Edge-aware Multi-task Network for Integrating Quantification Segmentation and Uncertainty Prediction of Liver Tumor on Multi-modality Non-contrast MRI

Xiaojiao Xiao, Qinmin Hu, Guanghui Wang
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Abstract

Simultaneous multi-index quantification, segmentation, and uncertainty estimation of liver tumors on multi-modality non-contrast magnetic resonance imaging (NCMRI) are crucial for accurate diagnosis. However, existing methods lack an effective mechanism for multi-modality NCMRI fusion and accurate boundary information capture, making these tasks challenging. To address these issues, this paper proposes a unified framework, namely edge-aware multi-task network (EaMtNet), to associate multi-index quantification, segmentation, and uncertainty of liver tumors on the multi-modality NCMRI. The EaMtNet employs two parallel CNN encoders and the Sobel filters to extract local features and edge maps, respectively. The newly designed edge-aware feature aggregation module (EaFA) is used for feature fusion and selection, making the network edge-aware by capturing long-range dependency between feature and edge maps. Multi-tasking leverages prediction discrepancy to estimate uncertainty and improve segmentation and quantification performance. Extensive experiments are performed on multi-modality NCMRI with 250 clinical subjects. The proposed model outperforms the state-of-the-art by a large margin, achieving a dice similarity coefficient of 90.01$\pm$1.23 and a mean absolute error of 2.72$\pm$0.58 mm for MD. The results demonstrate the potential of EaMtNet as a reliable clinical-aided tool for medical image analysis.
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多模态非对比MRI肝肿瘤定量分割与不确定性预测集成的边缘感知多任务网络
多模态非对比磁共振成像(NCMRI)对肝脏肿瘤的同时多指标量化、分割和不确定度估计是准确诊断的关键。然而,现有方法缺乏多模态NCMRI融合和精确边界信息捕获的有效机制,使得这些任务具有挑战性。针对这些问题,本文提出了一个统一的框架,即边缘感知多任务网络(edge-aware multi-task network, EaMtNet),在多模态NCMRI上关联肝脏肿瘤的多指标量化、分割和不确定性。EaMtNet采用两个并行CNN编码器和Sobel滤波器分别提取局部特征和边缘映射。新设计的边缘感知特征聚合模块(EaFA)用于特征融合和选择,通过捕获特征和边缘映射之间的远程依赖关系,使网络具有边缘感知。多任务利用预测差异来估计不确定性,提高分割和量化性能。在250名临床受试者的多模态NCMRI上进行了广泛的实验。所提出的模型在很大程度上超过了最先进的模型,实现了90.01$\pm$1.23的骰子相似系数和2.72$\pm$0.58 mm的平均绝对误差。结果表明EaMtNet作为可靠的临床辅助医学图像分析工具的潜力。
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