LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks

One of the main challenges of the post-genomic era is the understanding of how gene expression is controlled. Changes in gene expression lay behind diverse biological phenomena such as development, disease and the adaptation to different environmental conditions. Despite the availability of well-est...

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Main Authors: Alberto J. Martin, Sebastián Contreras-Riquelme, Calixto Dominguez, Tomas Perez-Acle
Format: Article
Language:English
Published: PeerJ Inc. 2017-02-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/3052.pdf
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spelling doaj-5b626fe3d49646d5be1da374cc0b982b2020-11-24T21:10:37ZengPeerJ Inc.PeerJ2167-83592017-02-015e305210.7717/peerj.3052LoTo: a graphlet based method for the comparison of local topology between gene regulatory networksAlberto J. Martin0Sebastián Contreras-Riquelme1Calixto Dominguez2Tomas Perez-Acle3Computational Biology Laboratory (DLab), Fundacion Ciencia y Vida, Santiago, ChileComputational Biology Laboratory (DLab), Fundacion Ciencia y Vida, Santiago, ChileComputational Biology Laboratory (DLab), Fundacion Ciencia y Vida, Santiago, ChileComputational Biology Laboratory (DLab), Fundacion Ciencia y Vida, Santiago, ChileOne of the main challenges of the post-genomic era is the understanding of how gene expression is controlled. Changes in gene expression lay behind diverse biological phenomena such as development, disease and the adaptation to different environmental conditions. Despite the availability of well-established methods to identify these changes, tools to discern how gene regulation is orchestrated are still required. The regulation of gene expression is usually depicted as a Gene Regulatory Network (GRN) where changes in the network structure (i.e., network topology) represent adjustments of gene regulation. Like other networks, GRNs are composed of basic building blocks; small induced subgraphs called graphlets. Here we present LoTo, a novel method that using Graphlet Based Metrics (GBMs) identifies topological variations between different states of a GRN. Under our approach, different states of a GRN are analyzed to determine the types of graphlet formed by all triplets of nodes in the network. Subsequently, graphlets occurring in a state of the network are compared to those formed by the same three nodes in another version of the network. Once the comparisons are performed, LoTo applies metrics from binary classification problems calculated on the existence and absence of graphlets to assess the topological similarity between both network states. Experiments performed on randomized networks demonstrate that GBMs are more sensitive to topological variation than the same metrics calculated on single edges. Additional comparisons with other common metrics demonstrate that our GBMs are capable to identify nodes whose local topology changes between different states of the network. Notably, due to the explicit use of graphlets, LoTo captures topological variations that are disregarded by other approaches. LoTo is freely available as an online web server at http://dlab.cl/loto.https://peerj.com/articles/3052.pdfDifferential analysisGene Regulatory NetworkMetricGraphlet
collection DOAJ
language English
format Article
sources DOAJ
author Alberto J. Martin
Sebastián Contreras-Riquelme
Calixto Dominguez
Tomas Perez-Acle
spellingShingle Alberto J. Martin
Sebastián Contreras-Riquelme
Calixto Dominguez
Tomas Perez-Acle
LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
PeerJ
Differential analysis
Gene Regulatory Network
Metric
Graphlet
author_facet Alberto J. Martin
Sebastián Contreras-Riquelme
Calixto Dominguez
Tomas Perez-Acle
author_sort Alberto J. Martin
title LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
title_short LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
title_full LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
title_fullStr LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
title_full_unstemmed LoTo: a graphlet based method for the comparison of local topology between gene regulatory networks
title_sort loto: a graphlet based method for the comparison of local topology between gene regulatory networks
publisher PeerJ Inc.
series PeerJ
issn 2167-8359
publishDate 2017-02-01
description One of the main challenges of the post-genomic era is the understanding of how gene expression is controlled. Changes in gene expression lay behind diverse biological phenomena such as development, disease and the adaptation to different environmental conditions. Despite the availability of well-established methods to identify these changes, tools to discern how gene regulation is orchestrated are still required. The regulation of gene expression is usually depicted as a Gene Regulatory Network (GRN) where changes in the network structure (i.e., network topology) represent adjustments of gene regulation. Like other networks, GRNs are composed of basic building blocks; small induced subgraphs called graphlets. Here we present LoTo, a novel method that using Graphlet Based Metrics (GBMs) identifies topological variations between different states of a GRN. Under our approach, different states of a GRN are analyzed to determine the types of graphlet formed by all triplets of nodes in the network. Subsequently, graphlets occurring in a state of the network are compared to those formed by the same three nodes in another version of the network. Once the comparisons are performed, LoTo applies metrics from binary classification problems calculated on the existence and absence of graphlets to assess the topological similarity between both network states. Experiments performed on randomized networks demonstrate that GBMs are more sensitive to topological variation than the same metrics calculated on single edges. Additional comparisons with other common metrics demonstrate that our GBMs are capable to identify nodes whose local topology changes between different states of the network. Notably, due to the explicit use of graphlets, LoTo captures topological variations that are disregarded by other approaches. LoTo is freely available as an online web server at http://dlab.cl/loto.
topic Differential analysis
Gene Regulatory Network
Metric
Graphlet
url https://peerj.com/articles/3052.pdf
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