The incidence of induced abortion in Kinshasa, Democratic Republic of Congo, 2016

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Study Justification:
– The study aims to provide the first estimates of the incidence of induced abortion and unintended pregnancy in Kinshasa, Democratic Republic of Congo.
– The study addresses the lack of official statistics and reliable data on abortion in the country.
– It aims to shed light on the prevalence of unsafe abortions and the negative consequences, including maternal mortality.
Study Highlights:
– The study estimated that in 2016, there were approximately 146,713 induced abortions in Kinshasa, with an abortion rate of 56 per 1,000 women aged 15-49.
– It also estimated that there were over 343,000 unintended pregnancies in the same year, resulting in an unintended pregnancy rate of 147 per 1,000 women aged 15-49.
– The study highlights the need to increase contraceptive uptake to reduce unintended pregnancies and the subsequent need for unsafe abortions.
– It emphasizes the importance of improving access to safe abortion services and post-abortion care to reduce the negative consequences of unsafe abortions, including maternal mortality.
Recommendations for Lay Readers:
– Increase access to and use of contraceptives to prevent unintended pregnancies.
– Improve access to safe abortion services to reduce the number of women resorting to unsafe abortions.
– Enhance post-abortion care to ensure that women who have complications from unsafe abortions receive appropriate treatment.
– Raise awareness about the risks of unsafe abortions and promote safe reproductive health practices.
Recommendations for Policy Makers:
– Develop and implement policies to increase contraceptive availability and affordability.
– Review and reform existing laws and regulations to expand access to safe abortion services.
– Strengthen healthcare systems to provide comprehensive post-abortion care.
– Invest in reproductive health education and awareness programs to promote safe practices and reduce the stigma surrounding abortion.
Key Role Players:
– Ministry of Health
– Health facilities and providers
– Non-governmental organizations (NGOs) working in reproductive health
– Researchers and academics
– Policymakers and government officials
– Community leaders and advocates
Cost Items for Planning Recommendations:
– Contraceptive procurement and distribution
– Training and capacity building for healthcare providers
– Infrastructure and equipment for safe abortion services
– Public awareness campaigns and education programs
– Monitoring and evaluation of reproductive health programs
– Research and data collection on abortion incidence and unintended pregnancies
Please note that the cost items provided are general categories and not actual cost estimates. The specific costs will depend on the context and implementation strategies.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong as it draws on multiple data sources, including surveys and official government statistics. The study team conducted three surveys to collect primary data, and they also used other data sources for population estimates and fertility rates. The study obtained approval from institutional review boards, and the surveys had high response rates. To improve the evidence, the study could have included more detailed information on the methodology used in the surveys and the sampling techniques employed. Additionally, providing information on the limitations of the study would have been helpful.

Background: In the Democratic Republic of Congo, the penal code prohibits the provision of abortion. In practice, however, it is widely accepted that the procedure can be performed to save the life of a pregnant woman. Although abortion is highly restricted, anecdotal evidence indicates that women often resort to clandestine abortions, many of which are unsafe. However, to date, there are no official statistics or reliable data to support this assertion. Objectives: Our study provides the first estimates of the incidence of abortion and unintended pregnancy in Kinshasa. Methods: We applied the Abortion Incidence Complications Method (AICM) to estimate the incidence of abortion and unintended pregnancy. We used data from a Health Facilities Survey and a Prospective Morbidity Survey to determine the annual number of women treated for abortion complications at health facilities. We also employed data from a Health Professionals Survey to calculate a multiplier representing the number of abortions for every induced abortion complication treated in a health facility. Results: In 2016, an estimated 37,865 women obtained treatment for induced abortion complications in health facilities in Kinshasa. For every woman treated in a facility, almost four times as many abortions occurred. In total, an estimated 146,713 abortions were performed, yielding an abortion rate of 56 per 1,000 women aged 15–49. Furthermore, more than 343,000 unintended pregnancies occurred, resulting in an unintended pregnancy rate of 147 per 1,000 women aged 15–49. Conclusions: Increasing contraceptive uptake can reduce the number of women who experience unintended pregnancies, and as a consequence, result in fewer women obtaining unsafe abortions, suffering abortion complications, and dying needlessly from unsafe abortion. Increasing access to safe abortion and improving post-abortion care are other measures that can be implemented to reduce unsafe abortion and/or its negative consequences, including maternal mortality.

Our study draws on multiple data sources to estimate measures of abortion incidence and unintended pregnancy. The authors conducted three surveys to collect the primary data used in this study: Health Facilities Survey (HFS), Health Professionals Survey (HPS), and Prospective Morbidity Survey (PMS). The HFS and PMS provide information on the annual number of women treated for abortion complications (i.e. received postabortion care (PAC)) at health facilities across Kinshasa while the HPS generates information that is used to calculate a multiplier representing the number of women who have abortions for every woman who has an induced abortion and receives facility-based treatment. To derive our estimates of induced abortions and unintended pregnancies, we also draw on other data sources, including official government statistics and the 2013–2014 Democratic Republic of the Congo Demographic and Health Survey (DRC DHS), for Kinshasa-specific population and poverty estimates, age-specific fertility rates, and the proportion of women who deliver in health facilities [21, 22]. We obtained approval to carry out this study from the institutional review boards (IRBs) of the Guttmacher Institute and the University of Kinshasa, School of Public Health. The study team compiled a list of 2,713 health facilities in Kinshasa whose level of equipment and staffing make them likely to provide PAC. Although the Ministry of Health possesses an official list of registered health facilities, many facilities in Kinshasa are not registered with the government. Thus, the study team combined the Ministry of Health’s official list with two listings conducted for other research projects that members of the study team have been involved in. After combining the three lists, we removed all duplicate facilities that appeared on the combined list. The compiled list included information on level of facility and ownership type (public, private, and non-government organization (NGO)). In the public sector, four levels of facilities are capable of treating abortion complications: university hospital, provincial hospital, general reference hospital/reference health centers, and health centers. In the private/NGO sector, two levels of facilities exist: hospitals and health centers. We removed all specialist facilities that would not be expected to provide PAC such as pediatric, dental, and eye clinics. To obtain a representative sample of facilities for Kinshasa, we used stratified random sampling to select 423 facilities. We first split the facilities by their designated levels (i.e. different types of hospital and health center) and then stratified by ownership type (public, private/NGO). We collapsed private and NGO facilities into the same category due to difficulties in distinguishing between the two types. Since we expected hospitals to provide a large proportion of postabortion care and they are generally smaller in number, we included 100% of hospitals in our sample. Given that health centers typically do less PAC and they are usually large in number, we normally select a small fraction of them for inclusion in the sample, the larger the total number the smaller the proportion. We initially planned to include 10% of health centers, regardless of ownership type, in our sample, but due to the low number of public health centers, we opted to oversample facilities in this facility type. Thus, we randomly selected 19% of the public health centers and 10% of the private and NGO health centers. In each of the facilities in our sample, a senior staff member who would be knowledgeable about the facility’s PAC services was interviewed after obtaining his/her consent to participate in the survey. In larger facilities, such as hospitals, the chief of the obstetrics and gynecology department or an obstetrician-gynecologist was usually selected. In smaller facilities, such as health centers, this person was typically the director or another provider (e.g. nurse or midwife). Each consenting staff member completed a face-to-face interview using a structured questionnaire. The respondent was asked if the health facility treated complications from abortion, either spontaneous or induced, that were serious enough to require treatment in a health facility. If the respondent reported that the facility provided this service, the interviewer asked for the number of women treated for abortion complications as outpatients and as inpatients in an average month and in the past month. If the respondent was unable to provide these numbers, he or she was asked to provide the number of women treated in the average year and past year. We requested estimates for two time frames to capture variability that might exist in monthly or yearly caseloads, as abortion, especially induced abortion may be seasonal in some contexts [23, 24]. For facilities that provided PAC estimates for the average month or past month, we multiplied these estimates by 12 to generate annual estimates. Fieldwork for the HFS was conducted in April and May 2016. The survey team successfully conducted interviews at 361 out of 423 facilities in our sample, resulting in an overall response rate of 85% (Table 1). Response rates varied by facility type, and ranged from 83% of private/NGO health centers to 100% among the university hospital, provincial hospital, and public health centers. Non-response was primarily due to interviewers finding facilities no longer in operation or impossible to locate. During the interviews, the survey team learned that several facilities in our sample were misclassified, either by level of facility (hospital or health center), ownership (public or private/NGO), or both. Because the PAC caseloads of these misclassified facilities were similar to those of facilities using the pre-fieldwork classification of facility type, we did not reclassify them for the purposes of constructing sampling weights. We did, however, use the post-fieldwork classification of health facilities when estimating PAC caseloads by facility level and/or ownership. We constructed sampling weights using information on the proportion of facilities selected into the sample and the response rates by level of facilities and ownership. We assumed that the average PAC caseload in a specific facility type did not differ between sampled and non-sampled facilities. By applying the weights to the data, we generated estimates of PAC caseloads for all facilities in Kinshasa. Note: Facility type refers to the category identified post-fieldwork. a All facilities that reported providing PAC in the Health Facilities Survey were eligible to participate in the Prospective Morbidity Survey. The study team conducted the Prospective Morbidity Survey (PMS) after HFS data collection was completed. All facilities that reported providing PAC in the HFS were eligible to participate in the PMS. The PMS consisted of two parts, patient survey and provider survey. The type of information collected differed by type of survey. While the patient survey collected information on the characteristics of women obtaining PAC and the conditions under which abortions take place, the provider survey focused on the severity and management of abortion complications. The study team invited each of the eligible health centers to send one staff member and each of the hospitals two staff members to participate in a three-day interviewer training. Clinic staff were recruited to serve as interviewers in their respective facilities because they were in a position to know when PAC patients were being treated and to be able to determine the appropriate time to conduct interviews with consenting respondents and their primary care providers. Interviewers attempted to conduct interviews with all women treated for abortion complications, spontaneous or induced, over a 30-day period. All women, regardless of whether they were treated as inpatients or outpatients, were eligible to be included in the study. Interviewers approached patients once they were in stable condition and sought informed consent to conduct the interview. If an interviewer was the patient’s primary care provider, he or she was not permitted to interview the patient and had to ask another interviewer working in the facility (if there was one) or ask his or her supervisor to conduct the interview. The study team restricted interviewers from interviewing their patients to reduce any concern that patients might feel about their responses affecting their treatment. After the interview, the interviewer asked the respondent for her consent to interview the patient’s health provider. If the patient gave her consent, then the interviewer approached the patient’s provider to obtain informed consent and carry out the interview. For various reasons, not all eligible patients were interviewed in the PMS. Interviewers filled out a tracking sheet that kept track of missed cases and the primary reason they were missed. Reasons for missed cases included: refusal to participate; interviewer not present at the facility when the respondent was there; interviewer was the patient’s primary care provider and another interviewer or supervisor was unavailable; patient transferred to another facility for further treatment; too sick to participate; or died. By keeping track of missed cases, we determined the total number of women treated for abortion complications during the 30-day study period, regardless of whether they were interviewed. For each health facility, we determined the facility’s PAC caseload during a 30-day period by adding the number of women interviewed to the number of missed cases. However, not all women who obtain PAC in health facilities across Kinshasa necessarily need treatment, particularly those who induced their abortions using misoprostol. Though HFS respondents were instructed not to include abortion complications that would have been resolved on their own (without any care) in their counts of PAC patients, these instructions were not given in the PMS. Thus, the PMS possibly collected data from women whose abortion complications did not necessarily need treatment. To make the PMS caseload consistent with the caseload captured in the HFS, we subtracted women who likely did not need treatment. According to the data collected in the PMS, at least 5% of PAC patients had misoprostol-induced abortions, experienced no complications, and were discharged in good health in less than 24 hours. We assumed that these women were in the process of completing their abortions and would not have needed PAC. We subtracted these women from the total number of PAC cases treated in health facilities. Similar to estimates produced using the HFS, we multiplied the 30-day caseload by 12 to determine the annual caseload for each health facility. Among the 262 facilities eligible to participate in the PMS, 223 participated, resulting in a response rate of 85%. Refusal to participate was the most common reason for non-response; during the period between the HFS and PMS, four facilities eligible for the PMS closed down. Fieldwork for the PMS took place in July and August 2016. The study team compiled a list of professionals who are knowledgeable about the conditions of abortion provision and post-abortion care in Kinshasa. This list, which was compiled in consultation with colleagues working in different domains of reproductive health, including research, policy, and community health programs, consisted of medical doctors, nurses, researchers, policymakers, advocates, social workers, NGO staff, and other individuals who would be well-informed about women’s behaviors and outcomes in seeking and obtaining abortion. Approximately two in five respondents were clinicians (doctors, nurses, midwives) and the rest were non-clinicians. The primary purpose of the Health Professionals Survey was to collect information on: 1) distribution of abortions by method used (surgical, misoprostol, and others) 2) distribution of women having abortions by type of method used and by type of provider (doctors, nurses or midwives, traditional practitioners, pharmacists, self-induction, and other untrained persons) 3) proportion of women experiencing complications (defined as health problem resulting from an abortion and serious enough to require treatment in a health facility) by type of method used and by type of provider and 4) proportion of women experiencing complications who are likely to obtain care at a health facility by type of method used. Because women’s access to abortion, particularly provider types and methods of abortion, likely varies by women’s socioeconomic status, respondents were asked to provide responses separately for poor women and non-poor women. In total, interviews were conducted with 115 respondents. Data from two respondents were not analyzed because they did not provide responses to any of the key questions. Fieldwork for the HPS was conducted from May to August 2016. Several steps were taken to estimate the incidence of abortion and unintended pregnancy in Kinshasa. We used data collected in the HFS and PMS to estimate the PAC (induced or spontaneous) caseload in health facilities across Kinshasa. Though the HFS collected data on PAC caseloads for the past month/year and average month/year, we chose not to use the past month/year estimate because it was considerably lower than both the average month/year estimate and the PAC caseload estimated from the PMS, which was based on prospective reporting over a period of one month. In the case of HFS estimates for the average month, respondents report retrospectively and provide an average monthly caseload based on their experience. The PMS estimate was slightly higher than the HFS average year estimate. One possible explanation is that PAC caseloads were underestimated in the HFS. HFS respondents were asked to rely on their memory when reporting PAC caseloads for the average month or average year. Consequently, recall bias may have affected estimates. The PMS, in contrast, does not suffer from the effects of recall bias because interviewers attempted to conduct interviews with all women treated for abortion complications prospectively as they were admitted for treatment, over a 30-day period. Even if all eligible women were not interviewed, interviewers kept track of the number of missed cases and reported them to the survey team at the end of the observation period. Alternatively, PAC caseloads could have been overestimated in the PMS. Health facility workers, who served as interviewers, were financially remunerated for each pair of patient and provider interviews conducted during the study period. It is, therefore, possible that some interviewers fabricated cases to receive the incentive. While this cannot be ruled out, we expect it to be minimal because supervisors were instructed to verify the existence of each case. If a health facility participated in both the HFS and PMS, we averaged the two data points to obtain an average caseload for that facility. Otherwise, we used the caseload for the average year as the average caseload for that facility. In total, 35 health facilities did not participate in the PMS. Some women who received PAC in a heath facility were referred to another facility, usually a higher-level facility, for additional care. As a result, these women would have sought treatment in two facilities, and would be double-counted in estimates of PAC provision. HFS respondents were asked to estimate the number of women who received PAC in their facility and then referred to another facility for additional treatment in the past month or year. If the number of referrals were given for the past month, we multiplied this number by 12 to produce an estimate for the past year. Across all facilities in Kinshasa, we calculated that 5,606 referrals were made in the past year. Dividing the number of referrals by the total number of post-abortion cases (32,590) treated in the past year, we determined that 17.2% of all PAC cases were referred to another facility. Not all women referred to another facility necessarily seek treatment, but because no data exists on the percentage of women referred for PAC who seek treatment, we assumed that the percentage seeking treatment is similar to the percentage of women in Kinshasa delivering in health facilities, which according to the most recent DRC DHS is 98% [4]. By multiplying the percentage of referral cases (17.2%) by the percentage of referrals assumed to have sought treatment (98%), we calculated that 16.9% of PAC cases needed to be subtracted from the total number of PAC cases treated in health facilities in Kinshasa. The objective of this study is to estimate the incidence of abortion in Kinshasa. Given that Kinshasa has a high density of health facilities, women from nearby areas may come to Kinshasa for PAC. Not taking this into account would overestimate the incidence of abortion. According to data collected in the PMS, 3% of women receiving PAC in health facilities in Kinshasa live outside the city. Thus, we subtracted 3% of PAC cases from the total number of abortion complications treated in health facilities in Kinshasa. To determine the number of complications that are due to induced abortions, we subtracted the number of complications resulting from spontaneous abortions from the total number of PAC cases. Similar to previous studies applying the AICM [18, 19, 25], we assumed that only women who have late miscarriages (between 13 and 22 weeks’ gestation) seek treatment at health facilities. Prior studies have shown that late miscarriages make up 3.4% of all live births [26, 27]. We estimated the number of late miscarriages by applying this proportion to the number of live births in Kinshasa, which was calculated by applying age-specific fertility rates from the 2013–14 DRC DHS to population estimates of women of reproductive age in Kinshasa. Not all women who experience a late miscarriage seek treatment at health facilities. Similar to previous studies where the AICM has been applied [18, 20, 28], we assumed that the proportion of women seeking PAC for late miscarriages is similar to the proportion of women giving birth in hospitals (98%). We used data collected in the HPS to determine the proportion of women having induced abortions who receive PAC. The HPS provided estimates of: 1) the proportion of women who experience complications by type of abortion method and type of abortion provider and 2) the proportion of women who obtain PAC by type of abortion method. These estimates were calculated separately for poor and non-poor women because these subgroups of women may have different abortion-seeking and treatment behaviors. We used this information to calculate the proportion of poor and non-poor women seeking treatment for induced abortion complications. Next, we weighted these proportions by the distribution of women of reproductive age in Kinshasa by poor and non-poor status to come up with the proportion of all women who have abortions who will receive treatment in health facilities. The inverse of this proportion is our multiplier or adjustment factor. This multiplier represents the number of women who have abortions for every woman who has an abortion and obtains PAC in a facility. A mathematical expression of the inputs and steps for calculating the multiplier can be found in S1 File. In our initial calculation of the number of abortion complications, spontaneous or induced, treated in facilities, we obtained 95% confidence intervals around the estimate. To estimate the total number of induced abortions that occur in Kinshasa in 2016, we applied the multiplier to the number of induced abortion complications treated in health facilities (after subtracting referrals treated, complications experienced by women who lived outside of Kinshasa, and cases of late term miscarriages presented in facility for care). This calculation was done for the point estimate of abortion complications, as well as its lower and upper bounds, since these were obtained from a random sample of health facilities. We applied this to the estimates of induced abortions to enable us to provide lower and upper estimates of the number of induced abortions in Kinshasa. We then calculated the abortion rate by dividing the number of induced abortions by the population of women of reproductive age (15–49 years), and the abortion ratio by dividing the number of induced abortions by the number of live births in Kinshasa. By dividing the lower and upper estimates of the number of induced abortions by the reproductive-age population, we also obtained lower and upper estimates for the induced abortion rate. We estimated the annual number of pregnancies in Kinshasa by summing the annual number of live births, induced abortions, and miscarriages. Prior studies have demonstrated that the number of miscarriages is equal to the sum of 20% of live births and 10% of induced abortions [26, 27]. Thus, we calculated the number of unintended pregnancies in the following manner: Unintended pregnancies equal induced abortions plus unplanned births plus miscarriages resulting from unintended pregnancies (calculated as the sum of 20% of unplanned births and 10% of induced abortions). Unplanned births are defined as births that were unintended at the time of conception. Although we assumed that all induced abortions were unintended pregnancies, we recognize that some (usually a small number) intended pregnancies may have ended in induced abortions. We calculated the number of unplanned births by multiplying the proportion of births in Kinshasa reported to be unintended in the past five years in the 2013–14 DHS in the DRC by the estimated number of live births in the city. Similarly, the number of intended pregnancies equals planned births plus miscarriages of intended pregnancies (i.e. 20% of planned births). Planned births are defined as births that were intended at the time of conception. We calculated the number of planned births by multiplying the proportion of births in Kinshasa reported to be intended in the past five years in the 2013–14 DHS in the DRC by the number of live births in the city. We calculated the unintended pregnancy rate by dividing the number of unintended pregnancies by the population of women of reproductive age (15–49 years).

Based on the provided information, here are some potential innovations that could be used to improve access to maternal health:

1. Telemedicine: Implementing telemedicine services can provide remote access to healthcare professionals, allowing pregnant women to receive medical advice and consultations without having to travel long distances.

2. Mobile health (mHealth) applications: Developing mobile applications that provide information on prenatal care, nutrition, and maternal health can empower women with knowledge and resources to take care of their health during pregnancy.

3. Community health workers: Training and deploying community health workers who can provide basic prenatal care, education, and support to pregnant women in remote or underserved areas can improve access to maternal health services.

4. Mobile clinics: Establishing mobile clinics that travel to rural or hard-to-reach areas can bring essential maternal health services, such as prenatal check-ups and vaccinations, closer to women who lack access to healthcare facilities.

5. Task-shifting: Training and empowering midwives and other healthcare professionals to perform certain tasks traditionally done by doctors can help alleviate the shortage of skilled healthcare providers and improve access to maternal health services.

6. Public-private partnerships: Collaborating with private healthcare providers and organizations can help expand the availability of maternal health services, especially in areas where public healthcare facilities are limited.

7. Health financing schemes: Implementing innovative health financing schemes, such as community-based health insurance or conditional cash transfer programs, can help reduce financial barriers to accessing maternal health services.

8. Quality improvement initiatives: Implementing quality improvement initiatives in healthcare facilities, such as improving infection control practices and ensuring the availability of essential drugs and equipment, can enhance the safety and effectiveness of maternal health services.

9. Maternal health education programs: Developing and implementing comprehensive maternal health education programs in schools, communities, and healthcare facilities can increase awareness and knowledge about maternal health, leading to better health-seeking behaviors.

10. Strengthening referral systems: Improving the coordination and effectiveness of referral systems between primary healthcare facilities and higher-level hospitals can ensure timely access to emergency obstetric care for women with complications during pregnancy or childbirth.
AI Innovations Description
Based on the information provided, the following recommendation can be developed into an innovation to improve access to maternal health:

1. Increase access to contraception: One of the key findings of the study is that increasing contraceptive uptake can reduce the number of unintended pregnancies, which in turn can lead to fewer unsafe abortions and maternal deaths. Therefore, implementing innovative strategies to improve access to contraception can have a significant impact on improving maternal health. This can include initiatives such as increasing the availability of contraceptive methods, providing comprehensive sexual and reproductive health education, and addressing cultural and social barriers to contraceptive use.

By focusing on increasing access to contraception, women will have more control over their reproductive health and can make informed decisions about when and if they want to become pregnant. This can help prevent unintended pregnancies and reduce the need for unsafe abortions, ultimately improving maternal health outcomes.

It is important to note that this recommendation should be implemented in conjunction with other measures such as improving access to safe abortion services and post-abortion care, as mentioned in the study. A comprehensive approach that addresses both the prevention and management of unintended pregnancies and unsafe abortions is crucial for improving access to maternal health.
AI Innovations Methodology
Based on the provided description, the study aims to estimate the incidence of induced abortion and unintended pregnancy in Kinshasa, Democratic Republic of Congo. The methodology used to simulate the impact of recommendations on improving access to maternal health is not explicitly mentioned. However, based on the information provided, here is a suggested methodology to simulate the impact:

1. Identify the recommendations: Based on the study’s conclusions, the recommendations to improve access to maternal health include increasing contraceptive uptake, increasing access to safe abortion, and improving post-abortion care.

2. Define the simulation model: Develop a simulation model that represents the current state of maternal health access in Kinshasa. This model should include variables such as the number of women seeking maternal health services, the availability and accessibility of contraceptives, the availability and quality of safe abortion services, and the availability and quality of post-abortion care.

3. Set baseline values: Assign baseline values to the variables in the simulation model based on the data collected in the study. This includes values such as the number of women obtaining treatment for induced abortion complications, the abortion rate, the unintended pregnancy rate, and other relevant indicators.

4. Introduce the recommendations: Modify the simulation model to incorporate the recommended interventions. This may involve increasing the availability and accessibility of contraceptives, expanding access to safe abortion services, and improving the quality of post-abortion care.

5. Simulate the impact: Run the simulation model with the modified variables to simulate the impact of the recommendations on improving access to maternal health. This can be done by comparing the outcomes of the simulation (e.g., the number of women obtaining treatment for induced abortion complications, the abortion rate, the unintended pregnancy rate) with the baseline values.

6. Analyze the results: Analyze the results of the simulation to determine the extent to which the recommendations improve access to maternal health. This may involve comparing the outcomes of the simulation with the baseline values, calculating the percentage change in relevant indicators, and assessing the overall impact of the recommendations.

7. Validate the simulation: Validate the simulation results by comparing them with real-world data, if available. This can help ensure the accuracy and reliability of the simulation model and its findings.

8. Refine the simulation model: Based on the results and validation, refine the simulation model as necessary to improve its accuracy and reliability. This may involve adjusting the variables, incorporating additional data sources, or modifying the simulation methodology.

By following this methodology, researchers can simulate the impact of the recommendations on improving access to maternal health in Kinshasa, providing valuable insights for policymakers and stakeholders in the field of maternal health.

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