Quantitative comparison of spot detection methods in live-cell fluorescence microscopy imaging

Ihor Smal, M. Loog, W. Niessen, E. Meijering
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引用次数: 26

Abstract

In live-cell fluorescence microscopy imaging, quantitative analysis of biological image data generally involves the detection of many subresolution objects, appearing as diffraction-limited spots. Due to acquisition limitations, the signal-to-noise ratio (SNR) can be extremely low, making automated spot detection a very challenging task. In this paper, we quantitatively evaluate the performance of the most frequently used supervised and unsupervised detection methods for this purpose. Experiments on synthetic images of three different types, for which ground truth was available, as well as on real image data sets acquired for two different biological studies, for which we obtained expert manual annotations for comparison, revealed that for very low SNRs (≈2), the supervised (machine learning) methods perform best overall, closely followed by the detectors based on the so-called h-dome transform from mathematical morphology and the multiscale variance-stabilizing transform, which do not require a learning stage. At high SNRs (≫5), the difference in performance of all considered detectors becomes negligible.
活细胞荧光显微镜成像中斑点检测方法的定量比较
在活细胞荧光显微镜成像中,生物图像数据的定量分析通常涉及到许多亚分辨率物体的检测,这些物体表现为衍射极限点。由于采集的限制,信噪比(SNR)可能非常低,这使得自动斑点检测成为一项非常具有挑战性的任务。在本文中,我们定量地评估了为此目的最常用的监督和非监督检测方法的性能。在三种不同类型的合成图像上进行的实验,可以获得地面真理,以及在为两种不同的生物学研究获得的真实图像数据集上进行的实验,我们获得了专家手工注释进行比较,结果表明,对于非常低的信噪比(≈2),监督(机器学习)方法总体上表现最好,其次是基于数学形态学的所谓h-dome变换和多尺度方差稳定变换的检测器。不需要学习阶段。在高信噪比(5)时,所有考虑的检测器的性能差异变得可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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