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dc.contributor.authorTulay, Emine Elif
dc.contributor.authorMetin, Baris
dc.contributor.authorTarhan, Nevzat
dc.contributor.authorArikan, Mehmet Kemal
dc.date.accessioned2019-08-20T10:14:55Z
dc.date.available2019-08-20T10:14:55Z
dc.date.issued2018-05-18
dc.identifier.citationTarhan, Nevzat, Multimodal Neuroimaging: Basic Concepts and Classification of Neuropsychiatric Diseases, Clinical EEG and Neuroscience, Received February 16, 2018; revised May 15, 2018; accepted May 17, 2018, (14)tr_TR
dc.identifier.urihttp://earsiv.uskudar.edu.tr/xmlui/handle/123456789/722
dc.description.abstractNeuroimaging techniques are widely used in neuroscience to visualize neural activity, to improve our understanding of brain mechanisms, and to identify biomarkers—especially for psychiatric diseases; however, each neuroimaging technique has several limitations. These limitations led to the development of multimodal neuroimaging (MN), which combines data obtained from multiple neuroimaging techniques, such as electroencephalography, functional magnetic resonance imaging, and yields more detailed information about brain dynamics. There are several types of MN, including visual inspection, data integration, and data fusion. This literature review aimed to provide a brief summary and basic information about MN techniques (data fusion approaches in particular) and classification approaches. Data fusion approaches are generally categorized as asymmetric and symmetric. The present review focused exclusively on studies based on symmetric data fusion methods (data-driven methods), such as independent component analysis and principal component analysis. Machine learning techniques have recently been introduced for use in identifying diseases and biomarkers of disease. The machine learning technique most widely used by neuroscientists is classification—especially support vector machine classification. Several studies differentiated patients with psychiatric diseases and healthy controls with using combined datasets. The common conclusion among these studies is that the prediction of diseases increases when combining data via MN techniques; however, there remain a few challenges associated with MN, such as sample size. Perhaps in the future N-way fusion can be used to combine multiple neuroimaging techniques or nonimaging predictors (eg, cognitive ability) to overcome the limitations of MN.tr_TR
dc.language.isoengtr_TR
dc.relation.isversionofdoi/10.1177/1550059418782093tr_TR
dc.subjectmultimodal neuroimaging, fusion, machine learning, classification, psychiatrytr_TR
dc.titleMultimodal Neuroimaging: Basic Concepts and Classification of Neuropsychiatric Diseasestr_TR
dc.typeArticletr_TR
dc.relation.journalClinical EEG and Neurosciencetr_TR
dc.contributor.departmentÜSKÜDAR ÜNİVERSİTESİ/İNSAN VE TOPLUM BİLİMLERİ FAKÜLTESİ/PSİKOLOJİ BÖLÜMÜ/PSİKOLOJİ PR.tr_TR
dc.contributor.authorID6101tr_TR


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