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Epilepsia. 2013 Aug;54(8):1391-401. doi: 10.1111/epi.12202. Epub 2013 May 3.

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Seizure clustering.
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Functional MRI of the pre-ictal state.发作前期的功能磁共振成像
Brain. 2005 Aug;128(Pt 8):1811-7. doi: 10.1093/brain/awh533. Epub 2005 Jun 23.
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On the predictability of epileptic seizures.论癫痫发作的可预测性。
Clin Neurophysiol. 2005 Mar;116(3):569-87. doi: 10.1016/j.clinph.2004.08.025. Epub 2005 Jan 6.
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The First International Collaborative Workshop on Seizure Prediction: summary and data description.第一届癫痫发作预测国际协作研讨会:总结与数据描述
Clin Neurophysiol. 2005 Mar;116(3):493-505. doi: 10.1016/j.clinph.2004.08.020. Epub 2005 Jan 5.
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Effect of an external responsive neurostimulator on seizures and electrographic discharges during subdural electrode monitoring.硬膜下电极监测期间外部响应性神经刺激器对癫痫发作和脑电图放电的影响。
Epilepsia. 2004 Dec;45(12):1560-7. doi: 10.1111/j.0013-9580.2004.26104.x.
6
Measure profile surrogates: a method to validate the performance of epileptic seizure prediction algorithms.测量轮廓替代指标:一种验证癫痫发作预测算法性能的方法。
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How well can epileptic seizures be predicted? An evaluation of a nonlinear method.癫痫发作的预测效果如何?一种非线性方法的评估。
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Prediction of epileptic seizures.癫痫发作的预测
Lancet Neurol. 2002 May;1(1):22-30. doi: 10.1016/s1474-4422(02)00003-0.
9
The seizure prediction characteristic: a general framework to assess and compare seizure prediction methods.癫痫发作预测特征:评估和比较癫痫发作预测方法的通用框架。
Epilepsy Behav. 2003 Jun;4(3):318-25. doi: 10.1016/s1525-5050(03)00105-7.
10
Testing the null hypothesis of the nonexistence of a preseizure state.检验不存在发作前状态的零假设。
Phys Rev E Stat Nonlin Soft Matter Phys. 2003 Jan;67(1 Pt 1):010901. doi: 10.1103/PhysRevE.67.010901. Epub 2003 Jan 7.

一种使用隐马尔可夫模型评估癫痫发作预测算法的随机框架。

A stochastic framework for evaluating seizure prediction algorithms using hidden Markov models.

作者信息

Wong Stephen, Gardner Andrew B, Krieger Abba M, Litt Brian

机构信息

Department of Neurology, 2 Ravdin Penn Epilepsy Center, Hospital of the University of Pennsylvania, 3400 Spruce St., Philadelphia, PA 19104, USA.

出版信息

J Neurophysiol. 2007 Mar;97(3):2525-32. doi: 10.1152/jn.00190.2006. Epub 2006 Oct 4.

DOI:10.1152/jn.00190.2006
PMID:17021032
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC2230664/
Abstract

Responsive, implantable stimulation devices to treat epilepsy are now in clinical trials. New evidence suggests that these devices may be more effective when they deliver therapy before seizure onset. Despite years of effort, prospective seizure prediction, which could improve device performance, remains elusive. In large part, this is explained by lack of agreement on a statistical framework for modeling seizure generation and a method for validating algorithm performance. We present a novel stochastic framework based on a three-state hidden Markov model (HMM) (representing interictal, preictal, and seizure states) with the feature that periods of increased seizure probability can transition back to the interictal state. This notion reflects clinical experience and may enhance interpretation of published seizure prediction studies. Our model accommodates clipped EEG segments and formalizes intuitive notions regarding statistical validation. We derive equations for type I and type II errors as a function of the number of seizures, duration of interictal data, and prediction horizon length and we demonstrate the model's utility with a novel seizure detection algorithm that appeared to predicted seizure onset. We propose this framework as a vital tool for designing and validating prediction algorithms and for facilitating collaborative research in this area.

摘要

用于治疗癫痫的可植入响应式刺激装置目前正在进行临床试验。新证据表明,这些装置在癫痫发作开始前进行治疗时可能更有效。尽管经过多年努力,但有望改善装置性能的前瞻性癫痫发作预测仍然难以实现。很大程度上,这是由于在癫痫发作产生的建模统计框架和算法性能验证方法上缺乏共识。我们提出了一种基于三态隐马尔可夫模型(HMM)(代表发作间期、发作前期和发作期状态)的新型随机框架,其特点是癫痫发作概率增加的时期可以转变回发作间期状态。这一概念反映了临床经验,可能会增强对已发表的癫痫发作预测研究的解读。我们的模型适用于截断的脑电图片段,并将关于统计验证的直观概念形式化。我们推导了作为癫痫发作次数、发作间期数据持续时间和预测时间长度函数的I型和II型错误方程,并通过一种似乎能预测癫痫发作开始的新型癫痫发作检测算法展示了该模型的效用。我们提出这个框架作为设计和验证预测算法以及促进该领域合作研究的重要工具。