Claude-skill-registry imaging-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.
git clone https://github.com/majiayu000/claude-skill-registry
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/imaging-data-commons" ~/.claude/skills/majiayu000-claude-skill-registry-imaging-data-commons && rm -rf "$T"
skills/data/imaging-data-commons/SKILL.mdImaging Data Commons
Overview
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.
Primary tool:
idc-index (GitHub)
Check current data scale for the latest version:
from idc_index import IDCClient client = IDCClient() # get IDC data version print(client.get_idc_version()) # Get collection count and total series stats = client.sql_query(""" SELECT COUNT(DISTINCT collection_id) as collections, COUNT(DISTINCT analysis_result_id) as analysis_results, COUNT(DISTINCT PatientID) as patients, COUNT(DISTINCT StudyInstanceUID) as studies, COUNT(DISTINCT SeriesInstanceUID) as series, SUM(instanceCount) as instances, SUM(series_size_MB)/1000000 as size_TB FROM index """) print(stats)
Core workflow:
- Query metadata →
client.sql_query() - Download DICOM files →
client.download_from_selection() - Visualize in browser →
client.get_viewer_URL(seriesInstanceUID=...)
When to Use This Skill
- Finding publicly available radiology (CT, MR, PET) or pathology (slide microscopy) images
- Selecting image subsets by cancer type, modality, anatomical site, or other metadata
- Downloading DICOM data from IDC
- Checking data licenses before use in research or commercial applications
- Visualizing medical images in a browser without local DICOM viewer software
IDC Data Model
IDC adds two grouping levels above the standard DICOM hierarchy (Patient → Study → Series → Instance):
- collection_id: Groups patients by disease, modality, or research focus (e.g.,
,tcga_luad
). A patient belongs to exactly one collection.nlst - analysis_result_id: Identifies derived objects (segmentations, annotations, radiomics features) across one or more original collections.
Use
collection_id to find original imaging data, may include annotations deposited along with the images; use analysis_result_id to find AI-generated or expert annotations.
Key identifiers for queries:
| Identifier | Scope | Use for |
|---|---|---|
| Dataset grouping | Filtering by project/study |
| Patient | Grouping images by patient |
| DICOM study | Grouping of related series, visualization |
| DICOM series | Grouping of related series, visualization |
Index Tables
The
idc-index package provides multiple metadata index tables, accessible via SQL or as pandas DataFrames.
Important: Use
client.indices_overview to get current table descriptions and column schemas. This is the authoritative source for available columns and their types — always query it when writing SQL or exploring data structure.
Available Tables
| Table | Row Granularity | Loaded | Description |
|---|---|---|---|
| 1 row = 1 DICOM series | Auto | Primary metadata for all current IDC data |
| 1 row = 1 DICOM series | Auto | Series from previous IDC releases; for downloading deprecated data |
| 1 row = 1 collection | fetch_index() | Collection-level metadata and descriptions |
| 1 row = 1 analysis result collection | fetch_index() | Metadata about derived datasets (annotations, segmentations) |
| 1 row = 1 clinical data column | fetch_index() | Dictionary mapping clinical table columns to collections |
| 1 row = 1 slide microscopy series | fetch_index() | Slide Microscopy (pathology) series metadata |
| 1 row = 1 slide microscopy instance | fetch_index() | Instance-level (SOPInstanceUID) metadata for slide microscopy |
| 1 row = 1 DICOM Segmentation series | fetch_index() | Segmentation metadata: algorithm, segment count, reference to source image series |
Auto = loaded automatically when
IDCClient() is instantiated
fetch_index() = requires client.fetch_index("table_name") to load
Joining Tables
Key columns are not explicitly labeled, the following is a subset that can be used in joins.
| Join Column | Tables | Use Case |
|---|---|---|
| index, prior_versions_index, collections_index, clinical_index | Link series to collection metadata or clinical data |
| index, prior_versions_index, sm_index, sm_instance_index | Link series across tables; connect to slide microscopy details |
| index, prior_versions_index | Link studies across current and historical data |
| index, prior_versions_index | Link patients across current and historical data |
| index, analysis_results_index | Link series to analysis result metadata (annotations, segmentations) |
| index, analysis_results_index | Link by publication DOI |
| index, prior_versions_index | Link by CRDC unique identifier |
| index, prior_versions_index | Filter by imaging modality |
| index, seg_index | Link segmentation series to its index metadata |
| seg_index → index | Link segmentation to its source image series (join seg_index.segmented_SeriesInstanceUID = index.SeriesInstanceUID) |
Note:
Subjects, Updated, and Description appear in multiple tables but have different meanings (counts vs identifiers, different update contexts).
Example joins:
from idc_index import IDCClient client = IDCClient() # Join index with collections_index to get cancer types client.fetch_index("collections_index") result = client.sql_query(""" SELECT i.SeriesInstanceUID, i.Modality, c.CancerTypes, c.TumorLocations FROM index i JOIN collections_index c ON i.collection_id = c.collection_id WHERE i.Modality = 'MR' LIMIT 10 """) # Join index with sm_index for slide microscopy details client.fetch_index("sm_index") result = client.sql_query(""" SELECT i.collection_id, i.PatientID, s.ObjectiveLensPower, s.min_PixelSpacing_2sf FROM index i JOIN sm_index s ON i.SeriesInstanceUID = s.SeriesInstanceUID LIMIT 10 """) # Join seg_index with index to find segmentations and their source images client.fetch_index("seg_index") result = client.sql_query(""" SELECT s.SeriesInstanceUID as seg_series, s.AlgorithmName, s.total_segments, src.collection_id, src.Modality as source_modality, src.BodyPartExamined FROM seg_index s JOIN index src ON s.segmented_SeriesInstanceUID = src.SeriesInstanceUID WHERE s.AlgorithmType = 'AUTOMATIC' LIMIT 10 """)
Accessing Index Tables
Via SQL (recommended for filtering/aggregation):
from idc_index import IDCClient client = IDCClient() # Query the primary index (always available) results = client.sql_query("SELECT * FROM index WHERE Modality = 'CT' LIMIT 10") # Fetch and query additional indices client.fetch_index("collections_index") collections = client.sql_query("SELECT collection_id, CancerTypes, TumorLocations FROM collections_index") client.fetch_index("analysis_results_index") analysis = client.sql_query("SELECT * FROM analysis_results_index LIMIT 5")
As pandas DataFrames (direct access):
# Primary index (always available after client initialization) df = client.index # Fetch and access on-demand indices client.fetch_index("sm_index") sm_df = client.sm_index
Discovering Table Schemas (Essential for Query Writing)
The
indices_overview dictionary contains complete schema information for all tables. Always consult this when writing queries or exploring data structure.
DICOM attribute mapping: Many columns are populated directly from DICOM attributes in the source files. The column description in the schema indicates when a column corresponds to a DICOM attribute (e.g., "DICOM Modality attribute" or references a DICOM tag). This allows leveraging DICOM knowledge when querying — standard DICOM attribute names like
PatientID, StudyInstanceUID, Modality, BodyPartExamined work as expected.
from idc_index import IDCClient client = IDCClient() # List all available indices with descriptions for name, info in client.indices_overview.items(): print(f"\n{name}:") print(f" Installed: {info['installed']}") print(f" Description: {info['description']}") # Get complete schema for a specific index (columns, types, descriptions) schema = client.indices_overview["index"]["schema"] print(f"\nTable: {schema['table_description']}") print("\nColumns:") for col in schema['columns']: desc = col.get('description', 'No description') # Description indicates if column is from DICOM attribute print(f" {col['name']} ({col['type']}): {desc}") # Find columns that are DICOM attributes (check description for "DICOM" reference) dicom_cols = [c['name'] for c in schema['columns'] if 'DICOM' in c.get('description', '').upper()] print(f"\nDICOM-sourced columns: {dicom_cols}")
Alternative: use
method:get_index_schema()
schema = client.get_index_schema("index") # Returns same schema dict: {'table_description': ..., 'columns': [...]}
Key Columns in Primary index
Table
indexMost common columns for queries (use
indices_overview for complete list and descriptions):
| Column | Type | DICOM | Description |
|---|---|---|---|
| STRING | No | IDC collection identifier |
| STRING | No | If applicable, indicates what analysis results collection given series is part of |
| STRING | No | DOI linking to dataset details; use for learning more about the content and for attribution (see citations below) |
| STRING | Yes | Patient identifier |
| STRING | Yes | DICOM Study UID |
| STRING | Yes | DICOM Series UID — use for downloads/viewing |
| STRING | Yes | Imaging modality (CT, MR, PT, SM, etc.) |
| STRING | Yes | Anatomical region |
| STRING | Yes | Description of the series |
| STRING | Yes | Equipment manufacturer |
| STRING | Yes | Date study was performed |
| STRING | Yes | Patient sex |
| STRING | Yes | Patient age at time of study |
| STRING | No | License type (CC BY 4.0, CC BY-NC 4.0, etc.) |
| FLOAT | No | Size of series in megabytes |
| INTEGER | No | Number of DICOM instances in series |
DICOM = Yes: Column value extracted from the DICOM attribute with the same name. Refer to the DICOM standard for numeric tag mappings. Use standard DICOM knowledge for expected values and formats.
Clinical Data Access
# Fetch clinical index (also downloads clinical data tables) client.fetch_index("clinical_index") # Query clinical index to find available tables and their columns tables = client.sql_query("SELECT DISTINCT table_name, column_label FROM clinical_index") # Load a specific clinical table as DataFrame clinical_df = client.get_clinical_table("table_name")
Data Access Options
| Method | Auth Required | Best For |
|---|---|---|
| No | Key queries and downloads (recommended) |
| IDC Portal | No | Interactive exploration, manual selection, browser-based download |
| BigQuery | Yes (GCP account) | Complex queries, full DICOM metadata |
| DICOMweb proxy | No | Tool integration via DICOMweb API |
DICOMweb access
IDC data is available via DICOMweb interface (Google Cloud Healthcare API implementation) for integration with PACS systems and DICOMweb-compatible tools.
| Endpoint | Auth | Use Case |
|---|---|---|
| Public proxy | No | Testing, moderate queries, daily quota |
| Google Healthcare | Yes (GCP) | Production use, higher quotas |
See
references/dicomweb_guide.md for endpoint URLs, code examples, supported operations, and implementation details.
Installation and Setup
Required (for basic access):
pip install --upgrade idc-index
Important: New IDC data release will always trigger a new version of
idc-index. Always use --upgrade flag while installing, unless an older version is needed for reproducibility.
Tested with: idc-index 0.11.7 (IDC data version v23)
Optional (for data analysis):
pip install pandas numpy pydicom
Core Capabilities
1. Data Discovery and Exploration
Discover what imaging collections and data are available in IDC:
from idc_index import IDCClient client = IDCClient() # Get summary statistics from primary index query = """ SELECT collection_id, COUNT(DISTINCT PatientID) as patients, COUNT(DISTINCT SeriesInstanceUID) as series, SUM(series_size_MB) as size_mb FROM index GROUP BY collection_id ORDER BY patients DESC """ collections_summary = client.sql_query(query) # For richer collection metadata, use collections_index client.fetch_index("collections_index") collections_info = client.sql_query(""" SELECT collection_id, CancerTypes, TumorLocations, Species, Subjects, SupportingData FROM collections_index """) # For analysis results (annotations, segmentations), use analysis_results_index client.fetch_index("analysis_results_index") analysis_info = client.sql_query(""" SELECT analysis_result_id, analysis_result_title, Subjects, Collections, Modalities FROM analysis_results_index """)
provides curated metadata per collection: cancer types, tumor locations, species, subject counts, and supporting data types — without needing to aggregate from the primary index.collections_index
lists derived datasets (AI segmentations, expert annotations, radiomics features) with their source collections and modalities.analysis_results_index
2. Querying Metadata with SQL
Query the IDC mini-index using SQL to find specific datasets.
First, explore available values for filter columns:
from idc_index import IDCClient client = IDCClient() # Check what Modality values exist modalities = client.sql_query(""" SELECT DISTINCT Modality, COUNT(*) as series_count FROM index GROUP BY Modality ORDER BY series_count DESC """) print(modalities) # Check what BodyPartExamined values exist for MR modality body_parts = client.sql_query(""" SELECT DISTINCT BodyPartExamined, COUNT(*) as series_count FROM index WHERE Modality = 'MR' AND BodyPartExamined IS NOT NULL GROUP BY BodyPartExamined ORDER BY series_count DESC LIMIT 20 """) print(body_parts)
Then query with validated filter values:
# Find breast MRI scans (use actual values from exploration above) results = client.sql_query(""" SELECT collection_id, PatientID, SeriesInstanceUID, Modality, SeriesDescription, license_short_name FROM index WHERE Modality = 'MR' AND BodyPartExamined = 'BREAST' LIMIT 20 """) # Access results as pandas DataFrame for idx, row in results.iterrows(): print(f"Patient: {row['PatientID']}, Series: {row['SeriesInstanceUID']}")
To filter by cancer type, join with
:collections_index
client.fetch_index("collections_index") results = client.sql_query(""" SELECT i.collection_id, i.PatientID, i.SeriesInstanceUID, i.Modality FROM index i JOIN collections_index c ON i.collection_id = c.collection_id WHERE c.CancerTypes LIKE '%Breast%' AND i.Modality = 'MR' LIMIT 20 """)
Available metadata fields (use
client.indices_overview for complete list):
- Identifiers: collection_id, PatientID, StudyInstanceUID, SeriesInstanceUID
- Imaging: Modality, BodyPartExamined, Manufacturer, ManufacturerModelName
- Clinical: PatientAge, PatientSex, StudyDate
- Descriptions: StudyDescription, SeriesDescription
- Licensing: license_short_name
Note: Cancer type is in
collections_index.CancerTypes, not in the primary index table.
3. Downloading DICOM Files
Download imaging data efficiently from IDC's cloud storage:
Download entire collection:
from idc_index import IDCClient client = IDCClient() # Download small collection (RIDER Pilot ~1GB) client.download_from_selection( collection_id="rider_pilot", downloadDir="./data/rider" )
Download specific series:
# First, query for series UIDs series_df = client.sql_query(""" SELECT SeriesInstanceUID FROM index WHERE Modality = 'CT' AND BodyPartExamined = 'CHEST' AND collection_id = 'nlst' LIMIT 5 """) # Download only those series client.download_from_selection( seriesInstanceUID=list(series_df['SeriesInstanceUID'].values), downloadDir="./data/lung_ct" )
Custom directory structure:
Default
dirTemplate: %collection_id/%PatientID/%StudyInstanceUID/%Modality_%SeriesInstanceUID
# Simplified hierarchy (omit StudyInstanceUID level) client.download_from_selection( collection_id="tcga_luad", downloadDir="./data", dirTemplate="%collection_id/%PatientID/%Modality" ) # Results in: ./data/tcga_luad/TCGA-05-4244/CT/ # Flat structure (all files in one directory) client.download_from_selection( seriesInstanceUID=list(series_df['SeriesInstanceUID'].values), downloadDir="./data/flat", dirTemplate="" ) # Results in: ./data/flat/*.dcm
Command-Line Download
The
idc download command provides command-line access to download functionality without writing Python code. Available after installing idc-index.
Auto-detects input type: manifest file path, or identifiers (collection_id, PatientID, StudyInstanceUID, SeriesInstanceUID, crdc_series_uuid).
# Download entire collection idc download rider_pilot --download-dir ./data # Download specific series by UID idc download "1.3.6.1.4.1.9328.50.1.69736" --download-dir ./data # Download multiple items (comma-separated) idc download "tcga_luad,tcga_lusc" --download-dir ./data # Download from manifest file (auto-detected) idc download manifest.txt --download-dir ./data
Options:
| Option | Description |
|---|---|
| Output directory (default: current directory) |
| Directory hierarchy template (default: ) |
| Verbosity: debug, info, warning, error, critical |
Manifest files:
Manifest files contain S3 URLs (one per line) and can be:
- Exported from the IDC Portal after cohort selection
- Shared by collaborators for reproducible data access
- Generated programmatically from query results
Format (one S3 URL per line):
s3://idc-open-data/cb09464a-c5cc-4428-9339-d7fa87cfe837/* s3://idc-open-data/88f3990d-bdef-49cd-9b2b-4787767240f2/*
Example: Generate manifest from Python query:
from idc_index import IDCClient client = IDCClient() # Query for series URLs results = client.sql_query(""" SELECT series_aws_url FROM index WHERE collection_id = 'rider_pilot' AND Modality = 'CT' """) # Save as manifest file with open('ct_manifest.txt', 'w') as f: for url in results['series_aws_url']: f.write(url + '\n')
Then download:
idc download ct_manifest.txt --download-dir ./ct_data
4. Visualizing IDC Images
View DICOM data in browser without downloading:
from idc_index import IDCClient import webbrowser client = IDCClient() # First query to get valid UIDs results = client.sql_query(""" SELECT SeriesInstanceUID, StudyInstanceUID FROM index WHERE collection_id = 'rider_pilot' AND Modality = 'CT' LIMIT 1 """) # View single series viewer_url = client.get_viewer_URL(seriesInstanceUID=results.iloc[0]['SeriesInstanceUID']) webbrowser.open(viewer_url) # View all series in a study (useful for multi-series exams like MRI protocols) viewer_url = client.get_viewer_URL(studyInstanceUID=results.iloc[0]['StudyInstanceUID']) webbrowser.open(viewer_url)
The method automatically selects OHIF v3 for radiology or SLIM for slide microscopy. Viewing by study is useful when a DICOM Study contains multiple Series (e.g., T1, T2, DWI sequences from a single MRI session).
5. Understanding and Checking Licenses
Check data licensing before use (critical for commercial applications):
from idc_index import IDCClient client = IDCClient() # Check licenses for all collections query = """ SELECT DISTINCT collection_id, license_short_name, COUNT(DISTINCT SeriesInstanceUID) as series_count FROM index GROUP BY collection_id, license_short_name ORDER BY collection_id """ licenses = client.sql_query(query) print(licenses)
License types in IDC:
- CC BY 4.0 / CC BY 3.0 (~97% of data) - Allows commercial use with attribution
- CC BY-NC 4.0 / CC BY-NC 3.0 (~3% of data) - Non-commercial use only
- Custom licenses (rare) - Some collections have specific terms (e.g., NLM Terms and Conditions)
Important: Always check the license before using IDC data in publications or commercial applications. Each DICOM file is tagged with its specific license in metadata.
Generating Citations for Attribution
The
source_DOI column contains DOIs linking to publications describing how the data was generated. To satisfy attribution requirements, use citations_from_selection() to generate properly formatted citations:
from idc_index import IDCClient client = IDCClient() # Get citations for a collection (APA format by default) citations = client.citations_from_selection(collection_id="rider_pilot") for citation in citations: print(citation) # Get citations for specific series results = client.sql_query(""" SELECT SeriesInstanceUID FROM index WHERE collection_id = 'tcga_luad' LIMIT 5 """) citations = client.citations_from_selection( seriesInstanceUID=list(results['SeriesInstanceUID'].values) ) # Alternative format: BibTeX (for LaTeX documents) bibtex_citations = client.citations_from_selection( collection_id="tcga_luad", citation_format=IDCClient.CITATION_FORMAT_BIBTEX )
Parameters:
: Filter by collection(s)collection_id
: Filter by patient ID(s)patientId
: Filter by study UID(s)studyInstanceUID
: Filter by series UID(s)seriesInstanceUID
: Usecitation_format
constants:IDCClient.CITATION_FORMAT_*
(default) - APA styleCITATION_FORMAT_APA
- BibTeX for LaTeXCITATION_FORMAT_BIBTEX
- CSL JSONCITATION_FORMAT_JSON
- RDF TurtleCITATION_FORMAT_TURTLE
Best practice: When publishing results using IDC data, include the generated citations to properly attribute the data sources and satisfy license requirements.
6. Batch Processing and Filtering
Process large datasets efficiently with filtering:
from idc_index import IDCClient import pandas as pd client = IDCClient() # Find chest CT scans from GE scanners query = """ SELECT SeriesInstanceUID, PatientID, collection_id, ManufacturerModelName FROM index WHERE Modality = 'CT' AND BodyPartExamined = 'CHEST' AND Manufacturer = 'GE MEDICAL SYSTEMS' AND license_short_name = 'CC BY 4.0' LIMIT 100 """ results = client.sql_query(query) # Save manifest for later results.to_csv('lung_ct_manifest.csv', index=False) # Download in batches to avoid timeout batch_size = 10 for i in range(0, len(results), batch_size): batch = results.iloc[i:i+batch_size] client.download_from_selection( seriesInstanceUID=list(batch['SeriesInstanceUID'].values), downloadDir=f"./data/batch_{i//batch_size}" )
7. Advanced Queries with BigQuery
For queries requiring full DICOM metadata, complex JOINs, or clinical data tables, use Google BigQuery. Requires GCP account with billing enabled.
Quick reference:
- Dataset:
bigquery-public-data.idc_current.* - Main table:
(combined metadata)dicom_all - Full metadata:
(all DICOM tags)dicom_metadata
See
references/bigquery_guide.md for setup, table schemas, query patterns, and cost optimization.
8. Tool Selection Guide
| Task | Tool | Reference |
|---|---|---|
| Programmatic queries & downloads | | This document |
| Interactive exploration | IDC Portal | https://portal.imaging.datacommons.cancer.gov/ |
| Complex metadata queries | BigQuery | |
| 3D visualization & analysis | SlicerIDCBrowser | https://github.com/ImagingDataCommons/SlicerIDCBrowser |
Default choice: Use
idc-index for most tasks (no auth, easy API, batch downloads).
9. Integration with Analysis Pipelines
Integrate IDC data into imaging analysis workflows:
Read downloaded DICOM files:
import pydicom import os # Read DICOM files from downloaded series series_dir = "./data/rider/rider_pilot/RIDER-1007893286/CT_1.3.6.1..." dicom_files = [os.path.join(series_dir, f) for f in os.listdir(series_dir) if f.endswith('.dcm')] # Load first image ds = pydicom.dcmread(dicom_files[0]) print(f"Patient ID: {ds.PatientID}") print(f"Modality: {ds.Modality}") print(f"Image shape: {ds.pixel_array.shape}")
Build 3D volume from CT series:
import pydicom import numpy as np from pathlib import Path def load_ct_series(series_path): """Load CT series as 3D numpy array""" files = sorted(Path(series_path).glob('*.dcm')) slices = [pydicom.dcmread(str(f)) for f in files] # Sort by slice location slices.sort(key=lambda x: float(x.ImagePositionPatient[2])) # Stack into 3D array volume = np.stack([s.pixel_array for s in slices]) return volume, slices[0] # Return volume and first slice for metadata volume, metadata = load_ct_series("./data/lung_ct/series_dir") print(f"Volume shape: {volume.shape}") # (z, y, x)
Integrate with SimpleITK:
import SimpleITK as sitk from pathlib import Path # Read DICOM series series_path = "./data/ct_series" reader = sitk.ImageSeriesReader() dicom_names = reader.GetGDCMSeriesFileNames(series_path) reader.SetFileNames(dicom_names) image = reader.Execute() # Apply processing smoothed = sitk.CurvatureFlow(image1=image, timeStep=0.125, numberOfIterations=5) # Save as NIfTI sitk.WriteImage(smoothed, "processed_volume.nii.gz")
Common Use Cases
Use Case 1: Find and Download Lung CT Scans for Deep Learning
Objective: Build training dataset of lung CT scans from NLST collection
Steps:
from idc_index import IDCClient client = IDCClient() # 1. Query for lung CT scans with specific criteria query = """ SELECT PatientID, SeriesInstanceUID, SeriesDescription FROM index WHERE collection_id = 'nlst' AND Modality = 'CT' AND BodyPartExamined = 'CHEST' AND license_short_name = 'CC BY 4.0' ORDER BY PatientID LIMIT 100 """ results = client.sql_query(query) print(f"Found {len(results)} series from {results['PatientID'].nunique()} patients") # 2. Download data organized by patient client.download_from_selection( seriesInstanceUID=list(results['SeriesInstanceUID'].values), downloadDir="./training_data", dirTemplate="%collection_id/%PatientID/%SeriesInstanceUID" ) # 3. Save manifest for reproducibility results.to_csv('training_manifest.csv', index=False)
Use Case 2: Query Brain MRI by Manufacturer for Quality Study
Objective: Compare image quality across different MRI scanner manufacturers
Steps:
from idc_index import IDCClient import pandas as pd client = IDCClient() # Query for brain MRI grouped by manufacturer query = """ SELECT Manufacturer, ManufacturerModelName, COUNT(DISTINCT SeriesInstanceUID) as num_series, COUNT(DISTINCT PatientID) as num_patients FROM index WHERE Modality = 'MR' AND BodyPartExamined LIKE '%BRAIN%' GROUP BY Manufacturer, ManufacturerModelName HAVING num_series >= 10 ORDER BY num_series DESC """ manufacturers = client.sql_query(query) print(manufacturers) # Download sample from each manufacturer for comparison for _, row in manufacturers.head(3).iterrows(): mfr = row['Manufacturer'] model = row['ManufacturerModelName'] query = f""" SELECT SeriesInstanceUID FROM index WHERE Manufacturer = '{mfr}' AND ManufacturerModelName = '{model}' AND Modality = 'MR' AND BodyPartExamined LIKE '%BRAIN%' LIMIT 5 """ series = client.sql_query(query) client.download_from_selection( seriesInstanceUID=list(series['SeriesInstanceUID'].values), downloadDir=f"./quality_study/{mfr.replace(' ', '_')}" )
Use Case 3: Visualize Series Without Downloading
Objective: Preview imaging data before committing to download
from idc_index import IDCClient import webbrowser client = IDCClient() series_list = client.sql_query(""" SELECT SeriesInstanceUID, PatientID, SeriesDescription FROM index WHERE collection_id = 'acrin_nsclc_fdg_pet' AND Modality = 'PT' LIMIT 10 """) # Preview each in browser for _, row in series_list.iterrows(): viewer_url = client.get_viewer_URL(seriesInstanceUID=row['SeriesInstanceUID']) print(f"Patient {row['PatientID']}: {row['SeriesDescription']}") print(f" View at: {viewer_url}") # webbrowser.open(viewer_url) # Uncomment to open automatically
For additional visualization options, see the IDC Portal getting started guide or SlicerIDCBrowser for 3D Slicer integration.
Use Case 4: License-Aware Batch Download for Commercial Use
Objective: Download only CC-BY licensed data suitable for commercial applications
Steps:
from idc_index import IDCClient client = IDCClient() # Query ONLY for CC BY licensed data (allows commercial use with attribution) query = """ SELECT SeriesInstanceUID, collection_id, PatientID, Modality FROM index WHERE license_short_name LIKE 'CC BY%' AND license_short_name NOT LIKE '%NC%' AND Modality IN ('CT', 'MR') AND BodyPartExamined IN ('CHEST', 'BRAIN', 'ABDOMEN') LIMIT 200 """ cc_by_data = client.sql_query(query) print(f"Found {len(cc_by_data)} CC BY licensed series") print(f"Collections: {cc_by_data['collection_id'].unique()}") # Download with license verification client.download_from_selection( seriesInstanceUID=list(cc_by_data['SeriesInstanceUID'].values), downloadDir="./commercial_dataset", dirTemplate="%collection_id/%Modality/%PatientID/%SeriesInstanceUID" ) # Save license information cc_by_data.to_csv('commercial_dataset_manifest_CC-BY_ONLY.csv', index=False)
Best Practices
- Check licenses before use - Always query the
field and respect licensing terms (CC BY vs CC BY-NC)license_short_name - Generate citations for attribution - Use
to get properly formatted citations fromcitations_from_selection()
values; include these in publicationssource_DOI - Start with small queries - Use
clause when exploring to avoid long downloads and understand data structureLIMIT - Use mini-index for simple queries - Only use BigQuery when you need comprehensive metadata or complex JOINs
- Organize downloads with dirTemplate - Use meaningful directory structures like
%collection_id/%PatientID/%Modality - Cache query results - Save DataFrames to CSV files to avoid re-querying and ensure reproducibility
- Estimate size first - Check collection size before downloading - some collection sizes are in terabytes!
- Save manifests - Always save query results with Series UIDs for reproducibility and data provenance
- Read documentation - IDC data structure and metadata fields are documented at https://learn.canceridc.dev/
- Use IDC forum - Search for questons/answers and ask your questions to the IDC maintainers and users at https://discourse.canceridc.dev/
Troubleshooting
Issue: ModuleNotFoundError: No module named 'idc_index'
- Cause: idc-index package not installed
- Solution: Install with
pip install --upgrade idc-index
Issue: Download fails with connection timeout
- Cause: Network instability or large download size
- Solution:
- Download smaller batches (e.g., 10-20 series at a time)
- Check network connection
- Use
to organize downloads by batchdirTemplate - Implement retry logic with delays
Issue:
or billing errorsBigQuery quota exceeded
- Cause: BigQuery requires billing-enabled GCP project
- Solution: Use idc-index mini-index for simple queries (no billing required), or see
for cost optimization tipsreferences/bigquery_guide.md
Issue: Series UID not found or no data returned
- Cause: Typo in UID, data not in current IDC version, or wrong field name
- Solution:
- Check if data is in current IDC version (some old data may be deprecated)
- Use
to test query firstLIMIT 5 - Check field names against metadata schema documentation
Issue: Downloaded DICOM files won't open
- Cause: Corrupted download or incompatible viewer
- Solution:
- Check DICOM object type (Modality and SOPClassUID attributes) - some object types require specialized tools
- Verify file integrity (check file sizes)
- Use pydicom to validate:
pydicom.dcmread(file, force=True) - Try different DICOM viewer (3D Slicer, Horos, RadiAnt, QuPath)
- Re-download the series
Common SQL Query Patterns
Quick reference for common queries. For detailed examples with context, see the Core Capabilities section above.
Discover available filter values
# What modalities exist? client.sql_query("SELECT DISTINCT Modality FROM index") # What body parts for a specific modality? client.sql_query(""" SELECT DISTINCT BodyPartExamined, COUNT(*) as n FROM index WHERE Modality = 'CT' AND BodyPartExamined IS NOT NULL GROUP BY BodyPartExamined ORDER BY n DESC """) # What manufacturers for MR? client.sql_query(""" SELECT DISTINCT Manufacturer, COUNT(*) as n FROM index WHERE Modality = 'MR' GROUP BY Manufacturer ORDER BY n DESC """)
Find annotations and segmentations
Note: Not all image-derived objects belong to analysis result collections. Some annotations are deposited alongside original images. Use DICOM Modality or SOPClassUID to find all derived objects regardless of collection type.
# Find ALL segmentations and structure sets by DICOM Modality # SEG = DICOM Segmentation, RTSTRUCT = Radiotherapy Structure Set client.sql_query(""" SELECT collection_id, Modality, COUNT(*) as series_count FROM index WHERE Modality IN ('SEG', 'RTSTRUCT') GROUP BY collection_id, Modality ORDER BY series_count DESC """) # Find segmentations for a specific collection (includes non-analysis-result items) client.sql_query(""" SELECT SeriesInstanceUID, SeriesDescription, analysis_result_id FROM index WHERE collection_id = 'tcga_luad' AND Modality = 'SEG' """) # List analysis result collections (curated derived datasets) client.fetch_index("analysis_results_index") client.sql_query(""" SELECT analysis_result_id, analysis_result_title, Collections, Modalities FROM analysis_results_index """) # Find analysis results for a specific source collection client.sql_query(""" SELECT analysis_result_id, analysis_result_title FROM analysis_results_index WHERE Collections LIKE '%tcga_luad%' """) # Use seg_index for detailed DICOM Segmentation metadata client.fetch_index("seg_index") # Get segmentation statistics by algorithm client.sql_query(""" SELECT AlgorithmName, AlgorithmType, COUNT(*) as seg_count FROM seg_index WHERE AlgorithmName IS NOT NULL GROUP BY AlgorithmName, AlgorithmType ORDER BY seg_count DESC LIMIT 10 """) # Find segmentations for specific source images (e.g., chest CT) client.sql_query(""" SELECT s.SeriesInstanceUID as seg_series, s.AlgorithmName, s.total_segments, s.segmented_SeriesInstanceUID as source_series FROM seg_index s JOIN index src ON s.segmented_SeriesInstanceUID = src.SeriesInstanceUID WHERE src.Modality = 'CT' AND src.BodyPartExamined = 'CHEST' LIMIT 10 """) # Find TotalSegmentator results with source image context client.sql_query(""" SELECT seg_info.collection_id, COUNT(DISTINCT s.SeriesInstanceUID) as seg_count, SUM(s.total_segments) as total_segments FROM seg_index s JOIN index seg_info ON s.SeriesInstanceUID = seg_info.SeriesInstanceUID WHERE s.AlgorithmName LIKE '%TotalSegmentator%' GROUP BY seg_info.collection_id ORDER BY seg_count DESC """)
Query slide microscopy data
# sm_index has detailed metadata; join with index for collection_id client.fetch_index("sm_index") client.sql_query(""" SELECT i.collection_id, COUNT(*) as slides, MIN(s.min_PixelSpacing_2sf) as min_resolution FROM sm_index s JOIN index i ON s.SeriesInstanceUID = i.SeriesInstanceUID GROUP BY i.collection_id ORDER BY slides DESC """)
Estimate download size
# Size for specific criteria client.sql_query(""" SELECT SUM(series_size_MB) as total_mb, COUNT(*) as series_count FROM index WHERE collection_id = 'nlst' AND Modality = 'CT' """)
Link to clinical data
client.fetch_index("clinical_index") # Find collections with clinical data and their tables client.sql_query(""" SELECT collection_id, table_name, COUNT(DISTINCT column_label) as columns FROM clinical_index GROUP BY collection_id, table_name ORDER BY collection_id """)
Related Skills
The following skills complement IDC workflows for downstream analysis and visualization:
DICOM Processing
- pydicom - Read, write, and manipulate downloaded DICOM files. Use for extracting pixel data, reading metadata, anonymization, and format conversion. Essential for working with IDC radiology data (CT, MR, PET).
Pathology and Slide Microscopy
- histolab - Lightweight tile extraction and preprocessing for whole slide images. Use for basic slide processing, tissue detection, and dataset preparation from IDC slide microscopy data.
- pathml - Full-featured computational pathology toolkit. Use for advanced WSI analysis including multiplexed imaging, nucleus segmentation, and ML model training on pathology data downloaded from IDC.
Metadata Visualization
- matplotlib - Low-level plotting for full customization. Use for creating static figures summarizing IDC query results (bar charts of modalities, histograms of series counts, etc.).
- seaborn - Statistical visualization with pandas integration. Use for quick exploration of IDC metadata distributions, relationships between variables, and categorical comparisons with attractive defaults.
- plotly - Interactive visualization. Use when you need hover info, zoom, and pan for exploring IDC metadata, or for creating web-embeddable dashboards of collection statistics.
Data Exploration
- exploratory-data-analysis - Comprehensive EDA on scientific data files. Use after downloading IDC data to understand file structure, quality, and characteristics before analysis.
Resources
Schema Reference (Primary Source)
Always use
for current column schemas. This ensures accuracy with the installed idc-index version:client.indices_overview
# Get all column names and types for any table schema = client.indices_overview["index"]["schema"] columns = [(c['name'], c['type'], c.get('description', '')) for c in schema['columns']]
Reference Documentation
- bigquery_guide.md - Advanced BigQuery usage guide for complex metadata queries
- dicomweb_guide.md - DICOMweb endpoint URLs, code examples, and Google Healthcare API implementation details
- indices_reference - External documentation for index tables (may be ahead of the installed version)
External Links
- IDC Portal: https://portal.imaging.datacommons.cancer.gov/explore/
- Documentation: https://learn.canceridc.dev/
- Tutorials: https://github.com/ImagingDataCommons/IDC-Tutorials
- User Forum: https://discourse.canceridc.dev/
- idc-index GitHub: https://github.com/ImagingDataCommons/idc-index
- Citation: Fedorov, A., et al. "National Cancer Institute Imaging Data Commons: Toward Transparency, Reproducibility, and Scalability in Imaging Artificial Intelligence." RadioGraphics 43.12 (2023). https://doi.org/10.1148/rg.230180