Chromosome image classification using a two-step probabilistic neural network

Chromosome image analysis is composed of image preparation, image analysis, and image diagnosis. General procedureof chromosome image analysis includes of image preprocessing in the first step, image segmentation, feature extraction, andimage classification in the last step. This paper presents the...

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Main Authors: Sunthorn Rungruangbaiyok, Pornchai Phukpattaranont
Format: Article
Language:English
Published: Prince of Songkla University 2010-07-01
Series:Songklanakarin Journal of Science and Technology (SJST)
Subjects:
Online Access:http://www.rdoapp.psu.ac.th/html/sjst/journal/32-3/0125-3395-32-3-255-262.pdf
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author Sunthorn Rungruangbaiyok
Pornchai Phukpattaranont
author_facet Sunthorn Rungruangbaiyok
Pornchai Phukpattaranont
author_sort Sunthorn Rungruangbaiyok
collection DOAJ
description Chromosome image analysis is composed of image preparation, image analysis, and image diagnosis. General procedureof chromosome image analysis includes of image preprocessing in the first step, image segmentation, feature extraction, andimage classification in the last step. This paper presents the preliminary results that use probabilistic neural network toclassify chromosome image into 24 classes. Features of chromosome which were used in this paper are area, perimeter, band’sarea, singular value decomposition, and band profile. Chromosome images were grouped in two steps by probabilistic neuralnetwork. Six groups and twenty four groups are in the first and the second step, respectively. The result from the secondstep is twenty four chromosome classes. Density profile sampled at 10, 30, 50 and 80 were tested. The best classificationresult of female is 68.19% when density profile at 30 samples was used, and that of male is 61.30% when density profile at50 samples was used.
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spelling doaj.art-c6a405ea3c2c48e4a1c3b8c0187e9aa02022-12-21T22:40:16ZengPrince of Songkla UniversitySongklanakarin Journal of Science and Technology (SJST)0125-33952010-07-01323255262Chromosome image classification using a two-step probabilistic neural networkSunthorn RungruangbaiyokPornchai PhukpattaranontChromosome image analysis is composed of image preparation, image analysis, and image diagnosis. General procedureof chromosome image analysis includes of image preprocessing in the first step, image segmentation, feature extraction, andimage classification in the last step. This paper presents the preliminary results that use probabilistic neural network toclassify chromosome image into 24 classes. Features of chromosome which were used in this paper are area, perimeter, band’sarea, singular value decomposition, and band profile. Chromosome images were grouped in two steps by probabilistic neuralnetwork. Six groups and twenty four groups are in the first and the second step, respectively. The result from the secondstep is twenty four chromosome classes. Density profile sampled at 10, 30, 50 and 80 were tested. The best classificationresult of female is 68.19% when density profile at 30 samples was used, and that of male is 61.30% when density profile at50 samples was used.http://www.rdoapp.psu.ac.th/html/sjst/journal/32-3/0125-3395-32-3-255-262.pdfimage analysischromosome imageimage segmentationfeature extractionneural network
spellingShingle Sunthorn Rungruangbaiyok
Pornchai Phukpattaranont
Chromosome image classification using a two-step probabilistic neural network
Songklanakarin Journal of Science and Technology (SJST)
image analysis
chromosome image
image segmentation
feature extraction
neural network
title Chromosome image classification using a two-step probabilistic neural network
title_full Chromosome image classification using a two-step probabilistic neural network
title_fullStr Chromosome image classification using a two-step probabilistic neural network
title_full_unstemmed Chromosome image classification using a two-step probabilistic neural network
title_short Chromosome image classification using a two-step probabilistic neural network
title_sort chromosome image classification using a two step probabilistic neural network
topic image analysis
chromosome image
image segmentation
feature extraction
neural network
url http://www.rdoapp.psu.ac.th/html/sjst/journal/32-3/0125-3395-32-3-255-262.pdf
work_keys_str_mv AT sunthornrungruangbaiyok chromosomeimageclassificationusingatwostepprobabilisticneuralnetwork
AT pornchaiphukpattaranont chromosomeimageclassificationusingatwostepprobabilisticneuralnetwork