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U-SDRC: A NOVEL DEEP LEARNING-BASED METHOD FOR LESION ENHANCEMENT IN LIVER CT IMAGES

机译:U-SDRC:一种新的基于深入学习的肝脏病变增强方法

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The contrast enhancement of tumor regions in medical images can improve the performance of tumor detection, segmentation, and diagnosis. However, the main existing enhancement methods aim to enhance the contrast and the resolution on the whole image, instead of highlighting the lesion regions. The blurry edges lead to the difficulty of distinguishing the tumor from the healthy tissues accurately. This issue can be hardly solved by those global enhancement methods. In this paper, we focus on the local enhancement and propose a novel deep learning-based approach called U-SDRC to enhance the contrast between tumor regions and surrounding background tissues to make the tumor regions distinguishable. We introduce a U-net deep network to tackle this problem and present a novel SDRC loss function to achieve the goal of enhancing tumor lesions and simultaneously preserving the original appearance of other regions in the image. We evaluate our approach on a clinical dataset that comprises 1394 liver CT slices. The encouraging experimental results show that the proposed method can lead to a good visual enhancement effect and bring improvements to medical tasks such as tumor segmentation and diagnosis.
机译:医学图像中肿瘤区域的对比增强可以提高肿瘤检测,分割和诊断的性能。但是,主要现有的增强方法旨在增强对比度和整个图像的分辨率,而不是突出病变区域。模糊边缘导致准确地将肿瘤与健康组织区分开。这些问题可以通过这些全球增强方法解决问题。在本文中,我们专注于当地增强,提出一种名为U-SDRC的新型深度学习方法,以增强肿瘤区域和周围背景组织之间的对比,使肿瘤区域可区分。我们介绍了一个U-Net深网络来解决这个问题,并提出了一种新的SDRC损失功能,以实现增强肿瘤病变的目标,并同时保留图像中其他区域的原始外观。我们在临床数据集中评估我们的方法,该数据集包含1394肝CT切片。令人鼓舞的实验结果表明,该方法可导致良好的视觉增强效果,并提高肿瘤细分和诊断等医疗任务。

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