Synthetic Brain Images: Bridging the Gap in Brain Mapping With Generative Adversarial Model

Drici Mourad, Kazeem Oluwakemi Oseni
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Abstract

Magnetic Resonance Imaging (MRI) is a vital modality for gaining precise anatomical information, and it plays a significant role in medical imaging for diagnosis and therapy planning. Image synthesis problems have seen a revolution in recent years due to the introduction of deep learning techniques, specifically Generative Adversarial Networks (GANs). This work investigates the use of Deep Convolutional Generative Adversarial Networks (DCGAN) for producing high-fidelity and realistic MRI image slices. The suggested approach uses a dataset with a variety of brain MRI scans to train a DCGAN architecture. While the discriminator network discerns between created and real slices, the generator network learns to synthesise realistic MRI image slices. The generator refines its capacity to generate slices that closely mimic real MRI data through an adversarial training approach. The outcomes demonstrate that the DCGAN promise for a range of uses in medical imaging research, since they show that it can effectively produce MRI image slices if we train them for a consequent number of epochs. This work adds to the expanding corpus of research on the application of deep learning techniques for medical image synthesis. The slices that are could be produced possess the capability to enhance datasets, provide data augmentation in the training of deep learning models, as well as a number of functions are made available to make MRI data cleaning easier, and a three ready to use and clean dataset on the major anatomical plans.
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合成大脑图像:利用生成对抗模型缩小脑图谱的差距
磁共振成像(MRI)是获取精确解剖信息的重要方式,在医学影像诊断和治疗计划中发挥着重要作用。近年来,由于引入了深度学习技术,特别是生成对抗网络(GANs),图像合成问题迎来了一场革命。这项工作研究了如何使用深度卷积生成对抗网络(DCGAN)生成高保真、逼真的磁共振成像切片。建议的方法使用包含各种脑部 MRI 扫描的数据集来训练 DCGAN 架构。当鉴别器网络辨别创建的切片和真实切片时,生成器网络学习合成逼真的磁共振成像切片。生成器通过对抗性训练方法提高生成切片的能力,使其与真实核磁共振成像数据非常接近。研究结果表明,如果我们对 DCGAN 进行一定数量的历时训练,它就能有效生成核磁共振成像切片,因此 DCGAN 有望在医学影像研究中得到广泛应用。这项研究为深度学习技术在医学影像合成中的应用这一不断扩大的研究领域增添了新的内容。可以生成的切片具有增强数据集的能力,为深度学习模型的训练提供了数据增强功能,同时还提供了一些功能,使核磁共振成像数据清洗变得更容易,并提供了三个可随时使用的、关于主要解剖计划的清洗数据集。
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