Implementation research on community health workers’ provision of maternal and child health services in rural Liberia

listen audio

Study Justification:
– The study aimed to assess the impact of an enhanced community health worker (CHW) program on the use of essential maternal and child health services in rural Liberia.
– The study was conducted in Konobo, one of Liberia’s most remote regions, with poor maternal and child health outcomes.
– The program was implemented to address the lack of access to healthcare services in the area, particularly for women of reproductive age and children under five.
Highlights:
– Between 2012 and 2015, 54 CHWs, seven peer supervisors, and three clinical supervisors were trained to serve a population of 12,127 people in 44 communities.
– The percentage of children receiving care from formal care providers increased significantly for diarrhoea, fever, and acute respiratory infection.
– Facility-based delivery also increased significantly.
– The improvements in facility-based delivery and formal sector care were greater in agricultural communities compared to gold-mining communities.
– However, there were no significant changes in the receipt of antenatal care sessions at a health facility and postnatal care within 24 hours of delivery.
Recommendations:
– Additional interventions are needed to improve clinic-based services, such as postnatal care, and services in specific settings, such as mining areas.
– The program should focus on increasing the utilization of antenatal care sessions at health facilities and postnatal care within 24 hours of delivery.
Key Role Players:
– Liberian Ministry of Health
– Last Mile Health (nongovernmental organization)
– Community health workers (CHWs)
– Peer supervisors
– Clinical supervisors
– Traditional midwives
– Community health committees
Cost Items for Planning Recommendations:
– Recruitment and training of CHWs, peer supervisors, and clinical supervisors
– Compensation for CHWs, peer supervisors, and clinical supervisors
– Motorbikes for peer supervisors
– Diagnostic tools and therapeutics for CHWs
– Incentives for midwives and mothers who deliver in the clinic
– Transportation reimbursements and food stipends for mothers who deliver in the clinic
Please note that the provided information is a summary of the study and may not include all details.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong because it presents findings from a well-designed study that used a repeated cross-sectional cluster survey design. The study assessed changes in the use of essential maternal and child health services in rural Liberia after the implementation of an enhanced community health worker (CHW) program. The study included a large sample size and used regression-adjusted percentages to estimate changes in health service utilization. The study also adjusted for potential confounding variables such as community type, maternal age, distance to health facility, and motor vehicle access. However, to improve the evidence, the abstract could provide more details on the sampling strategy, data collection methods, and statistical analysis techniques used in the study.

Objective To assess changes in the use of essential maternal and child health services in Konobo, Liberia, after implementation of an enhanced community health worker (CHW) programme. Methods The Liberian Ministry of Health partnered with Last Mile Health, a nongovernmental organization, to implement a pilot CHW programme with enhanced recruitment, training, supervision and compensation. To assess changes in maternal and child health-care use, we conducted repeated cross-sectional cluster surveys before (2012) and after (2015) programme implementation. Findings Between 2012 and 2015, 54 CHWs, seven peer supervisors and three clinical supervisors were trained to serve a population of 12 127 people in 44 communities. The regression-adjusted percentage of children receiving care from formal care providers increased by 60.1 (95% confidence interval, CI: 51.6 to 68.7) percentage points for diarrhoea, by 30.6 (95% CI: 20.5 to 40.7) for fever and by 51.2 (95% CI: 37.9 to 64.5) for acute respiratory infection. Facility-based delivery increased by 28.2 points (95% CI: 20.3 to 36.1). Facility-based delivery and formal sector care for acute respiratory infection and diarrhoea increased more in agricultural than gold-mining communities. Receipt of one-or-more antenatal care sessions at a health facility and postnatal care within 24 hours of delivery did not change significantly. Conclusion We identified significant increases in uptake of child and maternal health-care services from formal providers during the pilot CHW programme in remote rural Liberia. Clinic-based services, such as postnatal care, and services in specific settings, such as mining areas, require additional interventions to achieve optimal outcomes.

The programme took place in Konobo district in south-eastern Liberia. Konobo is one of Liberia’s most remote regions, comprised of 2983 km2 of rainforest, with a population density of 4.1 people/km2. In 2012, approximately 12 000 residents in the district lived more than 5 km from the nearest clinic. One quarter were women of reproductive age (15–49 years) and 16% were children under five years. These two demographic groups represented the target population of the programme. All 44 remote communities in Konobo, located more than 5 km from the district’s only health clinic were involved with the programme. The average road distance from these communities to the clinic was approximately 25 km and the mean population of the communities was 276 people. According to the 2012 Liberian Demographic and Health Survey, Konobo had worse maternal and child health outcomes than other rural Liberian districts.8 We implemented the programme between 2012 and 2015 in a stepwise fashion over three geographic areas within Konobo district. Integrated community case management of childhood illness was launched in February 2013, August 2013 and March 2014. Maternal and newborn care services were launched in November 2012, December 2013 and April 2015. We recruited CHWs through community nomination, as recommended by the 2008 National policy and strategy on community health services.9 Our recruitment process added several components, including (i) completion of a literacy test; (ii) an in-person interview to assess motivation and communication skills; and (iii) training and subsequent skills’ assessment for candidates that passed the interview. After this additional three-step screening and assessment, we identified and hired the highest scoring CHWs. We also conducted a follow-up competency assessment during the first 90-days of their employment. We recruited CHWs from the communities in which they resided, and they served communities within a 30-minute walk from their home community. We also interviewed and hired two types of supervisors: clinical supervisors (i.e. clinic-based community health nurses and physician assistants) and peer supervisors (i.e. non-clinical supervisors who conduct process supervision and community engagement). Best performing CHWs were promoted to serve as peer supervisors. CHWs completed an initial two-week training in the district capital. Training modules focused on community leadership (to promote community engagement), household mapping (to define his/her catchment population) and registration (to assess demographics). Subsequent modules were administered in the district capital roughly once every three months and focused on preventive and curative components of maternal, neonatal and child health services, including birth planning, perinatal care, integrated community case management of malaria, acute respiratory infection and diarrhoea, and criteria for referral of patients with warning signs to health clinics. A typical training took two weeks to complete. Physician assistants and registered nurses led the training sessions that focused on clinical skills, such as history-taking, physical examination and specific clinical procedures, such as rapid diagnostic testing for malaria. After the start of the Ebola virus disease outbreak, we added a training module on surveillance for Ebola symptoms. CHWs received weekly supervision visits from peer supervisors who were trained in project and supply management, supportive supervision and referrals. Supervision visits were designed to last one hour each and consisted of form reviews, patient audits and restocking of essential commodities. High-performing CHWs were promoted to peer supervisors, and were equipped with a motorbike for travel during supervision visits. Initially, the visits were unstructured and left to the discretion of individual supervisors, however, since May 2013, supervision visits included the use of quality assurance checklists and randomly-sampled patient audits led by the peer supervisors. Separately, clinical supervisors conducted monthly field supervision visits to assess adherence to clinical protocols and provide formative feedback based on form reviews and direct observation of patient interactions. Although the 2008 National policy and strategy on community health services specified in-kind compensation for CHWs,9 an agreement with the health ministry allowed an additional monthly cash payment to CHWs and supervisors. CHWs were paid 60 United States dollars (US$) per month for an estimated 20 hours of work per week, while peer supervisors and clinical supervisors were paid US$ 150 and US$ 550 per month respectively. Initially, services were provided through passive surveillance, whereby community members visited CHW households during periods of illness or pregnancy. CHWs were trained to conduct integrated community case management for diarrhoea, acute respiratory infection and malaria, along with referral of cases that presented with danger signs. They were equipped with diagnostic tools, including rapid malaria diagnostic tests, mid-upper arm circumference bands and thermometers, and therapeutics, including zinc, oral rehydration salts, amoxicillin, acetaminophen and artemisinin-based combination therapy. Malaria was diagnosed with rapid diagnostic tests in children, with a measured fever. Additionally, CHWs conducted home-based antenatal care education, helped design birth plans, scheduled facility-based deliveries, screened pregnant women and neonates for danger signs, referred cases with danger signs to the clinic and promoted exclusive breastfeeding. CHWs provided services at no cost to community members. To further promote health-care utilization, CHWs organized community health committees that partnered with trained traditional midwives to refer expectant mothers to stay at maternal waiting homes (a residence near the clinic for at-term mothers), until childbirth. Beginning in April 2013, the programme paid the midwives US$ 3–5 for clinic referrals, and mothers who delivered in the clinic were provided transport reimbursements and food stipends. We modified several elements of the programme during the Ebola virus disease outbreak. After the start of the outbreak in 2015, CHWs performed active surveillance through monthly household visits. While there were no confirmed cases of Ebola in the study area, use of rapid malaria diagnostic tests was suspended to ensure the safety of CHWs, and the programme adopted treatment protocols based on self-reported signs and symptoms. Similar changes were implemented for treatment of diarrhoea and acute respiratory infection. We used data from two population-representative household surveys conducted by Last Mile Health in August 2012 and August 2015. Fundamental aspects of the survey design and execution were described previously.2 The questionnaire was adapted from the 2007 and 2012 Liberian Demographic and Health Surveys and included sections on household characteristics, maternal and neonatal health, reproductive health, child health and access to health care. We used a two-stage cluster design for the sampling, which provided a representative sample for assessing changes in maternal and child health-care use. We constructed a sampling frame using raw data from the 2008 Liberian Census. The frame was adjusted using information from household enumeration performed by Last Mile Health before each survey. Communities were the primary sampling units and were selected using probability-proportional-to-size sampling. Individual households served as secondary sampling units. Random selection of households within communities was done through a random walk procedure. For the 2012 baseline survey, we had a total sample of 600 households, selected from 30 clusters. Last Mile Health updated the sampling frame for the 2015 follow-up survey after a re-count of all the households in the district. The 2015 sample included 1035 households, selected from 45 clusters. We interviewed women ages 18–49 years in both surveys. We made certain changes to the survey between 2012 and 2015. We added questions to the follow-up survey on asset ownership, family planning, provider use, vaccination and knowledge of Ebola. Before and after implementation, comparisons were restricted to consistent items between surveys and to communities common to both sampling frames. Individual weights for survey variables were adjusted post-hoc based on 2015 data. In 2012, enumerators interviewed the woman in the household who most recently completed a pregnancy, while in 2015, all women within a household were sampled and interviewed. The comparative analysis was therefore restricted to the household woman who in the 2015 survey responded as giving birth most recently. Surveys were done in Liberian English and Konobo Krahn by bilingual enumerators. We defined the child health-care use outcomes as management of childhood illnesses by a formal care provider within a two-week recall period. The childhood illnesses included were: (i) diarrhoea; (ii) acute respiratory infection (defined as the combination of fever with a rapid respiratory rate); and (iii) fever. We defined formal care providers as community health workers, ministry of health community health volunteers (who were active in some parts of Liberia but not in our study area) and clinic staff. For maternal and neonatal health-care use, we defined outcomes as: (i) completing at least one antenatal care visit at a health facility; (ii) having a facility-based delivery; and (iii) receiving postnatal care from a clinic staff member or a CHW within 24 hours of delivery. To assess change in child health-care use, data from the 2012 survey and the 2015 survey were used as before and after programme implementation, respectively. To assess changes with maternal care use, the 2012 survey was used as a baseline, but assessment of programme implementation was restricted to births captured after April 2013, when all catchment communities had initiated at least one maternal health programme element. We conducted descriptive analyses to summarize respondent characteristics at baseline and after programme implementation. We fit logistic regression models to compare differences in each of the outcome indicators before and after implementation. The regression models for maternal health were adjusted for community type (agricultural versus gold-mining), maternal age, distance to health facility (measured by global positioning system) and presence or absence of motor vehicle access to the nearest health facility. The models for child health were adjusted for these same variables as well as the child’s age. After regression, we used predictive margins, holding covariates at their observed values to estimate adjusted percentages of each outcome indicator before and after programme implementation, and tested before-to-after changes using contrasts of predicted percentages. Since the CHW programme had not started at the time of the baseline survey in 2012, we estimated the percentage of child health encounters for integrated community case management of childhood illnesses that were provided by a CHW only for 2015. To assess moderating effects of community type, we ran the same maternal and child health models with an interaction term of community type and programme period. All analyses incorporated complex sampling design using inverse probability weights and finite population corrections at both stages. Standard errors were adjusted for clustering using Taylor linearization. Statistical analyses were conducted using Stata version 14.2 (Statacorp, College Station, Texas, United States of America). We obtained ethical approval for the surveys from the institutional review boards of Partners Healthcare, Georgetown University and the Liberian Institute for Biomedical Research. Respondents gave verbal informed consent.

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

1. Enhanced Community Health Worker (CHW) Program: Implement a CHW program similar to the one described in the study, with enhanced recruitment, training, supervision, and compensation. CHWs can provide essential maternal and child health services in remote and underserved areas, increasing access to care.

2. Mobile Health Clinics: Utilize mobile health clinics to bring maternal health services directly to remote communities. These clinics can travel to different locations, providing antenatal care, postnatal care, and other essential services to pregnant women and new mothers who may not have easy access to healthcare facilities.

3. Telemedicine: Use telemedicine technology to connect pregnant women and new mothers in remote areas with healthcare providers. Through video consultations, healthcare professionals can provide guidance, advice, and support, reducing the need for women to travel long distances for routine check-ups.

4. Maternal Waiting Homes: Establish maternal waiting homes near healthcare facilities in remote areas. These homes provide a safe and comfortable place for pregnant women to stay as they approach their due date, ensuring they are close to medical care when they go into labor.

5. Community Engagement and Education: Implement community engagement and education programs to raise awareness about the importance of maternal health and encourage women to seek care. This can include workshops, community meetings, and the involvement of community leaders and traditional birth attendants.

6. Transportation Support: Provide transportation support for pregnant women to access healthcare facilities. This can include arranging for transportation vouchers, community-based transportation services, or partnerships with local transportation providers.

7. Strengthening Health Infrastructure: Invest in improving healthcare infrastructure in remote areas, including the construction and staffing of additional healthcare facilities. This can help reduce the distance and travel time required for pregnant women to access maternal health services.

8. Maternal Health Vouchers: Introduce maternal health vouchers that can be used by pregnant women to access essential maternal health services. These vouchers can cover the cost of antenatal care, facility-based delivery, and postnatal care, making it more affordable for women in remote areas to seek care.

9. Public-Private Partnerships: Foster partnerships between the public sector, private healthcare providers, and non-governmental organizations to improve access to maternal health services. This can involve leveraging the resources and expertise of different stakeholders to expand service delivery in remote areas.

10. Data-driven Decision Making: Use data and research findings, such as the study mentioned, to inform policy and programmatic decisions related to maternal health. This can help identify gaps in access and guide the implementation of targeted interventions to improve maternal health outcomes.

It’s important to note that the specific context and needs of each community should be considered when implementing these innovations.
AI Innovations Description
The recommendation that can be developed into an innovation to improve access to maternal health based on the study is the implementation of an enhanced community health worker (CHW) program. This program involves recruiting, training, supervising, and compensating CHWs to provide essential maternal and child health services in remote rural areas.

The program was implemented in Konobo district, one of Liberia’s most remote regions, where many residents lived more than 5 km from the nearest clinic. The CHWs were recruited from the communities they resided in and served communities within a 30-minute walk from their home community. They were trained in various aspects of maternal and child health services, including preventive and curative components, birth planning, and referral protocols.

The CHWs provided services such as integrated community case management of childhood illnesses, home-based antenatal care education, birth planning, screening for danger signs, and promotion of exclusive breastfeeding. They also organized community health committees that partnered with trained traditional midwives to refer expectant mothers to maternal waiting homes near the clinic.

The results of the study showed significant increases in the uptake of child and maternal health-care services from formal providers during the pilot CHW program. The percentage of children receiving care from formal care providers increased for diarrhoea, fever, and acute respiratory infection. Facility-based delivery also increased. However, there were no significant changes in the receipt of antenatal care sessions at a health facility and postnatal care within 24 hours of delivery.

To further improve access to maternal health, additional interventions are needed for clinic-based services like postnatal care and services in specific settings like mining areas. The program can be modified and expanded based on the findings to address these areas of improvement.

Overall, the recommendation is to implement an enhanced CHW program in remote rural areas, focusing on training and supporting CHWs to provide essential maternal and child health services. This program can help improve access to maternal health and contribute to better health outcomes for women and children in underserved communities.
AI Innovations Methodology
Based on the provided information, here are some potential recommendations for improving access to maternal health:

1. Expand the CHW program: Based on the positive impact of the enhanced CHW program in Konobo, Liberia, consider expanding the program to other remote regions in the country. This would involve recruiting and training more CHWs, providing them with ongoing supervision and support, and ensuring they have the necessary resources and tools to provide maternal and child health services.

2. Strengthen referral systems: Enhance the referral systems between CHWs and health clinics to ensure seamless and timely access to higher levels of care when needed. This could involve improving communication channels, providing transportation support for referrals, and establishing clear protocols for CHWs to follow when referring patients.

3. Increase community engagement: Foster community engagement and participation in maternal health initiatives. This can be done by involving community members in the planning and implementation of programs, establishing community health committees, and promoting health education and awareness campaigns within the community.

4. Improve access to transportation: Address the challenge of transportation by providing reliable and affordable transportation options for pregnant women and new mothers to access health facilities. This could include initiatives such as community-based transportation services or partnerships with local transportation providers.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could be developed as follows:

1. Define indicators: Identify specific indicators that reflect improved access to maternal health, such as the percentage of women receiving antenatal care, facility-based deliveries, or postnatal care within 24 hours of delivery.

2. Data collection: Collect baseline data on the identified indicators before implementing the recommendations. This could involve conducting surveys or using existing data sources.

3. Implement recommendations: Implement the recommended interventions, such as expanding the CHW program, strengthening referral systems, increasing community engagement, and improving access to transportation.

4. Monitor and evaluate: Continuously monitor and evaluate the impact of the implemented interventions on the identified indicators. This could involve conducting follow-up surveys or analyzing existing data to assess changes in access to maternal health services.

5. Analyze and compare data: Analyze the data collected before and after implementing the recommendations to determine the impact of the interventions. This could involve statistical analysis to compare the indicators and assess the significance of any changes observed.

6. Adjust and refine: Based on the findings, make adjustments and refinements to the interventions as needed to further improve access to maternal health services.

By following this methodology, it would be possible to simulate the impact of the recommendations on improving access to maternal health and make evidence-based decisions for further interventions.

Partagez ceci :
Facebook
Twitter
LinkedIn
WhatsApp
Email