Spatio-temporal Gaussian processes modeling of dynamical systems in systems biology

10/17/2016
by   Mu Niu, et al.
0

Quantitative modeling of post-transcriptional regulation process is a challenging problem in systems biology. A mechanical model of the regulatory process needs to be able to describe the available spatio-temporal protein concentration and mRNA expression data and recover the continuous spatio-temporal fields. Rigorous methods are required to identify model parameters. A promising approach to deal with these difficulties is proposed using Gaussian process as a prior distribution over the latent function of protein concentration and mRNA expression. In this study, we consider a partial differential equation mechanical model with differential operators and latent function. Since the operators at stake are linear, the information from the physical model can be encoded into the kernel function. Hybrid Monte Carlo methods are employed to carry out Bayesian inference of the partial differential equation parameters and Gaussian process kernel parameters. The spatio-temporal field of protein concentration and mRNA expression are reconstructed without explicitly solving the partial differential equation.

READ FULL TEXT
research
11/09/2020

High-dimensional modeling of spatial and spatio-temporal conditional extremes using INLA and the SPDE approach

The conditional extremes framework allows for event-based stochastic mod...
research
11/20/2018

A Hierarchical Spatio-Temporal Statistical Model for Physical Systems

In this paper, we extend and analyze a Bayesian hierarchical spatio-temp...
research
11/02/2016

Bayesian Modeling of Motion Perception using Dynamical Stochastic Textures

A common practice to account for psychophysical biases in vision is to f...
research
11/13/2020

An exact kernel framework for spatio-temporal dynamics

A kernel-based framework for spatio-temporal data analysis is introduced...
research
08/30/2022

The SPDE approach for spatio-temporal datasets with advection and diffusion

In the task of predicting spatio-temporal fields in environmental scienc...
research
11/24/2022

A New Spatio-Temporal Model Exploiting Hamiltonian Equations

The solutions of Hamiltonian equations are known to describe the underly...
research
07/16/2023

Discovering a reaction-diffusion model for Alzheimer's disease by combining PINNs with symbolic regression

Misfolded tau proteins play a critical role in the progression and patho...

Please sign up or login with your details

Forgot password? Click here to reset