The influenza virus immune model on the Android platform. (English) Zbl 1418.92079

Jia, Yingmin (ed.) et al., Proceedings of the 2015 Chinese intelligent systems conference, CISC’15, Yangzhou, China. Volume 2. Berlin: Springer. Lect. Notes Electr. Eng. 360, 143-150 (2016).
Summary: In biological experiments, it has been impossible that we just use experimental apparatus to deal with the complex problems in immune cells. And the traditional mathematics and the physics model have some limitations, like lacking of microcosmic performance description of unit cells [C. Ferreira, Complex Syst. 13, No. 2, 87–129 (2001; Zbl 1167.92329)]. In this article, we do detail design after analyzing the requirements of the immune system. Then, combining with the related data of influenza virus, we use the Android platform application development to simulate the system. Android platform’s simple style of page, the application of interactive interface and the easy management can bring us different experiences. With the help of the computer program simulation, the experimental result is consistent with the model of immune response in the immune system.
For the entire collection see [Zbl 1337.93002].


92C60 Medical epidemiology
92C30 Physiology (general)
93A30 Mathematical modelling of systems (MSC2010)


Zbl 1167.92329
Full Text: DOI


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