评估医学成像中的生成模型。

Liyue Fan, Ashley Bang, Luca Bonomi
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引用次数: 0

摘要

数据合成可以解决生物医学信息学中重要的数据可用性挑战。对生成模型进行定量评估有助于了解它们在生物医学数据合成中的应用。这篇海报论文研究了医学成像中使用的最先进的生成模型,如 StyleGAN 和 DDPM 模型,并评估了它们在学习数据流形和生成样本的可见特征方面的性能。结果表明,根据所研究的指标,现有的生成模型还有很多需要改进的地方。
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Evaluating Generative Models in Medical Imaging.

Data synthesis can address important data availability challenges in biomedical informatics. Quantitative evaluation of generative models may help understand their applications to synthesizing biomedical data. This poster paper examines state-of-the-art generative models used in medical imaging, such as StyleGAN and DDPM models, and evaluates their performance in learning data manifolds and in the visible features of generated samples. Results show that existing generative models have much to improve based on the studied measures.

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