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Characterization of Hippocampus Using Textural Analysis in Epileptics

BuchKartoniert, Paperback
96 Seiten
Englisch
LAP Lambert Academic Publishingerschienen am03.11.2017
This is an attempt to study the hippocampus body, head, tail and in MRI images using computer analysis techniques, the main objectives of this study was to characterize the hippocampal tissues into two classes normal and epileptic using textural analysis. The texture were extracted from spatial gray level dependence matrix using a window of 2020 pixels of angle zero and distance equal one pixel. The images were collected from MRI brain scans for 18 patients represent the classes of the study in the period from 7/2011 to 2/2012. The images were scored by an expert radiologist and the scoring was accepted in case of agreement with findings of EEG. Then the features were extracted from the selected sub-images that show only the region of interest. A linear discriminant analysis using stepwise were used to classify the sample into the predefined classes. The stepwise selected number of features out of fifteen features. The result of this study showed that the total classification accuracy was 83.3%, 80.6%, 91.7%, and 79.6% for body, head, tail and sagittal respectively. The sensitivity was 72.2, 72.2, 94.4% and 79.6. The Specificity was 94.4%, 88.92%, 88.9% and 79.6% respectively.mehr

Produkt

KlappentextThis is an attempt to study the hippocampus body, head, tail and in MRI images using computer analysis techniques, the main objectives of this study was to characterize the hippocampal tissues into two classes normal and epileptic using textural analysis. The texture were extracted from spatial gray level dependence matrix using a window of 2020 pixels of angle zero and distance equal one pixel. The images were collected from MRI brain scans for 18 patients represent the classes of the study in the period from 7/2011 to 2/2012. The images were scored by an expert radiologist and the scoring was accepted in case of agreement with findings of EEG. Then the features were extracted from the selected sub-images that show only the region of interest. A linear discriminant analysis using stepwise were used to classify the sample into the predefined classes. The stepwise selected number of features out of fifteen features. The result of this study showed that the total classification accuracy was 83.3%, 80.6%, 91.7%, and 79.6% for body, head, tail and sagittal respectively. The sensitivity was 72.2, 72.2, 94.4% and 79.6. The Specificity was 94.4%, 88.92%, 88.9% and 79.6% respectively.
Details
ISBN/GTIN978-3-330-34369-6
ProduktartBuch
EinbandartKartoniert, Paperback
Erscheinungsjahr2017
Erscheinungsdatum03.11.2017
Seiten96 Seiten
SpracheEnglisch
Artikel-Nr.45497898
Rubriken
GenreMedizin

Autor