dc.contributorUniv Toronto
dc.contributorUniv Hlth Network
dc.contributorUniv S Carolina
dc.contributorSunnybrook Res Inst
dc.contributorUniv Fed Rio Grande do Sul
dc.contributorQueens Univ
dc.contributorUniversidade Federal de São Paulo (UNIFESP)
dc.contributorMt Sinai Hosp
dc.creatorMcIntyre, Roger S.
dc.creatorCha, Danielle S.
dc.creatorJerrell, Jeanette M.
dc.creatorSwardfager, Walter
dc.creatorKim, Rachael D.
dc.creatorCosta, Leonardo G.
dc.creatorBaskaran, Anusha
dc.creatorSoczynska, Joanna K.
dc.creatorWoldeyohannes, Hanna O.
dc.creatorMansur, Rodrigo B. [UNIFESP]
dc.creatorBrietzke, Elisa [UNIFESP]
dc.creatorPowell, Alissa M.
dc.creatorGallaugher, Ashley
dc.creatorKudlow, Paul
dc.creatorKaidanovich-Beilin, Oksana
dc.creatorAlsuwaidan, Mohammad
dc.date.accessioned2016-01-24T14:37:41Z
dc.date.available2016-01-24T14:37:41Z
dc.date.created2016-01-24T14:37:41Z
dc.date.issued2014-08-01
dc.identifierBipolar Disorders. Hoboken: Wiley-Blackwell, v. 16, n. 5, p. 531-547, 2014.
dc.identifier1398-5647
dc.identifierhttp://repositorio.unifesp.br/handle/11600/38062
dc.identifier10.1111/bdi.12162
dc.identifierWOS:000340381500008
dc.description.abstractObjective: To provide a strategic framework for the prevention of bipolar disorder (BD) that incorporates a 'Big Data' approach to risk assessment for BD.Methods: Computerized databases (e. g., Pubmed, PsychInfo, and MedlinePlus) were used to access English-language articles published between 1966 and 2012 with the search terms bipolar disorder, prodrome, 'Big Data', and biomarkers cross-referenced with genomics/genetics, transcriptomics, proteomics, metabolomics, inflammation, oxidative stress, neurotrophic factors, cytokines, cognition, neurocognition, and neuroimaging. Papers were selected from the initial search if the primary outcome(s) of interest was (were) categorized in any of the following domains: (i) 'omics' (e. g., genomics), (ii) molecular, (iii) neuroimaging, and (iv) neurocognitive.Results: the current strategic approach to identifying individuals at risk for BD, with an emphasis on phenotypic information and family history, has insufficient predictive validity and is clinically inadequate. the heterogeneous clinical presentation of BD, as well as its pathoetiological complexity, suggests that it is unlikely that a single biomarker (or an exclusive biomarker approach) will sufficiently augment currently inadequate phenotypic-centric prediction models. We propose a 'Big Data'-bioinformatics approach that integrates vast and complex phenotypic, anamnestic, behavioral, family, and personal 'omics' profiling. Bioinformatic processing approaches, utilizing cloud-and grid-enabled computing, are now capable of analyzing data on the order of tera-, peta-, and exabytes, providing hitherto unheard of opportunities to fundamentally revolutionize how psychiatric disorders are predicted, prevented, and treated. High-throughput networks dedicated to research on, and the treatment of, BD, integrating both adult and younger populations, will be essential to sufficiently enroll adequate samples of individuals across the neurodevelopmental trajectory in studies to enable the characterization and prevention of this heterogeneous disorder.Conclusions: Advances in bioinformatics using a 'Big Data' approach provide an opportunity for novel insights regarding the pathoetiology of BD. the coordinated integration of research centers, inclusive of mixed-age populations, is a promising strategic direction for advancing this line of neuropsychiatric research.
dc.languageeng
dc.publisherWiley-Blackwell
dc.relationBipolar Disorders
dc.rightshttp://olabout.wiley.com/WileyCDA/Section/id-406071.html
dc.rightsAcesso restrito
dc.subjectBig Data
dc.subjectbiomarkers
dc.subjectbipolar disorder
dc.subjectintegrated profiles
dc.subjectprediction prodrome
dc.titleAdvancing biomarker research: utilizing 'Big Data' approaches for the characterization and prevention of bipolar disorder
dc.typeResenha


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