عنوان المقالة: TUMOR CLASSIFICATION USING ENHANCED HYBRID CLASSIFICATION METHODS AND SEGMENTATION OF MR BRAIN IMAGES
الاستاذ المساعد الدكتورة اسماء شاكر عاشور | Assist. Prof. Dr. Asmaa Shaker Ashoor | 17590
Publication Type
Journal
Arabic Authors
English Authors
ANWAR YAHYA EBRAHIM, ASMAA SHAKER ASHOOR
Abstract
The inherently varying nature of tumor shapes and image intensities make brain tumor detection very intricate. Since several available methods and tumor detection are far from being resolved. Initially, an optimization-based classification a new hybrid model was proposed to describe an individual use of clonal selection and particle swarm optimization (PSO) to verify a specified MR brain image as either normal or abnormal. The methodology involves two major stages. In the first stage, used sparse principal component analysis (SPCA) to reduce feature space, and selected the important features. The second phase two hybrid optimization-based negative selection models were developed to investigate the integration of clonal selection technique with PSO from the perspective of classification and detection to optimize the parameters C and 𝜎. Fivefold cross-validation was utilized to avoid overfitting and to ensure a robust classification. Although clonal negative selection classification algorithm (CNSCA), has the best performance. The proposed method achieved 99.10% classification accuracy. The admirable features of the outcomes submit that the suggested methods may institute a basis for reliable MRI brain tumor diagnosis and treatments. A comparison with other techniques showed the competitiveness of the proposed methods.
Publication Date
10/15/2018
Publisher
(Asian Research Publishing Network (ARPN
Volume No
13
Issue No
20
ISSN/ISBN
1819-6608
DOI
www.arpnjournals.com
File Link
تحميل (485 مرات التحميل)
Keywords
magnetic resonance imaging, feature selection, particle swarm optimization, clonal selection, hybrid classification.
رجوع