Abdominal MRI Unconditional Synthesis with Medical Assessment

Bernardo Gonçalves, Mariana Silva, Luísa Vieira, Pedro Vieira
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Abstract

Current computer vision models require a significant amount of annotated data to improve their performance in a particular task. However, obtaining the required annotated data is challenging, especially in medicine. Hence, data augmentation techniques play a crucial role. In recent years, generative models have been used to create artificial medical images, which have shown promising results. This study aimed to use a state-of-the-art generative model, StyleGAN3, to generate realistic synthetic abdominal magnetic resonance images. These images will be evaluated using quantitative metrics and qualitative assessments by medical professionals. For this purpose, an abdominal MRI dataset acquired at Garcia da Horta Hospital in Almada, Portugal, was used. A subset containing only axial gadolinium-enhanced slices was used to train the model. The obtained Fréchet inception distance value (12.89) aligned with the state of the art, and a medical expert confirmed the significant realism and quality of the images. However, specific issues were identified in the generated images, such as texture variations, visual artefacts and anatomical inconsistencies. Despite these, this work demonstrated that StyleGAN3 is a viable solution to synthesise realistic medical imaging data, particularly in abdominal imaging.
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腹部 MRI 无条件合成与医学评估
当前的计算机视觉模型需要大量的注释数据来提高其在特定任务中的性能。然而,获取所需的注释数据具有挑战性,尤其是在医学领域。因此,数据增强技术发挥着至关重要的作用。近年来,生成模型已被用于创建人工医学图像,并取得了可喜的成果。本研究旨在使用最先进的生成模型 StyleGAN3 生成逼真的合成腹部磁共振图像。这些图像将通过定量指标和医学专业人员的定性评估进行评估。为此,我们使用了葡萄牙阿尔马达 Garcia da Horta 医院获得的腹部磁共振成像数据集。该数据集仅包含轴向钆增强切片,用于训练模型。所获得的弗雷谢内距值(12.89)与目前的技术水平相符,一位医学专家也证实了图像的逼真度和质量。不过,在生成的图像中也发现了一些具体问题,如纹理变化、视觉伪影和解剖不一致。尽管如此,这项工作还是证明了 StyleGAN3 是合成逼真医学成像数据的可行解决方案,尤其是在腹部成像方面。
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