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Proposal for patient-specific automatic on-line detection of spike-and-wave discharges utilizing an artificial neural network

机译:利用人工神经网络的峰值自动在线检测患者特异性自动在线检测的提案

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We aimed to develop an automatic on-line detection system of spike-and-wave discharges (SWDs), which are peculiar EEG waveforms in epileptic patients. In this study, an artificial neural network (ANN) was utilized for automatic online detection of SWDs for an epileptic patient. Upon detection, 100% specificity was intended for the safety of the patient during possible future magnetic stimulation therapy. Fifty-four samples of SWD and fifteen samples of pseudo-SWD, extracted from thirty minutes of four-channel EEG signals of an epileptic patient, were employed. The ANN was trained and examined by a standard backpropagation algorithm and a leave-one-out cross-validation, respectively. Results in the off-line classification section showed both the SWDs and the pseudo-SWDs were classified perfectly. In the on-line detection section, the undetected ratio for the SWDs increased, however, a 0% false-alarm ratio was obtained. Therefore, it is suggested that the proposed method is effective for automatic on-line detection of SWDs.
机译:我们旨在开发一种自动在线检测系统的尖峰排放(SWDS),其是癫痫患者中的特殊EEG波形。在该研究中,用于自动在线检测SWDS用于癫痫患者的人工神经网络(ANN)。在检测后,在可能的未来磁刺激​​治疗期间患者的安全性100%特异性旨在。采用五十四个SWD和十五个样品的伪SWD,从30分钟的癫痫患者的四通道EEG信号中提取。 ANN经过培训并通过标准的反向化算法和休假交叉验证进行培训和检查。结果在离线分类部分显示SWDS和伪SWDS完全分类。在在线检测部分中,SWDS的未检测到的比率增加了0%的假警报比。因此,建议该方法对于SWDS的自动在线检测是有效的。

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