The effect of supervision on community health workers’ effectiveness with households in rural South Africa: A cluster randomized controlled trial

listen audio

Study Justification:
– The study aimed to evaluate the effectiveness of enhanced supervision and monitoring of community health workers (CHWs) in improving child and maternal outcomes in rural South Africa.
– The study addressed the need for effective strategies to supplement professional medical providers in resource-scarce rural settings.
– The study aimed to contribute to the understanding of how to scale up CHW programs nationally for maximum impact.
Study Highlights:
– The study conducted a cluster randomized controlled trial, comparing outcomes over 2 years in clinics receiving standard care and clinics receiving enhanced monitoring and supervision.
– The primary outcome was the number of statistically significant intervention effects among 13 outcomes of interest.
– The study found that while the observed benefits were not statistically significant, there were improvements in breastfeeding for 6 months, reduction in malnutrition, increased antiretroviral adherence, and improved developmental milestones in the enhanced supervision group compared to the standard care group.
– The study identified the need for alternative strategies for staff recruitment and narrowing down intervention outcomes to address specific local community problems for consistently high impact.
Recommendations for Lay Reader and Policy Maker:
– The study highlights the importance of supervision and monitoring in improving the effectiveness of community health workers.
– The study suggests that additional support materials, regular supervision, and monitoring can lead to positive outcomes in breastfeeding, malnutrition, antiretroviral adherence, and developmental milestones.
– The study recommends exploring alternative strategies for staff recruitment and tailoring interventions to address specific local community problems for better outcomes.
– The study emphasizes the need for ongoing evaluation and improvement of community health worker programs to ensure consistent high impact.
Key Role Players:
– Community health workers (CHWs)
– Supervisors from a non-governmental organization
– Government clinic supervisors
– Philani Mentor Mother Program trainers
– Data collectors
– Stellenbosch Health Research Ethics Board
– UCLA Institutional Review Board
– Eastern Cape Department of Health
Cost Items for Planning Recommendations:
– Salaries of community health workers
– Training and orientation programs for CHWs
– Support materials for CHWs (backpacks, scales, thermometers, etc.)
– Transport support for supervisors in medical emergencies
– Ongoing supervision and monitoring activities
– Data collection and quality assurance measures
– Administrative and logistical support for the program implementation

Background Community health workers (CHWs) can supplement professional medical providers, especially in rural settings where resources are particularly scarce. Yet, outcomes of studies evaluating CHWs effectiveness have been highly variable and lack impact when scaled nationally. This study examines if child and maternal outcomes are better when existing government CHWs, who are perinatal home visitors, receive ongoing enhanced supervision and monitoring, compared to standard care. Methods and findings A cluster randomized controlled effectiveness trial was conducted comparing outcomes over 2 years when different supervision and support are provided. Primary health clinics were randomized by clinic to receive monitoring and supervision from either (1) existing supervisors (Standard Care (SC); n = 4 clinics, 23 CHWs, 392 mothers); or (2) supervisors from a nongovernmental organization that provided enhanced monitoring and supervision (Accountable Care [AC]; n = 4 clinic areas, 20 CHWs, 423 mothers). Assessments were conducted during pregnancy and at 3, 6, 15, and 24 months post-birth with high retention rates (76% to 86%). The primary outcome was the number of statistically significant intervention effects among 13 outcomes of interest; this approach allowed us to evaluate the intervention holistically while accounting for correlation among the 13 outcomes and considering multiple comparisons. The observed benefits were not statistically significant and did not show the AC’s efficacy over the SC. Only the antiretroviral (ARV) adherence effect met the significance threshold established a priori (SC mean 2.3, AC mean 2.9, p 2,000 South African Rand [ZAR]), access to electricity, and access to safe water. The number of adult and child household members were reported, food insecurity, receipt of the child support grant prior to childbirth for other household members), the number of previous births, HIV status, histories of lifetime suicide attempts, having a chronic illness, lifetime and recent number of sexual partners, and interpersonal violence. We also assessed alcohol use prior to recognizing one is pregnant and during pregnancy post-pregnancy discovery, and problematic alcohol use with the Alcohol Use Disorders Identification Test-C (AUDIT-C) [32] for the 2 time frames. The AUDIT-C is a 3-item scale indicating alcohol consumed in the last year; number of drinks daily when drinking; and number of times having more than 6 drinks in a day. A score >3 is considered problematic alcohol use. Reports of home visits. Mothers reported visits by CHWs at each assessment. Alcohol Use During Pregnancy. Mothers were asked if they ever used alcohol after discovering they were pregnant at the baseline assessment (1) or not (0). Depressive symptoms were measured at each assessment using the Edinburgh Postnatal Depression Scale (EPDS) [31], a measure often administered in South Africa [24,33,34]. The EPDS is a 10-item scale with 4 Likert-type responses for each item (maximum score of 30), with mothers’ self-reports indicating possible depressed mood with scores > = 13 (1) at every assessment (3, 6, 15, and 24 months) or not (0). Antenatal adherence to 4 healthcare visits (1) or not (0) was assessed based on answers at the baseline and the 3-month assessment. Adherence to tasks to Prevent Mother-to-Child Transmission (PMTCT) by MLH. HIV testing identified MLH during pregnancy, confirmed by self-report and by the government-issued Road to Health Card. All pregnant mothers were tested for HIV or were previously identified as HIV seropositive. We created a count of the following tasks the MLH completed: (a) exclusively breastfed for 6 months; (b) gave nevirapine at birth; (c) gave Bactrim for 6 weeks; (d) tested the child for HIV prior to 3 months of age; and (e) went to the clinic to receive the results of the baby’s HIV test. These were self-reported at each assessment and checked on the child’s Road to Health card to identify if each of the tasks were completed (1) or not (0). Adherence to ARV Medication for MLH. At every time point, MLH were asked to rate their adherence to ARV medication on a scale ranging from poor to excellent. The outcome was the number of assessments (that is, 3, 6, 15, 24 months, range = 0 to 4) the mother reported “Very Good” or “Excellent” ARV adherence. Breastfeeding for at least 6 months, which was self-reported by mothers and calculated as yes (0) or not (1) if breastfeeding at both the 3- and 6-month assessment or not (0). Having a low birthweight (LBW) infant (that is, less than 2,500 grams = 0) or not (1) as recorded on the clinic or hospital birth registers or the child’s Road to Health Card. Having a stunted or malnourished child over 24 months (2 outcomes as occurring (1) or not (0) at any assessment at 3, 6, 15, or 24 months). Data collectors carried scales and weighed the child in kilograms and measured their length (centimeters) using a measuring mat. Infant anthropometric data were converted to z-scores based on the World Health Organization’s (WHO) age-adjusted norms for gender [35]. A Z-score below −2 was considered a serious growth deficit: <−2 for height-for-age z-scores (HAZ) was considered stunted (1) or never stunted (0). A standard deviation (SD) of −2 SD was considered nourished (0). Securing the child support grant by 6 months (0) or not (1). Immunizations were classed as up to date if those expected were completed at the 6-, 15-, and 24-month time points, based on the South African government directives [36]. Adherence was documented on the child’s Road to Health card. Child hospitalizations were recorded as occurring (1) if the child was ever hospitalized at the 3, 6-, 15-, and 24-month time points on the child’s Road to Health card or not (0). Developmental milestones were based on the WHO stated developmental milestones [26,36] at 6, 15, and 24 months. The outcome was the count of developmental milestones the child completed at all the time points. UCLA randomized matched clinic sites to the SC and the AC intervention conditions. There were 23 CHWs in the 4 SC clinics compared to 20 at the AC clinics; the number varied slightly due to resignations and hiring throughout the study. In particular, at one point in the study, a hiring freeze by the Provincial Dept. of Health resulted in a deficit of 6 CHWs over both conditions. At this point, the study agreed to pay the salaries of 6 new CHWs that the Dept. of Health hired, using their normal advertising, appointment, and training procedures. This was done in order to ensure that we were not evaluating the effect of a hiring freeze, but of CHWs’ implementation of home visiting in typical settings. These new CHWs received exactly the same 1-month training as the other CHWs who had been working from the start of the study. The South African Dept. of Health employs CHWs as salaried, monthly workers with a minimum wage of R21.91 per hour. Each government CHWs was assigned to a specific clinic and the pregnant women living within the specific geographic area served by the clinic. Prior to the study, CHWs had previously received 10 days of in-service orientation and training by government supervisors when reassigned from clinic to community service. An additional month-long training was conducted by the Philani Mentor Mother Program prior to the clinic randomization, with trainers shadowing the CHWs during a 2-week period immediately afterwards on their early home visits to ensure good practice. CHWs provided consent to collect data on their sociodemographic characteristics. All CHWs were trained to provide general information about the key perinatal health challenges: living with HIV, TB, reproductive health, danger signs during pregnancy, typical taught a process for engaging with the mothers—how to enter a house and bond with a mother, how to interview a mother, introduce oneself and one’s role, basic counseling skills, as well as how to monitor maternal and child status. This included growth monitoring, oral hydration, recognizing a child’s breathing problems, teaching the principles of good hygiene, and recording visits. After this training, the ongoing supervision and monitoring of home visits varied across conditions, as summarized in Table 1. AC, Accountable Care; CHWs, community health workers; SC, Standard Care. The CHWs were expected to be in the field conducting home visits for 4 days a week and to report to their clinic team leader 1 day a week. Paper records of the number of visits performed were to have been kept, but there were no supervisory visits in the field and no verification of whether visits took place or not. There was also no help with transport in medical emergencies. While we attempted to obtain records of visits and case assignments by CHWs, we were not successful. The CHWs implementation model in the AC was adapted from the Philani Maternal, Child Health, and Nutrition Programme [37], an evidence-based home visiting intervention model evaluated in 4 studies [24,33,38,39]. There were 3 differences between conditions: (1) CHWs in the AC received support materials to reinforce their prevention messages (backpacks with scales, thermometers, deworming medication, vitamin A, and condoms) and were required to document each home visit in paper logs and/or on mobile phones; (2) supervisors monitored daily implementation of both the paper/mobile reports and made home visits with the CHWs; and (3) supervisors had transport support for medical emergencies. Two experienced Philani supervisors were allocated to provide supportive supervision to the CHWs allocated to the AC, even though the official supervisor remained the government clinic supervisor. Supportive supervision requires the following: the psychoeducational and interpersonal skills to both motivate and support CHWs to conduct effective home visits; the ability to identify and act effectively when either mothers or children are failing to maintain healthy routines; and the ability to hold CHWs accountable for not visiting mothers’ homes nor sharing key information about risk and protective factors for mothers and children. The supervisor randomly dropped in on the typical home visits on an ongoing basis (once every 2 weeks), covering 4 to 6 households a day. CHWs and supervisors then jointly identified at-risk children. These visits allowed them to support and validate the CHWs, as well as provide a role model for coping well with the mother on the home visit. CHWs in the AC group were expected to complete 6 home visits a day and were required to briefly log each visit onsite on a mobile phone with global positioning coordinates. Supervisors regularly checked the logging of home visits through an online portal and were able to quickly identify when CHWs were not out in the field, which was then addressed by a phone call or visit [37]. Supervisors had no power to fire or discipline CHWs; they reported personnel problems to government supervisors. Our primary research question was whether the intervention improved health outcomes. Because there were multiple outcomes of interest, we evaluated all 13 of them independently and created a primary outcome from those analyses. The primary outcome was the number of statistically significant intervention effects (defined as p < 0.025 using a one-sided test favoring the intervention) among the 13 outcomes; this strategy for assessing multiple outcomes in one test was developed by Harwood and colleagues [27]. Because these outcomes are likely correlated, we estimated a correlation of 0.10 as our average correlation between outcomes. Based on the Monte Carlo simulations run by Harwood and colleagues [27], 3 significant outcomes are needed to claim overall significance comparing the SC and the AC. To evaluate the intervention’s effect on each of the 13 outcomes, we fit linear mixed effects model for the continuous outcomes and a logistic mixed effects model for each the binary outcomes. Because the intervention was assigned at the clinic level, we account for that with a random clinic effect; this is standard practice for cluster randomized trials. So, each mixed-effects model included the baseline clinic as a random effect and the intervention as a fixed effect. Because of computational difficulties and the prior assumption that there is clinic-to-clinic variation, we used a penalized likelihood approach for the clinic variance; this is equivalent to estimating via posterior mode with a weakly informative prior [40]. All models were fit with the blme package in R [40] using the default prior distributions on clinic variance. Using these models, we tested whether the outcome was improved in the intervention arm; if the p-value for that one-sided test is 0.025 or lower, it counts as a statistically significant result. We estimated we had sufficient power of 0.80 to detect a small effect size of 0.21 overall omnibus test between the AC and SC conditions by 24 months. We assumed an intraclass area correlation of 0.01 and assumed 80% retention for the power analysis. The study [28] was approved by the Stellenbosch Health Research Ethics Board (N16/05/064) by the UCLA Institutional Review Board (IRB#16–001362), and permission to recruit mothers to the study at primary care clinics was provided by the Eastern Cape Department of Health, South Africa. This study is reported as per the CONSORT extension for cluster trials.

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

1. Mobile Health (mHealth) Solutions: Develop mobile applications or text messaging services to provide pregnant women with important health information, reminders for appointments, and access to teleconsultations with healthcare providers.

2. Telemedicine: Implement telemedicine platforms to enable remote consultations between pregnant women and healthcare providers, reducing the need for travel and improving access to medical advice and support.

3. Community Health Worker Training and Support: Enhance the training and support provided to community health workers (CHWs) to ensure they have the necessary skills and resources to effectively deliver maternal health services in rural areas.

4. Transportation Solutions: Develop transportation solutions, such as mobile clinics or community-based transportation services, to help pregnant women in remote areas access healthcare facilities for prenatal care, delivery, and postnatal care.

5. Maternal Health Education Programs: Implement comprehensive maternal health education programs that target both pregnant women and their families, providing them with knowledge and skills to make informed decisions about their health and the health of their babies.

6. Partnerships with Non-Governmental Organizations (NGOs): Collaborate with NGOs that specialize in maternal health to leverage their expertise, resources, and networks to improve access to maternal health services in rural areas.

7. Maternal Health Financing Models: Explore innovative financing models, such as microinsurance or community-based health financing schemes, to make maternal health services more affordable and accessible for women in low-income rural communities.

8. Integration of Maternal Health Services: Integrate maternal health services with other healthcare services, such as family planning, HIV/AIDS prevention and treatment, and nutrition programs, to provide comprehensive care for women and their families.

9. Use of Digital Health Technologies: Utilize digital health technologies, such as electronic health records and telemonitoring devices, to improve the efficiency and quality of maternal health services, enabling healthcare providers to remotely monitor and manage the health of pregnant women.

10. Strengthening Health Infrastructure: Invest in improving the infrastructure of healthcare facilities in rural areas, including the availability of medical equipment, supplies, and skilled healthcare providers, to ensure that pregnant women have access to quality maternal health services.

It is important to note that the effectiveness and feasibility of these innovations may vary depending on the specific context and resources available in the target area.
AI Innovations Description
The study mentioned focuses on the effectiveness of community health workers (CHWs) in improving maternal and child outcomes in rural South Africa. The study compared two groups of CHWs: one group received standard care (SC) supervision from existing supervisors, while the other group received enhanced monitoring and supervision (Accountable Care, AC) from supervisors of a non-governmental organization.

The study found that while the observed benefits were not statistically significant, there were improvements in several outcomes in the AC group compared to the SC group. These included increasing breastfeeding for 6 months, reducing malnutrition, increasing antiretroviral (ARV) adherence, and improving developmental milestones. However, the overall impact of supervision and monitoring on CHWs’ effectiveness in improving maternal and child outcomes was found to be insufficient.

The study was conducted in the deeply rural King Sabata Dalindyebo Health Subdistrict of the OR Tambo District, Eastern Cape of South Africa. The area is characterized by limited resources and poor access to water, sanitation, and healthcare. The study involved 8 primary care clinics and a total of 845 mothers.

The CHWs in the AC group received additional support materials, such as scales, thermometers, and educational materials, and were required to document each home visit. They also received regular monitoring and supervision from trained supervisors, who made home visits with the CHWs and provided support and guidance. In contrast, the CHWs in the SC group received standard supervision from existing government supervisors, with no additional support materials or regular monitoring.

The study highlights the need for alternative strategies to improve CHWs’ impact on maternal and child outcomes. This may include revising staff recruitment processes and narrowing the intervention outcomes to address specific local community problems. The study also emphasizes the importance of ongoing supervision and support for CHWs to ensure effective implementation of interventions.

Overall, the study provides valuable insights into the challenges and opportunities for improving access to maternal health in rural settings and emphasizes the need for innovative approaches to enhance the effectiveness of CHWs in improving maternal and child outcomes.
AI Innovations Methodology
Based on the provided description, the study aimed to evaluate the impact of enhanced supervision and monitoring on the effectiveness of community health workers (CHWs) in improving child and maternal outcomes in rural South Africa. The study conducted a cluster randomized controlled trial, where primary health clinics were randomly assigned to receive either standard care or enhanced monitoring and supervision from a non-governmental organization. The study assessed 13 outcomes of interest, including antiretroviral adherence, breastfeeding duration, malnutrition, and developmental milestones.

To simulate the impact of recommendations on improving access to maternal health, a methodology could be developed using the following steps:

1. Identify the specific recommendations: Based on the study findings and existing literature, identify the recommendations that have the potential to improve access to maternal health. These recommendations could include strategies for staff recruitment, training, and narrowing the intervention outcomes to address specific local community problems.

2. Define the simulation model: Develop a simulation model that represents the maternal health system, including key components such as healthcare facilities, CHWs, pregnant women, and relevant factors influencing access to maternal health. The model should capture the interactions and dynamics between these components.

3. Input data: Gather data on relevant parameters and variables for the simulation model. This could include data on population demographics, healthcare facility capacities, CHW performance, and maternal health indicators. Data can be obtained from existing sources, such as health surveys, government reports, and the study mentioned.

4. Model implementation: Implement the simulation model using appropriate software or programming languages. The model should incorporate the identified recommendations and simulate their impact on improving access to maternal health. This could involve adjusting parameters related to CHW recruitment, training, supervision, and intervention outcomes.

5. Run simulations: Run multiple simulations using different scenarios and assumptions to assess the potential impact of the recommendations. This could involve varying parameters such as the number of CHWs, their performance levels, and the coverage of the intervention. Simulations can generate outputs such as changes in maternal health indicators, access to healthcare facilities, and overall system performance.

6. Analyze results: Analyze the simulation results to evaluate the effectiveness of the recommendations in improving access to maternal health. Compare the outcomes of different scenarios and assess the magnitude of the impact. This analysis can provide insights into the potential benefits and limitations of the recommendations.

7. Refine and validate the model: Refine the simulation model based on the analysis and feedback from stakeholders. Validate the model by comparing the simulation results with real-world data or expert opinions. This iterative process helps ensure the accuracy and reliability of the simulation model.

By following this methodology, policymakers and healthcare stakeholders can gain valuable insights into the potential impact of recommendations on improving access to maternal health. The simulation results can inform decision-making and guide the implementation of effective interventions in real-world settings.

Partilhar isto:
Facebook
Twitter
LinkedIn
WhatsApp
Email