Automated adaptive inference of coarse-grained dynamical models in systems biology

04/24/2014
by   Bryan C. Daniels, et al.
0

Cellular regulatory dynamics is driven by large and intricate networks of interactions at the molecular scale, whose sheer size obfuscates understanding. In light of limited experimental data, many parameters of such dynamics are unknown, and thus models built on the detailed, mechanistic viewpoint overfit and are not predictive. At the other extreme, simple ad hoc models of complex processes often miss defining features of the underlying systems. Here we propose an approach that instead constructs phenomenological, coarse-grained models of network dynamics that automatically adapt their complexity to the amount of available data. Such adaptive models lead to accurate predictions even when microscopic details of the studied systems are unknown due to insufficient data. The approach is computationally tractable, even for a relatively large number of dynamical variables, allowing its software realization, named Sir Isaac, to make successful predictions even when important dynamic variables are unobserved. For example, it matches the known phase space structure for simulated planetary motion data, avoids overfitting in a complex biological signaling system, and produces accurate predictions for a yeast glycolysis model with only tens of data points and over half of the interacting species unobserved.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/25/2018

Automated, predictive, and interpretable inference of C. elegans escape dynamics

The roundworm C. elegans exhibits robust escape behavior in response to ...
research
12/14/2022

Machine Learning Coarse-Grained Potentials of Protein Thermodynamics

A generalized understanding of protein dynamics is an unsolved scientifi...
research
10/14/2020

Coarse-Grained Nonlinear System Identification

We introduce Coarse-Grained Nonlinear Dynamics, an efficient and univers...
research
12/06/2018

Variational Coarse-Graining for Molecular Dynamics

Molecular dynamics simulations provide theoretical insight into the micr...
research
11/08/2020

Using machine-learning modelling to understand macroscopic dynamics in a system of coupled maps

Machine learning techniques not only offer efficient tools for modelling...
research
04/28/2022

Global analysis of regulatory network dynamics: equilibria and saddle-node bifurcations

In this paper we describe a combined combinatorial/numerical approach to...

Please sign up or login with your details

Forgot password? Click here to reset