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A Multi-Feature Nonlinear-SVM Seizure Detection Algorithm with Patient-Specific Channel Selection and Feature Customization

机译:具有患者特定通道选择和特征定制功能的多特征非线性SVM发作检测算法

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The design, optimization, and validation results of a patient-specific seizure detection algorithm are presented. The algorithm employs both mono-variate (spectral energy) and bivariate (narrow-band phase synchrony) features. The computational complexity of both feature extraction and brain state classification is optimized to enable the algorithms integration into a low-power implantable/wearable microprocessor. The patient specificity of the algorithm includes (a) the nonlinear RBF-SVM classifier's hyperplane characteristics, (b) band selection for phase extraction, and (c) channel selection (dimensionality reduction) for spectral energy extraction. The algorithms performance is validated on pre-recorded EEG data from 23 patients (969 hours, 198 seizures in total) and shows a seizure detection sensitivity and specificity of 96.87% and 99.95%, respectively. A comparison to the state of the art in terms of various design and performance parameters is presented.
机译:提出了针对患者的癫痫发作检测算法的设计,优化和验证结果。该算法同时使用了单变量(频谱能量)和双变量(窄带相位同步)功能。优化了特征提取和脑状态分类的计算复杂度,以使算法能够集成到低功耗的可植入/可穿戴微处理器中。该算法的患者特异性包括(a)非线性RBF-SVM分类器的超平面特征,(b)用于相位提取的频带选择和(c)用于频谱能量提取的通道选择(降维)。该算法的性能在23个患者的预录EEG数据上进行了验证(969小时,总共198次癫痫发作),并显示癫痫发作检测的敏感性和特异性分别为96.87%和99.95%。提出了在各种设计和性能参数方面与现有技术的比较。

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