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6 days ago | |
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Phase I | 1 week ago | |
Phase II | 1 week ago | |
Phase III | 1 week ago | |
assets | 6 days ago | |
3DLAND_Info.csv | 1 week ago | |
LICENSE | 6 days ago | |
README.md | 6 days ago | |
deeplesion_Info.csv | 1 week ago |
Organ-aware 3D lesion segmentation dataset and pipeline for abdominal CT analysis (ACM Multimedia 2025)
This repository contains the code and dataset instructions for 3DLAND, the first large-scale, organ-aware 3D lesion segmentation benchmark for abdominal CT scans, introduced at ACM Multimedia 2025.
The lesion segmentation pipeline includes:
We curated over 6,000 contrast-enhanced abdominal CT scans from the publicly available DeepLesion dataset, selecting only those studies that include visible lesions or anomalies in abdominal organs.
To transform these raw scans into a structured, organ-aware 3D segmentation benchmark, we developed a multi-stage pipeline with both automated and expert-in-the-loop components:
Each lesion in the dataset is:
The dataset includes:
Phase II/2D_lesion_mask
:2D lesion masks linked to organsPahse III/3D_lesion_mask
: 3D lesion masks linked to organsdeeplesion_Info.csv
: CSV file of Our dataset metadata according to DeepLesion metadataAll annotations underwent clinical review on 10–20% of lesions per organ to ensure high-quality ground truth.
The dataset and outputs are licensed under CC BY 4.0.
See the full license in the LICENSE file or at creativecommons.org/licenses/by/4.0