基于生成对抗网络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

放射科医生和病理学家经常做出非常重要的感性决定。例如,视觉搜索肿瘤并识别它是否是恶性肿瘤可以对患者产生改变生活的影响。不幸的是,所有的人类感知者——甚至放射科医生——都有感知偏差。因为在可预见的未来,人类感知者(医生)将成为肿瘤是否恶性的最终判断者,理解和减轻人类感知偏见是很重要的。虽然已经有关于医学图像感知任务中的感知偏差的研究,但这些研究中使用的刺激是高度人为的,并且经常受到批评。现实刺激没有被使用,因为在心理物理实验中不可能产生或控制它们。在这里,我们建议使用生成对抗网络(GAN)来创建生动逼真的医学图像刺激,可用于医学图像感知的心理物理和计算机视觉研究。我们的模型可以以可控的方式产生具有特定形状和逼真纹理的肿瘤样刺激。各种实验表明我们的gan产生的刺激的真实性和我们的模型的可控性。
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Controllable Medical Image Generation via Generative Adversarial Networks.

Radiologists and pathologists frequently make highly consequential perceptual decisions. For example, visually searching for a tumor and recognizing whether it is malignant can have a life-changing impact on a patient. Unfortunately, all human perceivers-even radiologists-have perceptual biases. Because human perceivers (medical doctors) will, for the foreseeable future, be the final judges of whether a tumor is malignant, understanding and mitigating human perceptual biases is important. While there has been research on perceptual biases in medical image perception tasks, the stimuli used for these studies were highly artificial and often critiqued. Realistic stimuli have not been used because it has not been possible to generate or control them for psychophysical experiments. Here, we propose to use Generative Adversarial Networks (GAN) to create vivid and realistic medical image stimuli that can be used in psychophysical and computer vision studies of medical image perception. Our model can generate tumor-like stimuli with specified shapes and realistic textures in a controlled manner. Various experiments showed the authenticity of our GAN-generated stimuli and the controllability of our model.

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