GANs for Data Augmentation in Healthcare

GANs for Data Augmentation in Healthcare

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  • 製本 Paperback:紙装版/ペーパーバック版/ページ数 251 p.
  • 言語 ENG
  • 商品コード 9783031432071

Full Description

Computer-Assisted Diagnostics (CAD) using Convolutional Neural Network (CNN) model has become an important technology in the medical industry, improving the accuracy of diagnostics. However, the lack Magnetic Resonance Imaging (MRI) data leads to the failure of the depth study algorithm. Medical records are often different because of the cost of obtaining information and the time spent consuming the information. In general, clinical data is unreliable and therefore the training of neural network methods to distribute disease across classes does not yield the desired results. Data augmentation is often done by training data to solve problems caused by augmentation tasks such as scaling, cropping, flipping, padding, rotation, translation, affine transformation, and color augmentation techniques such as brightness, contrast, saturation, and hue.

Data Augmentation and Segmentation imaging using GAN can be used to provide clear images of brain, liver, chest, abdomen, and liver on an MRI. In addition, GAN shows strong promise in the field of clinical image synthesis. In many cases, clinical evaluation is limited by a lack of data and/or the cost of actual information. GAN can overcome these problems by enabling scientists and clinicians to work on beautiful and realistic images. This can improve diagnosis, prognosis, and disease. Finally, GAN highlights the potential for location of patient information within the data. This is a beneficial clinical application of GAN because it can effectivelyprotect patient confidentiality. This book covers the application of GANs on medical imaging augmentation and segmentation.

Contents

Chapter. 1. Role of Machine learning in Detection and Classification of Leukemia: A Comparative Analysis.- Chapter. 2. A Review on Mode Collapse Reducing GANs with GAN's Algorithm and Theory.- Chapter. 3. Medical Image Synthesis using Generative Adversarial Networks.- Chapter. 4. Chest X-ray data augmentation with Generative Adversarial Networks for pneumonia and COVID diagnosis.- Chapter. 5. State of the Art Framework based Detection of GAN Generated Face Images.- Chapter. 6. Data Augmentation in Classifying Chest Radiograph Images (CXR) using DCGAN-CNN.- Chapter. 7. Data Augmentation Approaches Using Cycle Consistent Adversarial Networks.- Chapter. 8. Geometric Transformations-based Medical Image Augmentation.- Chapter. 9. Generative Adversarial Learning for Medical Thermal Imaging Analysis.- Chapter. 10. Improving Performance of a Brain Tumor Detection on MRI Images using DCGAN-based Data Augmentation and Vision Transformer(ViT) Approach.- Chapter. 11. Combining Super-Resolution GAN and DC GAN for Enhancing Medical Image Generation: A Study on Improving CNN Model Performance.- Chapter. 12. GAN for Augmenting Cardiac MRI Segmentation.- Chapter. 13. WGAN for Data Augmentation.- Chapter. 14. Image Segmentation in Medical Images by Using Semi - Supervised Methods.

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