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Ultrasound Liver Fibrosis Diagnosis Using Multi-indicator Guided Deep Neural Networks

机译:使用多指标指导的深层神经网络诊断超声肝纤维化

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Accurate analysis of the fibrosis stage plays very important roles in follow-up of patients with chronic hepatitis B infection. In this paper, a deep learning framework is presented for automatically liver fibrosis prediction. On contrary of previous works, our approach can take use of the information provided by multiple ultrasound images. An indicator-guided learning mechanism is further proposed to ease the training of the proposed model. This follows the workflow of clinical diagnosis and make the prediction procedure interpretable. To support the training, a dataset is well-collected which contains the ultrasound videos/images, indicators and labels of 229 patients. As demonstrated in the experimental results, our proposed model shows its effectiveness by achieving the state-of-the-art performance, specifically, the accuracy is 65.6% (20% higher than previous best).
机译:纤维化分期的准确分析在慢性乙型肝炎感染患者的随访中起着非常重要的作用。在本文中,提出了一种用于自动预测肝纤维化的深度学习框架。与以前的工作相反,我们的方法可以利用多个超声图像提供的信息。进一步提出了一种指标指导的学习机制,以简化所提出​​模型的训练。这遵循临床诊断的工作流程,并使预测程序可解释。为了支持培训,收集了一个数据集,其中包含229位患者的超声视频/图像,指标和标签。如实验结果所示,我们提出的模型通过实现最新的性能来显示其有效性,具体来说,准确性为65.6%(比以前的最佳水平高20%)。

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