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Create a database of DVHs, GUI with wxPython, plots with Bokeh

Project description

  DVHA logo

DVH Analytics (DVHA) is a software application for building a local database of radiation oncology treatment planning data. It imports data from DICOM-RT files (i.e., plan, dose, and structure), creates a SQL database, provides customizable plots, and provides tools for generating linear, multi-variable, and machine learning regressions.

PyPi Version LGTM Code Quality

DVHA Executables

Executable versions of DVHA can be found here. Please keep in mind this software is still in beta. If you have issues, compiling from source may be more informative.

About

DVH Analytics screenshot

In addition to viewing DVH data, this software provides methods to:

  • download queried data
  • create time-series plots of various planning and dosimetric variables
  • calculate correlations
  • generate multi-variable linear and machine learning regressions
  • share regression models with other DVHA users
  • additional screenshots available here

The code is built with these core libraries:

  • wxPython Phoenix - Build a native GUI on Windows, Mac, or Unix systems
  • Pydicom - Read, modify and write DICOM files with python code
  • dicompyler-core - A library of core radiation therapy modules for DICOM RT
  • Bokeh - Interactive Web Plotting for Python
  • scikit-learn - Machine Learning in Python

Installation

To install via pip:

pip install dvha

If you've installed via pip or setup.py, launch from your terminal with:

dvha

If you've cloned the project, but did not run the setup.py installer, launch DVHA with:

python dvha_app.py

See our installation notes for potential Shapely install issues on MS Windows and help setting up a PostgreSQL database if it is preferred over SQLite3.

Dependencies

Support

If you like DVHA and would like to support our mission, all we ask is that you cite us if we helped your publication, or help the DVHA community by submitting bugs, issues, feature requests, or solutions on the issues page.

Cite

DOI: https://doi.org/10.1002/acm2.12401
Cutright D, Gopalakrishnan M, Roy A, Panchal A, and Mittal BB. "DVH Analytics: A DVH database for clinicians and researchers." Journal of Applied Clinical Medical Physics 19.5 (2018): 413-427.

The previous web-based version described in the above publication can be found here but is no longer being developed.

Related Publications

DOI: https://doi.org/10.1016/j.adro.2019.11.006
Roy A, Cutright D, Gopalakrishnan M, Yeh AB, and Mittal BB. "A Risk-Adjusted Control Chart to Evaluate IMRT Plan Quality." Advances in Radiation Oncology (2019).

Selected Studies Using DVHA

5,000 Patients
National Cancer Institute (5R01CA219013-03): Active 8/1/17 → 7/31/22
Retrospective NCI Phantom-Monte Carlo Dosimetry for Late Effects in Wilms Tumor
Brannigan R (Co-Investigator), Kalapurakal J (PD/PI), Kazer R (Co-Investigator)

265 Patients
DOI: https://doi.org/10.1016/j.ijrobp.2019.06.2509
Gross J, et al. "Determining the organ at risk for lymphedema after regional nodal irradiation in breast cancer." International Journal of Radiation Oncology* Biology* Physics 105.3 (2019): 649-658.

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