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Influenza immune model based on agent. (English) Zbl 1418.92047

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, 133-141 (2016).
Summary: All along, the immune system has been a hotspot and difficulty in the field of biological research. Traditional experimental immunology can observe the overall reaction of the immune system, but would be94C15 difficulty on the some details research, such as the recognition principle between antigen and antibody. In this paper, we use the binary string to express the gene of antigen and antibody, and use binary string matching to express the immune recognition process. Then, we would use the agent computer model and the computer simulation method to study the microscopic properties of the immune system and some important details. The results of our study provide powerful basis to establish accurate perfect model of the immune system. Using the simulation model of immune responses to influenza virus, include the interactions between cells, some basic rules of the immune system are obtained.
For the entire collection see [Zbl 1337.93002].

MSC:

92C42 Systems biology, networks
92C40 Biochemistry, molecular biology
93C30 Control/observation systems governed by functional relations other than differential equations (such as hybrid and switching systems)
Full Text: DOI

References:

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