scholarly journals Application of Complex Systems Research To Efforts of International Development

Author(s):  
Hans-Peter Brunner
2014 ◽  
pp. 515-525 ◽  
Author(s):  
Mats Jong ◽  
Miek C. Jong ◽  
Torkel Falkenberg

In Sweden concepts of holistic care are well integrated in nursing curricula and health care legislation, but terms such as integrative nursing and integrative medicine is unfamiliar. A major challenge in Sweden is to inform and reform stakeholders in healthcare to acknowledge the benefits and value of evidence generated in (pragmatic-real world research) complex systems research since often integrative nursing methods are complex interventions where it is hard to rely on evidence of specific effects from individual elements of interventions. Experience based programs (on evidence informed integrative nursing practices) may be a key to create awareness among university staff, students, and future healthcare professionals of the qualities of integrative practices to promote and maintain health.


Systems ◽  
2021 ◽  
Vol 9 (2) ◽  
pp. 29
Author(s):  
Susan Yoon

From fighting disease to reversing environmental damage, the quest to effectively model our bodies, our social groups and our effects on the planet is a profoundly important one. [...]


2005 ◽  
Vol 2 (4) ◽  
pp. 267-280 ◽  
Author(s):  
Peter V Coveney ◽  
Philip W Fowler

We discuss the modern approaches of complexity and self-organization to understanding dynamical systems and how these concepts can inform current interest in systems biology. From the perspective of a physical scientist, it is especially interesting to examine how the differing weights given to philosophies of science in the physical and biological sciences impact the application of the study of complexity. We briefly describe how the dynamics of the heart and circadian rhythms, canonical examples of systems biology, are modelled by sets of nonlinear coupled differential equations, which have to be solved numerically. A major difficulty with this approach is that all the parameters within these equations are not usually known. Coupled models that include biomolecular detail could help solve this problem. Coupling models across large ranges of length- and time-scales is central to describing complex systems and therefore to biology. Such coupling may be performed in at least two different ways, which we refer to as hierarchical and hybrid multiscale modelling. While limited progress has been made in the former case, the latter is only beginning to be addressed systematically. These modelling methods are expected to bring numerous benefits to biology, for example, the properties of a system could be studied over a wider range of length- and time-scales, a key aim of systems biology. Multiscale models couple behaviour at the molecular biological level to that at the cellular level, thereby providing a route for calculating many unknown parameters as well as investigating the effects at, for example, the cellular level, of small changes at the biomolecular level, such as a genetic mutation or the presence of a drug. The modelling and simulation of biomolecular systems is itself very computationally intensive; we describe a recently developed hybrid continuum-molecular model, HybridMD, and its associated molecular insertion algorithm, which point the way towards the integration of molecular and more coarse-grained representations of matter. The scope of such integrative approaches to complex systems research is circumscribed by the computational resources available. Computational grids should provide a step jump in the scale of these resources; we describe the tools that RealityGrid, a major UK e-Science project, has developed together with our experience of deploying complex models on nascent grids. We also discuss the prospects for mathematical approaches to reducing the dimensionality of complex networks in the search for universal systems-level properties, illustrating our approach with a description of the origin of life according to the RNA world view.


2013 ◽  
Author(s):  
Francis J Alexander

2000 ◽  
Vol 9 (2) ◽  
pp. 69-74 ◽  
Author(s):  
Daniel J. Svyantek ◽  
Linda L. Brown

The physical sciences have developed new theories of nonlinear behavior of complex systems. Defining characteristics of complex systems include (a) being composed of many variables that interact strongly to determine system behavior, (b) sensitivity to initial conditions, and (c) stability across time. Two complex-system concepts, phase spaces and attractors, provide insight into the evolution of system behavior and make prediction of future behavior possible. It is proposed that complex-systems research has application to the study of organizations and social behavior. Organizational attractors exist and seem to be both sensitive to initial conditions and stable. The discussion of concepts from complex systems, and their application to organizations, provides insight into how organizational research should be conducted. If organizations are assumed to exhibit nonlinear behavior, more historical, longitudinal, and qualitative research methods should be used to provide context-specific descriptions of organizational behavior.


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