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An Unbiased Approach of Sampling TEM Sections in Neuroscience

Authors :
Daniel Kummer
Johannes Haybäck
Christina Wodlej
Florian Reichmann
Christoph Birkl
Gerd Leitinger
Elisabeth Bock
Stefanie Krassnig
Florian Kleinegger
Mariella Sele
Anna Birkl-Töglhofer
Stefan Wernitznig
Peter Holzer
Source :
Journal of Visualized Experiments.
Publication Year :
2019
Publisher :
MyJove Corporation, 2019.

Abstract

Investigations of the ultrastructural features of neurons and their synapses are only possible with electron microscopy. Especially for comparative studies of the changes in densities and distributions of such features, an unbiased sampling protocol is vital for reliable results. Here, we present a workflow for the image acquisition of brain samples. The workflow allows systematic uniform random sampling within a defined brain region, and the images can be analyzed using a disector. This technique is much faster than extensive examination of serial sections but still presents a feasible approach to estimate the densities and distributions of ultrastructure features. Before embedding, stained vibratome sections were used as a reference to identify the brain region under investigation, which helped speed up the overall specimen preparation process. This approach was used for comparative studies investigating the effect of an enriched-housing environment on several ultrastructural parameters in the mouse brain. Based on the successful use of the workflow, we adapted it for the purpose of elemental analysis of brain samples. We optimized the protocol in terms of the time of user-interaction. Automating all the time-consuming steps by compiling a script for the open source software SerialEM helps the user to focus on the main work of acquiring the elemental maps. As in the original workflow, we paid attention to the unbiased sampling approach to guarantee reliable results.

Details

ISSN :
1940087X
Database :
OpenAIRE
Journal :
Journal of Visualized Experiments
Accession number :
edsair.doi.dedup.....0f3094be8d375bde5a8c0eaf23d40c33
Full Text :
https://doi.org/10.3791/58745