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Real-time detection of bursts in neuronal cultures using a neuromorphic auditory sensor and spiking neural networks

机译:使用神经耳听觉传感器和尖刺神经网络实时检测神经元培养中的爆发

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The correct identification of burst events is crucial in many scenarios, ranging from basic neuroscience to biomedical applications. However, none of the burst detection methods that can be found in the literature have been widely adopted for this task. As an alternative to conventional techniques, a novel neuromorphic approach for real-time burst detection is proposed and tested on acquisitions from in vitro cultures. The system consists of a Neuromorphic Auditory Sensor, which converts the input signal obtained from electrophysiological recordings into spikes and decomposes them into different frequency bands. The output of the sensor is sent to a trained Spiking Neural Network implemented on a SpiNNaker board that discerns between bursting and non-bursting activity. This data-driven approach was compared with different conventional spike-based and raw-based burst detection methods, addressing some of their drawbacks, such as being able to detect both high and low frequency events and working in an online manner. Similar results in terms of number of detected events, mean burst duration and correlation as current state-of-the-art approaches were obtained with the proposed system, also benefiting from its lower power consumption and computational latency. Therefore, our neuromorphic-based burst detection paves the road to future implementations for real-time neuroprosthetic applications.(c) 2021 Elsevier B.V. All rights reserved.
机译:在许多情况下,正确识别突发事件至关重要,从基本神经科学到生物医学应用。但是,没有任何可以在文献中找到的突发检测方法已被广泛用于此任务。作为常规技术的替代方案,提出了一种用于实时突发检测的新型神经形态方法,并在来自体外培养物的采集上进行测试。该系统由神经形态听觉传感器组成,该传感器将从电生理记录获得的输入信号转换为尖峰并将它们分解成不同的频带。传感器的输出被发送到训练的尖峰神经网络,在旋转和非突发活动之间辨别的纺纱器板上实现。将这种数据驱动方法与不同传统的基于峰值和原始的突发检测方法进行了比较,解决了一些缺点,例如能够检测高频和低频事件并以在线方式工作。与检测到的事件数量相似的结果,与所提出的系统一起获得了当前最先进的方法的平均突发持续时间和相关性,也从其较低的功耗和计算延迟受益。因此,我们的神经形态的突发检测铺设了对未来的实时神经调节应用的道路。(c)2021 B.V.保留所有权利。

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