医学图像生成的新篇章:稳定扩散法

Loc X. Nguyen, P. Aung, H. Q. Le, Seong-Bae Park, C. Hong
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引用次数: 5

摘要

数据收集和共享已被广泛接受,并被用于提高几乎每个领域的深度学习模型的性能。然而,在医疗领域,共享患者数据可能会引发几个关键问题,例如隐私和安全,甚至法律问题。为了克服这些挑战,人们提出了合成医学图像;这些合成图像是通过学习真实医学图像的分布而生成的,但与它们完全不同,以便在不同的医疗机构之间共享和使用。目前,扩散模型(DM)因其具有生成逼真和高分辨率图像的潜力而受到广泛关注,特别是在许多应用中优于生成对抗网络(gan)。DM定义了各种计算机视觉任务的最新技术,如图像绘制、类条件图像合成等。但扩散模型体积大,耗时耗力大。为此,本文提出了一种轻量级DM来综合医学图像;我们使用计算机断层扫描(CT)扫描的SARS-CoV-2 (Covid-19)作为训练数据集。然后,我们进行了大量的仿真,以展示所提出的扩散模型在医学图像生成中的性能,然后我们解释了模型的关键组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Chapter for Medical Image Generation: The Stable Diffusion Method
Data collecting and sharing have been widely accepted and adopted to improve the performance of deep learning models in almost every field. Nevertheless, in the medical field, sharing the data of patients can raise several critical issues, such as privacy and security or even legal issues. Synthetic medical images have been proposed to overcome such challenges; these synthetic images are generated by learning the distribution of realistic medical images but completely different from them so that they can be shared and used across different medical institutions. Currently, the diffusion model (DM) has gained lots of attention due to its potential to generate realistic and high-resolution images, particularly outperforming generative adversarial networks (GANs) in many applications. The DM defines state of the art for various computer vision tasks such as image inpainting, class-conditional image synthesis, and others. However, the diffusion model is time and power consumption due to its large size. Therefore, this paper proposes a lightweight DM to synthesize the medical image; we use computer tomography (CT) scans for SARS-CoV-2 (Covid-19) as the training dataset. Then we do extensive simulations to show the performance of the proposed diffusion model in medical image generation, and then we explain the key component of the model.
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