DocumentCode
1099397
Title
Quantitative Comparison of Spot Detection Methods in Fluorescence Microscopy
Author
Smal, Ihor ; Loog, Marco ; Niessen, Wiro ; Meijering, Erik
Author_Institution
Dept. of Med. Inf., Erasmus MC, Rotterdam, Netherlands
Volume
29
Issue
2
fYear
2010
Firstpage
282
Lastpage
301
Abstract
Quantitative analysis of biological image data generally involves the detection of many subresolution spots. Especially in live cell imaging, for which fluorescence microscopy is often used, the signal-to-noise ratio (SNR) can be extremely low, making automated spot detection a very challenging task. In the past, many methods have been proposed to perform this task, but a thorough quantitative evaluation and comparison of these methods is lacking in the literature. In this paper, we evaluate the performance of the most frequently used detection methods for this purpose. These include seven unsupervised and two supervised methods. We perform experiments on synthetic images of three different types, for which the 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 to compare with. The results from both types of experiments suggest that for very low SNRs ( ?? 2), the supervised (machine learning) methods perform best overall. Of the unsupervised methods, the detectors based on the so-called h -dome transform from mathematical morphology or the multiscale variance-stabilizing transform perform comparably, and have the advantage that they do not require a cumbersome learning stage. At high SNRs ( > 5), the difference in performance of all considered detectors becomes negligible.
Keywords
biomedical optical imaging; fluorescence; mathematical morphology; medical image processing; object detection; optical microscopy; unsupervised learning; biological image analysis; fluorescence microscopy; h-dome transform; learning; live cell imaging; mathematical morphology; multiscale variance-stabilizing transform; signal-to-noise ratio; spot detection methods; supervised methods; unsupervised methods; Biomedical imaging; Detectors; Fluorescence; Image analysis; Machine learning; Object detection; Optical imaging; Optical microscopy; Proteins; Signal to noise ratio; Fluorescence microscopy; image filtering; machine learning; noise reduction; object detection; Algorithms; Artificial Intelligence; Computer Simulation; Discriminant Analysis; Eukaryotic Cells; Green Fluorescent Proteins; HeLa Cells; Humans; Image Processing, Computer-Assisted; Microscopy, Fluorescence; Microtubules; Models, Theoretical; Normal Distribution; Poisson Distribution; ROC Curve; Sensitivity and Specificity;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2009.2025127
Filename
5109713
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