Detection and Segmentation of Breast Cancer Using Auto Encoder Deep Neural Networks
الموضوعات :
Majlesi Journal of Telecommunication Devices
Ageel Abed
1
,
Mehran Emadi
2
1 - Department of Computer Engineering, Isfahan (Khorasgan) Branch, Islamic Azad University, Isfahan, Iran.
2 - Department of Electrical Engineering, Mobarakeh Branch, Islamic Azad University, Mobarakeh, Iran.
تاريخ الإرسال : 09 الخميس , محرم, 1445
تاريخ التأكيد : 10 الإثنين , ربيع الأول, 1445
تاريخ الإصدار : 17 الجمعة , جمادى الأولى, 1445
الکلمات المفتاحية:
Segmentation,
Automatic encoder neural networks,
Ultrasound images,
Breast masses,
ملخص المقالة :
Breast cancer is the most common type of cancer among women worldwide. If diagnosed by a doctor in the early stages, it can save the patient's life. Ultrasound imaging is one of the most widely used diagnostic tools for diagnosing and classifying breast abnormalities. However, accurate segmentation of the ultrasound image is a challenging problem due to the artifacts created on the ultrasound image. Although deep learning-based methods have been able to overcome some of these challenges, the accuracy of tumor region detection in this image is still low. In this paper, we have proposed approaches for breast ultrasound image segmentation based on auto-encoder deep neural network. The proposed method has two parts. The classification section to determine the image with cancerous tissue and the tumor segmentation section to segment the desired area. which will be shown in the network output of the encoder itself. The proposed method has been evaluated qualitatively and quantitatively. The superiority of the proposed method with accuracy and dice criteria is 89 and 90 percent, respectively which shows the effectiveness of this method in diagnosis.
المصادر:
Saberi, M. Ramezanpour, and R. Khorsand, "An efficient data hiding method using the intra prediction modes in HEVC," Multimedia Tools and Applications, vol. 79, pp. 33279-33302, 2020..
Masud, M., et al., "Pre-trained convolutional neural networks for breast chest cancer detection using ultrasound breast images." ACM Transactions on Internet Technology (TOIT), 2021. 21(4): p. 1-17.
Abbasi, A., et al., "A meta-analysis of factors related to fertility attitudes, desires, and childbearing intentions in Iranian studies." Interdisciplinary Studies in Humanities, 2022. 14(4): p. 63-92.
Liu, M., et al., "Breast chest Histopathological Image Classification Method Based on Autoencoder and Siamese Framework." Information, 2022. 13(3): p. 107.
Harouni, M., M. Karimi, and S. Rafieipour, "Precise segmentation techniques in various medical images." Artificial Intelligence and Internet of Things: Applications in Smart Healthcare, 2021. 117.
Karimi, M., et al., "Automatic lung infection segmentation of covid-19 in CT scan images," in Intelligent Computing Applications for COVID-19. 2021, CRC Press. p. 235-253.
Karimi, E., A. Ebrahimi, and M.R. Tavakoli, "How optimal PMU placement can mitigate cascading outages blackouts?" International Transactions on Electrical Energy Systems, 2019. 29(6): p. e12015.
Karimi, M., et al.," Improving monitoring and controlling parameters for alzheimer’s patients based on iomt, in Prognostic models in healthcare:" Ai and statistical approaches. 2022, Springer. p. 213-237.
Mahmudi, F., M. Soleimani, and M. Naderi, "Some Properties of the Maximal Graph of a Commutative Ring." Southeast Asian Bulletin of Mathematics, 2019. 43(4).
Arevalo, J., et al. "Convolutional neural networks for mammography mass lesion classification." in 2015 37th Annual international conference of the IEEE engineering in medicine and biology society (EMBC). 2015. IEEE.
Yap, M.H., et al., "Automated breast chest ultrasound lesions detection using convolutional neural networks." IEEE journal of biomedical and health informatics, 2017. 22(4): p. 1218-1226.
Karimi, M., M. Harouni, and S. Rafieipour," Automated medical image analysis in digital mammography," in Artificial intelligence and internet of things. 2021, CRC Press. p. 85-116.
Harouni, M., et al., "Health monitoring methods in heart diseases based on data mining approach: A directional review," in Prognostic models in healthcare: Ai and statistical approaches. 2022, Springer. p. 115-159.
Moshayedi, A.J., et al., "E-Nose design and structures from statistical analysis to application in robotic: a compressive review." EAI Endorsed Transactions on AI and Robotics, 2023. 2(1): p. e1-e1.
Emadi, M., Z. Jafarian Dehkordi, and M. Iranpour Mobarakeh, "Improving the Accuracy of Brain Tumor Identification in Magnetic Resonanceaging using Super-pixel and Fast Primal Dual Algorithm." International Journal of Engineering, 2023. 36(3): p. 505-512.
Doi, K., "Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Computerized medical imaging and graphics," 2007. 31(4-5): p. 198-211.
Soleimani, M., F. Mahmudi, and M. Naderi, "Some results on the maximal graph of commutative rings. Advanced Studies:" Euro-Tbilisi Mathematical Journal, 2023. 16(supp1): p. 21-26.
Soleimani, M., M.H. Naderi, and A.R. Ashrafi, "TENSOR PRODUCT OF THE POWER GRAPHS OF SOME FINITE RINGS." Facta Universitatis, Series: Mathematics and Informatics, 2019: p. 101-122.
Brem, R.F., et al., "Evaluation of breast chest cancer with a computer aided detection system by mammographic appearance and histopathology." Cancer: Interdisciplinary International Journal of the American Cancer Society, 2005. 104(5): p. 931-935.
Mridha, M.F., et al., "A comprehensive survey on deep-learning-based breast chest cancer diagnosis. Cancers" 2021. 13(23): p. 6116.
Murthy, N.S. and C. Bethala, "Review paper on research direction towards cancer prediction and prognosis using machine learning and deep learning models." Journal of Ambient Intelligence and Humanized Computing, 2021: p. 1-19.
Aggarwal, R., et al., "Diagnostic accuracy of deep learning in medical imaging: A systematic review and meta-analysis." NPJ digital medicine, 2021. 4(1): p. 1-23.
Xie, J., et al., Deep learning based analysis of histopathological images of breast chest cancer. Frontiers in genetics, 2019. 10: p. 80.
Lehman, C.D., et al., "Mammographic breast chest density assessment using deep learning: clinical implementation." Radiology, 2019. 290(1): p. 52-58.
Le, H., et al.," Utilizing automated breast chest cancer detection to identify spatial distributions of tumor-infiltrating lymphocytes in invasive breast chest cancer." The American journal of pathology, 2020. 190(7): p. 1491-1504.
Navabifar, F. and M. Emadi, "A Fusion Approach Based on HOG and Adaboost Algorithm for Face Detection under Low-Resolution Images." INTERNATIONAL ARAB JOURNAL OF INFORMATION TECHNOLOGY, 2022. 19(5): p. 728-735.
Rehman, A., et al., "Microscopic retinal blood vessels detection and segmentation using support vector machine and K nearest neighbors. Microscopy research and technique, "2022. 85(5): p. 1899-1914.
Cruz-Roa, A., et al., "Accurate and reproducible invasive breast chest cancer detection in whole-slide images: A Deep Learning approach for quantifying tumor extent. Scientific reports," 2017. 7(1): p. 1-14.
Zhang, Q., et al.," Deep learning based classification of breast chest tumors with shear-wave elastography. Ultrasonics," 2016. 72: p. 150-157.
Liu, K., et al., "Breast chest cancer classification based on fully-connected layer first convolutional neural networks." IEEE Access, 2018. 6: p. 23722-23732.
Xiao, Y., et al. "Breast chest cancer diagnosis using an unsupervised feature extraction algorithm based on deep learning." in 2018 37th Chinese Control Conference (CCC). 2018. IEEE.
Xu, Y., et al., "Medical breast chest ultrasound image segmentation by machine learning. Ultrasonics," 2019. 91: p. 1-9.
Minarno, A.E., et al. "CNN based autoencoder application in breast chest cancer image retrieval." in 2021 International Seminar on Intelligent Technology and Its Applications (ISITIA). 2021. IEEE.
AlEisa, H.N., et al., "Breast chest Cancer Classification Using FCN and Beta Wavelet Autoencoder. "Computational Intelligence and Neuroscience, 2022. 2022.
Ragab, M., et al., "Ensemble deep-learning-enabled clinical decision support system for breast chest cancer diagnosis and classification on ultrasound breast images." Biology, 2022. 11(3): p. 439.
Jabeen, K., et al., "Breast chest cancer classification from ultrasound breast images using probability-based optimal deep learning feature fusion." Sensors, 2022. 22(3): p. 807.
Kadam, V.J., S.M. Jadhav, and K. Vijayakumar, "Breast chest cancer diagnosis using feature ensemble learning based on stacked sparse autoencoders and softmax regression." Journal of medical systems, 2019. 43(8): p.p1-11.
Papież, B.W., et al. "Liver motion estimation via locally adaptive over-segmentation regularization." in Medical Image Computing and Computer-Assisted Intervention–MICCAI 2015: 18th International Conference, Munich, Germany, October 5-9, 2015, Proceedings, Part III 18. 2015. Springer.
Zhou, Z., et al. "Unet++: A nested u-net architecture for medical image segmentation. in Deep Learning in Medical Image Analysis and Multimodal Learning for Clinical Decision Support," 4th International Workshop, DLMIA 2018, and 8th International Workshop, ML-CDS 2018, Held in Conjunction with MICCAI 2018, Granada, Spain, September 20, 2018, Proceedings 4. 2018. Springer.
Duan, J., et al., "Automatic 3D bi-ventricular segmentation of cardiac images by a shape-refined multi-task deep learning approach." IEEE transactions on medical imaging, 2019. 38(9): p. 2151-2164.
Feng, S., et al., CPFNet: "Context pyramid fusion network for medical image segmentation. IEEE transactions on medical imaging," 2020. 39(10): p. 3008-3018.
Abbasi, R. Sadeghi, A. Maleki, and G. Balakhani," A meta-analysis of factors related to fertility attitudes, desires, and childbearing intentions in Iranian studies," Interdisciplinary Studies in Humanities, vol. 14, no. 4, pp. 63-92, 2022.
Najafabadi, and M. Ramezanpour, "Mass center direction-based decision method for intraprediction in HEVC standard." Journal of Real-Time Image Processing, vol. 17, no. 5, pp. 1153-1168, 2020.
Heidari, and M. Ramezanpour, "Reduction of intra-coding time for HEVC based on temporary direction map." Journal of Real-Time Image Processing, vol. 17, pp. 567-579, 2020.
Rehman, M. Harouni, F. Zogh, T. Saba, M. Karimi, and G. Jeon, "Detection of Lung Tumors in CT Scan Images using Convolutional Neural Networks." IEEE/ACM Transactions on Computational Biology and Bioinformatics, 2023.
Karimi, M. Harouni, E. I. Jazi, A. Nasr, and N. Azizi, "Improving monitoring and controlling parameters for alzheimer’s patients based on iomt," Prognostic models in healthcare: Ai and statistical approaches, pp. 213-237: Springer, 2022.
Mahmudi, M. Soleimani, and M. Naderi, "Some Properties of the Maximal Graph of a Commutative Ring." Southeast Asian Bulletin of Mathematics, vol. 43, no. 4, 2019.
Karimi, M. Harouni, and S. Rafieipour, "Automated medical image analysis in digital mammography." Artificial intelligence and internet of things, pp. 85-116: CRC Press, 2021.
Harouni, M. Karimi, A. Nasr, H. Mahmoudi, and Z. Arab Najafabadi, "Health monitoring methods in heart diseases based on data mining approach: A directional review." Prognostic models in healthcare: Ai and statistical approaches, pp. 115-159: Springer, 2022.
J. Moshayedi, A. S. Khan, Y. Shuxin, G. Kuan, H. Jiadong, M. Soleimani, and A. Razi, "E-Nose design and structures from statistical analysis to application in robotic: a compressive review." EAI Endorsed Transactions on AI and Robotics, vol. 2, no. 1, pp. e1-e1, 2023.
Emadi, Z. Jafarian Dehkordi, and M. Iranpour Mobarakeh, "Improving the Accuracy of Brain Tumor Identification in Magnetic Resonanceaging using Super-pixel and Fast Primal Dual Algorithm." International Journal of Engineering, vol. 36, no. 3, pp. 505-512, 2023.
Emadi, M. Karimi, and F. Davoudi, "A Review on Examination Methods of Types of Working Memory and Cerebral Cortex in EEG Signals." Majlesi Journal of Telecommunication Devices, vol. 12, no. 3, 2023.
Karimi and A. Ebrahimi, "Probabilistic transmission expansion planning considering risk of cascading transmission line failures." International Transactions on Electrical Energy Systems, vol. 25, no. 10, pp. 2547-2561, 2015.
Karimi and A. Ebrahimi, "Considering risk of cascading line outages in transmission expansion planning by benefit/cost analysis." International Journal of Electrical Power & Energy Systems, vol. 78, pp. 480-488, 2016.