Modeling and simulation of medical devices are typically established to identify parameter dependencies within the system of interest. Most devices are multiphysics problems considering solid and fluid mechanics, and electromagnetic mechanisms bridging time and length scales. Typically, the geometries of interest are described by complex morphologies of biological components. These factors all contribute to significant complexity of the developed numerical models. Access to imaging modalities capable of providing the geometrical information of relevance is central in the establishment and verification of numerical analysis. Here, data from image-based models obtained with MRI and μCT to risk access patients prone to realizing stroke, and to evaluate drug eluding scaffolds is presented.
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December 2013
Frontiers Abstracts
Combining Imaging Modalities in the Modeling of Multiparameter Devices
Jens Vinge Nygaard
Jens Vinge Nygaard
Department of Engineering,
Aarhus University
,Denmark
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Jens Vinge Nygaard
Department of Engineering,
Aarhus University
,Denmark
Manuscript received October 4, 2013; final manuscript received October 17, 2013; published online December 5, 2013. Assoc. Editor: Bo Gao.
J. Med. Devices. Dec 2013, 7(4): 040928 (1 pages)
Published Online: December 5, 2013
Article history
Received:
October 4, 2013
Revision Received:
October 17, 2013
Citation
Vinge Nygaard, J. (December 5, 2013). "Combining Imaging Modalities in the Modeling of Multiparameter Devices." ASME. J. Med. Devices. December 2013; 7(4): 040928. https://doi.org/10.1115/1.4025846
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