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MONAI Label is a server-client system that facilitates interactive medical image annotation by using AI. It is an open-source and easy-to-install ecosystem that can run locally on a machine with single or multiple GPUs. Both server and client work on the same/different machine. It shares the same principles with MONAI.
The aim of the project is to set up, train and evaluate a lung and airway server model in MONAI Label
fine tune the MONAI Label server
provide links
This is the dataset we have been using:
Decathlon lung dataset (Task06_lung) 63 cases with lung tumors http://medicaldecathlon.com/
It is available for download (8 GB) after installation of MONAI Label and running this command in a powershell or bash: (edited)
monailabel datasets --download --name Task06_Lung --output datasets
Fig 1: MONAI Label inference after providing 2 high quality samples and training (50 epochs): Not usable
Fig 2: Status after providing 5 more high-quality labels and training 1000 epochs / 5 iterations (1 h with RTX 3070 Ti), “deepedit” model:
ML is able to divide right and left lungs as well as airways, but resolution is low.
Fig 3: Status after labelling 17 more datasets, training another 1000 epochs / 22 iterations (6 h with RTX 3070 Ti), “segmentation” model:
Much better resolution.
Fig 4: Autosegmentation after label correction, 500 epochs / 22 iterations training (1.5h RTX 3070 Ti):
Good result!
https://github.com/Project-MONAI/MONAILabel
https://github.com/rbumm/SlicerLungCTAnalyzer