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Adaptive Spot Detection With Optimal Scale Selection in Fluorescence Microscopy Images | IEEE Journals & Magazine | IEEE Xplore

Adaptive Spot Detection With Optimal Scale Selection in Fluorescence Microscopy Images


Abstract:

Accurately detecting subcellular particles in fluorescence microscopy is of primary interest for further quantitative analysis such as counting, tracking, or classificati...Show More

Abstract:

Accurately detecting subcellular particles in fluorescence microscopy is of primary interest for further quantitative analysis such as counting, tracking, or classification. Our primary goal is to segment vesicles likely to share nearly the same size in fluorescence microscopy images. Our method termed adaptive thresholding of Laplacian of Gaussian (LoG) images with autoselected scale (ATLAS) automatically selects the optimal scale corresponding to the most frequent spot size in the image. Four criteria are proposed and compared to determine the optimal scale in a scale-space framework. Then, the segmentation stage amounts to thresholding the LoG of the intensity image. In contrast to other methods, the threshold is locally adapted given a probability of false alarm (PFA) specified by the user for the whole set of images to be processed. The local threshold is automatically derived from the PFA value and local image statistics estimated in a window whose size is not a critical parameter. We also propose a new data set for benchmarking, consisting of six collections of one hundred images each, which exploits backgrounds extracted from real microscopy images. We have carried out an extensive comparative evaluation on several data sets with ground-truth, which demonstrates that ATLAS outperforms existing methods. ATLAS does not need any fine parameter tuning and requires very low computation time. Convincing results are also reported on real total internal reflection fluorescence microscopy images.
Published in: IEEE Transactions on Image Processing ( Volume: 24, Issue: 11, November 2015)
Page(s): 4512 - 4527
Date of Publication: 30 June 2015

ISSN Information:

PubMed ID: 26353357

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I. Introduction

Since the early time of protein tagging with green fluorescent protein (GFP) [1], microscopy investigations at the single cell level have been faced with the problem of determining the location and behavior in space and time of spots, such as microtubule end tips, adhesion molecular complexes, or vesicles as illustrated in Fig. 1. Detecting such subcellular particles in fluorescence microscopy is indeed of central interest for further quantitative analysis as particle counting [2], particle pattern recognition [3], particle tracking [4]–[7] or dynamics classification [8]–[11]. All these subcellular analyses require a reliable, accurate and efficient detection of particles in fluorescence microscopy images.

Cell images depicting particles of similar scale. (a, b) Tagged vesicles (bright spots) are of almost constant size over the image. Rab11 is tagged with mCherry in (a), (b) TfR is tagged with pHluorin in (b).

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