholders which included healthcare investment focused on access, training health professionals, decentralized health care, maternal health education, user fees reduction or abolishment among other targeted initiatives (73–81).
However, despite the moderate national improvements and associated efforts, the current ANC4 + coverage is inequitable, and falls short of recommended levels. Our findings show the specific districts that have the least coverage and the linked inequities dragging the coverage. This will aid in targeted allocation of resources, subsequent monitoring and evaluation, and benchmarking. This aligns with the SDG mantra of leaving no one behind and starting with the farthest behind, first. The high-resolution maps in Fig. 2 aid in identifying hotspots within the districts with poor coverage, while the exceedance probabilities minimize the chance of misclassifying districts and pixels. This ensures persistent foci of low coverage are correctly identified such that resources are not wasted on interventions and populations who do not require them. We have provided all the district estimates in Additional file 2 for use by policymakers.
The most left behind (lower levels of ANC4 + coverage) districts bore a treble burden where the poorest, with the least education and geographically marginalized from healthcare reside. There were also districts that had both lowest coverage of ANC4 + and at the same highest number of pregnant without ANC4 + visits. Certainly, resources, and infrastructure are concentrated in wealthier urban places and are scant in poorer and remote areas (82). The hotspot districts and most in need, include West Pokot, Wajir, Mandera, Turkana, Baringo, Garissa, Elgeyo-Marakwet, Marsabit and Trans Nzoia mainly northern Kenya; Amudat, Moroto, Napak, Nabilatuk, Nakapiripirit, Kalangala, Buvuma, Namayingo, Napaka and Palissa majorly located in eastern Uganda and finally, Kakonko, Biharamulo, Kaliua, Kibondo, Bukombe, Chato, Bariadi TC, Urambo, Nzega, Igunga and Itilima mainly north-west Tanzania.
The hotspot counties in northern Kenya have been historically marginalized, are predominately arid and semi-arid and sparsely populated. The region has poor infrastructure, often stricken by conflict and insecurity which may lead to poor geographic access to healthcare. Further, women in this region have low education attainment, mainly come from poor households, and practice some cultural beliefs antagonist to western medical practices (83–85). Likewise, eastern Uganda is among the poorest region in the country and has poor coverage of other maternal and child health indicators (28, 86, 87). Long distances, poor roads and high transport costs, poor services at the health facilities and lack of access to health-related information also impede women to utilize maternal services in this region (88). Similar situation exists in North-western Tanzania which is poor and has low conditional probability of transitioning from poor to non-poor status (89). Further, socio-cultural beliefs, distance, lack of transport, perceived poor quality of ANC services have been reported as barriers to ANC use in this region (90). Combined in the three countries, these factors provide insights on how to improve the poor coverage in the hotspots. However, our study was concerned with identification of these hotspot through predictive modelling (55), therefore, granular quantitative and qualitative studies should be conducted to better understand why the districts have been left behind.
Our results showed that the poor had lower ANC4 + coverage. It’s the poor who have the highest disease burden, reduced access to healthcare services and the majority do not utilize health services at all (91). The pro-rich inequities have been observed before (30) and continue to be persist even among the poor pregnant women who are beneficiaries of government initiatives to improve ANC uptake (81, 82, 91). Ensuring sufficient and timely reimbursements to prevent out-of-pocket payments and minimizing indirect costs of transport (76, 77, 92) will likely increase uptake among the poor ANC clients where initiatives already exist. It is the poor ANC beneficiaries of initiatives who are negatively affected by stock-outs, dysfunctional medical equipment, shortage of healthcare workers, strikes and discrimination (29, 91) since they cannot afford paying services in the private sector. These bottlenecks require addressing so that the woman who have been left behind can benefit from programs and initiatives put into place. The high ownership of mobile phones in East Africa can be leveraged to create mobile health program simultaneously with community health workers (CHWs) to facilitate follow-ups and minimize socioeconomic barriers (93) among the poor. Determining the degree of follow-up needed based on ANC user characteristics during the first ANC visit can also be used to increase return visits and ANC uptake.
Women without formal education had lower ANC4 + coverage. Maternal education and household wealth and are linked. Women from poor households often have lower educational attainment which negatively affects utilization (94) as observed in the hotspot districts. In the short run, health promotion and outreach campaigns among pregnant will be useful (93, 95) at the village-level (95) or through mass media (96) in the hotspots. This could neutralize harmful traditions and cultural beliefs, misinformation from family or traditional healers, or cases where pregnant women are misled to delay ANC visits (86, 97). There is a need to raise awareness about new initiatives meant to increase uptake of ANC since lack of awareness has been a barrier in previous initiatives (39, 78, 98). There is a necessity to integrate and bolster the need for maternity care seeking into educational curriculum. In the long term, higher education attainment will be vital in increasing women’s autonomy, improved access to healthcare information, and may lead to higher socioeconomic status (47) in the hotspot areas.
Long travel time remains a challenge among women in remote areas even where interventions have been implemented (92, 99) and has been linked with lack of public transport and roads in poor conditions (91, 100–102). Access to bicycles has shown to be a pro-poor option in increasing access to health centers and can be used as entry point to intervene on areas with poor geographical access (102), supplemented with contracted transporters (78). Mobile services could also be implemented to meet the women in their communities (14). Under the Beyond Zero campaign in Kenya, mobile clinics have provided healthcare to poor and marginalized communities (104). CHWs are integral in promoting maternal care seeking (105) and might be effective in the hard-to-reach areas (106).
Beyond the demand side challenges, there is also a need to strengthen the supply side to guard against inadequate drugs, equipment, infrastructure, skilled human resources, overburdened health facilities, longer waiting times, reduced health worker motivation and quality of care (39, 73, 76–78, 92, 98). Further, coverage might have been affected by the COVID-19 pandemic, health workers strikes and absenteeism which were associated with a lower likelihood of attending ANC (107, 108). The poor usually bear the burden since they rely mainly on the public sector and cannot afford care from the private sector (109, 110). The pandemic strained the health system, disrupted essential health services due to inability to access healthcare, transport restrictions, curfew, and fear of contracting the virus when seeking care (111).