Tracking health system performance in times of crisis using routine health data: lessons learned from a multicountry consortium.

Journal: Health research policy and systems

Volume: 21

Issue: 1

Year of Publication: 2023

Affiliated Institutions:  Department of Global Health and Population, Harvard T.H. Chan School of Public Health, Park Drive, Rd Floor East, room L-A, Landmark Center, Boston, MA, , USA. annemarie.turcottetremblay@gmail.com. Faculty of Medicine Ramathibodi Hospital, Mahidol University, Bangkok, Thailand. School of Public Health, University of Ghana, Accra, Ghana. Policy, Planning, Monitoring and Evaluation, Ghana Health Services, Accra, Ghana. Swiss TPH, University of Basel, Basel, Switzerland. World Health Organization, Vientiane, Lao People's Democratic Republic. School of Public Health, Addis Ababa University, Addis Ababa, Ethiopia. Department of Global Health and Population, Harvard University, Boston, USA. Epidemiology and Health Services Research Unit CMN Siglo XXI, Mexican Institute of Social Security, Mexico City, Mexico. Office of the Member of Federal Parliament Gagan Kumar Thapa, Kathmandu, Nepal. Department of Global Health and Population, Harvard T.H. Chan School of Public Health, Park Drive, Rd Floor East, room L-A, Landmark Center, Boston, MA, , USA. Caribbean Institute for Health Research, University of West Indies, Kingston, Jamaica. Hôpital Universitaire de Mirebalais, Zanmi Lasante, Arrondissement de Mirebalais, Haïti. Ministry of Health of Ethiopia, Addis Ababa, Ethiopia. Tufts Clinical and Translational Science Institute, Boston, USA. Public Health Department, Faculty of Medicine, Pontificia Universidad Católica de Chile, Santiago, Chile. Ministry of Health and Population, Government of Nepal, Kathmandu, Nepal. School of Nursing and Public Health, University of KwaZulu-Natal, Durban, South Africa. Korea National Health Insurance Services, Health Insurance Research Institute, Wonju, Gangwon-Do, South Korea. Division of Social Protection and Health, Inter-American Development Bank, Kingston, Jamaica. Biostatistics Unit, South African Medical Research Council, Durban, South Africa. Studies and Planning Unit, Ministry of Public Health and Population, Port-Au-Prince, Haiti.

Abstract summary 

COVID-19 has prompted the use of readily available administrative data to track health system performance in times of crisis and to monitor disruptions in essential healthcare services. In this commentary we describe our experience working with these data and lessons learned across countries. Since April 2020, the Quality Evidence for Health System Transformation (QuEST) network has used administrative data and routine health information systems (RHIS) to assess health system performance during COVID-19 in Chile, Ethiopia, Ghana, Haiti, Lao People's Democratic Republic, Mexico, Nepal, South Africa, Republic of Korea and Thailand. We compiled a large set of indicators related to common health conditions for the purpose of multicountry comparisons. The study compiled 73 indicators. A total of 43% of the indicators compiled pertained to reproductive, maternal, newborn and child health (RMNCH). Only 12% of the indicators were related to hypertension, diabetes or cancer care. We also found few indicators related to mental health services and outcomes within these data systems. Moreover, 72% of the indicators compiled were related to volume of services delivered, 18% to health outcomes and only 10% to the quality of processes of care. While several datasets were complete or near-complete censuses of all health facilities in the country, others excluded some facility types or population groups. In some countries, RHIS did not capture services delivered through non-visit or nonconventional care during COVID-19, such as telemedicine. We propose the following recommendations to improve the analysis of administrative and RHIS data to track health system performance in times of crisis: ensure the scope of health conditions covered is aligned with the burden of disease, increase the number of indicators related to quality of care and health outcomes; incorporate data on nonconventional care such as telehealth; continue improving data quality and expand reporting from private sector facilities; move towards collecting patient-level data through electronic health records to facilitate quality-of-care assessment and equity analyses; implement more resilient and standardized health information technologies; reduce delays and loosen restrictions for researchers to access the data; complement routine data with patient-reported data; and employ mixed methods to better understand the underlying causes of service disruptions.

Authors & Co-authors:  Turcotte-Tremblay Anne-Marie AM Leerapan Borwornsom B Akweongo Patricia P Amponsah Freddie F Aryal Amit A Asai Daisuke D Awoonor-Williams John Koku JK Ayele Wondimu W Bauhoff Sebastian S Doubova Svetlana V SV Gadeka Dominic Dormenyo DD Dulal Mahesh M Gage Anna A Gordon-Strachan Georgiana G Haile-Mariam Damen D Joseph Jean Paul JP Kaewkamjornchai Phanuwich P Kapoor Neena R NR Gelaw Solomon Kassahun SK Kim Min Kyung MK Kruk Margaret E ME Kubota Shogo S Margozzini Paula P Mehata Suresh S Mthethwa Londiwe L Nega Adiam A Oh Juhwan J Park Soo Kyung SK Passi-Solar Alvaro A Perez Cuevas Ricardo Enrique RE Reddy Tarylee T Rittiphairoj Thanitsara T Sapag Jaime C JC Thermidor Roody R Tlou Boikhutso B Arsenault Catherine C

Study Outcome 

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Statistics
Citations :  WHO. Analyzing and using routine data to monitor the effects of COVID-19 on essential health services. Practical guide for national and subnational decision-makers. 2021. Report No.: WHO/2019-nCoV/essential_health_services/monitoring/2021.1.
Authors :  36
Identifiers
Doi : 14
SSN : 1478-4505
Study Population
Male,Female
Mesh Terms
Child
Other Terms
COVID-19;Health systems;Quality of care;Routine health information systems
Study Design
Cross Sectional Study
Study Approach
Mixed Methods
Country of Study
Ghana
Publication Country
England