Abstract

The main clinical manifestations of stroke are motor, language, sensory, and mental disorders. After treatment, in addition to being conscious, other symptoms will still remain in varying degrees. This is the sequelae of stroke, including numbness, facial paralysis, central paralysis, and central paralysis. If the sequelae of stroke are not treated effectively, they can easily develop into permanent sequelae. Most of the affected people have sequelae, and most of them have symptoms of upper limb paralysis. Therefore, it is of great significance to study how to carry out effective rehabilitation training for stroke patients to reduce the disease and even restore their motor function. Based on this background, this research aims to use deep learning technology to design a stroke rehabilitation model based on electroencephalography (EEG) signals. First, the patient’s EEG signal will be preprocessed. Then, an improved deep neural network model (IDNN) is used to get the EEG classification results. The traditional DNN model construction process is simple and suitable for scenarios where there is no special requirement for the data format, but the generalization of a single DNN model is usually poor. Large margin support vector machine (LM_SVM) is an extension method of support vector machine (SVM), suitable for any occasion. By optimizing the edge distribution, better generalization performance can be obtained. Taking into account the advantages of DNN and LM_SVM and the high aliasing characteristics of stroke data, an improved DNN model is proposed. Finally, based on the EEG recognition result of the model, the rehabilitation equipment is controlled to assist the patient in rehabilitation treatment. The experimental results verify the superiority of the EEG classification model used, and further prove that this research has good practical value.

Highlights

  • Stroke is a disease that causes brain dysfunction due to blockage or rupture of blood vessels in the brain

  • Aiming at the advantages of Deep Neural Networks (DNN) and Large margin support vector machine (LM_SVM) and the characteristics of high aliasing of stroke data, this paper proposes model

  • Considering the above factors comprehensively, this paper selects a network with two hidden layers and a combination of neurons in each layer (11, 6) as the final stroke rehabilitation model

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Summary

Introduction

Stroke is a disease that causes brain dysfunction due to blockage or rupture of blood vessels in the brain. According to the cerebral blood circulation disorder, it is divided into two types: hemorrhagic type and ischemic type. Most stroke patients are ischemic, that is, the softening and necrosis of local brain tissue due to blood circulation, ischemia, and hypoxia. According to the statistics of the World Health Organization, stroke has become one of the main diseases of human death and disability worldwide (Sheorajpanday et al, 2011; Walter et al, 2016). Due to the different extent of damage to the affected brain regions and tissues, the symptoms of stroke vary. Regions and diagnostic criteria, the incidence of PSCI in Europe and America is 20∼80% (Douiri et al, 2013; Sun et al, 2014)

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