Synthetic Vertebral Column Fracture Image Generation by Deep Convolution Generative Adversarial Networks

Sindhura D N, R. Pai, Shyamasunder N. Bhat, M. M
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Abstract

In the field of medical imaging, the challenging objective is to generate synthetic, realistic images which resembles the original images. The generated synthetic images would enhance the accuracy of the computer-assisted classification, Decision Support System, which aid the doctor in diagnosis of diseases. The Generative Adversarial Networks (GANs), is a method of data augmentation which can be used to generate synthetic realistic looking images, however low quality images are generated. For AI models, it is challenging tasks to do classification using this low quality images. In this work, generation of high quality synthetic medical image using Deep Convolutional Generative Adversarial Networks (DCGANs) is presented. Data augmentation method by DCGANs is illustrated on the limited dataset of CT (Computed Tomography) images of vertebral column fracture. A total of 340 CT scan images were taken for the study, which comprises of complete burst fracture scans of vertebral column. The evaluation of the generated images was done with Visual Turing Test.
基于深度卷积生成对抗网络的合成脊柱骨折图像生成
在医学成像领域,具有挑战性的目标是生成与原始图像相似的合成的、逼真的图像。生成的合成图像将提高计算机辅助分类决策支持系统的准确性,从而帮助医生诊断疾病。生成对抗网络(GANs)是一种数据增强方法,可用于生成合成的逼真图像,但生成的图像质量较低。对于人工智能模型来说,使用这种低质量的图像进行分类是一项具有挑战性的任务。在这项工作中,提出了使用深度卷积生成对抗网络(dcgan)生成高质量的合成医学图像。在有限的脊柱骨折CT图像数据集上,阐述了dcgan的数据增强方法。本研究共拍摄了340张CT扫描图像,其中包括脊柱爆裂骨折的完整扫描。使用视觉图灵测试对生成的图像进行评估。
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