DOIONLINE

DOIONLINE NO - IJASEAT-IRAJ-DOIONLINE-16742

Publish In
International Journal of Advances in Science, Engineering and Technology(IJASEAT)-IJASEAT
Journal Home
Volume Issue
Issue
Volume-7,Issue-4  ( Oct, 2019 )
Paper Title
Automatic Segmentation of the Brain Tumors by Results of Radiation Diagnostics using a Modified Neural Network UNET
Author Name
Osmakov Ilya A., Ulyanov Pavel, Zubitskiy Pavel S., Kosyrkova Alexandra V., Belskii Denis B., Letunovskaya Marina V.
Affilition
Burtsev Laboratory‖ LLC NeuroSoft Diagnostic‖ LLC NMIC of Neurosurgery named after academician N.N. Burdenko NeuroHive‖ LLC
Pages
25-28
Abstract
In this paper described using Convolution Neural Network UNET with specification of boundaries. The modelhastrained for segmentation and detection tasksof glial brain tumors. Mixed datasetconsists from BraTS’2019 and own data has used for training.The article also highlights the data pre-processing and formation of data.The following metrics of the quality of neural networks were obtained: Sørensen–Dice coefficient= 0.708,Sensitivity = 0.937; Specificity = 0.903. Final model realization will be presented in medicine diagnostic software by authors and ―NeuroSoft Diagnostic‖ LLC. Keywords - Convolutional Neural Networks, UNET, Border Refinement, Dicom Images, Image Segmentation, Glial Tumors, Oncology, Radiation Diagnostics, Brats Dataset, Machine Learning, UNET Network, Image Recognition, Computer Vision, Data Pre-Processing.
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