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Classification of Deep Convolutional Neural Network in Thyroid Ultrasound Images

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Objective: To explore the application of deep convolutional neural network theory in thyroid ultrasound image system analysis and eigenvalue extraction to help medically predict the patient’s condition. Methods: The thyroid color ultrasound image dataset of our hospital was selected as the training and test samples. The comparison experiment was designed in the deep convolutional neural network learning framework to test the feasibility of the method. Results: Image information classification based on deep neural network algorithm can predict thyroid nodule lesions well, and has good accuracy in the classification test of benign and malignant nodules. Conclusion: The clinical application of deep learning method and thyroid ultrasound image feature value extraction and system analysis can improve the accuracy of clinical thyroid benign and malignant classification.

Keywords: Classification; Convolutional Neural Network; Deep Learning; Thyroid Ultrasound Images

Document Type: Research Article

Affiliations: 1: The Third Hospital of Hebei Medical University, 050051, China 2: Hebei Normal University, 050024, China 3: The Fourth Hospital of Hebei Medical University, 050051, China 4: The First Hospital of Shijiazhuang, 050011, China 5: Department of IT, College of Engineering and Technology, Dindigul 629702, Tamil Nadu, India

Publication date: 01 August 2020

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  • Journal of Medical Imaging and Health Informatics (JMIHI) is a medium to disseminate novel experimental and theoretical research results in the field of biomedicine, biology, clinical, rehabilitation engineering, medical image processing, bio-computing, D2H2, and other health related areas.
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