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2D and 3D Convolutional Neural Network fusion for predicting the histological grade of hepatocellular carcinoma

机译:用于预测肝细胞癌组织学等级的2D和3D卷积神经网络融合

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Preoperative Knowledge of the histological grade of hepatocellular carcinoma (HCC) is significant for patient management and prognosis in clinical practice. Recent studies reported that 3D Convolutional Neural Network (CNN) outperformed 2D CNN for lesion characterization. Since 2D and 3D deep feature derived from CNN embed different spatial information of neoplasm, we hypothesize that the performance of lesion characterization might be improved if taking full advantage of both 2D and 3D characterization. In this work, we propose a 2D and 3D CNN fusion architecture to integrate both 2D and 3D spatial information of neoplasm for predicting the histological grade of HCC. Specifically, correlated and individual component analysis (CICA) is performed to fuse the 2D deep features in three orthogonal views and the 3D deep feature in volumetric images of HCC. Experimental results of 46 clinical patients with HCCs demonstrate several encouraging features of the proposed 2D and 3D deep feature fusion framework as follows: (1) Fusion of 2D and 3D deep feature using CICA outperforms 2D or 3D deep feature for predicting the histological grade of HCC. (2) Fusion of 2D deep features derived from three orthogonal views using CICA yields better results than those of 3D deep feature. (3) CICA is better than the conventional concatenation and the correlation learning model for deep feature fusion.
机译:对肝细胞癌(HCC)组织学等级的术前知识对于临床实践中的患者管理和预后是显着的。最近的研究报告说,3D卷积神经网络(CNN)表现出损伤表征的2D CNN。由于来自CNN的2D和3D深度源自CNN嵌入了肿瘤的不同空间信息,因此如果采用2D和3D表征的充分利用,则可以提高病变表征的性能。在这项工作中,我们提出了一个2D和3D CNN融合架构,用于集成肿瘤的2D和3D空间信息,以预测HCC的组织学等级。具体地,执行相关性和各个组分分析(CICA)以使HUC的三个正交视图中的2D深度特征熔断HCC的体积图像中的3D深度特征。 46例HCC患者的实验结果表明了所提出的2D和3D深度融合框架的几种励志特征如下:(1)使用CICA的2D和3D深度融合,使用CICA优于2D或3D深度特征,用于预测HCC的组织学等级。 (2)使用CICA的三个正交视图导出的2D深度特征的融合产生了比3D深度的效果更好。 (3)CICA优于传统的倾斜和深度融合的相关学习模型。

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