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首页> 外文期刊>EBioMedicine >Identifying signal-dependent information about the preictal state: A comparison across ECoG, EEG and EKG using deep learning
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Identifying signal-dependent information about the preictal state: A comparison across ECoG, EEG and EKG using deep learning

机译:识别与信号有关的前期状态信息:使用深度学习对ECoG,EEG和EKG进行比较

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Background The inability to reliably assess seizure risk is a major burden for epilepsy patients and prevents developing better treatments. Recent advances have paved the way for increasingly accurate seizure preictal state detection algorithms, primarily using electrocorticography (ECoG). To develop seizure forecasting for broad clinical and ambulatory use, however, less complex and invasive modalities are needed. Algorithms using scalp electroencephalography (EEG) and electrocardiography (EKG) have also achieved better than chance performance. But it remains unknown how much preictal information is in ECoG versus modalities amenable to everyday use – such as EKG and single channel EEG - and how to optimally extract that preictal information for seizure prediction. Methods We apply deep learning - a powerful method to extract information from complex data - on a large epilepsy data set containing multi-day, simultaneous recordings of EKG, ECoG, and EEG, using a variety of feature sets. We use the relative performance of our algorithms to compare the preictal information contained in each modality. Results We find that single-channel EKG contains a comparable amount of preictal information as scalp EEG with up to 21 channels and that preictal information is best extracted not with standard heart rate measures, but from the power spectral density. We report that preictal information is not preferentially contained in EEG or ECoG channels within the seizure onset zone. Conclusion Collectively, these insights may help to devise future prospective, minimally invasive long-term epilepsy monitoring trials with single-channel EKG as a particularly promising modality.
机译:背景技术无法可靠地评估癫痫发作风险是癫痫患者的主要负担,并阻碍了更好的治疗方法的发展。最近的进展为逐步准确的癫痫发作前状态检测算法铺平了道路,这种方法主要是使用皮层照相术(ECoG)。然而,要开发出可广泛用于临床和非卧床用途的癫痫发作预测,就需要较简单和侵入性的方式。使用头皮脑电图(EEG)和心电图(EKG)的算法也取得了比偶然性更好的效果。但是,目前尚不清楚ECoG中有多少先兆信息与日常使用的方式(例如EKG和单通道EEG)以及如何最佳地提取该先兆信息以进行癫痫发作预测有关。方法我们在大型癫痫数据集上应用深度学习(一种从复杂数据中提取信息的有效方法),该数据集使用多种功能集,包含多天同时记录的EKG,ECoG和EEG。我们使用算法的相对性能来比较每种模态中包含的信息。结果我们发现,单通道心电图所包含的前脑信息量可与头皮脑电图相媲美,最多可有21条通道,并且最好不要从标准心率测量中提取功率信息,而要从功率谱密度中提取信息。我们报告说,发作前区中的脑电图或ECoG通道中没有优先包含信息。结论总的来说,这些见解可能有助于设计未来的前瞻性微创长期癫痫监测试验,并将单通道EKG作为一种特别有前途的方法。

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