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Title: | Automated diagnosis of brain tumours astrocytomas using probabilistic neural network clustering and support vector machines |
Authors: | Γκλώτσος, Δημήτριος Ραβαζούλα, Παναγιώτα Κάβουρας, Διονύσης Α. Νικηφορίδης, Γεώργιος Χ. Tohka, Jussi |
Item type: | Journal article |
Keywords: | Probabilistic neural network;Microscopy;Πιθανοτικό νευρωνικό δίκτυο;Μικροσκοπία |
Subjects: | Medicine Biomedical engineering Ιατρική Βιοϊατρική τεχνολογία |
Issue Date: | 11-May-2015 2005 |
Publisher: | World Scientific Publishing |
Abstract: | A computer-aided diagnosis system was developed for assisting brain astrocytomas malignancy grading. Microscopy images from 140 astrocytic biopsies were digitized and cell nuclei were automatically segmented using a Probabilistic Neural Network pixel-based clustering algorithm. A decision tree classification scheme was constructed to discriminate low, intermediate and high-grade tumours by analyzing nuclear features extracted from segmented nuclei with a Support Vector Machine classifier. Nuclei were segmented with an average accuracy of 86.5%. Low, intermediate, and high-grade tumours were identified with 95%, 88.3%, and 91% accuracies respectively. The proposed algorithm could be used as a second opinion tool for the histopathologists. |
Language: | English |
Citation: | Glotsos, D., Tohka, J., Ravazoula, P., Cavouras, D. and Nikiforidis, G. (February & April 2005). Automated diagnosis of brain tumours astrocytomas using probabilistic neural network clustering and support vector machines. International Journal of Neural Systems. 15(01n02). pp. 1-11. World Scientific Publishing: 2005. |
Journal: | International Journal of Neural Systems |
Type of Journal: | With a review process (peer review) |
Access scheme: | Embargo |
License: | Αναφορά Δημιουργού-Μη Εμπορική Χρήση-Όχι Παράγωγα Έργα 3.0 Ηνωμένες Πολιτείες |
URI: | http://hdl.handle.net/11400/10115 |
Appears in Collections: | Δημοσιεύσεις |
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