Deepfake Image Generation for Improved Brain Tumor Segmentation

Roa'a Al-Emaryeen, Sara Al-Nahhas, Fatima Himour, W. Mahafza, O. Al-Kadi
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引用次数: 0

Abstract

As the world progresses in technology and health, awareness of disease by revealing asymptomatic signs improves. It is important to detect and treat tumors in early stage as it can be life-threatening. Computer-aided technologies are used to overcome lingering limitations facing disease diagnosis, while brain tumor segmentation remains a difficult process, especially when multi-modality data is involved. This is mainly attributed to ineffective training due to lack of data and corresponding labelling. This work investigates the feasibility of employing deep-fake image generation for effective brain tumor segmentation. To this end, a Generative Adversarial Network was used for image-to-image translation for increasing dataset size, followed by image segmentation using a U-Net-based convolutional neural network trained with deepfake images. Performance of the proposed approach is compared with ground truth of four publicly available datasets. Results show improved performance in terms of image segmentation quality metrics, and could potentially assist when training with limited data.
用于改进脑肿瘤分割的深度假图像生成
随着世界在技术和健康方面的进步,通过发现无症状症状来提高对疾病的认识。早期发现和治疗肿瘤非常重要,因为它可能危及生命。计算机辅助技术用于克服疾病诊断面临的局限性,而脑肿瘤分割仍然是一个困难的过程,特别是涉及多模态数据时。这主要是由于缺乏数据和相应的标签导致培训无效。本文研究了利用深度假图像生成技术进行脑肿瘤有效分割的可行性。为此,生成对抗网络用于图像到图像的转换,以增加数据集大小,然后使用基于u - net的卷积神经网络进行图像分割,并使用deepfake图像进行训练。将该方法的性能与四个公开可用数据集的真实值进行了比较。结果显示,在图像分割质量指标方面的性能有所提高,并且可能有助于使用有限的数据进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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