Modelling Global Burden of Disease Measures in Selected European Countries Using Robust Dynamic Spatial Panel Data Models

Authors

  • Agnieszka Orwat-Acedańska University of Economics in Katowice, Faculty of Informatics and Communication Department of Demography and Economic Statistics https://orcid.org/0000-0003-4125-2995

DOI:

https://doi.org/10.18778/0208-6018.347.07

Keywords:

dynamic spatial panel data models (DSPD), M-estimation, fixed effects, short panels, disease burden measures, socio-economic factors

Abstract

The aim of the paper is to study relationships between selected socio‑economic factors and health of European citizens. The health level is measured by selected global burden of disease measures – DALYs (Disability Adjusted Life Years) and its two components: YLL (Years of Life Lost) and YLD (Years Lived with Disability). We identify which factors significantly affect these indicators of health. The empirical study uses a panel data comprising 16 countries mostly from the old‑EU in the period 2003–2013. Fixed‑effects dynamic spatial panel data (DSPD) models are used to account for autocorrelations of the dependent variables across time and space. The models are estimated with a novel, modified quasi maximum likelihood Yang method based on M‑estimators. The approach is robust on the distribution of the initial observations. The empirical analysis covers specification, estimation, and verification of the models. The results show that changes in YLD are significantly related to alcohol consumption, healthcare spending, social spending, GDP growth rate and years of education. Exactly the same set of factors is associated with variation in DALYs. Sensitivity of the YLL component to the socio‑economic factors is considerably weaker.

Downloads

Download data is not yet available.

References

Anand S., Hanson K. (1997), Disability adjusted lost years – a critical review, “Journal of Health Economics”, no. 16, pp. 685–702.
Google Scholar

Anand S., Hanson K. (1998), DALYs: efficiency versus equity, “World Development”, vol. 26, no. 2, pp. 307–310.
Google Scholar

Barker C., Green A. (1996), Opening the Debate on DALYs, “Health Policy and Planning”, no. 11, p. 179–183.
Google Scholar

Berman S. (1995), Otitis media in developing countries, “Pediatrics”, no. 96, pp. 126–131.
Google Scholar

Binder M., Hsiao C., Pesaran M. H. (2005), Estimation and inference in short panel vector autoregressions with unit roots and cointegration, “Econometric Theory”, no. 21, pp. 795–837.
Google Scholar

Bun M. J., Carree M. A. (2005), Bias‑corrected estimation in dynamic panel data models, “Journal of Business and Economic Statistics”, no. 23, pp. 200–210.
Google Scholar

Cavalini L. T., De Leon A. (2008), Morbidity and mortality in Brazilian communes: a multilevel study of association between socioeconomic and healthcare indicators, “International Journal of Epidemiology”, no. 37, pp. 775–785, http://doi.org/10.1093/ije/dyn088
Google Scholar

Dahlgren G., Whitehead M. (2007), European Strategies for Tackling Social Inequities in Health: Leveling up Part 2, WHO Regional Office for Europe, Copenhagen.
Google Scholar

Dańska‑Borsiak B. (2011), Dynamiczne modele panelowe w badaniach ekonomicznych, Wydawnictwo Uniwersytetu Łódzkiego, Łódź.
Google Scholar

Desjarlais R., Eisenberg L., Good B., Kleinman A. (1995), World mental health: problems and priorities in low income countries, Oxford University Press, New York.
Google Scholar

Devleesschauwer B., Noordhout C. M. de, Praet N., Duchateau L., Van Oyen H., Havelaar A. H., Haagsma J. A., Dorny P., Torgerson P. R., Speybroeck N. (2014), DALY calculation in practice: a stepwise approach, “International Journal of Public Health”, vol. 59, issue 3, pp. 571–574, http://doi.org/10.1007/s00038-014-0553‑y
Google Scholar

Elhorst J. P. (2010a), Spatial Panel Data Models, [in:] M. M. Fischer, A. Getis (eds.), Handbook of Applied Spatial Analysis, Springer, Berlin, pp. 377–407.
Google Scholar

Elhorst J. P. (2010b), Applied spatial econometric: raising the bar, “Spatial Economic Analysis”, no. 5, pp. 9–28.
Google Scholar

Elhorst J. P. (2010c), Dynamic panels with endogenous interaction effects when T is small, “Regional Science and Urban Economics”, no. 40, pp. 272–282.
Google Scholar

Elhorst J. P. (2012), Dynamic spatial panels: models, methods and inferences, “Journal of Geographical Systems”, no. 14, pp. 5–28, http://doi.org/10.1007/s10109-011-0158-4
Google Scholar

Eurostat (2012), “Global Europe 2050” – Eurostat’s Report for the European Commission, https://ec.europa.eu/research/social‑sciences/pdf/policy_reviews/global‑europe–2050‑report_en.pdf [accessed: 30.11.2018].
Google Scholar

Frohlich N., Mustard C. (1996), A regional comparison of socioeconomic and health indices in a Canadian province, “Social Science and Medicine Journal”, vol. 42(9), pp. 1273–1281.
Google Scholar

Gourieroux C., Phillips P. C.B., Yu J. (2010), Indirect inference for dynamic panel models, “Journal of Econometrics”, no. 157, pp. 68–77.
Google Scholar

Hampel F. R., Ronchetti E. M., Rousseeuw P. J., Stahel W. A. (1986), Robust Statistics. The Approach Based on Influence Functions, John Wiley and Sons, New York.
Google Scholar

Hsiao C., Pesaran M. H., Tahmiscioglu A. K. (2002), Maximum likelihood estimation of fixed effects dynamic panel data models covering short time periods, “Journal of Econometrics”, no. 109, pp. 107–150.
Google Scholar

http://www.who.int/social_determinants/sdh_definition/en/ [accessed: 30.11.2018].
Google Scholar

Huber P. J. (1981), Robust Statistics, Wiley, New York.
Google Scholar

Kruiniger H. (2013), Quasi ML estimation of the panel AR(1) model with arbitrary initial conditions, “Journal of Econometrics”, no. 173, pp. 175–188, http://doi.org/10.1016/j.jeconom.2012.11.004
Google Scholar

Laurell A.C, Arellano L. O. (1996), Market commodities and poor relief: the World Bank proposal for health, “Journal of Health Economics”, vol. 26, no. 1, pp. 1–18.
Google Scholar

Lee L. F., Yu J. (2010a), Estimation of spatial autoregressive panel data model a with fixed effects, “Journal of Econometrics”, no. 154, pp. 165–185, https://doi.org/10.1016/j.jeconom.2009.08.001
Google Scholar

Lee L. F., Yu J. (2010b), Estimation of spatial panels: random components vs. fixed effects, unpublished manuscript, Ohio State University, Columbus.
Google Scholar

Lee L. F., Yu J. (2010c), Some recent developments in spatial panel data models, “Regional Science and Urban Economics”, no. 40, pp. 255–271, http://doi.org/10.1016/j.regsciurbeco.2009.09.002
Google Scholar

Lee L. F., Yu J. (2010d), A spatial dynamic panel data model with both time and individual fixed effects, “Econometric Theory”, no. 26, pp. 564–597.
Google Scholar

Lozano R., Murray C. J.L., Frenk J., Bobadilla J.‑L. (1995), Burden of diseases assessment and health system reform: results of a study in Mexico, “Journal of International Development”, vol. 7, no. 3, pp. 555–564.
Google Scholar

Martens W. J., Niessen L. W., Rotmans J., Jetten T. H., McMichael A. J. (1995), Potential impact of global climate change on malaria risk, “Environmental Health Perspectives”, vol. 103, no. 5, pp. 458–464, http://doi.org/10.1289/ehp.95103458
Google Scholar

Murray C. J.L. (1994), Quantifying the burden of disease: the technical basis for disability‑adjusted life years, “Bulletin of the World Health Organization”, vol. 72(3), pp. 429–445.
Google Scholar

Murray C. J.L. (1996), Rethinking DALYs, [in:] C. J.L. Murray, A. D. Lopez (eds.), The Global Burden of Disease and Injury Series. Volume I. The Global Burden of Disease, Harvard School of Public Health, World Health Organization, World Bank, Boston, pp. 1–98.
Google Scholar

Murray C. J.L., Lopez A. D., Alan D. (1994), Global comparative assessments in the health sector: disease burden, expenditures and intervention packages, World Health Organization, Geneva.
Google Scholar

Murray C. J.L., Lopez A. D. (1996a), The Global Burden of Disease and Injury Series. Volume I. The Global Burden of Disease. A comprehensive assessment of mortality and disability from diseases, injuries, and risk factors in 1990 and projected to 2020, Harvard School of Public Health, World Bank, World Health Organization, Geneva.
Google Scholar

Murray C. J.L., Lopez A. D. (1996b), The Global Burden of Disease and Injury Series. Volume II. Global Health Statistics. A compendium of incidence, prevalence and mortality estimates for over 200 conditions, Harvard School of Public Health, World Bank, World Health Organization, Geneva.
Google Scholar

Murray C. J.L., Solomon J. A., Mathers C. D., Lopez A. D. (eds.) (2002), Summary measures of population health – concepts, ethics, measurement and applications, World Health Organization, Geneva.
Google Scholar

Orwat‑Acedańska A. (2019), Dynamic spatial panel data models in identifying socio‑economic factors affecting Europeans’ health level, “European Spatial Research and Policy”, vol. 26, no. 1, pp. 195–211.
Google Scholar

Robine J. M. (2006), Summarizing Health Status, [in:] D. Pencheon, C. Guest, D. Melzer, J. A.M. Gray (eds.), Oxford Handbook of Public Health Practice, 2nd ed., Oxford University Press, Oxford.
Google Scholar

Vaart A. W. van der (1998), Asymptotic Statistics, Cambridge University Press, Cambridge.
Google Scholar

Wróblewska W. (2008), Sumaryczne miary stanu zdrowia populacji, “Studia Demograficzne”, no. 1–2, pp. 153–154.
Google Scholar

Yang Z. (2018), Unified M‑Estimation of Fixed‑Effects Spatial Dynamic Models with Short Panels, “Journal of Econometrics”, no. 205, pp. 423–447, http://doi.org/10.1016/j.jeconom.2017.08.019
Google Scholar

Downloads

Published

2020-04-03

How to Cite

Orwat-Acedańska, A. (2020). Modelling Global Burden of Disease Measures in Selected European Countries Using Robust Dynamic Spatial Panel Data Models. Acta Universitatis Lodziensis. Folia Oeconomica, 2(347), 109–127. https://doi.org/10.18778/0208-6018.347.07

Issue

Section

Articles

Most read articles by the same author(s)

Similar Articles

<< < 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 > >> 

You may also start an advanced similarity search for this article.