University Hospital Jena, Friedrich Schiller University Jena, Institute of Anatomy II, Teichgraben 7, 07740 Jena, Germany.
University of Lübeck, Institute of Biomedical Optics, Peter-Monnik-Weg 4, 23562 Lübeck, Germany.
Beilstein J Nanotechnol. 2014 Nov 6;5:2016-25. doi: 10.3762/bjnano.5.210. eCollection 2014.
Intravital 2-photon microscopy of mucosal membranes across which nanoparticles enter the organism typically generates noisy images. Because the noise results from the random statistics of only very few photons detected per pixel, it cannot be avoided by technical means. Fluorescent nanoparticles contained in the tissue may be represented by a few bright pixels which closely resemble the noise structure. We here present a data-adaptive method for digital denoising of datasets obtained by 2-photon microscopy. The algorithm exploits both local and non-local redundancy of the underlying ground-truth signal to reduce noise. Our approach automatically adapts the strength of noise suppression in a data-adaptive way by using a Bayesian network. The results show that the specific adaption to both signal and noise characteristics improves the preservation of fine structures such as nanoparticles while less artefacts were produced as compared to reference algorithms. Our method is applicable to other imaging modalities as well, provided the specific noise characteristics are known and taken into account.
活体双光子显微镜对黏膜的观察,黏膜是纳米颗粒进入生物体的通道,这种显微镜生成的图像通常是有噪声的。由于噪声是由每个像素检测到的极少数光子的随机统计产生的,因此无法通过技术手段避免。组织中包含的荧光纳米颗粒可能由几个与噪声结构非常相似的亮像素表示。我们在这里提出了一种用于双光子显微镜获得的数据集的数字去噪的自适应数据方法。该算法利用底层真实信号的局部和非局部冗余来减少噪声。我们的方法通过使用贝叶斯网络,以数据自适应的方式自动调整噪声抑制的强度。结果表明,对信号和噪声特征的特定适应可以改善纳米颗粒等精细结构的保留,同时与参考算法相比,产生的伪影更少。只要知道并考虑了特定的噪声特征,我们的方法也适用于其他成像模式。