Institute of Medical Technology, Peking University Health Science Center, Peking University, Beijing, China.
Department of Biomedical Engineering, College of Future Technology, Peking University, Beijing, China.
J Biophotonics. 2021 Nov;14(11):e202100151. doi: 10.1002/jbio.202100151. Epub 2021 Aug 20.
As a powerful diagnostic tool, optical coherence tomography (OCT) has been widely used in various clinical setting. However, OCT images are susceptible to inherent speckle noise that may contaminate subtle structure information, due to low-coherence interferometric imaging procedure. Many supervised learning-based models have achieved impressive performance in reducing speckle noise of OCT images trained with a large number of noisy-clean paired OCT images, which are not commonly feasible in clinical practice. In this article, we conducted a comparative study to investigate the denoising performance of OCT images over different deep neural networks through an unsupervised Noise2Noise (N2N) strategy, which only trained with noisy OCT samples. Four representative network architectures including U-shaped model, multi-information stream model, straight-information stream model and GAN-based model were investigated on an OCT image dataset acquired from healthy human eyes. The results demonstrated all four unsupervised N2N models offered denoised OCT images with a performance comparable with that of supervised learning models, illustrating the effectiveness of unsupervised N2N models in denoising OCT images. Furthermore, U-shaped models and GAN-based models using UNet network as generator are two preferred and suitable architectures for reducing speckle noise of OCT images and preserving fine structure information of retinal layers under unsupervised N2N circumstances.
作为一种强大的诊断工具,光学相干断层扫描(OCT)已广泛应用于各种临床环境中。然而,由于低相干干涉成像过程,OCT 图像容易受到固有散斑噪声的影响,这些噪声可能会污染细微的结构信息。许多基于监督学习的模型在使用大量噪声-清洁配对 OCT 图像进行训练时,在降低 OCT 图像的散斑噪声方面取得了令人印象深刻的性能,而在临床实践中,这种方法并不常见。在本文中,我们通过一种无监督的 Noise2Noise(N2N)策略(仅使用噪声 OCT 样本进行训练),对不同的深度神经网络在 OCT 图像去噪性能方面进行了比较研究。我们在一个来自健康人眼的 OCT 图像数据集上,研究了包括 U 形模型、多信息流模型、直信息流模型和基于 GAN 的模型在内的四个代表性网络架构。结果表明,所有四个无监督的 N2N 模型都提供了去噪后的 OCT 图像,其性能可与监督学习模型相媲美,这表明无监督的 N2N 模型在 OCT 图像去噪方面是有效的。此外,U 形模型和基于 GAN 的模型使用 UNet 网络作为生成器,是在无监督 N2N 情况下减少 OCT 图像散斑噪声和保留视网膜层精细结构信息的两种优选和合适的架构。