Effects of computerized decision support on maternal and neonatal health-worker performance in the context of combined implementation with performance-based incentivisation in Upper East Region, Ghana: a qualitative study of professional perspectives

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Study Justification:
– The study aimed to explore the perceptions of maternal and child healthcare providers regarding the effects of a combined computerized decision support system (CDSS) and performance-based incentives (PBIs) intervention on their performance.
– There is minimal evidence on the combined effects of CDSS and PBIs interventions or their perceived effects among healthcare providers in low-resource settings.
– Understanding the perspectives of healthcare providers is crucial for designing and implementing effective CDSS and PBIs interventions.
Study Highlights:
– The combined CDSS-PBI intervention was perceived to improve the performance of healthcare providers.
– The intervention enhanced knowledge of maternal health issues, facilitated diagnoses and prescribing, prompted actions for complications, and improved management.
– Some interviewees reported improved morbidity and mortality.
– However, challenges in patient care were identified, including CDSS software inflexibility, faulty electronic partograph, increased workload, and power fluctuations affecting the software.
Study Recommendations:
– The study recommends considering user perspectives and context when designing and implementing CDSS and PBIs interventions.
– Revisions should be allowed to address challenges identified during the intervention.
– The study highlights the potential of combining CDSS and PBI interventions to improve maternal and child healthcare provision in low-income settings.
Key Role Players:
– Frontline health-workers
– Facility managers
– District supervisors
– Regional and district health directorates
– PBI committee
Cost Items for Planning Recommendations:
– Training and capacity building for healthcare providers
– Procurement and maintenance of CDSS software and IT support
– Provision of laptops and other necessary equipment
– Supervision and support for facility managers
– Rewards and incentives for best-performing midwives and facilities
– Regular supervision and verbal appreciation
– Furniture and small monthly allowances for healthcare providers

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is based on a qualitative study that includes interviews with healthcare providers. While the study provides insights into the perceptions of the CDSS-PBI intervention and its potential to improve maternal and child healthcare provision, it is important to note that qualitative studies have limitations in terms of generalizability and objectivity. To improve the strength of the evidence, the study could have included a larger sample size and conducted a quantitative analysis to complement the qualitative findings. Additionally, the study could have included a control group to compare the outcomes of the intervention. These steps would provide more robust evidence on the effectiveness of the CDSS-PBI intervention.

Background: Computerized decision support systems (CDSS) and performance-based incentives (PBIs) can improve health-worker performance. However, there is minimal evidence on the combined effects of these interventions or perceived effects among maternal and child healthcare providers in low-resource settings. We thus aimed to explore the perceptions of maternal and child healthcare providers of CDSS support in the context of a combined CDSS-PBI intervention on performance in twelve primary care facilities in Ghana’s Upper East Region. Methods: We conducted a qualitative study drawing on semi-structured key informant interviews with 24 nurses and midwives, 12 health facility managers, and 6 district-level staff familiar with the intervention. We analysed data thematically using deductive and inductive coding in NVivo 10 software. Results: Interviewees suggested the combined CDSS-PBI intervention improved their performance, through enhancing knowledge of maternal health issues, facilitating diagnoses and prescribing, prompting actions for complications, and improving management. Some interviewees reported improved morbidity and mortality. However, challenges described in patient care included CDSS software inflexibility (e.g. requiring administration of only one intermittent preventive malaria treatment to pregnant women), faulty electronic partograph leading to unnecessary referrals, increased workload for nurses and midwives who still had to complete facility forms, and power fluctuations affecting software. Conclusion: Combining CDSS and PBI interventions has potential to improve maternal and child healthcare provision in low-income settings. However, user perspectives and context must be considered, along with allowance for revisions, when designing and implementing CDSS and PBIs interventions.

This qualitative study reanalyses 66 semi-structured interviews conducted with frontline health-workers, facility managers, and district supervisors at the end of the European Union-funded Quality of maternal and neonatal health (QUALMAT) intervention trial [15, 26, 28]. This cluster-randomized un-blinded controlled trial, conducted in Ghana’s Upper East region, aimed to assess the effect of a CDSS for maternal and neonatal health care services. The trial was conducted in twelve health facilities in Kassena-Nankana (KND) and Builsa districts and is described in Aninanya et al. [16]. KND (intervention district) has an estimated population of 152,000 served by one hospital in the district capital Navrongo, six health centres, one private clinic, and twenty-seven Community-based Health Planning and Services (CHPS) compounds. Builsa (comparison district) has an estimated population of 95,800 served by the district hospital in Sandema, six health centres, and thirteen CHPS compounds. MNH services were considered poor in Upper East Region, due to insufficient and demotivated staff; inadequate access to and use of computers, reproductive health guidance, and protocols; and inadequate diagnoses and referrals [29–31]. A cross-sectional study of 400 new mothers indicated 93% had delivered in health facilities and 97% had received antenatal care with 75% having four or more antenatal visits [32]. However, institutional MMR in the Upper East Region prior to the trial was 352 per 100,000 live births and estimated at 367 and 259 per 100,000 live births In KND and Builsa district respectively [33]. Nurses and midwives are responsible for provision of facility-based MNH services in these districts [34], with low productivity reported as some providers rarely used treatment guidelines or partograph, and missed health education opportunities [8]. CDSS and PBI interventions were implemented in six KND intervention facilities for two years (2012–2014). CDSS included computerized clinical support in implementing WHO ‘Pregnancy, Childbirth, Postpartum and Newborn Care: a guide for essential practice’ guidelines for 35 purposively selected and trained midwives, community health nurses, and facility managers. Each intervention facility received a laptop, with CDSS software and IT support, shared between three trained midwives and nurses, while facility managers were tasked with supervision. Performance was rewarded based on improvements within facilities rather than in comparison to other facilities. Individuals were identified for PBIs based on achieving key indicators determined by facility leadership, regional and district health directorates, and the PBI committee. PBI consisted of rewarding best-performing midwives and facilities with domestic appliances (e.g. blenders, fans, stoves, freezers, fridges, televisions, saucepans, cloths, kettles, microwaves) and recognition certificates at annual awards ceremonies, along with regular supervision, verbal appreciation, furniture, and small monthly allowances [15, 16]. Key performance indicators included proportion of ANC visits recorded in CDSS; proportions of pregnant women receiving tetanus vaccination, iron supplementation, safe sex and HIV counselling; proportion of births attended by skilled personnel; proportion of partographs completed in CDSS; partograph usage rate; proportion of women referred based on CDSS recommendation; and proportion of newborns vaccinated [16]. We included all 24 participating CDSS users, 6 facility managers, and 6 district-level staff in intervention facilities and used purposive non-probability sampling to select equal numbers of equivalent participants in comparison facilities. This enabled us to include non-intervention participants with similar workloads who could provide relevant insights. GAA obtained written informed consent from all participants before interview. We developed an interview guide from the literature and expert opinion. Topics included basic demographics, experiences of CDSS and PBI interventions if relevant, work challenges, and suggested solutions. GAA and two research assistants conducted in-person audio-recorded interviews in English, lasting 35–45 min, in locations such as homes and health facilities as chosen by participants. We used interviews with facility managers and district-level staff, because of their varied involvement supervising the intervention, to triangulate and crystalize findings from frontline providers. To ensure confidentiality, we assigned identification codes and did not include personal identifiers in study tools or outputs. Audio files were transcribed verbatim by two professional transcriptionists. GAA imported transcripts into Nvivo 10 (QSR International Pty Ltd, Victoria, Australia) data management software [35] and analysed them thematically using Braun and Clarke’s six-stage approach [36]. In summary, GAA read and became familiarised with the data, identified deductive codes based on interview guide topics and inductively coded new or unexpected topics arising in transcripts. She developed a coding structure iteratively, collating codes related to intervention effects, challenges, and suggestions into themes. GAA examined relationships between codes, compiled and summarised contents of each theme with support from co-authors, and conducted thematic mapping. GAA and NH refined and defined themes and sub-themes through discussion, further integration, and the reporting process. Triangulation of participant perspectives (i.e. midwives, nurses, medical assistants, district public health nurses, directors) at different health system levels and in both study arms helped improve validity.

Based on the information provided, here are some potential recommendations for innovations to improve access to maternal health:

1. Improve the flexibility of the CDSS software: Address the issue of inflexibility in the CDSS software by allowing for more customized and adaptable features. This could include the ability to administer different treatments based on individual patient needs.

2. Enhance the electronic partograph: Address the issue of faulty electronic partograph by improving its functionality and reliability. This could involve regular maintenance and quality checks to ensure accurate readings and reduce unnecessary referrals.

3. Streamline data entry and reporting: Develop a system that integrates the CDSS with existing facility forms to reduce the workload for nurses and midwives. This could involve automating data entry and reporting processes, allowing for more efficient and accurate record-keeping.

4. Ensure reliable power supply: Address the issue of power fluctuations affecting the CDSS software by implementing reliable power supply solutions. This could involve backup power sources such as generators or solar panels to ensure uninterrupted access to the CDSS.

5. User training and support: Provide comprehensive training and ongoing support for healthcare providers using the CDSS. This could include regular training sessions, user manuals, and a helpdesk for technical support.

6. Context-specific design and implementation: Consider the local context and user perspectives when designing and implementing CDSS and performance-based incentive interventions. This could involve conducting needs assessments and involving healthcare providers in the decision-making process.

7. Continuous improvement and revision: Allow for continuous improvement and revision of the CDSS and performance-based incentive interventions based on user feedback and evaluation. This could involve regular monitoring and evaluation to identify areas for improvement and make necessary adjustments.

It is important to note that these recommendations are based on the findings and perspectives presented in the qualitative study. Further research and consultation with relevant stakeholders would be needed to fully assess the feasibility and effectiveness of these innovations in improving access to maternal health.
AI Innovations Description
The recommendation from the study is to combine computerized decision support systems (CDSS) with performance-based incentives (PBI) to improve maternal and child healthcare provision in low-income settings. The study found that the combined CDSS-PBI intervention improved health-worker performance by enhancing knowledge of maternal health issues, facilitating diagnoses and prescribing, prompting actions for complications, and improving management. Some interviewees also reported improved morbidity and mortality.

However, there were challenges identified in patient care, such as CDSS software inflexibility, faulty electronic partograph, increased workload for nurses and midwives, and power fluctuations affecting the software. Therefore, when designing and implementing CDSS and PBI interventions, user perspectives and context must be considered, along with allowance for revisions.

The study was conducted in Ghana’s Upper East Region, specifically in twelve primary care facilities in Kassena-Nankana and Builsa districts. The CDSS intervention included computerized clinical support based on WHO guidelines for trained midwives, community health nurses, and facility managers. Performance was rewarded based on improvements within facilities, and individuals were identified for PBIs based on key performance indicators.

Overall, the recommendation is to implement a combined CDSS-PBI intervention to improve access to maternal health. However, it is important to address the challenges identified and consider the specific context and user perspectives when designing and implementing these interventions.
AI Innovations Methodology
Based on the provided information, here are some potential recommendations for improving access to maternal health:

1. Improve CDSS software flexibility: Address the issue of inflexibility in the CDSS software by allowing for customization and adaptation to local contexts. This would ensure that the software can accommodate different treatment protocols and guidelines.

2. Enhance electronic partograph functionality: Address the issue of faulty electronic partograph by improving its design and functionality. This would help reduce unnecessary referrals and improve the accuracy of diagnoses.

3. Streamline workload for nurses and midwives: Find ways to reduce the increased workload caused by the CDSS-PBI intervention. This could include streamlining administrative tasks and providing additional support staff to assist with data entry and form completion.

4. Ensure reliable power supply: Address the issue of power fluctuations affecting the CDSS software by ensuring a reliable power supply in health facilities. This could involve installing backup power sources such as generators or solar panels.

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

1. Define the indicators: Identify key indicators that measure access to maternal health, such as the proportion of pregnant women receiving antenatal care, the proportion of births attended by skilled personnel, and the proportion of women referred based on CDSS recommendation.

2. Collect baseline data: Gather data on the selected indicators before implementing the recommendations. This could involve conducting surveys, interviews, or reviewing existing data sources.

3. Implement the recommendations: Introduce the recommended changes, such as improving CDSS software flexibility, enhancing electronic partograph functionality, streamlining workload, and ensuring reliable power supply.

4. Monitor and collect data: Continuously monitor the implementation of the recommendations and collect data on the selected indicators. This could involve regular data collection through surveys, interviews, or electronic health records.

5. Analyze the data: Analyze the collected data to assess the impact of the recommendations on the selected indicators. This could involve comparing the baseline data with the data collected after the implementation of the recommendations.

6. Evaluate the results: Evaluate the results of the analysis to determine the effectiveness of the recommendations in improving access to maternal health. This could involve assessing changes in the selected indicators and identifying any challenges or limitations encountered during the implementation process.

7. Refine and iterate: Based on the evaluation results, refine the recommendations and iterate the process to further improve access to maternal health. This could involve making adjustments to the interventions, addressing any identified challenges, and continuing to monitor and collect data to assess the impact of the refined recommendations.

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