Title :
Identification of Nonlinear Lateral Flow Immunoassay State-Space Models via Particle Filter Approach
Author :
Zeng, Nianyin ; Wang, Zidong ; Li, Yurong ; Du, Min ; Liu, Xiaohui
Author_Institution :
Coll. of Electr. Eng. & Autom, Fuzhou Univ., Fuzhou, China
fDate :
3/1/2012 12:00:00 AM
Abstract :
In this paper, the particle filtering approach is used, together with the kernel smoothing method, to identify the state-space model for the lateral flow immunoassay through available but short time-series measurement. The lateral flow immunoassay model is viewed as a nonlinear dynamic stochastic model consisting of the equations for the biochemical reaction system as well as the measurement output. The renowned extended Kalman filter is chosen as the importance density of the particle filter for the purpose of modeling the nonlinear lateral flow immunoassay. By using the developed particle filter, both the states and parameters of the nonlinear state-space model can be identified simultaneously. The identified model is of fundamental significance for the development of lateral flow immunoassay quantification. It is shown that the proposed particle filtering approach works well for modeling the lateral flow immunoassay.
Keywords :
Kalman filters; biochemistry; molecular biophysics; nonlinear dynamical systems; particle filtering (numerical methods); smoothing methods; state-space methods; stochastic processes; time series; biochemical reaction system; extended Kalman filter; kernel smoothing method; nonlinear dynamic stochastic model; nonlinear lateral flow immunoassay state-space model identification; particle filter approach; particle filtering approach; short time-series measurement; Biological system modeling; Immune system; Kalman filters; Kernel; Mathematical model; Smoothing methods; Vectors; Extended Kalman filter (EKF); lateral flow immunoassay (LFIA); parameter estimation; particle filter; state estimation;
Journal_Title :
Nanotechnology, IEEE Transactions on
DOI :
10.1109/TNANO.2011.2171193