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Quickest detection of drug-resistant seizures: An optimal control approach

机译:最快检测耐药性癫痫发作:最佳控制方法

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摘要

Epilepsy affects 50 million people worldwide, and seizures in 30% of the cases remain drug resistant. This has increased interest in responsive neurostimulation, which is most effective when administered during seizure onset. We propose a novel framework for seizure onset detection that involves (i) constructing statistics from multichannel intracranial EEG (iEEG) to distinguish nonictal versus ictal states; (ii) modeling the dynamics of these statistics in each state and the state transitions; you can remove this word if there is no room. (iii) developing an optimal control-based “quickest detection” (QD) strategy to estimate the transition times from nonictal to ictal states from sequential iEEG measurements. The QD strategy minimizes a cost function of detection delay and false positive probability. The solution is a threshold that non-monotonically decreases over time and avoids responding to rare events that normally trigger false positives. We applied QD to four drug resistant epileptic patients (168 hour continuous recordings, 26–44 electrodes, 33 seizures) and achieved 100% sensitivity with low false positive rates (0.16 false positive/hour). This article is part of a Supplemental Special Issue entitled The Future of Automated Seizure Detection and Prediction.
机译:癫痫病影响全世界5000万人,癫痫发作中30%的病例仍具有耐药性。这引起了对反应性神经刺激的兴趣,这在癫痫发作发作期间最有效。我们提出了一种新的癫痫发作检测框架,其中包括:(i)从多通道颅内脑电图(iEEG)构建统计数据,以区分非发作状态和发作状态。 (ii)对每个状态和状态转换中这些统计信息的动态建模;如果没有空间,您可以删除此单词。 (iii)开发一种基于最优控制的“最快检测”(QD)策略,以从连续的iEEG测量中估计从非发作状态到发作状态的转变时间。 QD策略将检测延迟和误报概率的成本函数降至最低。解决方案是一个阈值,该阈值会随着时间的推移非单调降低,并且避免对通常会触发误报的罕见事件做出响应。我们将QD应用于四名耐药性癫痫患者(连续记录168小时,26-44个电极,33次癫痫发作),并达到100%的敏感性,假阳性率低(每小时假阳性0.16)。本文是名为“自动发作检测和预测的未来”的补充特刊的一部分。

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