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USC-ENet: a high-efficiency model for the diagnosis of liver tumors combining B-mode ultrasound and clinical data  期刊论文  

  • 编号:
    5AEF4D72500B1F94941B07152A5F6BA8
  • 作者:
    Zhao, Tingting#[1]Zeng, Zhiyong[1];Li, Tong[1];Tao, Wenjing[2];Yu, Xing[1];Feng, Tao(冯涛)*[1]Bu, Rui(卜锐)*[2]
  • 语种:
    英文
  • 期刊:
    HEALTH INFORMATION SCIENCE AND SYSTEMS ISSN:2047-2501 2023 年 11 卷 1 期 ; MAR 19
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  • 摘要:

    PurposeUltrasound image acquisition has the advantages of being low cost, rapid, and non-invasive, and it does not produce radiation. Currently, ultrasound is widely used in the diagnosis of liver tumors. However, owing to the complex presentation and diverse features of benign and malignant liver tumors, accurate diagnosis of liver tumors using ultrasound is difficult even for experienced radiologists. In recent years, artificial intelligence-assisted diagnosis has proven to provide effective support to radiologists. However, there is room for further improvement in the existing ultrasound artificial intelligence diagnostic model of liver tumor. First, the image diagnostic model may not fully consider relevant clinical data in the decision-making process. Second, owing to the difficulty in collecting biopsy pathology and physician-labeled ultrasound data of liver tumors, training datasets are usually small, and commonly used large neural networks tend to overfit on small datasets, which seriously affects the generalization of the model.MethodsIn this study, we propose a deep learning-assisted diagnosis model called USC-ENet, which integrates B-mode ultrasound features of liver tumors and clinical data of patients, and we design a small neural network specifically for small-scale medical images combined with an attention mechanism.Results and conclusionReal data from 542 patients with liver tumors (N = 2168 images) are used during model training and validation. Experiments show that USC-ENet can achieve a good classification effect (area under the curve = 0.956, sensitivity = 0.915, and specificity = 0.880) after small-scale data training, and it has certain interpretability, showing good potential for clinical adoption. In conclusion, our model provides not only a reliable second opinion for radiologists but also a reference for junior radiologists who lack clinical experience.

  • 推荐引用方式
    GB/T 7714:
    Zhao Tingting,Zeng Zhiyong,Li Tong, et al. USC-ENet: a high-efficiency model for the diagnosis of liver tumors combining B-mode ultrasound and clinical data [J].HEALTH INFORMATION SCIENCE AND SYSTEMS,2023,11(1).
  • APA:
    Zhao Tingting,Zeng Zhiyong,Li Tong,Tao Wenjing,&Bu Rui.(2023).USC-ENet: a high-efficiency model for the diagnosis of liver tumors combining B-mode ultrasound and clinical data .HEALTH INFORMATION SCIENCE AND SYSTEMS,11(1).
  • MLA:
    Zhao Tingting, et al. "USC-ENet: a high-efficiency model for the diagnosis of liver tumors combining B-mode ultrasound and clinical data" .HEALTH INFORMATION SCIENCE AND SYSTEMS 11,1(2023).
  • 入库时间:
    2023/4/15 21:48:27
  • 更新时间:
    2023/4/15 21:48:27
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