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Epileptic Seizure Prediction with Stacked on a Large and Collaborative Databas

机译:癫痫发作预测在大型和协作数据库上堆叠

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The seizure prediction performance of algorithms based in stacked auto-encoders deep-learning technique has been evaluated. The study is established on long-term electroencephalography (EEG) recordings of 103 patients suffering from drug-resistant epilepsy. The proposed patient-specific methodology consists of feature extraction, classification by machine learning techniques, post-classification alarm generation, and performance evaluation using long-term recordings in a quasi-prospective way. Multiple quantitative features were extracted from EEG recordings. The classifiers were trained to discriminate preictal and non-preictal states. The first part of the feature time series was considered for training, a second part for selection of the "optimal" predictors of each patient, while the remaining data was used for prospective out-of-sample validation. The performance was assessed based on sensitivity and false prediction rate per hour (FPR/h). The prediction performance was statistically evaluated using an analytical random predictor. The validation data consisted of approximately 1664 h of interictal data and 151 seizures, for the invasive patients, and approximately 4446 h of interictal data and 406 seizures for the scalp patients. For the patients with intracranial electrodes 18% of the seizures were correctly predicted (27), leading to an average sensitivity of 16.05% and average FPR/h of 0.27/h. For the patients with scalp electrodes 20.69% of the seizures (84) on the validation set were correctly predicted, leading to an average sensitivity of 17.49% and an average FPR/h of 0.88/h. The observed performances were considered statistically significant for 4/19 invasive patients (= 21%) and for 5/84 scalp patients (= 6%). The observed results evidence the fact that, when applied in realistic conditions, the auto-encoder based classifier shows limited performance for a larger number of patients. However, the results obtained for some patients point that, in some specific situations seizure prediction is possible, providing a "proof-of-principle" of the feasibility of a prospective alarming system.
机译:基于在堆叠自动编码器深学习技术算法的发作预测性能进行了评估。这项研究对103例患者耐药性的癫痫和患长期脑电图(EEG)录制成立。所提出的特定患者的方法,包括使用更长时间的录像在准准的方式特征提取,分类的机器学习技术,后分级告警发生和绩效评估。多数量特征从脑电图记录提取。该分类进行了培训,以判别preictal和非preictal状态。特征时间序列的第一部分被认为是训练,第二部分用于每个患者的“最佳”预测器的选择,而用于进行采样的的前瞻性验证剩余的数据。基于灵敏度和每小时假预测率(FPR /小时)的性能进行了评估。使用分析随机预测器预测的性能进行统计学评价。验证数据包括了数据发作的约1664小时,151次癫痫发作,对侵入性患者和发作间数据的约4446小时,406次发作头皮的患者。对于颅内电极癫痫发作的18%被正确预测(27),导致16.05%的平均灵敏度和0.27 / h的平均FPR /小时。对于患者头皮电极上的验证集的癫痫发作(84)的20.69%被正确预测,导致17.49%的平均灵敏度和0.88 / h的平均FPR /小时。所观察到的性能进行了考虑用于4/19侵入性患者(= 21%)和为84分之5头皮患者(= 6%)统计学显著。所观察到的结果的证据的事实是,当在现实条件施加时,自动基于编码器的分类器显示有限的性能的患者更大的数字。然而,对于一些患者得到的结果指出,在某些特定的情况下发作预测是可能的,提供了一个潜在的报警系统的可行性的“验证的原则”。

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