A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.

Research on brain disorders with a strong genetic component and complex heritability, such as schizophrenia, has led to the development of brain transcriptomics. This field seeks to gain a deeper understanding of gene expression, a key factor in exploring further research issues. Our study focused o...

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Main Authors: Alfonso Monaco, Anna Monda, Nicola Amoroso, Alessandro Bertolino, Giuseppe Blasi, Pasquale Di Carlo, Marco Papalino, Giulio Pergola, Sabina Tangaro, Roberto Bellotti
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0190110
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spelling doaj-b8ee77c615514951af55de98110d473a2021-03-03T20:32:29ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01131e019011010.1371/journal.pone.0190110A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.Alfonso MonacoAnna MondaNicola AmorosoAlessandro BertolinoGiuseppe BlasiPasquale Di CarloMarco PapalinoGiulio PergolaSabina TangaroRoberto BellottiResearch on brain disorders with a strong genetic component and complex heritability, such as schizophrenia, has led to the development of brain transcriptomics. This field seeks to gain a deeper understanding of gene expression, a key factor in exploring further research issues. Our study focused on how genes are associated amongst each other. In this perspective, we have developed a novel data-driven strategy for characterizing genetic modules, i.e., clusters of strongly interacting genes. The aim was to uncover a pivotal community of genes linked to a target gene for schizophrenia. Our approach combined network topological properties with information theory to highlight the presence of a pivotal community, for a specific gene, and to simultaneously assess the information content of partitions with the Shannon's entropy based on betweenness. We analyzed the publicly available BrainCloud dataset containing post-mortem gene expression data and focused on the Dopamine D2 receptor, encoded by the DRD2 gene. We used four different community detection algorithms to evaluate the consistence of our approach. A pivotal DRD2 community emerged for all the procedures applied, with a considerable reduction in size, compared to the initial network. The stability of the results was confirmed by a Dice index ≥80% within a range of tested parameters. The detected community was also the most informative, as it represented an optimization of the Shannon entropy. Lastly, we verified the strength of connection of the DRD2 community, which was stronger than any other randomly selected community and even more so than the Weighted Gene Co-expression Network Analysis module, commonly considered the standard approach for such studies. This finding substantiates the conclusion that the detected community represents a more connected and informative cluster of genes for the DRD2 community, and therefore better elucidates the behavior of this module of strongly related DRD2 genes. Because this gene plays a relevant role in Schizophrenia, this finding of a more specific DRD2 community will improve the understanding of the genetic factors related with this disorder.https://doi.org/10.1371/journal.pone.0190110
collection DOAJ
language English
format Article
sources DOAJ
author Alfonso Monaco
Anna Monda
Nicola Amoroso
Alessandro Bertolino
Giuseppe Blasi
Pasquale Di Carlo
Marco Papalino
Giulio Pergola
Sabina Tangaro
Roberto Bellotti
spellingShingle Alfonso Monaco
Anna Monda
Nicola Amoroso
Alessandro Bertolino
Giuseppe Blasi
Pasquale Di Carlo
Marco Papalino
Giulio Pergola
Sabina Tangaro
Roberto Bellotti
A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
PLoS ONE
author_facet Alfonso Monaco
Anna Monda
Nicola Amoroso
Alessandro Bertolino
Giuseppe Blasi
Pasquale Di Carlo
Marco Papalino
Giulio Pergola
Sabina Tangaro
Roberto Bellotti
author_sort Alfonso Monaco
title A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
title_short A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
title_full A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
title_fullStr A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
title_full_unstemmed A complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
title_sort complex network approach reveals a pivotal substructure of genes linked to schizophrenia.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Research on brain disorders with a strong genetic component and complex heritability, such as schizophrenia, has led to the development of brain transcriptomics. This field seeks to gain a deeper understanding of gene expression, a key factor in exploring further research issues. Our study focused on how genes are associated amongst each other. In this perspective, we have developed a novel data-driven strategy for characterizing genetic modules, i.e., clusters of strongly interacting genes. The aim was to uncover a pivotal community of genes linked to a target gene for schizophrenia. Our approach combined network topological properties with information theory to highlight the presence of a pivotal community, for a specific gene, and to simultaneously assess the information content of partitions with the Shannon's entropy based on betweenness. We analyzed the publicly available BrainCloud dataset containing post-mortem gene expression data and focused on the Dopamine D2 receptor, encoded by the DRD2 gene. We used four different community detection algorithms to evaluate the consistence of our approach. A pivotal DRD2 community emerged for all the procedures applied, with a considerable reduction in size, compared to the initial network. The stability of the results was confirmed by a Dice index ≥80% within a range of tested parameters. The detected community was also the most informative, as it represented an optimization of the Shannon entropy. Lastly, we verified the strength of connection of the DRD2 community, which was stronger than any other randomly selected community and even more so than the Weighted Gene Co-expression Network Analysis module, commonly considered the standard approach for such studies. This finding substantiates the conclusion that the detected community represents a more connected and informative cluster of genes for the DRD2 community, and therefore better elucidates the behavior of this module of strongly related DRD2 genes. Because this gene plays a relevant role in Schizophrenia, this finding of a more specific DRD2 community will improve the understanding of the genetic factors related with this disorder.
url https://doi.org/10.1371/journal.pone.0190110
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