Detecting HCC Tumor in Three Phasic CT Liver Images with Optimization of Neural Network
Authors: Mahdieh Khalilinezhad, Silvana Dellepiane, Gianni Vernazza
Abstract:
The aim of this work is to build a model based on tissue characterization that is able to discriminate pathological and non-pathological regions from three-phasic CT images. With our research and based on a feature selection in different phases, we are trying to design a neural network system with an optimal neuron number in a hidden layer. Our approach consists of three steps: feature selection, feature reduction, and classification. For each region of interest (ROI), 6 distinct sets of texture features are extracted such as: first order histogram parameters, absolute gradient, run-length matrix, co-occurrence matrix, autoregressive model, and wavelet, for a total of 270 texture features. When analyzing more phases, we show that the injection of liquid cause changes to the high relevant features in each region. Our results demonstrate that for detecting HCC tumor phase 3 is the best one in most of the features that we apply to the classification algorithm. The percentage of detection between pathology and healthy classes, according to our method, relates to first order histogram parameters with accuracy of 85% in phase 1, 95% in phase 2, and 95% in phase 3.
Keywords: Feature selection, Multi-phasic liver images, Neural network, Texture analysis.
Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1099858
Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 2534References:
[1] M. Gletsos, S. G. Mougiakakou, G. K. Matsopoulos, K. S. Nikita. “A computer Aided Diagnostic system to characterize CT focal Liver Lesions: Design and optimization of a neural network classifier,” in Plastics, 2nd ed. vol. 3, J. Peters, Ed. New York: McGraw-Hill, 1964, pp. 15–64.
[2] I. Valavanis, S. G. Mougiakakou, K. S. Nikita, and A. Nikita. "Computer aided diagnosis of CT focal liver lesions by an ensemble of neural network and statistical classifiers." In Neural Networks, 2004. Proceedings. 2004 IEEE International Joint Conference on, vol. 3, pp. 1929-1934. IEEE, 2004.
[3] S. Gr Mougiakakou, I. Valavanis, K. S. Nikita, A. Nikita, D. Kelekis, “Characterization of CT liver Lesions based on Texture Features and a multiple Neural Network Classification Scheme.” 25th Annual International Conferences of the IEEE EMNS, Cuncun, Mexico, September, 2003.
[4] D. Smutek, A. Shimizu, H. Kotake, S. Nawano, L.and L. Tesar, “Texture Analysis of Hepatocellular Carcinoma and Liver Cysts in CT images,” in SPPRA, 2006, pp.56-59.
[5] S. Su and Y.Sun. "Key techniques research in computer-aided hepatic lesion diagnosis system based on multi-phase CT images." Image and Signal Processing (CISP), 2011 4th International Congress on. Vol. 4. IEEE, 2011
[6] A.Ciurte, S. Nedevschi, “Texture Analysis within Contrast Enhanced Abdominal CT Images,” Intelligent Computer Communication and Processing, 2009. ICCP 2009. IEEE 5th International Conference on. IEEE, 2009.
[7] Y. Jun, Y. Sun, S. Wang, L. Gu, L. Qian, and J. Xu. "Multi-phase CT image based hepatic lesion diagnosis by SVM." In Biomedical Engineering and Informatics, 2009. BMEI'09. 2nd International Conference on, pp. 1-5. IEEE, 2009.
[8] http://www.eletel.p.lodz.pl/programy/mazda/
[9] D. Cavouras, G. Karangellis, M. Raissaki, L. Kostaridou and G. Panayiotakis. “Application of Neural Network and four statistical Classifiersin Characterizing Small Focal Liver Lesions on CT.” 18th Annual International Conference of the IEEE engineering in medicine and Biology Society, Amesterdam. 1996.
[10] J.Jiang, P. Trundle, J.Ren, “Medical Image Analysis with Artificial Neural Networks.” Computerized Medical Imaging and Graphics, 2010, vol. 34, pp. 617-631.
[11] C. C. Lee, C. Y. Shih, (2009, March). “Classification of Liver Disease from CT Images Using Sigmoid Radial Basis Function Neural Network”. In Computer Science and Information Engineering, 2009 WRI World Congress on Vol. 5, pp. 656-660. IEEE.
[12] J. Heaton, “Introduction to Neural Networks for Java”, 2nd Edition. ISIN: 1604390085.
[13] S. Senturk, B. Cetin, M. Cengiz, A. Bilici and S. Ozekinci, “ Dynamic Multidetector Computed Tomography Findings of Hepatocellular Carcinoma of Hepatitis B Virus-positive and – Negative patients,” Cancer Imaging Journal, vol. 19, no. 9, 2014.