4.6 Article

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

期刊

NEUROCOMPUTING
卷 449, 期 -, 页码 422-434

出版社

ELSEVIER
DOI: 10.1016/j.neucom.2021.03.109

关键词

SpiNNaker; Spiking neural networks; Neuromorphic hardware; Brain signals processing; Burst detection

资金

  1. Spanish grant
  2. (European Regional Development Fund) COFNET [TEC201677785P]
  3. Formacion de Personal Universitario - Spanish Ministry of Education, Culture and Sport
  4. Formacion de Personal Investigador - Spanish Ministry of Education, Culture and Sport

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The accurate identification of burst events is crucial in various fields, yet existing methods in literature are not widely adopted. A novel neuromorphic approach for real-time burst detection proposed in this study shows similar results to current state-of-the-art methods, suggesting potential advantages over conventional techniques.
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.

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