Large-scale Multi-sequence Pretraining for Generalizable MRI Analysis in Versatile Clinical Applications
Zelin Qiu, Xi Wang, Zhuoyao Xie, Juan Zhou, Yu Wang, Lingjie Yang, Xinrui Jiang, Juyoung Bae, Moo Hyun Son, Qiang Ye, Dexuan Chen, Rui Zhang, Tao Li, Neeraj Ramesh Mahboobani, Varut Vardhanabhuti, Xiaohui Duan, Yinghua Zhao, Hao Chen

TL;DR
PRISM is a large-scale multi-sequence MRI foundation model that significantly improves generalization across diverse clinical tasks by disentangling invariant features from sequence-specific variations.
Contribution
The paper introduces PRISM, a novel pretraining paradigm and the largest multi-sequence MRI dataset, enabling robust, generalizable representations for diverse MRI analysis tasks.
Findings
Outperformed existing models on 39 of 44 benchmarks
Achieved statistically significant improvements across multiple tasks
Demonstrated robustness across diverse MRI protocols
Abstract
Multi-sequence Magnetic Resonance Imaging (MRI) offers remarkable versatility, enabling the distinct visualization of different tissue types. Nevertheless, the inherent heterogeneity among MRI sequences poses significant challenges to the generalization capability of deep learning models. These challenges undermine model performance when faced with varying acquisition parameters, thereby severely restricting their clinical utility. In this study, we present PRISM, a foundation model PRe-trained with large-scale multI-Sequence MRI. We collected a total of 64 datasets from both public and private sources, encompassing a wide range of whole-body anatomical structures, with scans spanning diverse MRI sequences. Among them, 336,476 volumetric MRI scans from 34 datasets (8 public and 26 private) were curated to construct the largest multi-organ multi-sequence MRI pretraining corpus to date.…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Advanced MRI Techniques and Applications · MRI in cancer diagnosis
