| Literature DB >> 29297401 |
Sarah Gimbel1,2,3, Moses Mwanza4, Marie Paul Nisingizwe5, Cathy Michel6, Lisa Hirschhorn7,8,9.
Abstract
BACKGROUND: High-quality data are critical to inform, monitor and manage health programs. Over the seven-year African Health Initiative of the Doris Duke Charitable Foundation, three of the five Population Health Implementation and Training (PHIT) partnership projects in Mozambique, Rwanda, and Zambia introduced strategies to improve the quality and evaluation of routinely-collected data at the primary health care level, and stimulate its use in evidence-based decision-making. Using the Consolidated Framework for Implementation Research (CFIR) as a guide, this paper: 1) describes and categorizes data quality assessment and improvement activities of the projects, and 2) identifies core intervention components and implementation strategy adaptations introduced to improve data quality in each setting.Entities:
Keywords: Data quality assessment; Decision making; Health systems research; Health systems strengthening; Maternal and child health; Mozambique; Quality improvement; Rwanda; Zambia
Mesh:
Year: 2017 PMID: 29297401 PMCID: PMC5763292 DOI: 10.1186/s12913-017-2660-y
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Definitions of CFIR Constructs—Innovation and Process Domains
| I. Innovation Characteristics | Definition |
| Innovation Source |
|
| Evidence Strength and Quality |
|
| Relative Advantage |
|
| Adaptability |
|
| Complexity |
|
| Cost |
|
| II. Implementation Process | Definition |
| Planning |
|
| Engaging (Opinion leaders, Formally appointed internal implementation leaders, Champions, External change agents, Key stakeholders, Innovation participants) |
|
| Executing |
|
| Reflecting & Evaluating |
|
Partnership Data Quality Approaches
| Mozambique | |
| Description of data quality improvement strategy | |
| Activity | Description |
| Data Quality Audits (DQA) | Annual DQAs are carried out in all districts in the intervention province of Sofala. Immediately after data collection, summary analyses are shared with district officials. Final written feedback is provided to all district and facility managers via a simplified, summary data quality ranking tool. |
| Data Dashboards | Quarterly development of data dashboards to simplify data visualizations to drive resource allocation & decision-making |
| Follow-up supportive supervision/ mentorship | Annual DQA results fed back to health facilities, districts and provinces and inform ongoing, targeted supportive supervision for sites with weaker clinical services, data quality and data utilization activities. Senior M&E mentor embedded within provincial health department. |
| Monitoring & Evaluation Training | Adaptation of existing MOH monitoring and evaluation training module, targeting primary health care strengthening. |
| Quality improvement and operations research trainings with mentored support for subsequent applied research activities. | |
| Site-level trainings on HMIS functioning and use & basic Excel utilization at regular intervals over the LOP | |
| District performance review and enhancement meetings (DPREM) | Meetings, targeting maternal child services, malaria and pharmacy, bring together health facility staff and district/provincial supervisors to review and analyze routine data. |
| Rwanda | |
| Description of data quality improvement strategy | |
| Activity | Description |
| Enhanced Electronic Medical Records (EMR) | Electronic medical records are supported in the intervention districts to improve the quality of routinely collected data. |
| Data Quality Audits (DQA) | Quarterly DQAs facility reports versus HMIS data using patient registries, monthly reports and online HMIS data the project |
| Monthly DQA in 2 districts between household registers and the community info system data | |
| Weekly data validation of IMB HIV EMR data | |
| Community level lot quality assurance sampling (LQAS) | Community level data is assessed quarterly for concordance and completeness using LQAS methods where data is randomly sampled and five key indicators are compared with the database |
| Mentoring to enhance supervision in health centers (MESH) quality improvement efforts | LQAS methodology is used to assess the effect of supporting enhanced supervision and mentorship. |
| Assessment of HMIS using WHO data quality report card | Annual consistency and internal validity assessment |
| Data sharing and coordination meetings | Monthly data review meetings between project and district health staff |
| Zambia | |
| Description of data quality improvement strategy | |
| Activity | Description |
| Promoting completeness of clinical forms | Streamlining of clinical guides, including for case management of regularly seen presentations during patient visits, appropriate documentation carried out to improve clinician understanding of MOH-approved treatment protocols and tracking of stock outs of essential medicines and supplies |
| Expanded electronic medical record (EMR) system | Introduction of on-site, facility- and community-level electronic medical record system (EMR) in the target districts. This system automatically generates clinic, patient review, clinic performance, CHW performance (to track lost-to-follow-up patients), and HIS reports, using MOH data and shared with district level team to inform management decisions. |
| Community-based DQA component | Introduction of data quality audit system for community health information system |
| Mentoring to develop and enhance good clinical skills and practices of MOH staff to improve key performance indicators related to clinical care quality | |
| Continuous, on-site mentoring of MOH staff | Streamlining of clinical guides, including for case management of regularly seen presentations during patient visits, appropriate documentation carried out to improve clinician understanding of MOH-approved treatment protocols and tracking of stock outs of essential medicines and supplies |
| Monthly, project and MOH staff assessed completeness of clinical forms, vital signs recorded, primary diagnosis made, case conclusion, accuracy of data entry by Clinic Supporters, successful referrals to the facility, and household surveys completed | |
| Community outreach | Active data collection at household level, patient follow up and referral system carried out by community health workers, monitored through LQAS. |
Fig. 1Core activities ranked by importance across sites
Fig. 2Categorization of data quality activities