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Automatic Malignant Thyroid Nodule Recognition in Ultrasound Images based on Deep Learning

机译:基于深度学习的超声图像自动恶性甲状腺结节识别

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As the most common malignancy in the endocrine system, thyroid cancer is usually diagnosed by discriminating the malignant nodules from the benign ones using ultrasonography, whose interpretation results primarily depends on the subjectivity judgement of the radiologists. In this study, we propose a novel cascade deep learning model to achieve automatic objective diagnose during ultrasound examination for assisting radiologists in recognizing benign and malignant thyroid nodules. First, the simplified U-net is employed to segment the region of interesting (ROI) of the thyroid nodules in each frame of the ultrasound image automatically. Then, to alleviate the limitation that medical training data are relatively small in size, the improved Conditional Variational Auto-Encoder (CVAE) learning the probability distribution of ROI images is trained to generate new images for data augmentation. Finally, ResNet50 is trained with both original and generated ROI images. As consequence, the deep learning model formed by the trained U-net and trained Resnet-50 cascade can achieve malignant thyroid nodule recognition with the accuracy of 87.4%, the sensitivity of 92%, and the specificity of 86.8%.
机译:作为内分泌系统中最常见的恶性肿瘤,通常通过使用超声检查鉴别来自良性物质的恶性结节来诊断甲状腺癌,其解释结果主要取决于放射科医师的主观性判断。在这项研究中,我们提出了一种新的级联深度学习模型,实现超声检查期间的自动客观诊断,以辅助放射科医师识别良性和恶性甲状腺结节。首先,用于自动地将简化的U-NET分段为超声图像的每个帧中的甲状腺结节的有趣区域(ROI)区域。然后,为了缓解医学训练数据的尺寸相对较小的限制,改进的条件变形自动编码器(CVAE)学习ROI图像的概率分布,训练以生成用于数据增强的新图像。最后,ResET50培训了原始和生成的ROI图像。结果,由训练的U-Net和培训的Reset-50级联形成的深度学习模型可以实现恶性甲状腺结节识别,精度为87.4%,灵敏度为92%,特异性为86.8%。

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