基于GAN的可控医学图像生成。

Zhihang Ren, Stella X Yu, David Whitney
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引用次数: 6

摘要

医学图像数据对一系列学科至关重要,包括医学图像感知研究、临床医生培训计划和计算机视觉算法,以及许多其他应用。不幸的是,真实的医学图像数据对于许多这些用途来说相对稀缺。正因为如此,研究人员经常在附近的医院收集自己的数据,这限制了数据和发现的普遍性。此外,即使有更大的数据集可用,它们的用途也有限,因为需要进行必要的数据处理程序,如去识别、标记和分类,这需要大量的时间和精力。因此,在一些应用中,包括医学图像感知的行为实验中,研究人员使用了幼稚的人工医学图像(例如,不真实的形状或纹理)。这些人工医学图像易于生成和操作,但缺乏真实性不可避免地引发了对研究在临床实践中的适用性的质疑。近年来,随着生成对抗网络(GAN)技术的发展,可以生成高质量的真实图像。在本文中,我们建议使用GAN来生成真实的医学图像,用于医学成像研究。我们还采用了一种可控的方法来操纵生成的图像属性,使这些图像可以满足任何任意的实验目标、任务或刺激设置。我们已经在各种医学图像模式上测试了所提出的方法,包括乳房x光片、MRI、CT和皮肤癌图像。生成的真实医学图像验证了该方法的成功。该模型和生成的图像可用于任何医学图像感知研究。
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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Controllable Medical Image Generation via GAN.

Medical image data is critically important for a range of disciplines, including medical image perception research, clinician training programs, and computer vision algorithms, among many other applications. Authentic medical image data, unfortunately, is relatively scarce for many of these uses. Because of this, researchers often collect their own data in nearby hospitals, which limits the generalizabilty of the data and findings. Moreover, even when larger datasets become available, they are of limited use because of the necessary data processing procedures such as de-identification, labeling, and categorizing, which requires significant time and effort. Thus, in some applications, including behavioral experiments on medical image perception, researchers have used naive artificial medical images (e.g., shapes or textures that are not realistic). These artificial medical images are easy to generate and manipulate, but the lack of authenticity inevitably raises questions about the applicability of the research to clinical practice. Recently, with the great progress in Generative Adversarial Networks (GAN), authentic images can be generated with high quality. In this paper, we propose to use GAN to generate authentic medical images for medical imaging studies. We also adopt a controllable method to manipulate the generated image attributes such that these images can satisfy any arbitrary experimenter goals, tasks, or stimulus settings. We have tested the proposed method on various medical image modalities, including mammogram, MRI, CT, and skin cancer images. The generated authentic medical images verify the success of the proposed method. The model and generated images could be employed in any medical image perception research.

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