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首页> 外文期刊>Neurological Research: An Interdisciplinary Quarterly Journal >Seizure forecasting using single robust linear feature as correlation vector of seizure-like events in brain slices preparation in vitro
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Seizure forecasting using single robust linear feature as correlation vector of seizure-like events in brain slices preparation in vitro

机译:使用单一强肥大线性特征作为脑切片制备中癫痫发作的相关载体的癫痫发作预测

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摘要

Objective: Epilepsy is a neurological disorder affecting 50 million individuals globally. Modern research has inspected the likelihood of forecasting epileptic seizures. Algorithmic investigations are giving promising results for seizure prediction. Though mostly seizure prediction algorithm uses pre-ictal (prodromal symptoms) events for prediction. On the contrary, prodromal symptoms may not necessarily be present in every patient or subject. This paper focuses on seizure forecasting regardless of the presence of pre-ictal (prodromal symptoms) using the single robust feature with maximum accuracy.Method:We evaluated datasets having 4-aminopydine induced seizure-like events rat's hippocampa slices and cortical tissue from pharmacoresistant epilepsy patients. The proposed methodology applies the Discrete Wavelet Transform (DWT) at levels 1-5 utilizing 'Daubechies-4'. Linear Discriminant classifier (LDC), Quadratic Discriminant Classifier (QDC) and Support Vector Machine (SVM) were used to classify each signal using eight discriminative features.Results:Classifier performance was assessed by parameters like true detections (TD), false detection (FD), accuracy (ACC), sensitivity (SEN), specificity (SPF), and positive predicted value (PPC), negative predicted value (NPV). Highest classification feature was selected as a seizure forecasting correlation vector and decision rule was formulated for seizure forecasting. Correlation vector served as a forecaster for current EEG activity. Proposed decision rule forecasted ongoing signal activity towards possible seizure condition true or false. The suggested framework revealed forecasting of ictal events at 10 seconds before the actual seizure.Conclusion:It is worth mentioning that the proposed study utilized a single linear feature to predict seizures precisely. Moreover, utilization of single feature encouraged in subsiding system complexity, processing delays, and system latency.
机译:目的:癫痫是一种影响全球5000万人的神经系统疾病。现代研究已检查预测癫痫发作的可能性。算法调查为癫痫发作预测提供了有希望的结果。虽然大多数癫痫发作预测算法使用预测前(前驱症状)事件进行预测。相反,产前症状可能不一定存在于每个患者或受试者中。本文重点介绍了使用具有最大精度的单次鲁棒特征的癫痫发育前(前驱症状)的癫痫发作预测。耐心。所提出的方法在利用“daubechies-4”的级别1-5中应用离散小波变换(DWT)。线性判别分类器(LDC),二次判别分类器(QDC)和支持向量机(SVM)用于使用八个鉴别特征对每个信号进行分类。结果:通过像真正的检测(TD)等参数评估分类器性能,错误检测(FD ),精度(ACC),灵敏度(SEN),特异性(SPF)和阳性预测值(PPC),负预测值(NPV)。选择最高分类功能作为扣押预测相关矢量,并制定了扣押预测的决策规则。相关矢量作为当前EEG活动的预测器。建议的决策规则预测可能的癫痫发作条件的持续信号活动是真或假的。建议的框架揭示了在实际癫痫发作前10秒的预测ICTAL事件。结论:值得一提的是,所提出的研究利用单个线性特征来预测癫痫发作。此外,利用促进的单一特征在消退系统复杂性,处理延迟和系统延迟中。

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