Multiclass Yeast Segmentation in Microstructured Environments with Deep
Learning
- URL: http://arxiv.org/abs/2011.08062v2
- Date: Thu, 19 Nov 2020 14:28:20 GMT
- Title: Multiclass Yeast Segmentation in Microstructured Environments with Deep
Learning
- Authors: Tim Prangemeier, Christian Wildner, Andr\'e O. Fran\c{c}ani, Christoph
Reich, Heinz Koeppl
- Abstract summary: We present convolutional neural networks trained for multiclass segmenting of individual yeast cells.
We showcase the method's contribution to segmenting yeast in microstructured environments with a typical synthetic biology application.
- Score: 20.456742449675904
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cell segmentation is a major bottleneck in extracting quantitative
single-cell information from microscopy data. The challenge is exasperated in
the setting of microstructured environments. While deep learning approaches
have proven useful for general cell segmentation tasks, existing segmentation
tools for the yeast-microstructure setting rely on traditional machine learning
approaches. Here we present convolutional neural networks trained for
multiclass segmenting of individual yeast cells and discerning these from
cell-similar microstructures. We give an overview of the datasets recorded for
training, validating and testing the networks, as well as a typical use-case.
We showcase the method's contribution to segmenting yeast in microstructured
environments with a typical synthetic biology application in mind. The models
achieve robust segmentation results, outperforming the previous
state-of-the-art in both accuracy and speed. The combination of fast and
accurate segmentation is not only beneficial for a posteriori data processing,
it also makes online monitoring of thousands of trapped cells or closed-loop
optimal experimental design feasible from an image processing perspective.
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