A diffusion model for universal medical image enhancement.

IF 5.4 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Ben Fei, Yixuan Li, Weidong Yang, Hengjun Gao, Jingyi Xu, Lipeng Ma, Yatian Yang, Pinghong Zhou
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Abstract

Background: The development of medical imaging techniques has made a significant contribution to clinical decision-making. However, the existence of suboptimal imaging quality, as indicated by irregular illumination or imbalanced intensity, presents significant obstacles in automating disease screening, analysis, and diagnosis. Existing approaches for natural image enhancement are mostly trained with numerous paired images, presenting challenges in data collection and training costs, all while lacking the ability to generalize effectively.

Methods: Here, we introduce a pioneering training-free Diffusion Model for Universal Medical Image Enhancement, named UniMIE. UniMIE demonstrates its unsupervised enhancement capabilities across various medical image modalities without the need for any fine-tuning. It accomplishes this by relying solely on a single pre-trained model from ImageNet.

Results: We conduct a comprehensive evaluation on 13 imaging modalities and over 15 medical types, demonstrating better qualities, robustness, and accuracy than other modality-specific and data-inefficient models. By delivering high-quality enhancement and corresponding accuracy downstream tasks across a wide range of tasks, UniMIE exhibits considerable potential to accelerate the advancement of diagnostic tools and customized treatment plans.

Conclusions: UniMIE represents a transformative approach to medical image enhancement, offering a versatile and robust solution that adapts to diverse imaging conditions. By improving image quality and facilitating better downstream analyses, UniMIE has the potential to revolutionize clinical workflows and enhance diagnostic accuracy across a wide range of medical applications.

一种通用医学图像增强的扩散模型。
背景:医学影像技术的发展为临床决策做出了重要贡献。然而,不理想的成像质量的存在,如不规则的照明或不平衡的强度,给自动化疾病筛查、分析和诊断带来了重大障碍。现有的自然图像增强方法大多是使用大量成对图像进行训练,这在数据收集和训练成本方面存在挑战,同时缺乏有效泛化的能力。方法:在这里,我们引入了一个开创性的用于通用医学图像增强的无训练扩散模型,称为UniMIE。UniMIE展示了其跨各种医学图像模式的无监督增强功能,而无需任何微调。它通过完全依赖来自ImageNet的单个预训练模型来实现这一点。结果:我们对13种成像模式和超过15种医学类型进行了综合评估,显示出比其他特定模式和数据效率低下的模型更好的质量,稳健性和准确性。通过在广泛的任务范围内提供高质量的增强和相应的准确性下游任务,UniMIE在加速诊断工具和定制治疗计划的进步方面显示出相当大的潜力。结论:UniMIE代表了一种变革性的医学图像增强方法,提供了一种适应不同成像条件的多功能和强大的解决方案。通过提高图像质量和促进更好的下游分析,UniMIE有可能彻底改变临床工作流程,并在广泛的医疗应用中提高诊断准确性。
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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