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Automated three-dimensional detection and counting of neuron somata

MPG-Autoren
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Oberlaender,  Marcel
Emeritus Group: Cortical Column in silico / Sakmann, MPI of Neurobiology, Max Planck Society;

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Egger,  Robert
Emeritus Group: Cortical Column in silico / Sakmann, MPI of Neurobiology, Max Planck Society;

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Sakmann,  Bert
Emeritus Group: Cortical Column in silico / Sakmann, MPI of Neurobiology, Max Planck Society;

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Zitation

Oberlaender, M., Dercksen, V. J., Egger, R., Gensel, M., Sakmann, B., & Hege, H. C. (2009). Automated three-dimensional detection and counting of neuron somata. Journal of Neuroscience Methods, 180(1), 147-160. doi:10.1016/j.jneumeth.2009.03.008.


Zitierlink: https://hdl.handle.net/11858/00-001M-0000-0012-207D-6
Zusammenfassung
We present a novel approach for automated detection of neuron somata. A three-step processing pipeline is described on the example of confocal image stacks of NeuN-stained neurons from rat somato-sensory cortex. It results in a set of position landmarks, representing the midpoints of all neuron somata. In the first step, foreground and background pixels are identified, resulting in a binary image. It is based on local thresholding and compensates for imaging and staining artifacts. Once this pre-processing guarantees a standard image quality, clusters of touching neurons are separated in the second step, using a marker-based watershed approach. A model-based algorithm completes the pipeline. It assumes a dominant neuron population with Gaussian distributed volumes within one microscopic field of view. Remaining larger objects are hence split or treated as a second neuron type. A variation of the processing pipeline is presented, showing that our method can also be used for co-localization of neurons in multi-channel images. As an example, we process 2-channel stacks of NeuN-stained somata, labeling all neurons, counterstained with GAD67, labeling GABAergic interneurons, using an adapted pre-processing step for the second channel. The automatically generated landmark sets are compared to manually placed counterparts. A comparison yields that the deviation in landmark position is negligible and that the difference between the numbers of manually and automatically counted neurons is less than 4%. In consequence, this novel approach for neuron counting is a reliable and objective alternative to manual detection. (C) 2009 Elsevier B.V. All rights reserved.