Complexity in Epidemiology and Public Health. Addressing Complex Health Problems Through a Mix of Epidemiologic Methods and Data

Author:

Rod Naja Hulvej12ORCID,Broadbent Alex34,Rod Morten Hulvej256,Russo Federica278,Arah Onyebuchi A.910,Stronks Karien211

Affiliation:

1. Section of Epidemiology, Department of Public Health, University of Copenhagen, Denmark

2. Institute of Advanced Studies, University of Amsterdam, The Netherlands

3. Department of Philosophy, Durham University, UK

4. Department of Philosophy, University of Johannesburg, South Africa

5. Health Promotion Research Unit, Steno Diabetes Center Copenhagen, Denmark

6. National Institute of Public Health, University of Southern Denmark, Denmark

7. Department of Philosophy & ILLC, Amsterdam University, The Netherlands

8. Department of Science and Technology Studies, University College London, UK

9. Department of Epidemiology, Fielding School of Public Health, UCLA, Los Angeles, California, USA

10. Department of Statistics, Division of Physical Sciences, UCLA, Los Angeles, California, USA

11. Department of Public and Occupational Health, Amsterdam University Medical Centers, University of Amsterdam, The Netherlands

Abstract

Public health and the underlying disease processes are complex, often involving the interaction of biologic, social, psychologic, economic, and other processes that may be nonlinear and adaptive and have other features of complex systems. There is therefore a need to push the boundaries of public health beyond single-factor data analysis and expand the capacity of research methodology to tackle real-world complexities. This article sets out a way to operationalize complex systems thinking in public health, with a particular focus on how epidemiologic methods and data can contribute towards this end. Our proposed framework comprises three core dimensions—patterns, mechanisms, and dynamics—along which complex systems may be conceptualized. These dimensions cover seven key features of complex systems—emergence, interactions, nonlinearity, interference, feedback loops, adaptation, and evolution. We relate this framework to examples of methods and data traditionally used in epidemiology. We conclude that systematic production of knowledge on complex health issues may benefit from: formulation of research questions and programs in terms of the core dimensions we identify, as a comprehensive way to capture crucial features of complex systems; integration of traditional epidemiologic methods with systems methodology such as computational simulation modeling; interdisciplinary work; and continued investment in a wide range of data types. We believe that the proposed framework can support the systematic production of knowledge on complex health problems, with the use of epidemiology and other disciplines. This will help us understand emergent health phenomena, identify vulnerable population groups, and detect leverage points for promoting public health.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Epidemiology

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