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ResourceDescriptionFunctionalityTCIA Data AccessPlatform
3D Slicer TCIA Browser extension3D Slicer (http://slicer.org) is a free and open source platform for medical image visualization and quantitative analysis. The TCIA Browser extension of 3D Slicer enables integration of the versatile visualization and computing tools of 3D Slicer with unique data resources of TCIA. Among other capabilities, 3D Slicer enables 2-, 3-, and 4-d visualization tools, DICOM interoperability for both images and image annotations, radiomics feature calculation, multi-modality fusion and deformable registration, a collection of segmentation tools, Matlab and python interface, and integration of such libraries as ITK, VTK, DCMTK and numpy. Visualization and AnalysisAPIWindows, Mac OS X, Linux
CancerImagingArchive.jlJulia interface for exploring and downloading data on The Cancer Imaging Archive (TCIA)Data accessAPIWindows, Mac OS X, Linux
Community Code Share on GithubIf you've developed open source code you'd like to share with the community you can use Github's topic feature to make it discoverable by tagging it with "tcia-dac". Please note these tools are not directly supported by TCIA or its helpdesk.Data access, Visualization, and AnalysisAPI / MirroredMiscellaneous
DataScopeAn open source data exploration and visual analytic tool that uses a declarative grammar to author interactive dashboards. Using a series of JSON files that describe the data, we are able to fuse clinical, radiology and digital pathology data. The TCIA CPTAC Pathology Portal is powered by DataScope.Data access, VisualizationAPIWeb application
ePADePAD is a freely available quantitative imaging informatics platform, developed by the Rubin Lab at Stanford Medicine Radiology at Stanford University.  Its built-in connection to our REST API allows TCIA data to be seemlessly imported into ePAD for analysis.Visualization and AnalysisAPIWeb application
G-DOC PlusThe Georgetown Database of Cancer Plus other diseases (G-DOC Plus) is a precision medicine platform containing molecular and clinical data from thousands of patients and cell lines, along with tools for analysis and data visualization. It contains mirrored data from the BREAST-DIAGNOSIS collection.Visualization and AnalysisMirroredWeb application
Google Cloud Healthcare APIThe Cloud Healthcare API provides access to TCIA datasets via Google Cloud Platform (GCP) from Cloud Storage, BigQuery, or using the Cloud Healthcare API as described in GCP data access.Data AccessMirroredWeb application
NCI Imaging Data CommonsNCI Imaging Data Commons (IDC) is a cloud-based resource within NCI Cancer Research Data Commons (CRDC) that connects researchers with cancer imaging datasets, resources for exploring those datasets and identifying relevant cohorts, and other components of CRDC that will host additional data types and support computation on the defined cohorts.Visualization and AnalysisMirroredCloud-based platform
Oncora Medical TCIA boostrapperRepository with minimal docker compose configuration and script to create a DICOM server with a TCIA collection locally.  Can be extended modularly with additional docker images for deep learning experiments.Data AccessAPIWindows, Mac OS X, Linux
PRISM PathDB

PRISM Pathology Data Management Prototype for TCIA

Data access, Visualization, and AnalysisAPIWeb application
prostatecancer.aiTesseract-MedicalImaging (Tesseract-MI) is an open-source, web-based platform which enables deployment of AI models while simultaneously providing standard image viewing and reporting schemes. The goal of Tesseract-MI is to augment 3D medical imaging and provide a 4th dimension (AI) when requested by a user. As a case study, we demonstrate the utility of our platform and present ProstateCancer.ai (see also: https://github.com/Tesseract-MI/prostatecancer.ai), a web application which uses data from SPIE-AAPM-NCI PROSTATEx Challenges for identification of clinically significant prostate cancer in MRI. The user can put the AI-assisted probe at any location on the images to see the result of the AI prediction for that specific location. For the reporting, the user can utilize the PI-RADS v2 interface which is provided. All the user's annotations will be saved in a database for further analysis. Visualization and AnalysisMirroredWeb application
pylidcpylidc is a python library intended to improve workflow associated with the LIDC dataset.Visualization and AnalysisN/AWindows, Mac OS X, Linux
Seven Bridges Cancer Genomics Cloud (CGC)An NCI-funded platform that is available to any non-commercial researcher for cloud-based data access and analysis. Through the CGC, users can access petabytes of public data, including select collections from TCIA, as well as hundreds of bioinformatic tools and workflows for scalable, cost-effective analysis in the cloud alongside their own data.Data Access, Visualization, AnalysisMirroredWeb application
TCIApathfinder
A user-friendly R client for the TCIA REST API
Data accessAPIWindows, Mac OS X, Linux
TCIA-Python3-DownloaderA python3 client designed to provide users of The Cancer Imaging Archive with the ability to easily interact and download data from the TCIA Programmatic Interface (REST API).Data AccessAPIWindows, Mac OS X, Linux
Zegami

Zegami helps easily find patterns, outliers and trends in large, curated image data sets, and uncover bias, overfitting and misclassifications in machine learning models, to assist with providing explainability of your Machine Learning models.  

Our scalable, cloud-based platform is powered by an image rendering engine and based on gaming technology. It can display tens of thousands of images (static or dynamic) over low bandwidth connections, and supports a wide variety of image and video formats .

Our solution helps with: 

  • Preparing high quality, unbiased and diverse training data sets    
  • Reducing time-consuming data preparation and cleansing processes, enabling faster ROI   
  • Un-blackboxing your ML models to achieve explainability 
  • Benchmarking your model’s predictive power vs. the gold standard    
  • Validating your models to assist with achieving regulatory compliance    
  • Lifecycle management of AI and monitoring of performance over time 

Check this publicly available demo using the CBIS-DDSM dataset sourced from TCIA: https://zegami.com/demo/dicom-mammograms/
Visualization, AnalysisMirroredWeb application