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通过自动时频分析检测到的人类颅内高频振荡(HFOs)。

Human intracranial high frequency oscillations (HFOs) detected by automatic time-frequency analysis.

作者信息

Burnos Sergey, Hilfiker Peter, Sürücü Oguzkan, Scholkmann Felix, Krayenbühl Niklaus, Grunwald Thomas, Sarnthein Johannes

机构信息

Neurosurgery Department, University Hospital Zurich, Zurich, Switzerland; Institute of Neuroinformatics, ETH Zurich, Zurich, Switzerland.

Swiss Epilepsy Centre, Zurich, Switzerland.

出版信息

PLoS One. 2014 Apr 10;9(4):e94381. doi: 10.1371/journal.pone.0094381. eCollection 2014.

Abstract

OBJECTIVES

High frequency oscillations (HFOs) have been proposed as a new biomarker for epileptogenic tissue. The exact characteristics of clinically relevant HFOs and their detection are still to be defined.

METHODS

We propose a new method for HFO detection, which we have applied to six patient iEEGs. In a first stage, events of interest (EoIs) in the iEEG were defined by thresholds of energy and duration. To recognize HFOs among the EoIs, in a second stage the iEEG was Stockwell-transformed into the time-frequency domain, and the instantaneous power spectrum was parameterized. The parameters were optimized for HFO detection in patient 1 and tested in patients 2-5. Channels were ranked by HFO rate and those with rate above half maximum constituted the HFO area. The seizure onset zone (SOZ) served as gold standard.

RESULTS

The detector distinguished HFOs from artifacts and other EEG activity such as interictal epileptiform spikes. Computation took few minutes. We found HFOs with relevant power at frequencies also below the 80-500 Hz band, which is conventionally associated with HFOs. The HFO area overlapped with the SOZ with good specificity > 90% for five patients and one patient was re-operated. The performance of the detector was compared to two well-known detectors.

CONCLUSIONS

Compared to methods detecting energy changes in filtered signals, our second stage - analysis in the time-frequency domain - discards spurious detections caused by artifacts or sharp epileptic activity and improves the detection of HFOs. The fast computation and reasonable accuracy hold promise for the diagnostic value of the detector.

摘要

目的

高频振荡(HFOs)已被提议作为致痫组织的一种新生物标志物。临床相关HFOs的确切特征及其检测方法仍有待确定。

方法

我们提出了一种新的HFO检测方法,并将其应用于6例患者的颅内脑电图(iEEGs)。在第一阶段,通过能量和持续时间阈值定义iEEG中的感兴趣事件(EoIs)。为了在EoIs中识别HFOs,在第二阶段将iEEG进行斯托克韦尔变换到时间-频率域,并对瞬时功率谱进行参数化。这些参数在患者1中针对HFO检测进行了优化,并在患者2至5中进行了测试。根据HFO发生率对通道进行排序,发生率高于最大值一半的通道构成HFO区域。癫痫发作起始区(SOZ)作为金标准。

结果

该检测器能够将HFOs与伪迹及其他脑电图活动(如发作间期癫痫样棘波)区分开来。计算耗时几分钟。我们发现频率低于传统上与HFOs相关的80 - 500 Hz频段的HFOs也具有相关功率。HFO区域与SOZ重叠,5例患者的特异性> 90%良好,1例患者再次接受手术。将该检测器的性能与另外两种知名检测器进行了比较。

结论

与检测滤波后信号能量变化的方法相比,我们在时间-频率域的第二阶段分析摒弃了由伪迹或尖锐癫痫活动引起的虚假检测,并提高了HFOs的检测能力。快速的计算和合理的准确性为该检测器的诊断价值带来了希望。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8c86/3983146/0c077eedce01/pone.0094381.g001.jpg

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