Deep learning based neural network application for automatic ultrasonic computed tomographic bone image segmentation

被引:0
作者
Fradi Marwa
El-hadi Zahzah
Kais Bouallegue
Mohsen Machhout
机构
[1] Monastir University,Physic Department of Faculty of Sciences of Monastir
[2] La Rochelle University,Laboratory of Informatics, Image and Interaction (L3i, France)
[3] Sousse University,ISSAT Sousse
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
VSMN-VGG-SegNet; USCT; Segmentation; Time process; GPU;
D O I
暂无
中图分类号
学科分类号
摘要
Deep-learning techniques have led to technological progress in the area of medical imaging segmentation especially in the ultrasound domain. In this paper, the main goal of this study is to optimize a deep-learning-based neural network architecture for automatic segmentation in Ultrasonic Computed Tomography (USCT) bone images in a short time process. The proposed method is based on an end to end neural network architecture. First, the novelty is shown by the improvement of Variable Structure Model of Neuron (VSMN), which is trained for both USCT noise removal and dataset augmentation. Second, a VGG-SegNet neural network architecture is trained and tested on new USCT images not seen before for automatic bone segmentation. Therefore, we offer a free USCT dataset. In addition, the proposed model is implemented on both the CPU and the GPU, hence overcoming previous works by a value of 97.38% and 96% for training and validation and achieving high segmentation accuracy for testing with a small error of 0.006, in a short time process. The suggested method demonstrates its ability to augment USCT data and then to automatically segment USCT bone structures achieving excellent accuracy outperforming the state of the art.
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页码:13537 / 13562
页数:25
相关论文
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  • [1] Badrinarayanan V(2017)Segnet: a deep convolutional encoder-decoder architecture for image segmentation IEEE Trans Pattern Anal Mach Intell 39 2481-2495
  • [2] Kendall A(2019)Deep learning for segmentation of 49 selected bones in CT scans: first step in automated PET/CT-based 3D quantification of skeletal metastases Eur J Radiol 113 89-95
  • [3] Cipolla R(2017)A new class of neural networks and its application Neurocomputing 249 28-47
  • [4] Belal SL(2019)A deep learning reconstruction framework for X-ray computed tomography with incomplete data PLoS One 14 2018-29
  • [5] Sadik M(2018)Pixel-label-based segmentation of cross-sectional brain MRI using simplified SegNet architecture-based CNN J Healthcare Eng 2018 21-441
  • [6] Kaboteh R(2019)Automatic bone segmentation in whole-body CT images Int J Comput Assist Radiol Surg 14 427-127
  • [7] Enqvist O(2017)Fully automated deep learning system for bone age assessment J Digit Imaging 30 102-139
  • [8] Ulén J(2019)An overview of deep learning in medical imaging focusing on MRI Z Med Phys 29 130-10
  • [9] Poulsen MH(2018)CT image segmentation of bone for medical additive manufacturing using a convolutional neural network Comput Biol Med 103 1-104
  • [10] Trägårdh E(2021)COVID-19 lung CT image segmentation using deep learning methods: U-net versus SegNet BMC Med Imaging 21 769-29