In this article, we explore adaptive global and local segmentation techniques for a lab- on-chip nutrition monitoring system (NutriChip). The experimental setup consists of Caco-2 intestinal cells that can be artificially stimulated to trigger an immune response. The eventual response is optically monitored using immunofluoresence techniques tar- geting toll-like receptor 2 (TLR2). Two problems of interest need to be addressed by means of image processing. First, a new cell sample must be properly classified as stimulated or not. Second, the location of the stained TLR2 must be recovered in case the sample has been stimulated. The algorithmic approach to solving these problems is based on the ability of a segmentation technique to properly segment fluorescent spots. The sample classification is based on the amount and intensity of the segmented pixels, while the various segmenting blobs provide an approximate localization of TLR2. A novel local thresholding algorithm and three well-known spot segmentation techniques are compared in this study. Quantitative assessment of these techniques based on real and synthesized data demonstrates the improved segmentation capabilities of the pro- posed algorithm.
Ghaye J., Kamat M.A., Corbino-Giunta L., Silacci P., Vergères G., De Micheli G., Carrara S.
Image thresholding techniques for localization of sub-resolution fluorescent biomarkers.
Cytometry Part A, 83, (11), 2013, 1001-1016.
Download inglese: Wiley Online Library
ISSN Print: 1552-4922
ISSN Online: 1552-4930
Digital Object Identifier (DOI): https://doi.org/10.1002/cyto.a.22345
ID pubblicazione (Codice web): 38012 Inviare via e-mail
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