MRISegmentator-Abdomen: A Fully Automated Multi-Organ and Structure Segmentation Tool for T1-weighted Abdominal MRI
Yan Zhuang, Tejas Sudharshan Mathai, Pritam Mukherjee, Brandon Khoury, Boah Kim, Benjamin Hou, Nusrat Rabbee, Abhinav Suri, Ronald M. Summers

TL;DR
This paper introduces MRISegmentator, a fully automated tool for multi-organ segmentation in T1-weighted abdominal MRI, trained on a new large dataset with voxel-level annotations, demonstrating high accuracy and robustness across multiple datasets.
Contribution
The paper presents a novel, publicly available dataset with detailed annotations and a deep learning model that achieves state-of-the-art segmentation performance on multiple abdominal MRI datasets.
Findings
Achieved an average DSC of 0.861 on internal test set
Attained an average DSC of 0.829 on external AMOS22 dataset
Reached an average DSC of 0.933 on Duke Liver dataset
Abstract
Background: Segmentation of organs and structures in abdominal MRI is useful for many clinical applications, such as disease diagnosis and radiotherapy. Current approaches have focused on delineating a limited set of abdominal structures (13 types). To date, there is no publicly available abdominal MRI dataset with voxel-level annotations of multiple organs and structures. Consequently, a segmentation tool for multi-structure segmentation is also unavailable. Methods: We curated a T1-weighted abdominal MRI dataset consisting of 195 patients who underwent imaging at National Institutes of Health (NIH) Clinical Center. The dataset comprises of axial pre-contrast T1, arterial, venous, and delayed phases for each patient, thereby amounting to a total of 780 series (69,248 2D slices). Each series contains voxel-level annotations of 62 abdominal organs and structures. A 3D nnUNet model,…
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Taxonomy
MethodsSparse Evolutionary Training
