
AbstractThe Physiome Project was officially launched in 1997 and has since brought together teams from around the world to work on the development of a computational framework for the modeling of the human body. At the European level, this effort is focused around patient‐specific solutions and is known as the Virtual Physiological Human (VPH) Initiative.Such modeling is both multiscale (in space and time) and multiphysics. This, therefore, requires careful interaction and collaboration between the teams involved in the VPH/Physiome effort, if we are to produce computer models that are not only quantitative, but also integrative and predictive.In that context, several technologies and solutions are already available, developed both by groups involved in the VPH/Physiome effort, and by others. They address areas such as data handling/fusion, markup languages, model repositories, ontologies, tools (for simulation, imaging, data fitting, etc.), as well as grid, middleware, and workflow.Here, we provide an overview of resources that should be considered for inclusion in the VPH/Physiome ToolKit (i.e., the set of tools that addresses the needs and requirements of the Physiome Project and VPH Initiative) and discuss some of the challenges that we are still facing. Copyright © 2009 John Wiley & Sons, Inc.This article is categorized under: Analytical and Computational Methods > Dynamical Methods Models of Systems Properties and Processes > Organismal Models Physiology > Physiology of Model Organisms Translational, Genomic, and Systems Medicine > Translational Medicine
User-Computer Interface, Humans, Computer Simulation, Models, Biological, PHYSIOME PROJECT, Forecasting
User-Computer Interface, Humans, Computer Simulation, Models, Biological, PHYSIOME PROJECT, Forecasting
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