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Saliency U-Net: A Regional Saliency Map-Driven Hybrid Deep Learning Network for Anomaly Segmentation

机译:显着性U-Net:用于异常分割的区域显着性地图驱动的混合深度学习网络

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Deep learning networks are gaining popularity in many medical image analysis tasks due to their generalized ability to automatically extract relevant features from raw images. However, this can make the learning problem unnecessarily harder requiring network architectures of high complexity. In case of anomaly detection, in particular, there is often sufficient regional difference between the anomaly and the surrounding parenchyma that could be easily highlighted through bottom-up saliency operators. In this paper we propose a new hybrid deep learning network using a combination of raw image and such regional maps to more accurately learn the anomalies using simpler network architectures. Specifically, we modify a deep learning network called U-Net using both the raw and pre-segmented images as input to produce joint encoding (contraction) and expansion paths (decoding) in the U-Net. We present results of successfully delineating subdural and epidural hematomas in brain CT imaging and liver hemangioma in abdominal CT images using such network.
机译:深度学习网络具有从原始图像自动提取相关特征的通用能力,因此在许多医学图像分析任务中变得越来越流行。但是,这可能会使学习问题变得不必要地困难,从而需要高度复杂的网络体系结构。特别是在异常检测的情况下,异常和周围的薄壁组织之间通常存在足够的区域差异,可以通过自下而上的显着性运算符轻松突出显示该区域差异。在本文中,我们提出了一种新的混合深度学习网络,该网络使用原始图像和此类区域地图的组合来使用更简单的网络体系结构更准确地学习异常。具体来说,我们使用原始图像和预分段图像作为输入来修改称为U-Net的深度学习网络,以在U-Net中产生联合编码(压缩)和扩展路径(解码)。我们提出了使用这种网络成功地描绘出脑部CT成像的硬膜下和硬膜外血肿以及腹部CT图像中的肝血管瘤的结果。

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