Visual Journal of Technical and Vocational Education

Visual Journal of Technical and Vocational Education

Breast Cancer Diagnosis Based on Frequency Converters and Extraction of Effective Features

Document Type : Original Article

Authors
Assistant Professor, Department of Computer Engineering, Technical and Vocational University (TVU), Tehran, Iran.
Abstract
Breast cancer is the most common type of cancer among women. Early diagnosis of this disease and its treatment can significantly reduce the death rate from this cancer. The separation of benign and malignant masses in mammography images is one of the important things in the timely detection of breast cancer, which in some cases, due to the density and natural structure of the breast, deep and hidden disorders, make the diagnosis difficult for radiologists. In this study, frequency transformations and Naive Bayes classification have been used with the aim of extracting effective features in mammography images. The aim of the presented method is to increase the accuracy of diagnosis between malignant and benign tumors in mammography images. The results obtained from the implementation of the proposed method on the MIAS database show that the proposed method has been able to improve the accuracy of diagnosing this disease on normal and abnormal images by 91%, Precision by 98%, Recall by 987%, and F-measure by 90%.
Keywords
Subjects

[1] Ayyoubzadeh, S. M., Baniasadi, T., Shirkhoda, M., Rostam Niakan Kalhori, S., Mohammadzadeh, N., Roudini, K., Ghalehtaki, R., Memari, F., & Jalaeefar, A. (2023). Remote Monitoring of Colorectal Cancer Survivors Using a Smartphone App and Internet of Things–Based Device: Development and Usability Study. Journal of Medical Internet Research Cancer, 9, e42250. https://doi.org/10.2196/42250
[2] Escobar-Linero, E., Muñoz-Saavedra, L., Luna-Perejón, F., Civit-Masot, J., Rivas-Pérez, M., Domínguez-Morales, M., & Balcells, A. C. (2023). Evolution and Tendency on the Feature Extraction Process for Diagnostic Aid in Healthcare. In F. Zeshan & A. Ahmad (Eds.), Recent Advancements in Smart Remote Patient Monitoring, Wearable Devices, and Diagnostics Systems (pp. 109-153). Idea Group Publishing Global. https://doi.org/10.4018/978-1-6684-6434-2.ch006
[3] Vaucelle, C., Ishii, H., & Paradiso, J. A. (2008, September 21-24). Electromagnetic field detector bracelet [Conference session]. Proceedings of the 10th international conference on Ubiquitous computing, Seoul, Korea. https://trackr-media.tangi blemedia.org/publishedmedia/Papers/377-Electromagnetic%20Field%20De tector%20Bracelet/Published/PDF
[4] Campanella, S., Altaleb, A., Belli, A., Pierleoni, P., & Palma, L. (2023). A Method for Stress Detection Using Empatica E4 Bracelet and Machine-Learning Techniques. Sensors, 23(7), 3565. https://doi.org/10.3390/s23073565
[5] Sadoughi, F., Kazemy, Z., Hamedan, F., Owji, L., Rahmanikatigari, M., & Azadboni, T. T. (2018). Artificial intelligence methods for the diagnosis of breast cancer by image processing: a review. Breast Cancer: Targets and Therapy, 10, 219-230. https:// doi.org/10.2147/BCTT.S175311
[6] Yari, Y., Nguyen, T. V., & Nguyen, H. T. (2020). Deep Learning Applied for Histological Diagnosis of Breast Cancer. Institute of Electrical and Electronics Engineers Access, 8, 162432-162448. https://doi.org/10.1109/ACCESS.2020.3021557
[7] Gardezi, S. J. S., Elazab, A., Lei, B., & Wang, T. (2019). Breast Cancer Detection and Diagnosis Using Mammographic Data: Systematic Review. Journal of medical Internet research, 21(7), e14464. https://doi.org/10.2196/14464
[8] Tsochatzidis, L., Costaridou, L., & Pratikakis, I. (2019). Deep Learning for Breast Cancer Diagnosis from Mammograms—A Comparative Study. Journal of Imaging, 5(3), 37. https://doi.org/10.3390/jimaging5030037
[9] Kavitha, T., Mathai, P. P., Karthikeyan, C., Ashok, M., Kohar, R., Avanija, J., & Neelakandan, S. (2022). Deep Learning Based Capsule Neural Network Model for Breast Cancer Diagnosis Using Mammogram Images. Interdisciplinary Sciences: Computational Life Sciences, 14(1), 113-129. https://doi.org/10.1007/s12539-021-00467-y
[10] Zonderland, H. M., Coerkamp, E. G., Hermans, J., Van De Vijver, M. J., & Van Voorthuisen, A. E. (1999). Diagnosis of Breast Cancer: Contribution of US as an Adjunct to Mammography. Radiology, 213(2), 413-422. https://doi.org/10.1148/radiolog y.213.2.r99nv05413
[11] Akay, M. F. (2009). Support vector machines combined with feature selection for breast cancer diagnosis. Expert Systems with Applications, 36(2), 3240-3247. https:// doi.org/10.1016/j.eswa.2008.01.009
[12] Chen, H-L., Yang, B., Liu, J., & Liu, D-Y. (2011). A support vector machine classifier with rough set-based feature selection for breast cancer diagnosis. Expert Systems with Applications, 38(7), 9014-9022. https://doi.org/10.1016/j.eswa.2011.01. 120
[13] Ibrahim, S., Nazir, S., & Velastin, S. A. (2021). Feature Selection Using Correlation Analysis and Principal Component Analysis for Accurate Breast Cancer Diagnosis. Journal of Imaging, 7(11), 225. https://doi.org/10.3390/jimaging7110225
[14] Mader, K. S. (2017). MIAS Mammography [Data set]. Kaggle. https://www.kaggle.co m/datasets/kmader/mias-mammography
[15] Ting, F. F., Tan, Y. J., & Sim, K. S. (2019). Convolutional neural network improvement for breast cancer classification. Expert Systems with Applications, 120(6), 103-115. https://doi.org/10.1016/j.eswa.2018.11.008
[16] Eltoukhy, M. M., Gardezi, S. J. S., & Faye, I. (2014, April 14-16). A method to reduce curvelet coefficients for mammogram classification [Conference session]. Institute of Electrical and Electronics Engineers REGION 10 Symposium, Kuala Lumpur, Malaysia. htt ps://doi.org/10.1109/TENCONSpring.2014.6863116
[17] Gedik, N., & Atasoy, A. (2013). A computer-aided diagnosis system for breast cancer detection by using a curvelet transform. Turkish Journal of Electrical Engineering and Computer Sciences, 21(4), 1002-1014. https://doi.org/10.3906/elk-1201-8
[18] Gardezi, S. J. S., Faye, I., & Eltoukhy, M. M. (2014, October 26-27). Analysis of mammogram images based on texture features of curvelet Sub-bands [Conference session]. Fifth International Conference on Graphic and Image Processing, Hong Kong, China. https://doi.org/10.1117/12.2054183
[19] Suckling, J., Parker, J., Dance, D., Astley, S., Hutt, I., Boggis, C., Ricketts, I., Stamatakis, E., Cerneaz, N., Kok, S., Taylor, P., Betal, D., & Savage, J. (2015,). Mammographic Image Analysis Society (MIAS) database v1.21 [Data set]. Apollo - University of Cambridge Repository. https://doi.org/10.17863/CAM.105113
Volume 1, Issue 2 - Serial Number 2
October 2024
Pages 65-78

  • Receive Date 21 May 2024
  • Revise Date 25 July 2024
  • Accept Date 11 August 2024