In-Series U-Net Network to 3D Tumor Image Reconstruction for Liver Hepatocellular Carcinoma Recognition

Chen, Wen-Fan and Ou, Hsin-You and Liu, Keng-Hao and Li, Zhi-Yun and Liao, Chien-Chang and Wang, Shao-Yu and Huang, Wen and Cheng, Yu-Fan and Pan, Cheng-Tang (2020) In-Series U-Net Network to 3D Tumor Image Reconstruction for Liver Hepatocellular Carcinoma Recognition. Diagnostics, 11 (1). p. 11. ISSN 2075-4418

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Abstract

Cancer is one of the common diseases. Quantitative biomarkers extracted from standard-of-care computed tomography (CT) scan can create a robust clinical decision tool for the diagnosis of hepatocellular carcinoma (HCC). According to the current clinical methods, the situation usually accounts for high expenditure of time and resources. To improve the current clinical diagnosis and therapeutic procedure, this paper proposes a deep learning-based approach, called Successive Encoder-Decoder (SED), to assist in the automatic interpretation of liver lesion/tumor segmentation through CT images. The SED framework consists of two different encoder-decoder networks connected in series. The first network aims to remove unwanted voxels and organs and to extract liver locations from CT images. The second network uses the results of the first network to further segment the lesions. For practical purpose, the predicted lesions on individual CTs were extracted and reconstructed on 3D images. The experiments conducted on 4300 CT images and LiTS dataset demonstrate that the liver segmentation and the tumor prediction achieved 0.92 and 0.75 in Dice score, respectively, by as-proposed SED method.

Item Type: Article
Subjects: Impact Archive > Medical Science
Depositing User: Managing Editor
Date Deposited: 31 Mar 2023 04:40
Last Modified: 15 Mar 2024 12:11
URI: http://research.sdpublishers.net/id/eprint/628

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