Seo J, Hwang S, Lee J-M, Park H
Department of Biomedical Engineering, Yonsei University, Wonju, Korea.
J Microsc. 2014 Aug;255(2):94-103. doi: 10.1111/jmi.12141. Epub 2014 Jun 11.
Confocal microscopy has become an essential tool to explore biospecimens in 3D. Confocal microcopy images are still degraded by out-of-focus blur and Poisson noise. Many deconvolution methods including the Richardson-Lucy (RL) method, Tikhonov method and split-gradient (SG) method have been well received. The RL deconvolution method results in enhanced image quality, especially for Poisson noise. Tikhonov deconvolution method improves the RL method by imposing a prior model of spatial regularization, which encourages adjacent voxels to appear similar. The SG method also contains spatial regularization and is capable of incorporating many edge-preserving priors resulting in improved image quality. The strength of spatial regularization is fixed regardless of spatial location for the Tikhonov and SG method. The Tikhonov and the SG deconvolution methods are improved upon in this study by allowing the strength of spatial regularization to differ for different spatial locations in a given image. The novel method shows improved image quality. The method was tested on phantom data for which ground truth and the point spread function are known. A Kullback-Leibler (KL) divergence value of 0.097 is obtained with applying spatially variable regularization to the SG method, whereas KL value of 0.409 is obtained with the Tikhonov method. In tests on a real data, for which the ground truth is unknown, the reconstructed data show improved noise characteristics while maintaining the important image features such as edges.
共聚焦显微镜已成为探索生物样本三维结构的重要工具。共聚焦显微镜图像仍会因离焦模糊和泊松噪声而退化。包括理查森 - Lucy(RL)方法、蒂霍诺夫方法和分裂梯度(SG)方法在内的许多去卷积方法都受到了广泛欢迎。RL去卷积方法可提高图像质量,尤其是对于泊松噪声。蒂霍诺夫去卷积方法通过引入空间正则化的先验模型改进了RL方法,该模型促使相邻体素看起来相似。SG方法也包含空间正则化,并且能够纳入许多保边先验信息,从而提高图像质量。对于蒂霍诺夫方法和SG方法,空间正则化的强度在空间位置上是固定的。在本研究中,通过允许在给定图像的不同空间位置上空间正则化的强度有所不同,对蒂霍诺夫和SG去卷积方法进行了改进。新方法显示出了更高的图像质量。该方法在已知真实值和点扩散函数的模拟数据上进行了测试。对SG方法应用空间可变正则化时,获得的库尔贝克 - 莱布勒(KL)散度值为0.097,而蒂霍诺夫方法的KL值为0.409。在对真实数据(真实值未知)的测试中,重建数据在保持边缘等重要图像特征的同时,显示出了更好的噪声特性。