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Wearable individual electrocardiogram detection method

An electrical detection, wearable technology, applied in the directions of diagnostic recording/measurement, medical science, sensors, etc., to achieve the effect of improving robustness, broad application prospects, and high accuracy

Pending Publication Date: 2020-10-13
QILU UNIV OF TECH
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  • Application Information

AI Technical Summary

Problems solved by technology

Because of the variation in ECG waveform morphology between different patients, the features extracted from the ECG signal should well represent the characteristics of the corresponding patients, which cannot be met by previous methods.

Method used

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  • Wearable individual electrocardiogram detection method

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Embodiment Construction

[0025] A wearable individual ECG detection method, which is based on a multi-stream multi-scale convolutional neural network model and a multi-lead comprehensive judgment algorithm to detect and classify individual ECG.

[0026] It includes the following steps:

[0027] (1) Collect ECG signals and preprocess them;

[0028] (2) Training of a general model of individual ECG signals of single-lead patients based on multi-stream multi-scale convolutional neural network model;

[0029] (3) Training based on a multi-stream multi-scale convolutional neural network model for a single-lead patient's individual ECG signal model;

[0030] (4) The multi-lead comprehensive judgment algorithm is used to determine the ECG detection result.

[0031] More specifically, this algorithm uses the MM-CNN model to train a general ECG signal classification model, and embeds it in the wearable device as a pre-training network for the subsequent network. In the equipment training phase, the wearable device autom...

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Abstract

The invention belongs to the technical field of electrocardiogram detection, and particularly relates to a wearable patient individual electrocardiogram detection method. According to the method, based on a multi-stream multi-scale convolutional neural networks (MM-CNN) model and a multi-lead comprehensive judgment algorithm, detection classifying is performed on an individual electrocardiogram (ECG). The invention proposes an MM-CNN-based single-lead classified detection algorithm to promote the clinical practice of ECG diagnosis; an algorithm that ECG signals of a few minutes are obtained from a specific patient to train a general model into a patient-specific model is proposed; the general model and the patient-specific model have a same network system, so that the efficiency of ECG detection is increased; the invention proposes the multi-lead comprehensive judgment algorithm to permanently classify the ECG signals from the specific patient, thus improving the robustness; and the method has high accuracy and high real-time performance, and is suitable for real-time detection of wearable equipment.

Description

Technical field [0001] The invention belongs to the technical field of ECG detection, and specifically relates to a wearable patient's individual ECG detection method. Background technique [0002] In 2013, the smart wearable device industry began to take off in China, and the current wearable device market seems to be saturated. In recent years, the wearable device market has been sluggish, because wearable devices are mainly used for medical and health testing, but the accuracy of the detection is not enough, such as the detection of ECG signals. Although Holter or other electrocardiographs can easily capture long-term real-time ECG signals, how to mine the information to further diagnose heart disease is still somewhat challenging. The electrocardiogram varies greatly between different patients, and this difference depends largely on the patient's physical condition. Because of the variation of the ECG waveform shape between different patients, the features extracted from th...

Claims

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Application Information

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IPC IPC(8): A61B5/0402A61B5/00
CPCA61B5/6801A61B5/7264A61B5/7267
Inventor 梁玮
Owner QILU UNIV OF TECH
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