Published February 19, 2021
| Version 1
Dataset
Open
Example dataset MiNTiF semantic segmentation
Description
This data set serves as an example for the application of the MiNTiF plugin (https://github.com/CAiM-lab/MiNTiF). Users can test the data set creation, training, prediction, and reconstruction functionality on this data set.
The pre-trained model will predict semantic segmentation masks for Arteries and Sinusoids based using the markers DAPI, Endomucin, CXCL12, Endoglin and Collagen as input.
- raw training data contains the original training samples to train a model.
- pretrained model contains a pretrained model that can be applied on MiNTiF datasets. Use MiNTiF to apply this model to "tiled mintif file.h5".
- test data for prediction contains a dataset that can be used to test the prediction and reconstruction in MiNTiF
- info_channel_indices.txt contains the marker channels used in this dataset and the corresponding indices to use in MiNTiF .
- original_raw_file.ims is the original image file before conversion to tiled mintif file.h5 . Use this to test the dataset creation
- tiled mintif file.h5 is the MiNTiF file converted from original_file.ims. Predict on this file
- reconstructed_file_with_prediction.tiff is the image in tiled mintif file.h5 reconstructed after prediction. It now contains two additional channel with the prediction channels.
Files
Example dataset MiNTiF semantic segmentation.zip
Files
(4.8 GB)
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