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Auteurs principaux: Advand, Mehran, Dehghanian, Zahra, Faraji, Navid, Barati, Reza, Safavi-Naini, Seyed Amir Ahmad, Rabiee, Hamid R.
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2602.12820
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author Advand, Mehran
Dehghanian, Zahra
Faraji, Navid
Barati, Reza
Safavi-Naini, Seyed Amir Ahmad
Rabiee, Hamid R.
author_facet Advand, Mehran
Dehghanian, Zahra
Faraji, Navid
Barati, Reza
Safavi-Naini, Seyed Amir Ahmad
Rabiee, Hamid R.
contents Existing medical imaging datasets for abdominal CT often lack three-dimensional annotations, multi-organ coverage, or precise lesion-to-organ associations, hindering robust representation learning and clinical applications. To address this gap, we introduce 3DLAND, a large-scale benchmark dataset comprising over 6,000 contrast-enhanced CT volumes with over 20,000 high-fidelity 3D lesion annotations linked to seven abdominal organs: liver, kidneys, pancreas, spleen, stomach, and gallbladder. Our streamlined three-phase pipeline integrates automated spatial reasoning, prompt-optimized 2D segmentation, and memory-guided 3D propagation, validated by expert radiologists with surface dice scores exceeding 0.75. By providing diverse lesion types and patient demographics, 3DLAND enables scalable evaluation of anomaly detection, localization, and cross-organ transfer learning for medical AI. Our dataset establishes a new benchmark for evaluating organ-aware 3D segmentation models, paving the way for advancements in healthcare-oriented AI. To facilitate reproducibility and further research, the 3DLAND dataset and implementation code are publicly available at https://mehrn79.github.io/3DLAND.
format Preprint
id arxiv_https___arxiv_org_abs_2602_12820
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle 3DLAND: 3D Lesion Abdominal Anomaly Localization Dataset
Advand, Mehran
Dehghanian, Zahra
Faraji, Navid
Barati, Reza
Safavi-Naini, Seyed Amir Ahmad
Rabiee, Hamid R.
Image and Video Processing
Computer Vision and Pattern Recognition
Existing medical imaging datasets for abdominal CT often lack three-dimensional annotations, multi-organ coverage, or precise lesion-to-organ associations, hindering robust representation learning and clinical applications. To address this gap, we introduce 3DLAND, a large-scale benchmark dataset comprising over 6,000 contrast-enhanced CT volumes with over 20,000 high-fidelity 3D lesion annotations linked to seven abdominal organs: liver, kidneys, pancreas, spleen, stomach, and gallbladder. Our streamlined three-phase pipeline integrates automated spatial reasoning, prompt-optimized 2D segmentation, and memory-guided 3D propagation, validated by expert radiologists with surface dice scores exceeding 0.75. By providing diverse lesion types and patient demographics, 3DLAND enables scalable evaluation of anomaly detection, localization, and cross-organ transfer learning for medical AI. Our dataset establishes a new benchmark for evaluating organ-aware 3D segmentation models, paving the way for advancements in healthcare-oriented AI. To facilitate reproducibility and further research, the 3DLAND dataset and implementation code are publicly available at https://mehrn79.github.io/3DLAND.
title 3DLAND: 3D Lesion Abdominal Anomaly Localization Dataset
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.12820