DocumentCode
3187669
Title
Extraction of Haralick Features from Segmented Texture Multispectral Bio-Images for Detection of Colon Cancer Cells
Author
Chaddad, Ahmad ; Tanougast, Camel ; Dandache, Abbas ; Bouridane, Ahmed
Author_Institution
Lab. of Interface Sensors & Microelectron., Paul Verlaine Univ., Metz, France
fYear
2011
fDate
12-14 Dec. 2011
Firstpage
55
Lastpage
59
Abstract
The automatic recognition and classification of biomedical objects can enhance work efficiency while identifying new inter-relationships among biological features, in this paper Haralick\´s features based GLCM are applied for classification of cancer cell of textured bio-images. The objective of this work is the selection of the most discriminating parameters for cancer cells. A new approach aiming to detect and classify colon cancer cells is presented. Our detection approach was derived from the "Snake" method but using a progressive division of the dimensions of the image to achieve faster segmentation. The time consumed during segmentation decrease to more than 50%. The efficiency of this method resides in its ability to segment Carcinoma (Ca) type cells that was difficult through other segmentation procedures. Classification of three cell types was based on five Haralicks features, only three Haralicks features were used to assess the efficiency classifications models, including Benign Hyperplasia (BH), Intraepithelial Neoplasia (IN) that is a precursor state for cancer, and Ca that corresponds to abnormal tissue proliferation (cancer). The analysis results show that three parameters (correlation, entropy and contrast) were found to be effective to discriminate between the three types of cells. The results obtained show the efficacy of the method.
Keywords
biological organs; cancer; cellular biophysics; feature extraction; image classification; image segmentation; image texture; medical image processing; GLCM; Haralick feature extraction; abnormal tissue proliferation; automatic recognition; benign hyperplasia; carcinoma type cells; classifications model; colon cancer cells; grey level co-occurence matrix; image classification; intraepithelial neoplasia; segmented texture multispectral bioimages; snake method; Active contours; Biomedical imaging; Cancer; Colon; Correlation; Image segmentation; Microscopy; Classification; GLCM; Segmentation; Texture;
fLanguage
English
Publisher
ieee
Conference_Titel
Informatics and Computational Intelligence (ICI), 2011 First International Conference on
Conference_Location
Bandung
Print_ISBN
978-1-4673-0091-9
Type
conf
DOI
10.1109/ICI.2011.20
Filename
6141650
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