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基于Transformer的盲点(TBS)网络对人类胶质瘤组织三次谐波产生显微图像进行自监督图像去噪

Self-Supervised Image Denoising of Third Harmonic Generation Microscopic Images of Human Glioma Tissue by Transformer-Based Blind Spot (TBS) Network.

作者信息

Wu Yuchen, Qiu Siqi, Groot Marie Louise, Zhang Zhiqing

出版信息

IEEE J Biomed Health Inform. 2024 Aug;28(8):4688-4700. doi: 10.1109/JBHI.2024.3405562. Epub 2024 Aug 6.

Abstract

Third harmonic generation (THG) microscopy shows great potential for instant pathology of brain tumor tissue during surgery. However, due to the maximal permitted exposure of laser intensity and inherent noise of the imaging system, the noise level of THG images is relatively high, which affects subsequent feature extraction analysis. Denoising THG images is challenging for modern deep-learning based methods because of the rich morphologies contained and the difficulty in obtaining the noise-free counterparts. To address this, in this work, we propose an unsupervised deep-learning network for denoising of THG images which combines a self-supervised blind spot method and a U-shape Transformer using a dynamic sparse attention mechanism. The experimental results on THG images of human glioma tissue show that our approach exhibits superior denoising performance qualitatively and quantitatively compared with previous methods. Our model achieves an improvement of 2.47-9.50 dB in SNR and 0.37-7.40 dB in CNR, compared to six recent state-of-the-art unsupervised learning models including Neighbor2Neighbor, Blind2Unblind, Self2Self+, ZS-N2N, Noise2Info and SDAP. To achieve an objective evaluation of our model, we also validate our model on public datasets including natural and microscopic images, and our model shows a better denoising performance than several recent unsupervised models such as Neighbor2Neighbor, Blind2Unblind and ZS-N2N. In addition, our model is nearly instant in denoising a THG image, which has the potential for real-time applications of THG microscopy.

摘要

三次谐波产生(THG)显微镜在脑肿瘤组织手术中的即时病理学检查方面显示出巨大潜力。然而,由于激光强度的最大允许曝光量以及成像系统固有的噪声,THG图像的噪声水平相对较高,这影响了后续的特征提取分析。对于基于现代深度学习的方法而言,对THG图像进行去噪具有挑战性,因为其包含丰富的形态信息且难以获得无噪声的对应图像。为了解决这个问题,在这项工作中,我们提出了一种用于THG图像去噪的无监督深度学习网络,该网络结合了自监督盲点方法和使用动态稀疏注意力机制的U形Transformer。对人类胶质瘤组织的THG图像进行的实验结果表明,与先前的方法相比,我们的方法在定性和定量方面均表现出卓越的去噪性能。与包括Neighbor2Neighbor、Blind2Unblind、Self2Self +、ZS - N2N、Noise2Info和SDAP在内的六个最新的无监督学习模型相比,我们的模型在信噪比(SNR)上提高了2.47 - 9.50 dB,在对比度噪声比(CNR)上提高了0.37 - 7.40 dB。为了对我们的模型进行客观评估,我们还在包括自然图像和微观图像在内的公共数据集上对我们的模型进行了验证,并且我们的模型显示出比Neighbor2Neighbor、Blind2Unblind和ZS - N2N等几个最新的无监督模型更好的去噪性能。此外,我们的模型在对THG图像进行去噪时几乎是即时的,这使得THG显微镜具有实时应用的潜力。

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