- 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.
|