2010
DOI: 10.1371/journal.pcbi.1000974
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Pattern Recognition Software and Techniques for Biological Image Analysis

Abstract: The increasing prevalence of automated image acquisition systems is enabling new types of microscopy experiments that generate large image datasets. However, there is a perceived lack of robust image analysis systems required to process these diverse datasets. Most automated image analysis systems are tailored for specific types of microscopy, contrast methods, probes, and even cell types. This imposes significant constraints on experimental design, limiting their application to the narrow set of imaging metho… Show more

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Cited by 162 publications
(152 citation statements)
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“…Following a thorough rinse in TBS buffer, the sections were incubated with secondary antibodies, i.e., biotinylated goat anti-mouse IgG or biotinylated goat anti-rabbit IgG (diluted 1:200 in TBS buffer), and then incubated with avidin biotinylated enzyme complex and 3,3Ј-diaminobenzidine. The amyloid plaque load density in the hippocampal region, as well as CA1/3 and dentate gyrus subregions, was measured using the Sinq Image Analysis System (Sinq Inc.) (19,20). Alternatively, the brain sections were stained with anti-amyloid antibodies followed by incubated with secondary antibody Texas Red-conjugated antirabbit or anti-mouse IgG as well as LCO reagent (21) for double staining of amyloid before confocal microscopy analysis (LSM510; Zeiss).…”
Section: Methodsmentioning
confidence: 99%
“…Following a thorough rinse in TBS buffer, the sections were incubated with secondary antibodies, i.e., biotinylated goat anti-mouse IgG or biotinylated goat anti-rabbit IgG (diluted 1:200 in TBS buffer), and then incubated with avidin biotinylated enzyme complex and 3,3Ј-diaminobenzidine. The amyloid plaque load density in the hippocampal region, as well as CA1/3 and dentate gyrus subregions, was measured using the Sinq Image Analysis System (Sinq Inc.) (19,20). Alternatively, the brain sections were stained with anti-amyloid antibodies followed by incubated with secondary antibody Texas Red-conjugated antirabbit or anti-mouse IgG as well as LCO reagent (21) for double staining of amyloid before confocal microscopy analysis (LSM510; Zeiss).…”
Section: Methodsmentioning
confidence: 99%
“…Unlike previous studies, where otolith morphology has been used to achieve stock separation, here we approach the problem of fish stock discrimination from a machine learning standpoint, applying tools used for pattern classification in other biological fields, such as microscopy image analysis (Shamir et al 2010), and (human) bone age classification (Bagnall and Davis 2014). Machine learning methods have been used previously for otolith age classification (Fablet and Le Josse 2005;Bermejo et al 2007), and underlying methods have been used for stock separation with varying success.…”
Section: Introductionmentioning
confidence: 99%
“…Although these technologies in microscopy offer high-resolution images, the big data and pattern no recognized by human experts are the main factors to implement image processing and image analysis techniques in cell identification. Machine learning and data mining have the potential to objectively and effectively analyze the massive amounts of image data (Shamir et al 2010).…”
Section: Introductionmentioning
confidence: 99%