Wavelet Imaging Features for Classification of First-Episode Schizophrenia

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Publikace nespadá pod Ústav výpočetní techniky, ale pod Lékařskou fakultu. Oficiální stránka publikace je na webu muni.cz.
Název česky Vlnková transformace pro klasifikaci pacientů s první epizodou schizofrenie
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MARŠÁLOVÁ Kateřina SCHWARZ Daniel

Rok publikování 2019
Druh Článek ve sborníku
Konference Information Technology in Biomedicine, ITIB 2019, Kamień Śląski, Poland, 18-20 June, 2019
Fakulta / Pracoviště MU

Lékařská fakulta

Citace
www https://link.springer.com/chapter/10.1007%2F978-3-030-23762-2_25
Doi http://dx.doi.org/10.1007/978-3-030-23762-2_25
Klíčová slova classification; machine learning; neuroimaging; schizophrenia; support vector machines; wavelet transformation
Popis Recently, multiple attempts have been made to support computer diagnostics of neuropsychiatric disorders, using neuroimaging data and machine learning methods. This paper deals with the design and implementation of an algorithm for the analysis and classification of magnetic resonance imaging data for the purpose of computer-aided diagnosis of schizophrenia. Features for classification are first extracted using two morphometric methods: voxel-based morphometry (VBM) and deformation-based morphometry (DBM); and then transformed into a wavelet domain by discrete wavelet transform (DWT) with various numbers of decomposition levels. The number of features is reduced by thresholding and subsequent selection by: Fisher’s Discrimination Ratio, Bhattacharyya Distance, and Variances – a metric proposed in the literature recently. Support Vector Machine with a linear kernel is used here as a classifier. The evaluation strategy is based on leave-one-out cross-validation. The highest classification accuracy – 73.08% – was achieved with 1000 features extracted by VBM and DWT at four decomposition levels and selected by Fisher’s Discrimination Ratio and Bhattacharyya distance. In the case of DBM features, the classifier achieved the highest accuracy of 72.12% with 5000 discriminating features, five decomposition levels and the use of Fisher’s Discrimination Ratio.
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