Title of article
Kalman Filtering for Genetic Regulatory Networks with Missing Values
Author/Authors
Lin, Qiongbin Fuzhou University - Fuzhou - Fujian, China , Liu, Qiuhua Fuzhou University - Fuzhou - Fujian, China , Lai, Tianyue Fuzhou University - Fuzhou - Fujian, China , Wang, Wu Fuzhou University - Fuzhou - Fujian, China
Pages
9
From page
1
To page
9
Abstract
The filter problem with missing value for genetic regulation networks (GRNs) is addressed, in which the noises exist in both the state
dynamics and measurement equations; furthermore, the correlation between process noise and measurement noise is also taken
into consideration. In order to deal with the filter problem, a class of discrete-time GRNs with missing value, noise correlation, and
time delays is established. Then a new observation model is proposed to decrease the adverse effect caused by the missing value and
to decouple the correlation between process noise and measurement noise in theory. Finally, a Kalman filtering is used to estimate
the states of GRNs. Meanwhile, a typical example is provided to verify the effectiveness of the proposed method, and it turns out to
be the case that the concentrations of mRNA and protein could be estimated accurately.
Keywords
Kalman , Missing , GRNs , mRNA
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2017
Full Text URL
Record number
2608233
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