PackageData AnalysisScientific Packages

imaging-data-commons

Data Commons

Query and download public cancer imaging data from NCI Imaging Data Commons using idc-index. Use for accessing large-scale radiology (CT, MR, PET) and pathology datasets for AI training or research. No authentication required. Query by metadata, visualize in browser, check licenses.

This page mirrors an upstream repository entry. It does not mean the skill is already part of the SCI Skills curated catalog.

Raw path
scientific-skills/imaging-data-commons
Allowed tools
-
Repository version
2.31.0
Synced at
March 27, 2026

About this skill

About this skill

Use the `idc-index` Python package to query and download public cancer imaging data from the National Cancer Institute Imaging Data Commons (IDC). No authentication required for data access.

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