Patent · US Active

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

US11311220B1 · kind B1 · utility

2Cited by
10References
20Claims
0Family size

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Key dates

Filing dateOct 11, 2021
Grant dateApr 26, 2022
Priority date
Expiry dateOct 11, 2041

Classification

  • Technology area (CPC A)Human Necessities
  • CPC primaryA61B5/7264
  • WIPO fieldMedical technology
  • WIPO sectorInstruments

Abstract

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.

Source: USPTO / EPO open patent data. Objective bibliographic and citation counts.