DocumentCode :
3473306
Title :
Application of different classification techniques on brain morphological data
Author :
Sarica, Alessia ; Critelli, Claudia ; Guzzi, Pietro H. ; Cerasa, Antonio ; Quattrone, Aldo ; Cannataro, Mario
Author_Institution :
Dept. of Surg. & Med. Sci., Magna Graecia Univ. of Catanzaro, Catanzaro, Italy
fYear :
2013
fDate :
20-22 June 2013
Firstpage :
425
Lastpage :
428
Abstract :
The increasing number of people affected by Neurodegenerative diseases and the improvement of brain imaging diagnostic techniques are bringing to a massive production of brain images that need demanding preprocessing and analysis algorithms. We analyzed volumetric measures of critical brain areas by using different Data Mining methods. Structural magnetic resonance images, generated in our university, were preprocessed using a fully automated segmentation method and the extracted volumetric information was then analyzed by using different binary classifiers. We performed three binary classification experiments considering different data mining algorithms and neurological diseases. Naïve Bayes outperformed all the others classifiers in two experiments, obtaining respectively 93.75% and 95.00% accuracy, while in the third experiment the best classifier was SVM but with a lower accuracy (58,56%). Afterwards, using the Stacking technique we combined the predictions from the best detected three models to build a meta-learner. Meta-learner classification results suggest that the application of the Stacking technique needs more experimentation and the test of additional stackers.
Keywords :
Bayes methods; biomedical MRI; brain; data mining; image classification; image segmentation; medical image processing; neurophysiology; support vector machines; Naive-Bayes classification; SVM; Stacking technique; analysis algorithms; binary classification experiments; binary classifiers; brain imaging diagnostic techniques; brain morphological data; classification application techniques; critical brain areas; data mining methods; extracted volumetric information; fully automated segmentation method; massive brain image production; meta-learner classification; neurodegenerative diseases; neurological diseases; preprocessing algorithms; structural magnetic resonance images; support vector machines; volumetric measure analysis; Accuracy; Classification algorithms; Data mining; Diseases; Magnetic resonance imaging; Stacking; Support vector machines; MRI; classification; data mining; meta-learning; neurogenerative disease; neuroscience; stacking;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer-Based Medical Systems (CBMS), 2013 IEEE 26th International Symposium on
Conference_Location :
Porto
Type :
conf
DOI :
10.1109/CBMS.2013.6627832
Filename :
6627832
Link To Document :
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