首页> 外文期刊>Australasian physical & engineering sciences in medicine >Optimal selection of SOP and SPH using fuzzy inference system for on‑line epileptic seizure prediction based on EEG phase synchronization
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Optimal selection of SOP and SPH using fuzzy inference system for on‑line epileptic seizure prediction based on EEG phase synchronization

机译:基于EEG相位同步的模糊推理系统对SOP和SPH的最优选择,用于在线癫痫发作预测

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Living conditions of patients with refractory epilepsy will be significantly improved by a successful prediction of epileptic seizures. A proper warning impending seizure system should be resulted not only in high accuracy and low false positive alarms but also in suitable prediction time. In this study, the mean phase coherence index was used as a reliable indicator for identifying the pre-ictal period of 21-patient Freiburg dataset. In order to predict the seizures on-line, an adaptive Neuro-fuzzy model named ENFM (evolving Neuro-fuzzy model) was used to classify the extracted features. The ENFM was trained by a new class labeling method based on the temporal properties of a prediction characterized by two time intervals, seizure prediction horizon (SPH) and seizure occurrence period (SOP), which are subsequently applied in evaluation method. It is evident that increasing the SPH duration can be more beneficial to patients in preventing irreparable consequences of the seizure, as well as providing adequate time to deal with the seizure. In addition, a reduction in SOP duration can reduce the patient's stress in SOP interval. These two theories motivated us to design Mamdani fuzzy inference system considering sensitivity and FPR of the prediction result in order to find optimal SOP and SPH for each patient. 10-patient dataset assigned for optimizing the fuzzy system, while the rest of data was used to test the model. The results showed that mean SOP by 6 min and mean SPH by 27 min provided the best outcome, so that last seizure as well as about 15-h inter-ictal period of each patient were predicted on-line without false negative alarms, yielding on average 100% sensitivity, 0.13 per hour FPR, 86.95% precision and 92.5% accuracy.
机译:成功预测癫痫发作可显着改善难治性癫痫患者的生活条件。一个适当的警告即将发生的扣押系统,不仅应导致准确性高和误报率低,而且应在适当的预测时间内。在这项研究中,平均相干指数被用作确定21名患者的弗莱堡数据集发作前期的可靠指标。为了在线预测癫痫发作,使用了名为ENFM的自适应神经模糊模型(进化神经模糊模型)对提取的特征进行分类。根据一种以时间间隔为特征的预测的时间特性,即癫痫发作预测水平(SPH)和癫痫发作发作期(SOP),通过一种新的类别标记方法对ENFM进行了训练,随后将其应用于评估方法中。显然,增加SPH持续时间对患者预防癫痫发作不可挽回的后果以及提供足够的时间来应对癫痫发作更为有益。此外,减少SOP持续时间可以减少SOP间隔中患者的压力。这两种理论促使我们设计Mamdani模糊推理系统,其中考虑了预测结果的灵敏度和FPR,以便为每个患者找到最佳的SOP和SPH。分配了10位患者的数据集以优化模糊系统,而其余数据则用于测试模型。结果表明,平均SOP(6分钟)和SPH(27分钟)可提供最佳结果,因此可以在线预测每位患者的上一次癫痫发作以及大约15小时的发作间隔,而不会产生假阴性警报,平均灵敏度为100%,每小时FPR为0.13,精度为86.95%,精度为92.5%。

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