Thursday 8 February 2024

Brain-computer interfaces, their current developments, and future possibilities:

Brain-computer interfaces, their current developments, and future possibilities:

Brain-computer interfaces (BCIs) are systems that allow for direct communication between the brain and an external device. BCIs record and decode neural activity from the brain, translate it into control signals, and send those signals to an output device to carry out the intended action. This provides a direct communication pathway between the brain and technology, without requiring movement of muscles or peripheral nerves. BCIs have the potential to benefit people with paralysis and other disabilities by enabling control over prosthetic limbs, computer cursors, speech synthesizers, and more. Research into BCIs has expanded rapidly in recent decades, leading to major advances in our understanding of neural coding and decoding. However, many challenges remain in making BCIs fast, accurate, and robust enough for widespread practical use. 

Current BCI Systems

A variety of invasive and non-invasive methods exist for recording brain activity for BCI purposes. Invasive BCIs implant electrodes directly into the brain for higher fidelity signals, but carry risks from surgery and potential infection. Non-invasive methods like electroencephalography (EEG) measure signals from the scalp and are lower bandwidth but safer. Common locations for recording include the motor cortex for motor BCIs, visual cortex for sensory BCIs, and prefrontal cortex for higher-level cognition BCIs. 

Motor BCIs

Motor BCIs aim to decode movement intentions from neural activity in the motor cortex, the region of the brain responsible for planning and executing voluntary movements. Implanted BCIs have enabled paralyzed humans and animals to control computer cursors, robotic arms, and exoskeletons. In landmark trials, implanted sensors in the motor cortex of paralyzed patients allowed them to control a robotic arm to perform self-feeding motions. Non-invasive motor BCIs using EEG have also succeeded in simple movement control, like moving a cursor on a screen. Challenges include lower signal resolution with EEG, and implants carry risks from surgery.

Sensory BCIs 

Sensory BCIs work in the reverse direction, encoding sensory information like vision and touch into patterns of electrical stimulation applied to the appropriate brain regions. This can evoke sensory percepts that serve as a replacement channel for people with deficits. For example, cochlear implants for deafness encode sound into stimulations of the auditory nerve. BCIs for artificial vision stimulate the visual cortex according to images from a camera. Such implants have partly restored visual sensations like motion detection. Work is ongoing to increase the resolution using techniques like recruitment of other senses for encoding.

Cognitive BCIs

Cognitive BCIs seek to monitor or manipulate higher-level brain functions like memory, attention, emotion, decision-making, and consciousness. EEG studies have decoded brain patterns related to focusing attention, remembering items, recognizing people/objects, and making simple choices. Stimulation methods like transcranial magnetic stimulation (TMS) can modify mood and cognitive abilities. Applications include boosting memory before studying, controlling impulses in addiction, regulating mood disorders, and even altering consciousness. Cognitive enhancement for healthy users also creates ethical concerns.

BCI Input Methods

Invasive BCIs

Invasive BCIs use electrodes implanted directly into the brain to record neural activity at the level of single neurons, small populations, or field potentials. This provides the highest quality signals, but requires risky brain surgery.

Common invasive BCI techniques:

- Intracortical arrays - Microelectrode arrays implanted in the cortex record action potentials from individual neurons. Allows precise decoding of motor behaviors.

- Electrocorticography (ECoG) - Electrodes placed below the skull directly on the brain surface record local field potentials from the cortex. Less precise but lower risk than intracortical implants. 

- Intracortical optic fibers - Optogenetic sensors inserted into the cortex can record from genetically sensitized neurons that fire on light stimulation. Enables cell-specific recording.

Non-invasive BCIs

Non-invasive BCIs use external sensors that measure brain activity through the intact skull. They avoid surgical risks but have lower signal quality.

Common non-invasive BCI techniques:

- EEG - Electrodes on the scalp record electrical rhythms from the cortex with millisecond accuracy. Most common BCI method due to ease of use. Limited spatial resolution.

- fMRI - Detects blood oxygenation to map brain activation patterns. Good spatial resolution but slow (seconds). Used for mapping and brain states.

- MEG/EEG - Magnetoencephalography detects magnetic fields of brain activity. Combines good temporal resolution with improved 3D localization over EEG.

- fNIRS - Measures hemodynamic signals like fMRI but using optical methods safe for frequent use. Can study cognition and visualization.

BCI Output Devices

BCI outputs utilize the decoded brain activity signals to carry out the user's intention through various actuators.

Common BCI output devices:

- Computer cursors - Enable point and click control of computers for communication, web surfing, creativity tools, and more, using decoded intents from the motor cortex.

- Robot/prosthetic arms - Allow paralyzed users to perform reaching and grasping motions by controlling robotic limbs through decoded movement plans.

- Wheeled robots - Users can navigate robotic vehicles around environments by simply thinking of intended directions and movements.

- Exoskeletons - Powered robotic suits that a user wears can be controlled to facilitate walking, limb movement, and grasping.

- Muscle stimulators - Electrical stimulation activated by BCIs can induce contractions of paralyzed muscles for restoring movements like standing or walking.

- Speech synthesizers - Allow users to produce audible speech by decoding intended words and commands from cortical activity. Useful for verbal communication.

- Sensory stimulators - Actuators for vision, touch, and hearing activated by a BCI can provide sensory feedback to users based on environment sensors. 

Advances in Invasive BCIs

Invasive BCI technology has progressed rapidly in recent years, helped by advances in materials, microfabrication, and neural decoding:

- Biocompatible electrodes - Electrode materials like graphene, conductive polymers, silicon, iridium oxide enable safer long-term implants with reduced scarring. 

- High-density microECoG - Micro scale ECoG grids with up to 1000 channels cover large cortical areas with high resolution, and can last years without notable immune response.

- Neural dust motes - Tiny wireless implants, the size of dust particles, can record from tissue without wires. Allows broad distribution across the brain.

- Optogenetics - Genetically sensitized neurons activated by light enable cell-specific recording and stimulation when combined with optic fiber electrodes.

- Machine learning decoders - Algorithms like deep neural networks can continually improve at decoding movement plans from population neural activity in the motor cortex of paralyzed patients.

- Bidirectional BCIs - Implants that combine recording and stimulation allow paralyzed users to receive artificial tactile feedback when controlling a robotic limb, closing the loop.

These advances have improved grasp control, reach accuracy, and incorporated tactile feedback for prosthetic limbs controlled by implants. Work is ongoing to increase the number of controllable degrees of freedom as well as perception of pressure, texture, warmth, and other sensations.

Non-Invasive BCI Progress

Though lower bandwidth than implants, non-invasive BCIs have also seen major improvements in decoding abilities:

- Dry EEG electrodes - Electrodes that don't require scalp preparation or gels, enabling quick setup of EEG systems. Improving wearability.

- Active electrodes - Novel electrode materials and integrated electronics amplify signals right at the scalp, increasing signal-to-noise ratio.

- Convolutional neural networks - Deep learning now rivals human accuracy at decoding motor intentions from EEG signals for 2D movement control.

- Motion artifact removal - Algorithms can isolate neural signals from muscle movement contamination, improving decoding during ambulation.

- Focused ultrasound - Gentle pulses of ultrasound can briefly "open" the blood-brain barrier, allowing drugs, nanoparticles, or viral vectors to selectively alter brain tissue function non-invasively.

- Transcranial alternating current stimulation - Applying oscillating electric fields can entrain neural firing patterns related to motor skills and cognition.

Though most progress has involved EEG for noninvasive BCIs, other modalities like MEG, fNIRS, and fMRI continue being explored to enhance decoding from different brain regions. Overall, wearability, ease of use, and control speed continue to improve gradually for non-invasive interfaces.

Emerging BCI Applications

Beyond assisting people with paralysis, BCIs are enabling a host of new applications:

- Neuroprosthetics - BCIs can link not just to arms but artificial legs, hands, and exoskeletons, allowing thoughts to control full body motion. Enables wheelchair-bound mobility

- Neurorehabilitation - BCI devices can strengthen pathways between damaged brain areas and muscles using intention-driven stimulation after brain injuries like stroke.

- Memory enhancement - Studies show transcranial stimulation directed by cognitive BCIs can boost memory performance and motor learning in healthy subjects.

- BCI virtual reality - VR environments that adapt in real-time based on users' brain states via BCI create more seamless and reactive experiences.

- Artistic creativity - Some artists are exploring BCIs as a new medium, using them to create music, images, and performances based on imagined ideas.

- Passive BCIs - Interfaces that silently monitor brain states during everyday computer use can adapt interfaces to user engagement, attention, workload,

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