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Introduction

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About

This is user guide for the dcmqiarrow-up-right (DICOM for Quantitative Imaging) library.

With dcmqi you can:

  • Convert certain types of results into standardized DICOM form. This can help you with

    • sharing data in archives like

    • interoperating with PACS and commercial tools

    • supporting data queries to both image data and analysis results

  • Convert DICOM data into a commonly used research file formats like JSON and NIfTI.

  • Integrate DICOM concepts into your analysis workflows so that intermediate results are encoded in a standardized manner, making it easy to share your data.

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License

dcmqi is distributed under .

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Tutorials

Check out our !

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Support

You can communicate you feedback, feature requests, comments or problem reports using any of the methods below:

  • post a question to [dcmqi google

    group]()

  • on dcmqi bug tracker

  • leave feedback directly in the

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Acknowledgments

To acknowledge dcmqi in an academic paper, please cite

Herz C, Fillion-Robin J-C, Onken M, Riesmeier J, Lasso A, Pinter C, Fichtinger G, Pieper S, Clunie D, Kikinis R, Fedorov A. dcmqi: An Open Source Library for Standardized Communication of Quantitative Image Analysis Results Using DICOM. Cancer Research. 2017;77(21):e87–e90 .

If you like dcmqi, please give the . This is an easy way to show thanks and it can help us qualify for useful services that are only open to widely recognized open projects.

This work is supported primarily by the National Institutes of Health, National Cancer Institute, , grant (U24 CA180918, PIs Kikinis and Fedorov). We also acknowledge support of the following grants: (P41 EB015902, PI Kikinis) and (P41 EB015898, PI Tempany).

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References

  1. Fedorov A, Clunie D, Ulrich E, Bauer C, Wahle A, Brown B, Onken M, Riesmeier J, Pieper S, Kikinis R, Buatti J, Beichel RR. (2016) DICOM for quantitative imaging biomarker development: a standards based approach to sharing clinical data and structured PET/CT analysis results in head and neck cancer research. PeerJ 4:e2057

  2. Herz C, Fillion-Robin J-C, Onken M, Riesmeier J, Lasso A, Pinter C, Fichtinger G, Pieper S, Clunie D, Kikinis R, Fedorov A. dcmqi: An Open Source Library for Standardized Communication of Quantitative Image Analysis Results Using DICOM. Cancer Research. 2017;77(21):e87–e90 .

standardizing data semantics

  • making your data self-described and better prepared for new uses

  • send email to

  • quantitative image analysisarrow-up-right
    TCIAarrow-up-right
    3-clause BSD licensearrow-up-right
    introductory tutorialarrow-up-right
    https://groups.google.com/forum/#!forum/dcmqiarrow-up-right
    submit issuearrow-up-right
    dcmqi user manualarrow-up-right
    http://cancerres.aacrjournals.org/content/77/21/e87arrow-up-right
    dcmqi repositoryarrow-up-right
    a star on githubarrow-up-right
    Informatics Technology for Cancer Research (ITCR) programarrow-up-right
    Quantitative Image Informatics for Cancer Research (QIICR)arrow-up-right
    Neuroimage Analysis Center (NAC)arrow-up-right
    National Center for Image Guided Therapy (NCIGT)arrow-up-right
    https://doi.org/10.7717/peerj.2057arrow-up-right
    http://cancerres.aacrjournals.org/content/77/21/e87arrow-up-right
    Andrey Fedorovarrow-up-right