Title: | Learning Cell Nuclei Segmentation Using Labels Generated With Classical Image Analysis Methods |
Authors: | Matuszewski, Damian J. Ranefall, Peter |
Citation: | WSCG 2021: full papers proceedings: 29. International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision, p. 335-338. |
Issue Date: | 2021 |
Publisher: | Václav Skala - UNION Agency |
Document type: | conferenceObject konferenční příspěvek |
URI: | http://hdl.handle.net/11025/45040 |
ISBN: | 978-80-86943-34-3 |
ISSN: | 2464-4617 2464–4625(CD/DVD) |
Keywords: | hluboké učení;U-Net;CellProfiler;anotace dat;mikroskopie |
Keywords in different language: | deep learning;U-Net;CellProfiler;data annotation;microscopy |
Abstract in different language: | Creating manual annotations in a large number of images is a tedious bottleneck that limits deep learning use in many applications. Here, we present a study in which we used the output of a classical image analysis pipelineas labels when training a convolutional neural network(CNN). This may not only reduce the time experts spend annotating images but it may also lead to an improvement of results when compared to the output from the classical pipeline used in training. Inour application, i.e.,cell nuclei segmentation,we generated the annotations using CellProfiler(a tool for developing classical image analysis pipelines for biomedical applications)and trained on them a U-Net-based CNN model. The best model achieved a 0.96 dice-coefficient of the segmented Nuclei and a 0.84 object-wise Jaccard indexwhich was better than the classical method used for generating the annotations by 0.02and 0.34, respectively. Our experimental results show that in this application, not only such training is feasiblebut also thatthe deep learning segmentationsare a clear improvement compared to the output from the classical pipelineused for generating the annotations. |
Rights: | © Václav Skala - UNION Agency |
Appears in Collections: | WSCG 2021: Full Papers Proceedings |
Please use this identifier to cite or link to this item:
http://hdl.handle.net/11025/45040
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