Information-theoretic analysis of the dynamics of an executable biological model.

To facilitate analysis and understanding of biological systems, large-scale data are often integrated into models using a variety of mathematical and computational approaches. Such models describe the dynamics of the biological system and can be used to study the changes in the state of the system o...

Full description

Bibliographic Details
Main Authors: Avital Sadot, Septimia Sarbu, Juha Kesseli, Hila Amir-Kroll, Wei Zhang, Matti Nykter, Ilya Shmulevich
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3602105?pdf=render
id doaj-44af6fa6146f4179b43f7c4cc1a35232
record_format Article
spelling doaj-44af6fa6146f4179b43f7c4cc1a352322020-11-25T02:24:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0183e5930310.1371/journal.pone.0059303Information-theoretic analysis of the dynamics of an executable biological model.Avital SadotSeptimia SarbuJuha KesseliHila Amir-KrollWei ZhangMatti NykterIlya ShmulevichTo facilitate analysis and understanding of biological systems, large-scale data are often integrated into models using a variety of mathematical and computational approaches. Such models describe the dynamics of the biological system and can be used to study the changes in the state of the system over time. For many model classes, such as discrete or continuous dynamical systems, there exist appropriate frameworks and tools for analyzing system dynamics. However, the heterogeneous information that encodes and bridges molecular and cellular dynamics, inherent to fine-grained molecular simulation models, presents significant challenges to the study of system dynamics. In this paper, we present an algorithmic information theory based approach for the analysis and interpretation of the dynamics of such executable models of biological systems. We apply a normalized compression distance (NCD) analysis to the state representations of a model that simulates the immune decision making and immune cell behavior. We show that this analysis successfully captures the essential information in the dynamics of the system, which results from a variety of events including proliferation, differentiation, or perturbations such as gene knock-outs. We demonstrate that this approach can be used for the analysis of executable models, regardless of the modeling framework, and for making experimentally quantifiable predictions.http://europepmc.org/articles/PMC3602105?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Avital Sadot
Septimia Sarbu
Juha Kesseli
Hila Amir-Kroll
Wei Zhang
Matti Nykter
Ilya Shmulevich
spellingShingle Avital Sadot
Septimia Sarbu
Juha Kesseli
Hila Amir-Kroll
Wei Zhang
Matti Nykter
Ilya Shmulevich
Information-theoretic analysis of the dynamics of an executable biological model.
PLoS ONE
author_facet Avital Sadot
Septimia Sarbu
Juha Kesseli
Hila Amir-Kroll
Wei Zhang
Matti Nykter
Ilya Shmulevich
author_sort Avital Sadot
title Information-theoretic analysis of the dynamics of an executable biological model.
title_short Information-theoretic analysis of the dynamics of an executable biological model.
title_full Information-theoretic analysis of the dynamics of an executable biological model.
title_fullStr Information-theoretic analysis of the dynamics of an executable biological model.
title_full_unstemmed Information-theoretic analysis of the dynamics of an executable biological model.
title_sort information-theoretic analysis of the dynamics of an executable biological model.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description To facilitate analysis and understanding of biological systems, large-scale data are often integrated into models using a variety of mathematical and computational approaches. Such models describe the dynamics of the biological system and can be used to study the changes in the state of the system over time. For many model classes, such as discrete or continuous dynamical systems, there exist appropriate frameworks and tools for analyzing system dynamics. However, the heterogeneous information that encodes and bridges molecular and cellular dynamics, inherent to fine-grained molecular simulation models, presents significant challenges to the study of system dynamics. In this paper, we present an algorithmic information theory based approach for the analysis and interpretation of the dynamics of such executable models of biological systems. We apply a normalized compression distance (NCD) analysis to the state representations of a model that simulates the immune decision making and immune cell behavior. We show that this analysis successfully captures the essential information in the dynamics of the system, which results from a variety of events including proliferation, differentiation, or perturbations such as gene knock-outs. We demonstrate that this approach can be used for the analysis of executable models, regardless of the modeling framework, and for making experimentally quantifiable predictions.
url http://europepmc.org/articles/PMC3602105?pdf=render
work_keys_str_mv AT avitalsadot informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT septimiasarbu informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT juhakesseli informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT hilaamirkroll informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT weizhang informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT mattinykter informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
AT ilyashmulevich informationtheoreticanalysisofthedynamicsofanexecutablebiologicalmodel
_version_ 1724855204113809408