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dc.contributor.author Marx, Péter
dc.contributor.author Antal, Péter
dc.contributor.author Bolgár, Bence Márton
dc.contributor.author Bagdy, György
dc.contributor.author Deakin B
dc.contributor.author Juhász, Gabriella
dc.date.accessioned 2017-12-17T17:42:00Z
dc.date.available 2017-12-17T17:42:00Z
dc.date.issued 2017
dc.identifier 85021739067
dc.identifier.citation pagination=e1005487, pages: 23; journalVolume=13; journalIssueNumber=6; journalTitle=PLOS COMPUTATIONAL BIOLOGY;
dc.identifier.uri http://repo.lib.semmelweis.hu//handle/123456789/4585
dc.identifier.uri doi:10.1371/journal.pcbi.1005487
dc.description.abstract Comorbidity patterns have become a major source of information to explore shared mechanisms of pathogenesis between disorders. In hypothesis-free exploration of comorbid conditions, disease-disease networks are usually identified by pairwise methods. However, interpretation of the results is hindered by several confounders. In particular a very large number of pairwise associations can arise indirectly through other comorbidity associations and they increase exponentially with the increasing breadth of the investigated diseases. To investigate and filter this effect, we computed and compared pairwise approaches with a systems-based method, which constructs a sparse Bayesian direct multimorbidity map (BDMM) by systematically eliminating disease-mediated comorbidity relations. Additionally, focusing on depression-related parts of the BDMM, we evaluated correspondence with results from logistic regression, text-mining and molecular-level measures for comorbidities such as genetic overlap and the interactome-based association score. We used a subset of the UK Biobank Resource, a cross-sectional dataset including 247 diseases and 117,392 participants who filled out a detailed questionnaire about mental health. The sparse comorbidity map confirmed that depressed patients frequently suffer from both psychiatric and somatic comorbid disorders. Notably, anxiety and obesity show strong and direct relationships with depression. The BDMM identified further directly co-morbid somatic disorders, e.g. irritable bowel syndrome, fibromyalgia, or migraine. Using the subnetwork of depression and metabolic disorders for functional analysis, the interactome-based system-level score showed the best agreement with the sparse disease network. This indicates that these epidemiologically strong disease-disease relations have improved correspondence with expected molecular-level mechanisms. The substantially fewer number of comorbidity relations in the BDMM compared to pairwise methods implies that biologically meaningful comorbid relations may be less frequent than earlier pairwise methods suggested. The computed interactive comprehensive multimorbidity views over the diseasome are available on the web at Co=MorNet: bioinformatics.mit.bme.hu/UKBNetworks.
dc.relation.ispartof urn:issn:1553-734X
dc.title Comorbidities in the diseasome are more apparent than real: What Bayesian filtering reveals about the comorbidities of depression
dc.type Journal Article
dc.date.updated 2017-11-24T11:17:40Z
dc.language.rfc3066 en
dc.identifier.mtmt 3243614
dc.identifier.wos 000404565400005
dc.identifier.pubmed 28644851


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