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CLIP-Driven Universal Model for Organ Segmentation and Tumor Detection

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arxiv 2301.00785 v5 pith:FDJJT274 submitted 2023-01-02 eess.IV cs.CVcs.LG

CLIP-Driven Universal Model for Organ Segmentation and Tumor Detection

classification eess.IV cs.CVcs.LG
keywords modelsegmentationdatasetsmodelsscanstumorsuniversalanatomical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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An increasing number of public datasets have shown a marked impact on automated organ segmentation and tumor detection. However, due to the small size and partially labeled problem of each dataset, as well as a limited investigation of diverse types of tumors, the resulting models are often limited to segmenting specific organs/tumors and ignore the semantics of anatomical structures, nor can they be extended to novel domains. To address these issues, we propose the CLIP-Driven Universal Model, which incorporates text embedding learned from Contrastive Language-Image Pre-training (CLIP) to segmentation models. This CLIP-based label encoding captures anatomical relationships, enabling the model to learn a structured feature embedding and segment 25 organs and 6 types of tumors. The proposed model is developed from an assembly of 14 datasets, using a total of 3,410 CT scans for training and then evaluated on 6,162 external CT scans from 3 additional datasets. We rank first on the Medical Segmentation Decathlon (MSD) public leaderboard and achieve state-of-the-art results on Beyond The Cranial Vault (BTCV). Additionally, the Universal Model is computationally more efficient (6x faster) compared with dataset-specific models, generalized better to CT scans from varying sites, and shows stronger transfer learning performance on novel tasks.

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