Are Brain-Computer Interfaces Feasible with Integrated Photonic Chips?
Vahid Salari, Serafim Rodrigues, Erhan Saglamyurek, Christoph Simon,, Daniel Oblak

TL;DR
This paper explores the feasibility of a novel brain-computer interface using ultraweak photon emission signals detected by integrated photonic chips implanted in the skull, potentially enabling new neural communication methods.
Contribution
It proposes a new BCI concept utilizing photonic integrated chips to detect UPE signals from neurons, combining recent advances in photonics with neurotechnology.
Findings
UPE correlates with neural activity and cerebral functions
Photonic chips offer advantages like miniaturization and high speed
Feasibility and limitations of the proposed technology are discussed
Abstract
The present paper examines the viability of a radically novel idea for brain-computer interface (BCI), which could lead to novel technological, experimental and clinical applications. BCIs are computer-based systems that enable either one-way or two-way communication between a living brain and an external machine. BCIs read-out brain signals and transduce them into task commands, which are performed by a machine. In closed-loop, the machine can stimulate the brain with appropriate signals. In recent years, it has been shown that there is some ultraweak light emission from neurons within or close to the visible and near-infrared parts of the optical spectrum. Such ultraweak photon emission (UPE) reflects the cellular (and body) oxidative status, and compelling pieces of evidence are beginning to emerge that UPE may well play an informational role in neuronal functions. In fact, several…
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Taxonomy
TopicsPhotoreceptor and optogenetics research · Neuroscience and Neural Engineering · EEG and Brain-Computer Interfaces
