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Reseach Article

Classification of Medical Ultrasound Images of Kidney

Published on October 2014 by Prema T. Akkasaligar, Sunanda Biradar
International Conference on Information and Communication Technologies
Foundation of Computer Science USA
ICICT - Number 3
October 2014
Authors: Prema T. Akkasaligar, Sunanda Biradar
84a755df-8d18-4eab-a46e-4506e5a60caa

Prema T. Akkasaligar, Sunanda Biradar . Classification of Medical Ultrasound Images of Kidney. International Conference on Information and Communication Technologies. ICICT, 3 (October 2014), 24-28.

@article{
author = { Prema T. Akkasaligar, Sunanda Biradar },
title = { Classification of Medical Ultrasound Images of Kidney },
journal = { International Conference on Information and Communication Technologies },
issue_date = { October 2014 },
volume = { ICICT },
number = { 3 },
month = { October },
year = { 2014 },
issn = 0975-8887,
pages = { 24-28 },
numpages = 5,
url = { /proceedings/icict/number3/17978-1427/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Information and Communication Technologies
%A Prema T. Akkasaligar
%A Sunanda Biradar
%T Classification of Medical Ultrasound Images of Kidney
%J International Conference on Information and Communication Technologies
%@ 0975-8887
%V ICICT
%N 3
%P 24-28
%D 2014
%I International Journal of Computer Applications
Abstract

Ultrasonography is considered to be safest technique in medical imaging and hence is used extensively. Due to the presence of speckle noise and other constraints, establishing the general segmentation scheme for different classes of kidney in ultrasound image is a challenging task. This paper aims at classification of medical ultrasound images of kidney as normal and cystic images. In the proposed method, the acquired images are manually cropped to find the region of interest (ROI) of kidney. The cropped images are pre-processed using three different filters namely Gaussian low-pass filter, median filter and Weiner filter to remove speckle noise. The despeckled images are used for extraction of potential texture features that provide tissue characteristics of kidney region in ultrasound images. The Gray Level Co-occurrence Matrix (GLCM) features and run length texture features are extracted. Further, the k-nearest neighbors classifier (k-NN) is used to classify the images as normal and cystic kidney images. The results obtained show that the Gaussian low-pass filter is more suitable for speckle noise removal. The GLCM extracted features are highly significant in classification of kidney images into normal and cystic. The proposed method has the prospect of implementing a computer-aided diagnosis system for ultrasound kidney images. The experimental results demonstrate the efficacy of the method.

References
  1. Hagen-Ansert S, Urinary System, Diagnostic Ultrasonography, in Text book of Diagnostic Ultrasound, (St. Louis Mosby. , 1995). Ding, W. and Marchionini, G. 1997 A Study on Video Browsing Strategies. Technical Report. University of Maryland at College Park.
  2. H. M. Pollack and B. L. McClennan, Clinical Urography, Reading: edition 2,(W. B. Saunders company, 2000). Tavel, P. 2007 Modeling and Simulation Design. AK Peters Ltd, pp. 1245-1250.
  3. Wan M. Hafizah, Eko Supriyanto, Automatic Generation of Region of Interest for Kidney Ultrasound Images Using Texture Analysis, International Journal of Biology and Biomedical Engineering, Issue 1, Volume 6, 2012. Forman, G. 2003. An extensive empirical study of feature selection metrics for text classification. J. Mach. Learn. Res. 3 (Mar. 2003), pp. 1289-1305.
  4. Xie, J. , Jiang, Y. , Tsui, H. , Segmentation of Kidney From Ultrasound Images Based on Texture and Shape Priors, IEEE Trans On Medical Imaging, Vol. 24, No. 1, 2005, pp. 45-57.
  5. Raja, K. B. , Madheswaran, M. , Thyagarajah, K. , Quantitative and Qualitative Evaluation of US Kidney Images for Disorder Classification using Multi-Scale Differential Features, ICGST-BIME Journal, Volume 7, Issue 1, May, 200,pp. 1-8.
  6. Ashish K. Rudra , Ananda S. Chowdhury, Ahmed Elnakib, Fahmi Khalifa, Ahmed Soliman ,Garth Beache, Ayman El-Baz , Kidney segmentation using graph cuts and pixel connectivity, Pattern Recognition Journal, Volume 34,2013, pp. 1470–1475.
  7. Carlos S. Mendoza, Xin Kang, Nabile Safdar, Emmarie Myers, Craig A. Peters, Marius George Linguraru, Kidney Segmentation in Ultrasound Via Genetic Initialization and Active Shape Models with Rotation Correction, IEEE International Symposium on Biomedical Imaging, April 2013.
  8. K. Bommannna Raja, M. Madheswaran, K. Thyagarajah, A General Segmentation Scheme for Contouring Kidney Region in Ultrasound Kidney Images using Improved Higher Order Spline Interpolation, International Journal of Biological and Life Sciences, 2:2 2006.
  9. Chia- Hsiang Wu, Yung-Nien Sun, Segmentation of Kidney from Ultrasound B-mode Images with Texture-based Classification, ComputerMethods and Programs in Biomedicine Journal, 84 2006, pp. 114-123.
  10. Hiremath P. S. , Prema T. Akkasaligar and Sharan Badiger, Despeckling medical ultrasound images using the contourlet transform, Proc. of Indian International Conferance on Artificial Intelligence, 16-18 Dec. 2009, Tumkur, India, pp. 1814-1827.
  11. Hiremath P. S. , Prema T. Akkasaligar and Sharan Badiger, Speckle Noise Reduction in Medical Ultrasound Images, Advancements and Breakthroughs in Ultrasound Images in Tech Publishers, Crortia, 5th June 2013, pp. 201-241,(DOI:10. 5772156519).
  12. Gonzalez R. C. and Woods R. E. Digital Image Processing, Second Edition, Pearson Edu , 2002, pp. 66-84.
  13. B. S. Anami, Sunanda Biradar, D. G. Savakar, P. V. Kulkarni, Identification and classification of similar looking food grains, Proc. SPIE 8760, International Conference on Communication and Electronics System Design, January 2013, pp. 8760081-8760083.
Index Terms

Computer Science
Information Sciences

Keywords

Us Kidney Image Texture Features Gray Level Co-occurrence Matrix K-nn Classifier.