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癫痫发作检测:使用非线性决策函数在统一的二维决策空间中对基于时间和频率的特征进行评估。

Seizure detection: an assessment of time- and frequency-based features in a unified two-dimensional decisional space using nonlinear decision functions.

机构信息

Department of Electrical and Computer Engineering, Florida International University, Miami, Florida 33174, USA.

出版信息

J Clin Neurophysiol. 2009 Dec;26(6):381-91. doi: 10.1097/WNP.0b013e3181c29928.

Abstract

OBJECTIVE

This study proposes a new approach for offline seizure detection in intracranial (subdural) electroencephalogram recordings using nonlinear decision functions. It implements well-established features that are designed to deal with complex signals, such as brain recordings, and proposes a two-dimensional (2D) domain of analysis that overcomes the dilemma faced with the selection of empirical thresholds often used to delineate epileptic events. This unifying approach makes it possible for researchers in epilepsy to establish other performance evaluation criteria on the basis of the proposed nonlinear decision functions as well as introduce additional dimensions toward multidimensional analysis because the mathematics of these decision functions allows for any number of dimensions and any degree of complexity. Furthermore, because the features considered assume both time and frequency domains, the analysis is performed both temporally and as a function of different frequency ranges to ascertain those measures that are most suitable for seizure detection. In retrospect, by using nonlinear decision functions and by establishing a unified 2D domain of analysis, this study establishes a generalized approach to seizure detection that works across several features and across patients.

METHODS

Clinical experiments involved 14 patients with intractable seizures that were evaluated for potential surgical interventions. Of the total 157 files considered, 35 (21 interictal and 14 ictal) intracranial electroencephalogram data files or 22% were used initially in a training phase to ascertain the reliability of the formulated features that were implemented in the seizure detection process. The remaining 122 intracranial electroencephalogram data files or 78% were then used in the testing phase to assess the merits of each feature considered as means to detect a seizure.

RESULTS

The testing phase using the remaining 122 intracranial electroencephalogram data files revealed that the gamma power in the frequency domain is the feature that performed best across all patients with a sensitivity of 96.296%, an accuracy of 96.721%, and a specificity of 96.842%. The second best feature in the time domain was the mobility with a sensitivity of 81.481% an accuracy of 90.169%, and a specificity of 92.632%. In the frequency domain, all of the five other spectral bands lesser than 36 Hz revealed mixed results in terms of low sensitivity in some frequency bands and low accuracy in other frequency bands, which is expected given that the dominant frequencies during an ictal state are those higher than 30 Hz. In the time domain, other features, including complexity and correlation sum, revealed mixed success.

CONCLUSIONS

All the features that are based on the time domain performed well, with mobility being the optimal feature for seizure detection. In the frequency domain, the gamma power outperformed the other frequency bands. Within this 2D plane, the best results were also observed when the degree of complexity is 3 or 4 in the implementation of the proposed nonlinear decision functions.

SIGNIFICANCE

: A singular contribution of this study is in creating a common 2D space for analysis through the use of nonlinear decision functions for delineating data clusters of ictal files from data clusters of interictal files. This is critically important in establishing unifying measures that work across different features as expressed by the weight vector of the decision functions for a standardized assessment. The mathematical foundation is consequently established in support of a generalized seizure detection algorithm that works across patients, and in which all type of features that have been amply tested in the literature could be assessed within the realm of nonlinear decision functions.

摘要

目的

本研究提出了一种新的方法,用于使用非线性决策函数对颅内(硬膜下)脑电图记录进行离线癫痫发作检测。它实现了经过验证的功能,旨在处理复杂信号,如脑记录,并提出了二维(2D)分析域,克服了通常用于描绘癫痫事件的经验阈值选择所面临的困境。这种统一的方法使癫痫研究人员能够根据提出的非线性决策函数建立其他性能评估标准,并引入更多的维度进行多维分析,因为这些决策函数的数学允许任意数量的维度和任意程度的复杂性。此外,由于所考虑的特征同时考虑了时间和频率域,因此可以同时进行时间和不同频率范围的分析,以确定最适合癫痫发作检测的那些措施。回想起来,通过使用非线性决策函数并建立统一的 2D 分析域,本研究建立了一种通用的癫痫发作检测方法,可以跨多个特征和患者使用。

方法

临床实验涉及 14 名难治性癫痫患者,他们正在评估潜在的手术干预。在考虑的总共 157 个文件中,35 个(21 个发作间期和 14 个发作期)颅内脑电图数据文件或 22%最初用于训练阶段,以确定在癫痫发作检测过程中实施的公式化特征的可靠性。然后,剩余的 122 个颅内脑电图数据文件或 78%用于测试阶段,以评估作为检测癫痫手段的每个特征的优点。

结果

使用剩余的 122 个颅内脑电图数据文件的测试阶段表明,频域中的伽马功率是所有患者中表现最好的特征,具有 96.296%的敏感性、96.721%的准确性和 96.842%的特异性。时域中的第二佳特征是移动性,具有 81.481%的敏感性、90.169%的准确性和 92.632%的特异性。在频域中,所有其他小于 36 Hz 的五个谱带都显示出混合结果,一些频带的敏感性较低,其他频带的准确性较低,这是因为在发作状态期间占主导地位的频率高于 30 Hz。在时域中,包括复杂性和相关和在内的其他特征也取得了混合成功。

结论

所有基于时域的特征表现良好,移动性是癫痫检测的最佳特征。在频域中,伽马功率优于其他频带。在这个 2D 平面中,当实施提出的非线性决策函数时,复杂度为 3 或 4 时也观察到了最佳结果。

意义

本研究的一个重要贡献是通过使用非线性决策函数为癫痫文件的数据簇和发作间期文件的数据簇划定数据簇,创建了一个共同的 2D 分析空间。这对于建立统一的措施至关重要,这些措施可以通过决策函数的权重向量在不同的特征之间工作,以进行标准化评估。因此,为了在患者之间工作的广义癫痫发作检测算法建立了数学基础,并且可以在非线性决策函数的范围内评估文献中经过充分测试的所有类型的特征。

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