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Simultaneous brain structure segmentation in magnetic resonance images using deep convolutional neural networks.
Maruyama, Tomoko; Hayashi, Norio; Sato, Yusuke; Ogura, Toshihiro; Uehara, Masumi; Ogura, Akio; Watanabe, Haruyuki; Kitoh, Yoshihiro.
Affiliation
  • Maruyama T; Division of Radiology, Shinshu University Hospital, 3-1-1 Asahi, Matsumoto, Nagano, 390-8621, Japan. tmaruyama@shinshu-u.ac.jp.
  • Hayashi N; Department of Radiological Technology, Graduate School of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan. tmaruyama@shinshu-u.ac.jp.
  • Sato Y; Department of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan.
  • Ogura T; Department of Radiological Technology, Graduate School of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan.
  • Uehara M; Department of Radiology, Gunma University Hospital, 3-39-5 Showamachi, Maebashi, Gunma, 371-8511, Japan.
  • Ogura A; Department of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan.
  • Watanabe H; Department of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan.
  • Kitoh Y; Department of Radiological Technology, Gunma Prefectural College of Health Sciences, 323-1 Kamioki, Maebashi, Gunma, 371-0052, Japan.
Radiol Phys Technol ; 14(4): 358-365, 2021 Dec.
Article in En | MEDLINE | ID: mdl-34338999
In brain magnetic resonance imaging (MRI) examinations, rapidly acquired two-dimensional (2D) T1-weighted sagittal slices are typically used to confirm brainstem atrophy and the presence of signals in the posterior pituitary gland. Image segmentation is essential for the automatic evaluation of chronological changes in the brainstem and pituitary gland. Thus, the purpose of our study was to use deep learning to automatically segment internal organs (brainstem, corpus callosum, pituitary, cerebrum, and cerebellum) in midsagittal slices of 2D T1-weighted images. Deep learning for the automatic segmentation of seven regions in the images was accomplished using two different methods: patch-based segmentation and semantic segmentation. The networks used for patch-based segmentation were AlexNet, GoogLeNet, and ResNet50, whereas semantic segmentation was accomplished using SegNet, VGG16-weighted SegNet, and U-Net. The precision and Jaccard index were calculated, and the extraction accuracy of the six convolutional network (DCNN) systems was evaluated. The highest precision (0.974) was obtained with the VGG16-weighted SegNet, and the lowest precision (0.506) was obtained with ResNet50. Based on the data, calculation times, and Jaccard indices obtained in this study, segmentation on a 2D image may be considered a viable and effective approach. We found that the optimal automatic segmentation of organs (brainstem, corpus callosum, pituitary, cerebrum, and cerebellum) on brain sagittal T1-weighted images could be achieved using SegNet with VGG16.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Image Processing, Computer-Assisted / Neural Networks, Computer Language: En Journal: Radiol Phys Technol Journal subject: BIOFISICA / RADIOLOGIA Year: 2021 Document type: Article Affiliation country: Japan Country of publication: Japan

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Image Processing, Computer-Assisted / Neural Networks, Computer Language: En Journal: Radiol Phys Technol Journal subject: BIOFISICA / RADIOLOGIA Year: 2021 Document type: Article Affiliation country: Japan Country of publication: Japan