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Using Machine Learning and Heart Rate Variability Features to Predict Epileptic Seizures

机译:使用机器学习和心率变异性功能预测癫痫发作

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This study constitutes a first step towards a wearable epileptic seizure prediction device. We exploit the existing correlation between epileptic pre-ictal states and heart rate variability features, since they can be measured by portable electrocardiogram recorders. By explicitly dealing with the intervals of extreme noise that may corrupt the electrocardiogram data during the seizures, our proposal is able to robustly train and use a - Support Vector Machine to detect pre-ictal states. The experimental results show particularly good results in terms of positive and negative prediction. They also show the importance of a specific training for each patient.
机译:这项研究构成了可穿戴式癫痫发作预测设备的第一步。我们利用癫痫发作前状态和心率变异性特征之间的现有相关性,因为它们可以通过便携式心电图记录仪进行测量。通过明确处理可能在发作期间破坏心电图数据的极端噪声间隔,我们的建议能够稳健地训练和使用-支持向量机来检测发作前状态。实验结果显示出在正面和负面预测方面特别好的结果。他们还显示了对每位患者进行特定培训的重要性。

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