Aliza MS: free open-source DICOM viewer (Free app)

Table of Content

Aliza MS is a free open-source DICOM viewer with a dozen of clinical-ready features.

It is available for Windows, Linux, and macOS. Because it is primarily written in C++ and C, It has a good performance even in working with large files and data sets.

Features

  • Very fast directory scanner, DICOMDIR

  • 2D and 3D views with many tools

  • View uniform and non-uniform series in physical space

  • 2D+t, 3D+t animations

  • Consistently de-identify DICOM

  • View DICOM metadata

  • Ultrasound incl. proper measurement in regions, cine

  • Scout (localizer) lines

  • Grayscale soft copy presentation

  • Structured report

  • Compressed images

  • RTSTRUCT contours

  • Siemens mosaic format

  • United Imaging Healthcare (UIH) Grid / VFrame format

  • Elscint ELSCINT1 PMSCT_RLE1 and PMSCT_RGB1

  • Compressed images

  • Fast directory scanner, DICOMDIR

  • View uniform and non-uniform series in physical space

  • Ultrasound incl. proper measurement in regions, cine

  • Intersections in study

  • Grayscale softcopy presentation

  • SR (structured report)

  • RTSTRUCT contours

  • 2D and 3D views with many tools

  • Registration (Elastix front-end)

  • Fusion (e,g. PET-CT)

  • 100+ filters

  • PET SUV

  • SR (structured report)

  • DWI

  • Mesh to binary, labels to mesh and other segmentation tools

  • Medical imaging formats (import/export): MetaIO, Nrrd, Nifti

  • Meshes (import/export): DICOM, VTK, OBJ, STL

  • Draw and detect contours

  • DICOM export

  • DICOM tools

  • Save and edit DICOM metadata

Platforms

macOS Windows and Linux

License

AlizaMS is released under the GPL-3.0 License

Tags

dicom,dicom viewer,medicine,medical,radiology,medical imaging,healthcare,medicine

Resources

Github








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