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基于Swin Transformer和圖形推理的結直腸息肉分割方法

Colorectal polyp segmentation method based on the Swin Transformer and graph reasoning

  • 摘要: 針對結直腸息肉圖像分割中病灶區域尺度變化大、邊緣模糊以及息肉與正常組織對比度低等問題,導致病變區域分割精度低和分割邊界存在偽影,提出一種基于Swin Transformer和圖形推理的自適應網絡. 該網絡一是利用Swin Transformer編碼器逐層提取輸入圖像的全局上下文信息,弱化背景信息干擾,多尺度分析病變區域的顯著性特點. 二是提出全局與局部特征交互模塊增強網絡對復雜病灶的空間感知能力,突出待分割目標的關鍵位置信息,精準定位目標. 三是通過區域引導圖推理模塊以圖循環遞推的方式挖掘先驗信息之間的高階顯性關系,促進圖間信息傳遞. 四是設計面向邊緣細節的邊緣約束圖推理模塊,整合邊緣細節,改善分割效果,提高分割精度. 在CVC-ClinicDB、Kvasir、CVC-ColonDB和ETIS數據集上進行實驗,其Dice系數分別為0.939,0.926,0.810和0.788,平均交并比分別為0.889,0.879,0.731和0.710,分割性能優于現有方法. 仿真實驗結果表明,對于形態結構復雜、對比度低和邊緣模糊的結直腸息肉圖像均有較高的分割精度.

     

    Abstract: Accurate recognition of colorectal images assists doctors in screening for malignant intestinal diseases. Colorectal cancer can be induced by colorectal polyps, ulcerative colitis, and papillary adenoma. Colorectal polyp segmentation can be used to rapidly locate polyps using automated colorectal polyp segmentation technology, saving the time and cost of manual screening and providing patients with valuable treatment time. Therefore, designing an automatic identification and accurate segmentation method is crucial for clinicians to improve diagnosis efficiency. Aiming at the problems in colorectal polyp image segmentation, such as large regional scale variation, variable location, blurred edges, and low contrast between polyps and normal tissues, which lead to low accuracy of lesion segmentation and artifacts on the segmentation boundary, an adaptive network based on the Swin Transformer and graphical reasoning is proposed. First, the Swin Transformer encoder is used to extract the global context information of the input image layer by layer, weaken the interference of background information, and analyze the salient characteristics of the lesion area on a multiscale. Second, a global and local feature interaction module is proposed to enhance the spatial perception ability of the network on complex lesions, highlight the key position information of the target to be segmented, and accurately locate the target. Third, a region-guided graph inference module is used to mine the higher-order dominant relationship between prior information in the way of graph cyclic recurrence to promote the transmission of information between graphs. Fourth, an edge constraint graph inference module oriented to edge details is designed to integrate edge details and improve the segmentation effect and segmentation precision. Experiments were performed on the CVC-ClinicDB, Kvasir, CVC-ColonDB, and ETIS datasets. The Dice coefficients were 0.939, 0.926, 0.810, and 0.788, respectively, and the average intersection ratios were 0.889, 0.879, 0.731, and 0.710, respectively. The mean absolute errors were 0.006, 0.017, 0.030, and 0.012, respectively. Compared with the SSformer method based on the transformer structure, the Dice coefficients are increased by 2.3%, 0.1%, 3.8%, and 2.1%, respectively, and the average crossover ratio is increased by 1.6%, 0.1%, 3.4%, and 1.2%, respectively. The overall segmentation performance of the algorithm test is better than that of the existing method. The simulation results show that the image segmentation accuracy of colorectal polyps with complex shapes and structures, low contrast, and blurred edges is high.

     

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