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Article type: Research Article
Authors: Hayashi, Norioa | Maruyama, Tomokob; c | Sato, Yusukeb; d | Watanabe, Haruyukia | Ogura, Toshihiroa | Ogura, Akioa
Affiliations: [a] Department of Radiology, Gunma University Hospital 371-8511, Japan | [b] Graduate School of Radiological Technology, Gunma Prefectural College of Health Sciences, Gunma 371-0052, Japan | [c] Department of Radiology, Shinshu University Hospital, Nagano 390-8621, Japan | [d] Department of Radilogical Technology, Gunma University Hospital, Gunma 371-8511, Japan
Correspondence: [*] Corresponding author: Norio Hayashi, Department of Radiological Technology, Gunma Prefectural College of Health Sciences 323-1 Kamioki, Maebashi, Gunma 371-0052, Japan. Tel.: +81 27 235 1211; Fax: +81 27 235 2501; E-mail: [email protected].
Abstract: BACKGROUND: Applied research on artificial intelligence, mainly in deep learning, is widely performed. If medical images can be evaluated using artificial intelligence, this could substantially improve examination efficiency. OBJECTIVE: We investigated an evaluation system for medical images with different noise characteristics using a deep convolutional neural network. METHODS: Simulated computed tomography images are the targets of the system. We used an AlexNet trained with natural images for the deep convolutional neural network and a support vector machine for classification. Synthetic computed tomography images with circular and rectangular signal bodies at different levels of contrast and added Gaussian noise were used for training and testing. RESULTS: Two transfer learning methods were tested: classification by a re-trained support vector machine using the AlexNet features, and a method that fine-tuned the deep convolutional neural network. Using the first method, all the test image noise levels could be classified correctly. The fine-tuning method achieved an accuracy rate of 92.6%. CONCLUSIONS: An image quality evaluation method using artificial intelligence will be useful for clinical images and different image quality indices in the future.
Keywords: Classification, deep convolutional neural network (DCNN), noise, computed tomography (CT), phantom
DOI: 10.3233/THC-191718
Journal: Technology and Health Care, vol. 28, no. 2, pp. 113-120, 2020
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