RT-Net: Region-Enhanced Attention Transformer Network for Polyp Segmentation

被引:0
作者
Yilin Qin
Haiying Xia
Shuxiang Song
机构
[1] Guangxi Normal University,College of Electronics Engineering
关键词
Transformer; Polyp segmentation; Region-enhanced attention; Medical image segmentation;
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学科分类号
摘要
Colonic polyps are highly correlated with colorectal cancer. Prevention of colorectal cancer is the detection and removal of polyps in the early stages of the disease. But the detection process relies on the physician’s experience and is prone to missed diagnoses. The drawbacks motivate us to design an algorithm to automatically assist physicians in detection to reduce the rate of missed polyps. However, polyp segmentation encounters challenges due to the variable appearance and blurred borders with the surrounding mucosa. And it is difficult for existing CNN-based polyp segmentation algorithms to learn long-range dependencies. Therefore, we propose a region-enhanced attention transformer network (RT-Net) for polyp segmentation. Unlike existing CNN-based approaches, it employs a pyramid Transformer encoder to promote the learning ability and robustness of the network. In addition, we introduce three modules, including the residual multiscale (RMS) module, the region-enhanced attention (REA) module and the feature aggregation (FA) module. Specifically, the RMS module learns multiscale information from the features of the encoder. The REA module adopts the prediction maps of each decoder layer to guide the network in building target regions and boundary cues to compensate for the missing local fields of view in the encoder. The role of the FA module is to efficiently aggregate the features from REA with those from the decoding layer to achieve better segmentation performance. RT-Net is evaluated on five benchmark polyp datasets. Extensive experiments demonstrate that our proposed RT-Net exhibits excellent performance compared to other state-of-the-art methods.
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页码:11975 / 11991
页数:16
相关论文
共 67 条
[1]  
Favoriti P(2016)Worldwide burden of colorectal cancer: a review Updates Surg 68 7-11
[2]  
Carbone G(2020)Deep learning to find colorectal polyps in colonoscopy: a systematic literature review Artif Intell Med 108 2622-2626
[3]  
Greco M(2010)Automatic liver segmentation using a statistical shape model with optimal surface detection IEEE Transact Biomed Eng 57 828-835
[4]  
Pirozzi F(2012)Edge based image segmentation technique for detection and estimation of the bladder wall thickness Procedia Eng 30 1856-1867
[5]  
Pirozzi REM(2019)Unet++: redesigning skip connections to exploit multiscale features in image segmentation IEEE Transact Med Imag 39 1441-424
[6]  
Corcione F(2022)Non-equivalent images and pixels: confidence-aware resampling with meta-learning mixup for polyp segmentation Med Image Anal 78 415-12
[7]  
Sanchez-Peralta LF(2021)A-denseunet: adaptive densely connected unet for polyp segmentation in colonoscopy images with atrous convolution Sensors 21 1-207
[8]  
Bote-Curiel L(2022)Pvt v2: improved baselines with pyramid vision transformer Comput Vis Med 8 197-111
[9]  
Picon A(2020)Uncertainty and interpretability in convolutional neural networks for semantic segmentation of colorectal polyps Med Image Anal 60 99-293
[10]  
Sanchez-Margallo FM(2020)Polyp-net: A multimodel fusion network for polyp segmentation IEEE Transact Instrum Measur 70 283-3182