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Optimized High Resolution 3D Dense-U-Net Network for Brain and Spine Segmentation

. 2019 ; 9 (3) : 404. [pub] 20190125

Status minimální Jazyk angličtina

Typ dokumentu časopisecké články

Perzistentní odkaz   https://www.medvik.cz/link/bmc25025671

Grantová podpora
NV18-08-00459 MZ0 CEP - Centrální evidence projektů

The 3D image segmentation is the process of partitioning a digital 3D volumes into multiple segments. This paper presents a fully automatic method for high resolution 3D volumetric segmentation of medical image data using modern supervised deep learning approach. We introduce 3D Dense-U-Net neural network architecture implementing densely connected layers. It has been optimized for graphic process unit accelerated high resolution image processing on currently available hardware (Nvidia GTX 1080ti). The method has been evaluated on MRI brain 3D volumetric dataset and CT thoracic scan dataset for spine segmentation. In contrast with many previous methods, our approach is capable of precise segmentation of the input image data in the original resolution, without any pre-processing of the input image. It can process image data in 3D and has achieved accuracy of 99.72% on MRI brain dataset, which outperformed results achieved by human expert. On lumbar and thoracic vertebrae CT dataset it has achieved the accuracy of 99.80%. The architecture proposed in this paper can also be easily applied to any task already using U-Net network as a segmentation algorithm to enhance its results. Complete source code was released online under open-source license.

Citace poskytuje Crossref.org

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$a Říha, Kamil $u Department of Telecommunications, Brno University of Technology, Brno 616 00, Czech Republic
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