Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach

<p>Abstract</p> <p>Background</p> <p>Comorbidity of Major Depressive Disorder (depression) and Alcohol Use Disorders (AUD) is well documented. Depression, AUD, and the comorbidity of depression with AUD show evidence of genetic and environmental influences on susceptibi...

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Main Authors: McEachin Richard C, Keller Benjamin J, Saunders Erika FH, McInnis Melvin G
Format: Article
Language:English
Published: BMC 2008-07-01
Series:BioData Mining
Online Access:http://www.biodatamining.org/content/1/1/2
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author McEachin Richard C
Keller Benjamin J
Saunders Erika FH
McInnis Melvin G
author_facet McEachin Richard C
Keller Benjamin J
Saunders Erika FH
McInnis Melvin G
author_sort McEachin Richard C
collection DOAJ
description <p>Abstract</p> <p>Background</p> <p>Comorbidity of Major Depressive Disorder (depression) and Alcohol Use Disorders (AUD) is well documented. Depression, AUD, and the comorbidity of depression with AUD show evidence of genetic and environmental influences on susceptibility. We used an integrated bioinformatics approach, mining available data in multiple databases, to develop and refine a model of gene-by-environment interaction consistent with this comorbidity.</p> <p>Methods</p> <p>We established the validity of a genetic model via queries against NCBI databases, identifying and validating TNF (Tumor Necrosis Factor) and MTHFR (Methylenetetrahydrofolate Reductase) as candidate genes. We used the PDG-ACE algorithm (Prioritizing Disease Genes by Analysis of Common Elements) to show that TNF and MTHFR share significant commonality and that this commonality is consistent with a response to environmental exposure to ethanol. Finally, we used MetaCore from GeneGo, Inc. to model a gene-by-environment interaction consistent with the data.</p> <p>Results</p> <p>TNF Alpha Converting Enzyme (TACE) activity is suppressed by ethanol exposure, resulting in reduced TNF signaling. TNF binds to TNF receptors, initiating signal transduction pathways that activate MTHFR expression. MTHFR is an essential enzyme in folate metabolism and reduced folate levels are associated with both AUD and depression. Integrating these pieces of information our model shows how excessive alcohol use would be expected to lead to reduced TNF signaling, reduced MTHFR expression, and increased susceptibility to depression.</p> <p>Conclusion</p> <p>The proposed model provides a novel hypothesis on the genetic etiology of comorbid depression with AUD, consistent with established clinical and biochemical data. This analysis also provides an example of how an integrated bioinformatics approach can maximize the use of available biomedical data to improve our understanding of complex disease.</p>
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spelling doaj.art-6229ffad7dba453d955c5a653e3dfbe42022-12-22T01:42:28ZengBMCBioData Mining1756-03812008-07-0111210.1186/1756-0381-1-2Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approachMcEachin Richard CKeller Benjamin JSaunders Erika FHMcInnis Melvin G<p>Abstract</p> <p>Background</p> <p>Comorbidity of Major Depressive Disorder (depression) and Alcohol Use Disorders (AUD) is well documented. Depression, AUD, and the comorbidity of depression with AUD show evidence of genetic and environmental influences on susceptibility. We used an integrated bioinformatics approach, mining available data in multiple databases, to develop and refine a model of gene-by-environment interaction consistent with this comorbidity.</p> <p>Methods</p> <p>We established the validity of a genetic model via queries against NCBI databases, identifying and validating TNF (Tumor Necrosis Factor) and MTHFR (Methylenetetrahydrofolate Reductase) as candidate genes. We used the PDG-ACE algorithm (Prioritizing Disease Genes by Analysis of Common Elements) to show that TNF and MTHFR share significant commonality and that this commonality is consistent with a response to environmental exposure to ethanol. Finally, we used MetaCore from GeneGo, Inc. to model a gene-by-environment interaction consistent with the data.</p> <p>Results</p> <p>TNF Alpha Converting Enzyme (TACE) activity is suppressed by ethanol exposure, resulting in reduced TNF signaling. TNF binds to TNF receptors, initiating signal transduction pathways that activate MTHFR expression. MTHFR is an essential enzyme in folate metabolism and reduced folate levels are associated with both AUD and depression. Integrating these pieces of information our model shows how excessive alcohol use would be expected to lead to reduced TNF signaling, reduced MTHFR expression, and increased susceptibility to depression.</p> <p>Conclusion</p> <p>The proposed model provides a novel hypothesis on the genetic etiology of comorbid depression with AUD, consistent with established clinical and biochemical data. This analysis also provides an example of how an integrated bioinformatics approach can maximize the use of available biomedical data to improve our understanding of complex disease.</p>http://www.biodatamining.org/content/1/1/2
spellingShingle McEachin Richard C
Keller Benjamin J
Saunders Erika FH
McInnis Melvin G
Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
BioData Mining
title Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
title_full Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
title_fullStr Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
title_full_unstemmed Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
title_short Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
title_sort modeling gene by environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach
url http://www.biodatamining.org/content/1/1/2
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