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9th Edition of International Conference on

Neurology and Neurological Disorders

June 20-22, 2024 | Paris, France

Neurology 2024

Saddam Naji Abdu Nasher

Speaker at Neurology and Neurological Disorders 2024 - Saddam Naji Abdu Nasher
Marsa international LLC, Saudi Arabia
Title : Advancements in neurology research: Exploring new frontiers

Abstract:

Accurately extracting brain tissue is a critical and primary step in brain neuroimaging research. Due to the differences in brain size and structure between humans and nonhuman primates, the performance of the existing tools for brain tissue extraction, working on macaque brain MRI, is constrained. A new transfer learning training strategy was utilized to address the limitations, such as insufficient training data and unsatisfactory model generalization ability, when deep neural networks processing the limited samples of macaque magnetic resonance imaging(MRI). First, the project combines two human brain MRI data modes to pre-train the neural network, in order to achieve faster training and more accurate brain extraction. Then, a residual network structure in the U-Net model was added, in order to propose a ResTLU-Net model that aims to improve the generalization ability of multiple research sites data. The results demonstrated that the ResTLU-Net, combined with the proposed transfer learning strategy, achieved comparable accuracy for the macaque brain MRI extraction tasks on different macaque brain MRI volumes that were produced by various medical centres. The mean Dice of the ResTLU-Net was 95.81% (no need for denoise and recorrect), and the method required only approximately 30-60 s for one extraction task on an NVIDIA 1660S GPU.

Keywords: U-Net application; brain extraction tool; data fusion; macaque brain MRI; residual structure

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