Machine learning to evaluate neuron density in brain sections

Autor(en): Penazzi, L.
Sündermann, F.
Bakota, L.
Brandt, R. 
Stichwörter: animal tissue; anisotropic diffusion; article; autoanalysis; brain tissue; cell density; cell structure; classifier; clinical protocol; contrast liimited adaptive histogram equalization; image analysis; image enhancement; image processing; image quality; imaging software; Machine learning; Microtome sectioning; mouse; Mouse brain; nerve cell; Neuron density; nonhuman; priority journal; signal noise ratio; tissue fixation; unsharp mask filter
Erscheinungsdatum: 2014
Herausgeber: Humana Press Inc.
Journal: Neuromethods
Volumen: 87
Startseite: 263
Seitenende: 291
Zusammenfassung: 
Imaging applications often produce large numbers of data sets, which need to be processed in a uniform and unbiased manner to obtain precise information about the number and size of cells or cell densities in different regions of the brain. Machine learning is a novel method here introduced to adjust algorithms to the biological requirements and to evaluate cellular features of tissue samples in an automated manner. In this chapter we describe methods to prepare mouse brain tissue for subsequent image processing and data evaluation. We give information in a step-by-step manner how to choose and perform appropriate fixation protocols, decide for suitable sectioning, and give hints what to consider when performing immunofluorescence stainings. Furthermore, we introduce the Machine Learning-Based Image Segmentation (MLBIS) to determine neuronal cell density in brain slices. © 2014 Springer Science+Business Media New York.
ISBN: 9781493903801
ISSN: 08932336
DOI: 10.1007/978-1-4939-0381-8_13
Externe URL: https://www.scopus.com/inward/record.uri?eid=2-s2.0-84896940740&doi=10.1007%2f978-1-4939-0381-8_13&partnerID=40&md5=a4715806875dc0843f2399a2c33ee411

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