Department of Electrical and Systems Engineering, Washington University in St. Louis, St. Louis, MO, 63130, USA.
Sci Rep. 2018 Sep 3;8(1):13133. doi: 10.1038/s41598-018-31366-w.
Single-molecule localization microscopy (SMLM) depends on sequential detection and localization of individual molecular blinking events. Due to the stochasticity of single-molecule blinking and the desire to improve SMLM's temporal resolution, algorithms capable of analyzing frames with a high density (HD) of active molecules, or molecules whose images overlap, are a prerequisite for accurate location measurements. Thus far, HD algorithms are evaluated using scalar metrics, such as root-mean-square error, that fail to quantify the structure of errors caused by the structure of the sample. Here, we show that the spatial distribution of localization errors within super-resolved images of biological structures are vectorial in nature, leading to systematic structural biases that severely degrade image resolution. We further demonstrate that the shape of the microscope's point-spread function (PSF) fundamentally affects the characteristics of imaging artifacts. We built a Robust Statistical Estimation algorithm (RoSE) to minimize these biases for arbitrary structures and PSFs. RoSE accomplishes this minimization by estimating the likelihood of blinking events to localize molecules more accurately and eliminate false localizations. Using RoSE, we measure the distance between crossing microtubules, quantify the morphology of and separation between vesicles, and obtain robust recovery using diverse 3D PSFs with unmatched accuracy compared to state-of-the-art algorithms.
单分子定位显微镜(SMLM)依赖于单个分子闪烁事件的连续检测和定位。由于单分子闪烁的随机性以及提高 SMLM 时间分辨率的愿望,能够分析具有高密度(HD)活性分子或图像重叠的分子的算法是进行准确位置测量的前提。到目前为止,HD 算法是使用标量指标(例如均方根误差)进行评估的,这些指标无法量化由样品结构引起的误差结构。在这里,我们表明,生物结构的超分辨图像中定位误差的空间分布本质上是矢量的,导致系统的结构偏差,严重降低了图像分辨率。我们进一步证明了显微镜的点扩散函数(PSF)的形状从根本上影响了成像伪影的特征。我们构建了一个稳健的统计估计算法(RoSE),以最小化任意结构和 PSF 的这些偏差。RoSE 通过估计闪烁事件更准确地定位分子并消除错误定位的可能性来实现最小化。使用 RoSE,我们测量了交叉微管之间的距离,量化了囊泡的形态和分离,并使用各种 3D PSF 进行了稳健的恢复,与最先进的算法相比,其准确性无与伦比。