Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.

Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the field of systems biology. Currently, there are two main approaches in GRN analysis using time-course observation data, namely an ordinary differential equation (ODE)-based approach and a statistical model-base...

Full description

Bibliographic Details
Main Authors: Takanori Hasegawa, Rui Yamaguchi, Masao Nagasaki, Satoru Miyano, Seiya Imoto
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4146587?pdf=render
id doaj-f3fe3f02eac841e6a190918e5015a016
record_format Article
spelling doaj-f3fe3f02eac841e6a190918e5015a0162020-11-24T23:51:06ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0198e10594210.1371/journal.pone.0105942Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.Takanori HasegawaRui YamaguchiMasao NagasakiSatoru MiyanoSeiya ImotoComprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the field of systems biology. Currently, there are two main approaches in GRN analysis using time-course observation data, namely an ordinary differential equation (ODE)-based approach and a statistical model-based approach. The ODE-based approach can generate complex dynamics of GRNs according to biologically validated nonlinear models. However, it cannot be applied to ten or more genes to simultaneously estimate system dynamics and regulatory relationships due to the computational difficulties. The statistical model-based approach uses highly abstract models to simply describe biological systems and to infer relationships among several hundreds of genes from the data. However, the high abstraction generates false regulations that are not permitted biologically. Thus, when dealing with several tens of genes of which the relationships are partially known, a method that can infer regulatory relationships based on a model with low abstraction and that can emulate the dynamics of ODE-based models while incorporating prior knowledge is urgently required. To accomplish this, we propose a method for inference of GRNs using a state space representation of a vector auto-regressive (VAR) model with L1 regularization. This method can estimate the dynamic behavior of genes based on linear time-series modeling constructed from an ODE-based model and can infer the regulatory structure among several tens of genes maximizing prediction ability for the observational data. Furthermore, the method is capable of incorporating various types of existing biological knowledge, e.g., drug kinetics and literature-recorded pathways. The effectiveness of the proposed method is shown through a comparison of simulation studies with several previous methods. For an application example, we evaluated mRNA expression profiles over time upon corticosteroid stimulation in rats, thus incorporating corticosteroid kinetics/dynamics, literature-recorded pathways and transcription factor (TF) information.http://europepmc.org/articles/PMC4146587?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Takanori Hasegawa
Rui Yamaguchi
Masao Nagasaki
Satoru Miyano
Seiya Imoto
spellingShingle Takanori Hasegawa
Rui Yamaguchi
Masao Nagasaki
Satoru Miyano
Seiya Imoto
Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
PLoS ONE
author_facet Takanori Hasegawa
Rui Yamaguchi
Masao Nagasaki
Satoru Miyano
Seiya Imoto
author_sort Takanori Hasegawa
title Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
title_short Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
title_full Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
title_fullStr Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
title_full_unstemmed Inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with L1 regularization.
title_sort inference of gene regulatory networks incorporating multi-source biological knowledge via a state space model with l1 regularization.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the field of systems biology. Currently, there are two main approaches in GRN analysis using time-course observation data, namely an ordinary differential equation (ODE)-based approach and a statistical model-based approach. The ODE-based approach can generate complex dynamics of GRNs according to biologically validated nonlinear models. However, it cannot be applied to ten or more genes to simultaneously estimate system dynamics and regulatory relationships due to the computational difficulties. The statistical model-based approach uses highly abstract models to simply describe biological systems and to infer relationships among several hundreds of genes from the data. However, the high abstraction generates false regulations that are not permitted biologically. Thus, when dealing with several tens of genes of which the relationships are partially known, a method that can infer regulatory relationships based on a model with low abstraction and that can emulate the dynamics of ODE-based models while incorporating prior knowledge is urgently required. To accomplish this, we propose a method for inference of GRNs using a state space representation of a vector auto-regressive (VAR) model with L1 regularization. This method can estimate the dynamic behavior of genes based on linear time-series modeling constructed from an ODE-based model and can infer the regulatory structure among several tens of genes maximizing prediction ability for the observational data. Furthermore, the method is capable of incorporating various types of existing biological knowledge, e.g., drug kinetics and literature-recorded pathways. The effectiveness of the proposed method is shown through a comparison of simulation studies with several previous methods. For an application example, we evaluated mRNA expression profiles over time upon corticosteroid stimulation in rats, thus incorporating corticosteroid kinetics/dynamics, literature-recorded pathways and transcription factor (TF) information.
url http://europepmc.org/articles/PMC4146587?pdf=render
work_keys_str_mv AT takanorihasegawa inferenceofgeneregulatorynetworksincorporatingmultisourcebiologicalknowledgeviaastatespacemodelwithl1regularization
AT ruiyamaguchi inferenceofgeneregulatorynetworksincorporatingmultisourcebiologicalknowledgeviaastatespacemodelwithl1regularization
AT masaonagasaki inferenceofgeneregulatorynetworksincorporatingmultisourcebiologicalknowledgeviaastatespacemodelwithl1regularization
AT satorumiyano inferenceofgeneregulatorynetworksincorporatingmultisourcebiologicalknowledgeviaastatespacemodelwithl1regularization
AT seiyaimoto inferenceofgeneregulatorynetworksincorporatingmultisourcebiologicalknowledgeviaastatespacemodelwithl1regularization
_version_ 1725477474678079488