64 research outputs found
Feasibility and Safety of Bilateral Hybrid EEG/EOG Brain/NeuralâMachine Interaction
Cervical spinal cord injuries (SCIs) often lead to loss of motor function in both hands and legs, limiting autonomy and quality of life. While it was shown that unilateral hand function can be restored after SCI using a hybrid electroencephalography/electrooculography (EEG/EOG) brain/neural hand exoskeleton (B/NHE), it remained unclear whether such hybrid paradigm also could be used for operating two hand exoskeletons, e.g., in the context of bimanual tasks such as eating with fork and knife. To test whether EEG/EOG signals allow for fluent and reliable as well as safe and user-friendly bilateral B/NHE control, eight healthy participants (six females, mean age 24.1 +/- 3.2 years) as well as four chronic tetraplegics (four males, mean age 51.8 +/- 15.2 years) performed a complex sequence of EEG-controlled bilateral grasping and EOG-controlled releasing motions of two exoskeletons visually presented on a screen. A novel EOG command performed by prolonged horizontal eye movements (>1 s) to the left or right was introduced as a reliable switch to activate either the left or right exoskeleton. Fluent EEG control was defined as average "time to initialize" (TTI) grasping motions below 3 s. Reliable EEG control was assumed when classification accuracy exceeded 80%. Safety was defined as "time to stop" (TTS) all unintended grasping motions within 2 s. After the experiment, tetraplegics were asked to rate the user-friendliness of bilateral B/NHE control using Likert scales. Average TTI and accuracy of EEG-controlled operations ranged at 2.14 +/- 0.66 s and 85.89 +/- 15.81% across healthy participants and at 1.90 +/- 0.97 s and 81.25 +/- 16.99% across tetraplegics. Except for one tetraplegic, all participants met the safety requirements. With 88 +/- 11% of the maximum achievable score, tetraplegics rated the control paradigm as user-friendly and reliable. These results suggest that hybrid EEG/EOG B/NHE control of two assistive devices is feasible and safe, paving the way to test this paradigm in larger clinical trials performing bimanual tasks in everyday life environments
Pathological Delta Oscillations in Hallucinogen Persisting Perception Disorder: A Case Report
Background: Hallucinogen persisting perception disorder (HPPD) is characterized by spontaneous recurrence of visual hallucinations or disturbances after previous consumption of hallucinogens, such as lysergic acid diethylamide (LSD). The underlying physiological mechanisms are unknown and there is no standardized treatment strategy available.
Case Presentation: A 33-year-old male patient presented with persistent visual distortions (halos around objects, intensified colors, positive after images, and trails following moving objects) that developed after repeated use of hallucinogenic drugs at the age of 18. Symptoms developed gradually and worsened several months later, resulting in various pharmacological and psychosocial treatment attempts that remained unsuccessful, however. At presentation, 32-channel electroencephalography (EEG) showed increased delta activity over the occipital brain regions, reminiscent of occipital intermittent rhythmic delta activity (OIRDA) usually seen in children. Two sessions of cathodal (inhibitory) transcranial direct current stimulation (tDCS) over 30 min attenuated visual hallucinations and occipital delta activity by approximately 60%. The response persisted for over four weeks.
Conclusion: Pathological delta activity over occipital brain regions may play an important role in the development and perpetuation of HPPD and can be attenuated by non-invasive brain stimulation
Post-stroke Rehabilitation of Severe Upper Limb Paresis in Germany â Toward Long-Term Treatment With Brain-Computer Interfaces
Severe upper limb paresis can represent an immense burden for stroke survivors. Given the rising prevalence of stroke, restoration of severe upper limb motor impairment remains a major challenge for rehabilitation medicine because effective treatment strategies are lacking. Commonly applied interventions in Germany, such as mirror therapy and impairment-oriented training, are limited in efficacy, demanding for new strategies to be found. By translating brain signals into control commands of external devices, brain-computer interfaces (BCIs) and brain-machine interfaces (BMIs) represent promising, neurotechnology-based alternatives for stroke patients with highly restricted arm and hand function. In this mini-review, we outline perspectives on how BCI-based therapy can be integrated into the different stages of neurorehabilitation in Germany to meet a long-term treatment approach: We found that it is most appropriate to start therapy with BCI-based neurofeedback immediately after early rehabilitation. BCI-driven functional electrical stimulation (FES) and BMI robotic therapy are well suited for subsequent post hospital curative treatment in the subacute stage. BCI-based hand exoskeleton training can be continued within outpatient occupational therapy to further improve hand function and address motivational issues in chronic stroke patients. Once the rehabilitation potential is exhausted, BCI technology can be used to drive assistive devices to compensate for impaired function. However, there are several challenges yet to overcome before such long-term treatment strategies can be implemented within broad clinical application: 1. developing reliable BCI systems with better usability; 2. conducting more research to improve BCI training paradigms and 3. establishing reliable methods to identify suitable patients
Restoration of Gait using Personalized Brain/Neural-Controlled Exoskeletons
The development of brain/neural-controlled exoskeletons allow for restoration of movements in paralysis. By translating brain activity associated with the intention to move, such systems enabled, e.g., quadriplegic patients with complete finger paralysis to eat and drink in an outside restaurant. However, noninvasive means to record brain activity often lack sufficient signal quality for reliable and safe operation, particularly in noisy, uncontrolled environments or presence of muscle artifacts due to whole body movements. Thus, hybrid control paradigms were developed that merge different biosignals to increase reliability of exoskeleton control. Here, we introduce such control paradigm for restoration of gait using a personalized exoskeleton based on electroencephalographic and electrooculographic (EEG/EOG) signals. While exoskeleton movements were initiated by event-related desynchronization (ERD) of sensorimotor rhythms (SMR) associated with the intention to walk, the exoskeleton was stopped by a specific EOG signal. Using such paradigm does not only provide intuitive control, but may also trigger neural recovery when used repeatedly over a longer period of time. Further validation of this approach in a larger clinical study on gait assistance and rehabilitation will be needed
Synchronization of Slow Cortical Rhythms During Motor Imagery-Based BrainâMachine Interface Control
Modulation of sensorimotor rhythm (SMR) power, a rhythmic brain oscillation physiologically linked
to motor imagery, is a popular BrainâMachine Interface (BMI) paradigm, but its interplay with slower
cortical rhythms, also involved in movement preparation and cognitive processing, is not entirely understood.
In this study, we evaluated the changes in phase and power of slow cortical activity in delta and
theta bands, during a motor imagery task controlled by an SMR-based BMI system. In Experiment
I, EEG of 20 right-handed healthy volunteers was recorded performing a motor-imagery task using an
SMR-based BMI controlling a visual animation, and during task-free intervals. In Experiment II, 10
subjects were evaluated along five daily sessions, while BMI-controlling same visual animation, a buzzer,
and a robotic hand exoskeleton. In both experiments, feedback received from the controlled device was
proportional to SMR power (11â14 Hz) detected by a real-time EEG-based system. Synchronization of
slow EEG frequencies along the trials was evaluated using inter-trial-phase coherence (ITPC). Results:
cortical oscillations of EEG in delta and theta frequencies synchronized at the onset and at the end of
both active and task-free trials; ITPC was significantly modulated by feedback sensory modality received
during the tasks; and ITPC synchronization progressively increased along the training. These findings
suggest that phase-locking of slow rhythms and resetting by sensory afferences might be a functionally
relevant mechanism in cortical control of motor function. We propose that analysis of phase synchronization
of slow cortical rhythms might also improve identification of temporal edges in BMI tasks and might
help to develop physiological markers for identification of context task switching and practice-related
changes in brain function, with potentially important implications for design and monitoring of motor
imagery-based BMI systems, an emerging tool in neurorehabilitation of stro
Brain-computer interfaces for post-stroke motor rehabilitation: a meta-analysis
Brainâcomputer interfaces (BCIs) can provide sensory feedback of ongoing brain oscillations, enabling stroke survivors to modulate their sensorimotor rhythms purposefully. A number of recent clinical studies indicate that repeated use of such BCIs might trigger neurological recovery and hence improvement in motor function. Here, we provide a first metaâanalysis evaluating the clinical effectiveness of BCIâbased postâstroke motor rehabilitation. Trials were identified using MEDLINE, CENTRAL, PEDro and by inspection of references in several review articles. We selected randomized controlled trials that used BCIs for postâstroke motor rehabilitation and provided motor impairment scores before and after the intervention. A randomâeffects inverse variance method was used to calculate the summary effect size. We initially identified 524 articles and, after removing duplicates, we screened titles and abstracts of 473 articles. We found 26 articles corresponding to BCI clinical trials, of these, there were nine studies that involved a total of 235 postâstroke survivors that fulfilled the inclusion criterion (randomized controlled trials that examined motor performance as an outcome measure) for the metaâanalysis. Motor improvements, mostly quantified by the upper limb FuglâMeyer Assessment (FMAâUE), exceeded the minimal clinically important difference (MCID=5.25) in six BCI studies, while such improvement was reached only in three control groups. Overall, the BCI training was associated with a standardized mean difference of 0.79 (95% CI: 0.37 to 1.20) in FMAâUE compared to control conditions, which is in the range of medium to large summary effect size. In addition, several studies indicated BCIâinduced functional and structural neuroplasticity at a subclinical level. This suggests that BCI technology could be an effective intervention for postâstroke upper limb rehabilitation. However, more studies with larger sample size are required to increase the reliability of these results
Assessment of mental workload across cognitive tasks using a passive brain-computer interface based on mean negative theta-band amplitudes
Brain-computer interfaces (BCI) can provide real-time and continuous assessments of mental workload in different scenarios, which can subsequently be used to optimize human-computer interaction. However, assessment of mental workload is complicated by the task-dependent nature of the underlying neural signals. Thus, classifiers trained on data from one task do not generalize well to other tasks. Previous attempts at classifying mental workload across different cognitive tasks have therefore only been partially successful. Here we introduce a novel algorithm to extract frontal theta oscillations from electroencephalographic (EEG) recordings of brain activity and show that it can be used to detect mental workload across different cognitive tasks. We use a published data set that investigated subject dependent task transfer, based on Filter Bank Common Spatial Patterns. After testing, our approach enables a binary classification of mental workload with performances of 92.00 and 92.35%, respectively for either low or high workload vs. an initial no workload condition, with significantly better results than those of the previous approach. It, nevertheless, does not perform beyond chance level when comparing high vs. low workload conditions. Also, when an independent component analysis was done first with the data (and before any additional preprocessing procedure), even though we achieved more stable classification results above chance level across all tasks, it did not perform better than the previous approach. These mixed results illustrate that while the proposed algorithm cannot replace previous general-purpose classification methods, it may outperform state-of-the-art algorithms in specific (workload) comparisons
Physiological Responses During Hybrid BNCI Control of an Upper-Limb Exoskeleton
When combined with assistive robotic devices, such as wearable robotics,
brain/neural-computer interfaces (BNCI) have the potential to restore the capabilities of handicapped
people to carry out activities of daily living. To improve applicability of such systems, workload and
stress should be reduced to a minimal level. Here, we investigated the userâs physiological reactions
during the exhaustive use of the interfaces of a hybrid control interface. Eleven BNCI-naive healthy
volunteers participated in the experiments. All participants sat in a comfortable chair in front of a
desk and wore a whole-arm exoskeleton as well as wearable devices for monitoring physiological,
electroencephalographic (EEG) and electrooculographic (EoG) signals. The experimental protocol
consisted of three phases: (i) Set-up, calibration and BNCI training; (ii) Familiarization phase ; and (iii)
Experimental phase during which each subject had to perform EEG and EoG tasks. After completing
each task, the NASA-TLX questionnaire and self-assessment manikin (SAM) were completed by
the user. We found significant differences (p-value < 0.05) in heart rate variability (HRV) and skin
conductance level (SCL) between participants during the use of the two different biosignal modalities
(EEG, EoG) of the BNCI. This indicates that EEG control is associated with a higher level of stress
(associated with a decrease in HRV) and mental work load (associated with a higher level of SCL)
when compared to EoG control. In addition, HRV and SCL modulations correlated with the subjectâs
workload perception and emotional responses assessed through NASA-TLX questionnaires and SAM
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