Instructors:
- Matt McCormick, PhD
- Dženan Zukić, PhD
- Francois Budin
The Insight Toolkit (ITK) (www.itk.org) has become a standard in academia and industry for medical image analysis. In recent years, the ITK community has focused on providing programming interfaces to ITK from Python and JavaScript and making ITK available via leading applications such as Slicer and ImageJ. In this course we present best practices for taking advantage of ITK in your imaging research and commercial products. We demonstrate how script writing and can be used to access the algorithms in ITK and the multitude of ITK extensions that are freely available on the web.
There are many ways to run these tutorials.
To run the notebooks in MyBinder, simply click this link.
First, install Python, if not already available.
Next, install the required dependencies:
python -m pip install tornado==5.1.1 jupyter matplotlib numpy scipy ipywidgets scikit-learn cookiecutter python -m pip install --upgrade --pre itk itk-texturefeatures python -m pip install itkwidgets
Then, clone the repository:
git clone https://github.com/KitwareMedical/2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization.git cd 2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization
And start Jupyter:
python -m jupyter notebook
First, install MiniConda or Anaconda, if not already available.
Next, install the required dependencies:
conda install -c conda-forge jupyter matplotlib numpy scipy ipywidgets scikit-learn cookiecutter python -m pip install --upgrade --pre itk itk-texturefeatures python -m pip install itkwidgets
Then, clone the repository:
git clone https://github.com/KitwareMedical/2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization.git cd 2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization
And start Jupyter:
python -m jupyter notebook
First, install Docker, if not already available.
Next, clone the repository:
git clone https://github.com/KitwareMedical/2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization.git cd 2019-03-13-KRSCourseInBiomedicalImageAnalysisAndVisualization
Then, build and run the Docker image:
./build.sh ./run.sh
Paste the URL presented in the terminal in your web browser.
To run under [Jupyter Lab](https://jupyterlab.readthedocs.io/en/stable/) instead of the Jupyter Notebook, install the jupyterlab package and [Node.js](https://nodejs.org/en/download/), e.g.:
conda install jupyterlab nodejs
Then install the required extensions:
jupyter labextension install @jupyter-widgets/jupyterlab-manager itk-jupyter-widgets
And start Jupyter with:
python -m jupyter lab
instead of:
python -m jupyter notebook