Department of Mathematical Statistics, Chalmers University of Technology and Gothenburg University, Gothenburg, Sweden.
Microsc Res Tech. 2013 Oct;76(10):997-1006. doi: 10.1002/jemt.22260. Epub 2013 Jul 16.
One of the fundamental problems in the analysis of single particle tracking data is the detection of individual particle positions from microscopy images. Distinguishing true particles from noise with a minimum of false positives and false negatives is an important step that will have substantial impact on all further analysis of the data. A common approach is to obtain a plausible set of particles from a larger set of candidate particles by filtering using manually selected threshold values for intensity, size, shape, and other parameters describing a particle. This introduces subjectivity into the analysis and hinders reproducibility. In this paper, we introduce a method for automatic selection of these threshold values based on maximizing temporal correlations in particle count time series. We use Markov Chain Monte Carlo to find the threshold values corresponding to the maximum correlation, and we study several experimental data sets to assess the performance of the method in practice by comparing manually selected threshold values from several independent experts with automatically selected threshold values. We conclude that the method produces useful results, reducing subjectivity and the need for manual intervention, a great benefit being its easy integratability into many already existing particle detection algorithms.
在单颗粒追踪数据分析中,一个基本问题是从显微镜图像中检测单个颗粒的位置。通过使用手动选择的强度、大小、形状和其他描述颗粒的参数的阈值对大量候选颗粒进行过滤,以最小化假阳性和假阴性来区分真实颗粒是一个重要步骤,这将对数据的所有进一步分析产生重大影响。一种常见的方法是通过使用手动选择的强度、大小、形状和其他参数的阈值从较大的候选粒子集中获取合理的粒子集,以过滤掉噪声。这会给分析带来主观性,并阻碍可重复性。在本文中,我们介绍了一种基于最大化粒子计数时间序列中时间相关性来自动选择这些阈值的方法。我们使用马尔可夫链蒙特卡罗(Markov Chain Monte Carlo)找到与最大相关性对应的阈值,并使用几个实验数据集来评估该方法在实践中的性能,方法是将几个独立专家手动选择的阈值与自动选择的阈值进行比较。我们得出的结论是,该方法产生了有用的结果,减少了主观性和对人工干预的需求,其易于集成到许多现有的粒子检测算法中是一个很大的优势。