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Patient-aware adaptive ngram-based algorithm for epileptic seizure prediction using EEG signals

机译:使用EEG信号的基于患者感知的自适应ngram自适应算法来预测癫痫发作

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This work proposes a novel patient-aware approach that utilizes an n-gram based pattern recognition algorithm to analyze scalp electroencephalogram (EEG) data and predict epileptic seizures. The method addresses the major challenge of extracting distinctive features from EEG signals through a detection of spatio-temporal signatures related to neurological events. By counting the number of occurrences of amplitude patterns with predefined lengths, the algorithm generates a probabilistic measure (anomalies ratio) that is used as a prediction marker. These extracted ratios are classified using state of the art machine learning algorithms into seizure and non-seizure windows. The efficacy of the prediction model is tested on patient records from the Freiburg database with more than 100 hours of recordings per patient and for a total of 145 seizures. The proposed algorithm is further optimized to obtain the n-gram parameters for enhanced feature extraction. Results demonstrate an average accuracy of 93.83%, sensitivity of 96.12%, and false alarm rate of 8.44%.
机译:这项工作提出了一种新颖的患者感知方法,该方法利用基于n元语法的模式识别算法来分析头皮脑电图(EEG)数据并预测癫痫发作。该方法通过检测与神经系统事件有关的时空信号来解决从脑电信号中提取独特特征的主要挑战。通过计算具有预定长度的幅度模式的出现次数,该算法生成用作预测标记的概率测度(异常率)。使用最先进的机器学习算法将这些提取的比率分为癫痫发作窗和非癫痫发作窗。预测模型的功效在弗莱堡数据库的患者记录上进行了测试,每位患者记录超过100个小时,共计145次发作。所提出的算法被进一步优化以获得用于增强特征提取的n元语法参数。结果表明,平均准确度为93.83%,灵敏度为96.12%,错误警报率为8.44%。

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