Frontiers in Radiology (Mar 2022)

Phase Attention Model for Prediction of Early Recurrence of Hepatocellular Carcinoma With Multi-Phase CT Images and Clinical Data

  • Weibin Wang,
  • Fang Wang,
  • Qingqing Chen,
  • Shuyi Ouyang,
  • Yutaro Iwamoto,
  • Xianhua Han,
  • Lanfen Lin,
  • Hongjie Hu,
  • Ruofeng Tong,
  • Ruofeng Tong,
  • Yen-Wei Chen,
  • Yen-Wei Chen,
  • Yen-Wei Chen

DOI
https://doi.org/10.3389/fradi.2022.856460
Journal volume & issue
Vol. 2

Abstract

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Hepatocellular carcinoma (HCC) is a primary liver cancer that produces a high mortality rate. It is one of the most common malignancies worldwide, especially in Asia, Africa, and southern Europe. Although surgical resection is an effective treatment, patients with HCC are at risk of recurrence after surgery. Preoperative early recurrence prediction for patients with liver cancer can help physicians develop treatment plans and will enable physicians to guide patients in postoperative follow-up. However, the conventional clinical data based methods ignore the imaging information of patients. Certain studies have used radiomic models for early recurrence prediction in HCC patients with good results, and the medical images of patients have been shown to be effective in predicting the recurrence of HCC. In recent years, deep learning models have demonstrated the potential to outperform the radiomics-based models. In this paper, we propose a prediction model based on deep learning that contains intra-phase attention and inter-phase attention. Intra-phase attention focuses on important information of different channels and space in the same phase, whereas inter-phase attention focuses on important information between different phases. We also propose a fusion model to combine the image features with clinical data. Our experiment results prove that our fusion model has superior performance over the models that use clinical data only or the CT image only. Our model achieved a prediction accuracy of 81.2%, and the area under the curve was 0.869.

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