An empirical comparison of classification algorithms for diagnosis of depression from brain sMRI scans
Contribuinte(s) |
[Unknown] |
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Data(s) |
01/01/2013
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Resumo |
To be diagnostically effective, structural magnetic resonance imaging (sMRI) must reliably distinguish a depressed individual from a healthy individual at individual scans level. One of the tasks in the automated diagnosis of depression from brain sMRI is the classification. It determines the class to which a sample belongs (i.e., depressed/not depressed, remitted/not-remitted depression) based on the values of its features. Thus far, very limited works have been reported for identification of a suitable classification algorithm for depression detection. In this paper, different types of classification algorithms are compared for effective diagnosis of depression. Ten independent classification schemas are applied and a comparative study is carried out. The algorithms are: Naïve Bayes, Support Vector Machines (SVM) with Radial Basis Function (RBF), SVM Sigmoid, J48, Random Forest, Random Tree, Voting Feature Intervals (VFI), LogitBoost, Simple KMeans Classification Via Clustering (KMeans) and Classification Via Clustering Expectation Minimization (EM) respectively. The performances of the algorithms are determined through a set of experiments on sMRI brain scans. An experimental procedure is developed to measure the performance of the tested algorithms. A classification accuracy evaluation method was employed for evaluation and comparison of the performance of the examined classifiers. |
Identificador | |
Idioma(s) |
eng |
Publicador |
IEEE Computer Society |
Relação |
http://dro.deakin.edu.au/eserv/DU:30061615/kipli-empiricalcomparison-2013.pdf http://dro.deakin.edu.au/eserv/DU:30061615/kipli-empiricalcomparison-evid-2013.pdf http://dro.deakin.edu.au/eserv/DU:30061615/kipli-empiricalcomparison-evid2-2013.pdf http://dro.deakin.edu.au/eserv/DU:30061615/kipli-empiricalcomparison-post-2013.pdf http://dx.doi.org/10.1109/ACSAT.2013.72 |
Direitos |
2013, IEEE |
Palavras-Chave | #structural MRI #automated depression detection #classification #brain image analysis |
Tipo |
Conference Paper |