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US Patent 11311220 Deep learning model-based identification of stress resilience using electroencephalograph (EEG)

Patent 11311220 was granted and assigned to King Abdulaziz University on April, 2022 by the United States Patent and Trademark Office.

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Is a
Patent
Patent
1

Patent attributes

Patent Applicant
King Abdulaziz University
King Abdulaziz University
1
Current Assignee
King Abdulaziz University
King Abdulaziz University
1
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
1
Patent Number
113112201
Patent Inventor Names
Mohammed U. Alsaggaf1
Ubaid M. Al-Saggaf1
Syed Saad Azhar Ali1
Rumaisa Abu Hasan1
Muhammad Moinuddin1
Date of Patent
April 26, 2022
1
Patent Application Number
174983791
Date Filed
October 11, 2021
1
Patent Citations
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US Patent 10456088 Performance of biological measurements in the presence of noise
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US Patent 10136856 Wearable respiration measurements system
1
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US Patent 10231673 Stress detection based on sympathovagal balance
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US Patent 10390764 Continuous stress measurement with built-in alarm fatigue reduction features
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US Patent 10478131 Determining baseline contexts and stress coping capacity
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US Patent 10812424 System and method for quantifying mental health within a group chat application
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US Patent 11051748 Multiple frequency neurofeedback brain wave training techniques, systems, and methods
1
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US Patent 11179089 Real-time intelligent mental stress assessment system and method using LSTM for wearable devices
1
Patent Citations Received
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9
Patent Primary Examiner
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Navin Natnithithadha
1
CPC Code
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A61B 5/384
1
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A61B 5/38
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A61B 5/4884
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A61B 5/374
1
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A61B 5/291
1
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A61B 5/165
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A61B 5/378
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A61B 5/7264
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A device, method, and non-transitory computer readable medium for identification of stress resilience. The method for identification of stress resilience includes stimulating a human subject by at least one of a plurality of stressful events in a virtual reality environment, acquiring multichannel real-time electroencephalograph (EEG) signals by an EEG monitor worn by a human subject, recording the real-time EEG signals received during the stressful event, transmitting the real-time EEG signals to a computing device. The computing device generates a plurality of filtered brain wave frequencies related to the stressful event by filtering the multichannel real-time EEG signals, classifies the brain wave frequencies by frequency level by applying the filtered brain wave frequencies to the deep learning model, applies each frequency level associated with the stressful event to the convolutional neural network, and identifies a level of stress resilience of the human subject associated with the stressful event.

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