论文标题
用于实时检测高频振荡(HFO)的电子神经形态系统
An electronic neuromorphic system for real-time detection of High Frequency Oscillations (HFOs) in intracranial EEG
论文作者
论文摘要
在这项工作中,我们提出了一个神经形态系统,该系统首次结合了神经记录的媒体片段与信号尖峰转换电路和同一模具上的多核尖峰神经网络(SNN)体系结构,用于录制,处理和检测高频振荡(HFO)(HFO),这是用于癫痫区的生物标志物。该设备是使用标准0.18 $ $ M CMOS技术节点制造的,总面积为99mm $^{2} $。我们证明了它在9名颞叶癫痫患者中记录的IEEG中的HFO检测中的应用,后来接受了癫痫手术。检测任务期间芯片的总平均功耗为614.3 $μ$ w。我们展示了神经形态系统如何可靠地检测HFO:该系统以最先进的精度,特异性和灵敏度预测术后癫痫发作结果(分别为78%,100%和33%)。这是使用基于事件的处理器和尖峰神经网络实时,芯片实时识别颅内人类数据中相关特征的首次可行性研究。通过为神经记录电路提供“神经形态智能”,提出的方法将为开发可以直接检测手术室中HFO区域的系统铺平道路,并改善癫痫手术的癫痫发作结果。
In this work, we present a neuromorphic system that combines for the first time a neural recording headstage with a signal-to-spike conversion circuit and a multi-core spiking neural network (SNN) architecture on the same die for recording, processing, and detecting High Frequency Oscillations (HFO), which are biomarkers for the epileptogenic zone. The device was fabricated using a standard 0.18$μ$m CMOS technology node and has a total area of 99mm$^{2}$. We demonstrate its application to HFO detection in the iEEG recorded from 9 patients with temporal lobe epilepsy who subsequently underwent epilepsy surgery. The total average power consumption of the chip during the detection task was 614.3$μ$W. We show how the neuromorphic system can reliably detect HFOs: the system predicts postsurgical seizure outcome with state-of-the-art accuracy, specificity and sensitivity (78%, 100%, and 33% respectively). This is the first feasibility study towards identifying relevant features in intracranial human data in real-time, on-chip, using event-based processors and spiking neural networks. By providing "neuromorphic intelligence" to neural recording circuits the approach proposed will pave the way for the development of systems that can detect HFO areas directly in the operation room and improve the seizure outcome of epilepsy surgery.