Cutting-edge Computational Intelligence in Healthcare with Convolution and Kronecker Convolution-based Approaches
Editat de Allam Jaya Prakash, Kiran Kumar Patro, Pawel Plawiaken Limba Engleză Paperback – 27 ian 2026
- Investigates opportunities and challenges of deep learning, including convolutional neural networks (CNNs) and their applications in medical image processing
- Includes comprehensive examination and elucidation of Kronecker convolutional procedures and their significance in medical image processing
- Explores specific medical imaging tasks where Kronecker convolutions prove beneficial
- Provides detailed examples demonstrating how convolutions may be employed to improve healthcare, offering insights into how deep learning is currently being used in clinical settings
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Specificații
ISBN-13: 9780443330827
ISBN-10: 0443330824
Pagini: 320
Dimensiuni: 216 x 276 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443330824
Pagini: 320
Dimensiuni: 216 x 276 mm
Editura: ELSEVIER SCIENCE
Cuprins
Section 1: Foundational concepts
1 Introduction to deep learning in medical imaging
2 Fundamentals of convolutional neural networksSection 2: Advanced techniques in deep learning with kronecker convolutions
3 Kronecker convolutions ensemble vision transformer and 3D kronecker U-net for volumetric segmentation of kidney stones, cysts and tumor from CT scans
4 Image processing techniques in healthcare for early detection of heart diseasesSection 3: Applications in medical imaging
5 Automated atypical teratoid /rhabdoid tumor detection in magnetic resonance imaging using deep learning
6 Ischemic stroke lesion segmentation using multiscale processing and knowledge distillation through intra-domain teacher
7 Disease classification through advanced neural networksSection 4: Real-world implementation
8 GAT-Net: ghost attention network for classification of gait-based neurodegenerative diseases
9 Artificial intelligence-enhanced diagnostics: deep learning in medical imaging
10 Precision medicine through imaging analytics: Kronecker convolutions in tumor detection
11 Diagnosis of schizophrenia using convolutional neural networks based on multichannel electroencephalography signal
12 Detection of anomalies in physiological signals using artificial neural network
13 Advancements in electrocardiography-based detection of obstructive sleep apnea: a deep learning approach
14 Machine learning-based life expectancy post chest surgerySection 5: Future directions and conclusion
15 Challenges and future directions in medical image analysis
1 Introduction to deep learning in medical imaging
2 Fundamentals of convolutional neural networksSection 2: Advanced techniques in deep learning with kronecker convolutions
3 Kronecker convolutions ensemble vision transformer and 3D kronecker U-net for volumetric segmentation of kidney stones, cysts and tumor from CT scans
4 Image processing techniques in healthcare for early detection of heart diseasesSection 3: Applications in medical imaging
5 Automated atypical teratoid /rhabdoid tumor detection in magnetic resonance imaging using deep learning
6 Ischemic stroke lesion segmentation using multiscale processing and knowledge distillation through intra-domain teacher
7 Disease classification through advanced neural networksSection 4: Real-world implementation
8 GAT-Net: ghost attention network for classification of gait-based neurodegenerative diseases
9 Artificial intelligence-enhanced diagnostics: deep learning in medical imaging
10 Precision medicine through imaging analytics: Kronecker convolutions in tumor detection
11 Diagnosis of schizophrenia using convolutional neural networks based on multichannel electroencephalography signal
12 Detection of anomalies in physiological signals using artificial neural network
13 Advancements in electrocardiography-based detection of obstructive sleep apnea: a deep learning approach
14 Machine learning-based life expectancy post chest surgerySection 5: Future directions and conclusion
15 Challenges and future directions in medical image analysis