一种基于头皮脑电图的实时癫痫发作预测框架

Rana Fayyaz Ahmad, A. Malik, N. Kamel, F. Reza
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引用次数: 12

摘要

癫痫是一种大脑紊乱疾病,全世界有5000多万人患有该病。治疗癫痫的方法是药物和手术。有些病人无法通过药物和手术治愈。三分之一的患者仍然患有无法控制的癫痫。他们需要持续监测癫痫发作情况。如果任何异常的大脑活动或癫痫发作在发生之前被预测到,医生可以提供更好的治疗或患者自己可以采取预防措施。癫痫发作前的脑电图信号显示癫痫发作的发生情况。大脑在间隔期和间隔期表现正常。对于癫痫,需要从几天到一周的长时间脑电图记录。这使病人在医院里呆了许多天。我们提出的方法是预测癫痫发作和实时监测大脑异常。目前尚无临床应用的脑电图癫痫发作预测算法。我们的目的是研究和开发一种良好的、具有高灵敏度和特异性的头皮脑电图无创预测算法/方法。并进行了全面的调查,以发现与此相关的局限性和研究问题。所提出的模式识别方法在癫痫患者的实时监测中具有很大的应用潜力,有助于提高患者的生活质量。
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A proposed frame work for real time epileptic seizure prediction using scalp EEG
Epilepsy is the brain disorder disease having more than 50 million people worldwide. The treatment for epilepsy is medication and surgery. Some patients are not cured with medicine and surgery. One third of the patients still remain with uncontrolled epilepsy. They need constant monitoring for epileptic seizures. Better treatment can be provided by the doctors or precautionary measures can be taken by the patients themselves if any abnormal brain activity or seizure is predicted before its occurrence. The pre-ictal period has some information about the occurrence of epileptic seizure in EEG signals. The brain behaves normal in inter-ictal and postictal periods. For epilepsy, long duration EEG recording are required from days to week. This keeps the patients to stay in the hospital for many days. Our proposed methodology is to predict the epileptic seizure and monitor the brain abnormality in real time. Still there is no epileptic seizure prediction algorithm using EEG available for clinical applications. Our aim is to study and develop a good epileptic seizure prediction algorithm/method with high value of sensitivity and specificity using scalp EEG i-e noninvasive approach. Also a comprehensive survey is done to find the limitations and research issues related to this. The proposed pattern recognition approach has great potential to be used in real time monitoring for epileptic patients and it can be helpful in improving the quality of life of the patients.
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