Eeg high-frequency oscillation signal detecting system based on convolution neural network

A convolutional neural network and high-frequency oscillation technology, applied in the field of medical signal processing, can solve the problem of high false detection rate and achieve low false detection rate, high sensitivity, and good performance

Inactive Publication Date: 2019-09-17
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Benefits of technology

This technology allows users with varying preferences to selectively filter data based on their requirements without sacrificing accuracy. Additionally it offers more flexible options that allow us to adjust how much sensitive we want our equipment while reducing its overall size. Overall this makes processing faster and easier by providing accurate results even at lower cost per unit area.

Problems solved by technology

Technical Problem: Current techniques used for automatically identifying and locating brain foci require long periods of training before they become symptomsatic. Existing automated systems lack accuracy due to factors like human judgment errors and limitations associated with manually identified areas. Therefore, it would be beneficial to develop better ways to identify and track these regions while reducing their impact on patient outcomes during treatment procedures.

Method used

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  • Eeg high-frequency oscillation signal detecting system based on convolution neural network
  • Eeg high-frequency oscillation signal detecting system based on convolution neural network
  • Eeg high-frequency oscillation signal detecting system based on convolution neural network

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Embodiment Construction

[0031] The present invention will be described in further detail below in conjunction with the embodiments and accompanying drawings.

[0032] The present embodiment is a possible realization based on Matlab and Python; the present embodiment provides a kind of EEG high-frequency oscillation signal detection system based on convolutional neural network, and its system block diagram is as followsfigure 1 As shown, it includes: a client terminal 1, a data preprocessing module 2, a high-frequency oscillation signal pre-detection module 3, a convolutional neural network module 4, and a statistics module 5.

[0033] Such as figure 2 Shown is a schematic diagram of the user terminal module, the user terminal is composed of a user selection module, an EEG signal acquisition module, a signal amplification module and a storage module; the data used in this embodiment is cortical EEG data, and the placed electrodes are connected to After entering the user terminal, the user terminal wi...

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Abstract

The invention belongs to the field of medical signal processing, particularly provides an eeg high-frequency oscillation signal detecting system based on a convolution neural network, and aims to solve the problem that in a conventional eeg high-frequency oscillation signal detection technique, the false drop rate is high caused by high-frequency noise and peaked wave shape. The eeg high-frequency oscillation signal detecting system comprises a user terminal, a data preprocessing module, a high-frequency oscillation signal predetecting module, the convolution neural network module and a static module, wherein the user terminal is used for acquiring an eeg signal; the data preprocessing module is used for performing data preprocessing; the high-frequency oscillation signal predetecting module is used for performing detection on the eeg signal to obtain suspected high-frequency oscillation fragments; and the convolution neural network module is used for classifying all the suspected high-frequency oscillation fragments. According to the eeg high-frequency oscillation signal detecting system disclosed by the invention, when HFOs are detected, the sensitivity can be effectively improved, the false drop rate is reduced, and the precision rate of epileptogenic focus positioning is increased; and besides, the eeg high-frequency oscillation signal detecting system can use scalp eeg and can also use cortex eeg, so that the egg high-frequency oscillation signal detecting system can enable a doctor to achieve more flexibility.

Description

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Claims

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Application Information

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Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA
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