无监督AS-OCT图像去斑的内容保持扩散模型

Sanqian Li, Risa Higashita, Huazhu Fu, Heng Li, Jingxuan Liu, Jiang Liu
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引用次数: 1

摘要

前段光学相干断层扫描(AS-OCT)是一种非侵入性成像技术,在眼科诊断中具有很高的价值。然而,AS-OCT图像中的斑点往往会降低图像质量并影响临床分析。因此,去除As - oct图像中的斑点可以极大地促进眼科自动分析。不幸的是,在部署有效的AS-OCT图像去噪算法方面仍然存在挑战,包括收集足够的成对训练数据和保持医学图像中一致内容的要求。为了解决这些实际问题,我们提出了一种基于内容保持扩散模型(CPDM)的无监督AS-OCT去斑算法。在训练阶段,马尔可夫链通过反复添加随机噪声将干净图像转换为高斯白噪声,并通过反向过程去除预测噪声。在推理阶段,我们首先分析散斑的统计分布,并将其转换为高斯分布,以匹配快速截断的反向扩散过程。然后,我们探索观察图像的后验分布作为保真度项,以确保迭代过程中的内容一致性。我们的实验结果表明,与竞争方法相比,CPDM显著提高了图像质量。此外,我们验证了CPDM在后续临床分析中的益处,包括睫状肌(CM)分割和巩膜骨刺(SS)定位。
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Content-Preserving Diffusion Model for Unsupervised AS-OCT image Despeckling
Anterior segment optical coherence tomography (AS-OCT) is a non-invasive imaging technique that is highly valuable for ophthalmic diagnosis. However, speckles in AS-OCT images can often degrade the image quality and affect clinical analysis. As a result, removing speckles in AS-OCT images can greatly benefit automatic ophthalmology analysis. Unfortunately, challenges still exist in deploying effective AS-OCT image denoising algorithms, including collecting sufficient paired training data and the requirement to preserve consistent content in medical images. To address these practical issues, we propose an unsupervised AS-OCT despeckling algorithm via Content Preserving Diffusion Model (CPDM) with statistical knowledge. At the training stage, a Markov chain transforms clean images to white Gaussian noise by repeatedly adding random noise and removes the predicted noise in a reverse procedure. At the inference stage, we first analyze the statistical distribution of speckles and convert it into a Gaussian distribution, aiming to match the fast truncated reverse diffusion process. We then explore the posterior distribution of observed images as a fidelity term to ensure content consistency in the iterative procedure. Our experimental results show that CPDM significantly improves image quality compared to competitive methods. Furthermore, we validate the benefits of CPDM for subsequent clinical analysis, including ciliary muscle (CM) segmentation and scleral spur (SS) localization.
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