Vahid Milad R, Chao Jerry, Ward E Sally, Ober Raimund J
Dept. of Biomedical Engineering, Texas A&M University, College Station, TX 77843, USA.
Dept. of Molecular and Cellular Medicine, Texas A&M University Health Science Center, College Station, TX 77843, USA.
Proc SPIE Int Soc Opt Eng. 2017 Jan 28;10070. doi: 10.1117/12.2253175. Epub 2017 Feb 17.
Single molecule super-resolution microscopy is a powerful tool that enables imaging at sub-diffraction-limit resolution. In this technique, subsets of stochastically photoactivated fluorophores are imaged over a sequence of frames and accurately localized, and the estimated locations are used to construct a high-resolution image of the cellular structures labeled by the fluorophores. Available localization methods typically first determine the regions of the image that contain emitting fluorophores through a process referred to as detection. Then, the locations of the fluorophores are estimated accurately in an estimation step. We propose a novel localization method which combines the detection and estimation steps. The method models the given image as the frequency response of a multi-order system obtained with a balanced state space realization algorithm based on the singular value decomposition of a Hankel matrix, and determines the locations of intensity peaks in the image as the pole locations of the resulting system. The locations of the most significant peaks correspond to the locations of single molecules in the original image. Although the accuracy of the location estimates is reasonably good, we demonstrate that, by using the estimates as the initial conditions for a maximum likelihood estimator, refined estimates can be obtained that have a standard deviation close to the Cramér-Rao lower bound-based limit of accuracy. We validate our method using both simulated and experimental multi-emitter images.
单分子超分辨率显微镜是一种强大的工具,能够实现亚衍射极限分辨率成像。在该技术中,随机光激活荧光团的子集在一系列帧上成像并被精确地定位,然后利用估计的位置来构建由荧光团标记的细胞结构的高分辨率图像。现有的定位方法通常首先通过一个称为检测的过程来确定图像中包含发射荧光团的区域。然后,在估计步骤中精确估计荧光团的位置。我们提出了一种将检测和估计步骤相结合的新型定位方法。该方法将给定图像建模为通过基于汉克尔矩阵奇异值分解的平衡状态空间实现算法获得的多阶系统的频率响应,并将图像中强度峰值的位置确定为所得系统的极点位置。最显著峰值的位置对应于原始图像中单个分子的位置。尽管位置估计的精度相当不错,但我们证明,通过将这些估计用作最大似然估计器的初始条件,可以获得标准差接近基于克拉美 - 罗下限的精度极限的精确估计。我们使用模拟和实验多发射体图像对我们的方法进行了验证。