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Patient-specific bivariate-synchrony-based seizure prediction for short prediction horizons.

机译:基于患者的双变量同步性癫痫发作预测,可用于较短的预测范围。

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This paper evaluates the patient-specific seizure prediction performance of pre-ictal changes in bivariate-synchrony between pairs of intracranial electroencephalographic (iEEG) signals within 15min of a seizure in patients with pharmacoresistant focal epilepsy. Prediction horizons under 15min reduce the durations of warning times and should provide adequate time for a seizure control device to intervene. Long-term continuous iEEG was obtained from 6 patients. The seizure prediction performance was evaluated for all possible channel pairs and for different prediction methods to find the best performing channel pairs and methods for both pre-ictal decreases and increases in synchrony. The different prediction methods involved changes in window duration, signal filtering, thresholding approach, and prediction horizon durations. Performance for each patient, for all seizures, was first compared with an analytical-Poisson-based random predictor. The performance of the top 5% of channel pairs for each patient closely matched the top 5% of analytical-Poisson-based random predictor performance indicating that patient-specific, bivariate-synchrony-based seizure prediction could be random in general (under the assumption that channel-pair prediction times are statistically independent). Analysis of the spatial patterns of performance showed no clear relationship to the seizure onset zone. For each patient the best channel pair showed better performance than Poisson-based random prediction for a selected subset of prediction thresholds. Given the caveats of comparing with this form of random prediction, alarm time surrogates were employed to assess statistical significance of a four-fold out-of-sample cross-validation analysis applied to the best channel-pairs. The cross-validation analysis obtained reasonable testing performance for most patients when performance was compared to random prediction based on alarm time surrogates. The most significant case was a patient whose testing set sensitivity and false positive rate were 0.67+/-0.09 and 3.04+/-0.29h(-1), respectively, for decreases in synchrony, an intervention time of 15min and a seizure onset period of 5min. For each testing set for this patient, performance was better than that obtained by random prediction at the significance level of 0.05 (average sensitivity of 0.47+/-0.05). Moreover, there were 9 seizures in each testing set which gives greater power to this cross-validation result, although the cross-validation was performed on the best channel pair selected by within-sample optimization for all seizures of the patient. Further validation with larger datasets from individual patients is needed. Improvements in prediction performance should be achievable through investigations of multivariate synchrony combined with non-linear classification methods.
机译:本文评估了药物耐药性局灶性癫痫患者发作后15min内颅内脑电图(iEEG)对之间的双变量同步性发作前变化的患者特异性癫痫发作预测性能。 15分钟以下的预测范围会减少警告时间,并应为癫痫发作控制设备提供足够的时间进行干预。从6例患者获得了长期连续的iEEG。针对所有可能的频道对和不同的预测方法,评估了癫痫发作的预测性能,以找到性能最佳的频道对,以及同步前减少和同步增加的方法。不同的预测方法涉及窗口持续时间,信号滤波,阈值方法和预测范围持续时间的变化。首先将每位患者所有癫痫发作的表现与基于泊松分析的随机预测因子进行比较。每位患者前5%的通道对的表现与基于分析泊松的随机预测指标的前5%的表现非常接近,这表明基于患者特定,基于双变量同步的癫痫发作预测总体上可能是随机的(假设通道对的预测时间在统计上是独立的)。对表现的空间模式的分析显示与癫痫发作区没有明确的关系。对于每个患者,对于选定的预测阈值子集,最佳通道对表现出比基于泊松的随机预测更好的性能。考虑到与这种形式的随机预测进行比较的注意事项,采用警报时间替代方法评估应用于最佳通道对的四倍样本外交叉验证分析的统计显着性。将性能与基于警报时间代理的随机预测进行比较时,交叉验证分析为大多数患者获得了合理的测试性能。最显着的情况是患者的测试仪敏感度和假阳性率分别为0.67 +/- 0.09和3.04 +/- 0.29h(-1),以减少同步性,干预时间15分钟和发作发作期5分钟对于该患者的每个测试集,在显着性水平为0.05(平均敏感度为0.47 +/- 0.05)下,其性能优于通过随机预测获得的性能。此外,每个测试集中有9次癫痫发作,尽管通过样本内优化为患者的所有癫痫发作选择的最佳通道对进行了交叉验证,但该交叉验证结果却具有更大的功效。需要使用来自各个患者的更大数据集进行进一步验证。通过研究多元同步与非线性分类方法相结合,可以实现预测性能的提高。

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