Intelligent System for Breast Cancer Prognosis using Multiwavelet Packets and Neural Network
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Intelligent System for Breast Cancer Prognosis using Multiwavelet Packets and Neural Network

Authors: Sepehr M.H.Jamarani, M.H.Moradi, H.Behnam, G.A.Rezai Rad

Abstract:

This paper presents an approach for early breast cancer diagnostic by employing combination of artificial neural networks (ANN) and multiwaveletpacket based subband image decomposition. The microcalcifications correspond to high-frequency components of the image spectrum, detection of microcalcifications is achieved by decomposing the mammograms into different frequency subbands,, reconstructing the mammograms from the subbands containing only high frequencies. For this approach we employed different types of multiwaveletpacket. We used the result as an input of neural network for classification. The proposed methodology is tested using the Nijmegen and the Mammographic Image Analysis Society (MIAS) mammographic databases and images collected from local hospitals. Results are presented as the receiver operating characteristic (ROC) performance and are quantified by the area under the ROC curve.

Keywords: Breast cancer, neural networks, diagnosis, multiwavelet packet, microcalcification.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1081207

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References:


[1] CancerNet, A service of the National Cancer Institute http://cancernet.nci.nih.gov
[2] http://www.waiu.man.ac.uk/services/MIAS
[3] P. Sajda and C. Spence. Learning Contextual Relationships in Mammograms using a Hierarchical Pyramid Neural Network IEEE Transactions on MedicalImaging 21 (3) (2002)
[4] B. Verma and J. Zakos, \A computer-aided diagnosis system for digital mammograms based on fuzzy-neural and feature extraction techniques," Information Technology in biomedicine IEEE 5, pp. 46{54,March 2001
[5] Zheng L, Chan A. An artificial intelligent system for tumor detection in screening mammogram. IEEE Trans Med Im2001;20(7):559-67
[6] Moti Melloul, Leo Joskowicz, Segmentation of microcalci fication in Xray mammograms using entropy thresholding technical Report, May 2002, Hebrew University, Leibniz Center.
[7] Z. R. Yang and R. G. Harrison, \Detecting false benign in Breast cancer diagnosis," Neural Networks, IEEE 3, pp. 655{658, July 2000.
[8] Dengler J, Behrens S, Desage JF. Segmentation of microcalcifications in mammograms. IEEE Trans Med Image 1993; 12:634-42.
[9] Li H, Liu KJR, Lo SCB. Fractal modelling and segmentation for the enhancement of microcalcifications in digital mammograms. IEEE Trans Med Imag 1997; 16(6):785-98.
[10] Yoshida H, Doi K, Nishikawa RM, Giger ML,Schmidt RA.An Improved CAD scheme using wavelet transform for detect- Ion of clustered microcalcifications in digital mammograms. Acad Radiol 1996;3:621-7.
[11] Lado MJ, Tahoces PG, Mendez AJ, Souto M, Vidal JJ. A wavelet-based algorithm for detecting clustered microcalcifications in digital mammograms. Med Phys 1999; 26(7):1294-305.
[12] R. R. Coifman, Y. Meyer, and M. V. Wickerhauser, wavelet Analysis and signal processing," in Wavelets and Their A pplications.Boston,MA: Jones and Bartlett, 1992, pp. 153-178.
[13] J. Y. Tham, L.-X. Shen, S. L. Lee, and H. H. Tan, "A general approach for analysis and application of discrete multiwavelet transforms," IEEE Trans. Signal Processing, vol. 48, pp. 457-464 Feb. 2000.
[14] T. Xia and Q. Jiang, "Optimal multifilter banks: Design, related symmetric extension transform and application to image compression," IEEE Trans. Signal Processing, vol. 47, pp. 1878- 1889, July 1999.
[15] S. S. Goh, Q. Jiang, and T. Xia, Construction of biorthogonal multiwaveletsusing the lifting scheme, preprint, 1998.
[16] G. Meyer,A. Z.Averbuch, and J. O. Strömberg, "Fast adaptivewavelet packet image compression," IEEE Trans. Image Processing, vol. 9, pp 792-800, May 2000.
[17] Xiong, K. Ramchandran, and M. T. Orchard, "Wavelet packet image coding using space-frequency quantization," IEEE Trans. Image Processing,vol. 7, pp. 892-898, June 1998.