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RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks

Inferring gene co-expression networks is a useful process for understanding gene regulation and pathway activity. The networks are usually undirected graphs where genes are represented as nodes and an edge represents a significant co-expression relationship. When expression data of multiple (p) gene...

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Autores principales: Seal, Souvik, Li, Qunhua, Basner, Elle Butler, Saba, Laura M., Kechris, Katerina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9821764/
https://www.ncbi.nlm.nih.gov/pubmed/36607897
http://dx.doi.org/10.1371/journal.pcbi.1010758
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author Seal, Souvik
Li, Qunhua
Basner, Elle Butler
Saba, Laura M.
Kechris, Katerina
author_facet Seal, Souvik
Li, Qunhua
Basner, Elle Butler
Saba, Laura M.
Kechris, Katerina
author_sort Seal, Souvik
collection PubMed
description Inferring gene co-expression networks is a useful process for understanding gene regulation and pathway activity. The networks are usually undirected graphs where genes are represented as nodes and an edge represents a significant co-expression relationship. When expression data of multiple (p) genes in multiple (K) conditions (e.g., treatments, tissues, strains) are available, joint estimation of networks harnessing shared information across them can significantly increase the power of analysis. In addition, examining condition-specific patterns of co-expression can provide insights into the underlying cellular processes activated in a particular condition. Condition adaptive fused graphical lasso (CFGL) is an existing method that incorporates condition specificity in a fused graphical lasso (FGL) model for estimating multiple co-expression networks. However, with computational complexity of O(p(2)K log K), the current implementation of CFGL is prohibitively slow even for a moderate number of genes and can only be used for a maximum of three conditions. In this paper, we propose a faster alternative of CFGL named rapid condition adaptive fused graphical lasso (RCFGL). In RCFGL, we incorporate the condition specificity into another popular model for joint network estimation, known as fused multiple graphical lasso (FMGL). We use a more efficient algorithm in the iterative steps compared to CFGL, enabling faster computation with complexity of O(p(2)K) and making it easily generalizable for more than three conditions. We also present a novel screening rule to determine if the full network estimation problem can be broken down into estimation of smaller disjoint sub-networks, thereby reducing the complexity further. We demonstrate the computational advantage and superior performance of our method compared to two non-condition adaptive methods, FGL and FMGL, and one condition adaptive method, CFGL in both simulation study and real data analysis. We used RCFGL to jointly estimate the gene co-expression networks in different brain regions (conditions) using a cohort of heterogeneous stock rats. We also provide an accommodating C and Python based package that implements RCFGL.
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spelling pubmed-98217642023-01-07 RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks Seal, Souvik Li, Qunhua Basner, Elle Butler Saba, Laura M. Kechris, Katerina PLoS Comput Biol Research Article Inferring gene co-expression networks is a useful process for understanding gene regulation and pathway activity. The networks are usually undirected graphs where genes are represented as nodes and an edge represents a significant co-expression relationship. When expression data of multiple (p) genes in multiple (K) conditions (e.g., treatments, tissues, strains) are available, joint estimation of networks harnessing shared information across them can significantly increase the power of analysis. In addition, examining condition-specific patterns of co-expression can provide insights into the underlying cellular processes activated in a particular condition. Condition adaptive fused graphical lasso (CFGL) is an existing method that incorporates condition specificity in a fused graphical lasso (FGL) model for estimating multiple co-expression networks. However, with computational complexity of O(p(2)K log K), the current implementation of CFGL is prohibitively slow even for a moderate number of genes and can only be used for a maximum of three conditions. In this paper, we propose a faster alternative of CFGL named rapid condition adaptive fused graphical lasso (RCFGL). In RCFGL, we incorporate the condition specificity into another popular model for joint network estimation, known as fused multiple graphical lasso (FMGL). We use a more efficient algorithm in the iterative steps compared to CFGL, enabling faster computation with complexity of O(p(2)K) and making it easily generalizable for more than three conditions. We also present a novel screening rule to determine if the full network estimation problem can be broken down into estimation of smaller disjoint sub-networks, thereby reducing the complexity further. We demonstrate the computational advantage and superior performance of our method compared to two non-condition adaptive methods, FGL and FMGL, and one condition adaptive method, CFGL in both simulation study and real data analysis. We used RCFGL to jointly estimate the gene co-expression networks in different brain regions (conditions) using a cohort of heterogeneous stock rats. We also provide an accommodating C and Python based package that implements RCFGL. Public Library of Science 2023-01-06 /pmc/articles/PMC9821764/ /pubmed/36607897 http://dx.doi.org/10.1371/journal.pcbi.1010758 Text en © 2023 Seal et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Seal, Souvik
Li, Qunhua
Basner, Elle Butler
Saba, Laura M.
Kechris, Katerina
RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title_full RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title_fullStr RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title_full_unstemmed RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title_short RCFGL: Rapid Condition adaptive Fused Graphical Lasso and application to modeling brain region co-expression networks
title_sort rcfgl: rapid condition adaptive fused graphical lasso and application to modeling brain region co-expression networks
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9821764/
https://www.ncbi.nlm.nih.gov/pubmed/36607897
http://dx.doi.org/10.1371/journal.pcbi.1010758
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