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, Yen-Wei Chen
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引用次数: 2

Abstract

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.

Abstract Image

Abstract Image

Abstract Image

多期CT影像及临床资料预测肝细胞癌早期复发的阶段注意模型。
肝细胞癌(HCC)是一种死亡率很高的原发性肝癌。它是世界上最常见的恶性肿瘤之一,特别是在亚洲、非洲和南欧。虽然手术切除是一种有效的治疗方法,但HCC患者术后有复发的风险。肝癌患者术前早期复发预测可以帮助医生制定治疗方案,也可以指导患者术后随访。然而,传统的基于临床数据的方法忽略了患者的影像学信息。有研究使用放射组学模型对HCC患者进行早期复发预测,取得了较好的效果,患者的医学影像也被证明是预测HCC复发的有效手段。近年来,深度学习模型已经显示出超越基于放射学的模型的潜力。在本文中,我们提出了一个基于深度学习的预测模型,该模型包含了阶段内注意和阶段间注意。阶段内注意关注同一阶段不同渠道和空间的重要信息,阶段间注意关注不同阶段之间的重要信息。我们还提出了一种融合模型,将图像特征与临床数据相结合。实验结果表明,我们的融合模型比仅使用临床数据或仅使用CT图像的融合模型具有更好的性能。模型的预测精度为81.2%,曲线下面积为0.869。
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