Spot the fake lungs: Generating Synthetic Medical Images using Neural Diffusion Models

Hazrat Ali, Shafaq Murad, Zubair Shah
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引用次数: 22

Abstract

Generative models are becoming popular for the synthesis of medical images. Recently, neural diffusion models have demonstrated the potential to generate photo-realistic images of objects. However, their potential to generate medical images is not explored yet. In this work, we explore the possibilities of synthesis of medical images using neural diffusion models. First, we use a pre-trained DALLE2 model to generate lungs X-Ray and CT images from an input text prompt. Second, we train a stable diffusion model with 3165 X-Ray images and generate synthetic images. We evaluate the synthetic image data through a qualitative analysis where two independent radiologists label randomly chosen samples from the generated data as real, fake, or unsure. Results demonstrate that images generated with the diffusion model can translate characteristics that are otherwise very specific to certain medical conditions in chest X-Ray or CT images. Careful tuning of the model can be very promising. To the best of our knowledge, this is the first attempt to generate lungs X-Ray and CT images using neural diffusion models. This work aims to introduce a new dimension in artificial intelligence for medical imaging. Given that this is a new topic, the paper will serve as an introduction and motivation for the research community to explore the potential of diffusion models for medical image synthesis. We have released the synthetic images on https://www.kaggle.com/datasets/hazrat/awesomelungs.
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发现假肺:使用神经扩散模型生成合成医学图像
生成模型在医学图像合成中越来越受欢迎。最近,神经扩散模型已经展示了生成逼真物体图像的潜力。然而,它们在生成医学图像方面的潜力尚未得到探索。在这项工作中,我们探索了使用神经扩散模型合成医学图像的可能性。首先,我们使用预训练的DALLE2模型从输入文本提示生成肺部x射线和CT图像。其次,我们用3165张x射线图像训练一个稳定的扩散模型,并生成合成图像。我们通过定性分析来评估合成图像数据,其中两个独立的放射科医生将从生成的数据中随机选择的样本标记为真实,虚假或不确定。结果表明,扩散模型生成的图像可以转化胸片或CT图像中某些特定医疗条件的特征。仔细地调整模型是非常有希望的。据我们所知,这是第一次尝试使用神经扩散模型生成肺部x射线和CT图像。这项工作旨在为医学成像引入人工智能的新维度。鉴于这是一个新课题,本文将作为一个介绍和激励研究界探索扩散模型在医学图像合成中的潜力。我们已经在https://www.kaggle.com/datasets/hazrat/awesomelungs上发布了合成图像。
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Brain Tumor Synthetic Data Generation with Adaptive StyleGANs Unimodal and Multimodal Representation Training for Relation Extraction A Transformer Architecture for Online Gesture Recognition of Mathematical Expressions Spot the fake lungs: Generating Synthetic Medical Images using Neural Diffusion Models A Self-attention Guided Multi-scale Gradient GAN for Diversified X-ray Image Synthesis
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