Data Entry: Please note that the research database will be replaced by UNIverse by the end of October 2023. Please enter your data into the system https://universe-intern.unibas.ch. Thanks

Login for users with Unibas email account...

Login for registered users without Unibas email account...

 
Automated analysis of spine dynamics on live CA1 pyramidal cells
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 2719123
Author(s) Blumer, Clemens; Vivien, Cyprien; Genoud, Christel; Perez-Alvarez, Alberto; Wiegert, J Simon; Vetter, Thomas; Oertner, Thomas G
Author(s) at UniBasel Vetter, Thomas
Blumer, Clemens
Year 2015
Title Automated analysis of spine dynamics on live CA1 pyramidal cells
Journal Medical image analysis
Volume 19
Number 1
Pages / Article-Number 87-97
Keywords Dendritic spines, CA1 pyramidal cells, 2-Photon microscopy, Endoplasmic reticulum, Statistical models
Abstract

Dendritic spines may be tiny in volume, but are of major importance for neuroscience. They are the main receivers for excitatory synaptic connections, and their constant changes in number and in shape reflect the dynamic connectivity of the brain. Two-photon microscopy allows following the fate of individual spines in brain slice preparations and in live animals. The diffraction-limited and non-isotropic resolution of this technique, however, makes detection of such tiny structures rather challenging, especially along the optical axis (z-direction). Here we present a novel spine detection algorithm based on a statistical dendrite intensity model and a corresponding spine probability model. To quantify the fidelity of spine detection, we generated correlative datasets: Following two-photon imaging of live pyramidal cell dendrites, we used Serial Block-Face Scanning Electron Microscopy (SBEM) to reconstruct dendritic ultrastructure in 3D. Statistical models were trained on synthetic fluorescence images generated from SBEM datasets via Point Spread Function (PSF) convolution. After the training period, we tested automatic spine detection on real two-photon datasets and compared the result to ground truth (correlative SBEM data). The performance of our algorithm allowed tracking changes in spine volume automatically over several hours. Using a second fluorescent protein targeted to the endoplasmic reticulum, we could analyze the motion of this organelle inside individual spines. Furthermore, we show that it is possible to distinguish activated spines from non-stimulated neighbors by detection of fluorescently labeled presynaptic vesicle clusters. These examples illustrate how automatic segmentation in 5D (x, y, z, t, λ) allows us to investigate brain dynamics at the level of individual synaptic connections.

Publisher Elsevier
ISSN/ISBN 1361-8415
edoc-URL http://edoc.unibas.ch/dok/A6328773
Full Text on edoc Available
Digital Object Identifier DOI 10.1016/j.media.2014.09.004
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/25299432
ISI-Number WOS:000347268200007
Document type (ISI) Journal Article
 
   

MCSS v5.8 PRO. 0.355 sec, queries - 0.000 sec ©Universität Basel  |  Impressum   |    
25/04/2024