Regression Is All You Need for Medical Image Translation.

Sebastian Rassmann, David Kugler, Christian Ewert, Martin Reuter
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Abstract

While Generative Adversarial Nets (GANs) and Diffusion Models (DMs) have achieved impressive results in natural image synthesis, their core strengths - creativity and realism - can be detrimental in medical applications, where accuracy and fidelity are paramount. These models instead risk introducing hallucinations and replication of unwanted acquisition noise. Here, we propose YODA (You Only Denoise once - or Average), a 2.5D diffusion-based framework for medical image translation (MIT). Consistent with DM theory, we find that conventional diffusion sampling stochastically replicates noise. To mitigate this, we draw and average multiple samples, akin to physical signal averaging. As this effectively approximates the DM's expected value, we term this Expectation-Approximation (ExpA) sampling. We additionally propose regression sampling YODA, which retains the initial DM prediction and omits iterative refinement to produce noise-free images in a single step. Across five diverse multi-modal datasets - including multi-contrast brain MRI and pelvic MRI-CT - we demonstrate that regression sampling is not only substantially more efficient but also matches or exceeds image quality of full diffusion sampling even with ExpA. Our results reveal that iterative refinement solely enhances perceptual realism without benefiting information translation, which we confirm in relevant downstream tasks. YODA outperforms eight state-of-the-art DMs and GANs and challenges the presumed superiority of DMs and GANs over computationally cheap regression models for high-quality MIT. Furthermore, we show that YODA-translated images are interchangeable with, or even superior to, physical acquisitions for several medical applications.

回归是所有你需要的医学图像翻译。
虽然生成对抗网络(gan)和扩散模型(dm)在自然图像合成方面取得了令人印象深刻的成果,但它们的核心优势——创造力和真实感——在准确性和保真度至关重要的医疗应用中可能是有害的。相反,这些模型冒着引入幻觉和复制不必要的获取噪音的风险。在这里,我们提出了YODA(你只去噪一次或平均),一个基于2.5D扩散的医学图像翻译框架(MIT)。与DM理论一致,我们发现传统的扩散采样随机地复制了噪声。为了减轻这种情况,我们绘制并平均多个样本,类似于物理信号平均。由于这有效地近似DM的期望值,我们称之为期望-近似(ExpA)抽样。我们还提出了回归采样YODA,它保留了初始DM预测并省略了迭代改进,从而在单步中产生无噪声图像。通过五种不同的多模态数据集(包括多对比脑MRI和骨盆MRI- ct),我们证明回归采样不仅更有效,而且即使使用ExpA也可以匹配或超过完全扩散采样的图像质量。我们的研究结果表明,迭代细化只增强了感知真实感,而对信息翻译没有好处,我们在相关的下游任务中证实了这一点。YODA超越了8个最先进的dm和gan,并挑战了dm和gan相对于高质量MIT计算成本低廉的回归模型的假定优势。此外,我们证明了yoda翻译的图像与几种医学应用的物理采集可以互换,甚至优于物理采集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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