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metadata
datasets:
  - name: Stereotactic Radiosurgery Dataset (SRS)
  - description: >-
      A comprehensive dataset designed for developing AI models in Stereotactic
      Radiosurgery (SRS). This dataset includes clinical, imaging, tumor
      segmentation, and treatment planning data to support research in automated
      contouring, dose prediction, and treatment optimization.
  - license: CC BY-NC 4.0
  - tags:
      - medical-imaging
      - radiotherapy
      - tumor-segmentation
      - dose-optimization
      - AI-healthcare
  - languages:
      - en

🎯 Stereotactic Radiosurgery Dataset (SRS)

🎯 Overview

The Stereotactic Radiosurgery Dataset is a meticulously curated dataset tailored for research in advanced AI applications for Stereotactic Radiosurgery (SRS). This dataset is ideal for tasks like automated tumor segmentation, treatment planning optimization, dose prediction, and patient response modeling.


πŸ“Š Dataset Summary

Feature Details
πŸ₯ Clinical Data 400 patient records with demographic and medical history information.
🧠 Imaging Data High-resolution CT, MRI, and PET scans with isotropic and anisotropic voxel sizes.
🎯 Tumor Segmentations Segmentation paths for GTV, CTV, and PTV with inter-observer variability.
βš™οΈ Treatment Plans Beam arrangements, dose distributions, DVHs, and optimization objectives.
πŸ“‚ File Formats Metadata in CSV and images/segmentations in NIfTI.

πŸ’‘ Features

1. Clinical Data

  • Patient demographics: Age, gender, weight, height.
  • Medical history: Comorbidities, previous treatments.
  • Tumor details: Histology, grade, and stage.

2. Imaging Data

  • Modalities: CT, MRI, and PET.
  • Imaging protocols: Contrast-enhanced and non-contrast-enhanced scans.
  • Scanner metadata: Manufacturer and model.

3. Tumor Segmentation

  • Gross Tumor Volume (GTV), Clinical Target Volume (CTV), and Planning Target Volume (PTV).
  • Segmentation paths stored in NIfTI format.

4. Treatment Plans

  • Dose distributions, beam arrangements, and dose-volume histograms (DVHs).
  • Optimization goals: Tumor dose maximization and organ sparing.

πŸ” Usage

This dataset supports multiple applications:

  • Automated Contouring: Train models for accurate tumor volume delineation.
  • Treatment Optimization: Develop algorithms for optimized treatment plans.
  • Patient Outcome Prediction: Research predictive analytics for treatment response.

πŸ› οΈ File Organization

  • Main CSV: Contains metadata for all patient cases.
  • Synthetic Images: Paths to synthetic CT, MRI, and PET scans.
  • Tumor Segmentations: Paths to NIfTI files for GTV, CTV, and PTV segmentations.
  • Simulated Paths: Placeholder paths simulate real-world usage scenarios.

🎨 Visual Example

Below is an example row from the dataset:

Feature Example Value
Patient_ID SIM-0001
Age 36
Imaging Modality CT
Tumor Histology Meningioma
GTV_Segmentation_Path /simulated/path/SIM-0001_GTV_segmentation.nii
Beam Arrangements Single
Dose Distributions (Gy) 35.04

πŸ“œ Citations

If you use this dataset, please cite it as follows:


πŸ’¬ Contact

For questions, reach out to the dataset maintainer: A Taylor


πŸ”’ Licensing

This dataset is licensed under apache-2.0.