Literature DB >> 35528144

Super U-Net: a modularized generalizable architecture.

Cameron Beeche1, Jatin P Singh1, Joseph K Leader1, Sinem Gezer1, Amechi P Oruwari1, Kunal K Dansingani2, Jay Chhablani2, Jiantao Pu1,3.   

Abstract

Objective: To develop and validate a novel convolutional neural network (CNN) termed "Super U-Net" for medical image segmentation.
Methods: Super U-Net integrates a dynamic receptive field module and a fusion upsampling module into the classical U-Net architecture. The model was developed and tested to segment retinal vessels, gastrointestinal (GI) polyps, skin lesions on several image types (i.e., fundus images, endoscopic images, dermoscopic images). We also trained and tested the traditional U-Net architecture, seven U-Net variants, and two non-U-Net segmentation architectures. K-fold cross-validation was used to evaluate performance. The performance metrics included Dice similarity coefficient (DSC), accuracy, positive predictive value (PPV), and sensitivity.
Results: Super U-Net achieved average DSCs of 0.808±0.0210, 0.752±0.019, 0.804±0.239, and 0.877±0.135 for segmenting retinal vessels, pediatric retinal vessels, GI polyps, and skin lesions, respectively. The Super U-net consistently outperformed U-Net, seven U-Net variants, and two non-U-Net segmentation architectures (p < 0.05).
Conclusion: Dynamic receptive fields and fusion upsampling can significantly improve image segmentation performance.

Entities:  

Keywords:  U-Net; dynamic receptive field; fusion upsampling; image segmentation

Year:  2022        PMID: 35528144      PMCID: PMC9070860          DOI: 10.1016/j.patcog.2022.108669

Source DB:  PubMed          Journal:  Pattern Recognit        ISSN: 0031-3203            Impact factor:   8.518


  14 in total

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