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Epileptic Seizure Prediction Based on Permutation Entropy

机译:基于排列熵的癫痫发作预测

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摘要

Epilepsy is a chronic non-communicable disorder of the brain that affects individuals of all ages. It is caused by a sudden abnormal discharge of brain neurons leading to temporary dysfunction. In this regard, if seizures could be predicted a reasonable period of time before their occurrence, epilepsy patients could take precautions against them and improve their safety and quality of life. However, the potential that permutation entropy(PE) can be applied in human epilepsy prediction from intracranial electroencephalogram (iEEG) recordings remains unclear. Here, we described the novel application of PE to track the dynamical changes of human brain activity from iEEG recordings for the epileptic seizure prediction. The iEEG signals of 19 patients were obtained from the Epilepsy Centre at the University Hospital of Freiburg. After preprocessing, PE was extracted in a sliding time window, and a support vector machine (SVM) was employed to discriminate cerebral state. Then a two-step post-processing method was applied for the purpose of prediction. The results showed that we obtained an average sensitivity (SS) of 94% and false prediction rates (FPR) with 0.111 h−1. The best results with SS of 100% and FPR of 0 h−1 were achieved for some patients. The average prediction horizon was 61.93 min, leaving sufficient treatment time before a seizure. These results indicated that applying PE as a feature to extract information and SVM for classification could predict seizures, and the presented method shows great potential in clinical seizure prediction for human.
机译:癫痫病是一种慢性非传染性大脑疾病,会影响各个年龄段的人。它是由脑神经元突然异常放电导致暂时性功能障碍引起的。在这方面,如果可以在癫痫发作发生前的合理时间段内预测到癫痫发作,则癫痫患者可以采取预防措施来预防癫痫发作并改善其安全性和生活质量。然而,从颅内脑电图(iEEG)记录可以将置换熵(PE)应用于人类癫痫预测的可能性尚不清楚。在这里,我们描述了PE在iEEG记录中追踪癫痫发作预测中人类大脑活动的动态变化的新型应用。 19名患者的iEEG信号从弗莱堡大学医院的癫痫中心获得。预处理后,在滑动时间窗口中提取PE,并使用支持向量机(SVM)来区分大脑状态。然后采用两步后处理方法进行预测。结果表明,我们获得了94%的平均灵敏度(SS)和0.111 h -1 的错误预测率(FPR)。部分患者的SS为100%,FPR为0 h -1 时获得了最佳结果。平均预测时间为61.93分钟,在癫痫发作之前留有足够的治疗时间。这些结果表明,以PE为特征来提取信息和支持向量机进行分类可以预测癫痫发作,并且该方法在人类临床癫痫发作预测中具有很大的潜力。

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