利用 XGBoost 方法和脑电图信号预测癫痫发作

S. Mounika, Reeja S R
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引用次数: 0

摘要

简介:癫痫是一种神经系统疾病,其特征是在没有任何明显诱因的情况下反复自发发作。癫痫发作是由于大脑电流突然增高,从而导致身体和精神症状。癫痫发作有多种类型,而癫痫本身可由各种潜在疾病引起。脑电图(EEG)是预测和诊断癫痫发作最重要和最广泛使用的工具之一。脑电图使用头骨传感器记录来自大脑的电信号,它可以为了解与癫痫发作相关的大脑活动模式提供有价值的信息。目标:采用脑机接口技术路径分析脑电信号,用于癫痫发作预测,以消除数据集中的类不平衡问题。 可以观察到,在输出变量中,一个变量的类多于其他变量的类。在使用不同的人工智能技术时,这将成为一个问题,因为这些算法更有可能偏向于某个变量,因为它的普遍性很高 方法:将使用 SMOTE 方法来解决这一偏差,并平衡响应变量中的变量数量。使用 SMOTE 技术开发 XGBoost(极梯度提升)模型,以提高分类准确性。结果:结果显示,XGBoost 方法的准确率达到了 98.7%。结论:基于脑电图的癫痫发作类型模型使用 XGBoost 模型来早期预测疾病。建议的方法可大大减少完成癫痫发作预测所需的时间。
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Forecasting Epileptic Seizures Using XGBoost Methodology and EEG Signals
INTRODUCTION: Epilepsy denotes a disorder of neurological origin marked by repetitive and spontaneous seizures without any apparent trigger. Seizures occur due to abrupt and heightened electricity flowing through the brain, which can lead to physical and mental symptoms. There are several types of epileptic seizures, and epilepsy itself can be caused by various underlying conditions. EEG (Electroencephalogram) is one of the most important and widely used tools for epileptic seizure prediction and diagnosis. EEG uses skull sensors to record electrical signals from the brain., and it can provide valuable insights into brain activity patterns associated with seizures. OBJECTIVES: Brain-computer interface technology pathway for analyzing the EEG signals for seizure prediction to eliminate the class imbalance issue from our dataset in this case, a SMOTE approach is applied.  It is observable that there are more classes of one variable than there are of the others in the output variable. This will be problematic when employing different Artificial intelligence techniques since these algorithms are more likely to be biased towards a certain variable because of its high prevalence METHODS: SMOTE approaches will be used to address this bias and balance the number of variables in the response variable. To develop an XGBoost (Extreme Gradient Boosting) model using SMOTE techniques to increase classification accuracy. RESULTS: The results show that the XGBoost method achieves a 98.7% accuracy rate. CONCLUSION: EEG-based model for seizure type using the XGBoost model for predicting the disease early. The Suggested method could significantly reduce the amount of time needed to accomplish seizure prediction.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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