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An improved deep learning approach for detection of thyroid papillary cancer in ultrasound images

机译:一种改进的深度学习方法用于在超声图像中检测甲状腺乳头状癌

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摘要

Unlike daily routine images, ultrasound images are usually monochrome and low-resolution. In ultrasound images, the cancer regions are usually blurred, vague margin and irregular in shape. Moreover, the features of cancer region are very similar to normal or benign tissues. Therefore, training ultrasound images with original Convolutional Neural Network (CNN) directly is not satisfactory. In our study, inspired by state-of-the-art object detection network Faster R-CNN, we develop a detector which is more suitable for thyroid papillary carcinoma detection in ultrasound images. In order to improve the accuracy of the detection, we add a spatial constrained layer to CNN so that the detector can extract the features of surrounding region in which the cancer regions are residing. In addition, by concatenating the shallow and deep layers of the CNN, the detector can detect blurrier or smaller cancer regions. The experiments demonstrate that the potential of this new methodology can reduce the workload for pathologists and increase the objectivity of diagnoses. We find that 93:5% of papillary thyroid carcinoma regions could be detected automatically while 81:5% of benign and normal tissue could be excluded without the use of any additional immunohistochemical markers or human intervention.
机译:与日常图像不同,超声图像通常是单色和低分辨率的。在超声图像中,癌区通常模糊,边缘模糊且形状不规则。此外,癌症区域的特征与正常或良性组织非常相似。因此,直接使用原始卷积神经网络(CNN)训练超声图像并不令人满意。在我们的研究中,受最先进的物体检测网络Faster R-CNN的启发,我们开发了一种更适合于超声图像中甲状腺乳头状癌检测的检测器。为了提高检测的准确性,我们在CNN上添加了一个空间约束层,以便检测器可以提取出癌症区域所在的周围区域的特征。此外,通过将CNN的浅层和深层连接起来,检测器可以检测到模糊或更小的癌症区域。实验表明,这种新方法的潜力可以减少病理学家的工作量并增加诊断的客观性。我们发现可以自动检测出93:5%的甲状腺乳头状癌区域,而无需使用任何其他免疫组织化学标记或人工干预就可以排除81:5%的良性和正常组织。

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