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Inference of Nonlinear State-Space Models for Sandwich-Type Lateral Flow Immunoassay Using Extended Kalman Filtering

机译:扩展卡尔曼滤波的三明治式横向流免疫测定非线性状态空间模型的推论

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摘要

In this paper, a mathematical model for sandwich-type lateral flow immunoassay is developed via short available time series. A nonlinear dynamic stochastic model is considered that consists of the biochemical reaction system equations and the observation equation. After specifying the model structure, we apply the extended Kalman filter (EKF) algorithm for identifying both the states and parameters of the nonlinear state-space model. It is shown that the EKF algorithm can accurately identify the parameters and also predict the system states in the nonlinear dynamic stochastic model through an iterative procedure by using a small number of observations. The identified mathematical model provides a powerful tool for testing the system hypotheses and also for inspecting the effects from various design parameters in both rapid and inexpensive way. Furthermore, by means of the established model, the dynamic changes in the concentration of antigens and antibodies can be predicted, thereby making it possible for us to analyze, optimize, and design the properties of lateral flow immunoassay devices.
机译:本文通过较短的可用时间序列建立了三明治型侧向流免疫测定的数学模型。考虑由生化反应系统方程和观测方程组成的非线性动态随机模型。在指定模型结构之后,我们应用扩展卡尔曼滤波器(EKF)算法来识别非线性状态空间模型的状态和参数。结果表明,EKF算法可以精确地识别参数,并且通过使用少量观测值的迭代过程,可以在非线性动态随机模型中预测系统状态。识别出的数学模型为测试系统假设以及以快速和廉价的方式检查各种设计参数的影响提供了强大的工具。此外,借助建立的模型,可以预测抗原和抗体浓度的动态变化,从而使我们有可能分析,优化和设计侧向免疫测定装置的特性。

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