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Published April 30, 2026 | Version v1
Dataset Open

Reproducibility Test Data for DeepCAC2 MHub.ai Model

  • 1. ROR icon Mass General Brigham
  • 2. ROR icon Harvard Medical School
  • 3. ROR icon Maastricht University

Description

This dataset provides test data for the DeepCAC2 model integrated within the MHub platform, a robust solution for deploying, managing, and testing deep learning models tailored for medical imaging. 

Dataset Composition:

  • Sample Folder: Contains the input data utilized for testing the model’s functionality.
  • Reference Folder: Contains the corresponding output provided by the original model contributor.
  • Test.yml File: This file includes the original contributor’s test setup, which has been accepted by the MHub team.

Sample Data Source:

The sample images used in this dataset are sourced from public datasets available through the Imaging Data Commons (IDC), a repository that provides access to a wide range of medical imaging data. This ensures that the test cases reflect real-world clinical scenarios, facilitating robust validation of model performance.

Purpose and Utility:

The primary objective of this dataset is to enable the rigorous testing and validation of model performance within MHub workflows. To assess the performance of a model, users can process the sample data and compare the resulting output to the reference data. Additionally, users may inspect the sample and reference data independently to better understand the input-output structure that defines each model’s workflow.

This dataset streamlines the process of model validation. By providing a standardized testing framework, the dataset facilitates reproducible results and accelerates the development of reliable AI models for medical imaging.

About MHub:

MHub (mhub.ai) is an innovative platform designed to simplify the deployment, management, and testing of deep learning models for medical imaging. It enables researchers and clinicians to integrate AI-based solutions into clinical workflows while ensuring reproducibility and scalability. The platform provides a modular framework where users can execute complex workflows, such as image segmentation, classification, and registration, leveraging state-of-the-art AI models. MHub's goal is to accelerate the development and clinical adoption of medical imaging models by providing a streamlined, user-friendly environment for testing and validating new algorithms.

For more information on the platform and its capabilities, visit mhub.ai.

Files

mhub_test_deepcac2.zip

Files (33.9 MB)

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Additional details

Related works

Is metadata for
Preprint: arXiv:2603.24633 (arXiv)
Is part of
Preprint: arXiv:2601.10154 (arXiv)