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Noninvasive seizure prediction using autonomic measurements in patients with refractory epilepsy

机译:利用难治性癫痫患者自主测量的无创癫痫发作预测

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There is resurgent interest in the role played by autonomic dysfunction in seizure generation. Advances in wearable sensors make it convenient to track many autonomic variables in patient populations. This study assesses peri-ictal changes in surrogate measures of autonomic activity for their predictive value in epilepsy patients. We simultaneously recorded fronto-central surface EEG and submental EMG to score vigilance state, intracranial EEG (iEEG) to compute several electrophysiological variables (EV), and measurements (heart rate, blood volume pulse, skin impedance, and skin temperature) relevant to autonomic function (AV) using a wrist-worn sensor from three patients. A na?ve Bayes classifier was trained on these features and tested using five-fold cross-validation to determine whether preictal and interictal sleep (or wake) epochs could be distinguished from each other using either AV or EV features. Of 16 EV features, beta power, gamma power (30-45 Hz and 47-75 Hz), line length, and Teager energy showed significant differences for preictal versus interictal sleep (or wake) state in each patient (t test: p <; 0.001). At least one AV was significantly different in each patient for interictal and preictal sleep (or wake) segments (p <; 0.001). Using AV features, the classifier labeled preictal sleep epochs with 84% sensitivity, 79% specificity, and 64% kappa; and 78%, 80% and 55% respectively for preictal wake epochs. Using EV, the classifier labeled preictal sleep epochs with 69% sensitivity, 64% specificity, and 33% kappa; and 15%, 93% and 10% respectively for preictal wake epochs.
机译:对癫痫发作生成中自主功能障碍发挥的作用存在重新兴趣。可穿戴传感器的进步使得追踪患者人口中许多自主变量方便。本研究评估了癫痫患者预测值的自主主义活动替代措施的Peri-ICTAL变化。我们同时录制了前端中心表面脑电图和次源EMG,以进行警惕状态,颅内脑电图(IEEG)来计算与自主主义相关的若干电生理变量(EV),以及测量(心率,血液体积脉冲,皮肤温度和皮肤温度)功能(AV)使用来自三名患者的手腕磨损的传感器。在这些特征上培训Na ve拜尔斯分类器,并使用五倍交叉验证测试,以确定是否可以使用AV或EV功能彼此区分预见和仪器睡眠(或唤醒)时期。在16个EV功能中,Beta Power,Gamma Power(30-45 Hz和47-75 Hz),线长和Teager能量显示出对每位患者的预测与嵌入睡眠(或唤醒)状态的显着差异(T测试:P < ; 0.001)。在每个患者中,至少一个AV显着不同,用于闭合和预睡眠(或唤醒)段(P <; 0.001)。使用AV功能,分类器标记为84%敏感性,79%特异性和64%Kappa的垂直睡眠时期;对于预警醒来时期,分别为78%,80%和55%。使用EV,分类器标记为预警睡眠时期,灵敏度为69%,特异性64%,33%Kappa;对于预测的唤醒时期,分别为15%,93%和10%。

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