Method for intelligently detecting BECT spike waves based on multichannel electroencephalograms

An EEG signal and intelligent detection technology, applied in the computer field, can solve the problems that the accuracy of the detection results cannot be guaranteed, the performance of the automatic spike wave detection method is affected, and the characteristics of the spike wave waveform are not obvious enough, and achieves strong model generalization ability, The effect of fast training speed and excellent classification effect

Pending Publication Date: 2020-09-11
HANGZHOU DIANZI UNIV
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Problems solved by technology

However, this method takes a long time, has a high false detection rate, and the accuracy of the detection results cannot be guaranteed. For this reason, the spike automatic detection technology has received more and more attention in recent years.
[0005] Although there have been many studies on spike detection methods, more advanced automatic spike detection is still difficult for several reasons
First, due to individual differences between people, the appearance of spikes is different, so it is difficult to automatically detect spikes in EEG signals with a simple and consistent method
Second, artifacts caused by factors such as heartbeat, eye movement, and muscle movement inevitably exist in EEG signals, which greatly affect the performance of automatic spike detection methods.
Finally, compared with fully discharged spikes, the waveform characteristics of incompletely discharged spikes are not obvious enough, which further increases the difficulty of automatic detection

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  • Method for intelligently detecting BECT spike waves based on multichannel electroencephalograms
  • Method for intelligently detecting BECT spike waves based on multichannel electroencephalograms
  • Method for intelligently detecting BECT spike waves based on multichannel electroencephalograms

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Embodiment Construction

[0044] EEG signals usually contain a lot of physiological information about human diseases, and play an important role in the diagnosis and detection of BECT diseases in children. Spike wave is a typical waveform of BECT, so for better research, it is necessary to detect spike wave of EEG signal. The existing spike method is difficult to completely and accurately determine the location of spikes, which greatly affects the research on epilepsy. In view of this, the present embodiment provides a BECT spike intelligent detection method based on multi-channel EEG signals.

[0045] In order to make the purpose, implementation and innovation of the present invention more prominent, the present invention will be further described in detail below with reference to the accompanying drawings and in conjunction with the embodiments.

[0046] figure 1 It is a general flowchart of the BECT spike intelligent detection method based on multi-channel EEG signals of the present invention, inc...

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Abstract

The invention provides a method for intelligently detecting BECT spike waves based on multichannel electroencephalograms. The method comprises the following steps: (1) collecting the electroencephalograms (EEG), and establishing an experimental database; (2) preprocessing data: carrying out band-pass filtering on collected EEG data, so as to obtain a standard EEG signal; (3) carrying out candidatespike wave detection, carrying out self-adaptive template matching by utilizing a screened class-center as a new template, and adding all matching results together so as to obtain candidate spike waves; (4) eliminating false-detection spike waves: determining two relevant BP channels of each candidate spike wave according to a candidate detection result of an AV channel, and removing the candidate spike waves without an "eye-for-eye" phenomenon on the two BP channels; (5) extracting characteristics of the spike waves: after the false-detection spike waves are eliminated, calculating 10 characteristics of each channel; and (6) carrying out random forest classification: training a random forest classification model by taking the extracted characteristics of the spike waves as a characteristic vector, and inputting the characteristics of the spike waves of to-be-analyzed electroencephalograms into the random forest classification model, so as to obtain a detection result of the BECT spike waves.

Description

technical field [0001] The invention relates to the field of computers, in particular to a BECT spike intelligent detection method of multi-channel electroencephalogram signals. Background technique [0002] Benign epilepsy with centro-temporal spikes (BECT) is one of the most common epilepsy syndromes in children, and its main patients are school-age children, accounting for 15%-20% of childhood epilepsy. [0003] Electroencephalogram (Electroencephalogram, EEG) is formed by the simultaneous neuron discharge of a large number of neurons in the process of brain activity. It is the most direct reflection of cerebral cortex discharge and contains a large amount of physiological and disease information. Clinical studies have shown that BECT is primary focal epilepsy with unknown etiology. It is a special form of epilepsy, mainly manifested as partial discharge in the central area and temporal area. Clinically, the diagnosis of BECT patients is mainly through the detection and ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): A61B5/0476A61B5/00
CPCA61B5/7235A61B5/7203A61B5/725A61B5/7267A61B5/4094
Inventor 吴端波王紫萌
Owner HANGZHOU DIANZI UNIV
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