Application of fuzzy c-mean clustering technique for mycobacterium tuberculosis detection in Ziehl-Neelsen stained tissue images
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Date
2010-10-16Author
Muhammad Khusairi, Osman
Mohd Yusoff, Mashor, Prof. Dr.
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Show full item recordAbstract
Automatic detection of Mycobacterium tuberculosis
improves accuracy, sensitivity and efficiency of
diagnosis compared to manual method. However, the
process is difficult, especially in Zeihl-Neelsen stained
tissue images due to intensity inhomogeneity and tissue
background complexity. In this paper, an automated
approach to segment Mycobacterium tuberculosis from
tissue slide images using fuzzy c-mean clustering
procedure is proposed. The procedure provides a basic
step for detecting the presence of tuberculosis bacilli.
First, initial filter is used to assist the clustering
process by removing the tissues images which remain
blue after counterstaining process. Then, fuzzy c-mean
clustering is applied to segment the bacilli. Three
colour models, RGB, HSI and C-Y are analysed to
identify the colour model that perform significant
segmentation performance. Finally, a 5×5 median
filter and region growing was used to eliminate small
regions and noises. The proposed methods have been
analysed for several TB slide images under various
conditions. The results indicated that fuzzy c-mean
clustering using saturation component of C-Y colour
model has achieved the best segmentation result with
an accuracy of 99.54%.
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