| Literature DB >> 35805322 |
Pi Högberg1, Göran Henriksson2, Carme Borrell3,4, Marius Ciutan5, Giuseppe Costa6, Irene Georgiou7, Rafal Halik8, Jens Hoebel9, Katri Kilpeläinen10, Theopisti Kyprianou11, Tina Lesnik12, Indre Petrauskaite13, Annemarie Ruijsbroek14, Silvia Gabriela Scintee5, Milena Vasic15,16, Gabriella Olsson1.
Abstract
To raise awareness about health inequalities, a well-functioning health inequality monitoring system (HIMS) is crucial. Drawing on work conducted under the Joint Action Health Equity Europe, the aim of this paper is to illustrate the strengths and weaknesses in current health inequality monitoring based on lessons learned from 12 European countries and to discuss what can be done to strengthen their capacities. Fifty-five statements were used to collect information about the status of the capacities at different steps of the monitoring process. The results indicate that the preconditions for monitoring vary greatly between countries. The availability and quality of data are generally regarded as strong, as is the ability to disaggregate data by age and gender. Regarded as poorer is the ability to disaggregate data by socioeconomic factors, such as education and income, or by other measures of social position, such as ethnicity. Few countries have a proper health inequality monitoring strategy in place and, where in place, it is often regarded as poorly up to date with policymakers' needs. These findings suggest that non-data-related issues might be overlooked aspects of health inequality monitoring. Structures for stakeholder involvement and communication that attracts attention from policymakers are examples of aspects that deserve more effort.Entities:
Keywords: health inequalities; health information systems; monitoring; policy
Mesh:
Year: 2022 PMID: 35805322 PMCID: PMC9265987 DOI: 10.3390/ijerph19137663
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 4.614
Affiliations of the experts participating in the country assessments and description of the institutional competence for this task.
| Partner Country | Experts’ Affiliations | Institutional Competence |
|---|---|---|
| Cyprus | Ministry of Health Cyprus—Health Monitoring Unit | Collects and compiles national data on health |
| Cyprus Statistical Service | Collects and compiles data on population, health, social service, living conditions and social protection, poverty, and social exclusion | |
| Finland | National Institute for Health and Welfare (THL) | Independent expert agency under the Ministry of Social Affairs and Health. Studies, monitors, and develops measures to promote the well-being and health of the population in Finland, including health equity |
| Germany | Robert Koch Institute (RKI), Department of Epidemiology and Health Monitoring | Administers the German national health monitoring system on behalf of the German Federal Ministry of Health |
| Italy | The Italian Institute of Statistics (Istat) | Census, mortality, surveys, and health indicator data |
| The network of central institutions: Ministry of Health, Dept. of Health Information Systems (a), Istat (b), INPS (c), INAIL (d), and INAPP (e) | (a) Health care data, (b) mortality and survey data, (c) employment and retirement data, (d) work injury and occupational diseases data, and (e) public policy evaluation | |
| Piedmont Regional Health Authority | Regional health observatory, needs/risk analysis, assessment of potential solutions, and monitoring and evaluation of processes and outcomes of interventions and policies | |
| Regional network of experts on health inequalities indicators: units of Piedmont, Lazio, Emilia Romagna, Toscana, INAPP, and AgeNaS | The main composite indicators of social deprivation and income at census tract and municipality levels | |
| Lithuania | Institute of Hygiene (HI), Division of Biostatistical Analysis | Institution responsible for monitoring and reporting on health data including, but not limited to, mortality, morbidity, and health inequalities |
| The Netherlands | National Institute for Public Health and the Environment (RIVM), Centre for Nutrition, Prevention and Health Services | Research on and monitoring of health inequalities in close cooperation with universities and Statistics Netherlands |
| Poland | National Institute of Public Health NIH—National Research Institute | Main governmental institute in charge of monitoring public health and health inequalities, also responsible for disseminating knowledge to policymakers and other stakeholders in the area of health about the health situation of Polish society and best practices in public health |
| Romania | National School of Public Health, Management and Professional Development Bucharest | Adviser to Ministry of Health policies |
| National Institute for Mother and Child Health (NIMCH) | Coordinator of the national program for mother and child health, collecting data related to this area | |
| Serbia | Institute of Public Health of Serbia “Dr Milan Jovanovic Batut” | National expert institution for Public Health, including data collection and maintenance, analysis, planning, and organization |
| Slovenia | Center of Health Analysis and Development of Health | Central national institution in public health, provides expert support to governmental decisions |
| Spain | Public Health Agency of Barcelona (ASPB). The assessment made by ASPB was shared afterward with professionals working in the Ministry of Health of Spain. | Monitors and reports on population health status, health determinants, and health inequalities using indicators at the area level, mainly in Barcelona. Develops and implements public health policies and interventions to reduce health inequalities |
| Sweden | Public Health Agency of Sweden | Independent national governmental authority assigned to collect data, monitor and report on health, health determinants, health threats, and health inequalities |
Overview of survey sections, what was assessed in each section, and the number of items (statements) per section.
| Section | What Was Assessed | Number of Items |
|---|---|---|
| Defining the system | To what extent a strategy for monitoring health inequality is available, implemented, and recognized | 8 |
| Data | The availability and quality of current data sources and the extent to which individual-level data are accessible | 18 |
| Analyses | The availability of disaggregated data and the extent to which measures and analyses are used to allow for monitoring both the social gradient in health and vulnerable groups | 10 |
| Dissemination and communication | To what extent a communication strategy is tied to health inequality monitoring, with identified stakeholders and regular reporting | 5 |
| Evaluation | To what extent the HIMS is regularly evaluated and adapted in order to remain up to date and to properly reflect needs | 6 |
| Infrastructure | Availability of adequate and sufficient support for health inequality monitoring, e.g., funding, human resources, leadership, training, knowledge, and technical tools | 8 |
Figure 1Results for the section ‘Define the system’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for the ideal HIMS.
Figure 2Results for the section ‘Data’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for an ideal HIMS.
Figure 3Results for the section ‘Analyses’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for an ideal HIMS.
Figure 4Results for the section ‘Dissemination and Communication’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for an ideal HIMS.
Figure 5Results for the section ‘Evaluation’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for an ideal HIMS.
Figure 6Results for the section ‘Infrastructure of the system’. Green cells (scores 1–2) indicate agreement with the statement. Yellow cells (scores 3–4) indicate partial agreement/disagreement, and red cells (scores 5–6) indicate the most challenging preconditions for an ideal HIMS.