Institute of Medical Informatics, National Cheng Kung University, Tainan, Taiwan.
J Neural Eng. 2013 Aug;10(4):045004. doi: 10.1088/1741-2560/10/4/045004. Epub 2013 May 31.
Around 1% of the world's population is affected by epilepsy, and nearly 25% of patients cannot be treated effectively by available therapies. The presence of closed-loop seizure-triggered stimulation provides a promising solution for these patients. Realization of fast, accurate, and energy-efficient seizure detection is the key to such implants. In this study, we propose a two-stage on-line seizure detection algorithm with low-energy consumption for temporal lobe epilepsy (TLE).
Multi-channel signals are processed through independent component analysis and the most representative independent component (IC) is automatically selected to eliminate artifacts. Seizure-like intracranial electroencephalogram (iEEG) segments are fast detected in the first stage of the proposed method and these seizures are confirmed in the second stage. The conditional activation of the second-stage signal processing reduces the computational effort, and hence energy, since most of the non-seizure events are filtered out in the first stage.
Long-term iEEG recordings of 11 patients who suffered from TLE were analyzed via leave-one-out cross validation. The proposed method has a detection accuracy of 95.24%, a false alarm rate of 0.09/h, and an average detection delay time of 9.2 s. For the six patients with mesial TLE, a detection accuracy of 100.0%, a false alarm rate of 0.06/h, and an average detection delay time of 4.8 s can be achieved. The hierarchical approach provides a 90% energy reduction, yielding effective and energy-efficient implementation for real-time epileptic seizure detection.
An on-line seizure detection method that can be applied to monitor continuous iEEG signals of patients who suffered from TLE was developed. An IC selection strategy to automatically determine the most seizure-related IC for seizure detection was also proposed. The system has advantages of (1) high detection accuracy, (2) low false alarm, (3) short detection latency, and (4) energy-efficient design for hardware implementation.
全球约有 1%的人口受到癫痫的影响,近 25%的患者无法通过现有疗法有效治疗。闭环癫痫触发刺激的出现为这些患者提供了一个有前途的解决方案。实现快速、准确和节能的癫痫检测是此类植入物的关键。在这项研究中,我们提出了一种用于颞叶癫痫(TLE)的低能耗两阶段在线癫痫检测算法。
多通道信号通过独立成分分析进行处理,并且自动选择最具代表性的独立成分(IC)以消除伪影。在所提出的方法的第一阶段快速检测到类似癫痫的颅内脑电图(iEEG)段,然后在第二阶段对这些癫痫进行确认。第二阶段信号处理的条件激活降低了计算工作量和能量,因为第一阶段过滤掉了大部分非癫痫事件。
通过留一法交叉验证分析了 11 名患有 TLE 的患者的长期 iEEG 记录。所提出的方法具有 95.24%的检测准确率、0.09/h 的假警报率和 9.2s 的平均检测延迟时间。对于 6 名患有内侧 TLE 的患者,可以实现 100.0%的检测准确率、0.06/h 的假警报率和 4.8s 的平均检测延迟时间。分层方法可将能量降低 90%,为实时癫痫发作检测提供有效且节能的实现方式。
开发了一种可应用于监测 TLE 患者连续 iEEG 信号的在线癫痫检测方法。还提出了一种 IC 选择策略,用于自动确定用于癫痫检测的最相关 IC。该系统具有(1)高检测准确率、(2)低假警报、(3)短检测潜伏期和(4)硬件实现的节能设计等优点。