稳定扩散法合成COVID-19肺炎胸片型。

Zhaohui Liang, Zhiyun Xue, Sivaramakrishnan Rajaraman, Sameer Antani
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引用次数: 0

摘要

在这项研究中,我们对一个稳定的扩散模型进行了微调,使用类别特异性先验保存策略合成了由COVID-19肺炎引起的双侧肺水肿的高分辨率胸部x线图像(512×512)。从MIDRC数据集中选择300张正面图像作为主题实例,另外400张负面图像用于类别先验保存。我们分别用新技术和传统技术合成图像进行比较。采用先验保存技术对稳定扩散进行微调的合成图像与真实阳性图像的Frechet初始距离(FID)为9.2158,核初始距离(KID)为0.0818,优于WGAN和DDIM等传统方法合成的图像。利用训练好的视觉转换器(ViT)对合成阳性图像和真实阴性图像进行分类,分类准确率为0.9975,精密度为1.0,召回率为0.9950。研究结果表明,该稳定扩散模型能够以少量真实图像为主体实例,以文本提示为指定模式的指导,采用先验保存策略合成高质量、高分辨率的胸部x线图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COVID-19 PNEUMONIA CHEST X-RAY PATTERN SYNTHESIS BY STABLE DIFFUSION.

In this study, we fine-tuned a stable diffusion model to synthesize high resolution chest X-ray images (512×512) with bilateral lung edema caused by COVID-19 pneumonia using the class-specific prior preservation strategy. 300 positive images were selected from the MIDRC dataset as subject instances with an additional 400 negative images for class prior preservation. We synthesized images respectively using the new technique and the conventional technique for comparison. The synthetic images by the stable diffusion fine-tuned by the prior preservation technique have the Frechet inception distance (FID) of 9.2158 and kernel inception distance (KID) 0.0818 computed with the real positive images, which is superior to the synthetic images using the conventional methods such as WGAN and DDIM. The classification accuracy is 0.9975 with precision of 1.0 and recall of 0.9950 when the synthetic positive images with the real negative images were classified by a trained vision transformer (ViT). We conclude that the stable diffusion model can synthesize high-quality and high-resolution chest x-ray images using the prior preservation strategy with a small number of real images as subject instances and text prompt as guidance for the designated patterns.

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