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A Long Short-Term Memory neural network for the detection of epileptiform spikes and high frequency oscillations

机译:用于检测癫痫尖峰和高频振荡的长短期内存神经网络

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Over the last two decades, the evidence has been growing that in addition to epileptic spikes high frequency oscillations (HFOs) are important biomarkers of epileptogenic tissue. New methods of artificial intelligence such as deep learning neural networks can provide additional tools for automated analysis of EEG. Here we present a Long Short-Term Memory neural network for detection of spikes, ripples and ripples-on-spikes (RonS). We used intracranial EEG (iEEG) from two independent datasets. First dataset (7 patients) was used for network training and testing. The second dataset (5 patients) was used for cross-institutional validation. 1000 events of each class (spike, RonS, ripple and baseline) were selected from the candidates initially found using a novel threshold method. Network training was performed using random selections of 50-500 events (per class) from all patients from the 1supst/sup dataset. This 'global' network was then tested on other events for each patient from both datasets. The network was able to detect events with a good generalisability namely, with total accuracy and specificity for each class exceeding 90% in all cases, and sensitivity less than 86% in only two cases (82.5% for spikes in one patient and 81.9% for ripples in another patient). The deep learning networks can significantly accelerate the analysis of iEEG data and increase their diagnostic value which may improve surgical outcome in patients with localization-related intractable epilepsy.
机译:在过去的二十年中,证据一直在增长,除了癫痫尖峰之外,高频振荡(HFO)是癫痫组织的重要生物标志物。深度学习神经网络等人工智能的新方法可以为脑电图提供额外的自动分析工具。在这里,我们提出了一个长期的短期内存神经网络,用于检测尖峰,涟漪和涟漪 - 尖峰(rons)。我们从两个独立的数据集用于颅内脑电图(即例如)。第一个数据集(7名患者)用于网络培训和测试。第二个数据集(5名患者)用于跨机构验证。从最初使用新颖的阈值方法发现的候选者中选择了每种阶级(尖峰,鲁,纹波和基线)的1000个事件。使用来自1 ST 数据集的所有患者的所有患者使用50-500个事件(每类)的随机选择进行网络培训。然后,此“全局”网络对来自两个数据集的每个患者的其他事件进行了测试。网络能够检测到具有良好恒定性的事件,即在所有情况下,每种阶级的总准确性和特异性超过90%,敏感性小于86%,只有两种情况(一个患者的尖峰82.5%,81.9%在另一名患者中的涟漪)。深度学习网络可以显着加速IEEG数据的分析,并提高其诊断价值,这可能改善本地化相关的顽固性癫痫患者的手术结果。

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