基于结构的超分辨定位显微镜成像长度的确定

K. Chen, J. Kovacevic, Ge Yang
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引用次数: 1

摘要

基于定位的超分辨率技术打破了荧光显微镜的衍射极限,正在彻底改变生物学研究。每个超分辨率图像是从随机激活的荧光团图像的时间序列中重建的。在这里,一个基本问题是确定最小成像长度,使重建图像忠实地反映所观察的生物结构。到目前为止,所提出的方法完全集中在图像分辨率上,这反映了定位的不确定性和荧光团密度,而没有考虑到生物结构图像是结构化的而不是随机模式。在这里,我们提出了一种不同的方法来确定成像长度基于直接量化图像结构信息使用Gabor滤波器。实验结果表明,该方法优于仅考虑图像强度分布的方法,证实了利用结构信息的重要性。与基于分辨率的方法相比,我们的方法不需要人工选择图像分辨率,并且提供了基于图像结构信息确定成像长度的统计严格策略。
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Structure-based determination of imaging length for super-resolution localization microscopy
Localization-based super-resolution techniques are revolutionizing biological research by breaking the diffraction limit of fluorescence microscopy. Each super-resolution image is reconstructed from a time series of images of randomly activated fluorophores. Here, a fundamental question is to determine the minimal imaging length so that the reconstructed image faithfully reflects the biological structures under observation. So far, proposed methods focus entirely on image resolution, which reflects localization uncertainty and fluorophore density, without taking into account the fact that images of biological structures are structured rather than random patterns. Here, we propose a different approach to determine imaging length based on direct quantification of image structural information using Gabor filters. Experimental results show that this approach is superior over approaches that only account for image-intensity distribution, confirming the importance of using structural information. In contrast to resolution-based methods, our method does not require an artificial selection of image resolution and provides a statistically rigorous strategy for determining imaging length based on image structural information.
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