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Combination of EEG and ECG for improved automatic neonatal seizure detection.

机译:EEG和ECG的组合可改善新生儿癫痫发作的自动检测。

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OBJECTIVE: Neonatal seizures are the most common central nervous system disorder in newborn infants. A system that could automatically detect the presence of seizures in neonates would be a significant advance facilitating timely medical intervention. METHODS: A novel method is proposed for the robust detection of neonatal seizures through the combination of simultaneously-recorded electroencephalogram (EEG) and electrocardiogram (ECG). A patient-specific and a patient-independent system are considered, employing statistical classifier models. RESULTS: Results for the signals combined are compared to results for each signal individually. For the patient-specific system, 617 of 633 (97.52%) expert-labelled seizures were correctly detected with a false detection rate of 13.18%. For the patient-independent system, 516 of 633 (81.44%) expert-labelled seizures were correctly detected with a false detection rate of 28.57%. CONCLUSIONS: A novel algorithm for neonatal seizure detection is proposed. The combination of an ECG-based classifier system with a novel multi-channel EEG-based classifier system has led to improved seizure detection performance. The algorithm was evaluated using a large data-set containing ECG and multi-channel EEG of realistic duration and quality. SIGNIFICANCE: Analysis of simultaneously-recorded EEG and ECG represents a new approach in seizure detection research and the detection performance of the proposed system is a significant improvement on previous reported results for automated neonatal seizure detection.
机译:目的:新生儿惊厥是新生儿中最常见的中枢神经系统疾病。能够自动检测新生儿癫痫发作的系统将是促进及时医疗干预的重要进步。方法:提出了一种通过同时记录脑电图(EEG)和心电图(ECG)来稳定检测新生儿癫痫发作的新方法。考虑采用统计分类器模型的特定于患者和独立于患者的系统。结果:将组合信号的结果与每个信号的结果分别进行比较。对于特定于患者的系统,正确检测出633例专家标记的癫痫发作中的617例(97.52%),错误检测率为13.18%。对于独立于患者的系统,正确检测出633个中的516个(81.44%)专家标记的癫痫发作,错误检测率为28.57%。结论:提出了一种新的新生儿癫痫发作检测算法。基于ECG的分类器系统与新颖的基于EEG的多通道分类器系统的结合,提高了癫痫发作的检测性能。使用包含心电图和实际持续时间和质量的多通道脑电图的大型数据集对算法进行了评估。重要性:同时记录的脑电图和心电图分析是癫痫发作检测研究的一种新方法,该系统的检测性能比以前报道的新生儿癫痫发作自动检测结果有了显着改善。

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