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Cellpose models for Label Prediction from Brightfield and Digital Phase Contrast images

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Mendeley Data2024-05-10 更新2024-06-27 收录
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https://zenodo.org/records/6140111
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Name: Cellpose models for Brightfield and Digital Phase Contrast images Data type: Cellpose models trained via transfer learning from the ‘nuclei’ and ‘cyto2’ pretrained model with additional Training Dataset . Includes corresponding csv files with 'Quality Control' metrics(§) (model.zip). Training Dataset: Light microscopy (Digital Phase Contrast or Brightfield) and automatic annotations (nuclei or cyto) (https://doi.org/10.5281/zenodo.6140064) Training Procedure: The cellpose models were trained using cellpose version 1.0.0 with GPU support (NVIDIA GeForce K40) using default settings as per the Cellpose documentation . Training was done using a Renku environment (renku template). Command Line Execution for the different trained models nuclei_from_bf: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model nuclei  --img_filter _bf --mask_filter _nuclei --chan 0 --chan2 0 --use_gpu --verbose cyto_from_bf: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model cyto2 --img_filter _bf --mask_filter _cyto --chan 0 --chan2 0 --use_gpu --verbose nuclei_from_dpc: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model nuclei  --img_filter _dpc --mask_filter _nuclei --chan 0 --chan2 0 --use_gpu --verbose cyto_from_dpc: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model cyto2 --img_filter _dpc --mask_filter _cyto --chan 0 --chan2 0 --use_gpu --verbose nuclei_from_sqrdpc: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model nuclei --img_filter _sqrdpc --mask_filter _nuclei --chan 0 --chan2 0 --use_gpu --verbose cyto_from_sqrdpc: cellpose --train --dir 'data/train/' --test_dir 'data/test/' --pretrained_model cyto2 --img_filter _sqrdpc --mask_filter _cyto --chan 0 --chan2 0 --use_gpu --verbose NOTE (§): We provide a notebook for Quality Control, which is an adaptation of the "Cellpose (2D and 3D)" notebook from ZeroCostDL4Mic . NOTE: This dataset used a training dataset from the Zenodo entry(https://doi.org/10.5281/zenodo.6140064) generated from the “HeLa “Kyoto” cells under the scope” dataset Zenodo entry(https://doi.org/10.5281/zenodo.6139958) in order to automatically generate the label images. NOTE: Make sure that you delete the “_flow” images that are auto-computed when running the training. If you do not, then the flows from previous runs will be used for the new training, which might yield confusing results.
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2023-06-28
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