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Evaluating bio-inspired approaches for advance prediction of epileptic seizures

机译:评估生物启发的方法以提前预测癫痫发作

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Epilepsy is the most common neurological disorder, affecting between 0.6% and 0.8% of the global population. During an epileptic seizure, the onset of which tends to be sudden and without prior warning, sufferers are highly vulnerable to harm, and methods that might accurately predict seizure episodes in advance are clearly of value. Building on recent work by Costa et al, we compare and contrast the sensitivity, specificity and accuracy of a selection of algorithms that attempt to predict the onset of epileptic seizures on the basis of 14 features extracted from electroencephalograph (EEG) monitoring data. We focus on how predictability varies as a function of how far in advance we are trying to predict the seizure episode, and also consider feature selection issues. We find that, using either a multi-class support vector machine (MC-SVM) or an evolved neural network (EANN), reasonable specificity and sensitivity can be achieved for prediction 8–10 minutes in advance. Indications are that the EANN performance is preferable for advance prediction, however the results so far do not support this with statistical significance. Meanwhile, we find that with a well-chosen reduced feature set (using mutual information), promising results can be obtained with only 8 of the 14 features. Further analysis showed that the accumulated energy in the signal, the maximum Lyupanov exponent, as well as measures of high-frequency signal components measured over short term windows, seem most promising for future research into accurate advance prediction models.
机译:癫痫病是最常见的神经系统疾病,影响全球人口的0.6%至0.8%。在癫痫发作中,发作往往是突然的,没有事先警告,患者极易受到伤害,可以预先准确预测癫痫发作的方法显然是有价值的。在Costa等人的最新工作的基础上,我们比较和对比了一些算法的敏感性,特异性和准确性,这些算法试图根据从脑电图(EEG)监测数据中提取的14个特征来预测癫痫发作的发作。我们着眼于可预测性如何根据我们试图预测癫痫发作提前多久而变化,并考虑特征选择问题。我们发现,使用多类支持向量机(MC-SVM)或进化的神经网络(EANN),可以提前8-10分钟实现合理的特异性和敏感性。有迹象表明,EANN性能对于提前预测是可取的,但是到目前为止的结果还没有统计学意义。同时,我们发现,使用经过精挑细选的简化特征集(使用互信息),仅使用14个特征中的8个就可以得到有希望的结果。进一步的分析表明,信号中的累积能量,最大的Lyupanov指数以及​​在短期窗口内测量的高频信号分量的度量,对于未来对精确的超前预测模型的研究而言似乎是最有前途的。

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