| Literature DB >> 36171602 |
Ahad Behboodi1, Walker A Lee1, Victoria S Hinchberger1, Diane L Damiano2.
Abstract
BACKGROUND: Brain-computer interfaces (BCI), initially designed to bypass the peripheral motor system to externally control movement using brain signals, are additionally being utilized for motor rehabilitation in stroke and other neurological disorders. Also called neurofeedback training, multiple approaches have been developed to link motor-related cortical signals to assistive robotic or electrical stimulation devices during active motor training with variable, but mostly positive, functional outcomes reported. Our specific research question for this scoping review was: for persons with non-progressive neurological injuries who have the potential to improve voluntary motor control, which mobile BCI-based neurofeedback methods demonstrate or are associated with improved motor outcomes for Neurorehabilitation applications?Entities:
Keywords: BCI; Brain computer interface; Brain state-dependent stimulation; Cerebral palsy; Motor training; Neuroplasticity; Rehabilitation; Stroke
Mesh:
Year: 2022 PMID: 36171602 PMCID: PMC9516814 DOI: 10.1186/s12984-022-01081-9
Source DB: PubMed Journal: J Neuroeng Rehabil ISSN: 1743-0003 Impact factor: 5.208
Fig. 1The PRISMA flow chart of eligibility assessment based on inclusion/exclusion criteria
Summary of participant and study design characteristics for all included studies
| Study | Months post injury | Subject # (males) | Subject # NFT group | Task | Sessions | Control condition | Cointervention | Feedback type(s) | Functional outcomes | Sackett’s level |
|---|---|---|---|---|---|---|---|---|---|---|
| Bhagat (2020) [ | 9–106 | 10 (7) | 10 | Reaching | 12 | – | – | Robotic | FMA-UE, ARAT, GS, JTHF | IV |
| Biasiucci (2018) [ | 10 | 27 (16) | 14 | Wrist and finger extension | 10 | Sham FES | PT | FES | FMA-UE, MRC, MAS, ESS | III |
| Chen (2020) [ | 1–6 | 14 (12) | 7 | Wrist extension | 12 | MA with no FB | PT/OT/low frequency ES | Robotic | FMA-UE | II |
| Chowdhury (2018) [ | 6 | 4 (2) | 4 | Grasping | 12–16 | – | Robotic therapy | Robotic, Visual | ARAT, GS | IV |
| Chowdhury (2020) [ | 17–28 | 5 (2) | 5 | Grasping | 12 | – | Robotic therapy | Robotic, Visual | ARAT, GS | IV |
| Cisotto (2016) [ | 12 | 2 (2) | 2 | Reaching | 10 | – | – | Robotic, Visual | RTT | IV |
| Daly (2009) [ | 10 | 1 (0) | 1 | Finger extension | 9 | – | PT/OT/FES | FES, Visual | Volitional finger control | V |
| Ibáñez (2017) [ | 36–60 | 4 (4) | 4 | Reaching | 8 | – | – | FES | FMA-UE, SIS | V |
| Jang (2016) [ | 6 | 20 (10) | 10 | Shoulder ab/adduction | 30 | FES | OT | FES | MFT, MAS | II |
| Jovanovic (2020)[ | 72 | 1 (1) | 1 | Reaching and grasping | 80 | – | – | FES | FMA-UE, ARAT, FIM, TRI - HFT | V |
| Marquez-Chin (2016) [ | 72 | 1 (1) | 1 | Reaching | 40 | – | – | FES | FMA-UE, ARAT, FIM, TRI-HFT | V |
| McCrimmon (2015)[ | 6 | 9 (6) | 9 | Ankle dorsiflexion | 12 | – | – | FES | FMA-LE, 6MWD, Ankle ROM, Gait Speed | IV |
| Mrachacz- Kersting (2016) [ | 9–24 | 22 (19) | 13 | Ankle dorsiflexion | 1 | Sham FES | – | FES | 10mWT, FMA-LE, AS, TAP frequency, NIH-SS | III |
| Mrachacz- Kersting (2019) [ | 4 | 24 (18) | 12 | Ankle dorsiflexion | 12 | 70% motor threshold ES | - | FES | 10 mWT, FMA-LE, modified RS, AS | II |
| Mukaino (2014) [ | 14 | 1 (1) | 1 | Finger extension (hand opening) | 10 | MA with No FB | OT | FES | FMA-UE, MAS | V |
| Norman (2018)[ | 6 | 8 (8) | 8 | Fingers extension (hand opening) | 12 | – | Robotic therapy | Visual | Box and Block Test | IV |
| Ono (2013) [ | 14 | 1 (1) | 1 | Fingers extension (hand opening) | 15 | FES | OT | FES | FMA-UE, MAS | V |
| Osuagwu (2016) [ | 3 | 12 (12) | 7 | Hand opening and closing | 20 | FES | PT/OT | FES, Visual | Wrist ROM, MMT | II |
| Ramos-Murguialday (2013) [ | 10 | 30 (18) | 16 | Hand opening and closing | 20 | Sham Robotic FB | PT | Robotic | combined FMA-UE, MAS, MAL, GAS | II |
| Remsik (2019)[ | 21 (9) | 21 | Grasping | 9–15 | Delayed Intervention | – | FES, Visual | ARAT, 9-HPT, NIH-SS, GS, SIS, Barthel Index | II | |
| Silvoni (2013) [ | 1 (0) | 1 | Reaching | 6 | – | – | Robotic, Visual | RTT | V | |
| Takahashi (2012) [ | 30 | 1 (1) | 1 | Ankle dorsiflexion | 1 | FES | - | FES, Visual | Ankle ROM | V |
| Vourvopoulos (2019) [ | 6 | 4 (3) | 4 | Reaching (wrist and elbow extension) | 8 | – | – | Visual | FMA, SIS, MAS | IV |
FB feedback; FMA-UE Fugl-Meyer Assessment Upper Extremity; ARAT Action Research Arm Test; GS Grip Strength; MRC Medical Research Council; MAS Modified Ashworth Scale; FES Functional Electrical Stimulation; ES Electrical Stimulation; ESS European Stroke Scale; RTT Reaction Time Test; SIS Stroke Impact Scale; MFT Muscle Function Test; FIM Functional Independence Measure; TRI-HFT Toronto Rehabilitation Institute Hand Function Test; 10mWT 10-meter Walk Test; 6mWD 6 Minute Walk Distance; AS= Ashworth scale; mRS modified Rankin Scale; BBT Box and Blocks Test; cFMA combined Fugl-Meyer Assessment; MAL motor activity log; GAS Goal Attainment Scale; 9-HPT 9-Hole Peg Test; NIH-SS National Institutes of Health Stroke Scale; MMT Manual Muscle Test; ROM= Range of Motion; OT Occupational Therapy; PT Physical Therapy; JBTH=Jebsen Taylor Hand Function, SCI Spinal Cord Injury
Narrative summary of procedures and related technical details utilized in the experimental condition of the included studies
| Study | Experimental condition | Channels | Update rate | Pre-processing | Frequency range (Hz) | Real-time processing |
|---|---|---|---|---|---|---|
| Bhagat 2020 [ | Participants instructed to first think about movement and then move. A center-out reaching task was performed using a robotic manipulandum with a graphical interface that presented targets requiring either elbow flexion (up arrow) or extension (down arrow). MRCP classifier detection corroborated by EMG triggered assistance; otherwise robot resisted motor attempts. | SMC 15 electrodes | – | – | MRCP (0.1–1) | SVM Classifier |
| Biasiucci 2018 [ | Classifier built to differentiate active wrist and finger extension from rest. After a start cue was given, FES assistance was triggered. The threshold was optimized to avoid false positives so FES was never activated unless movement occurred. | SMC 16 electrodes | – | Laplacian | SMR (10–12) (18–24) | Gaussian Classifier |
| Chen 2020 [ | Participants’ hands were inserted into a robotic force feedback device. A computer screen cued them when to move or to rest. BCI-detected activation indicating wrist extension attempt triggered the device to assist movement. | 31 electrodes | – | CSP | Mu & Beta (8–30) | LDA Classifier |
| Chowdhury 2018 [ | Participants first practiced opening and closing of thumb, index and middle fingers in assist-as-needed robotic device (physical practice). During the NF condition (mental practice), participants were instructed to as slowly as possible extend these fingers when cued from a computer screen showing a virtual hand grasping a remote. At 1.5 s after the cue and for the next 8500 ms intervals, each successful BCI detection triggered visual and robotic feedback of finger opening one step (up to 8 total steps). | SMC 12 electrodes | – | CSP | SMR (8–12 16–24) | SVM Classifier |
| Chowdhury 2020 [ | Protocol similar to Chowdhury et al. 2018, see above, but with EMG electrodes placed on right and left forearm and collected synchronously with EEG to improve detection of finger opening. | 10 EEG-EMG pairs SMC (12) + finger extension muscles (4) | – | CBPT | EEG: Mu (8–12) EMG: 30–50 | SVM Classifier |
| Cisotto 2014 [ | Participants performed a center-out reaching task using a robotic manipulandum with a graphical interface depicting targets in 4 directions. Targets to hit were shown in random order, and participants were cued to move to it within 500-740 ms. If successful, the target exploded; if too slow, it turned blue and if too fast, it turned red. ERD detection triggered robotic force assistance proportional to the ERD amplitude. | 3 electrode-frequency pairs | 8 ms | BCI2000 | 10–20 | BCI2000 Linear Classifier |
| Daly 2009 [ | Participant without index finger extension was instructed to attempt or alternatively imagine movement or relaxation. A red rectangle in the up position on the computer screen cued movement and one in the down position cued relaxation. Accurate detection of real or imagined movement triggered FES to assist finger extension. If ERD power threshold achieved during the task, rectangle turned green. | CP 3 | – | BCI2000 | 5–30 | BCI2000 Linear Classifier |
| Ibáñez 2017 [ | Participants instructed to reach for a glass target in front of them at 75% of their maximum reach. BCI detection of movement intention triggered a multimodal FES activation reach sequence to assist them. Gyroscopes indicated whether movement occurred to evaluate accuracy of the BCI detection. | 10 best electrode-frequency pair + a virtual channel average of C1,C2, and CZ | 100 ms | Laplacian + ERD threshold identification | MRCP (0-1) & 6–35 | (Naïve Bayes &Match filter) Logistic Regression Classifier |
| Jang 2016 [ | Participants performed 4 shoulder movements demonstrated on a computer screen. A concentration index (CI), defined as EEG theta to beta power ratio was used as the detection threshold to trigger FES to two muscles that reduced shoulder subluxation during motor tasks. | FP1 | - | CI Threshold identification | Beta (12–15) Theta (4–7) | – |
| Jovanovic 2020 [ | Participants performed reaching, with or without hand opening when cued by a therapist. ERD detection of movement triggered FES to muscles that varied by participant and task. If detection did not occur, therapist could trigger FES. | C2 | - | ERD/ERS measurement | Mu (8–12) | ERD Detection |
| Marquez-Chin 2016 [ | Participant performed 5 reaching tasks (to mouth, opposite shoulder, knee on same side, in front and to the side), held the position, and returned to start. ERD detection of movement triggered a multichannel FES neuroprosthesis, if not, therapist could activate FES. Therapist also demonstrated and assisted movement as needed. | FCz | 125 ms | ERD threshold identification | Beta (18–28) | ERD Detection |
| McCrimmon 2014 [ | Participants attempted ankle dorsiflexion. BCI detection of movement intention triggered FES assistance. If FES not activated, they were to continue movement. If FES activated in error, they were told to not move. | 1 subject-specific channel (CZ, C5 or CPz) | 250 ms | CPCA | Mu & Beta (8–30) | LDA or AIDA |
| Mrachacz-Kersting 2016 [ | Participants instructed to dorsiflex as fast as possible once the cursor on the screen moved upward, hold for 2 s then relax. Timing of MRCP peak negativity during dorsiflexion attempt triggered FES assistance. | 10 FP1, F3, F4, Fz, Pz, P3, P4, C3, C4, Cz | – | Laplacian | MRCP (0.5–10) | – |
| Mukaino 2014 [ | Participants attempted to extend their fingers at maximum effort for 3s as demonstrated visually on computer screen. If ERD threshold reached for 1 s during the attempt FES assistance was triggered. | 2 C3 and C4 | 30 ms | Laplacian | SMR (8–12 18–26) | LDA Classifier |
| Norman 2018 [ | This study had 3 phases. Phase 1: participants attempted 1 of 4 cued commands to open only index, middle, both or neither fingers, with movement activating a finger extension robotic device. Phase 2: they practiced modulating SMR rhythms with success shown by increasing object brightness on a visual display. Phase 3: SMR modulation success as indicated by increasing object brightness, cued participants to move which in turn activated the robotic device. | 1–3 electrode-frequency pairs | 50 ms | BCI2000 | Beta (12–24) | BCI2000 Linear Classifier |
| Ono 2013 [ | Participants performed block trials of 5 hand openings for 3 s at maximal effort and 5 rests. If EEG classifier detected the hand opening attempt within 1s of cue to move, FES assistance was triggered. | 2 C3 and C4 | 30 ms | – | Mu & Beta | LDA classifier |
| Osuagwu 2016 [ | A buffer was established that set the number of consecutive successful BCI detections of either right- or left-hand movement required to trigger the FES. The buffer caused a needle on a gauge on a computer screen to point to 0 when the preset number was achieved and then triggered a multichannel FES to assist repetitive hand opening and closing . If the preset number for detection was not reached, no assistance occurred. Buffer size could be adjusted for difficulty. | Central SMC (3 bipolar electrodes, CP3- CF3, CPz–CFz, CP4–CF4) | – | – | Mu & Beta (7–30) | LDA Classifier |
| Ramos-Murguialday 2013 [ | Participants performed either hand opening and closing, or moved the entire limb forward and backwards. If ERD was sustained below a threshold for 0.2 s during an attempt, a robotic exoskeleton was triggered to provide assistive force. | Ipsilesional motor cortex | - | ERD threshold identification | Mu (8–13) | ERD Detection |
| Remsik 2019 [ | EEG classification of attempted grasping activated horizontal movement of a cursor on a screen, triggered FES assistance to facilitate finger opening or closing depending on participant choice and delivered contingent vibrotactile tongue stimulation. | C3–C4 | - | BCI2000 | Mu (8–12) | BCI2000 Linear Classifier |
| Silvoni 2013 [ | Paradigm similar to Cisotto et al, 2016. | Right affected arm C3, CP1, P3, CP54 Left affected arm C4, CP2, P4, CP6 | 16 ms | BCI2000 | Right affected arm 14–17 Hz Left affected arm 11–14 Hz | BCI2000 Linear Classifier |
| Takahashi 2012 [ | Participant viewed a red square on a screen to cue ankle dorsiflexion. If ERD detection threshold reached, FES was triggered with stepwise increases or decreases every 500ms, depending on successful detection as shown by changing colors on 8 bars on the screen representing 8 possible steps. | Bipolar FCz-CPz | 500 ms | ERD threshold identification | Beta 24–26 | ERD Detection |
| Vourvopoulos 2019 [ | Participants wore a head mounted VR display while instructed to attempt wrist and elbow extension. If EEG activation during attempt exceeded baseline, this triggered a virtual arm on a screen to move towards the target (visual FB). | 2 C3, C4 | 500 ms | Laplacian | Mu and Beta 8–24 | – |
MRCP Movement-related cortical potential, SVM Support Vector Machine, FES Functional Electrical Stimulation, SMR Sensorimotor rhythm, CSP Common Spatial Patterns, LDA Linear Discriminant Analysis, SMC Sensorimotor cortex, EMG Electromyography, EEG Electroencephalography, ERD Event-related Desynchronization, AIDA Approximate Information Discriminant Analysis, CBPT Correlation of band-limited power time-courses
Summary of the Fugl-Meyer Assessment (FMA) results for the Upper Extremity (UE) and the Lower Extremity (LE) and the Action Research Arm Test (ARAT) results reported in the individual studies for the Neurofeedback Training (NFT) and Control (C) groups
| Study | FMA-UE (NFT) | FMA-UE (NFT vs C) | FMA-LE (NFT) | FMA-LE (NFT vs C) | ARAT (total, NFT) | ARAT (sub-scores) |
|---|---|---|---|---|---|---|
| Bhagat 2020 [ | 3.92* | – | – | – | 5.35* | – |
| Biasiucci 2018 [ | 6.7* | 4.6* | – | – | – | – |
| Chen 2020 [ | 8.42* | 3.71 | – | – | – | – |
| Chowdhury 2018 [ | – | – | – | – | 5.66* | – |
| Chowdhury 2020 [ | – | – | – | – | 23.75* | – |
| Ibáñez 2017 [ | 11.5 | – | – | – | – | – |
| Jovanovic 2020 [ | 17* | – | – | – | 14* | Grasp: 3; Grip: 8; Pinch: 1; Gross Move: 4 |
| Marquez- Chin 2016 [ | 6 | – | – | – | 0 | – |
| McCrimmon 2014 [ | – | – | 2.44 | – | – | – |
| Mrachacz- Kersting 2016 [ | – | – | 0.77* | – | – | – |
| Mrachacz- Kersting 2019 [ | – | – | 8.5* | 4.5* | – | – |
| Mukaino 2014 [ | 8 | – | – | – | – | – |
| Ono 2013 [ | 7 | – | – | – | – | – |
| Ramos- Murguialday 2013 [ | 3.40 | 3.45 | – | – | – | – |
| Remsik 2019 [ | – | – | – | – | 1.3* | Grasp: 0.7; Grip: 0.1; Pinch: 0.4; Gross Move: 0 |
| Vourvopoulos 2019 [ | 1.25 | – | – | – | – | – |
| Mean | 7.32 | 3.92 | 3.90 | 4.5 | 8.34 | – |
| Standard Deviation | 4.46 | 0.60 | 4.07 | – | 9.00 | – |
FMA-UE Fugl-Meyer Assessment Upper Extremity, FMA-LE Fugl-Meyer Assessment Lower Extremity, ARAT Action Research Arm Test, NFT Neurofeedback Training Group, C Control Group
Significant values (p < 0.05) indicated by Asterisk