Computer-Aided Diagnosis of Thyroid Nodule from Ultrasound Images Using Transfer Learning from Deep Convolutional Neural Network Models

O. A. Ajilisa, V. Jagathyraj, M. Sabu
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引用次数: 5

Abstract

Nowadays, thyroid cancer is considered as one of the most common endocrine cancer in the human body. Ultrasonography is the primary imaging modality for the diagnosis of thyroid cancer. Computer-Aided assessment of ultrasound images for differentiating malignant nodules from benign nodule may help the clinicians for their decision making, and it leads to early diagnosis and on-time treatment. The important problem is difficulty in capturing features appropriate for differentiating malignant nodules from benign nodules. In this study, we extensively investigated the feasibility of transfer learning technique for the extraction of high-level features from thyroid ultrasound images. Images are preprocessed to adjust the skewed distribution using a cluster-based sampling technique. Pre-trained convolutional neural network models are fine-tuned with these preprocessed Images for the extraction of high-level semantic features from Images. Then the extracted features are fed into several supervised learning algorithms, and the performance of each model is evaluated. The experimental results recommend the viability of the Inception-v3 network and Xception network for efficiently differentiating malignant thyroid nodules from benign nodules.
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基于深度卷积神经网络模型迁移学习的超声图像甲状腺结节计算机辅助诊断
目前,甲状腺癌被认为是人体最常见的内分泌肿瘤之一。超声检查是诊断甲状腺癌的主要影像学手段。计算机辅助评价超声图像鉴别良恶性结节有助于临床医生的决策,有助于早期诊断和及时治疗。重要的问题是难以捕捉适合于鉴别良性和恶性结节的特征。在这项研究中,我们广泛地研究了迁移学习技术从甲状腺超声图像中提取高级特征的可行性。使用基于聚类的采样技术对图像进行预处理以调整倾斜分布。预先训练的卷积神经网络模型使用这些预处理图像进行微调,以从图像中提取高级语义特征。然后将提取的特征输入到几种监督学习算法中,并对每个模型的性能进行评估。实验结果表明,Inception-v3网络和exception网络能够有效地鉴别良性和恶性甲状腺结节。
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