Classification of 3-D MRI Brain Data Using Modified Maximum Uncertainty Linear Discriminant Analysis

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JANOUŠOVÁ Eva SCHWARZ Daniel KAŠPÁREK Tomáš

Rok publikování 2010
Druh Článek ve sborníku
Konference Proceedings of Medical Image Understanding and Analysis 2010
Fakulta / Pracoviště MU

Lékařská fakulta

Citace
www http://www2.warwick.ac.uk/fac/sci/dcs/events/miua2010/proceedings/
Obor Neurologie, neurochirurgie, neurovědy
Klíčová slova Classification, Principal Component Analysis, Linear Discriminant Analysis, MRI, Computational Neuroanatomy, Schizophrenia
Popis Recent studies have demonstrated that diagnostics of schizophrenia based on image data is a difficult task because of extensive overlaps of brain regions distinguishing patients with schizophrenia from healthy controls and also because of the small sample size problem. An algorithm for the automatic classification of first-episode schizophrenia patients and healthy controls based on deformations and gray matter (GM) density images extracted from their MRI intensity data is introduced here. The deformations and GM density images are reduced by principal component analysis, which is here based on the covariance matrix of persons (pPCA). The reduced image data is then classified with the use of modified maximum uncertainty linear discriminant analysis (MLDA), which gives better sensitivity than original MLDA. The classification efficiency of the proposed algorithm is comparable with other state-of-art studies in the schizophrenia research.
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