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State of the Art in Neural Networks and Their Applications

  • ID: 5203942
  • Book
  • May 2021
  • 432 Pages
  • Elsevier Science and Technology
State of the Art in Neural Networks and Their Applications presents the latest advances in artificial neural networks and their applications across a wide range of clinical diagnoses. Advances in the role of machine learning, artificial intelligence, deep learning, cognitive image processing and suitable data analytics useful for clinical diagnosis and research applications are covered, including relevant case studies. The application of Neural Network, Artificial Intelligence, and Machine Learning methods in biomedical image analysis have resulted in the development of computer-aided diagnostic (CAD) systems that aim towards the automatic early detection of several severe diseases.

State of the Art in Neural Networks and Their Applications is presented in two volumes. Volume 1 covers the state-of-the-art deep learning approaches for the detection of renal, retinal, breast, skin, and dental abnormalities and more.

- Includes applications of neural networks, AI, machine learning, and deep learning techniques to a variety of imaging technologies- Provides in-depth technical coverage of computer-aided diagnosis (CAD), with coverage of computer-aided classification, Unified Deep Learning Frameworks, mammography, fundus imaging, optical coherence tomography, cryo-electron tomography, 3D MRI, CT, and more.- Covers deep learning for several medical conditions including renal, retinal, breast, skin, and dental abnormalities, Medical Image Analysis, as well as detection, segmentation, and classification via AI.
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1. Computer Aided Detection of Abnormality in Mammography using Deep Object Detectors
2. Detection of retinal abnormalities in fundus image using CNN Deep Learning Networks
3. A survey of Deep Learning Based Methods for Cryo-electron Tomography Data Analysis
4. Detection, Segmentation and Numbering of Teeth in Dental Panoramic Images with Mask RCNN
5. Accurate Identification of Renal Transplant Rejection: Convolutional Neural Networks and Diffusion MRI
6. Applications of the ESPNet Architecture in Medical Imaging
7. Achievements of Neural Network in Skin Lesions Classification
8. A Computer-aided-diagnosis System for Breast Cancer Molecular Subtypes Prediction in mammographic images
9. Computer-Aided Diagnosis of Renal Masses
10. Early Identification of Acute Rejection for Renal Allografts: A Machine Learning Approach
11. Deep Learning for Computer-Aided Diagnosis in Ophthalmology: A Review
12. Deep Learning for Ophthalmology using Optical Coherence Tomography
13. Generative Adversarial Networks in Medical Imaging
14. Deep Learning from Small Labeled Datasets Applied to Medical Image Analysis
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S. El-Baz, Ayman
Ayman S. El-Baz is a Distinguished Professor at University of Louisville, Kentucky, United States and University of Louisville at AlAlamein International University (UofL-AIU), New Alamein City, Egypt. Dr. El-Baz was named as a Fellow for Coulter, AIMBE and NAI for his contributions to the field of biomedical translational research. Dr. El-Baz has almost two decades of hands-on experience in the fields of bio-imaging modeling and non-invasive computer-assisted diagnosis systems. He has authored or coauthored more than 500 technical articles.
Suri, Jasjit S.
Jasjit S. Suri is an innovator, scientist, visionary, industrialist and an internationally known world leader in biomedical engineering. Dr. Suri has spent over 25 years in the field of biomedical engineering/devices and its management. Dr. Suri was crowned with President's Gold medal in 1980 and made Fellow of the American Institute of Medical and Biological Engineering for his outstanding contributions. He was awarded the Marquis Life Time Achievement Award for his outstanding contributions to medical imaging.
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