Seizure forecasting with ultra long-term EEG signals

IF 3.7 3区 医学 Q1 CLINICAL NEUROLOGY
Hongliu Yang , Jens Müller , Matthias Eberlein , Sotirios Kalousios , Georg Leonhardt , Jonas Duun-Henriksen , Troels Kjaer , Ronald Tetzlaff
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引用次数: 0

Abstract

Objective

The apparent randomness of seizure occurrence affects greatly the quality of life of persons with epilepsy. Since seizures are often phase-locked to multidien cycles of interictal epileptiform activity, a recent forecasting scheme, exploiting RNS data, is capable of forecasting seizures days in advance.

Methods

We tested the use of a bandpass filter to capture the universal mid-term dynamics enabling both patient-specific and cross-patient forecasting. In a retrospective study, we explored the feasibility of the scheme on three long-term recordings obtained by the NeuroPace RNS System, the NeuroVista intracranial, and the UNEEG subcutaneous devices, respectively.

Results

Better-than-chance forecasting was observed in 15 (83 %) of 18 patients, and in 16 (89 %) patients for daily and hourly forecast, respectively. Meaningful forecast up to 30 days could be achieved in 4 (22 %) patients for hourly forecast frequency. The cross-patient performance decreased only marginally and was patient-wise strongly correlated with the patient-specific one. Comparable performance was obtained for NeuroVista and UNEEG data sets.

Significance

The feasibility of cross-patient forecasting supports the universal importance of mid-term dynamics for seizure forecasting, demonstrates promising inter-subject-applicability of the scheme on ultra long-term EEG recordings, and highlights its huge potential for clinical use.
利用超长期脑电图信号预测癫痫发作
目的癫痫发作的明显随机性极大地影响了癫痫患者的生活质量。由于癫痫发作通常与发作间期痫样活动的多天周期相位锁定,最近一种利用 RNS 数据的预测方案能够提前数天预测癫痫发作。在一项回顾性研究中,我们在分别由 NeuroPace RNS 系统、NeuroVista 颅内设备和 UNEEG 皮下设备获得的三个长期记录中探讨了该方案的可行性。结果在 18 名患者中观察到 15 名患者(83%)的预报优于概率,在每日和每小时预报中分别观察到 16 名患者(89%)的预报优于概率。在每小时预报频率下,有 4 名患者(22%)可实现长达 30 天的有效预报。跨病人的性能仅略有下降,而且在病人方面与特定病人的性能密切相关。跨患者预测的可行性支持了中期动态对癫痫发作预测的普遍重要性,证明了该方案在超长期脑电图记录中的跨受试者适用性,并突显了其在临床应用中的巨大潜力。
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来源期刊
Clinical Neurophysiology
Clinical Neurophysiology 医学-临床神经学
CiteScore
8.70
自引率
6.40%
发文量
932
审稿时长
59 days
期刊介绍: As of January 1999, The journal Electroencephalography and Clinical Neurophysiology, and its two sections Electromyography and Motor Control and Evoked Potentials have amalgamated to become this journal - Clinical Neurophysiology. Clinical Neurophysiology is the official journal of the International Federation of Clinical Neurophysiology, the Brazilian Society of Clinical Neurophysiology, the Czech Society of Clinical Neurophysiology, the Italian Clinical Neurophysiology Society and the International Society of Intraoperative Neurophysiology.The journal is dedicated to fostering research and disseminating information on all aspects of both normal and abnormal functioning of the nervous system. The key aim of the publication is to disseminate scholarly reports on the pathophysiology underlying diseases of the central and peripheral nervous system of human patients. Clinical trials that use neurophysiological measures to document change are encouraged, as are manuscripts reporting data on integrated neuroimaging of central nervous function including, but not limited to, functional MRI, MEG, EEG, PET and other neuroimaging modalities.
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