Diagnostic Imaging Systems: Advances in Neural Engineering
Editat de Ayman S. El-Baz, Jasjit S. Surien Limba Engleză Paperback – iul 2026
The field of neural engineering deals with many aspects of basic and clinical problems associated with neural dysfunction, including (i) the representation of sensory and motor information, (ii) electrical stimulation of the neuromuscular system to control muscle activation and movement, (iii) the analysis and visualization of complex neural systems at multiscale from the single cell to system levels to understand the underlying mechanisms, (iv) development of novel electronic and photonic devices and techniques for experimental probing, the neural simulation studies, (v) the design and development of human–machine interface systems and artificial vision sensors, and (vi) neural prosthesis to restore and enhance the impaired sensory and motor systems and functions.
To highlight this emerging discipline, Dr. Ayman El-Baz and Dr. Jasjit Suri have developed Advances in Neural Engineering, covering the broad spectrum of neural engineering subfields and applications. This Series includes 7 volumes in the following order: Volume 1: Signal Processing Strategies, Volume 2: Brain-Computer Interfaces, Volume 3: Diagnostic Imaging Systems, Volume 4: Brain Pathologies and Disorders, Volume 5: Computing and Data Technologies, Volume 6: Advanced Brain Imaging Techniques and Volume 7: Neural Science Ethics.
Volume 3 provides a comprehensive review of diagnostic imaging systems and technologies, including brain tumor characterization and classification techniques, tumor segmentation using AI and deep neural networks, dynamic brain imaging analysis, and functional brain imaging. The authors discuss existing challenges in the domain of diagnostic imaging systems and suggest possible research directions.
- Presents Neural Engineering techniques applied to diagnostic imaging systems, brain tumor characterization, brain tumor classification, tumor segmentation, dynamic brain imaging, and functional brain imaging.
- Covers neural imaging data analysis, including brain tumor classification with Deep Learning, segmentation using MRI with Deep Neural Networks, and Machine Learning algorithms for identifying risks of complications.
- Written by engineers to help engineers, computer scientists, researchers, and clinicians understand the technology and applications of signal processing.
Preț: 841.17 lei
Preț vechi: 1051.46 lei
-20% Precomandă
Puncte Express: 1262
Preț estimativ în valută:
148.85€ • 174.54$ • 130.72£
148.85€ • 174.54$ • 130.72£
Carte nepublicată încă
Doresc să fiu notificat când acest titlu va fi disponibil:
Se trimite...
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9780323954419
ISBN-10: 0323954413
Pagini: 420
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
Seria Advances in Neural Engineering
ISBN-10: 0323954413
Pagini: 420
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
Seria Advances in Neural Engineering
Cuprins
1. Artificial Intelligence in Diagnostic Imaging for Modern Medicine
2. Yolo-Based Detection and Segmentation: Advancing Real-Time AI in Medical Imaging
3. Breast Cancer Prediction using Image Processing on Big Data: An Empirical Study for Sustainable Health in 21st Century Lifestyle
4. Segmentation and Classification Techniques using AI and their State-of-the-art for the Human Brain Magnetic Resonance Images (MRI)
5. Efficient Artificial Intelligence Techniques for Brain Tumor Classification: Comprehensive Review and Analysis
6. A Novel Cell Nuclei Semantic Segmentation Network for Childhood Medulloblastoma Histopathological Images
7. Exploring AI Innovations for Enhanced Brain Tumor Imaging and Diagnosis
8. Radioengineering Approach for Brain Activity Restoration after Trauma
9. Comparative Analysis of Fast Fuzzy C-Means and Kernel Fuzzy C-Means Algorithms for 3D Brain Tumor Segmentation on the BraTS MICCAI 2021 Dataset
10. SwinUNet Plus: An Adaptive Hierarchical Attention Network for Endoscopic Image Segmentation
11. A YOLO-Based Model for Brain Tumor Detection in Magnetic Resonance Imaging Scans
12. ECG Classification Based CNN Neural Network Models for Arrhythmia Detection
13. Classification of Brain Tumors using AI and Radiomics Techniques
2. Yolo-Based Detection and Segmentation: Advancing Real-Time AI in Medical Imaging
3. Breast Cancer Prediction using Image Processing on Big Data: An Empirical Study for Sustainable Health in 21st Century Lifestyle
4. Segmentation and Classification Techniques using AI and their State-of-the-art for the Human Brain Magnetic Resonance Images (MRI)
5. Efficient Artificial Intelligence Techniques for Brain Tumor Classification: Comprehensive Review and Analysis
6. A Novel Cell Nuclei Semantic Segmentation Network for Childhood Medulloblastoma Histopathological Images
7. Exploring AI Innovations for Enhanced Brain Tumor Imaging and Diagnosis
8. Radioengineering Approach for Brain Activity Restoration after Trauma
9. Comparative Analysis of Fast Fuzzy C-Means and Kernel Fuzzy C-Means Algorithms for 3D Brain Tumor Segmentation on the BraTS MICCAI 2021 Dataset
10. SwinUNet Plus: An Adaptive Hierarchical Attention Network for Endoscopic Image Segmentation
11. A YOLO-Based Model for Brain Tumor Detection in Magnetic Resonance Imaging Scans
12. ECG Classification Based CNN Neural Network Models for Arrhythmia Detection
13. Classification of Brain Tumors using AI and Radiomics Techniques