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Identifying Thyroid Nodules in Ultrasound Images Through Segmentation-Guided Discriminative Localization

机译:通过分割引导的辨别定位鉴定超声图像中的甲状腺结节

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In this paper, we propose a novel segmentation-guided network for thyroid nodule identification from ultrasound images. Accurate diagnosis of thyroid nodules through ultrasound images is significant for cancer detection at the early stage. Many Computer-Aided Diagnose (CAD) systems for this task ignore the inherent correlation between nodule segmentation task and classification task (i.e. cancer grading). Actually, segmentation results could be used as localization cues of thyroid nodules for facilitating their classifications as benign or malignant. Accordingly, we propose a two-stage thyroid nodule diagnosis method through 1) nodule segmentation and 2) segmentation-guided diagnosis. Specifically, in the segmentation stage, we use an ensemble strategy to integrate segmentations from diverse segmentation networks. Then, in the classification stage, the obtained segmentation result is integrated as additional information along with its corresponding original ultrasound images as the input of the classification network. Meanwhile, the segmentation result is further served as guidance to refine the attention map of the features used for classification. Our method is applied to the TN-SCUI 2020, a MICCAI 2020 Challenge, with the largest set of thyroid nodule ultrasound images according to our knowledge. Our method achieved the 2nd place in its classification challenge.
机译:在本文中,我们提出了一种新的分割引导网络,用于从超声图像中的甲状腺结节识别。通过超声图像精确诊断甲状腺结节对于早期癌症检测显着。用于此任务的许多计算机辅助诊断(CAD)系统忽略结核分段任务和分类任务(即癌症分级)之间的固有相关性。实际上,分段结果可以用作甲状腺结节的本地化提示,以便于其分类为良性或恶性。因此,我们提出了一种双阶段的甲状腺结节诊断方法通过1​​)结节分段和2)分割引导诊断。具体地,在分段阶段,我们使用集合策略从不同的分段网络集成分段。然后,在分类阶段,所获得的分割结果被作为附加信息与其对应的原始超声图像作为附加信息作为输入作为分类网络的输入。同时,分割结果进一步担任指导,以优化用于分类的特征的注意图。我们的方法应用于TN-SCUI 2020,米奇2020挑战,根据我们的知识,具有最大的甲状腺结节超声图像。我们的方法在其分类挑战中实现了第二个地方。

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