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调整自动癫痫发作检测算法的策略。

Strategies for adapting automated seizure detection algorithms.

作者信息

Haas Shane M, Frei Mark G, Osorio Ivan

机构信息

Flint Hills Scientific, L.L.C., 5040 Bob Billings Pkwy, Ste. A, Lawrence, KS 66049, USA.

出版信息

Med Eng Phys. 2007 Oct;29(8):895-909. doi: 10.1016/j.medengphy.2006.10.003. Epub 2006 Nov 9.

DOI:10.1016/j.medengphy.2006.10.003
PMID:17097325
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC2339717/
Abstract

The time-varying dynamics of epileptic seizures and the high inter-individual variability make their detection difficult. Osorio et al. [Osorio, I, Frei, MG, Wilkinson, SB. Real-time automated detection and quantitative analysis of seizures and short-term prediction of clinical onset. Epilepsia 1998;39(6):615-27] developed an algorithm that has had success in detecting seizures. We present a new strategy for adapting this algorithm or other algorithms to an individual's seizure fingerprint using both seizure and non-seizure training segments and a novel performance criterion that directly incorporates the non-linearity and lack of differentiability of the algorithm. The joint optimization of a linear filter chosen from a bank of candidate filters and of a percentile used in order statistic filtering provides an empirical solution that is both practical and useful, which should translate into improved sensitivity, specificity and detection speed. This premise is strongly supported by the results obtained in a large validation study and the examples illustrated in this article. This strategy is generalizable to other detection algorithms with modular architecture and spectral filters.

摘要

癫痫发作的时变动态以及个体间的高度变异性使得癫痫发作的检测变得困难。奥索里奥等人[奥索里奥,I,弗赖,MG,威尔金森,SB。癫痫发作的实时自动检测、定量分析及临床发作的短期预测。《癫痫》1998年;39(6):615 - 27]开发了一种在癫痫发作检测方面取得成功的算法。我们提出了一种新策略,可利用癫痫发作和非癫痫发作训练片段,使该算法或其他算法适应个体的癫痫发作特征,并提出了一种新颖的性能标准,该标准直接纳入了算法的非线性和不可微性。从一组候选滤波器中选择的线性滤波器与顺序统计滤波中使用的百分位数的联合优化提供了一种既实用又有用的经验性解决方案,这有望转化为更高的灵敏度、特异性和检测速度。在一项大型验证研究中获得的结果以及本文中给出的示例有力地支持了这一前提。该策略可推广到具有模块化架构和频谱滤波器的其他检测算法。

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本文引用的文献

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Performance reassessment of a real-time seizure-detection algorithm on long ECoG series.基于长程脑电皮层电图(ECoG)序列的实时癫痫检测算法性能重新评估
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Real-time automated detection and quantitative analysis of seizures and short-term prediction of clinical onset.癫痫发作的实时自动检测与定量分析以及临床发作的短期预测
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