SPEM (S-system Parameter Estimation Method) Vignette
نویسندگان
چکیده
1 Goal SPEM (S-system Parameter Estimation Method) package allows for the computation of parameters in the n-gene S-system from time series data. 2 Introduction Biological systems are composed of interacting components [1]. The process of the expression and the interactions of these components are nonlinear. S-systems have a power law formalism which is general enough to capture the base of the observed response, making S-systems fit for the representation of biological process.
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