This book offers a comprehensive study of medical image processing, with an emphasis on methods to enhance the accuracy and readability of medical images for diagnosis and therapy. Its main goals are to improve the visual clarity of images by sharpening details, lowering noise, and altering contrast to better visualize subtle elements. Also, it guarantees that anatomical features are accurately represented by correcting distortions, artefacts, and defects resulting from capture or transmission. Reconstruction is the main topic, including how to mix data from different modalities (such as CT and MRI) to build a more complete perspective or recreate missing or incomplete data from fragmented images. This book covers a wide range of topics, including deep learning methodologies, image processing methods, clinical applications, evaluation, and validation. The goal of the book is to provide readers a thorough understanding of medical image processing methods for enhancing, restoring, and reconstructing medical images. It describes the different algorithms theoretical foundations and real-world applications. It highlights the practical uses and promise of these methods for enhancing medical diagnosis and care.
Introduction to Medical Image Denoising, Enhancement, and
Reconstruction.- CT, MRI, PET Image Enhancement using Image Fusion Strategy.-
Principles, Practices, and Emerging Trends in Modern Image Reconstruction.-
Transforming Healthcare with AI An Introduction to Machine Learning and Deep
Learning Techniques.- Ai And Deep Learning In Medical Imaging: Reforming
Diagnosis And Treatment.- A Summary of Recent Progress in Multimodal Medical
Image Fusion Methods for Improved Diagnosis.- In depth Analysis of CT Image,
Noise, Non traditional Denoising Techniques, and its Evaluation Metrics.-
Comparative Analysis of Transform Based Denoising Techniques for CT
Imaging.-Pneumonia Classification from Chest X-Ray Images Using K Fold CNN
Approach.- AY Net Attention Y Net based Dehazing in Laparoscopic Surgery.- Ml
Driven Approach For Classification Analysis Of Diabetic Retinopathy Using
Medical Imaging Application.- Computational Detection Of Diabetic Retinal Dot
Blot Hemorrhage Using Medical Imaging Approach With Deep Neural
Networks.-Multiple Sclerosis Diagnosis using Deep Learning Techniques Study
of Brain MRI Images.- Advanced Diagnostic Technologies and Analytical Models
for Enhanced COVID 19 Management A Multi Scale Approach to Early Detection,
Severity Classification, and Long Term Risk Assessment.- Ai Aided Detection
And Classification Of Auricular Deformities In New Borns.- YOLOv10 for
Enhanced Trypanosome Detection.-Revolutionizing Breast Cancer Management
Education, Motivational Support and Detection Using Deep Learning
Algorithms.- Semi Supervised Image Segmentation Techniques for Medical Image
Analysis.- Advancing Fetal Health Prediction A Review of CTG Based
Classification, MRI Segmentation, and Abnormality Detection.- Fracture
Detection in X ray Images using Deep Supervised Learning.- Challenges Issues
on low quality images in Cancer Detection within Medical Imaging System and
Image Enhancement using Multi focus Image Fusion Techniques.- Advantages,
Drawbacks, Emerging Research Challenges and Future Scope in Medical Image
Enhancement, Restoration, Reconstruction.