You are in:Home/Publications/Deep convolutional neural network for the automated detection of Subthalamic nucleus using MER signals.

Ass. Lect. Mohamed Hosny :: Publications:

Title:
Deep convolutional neural network for the automated detection of Subthalamic nucleus using MER signals.
Authors: Mohamed Hosny; Minwei Zhu; Wenpeng Gao; Yili Fu
Year: 2021
Keywords: Convolutional neural network; Deep learning; Subthalamic nucleus detection; Parkinson’s disease; Deep brain stimulation; Microelectrode recording
Journal: Journal of Neuroscience Methods
Volume: 356
Issue: Not Available
Pages: 109145
Publisher: Elsevier
Local/International: International
Paper Link:
Full paper Mohamed Hosny _Deep convolutional neural network for the automated detection of Subthalamic nucleus using MER signals.pdf
Supplementary materials Not Available
Abstract:

Background: Deep brain stimulation (DBS) surgery has been extensively conducted for treating advanced Parkinson's disease (PD) patient’s symptoms. DBS hinges on the localization of the subthalamic nucleus (STN) in which a permanent electrode should be accurately placed to produce electrical current. Microelectrode recording (MER) signals are routinely recorded in the procedure of DBS surgery to validate the planned trajectories. However, manual MER signals interpretation with the goal of detecting STN borders requires expertise and prone to inter-observer variability. Therefore, a computerized aided system would be beneficial to automatic detection of the dorsal and ventral borders of the STN in MER. New method: In this study, a new deep learning model based on convolutional neural system for automatic delineation of the neurophysiological borders of the STN along the electrode trajectory was developed. Comparison with existing methods: The proposed model does not involve any conventional standardization, feature extraction or selection steps. Results: Promising results of 98.67% accuracy, 99.03% sensitivity, 98.11% specificity, 98.79% precision and 98.91% F1-score for subject based testing were achieved using the proposed convolutional neural network (CNN) model. Conclusions: This is the first study on the analysis of MER signals to detect STN using deep CNN. Traditional machine learning (ML) algorithms are often cumbersome and suffer from subjective evaluation. Though, the developed 10-layered CNN model has the capability of extracting substantial features at the convolution stage. Hence, the proposed model has the potential to deliver high performance on STN region detection which shows perspective in aiding the neurosurgeon intraoperatively.

Google ScholarAcdemia.eduResearch GateLinkedinFacebookTwitterGoogle PlusYoutubeWordpressInstagramMendeleyZoteroEvernoteORCIDScopus