Computer-Aided Classification of Liver Lesions Using Contrasting Features Difference
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Computer-Aided Classification of Liver Lesions Using Contrasting Features Difference

Authors: Hussein Alahmer, Amr Ahmed

Abstract:

Liver cancer is one of the common diseases that cause the death. Early detection is important to diagnose and reduce the incidence of death. Improvements in medical imaging and image processing techniques have significantly enhanced interpretation of medical images. Computer-Aided Diagnosis (CAD) systems based on these techniques play a vital role in the early detection of liver disease and hence reduce liver cancer death rate.  This paper presents an automated CAD system consists of three stages; firstly, automatic liver segmentation and lesion’s detection. Secondly, extracting features. Finally, classifying liver lesions into benign and malignant by using the novel contrasting feature-difference approach. Several types of intensity, texture features are extracted from both; the lesion area and its surrounding normal liver tissue. The difference between the features of both areas is then used as the new lesion descriptors. Machine learning classifiers are then trained on the new descriptors to automatically classify liver lesions into benign or malignant. The experimental results show promising improvements. Moreover, the proposed approach can overcome the problems of varying ranges of intensity and textures between patients, demographics, and imaging devices and settings.

Keywords: CAD system, difference of feature, Fuzzy c means, Liver segmentation.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1339047

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[1] A. Jemal, F. Bray, M. M. Center, J. Ferlay, E. Ward, and D. Forman, Global cancer statistics. CA: A Cancer Journal for Clinicians. 61, pp. 69–90. doi: 10.3322/caac.20107, 2011.
[2] A. P. Megha, “Recent Advances and Future Potential of Computer Aided Diagnosis of Liver Cancer on Computed Tomography Images,” In Computer Networks and Intelligent Computing, pp. 246-251. Springer Berlin Heidelberg, 2011.
[3] P. Dankerl, A. Cavallaro, T. Alexey, M. Costa, M. Suehling, R. Janka, M. Uder, and M. Hammon. “A Retrieval-based computer-aided diagnosis system for the characterization of liver lesions in CT scans,” Academic radiology 20, no. 12: pp.1526-1534, 2013.
[4] A. Militzer, T. Hager, F. Jager, C. Tietjen, and J. Hornegger. “Automatic detection and segmentation of focal liver lesions in contrast enhanced CT images,” In Pattern Recognition (ICPR), 2010 20th International Conference on, pp. 2524-2527. IEEE, 2010.
[5] S. S. Kumar, R. S. Moni, and J. Rajeesh. “Liver tumor diagnosis by gray level and contourlet coefficients texture analysis,” In Computing, Electronics and Electrical Technologies (ICCEET), International Conference on, pp. 557-562. IEEE, 2012.
[6] A. Depeursinge, C. Kurtz, C. Beaulieu, S. Napel, D. Rubin, "Predicting Visual Semantic Descriptive Terms From Radiological Image Data: Preliminary Results With Liver Lesions in CT,” Medical Imaging, IEEE Transactions on , vol.33, no.8, pp.1669-1676, 2014.
[7] P. M. Taylor, “A review of research into the development of radiologic expertise: Implications for computer-based training,” Academic radiology 14, no. 10, pp. 1252-1263, 2007.
[8] Y. Wei, Q. Feng, M. Huang, Z. Lu, and W. Chen. “A non-parametric method based on NBNN for automatic detection of liver lesion in CT images,” In Biomedical Imaging (ISBI), 2013 IEEE 10th International Symposium on, pp. 366-369. IEEE, 2013.
[9] K. Mala, V. Sadasivam. “Wavelet based texture analysis of Liver tumor from Computed Tomography images for characterization using Linear Vector Quantization Neural Network,” In Advanced Computing and Communications, 2006. ADCOM 2006. International Conference on, pp. 267-270. IEEE, 2006.
[10] K. Mala, V. Sadasivam. “Classification of Fatty and Cirrhosis Liver Using Wavelet-Based Statistical Texture Features and Neural Network Classifier,” International Journal of Software and Informatics 4, no. 2, pp. 151-163, 2010.
[11] S Gunasundari, S. Gunasundari, and M. Suganya Ananthi. “Comparison and Evaluation of Methods for Liver Tumor Classification from CT Datasets,” International Journal of Computer Applications 39, no. 18, pp. 46-51, 2012.
[12] S. S. Kumar, R. S. Moni, and J. Rajeesh. “An automatic computer-aided diagnosis system for liver tumours on computed tomography images,” Computers & Electrical Engineering 39, no. 5, pp. 1516-1526, 2013.
[13] Y. Doron, N. Mayer-Wolf, I. Diamant, and H. Greenspan. “Texture feature based liver lesion classification,” In SPIE Medical Imaging, pp. 90353K-90353K. International Society for Optics and Photonics, 2014.
[14] W. Kuo-Lung, M. Yang. “Alternative c-means clustering algorithms,” Pattern recognition 35, no. 10, pp.2267-2278, 2002.
[15] M. Yang, Y. Hu, K. C. Lin, and C. C. Lin. “Segmentation techniques for tissue differentiation in MRI of ophthalmology using fuzzy clustering algorithms,” Magnetic Resonance Imaging 20, no. 2, pp. 173-179, 2002.
[16] Z. Binsheng, L. H. Schwartz, L. Jiang, J. Colville, C. Moskowitz, L. Wang, R. Leftowitz, F. Liu, and J. Kalaigian. “Shape-constraint region growing for delineation of hepatic metastases on contrast-enhanced computed tomograph scans,” Investigative radiology 41, no. 10, pp. 753-762, 2006.
[17] P. Jaccard, “The distribution of the flora in the alpine zone. 1,” New phytologist 11, no. 2, pp. 37-50, 1912.
[18] L. Dice, “Measures of the amount of ecologic association between species,” Ecology 26, no. 3, pp. 297-302, 1945.
[19] R. Karsten, E. Bengtsson, “A feature set for cytometry on digitized microscopic images,” Analytical Cellular Pathology 25, no. 1, pp. 1-36, 2003.
[20] J. Cao, H. Li, Q. Cai, and Shi-long Guo, “Research on Feature Extraction of Image Target,” Computer Simulation 30, no. 1, pp. 409-413, 2013.
[21] A. Chadha, M. Sushmit, and J. Ravdeep, “Comparative Study and Optimization of Feature-Extraction Techniques for Content based Image Retrieval,” arXiv preprint arXiv, pp.1208-6335, 2012.
[22] Cs.waikato.ac.nz, (2015). Weka 3 - Data Mining with Open Source Machine Learning Software in Java. (online) Available at: http://www.cs.waikato.ac.nz/ml/weka/ (Accessed 19 Sep. 2015).