Liu L, Kan A, Leckie C, Hodgkin P D
Department of Computing and Information Systems, The University of Melbourne, Parkville, Australia.
Division of Immunology, Walter and Eliza Hall Institute of Medical Research, Parkville, Australia.
J Microsc. 2017 Apr;266(1):15-27. doi: 10.1111/jmi.12512. Epub 2016 Dec 21.
Time-lapse fluorescence microscopy is a valuable technology in cell biology, but it suffers from the inherent problem of intensity inhomogeneity due to uneven illumination or camera nonlinearity, known as shading artefacts. This will lead to inaccurate estimates of single-cell features such as average and total intensity. Numerous shading correction methods have been proposed to remove this effect. In order to compare the performance of different methods, many quantitative performance measures have been developed. However, there is little discussion about which performance measure should be generally applied for evaluation on real data, where the ground truth is absent. In this paper, the state-of-the-art shading correction methods and performance evaluation methods are reviewed. We implement 10 popular shading correction methods on two artificial datasets and four real ones. In order to make an objective comparison between those methods, we employ a number of quantitative performance measures. Extensive validation demonstrates that the coefficient of joint variation (CJV) is the most applicable measure in time-lapse fluorescence images. Based on this measure, we have proposed a novel shading correction method that performs better compared to well-established methods for a range of real data tested.
延时荧光显微镜是细胞生物学中的一项重要技术,但由于光照不均匀或相机非线性导致强度不均匀的固有问题,即所谓的阴影伪像,会影响其效果。这将导致对单细胞特征(如平均强度和总强度)的估计不准确。为了消除这种影响,人们提出了许多阴影校正方法。为了比较不同方法的性能,还开发了许多定量性能指标。然而,对于在缺乏真实数据的情况下,应该普遍采用哪种性能指标进行评估,讨论较少。本文综述了当前最先进的阴影校正方法和性能评估方法。我们在两个人工数据集和四个真实数据集上实现了10种常用的阴影校正方法。为了对这些方法进行客观比较,我们采用了一些定量性能指标。广泛的验证表明,联合变异系数(CJV)是延时荧光图像中最适用的指标。基于这一指标,我们提出了一种新颖的阴影校正方法,在一系列测试的真实数据中,该方法的性能优于成熟方法。