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Lesion Detection with Deep Aggregated 3D Contextual Feature and Auxiliary Information

机译:具有深度聚合3D上下文特征和辅助信息的病变检测

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Detecting different kinds of lesions in computed tomography (CT) scans at the same time is a difficult but important task for a computer-aided diagnosis (CADx) system. Compared to single-lesion detection methods, our lesion detection method considers additional intra-class differences. In this work, we present a CT image analysis framework for lesion detection. Our model is developed based on a dense region-based fully convolutional network (Dense R-FCN) model using 3D context and is equipped with a dense auxiliary loss (DAL) scheme for end-to-end learning. It fuses shallow, medium, and deep features to meet the needs of detecting lesions of various sizes. Owing to its fully-connected structure, it is called Dense R-FCN. Meanwhile, the DAL supervises the intermediate hidden layers in order to maximize the use of the shallow layer information, which benefits the detection results, especially for small lesions. Experiment results on the DeepLesion dataset corroborate the efficacy of our method.
机译:对于计算机辅助诊断(CADx)系统而言,同时在计算机断层扫描(CT)扫描中检测不同类型的病变是一项困难而重要的任务。与单一病变检测方法相比,我们的病变检测方法考虑了其他类别内差异。在这项工作中,我们提出了用于病变检测的CT图像分析框架。我们的模型是基于使用3D上下文的基于密集区域的全卷积网络(Dense R-FCN)模型开发的,并配备了用于端到端学习的密集辅助损失(DAL)方案。它融合了浅,中和深特征,可满足检测各种大小病变的需求。由于其完全连接的结构,因此称为Dense R-FCN。同时,DAL监督中间隐藏层,以最大程度地利用浅层信息,这对检测结果有利,特别是对于较小的病变。 DeepLesion数据集上的实验结果证实了我们方法的有效性。

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