Webinar Recording

Post date: Jun 17, 2020 7:24:20 PM


New Research Opportunities at the Brain-Computer Interface: BRAIN Technology Physiology and Non-neuronal Neurocomputation

Using electrophysiology and engineered neurotechnologies, we track and interrogate neural circuit functions. By utilizing multi-channel electrophysiological arrays and electrochemical assays together with computational signal processing, we map out how neural signals are processed. We combine this method with in vivo multiphoton imaging to tease apart the spatiotemporal dynamics of neurons (quiescent and silenced), microglia, astrocytes, oligodendrocytes, oligodendrocyte progenitor cells, and pericytes. This enables unprecedented ability to understand the electrical activity of neurons in the context of simultaneous non-neuronal cell activity visualization, which cannot be monitored with electrophysiological technologies.

More recently, we have pivoted to exploring gaps in knowledge regarding electrical stimulation-based activation or inactivation of neural elements over time, which have limited the field’s ability to adequately interpret evoked downstream responses or fine‐tune stimulation parameters to focus on desired effects. Here, we show frequency–dependent differences in spatial and temporal somatic responses during continuous stimulation. In addition, we use genetically encoded activity-dependent fluorescent proteins to track molecular-level activity in specific cell types, such as genetically encoded calcium indicators and glutamate sensors. Our results elucidate conflicting results from prior studies reporting either dense spherical activation of somas biased toward those near the electrode, or sparse activation of somas at a distance via axons near the electrode; our findings indicate that the neural element specific temporal response local to the stimulating electrode changes as a function of applied charge density and frequency.

Combined, these results reveal a complex environment around the device-tissue interface, and highlight the need for more comprehensive basic science research at the neuroelectronic interface. By developing a better fundamental science understanding at this brain-computer interface, we show that it is possible to intelligently design novel BRAIN Initiative technologies that further enable new modalities for interfacing with the nervous system.