Residual based attention-Unet combing DAC and RMP modules for automatic liver tumor segmentation in CT

: Due to the complex distribution of liver tumors in the abdomen, the accuracy of liver tumor segmentation cannot meet the needs of clinical assistance yet. This paper aims to propose a new end-to-end network to improve the segmentation accuracy of liver tumors from CT. : We proposed a hybrid networ...

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Veröffentlicht in:Mathematical Biosciences and Engineering 2022-01, Vol.19 (5), p.4703-4718
Hauptverfasser: Bi, Rongrong, Ji, Chunlei, Yang, Zhipeng, Qiao, Meixia, Lv, Peiqing, Wang, Haiying
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Sprache:eng
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Zusammenfassung:: Due to the complex distribution of liver tumors in the abdomen, the accuracy of liver tumor segmentation cannot meet the needs of clinical assistance yet. This paper aims to propose a new end-to-end network to improve the segmentation accuracy of liver tumors from CT. : We proposed a hybrid network, leveraging the residual block, the context encoder (CE), and the Attention-Unet, called ResCEAttUnet. The CE comprises a dense atrous convolution (DAC) module and a residual multi-kernel pooling (RMP) module. The DAC module ensures the network derives high-level semantic information and minimizes detailed information loss. The RMP module improves the ability of the network to extract multi-scale features. Moreover, a hybrid loss function based on cross-entropy and Tversky loss function is employed to distribute the weights of the two-loss parts through training iterations. : We evaluated the proposed method in LiTS17 and 3DIRCADb databases. It significantly improved the segmentation accuracy compared to state-of-the-art methods. : Experimental results demonstrate the satisfying effects of the proposed method through both quantitative and qualitative analyses, thus proving a promising tool in liver tumor segmentation.
ISSN:1551-0018
1551-0018
DOI:10.3934/mbe.2022219