| Literature DB >> 33815084 |
Umer Asgher1, Muhammad Jawad Khan1, Muhammad Hamza Asif Nizami1,2, Khurram Khalil1, Riaz Ahmad1,3, Yasar Ayaz1,4, Noman Naseer5.
Abstract
Mental workload is a neuroergonomic human factor, which is widely used in planning a system's safety and areas like brain-machine interface (BMI), neurofeedback, and assistive technologies. Robotic prosthetics methodologies are employed for assisting hemiplegic patients in performing routine activities. Assistive technologies' design and operation are required to have an easy interface with the brain with fewer protocols, in an attempt to optimize mobility and autonomy. The possible answer to these design questions may lie in neuroergonomics coupled with BMI systems. In this study, two human factors are addressed: designing a lightweight wearable robotic exoskeleton hand that is used to assist the potential stroke patients with an integrated portable brain interface using mental workload (MWL) signals acquired with portable functional near-infrared spectroscopy (fNIRS) system. The system may generate command signals for operating a wearable robotic exoskeleton hand using two-state MWL signals. The fNIRS system is used to record optical signals in the form of change in concentration of oxy and deoxygenated hemoglobin (HbO and HbR) from the pre-frontal cortex (PFC) region of the brain. Fifteen participants participated in this study and were given hand-grasping tasks. Two-state MWL signals acquired from the PFC region of the participant's brain are segregated using machine learning classifier-support vector machines (SVM) to utilize in operating a robotic exoskeleton hand. The maximum classification accuracy is 91.31%, using a combination of mean-slope features with an average information transfer rate (ITR) of 1.43. These results show the feasibility of a two-state MWL (fNIRS-based) robotic exoskeleton hand (BMI system) for hemiplegic patients assisting in the physical grasping tasks.Entities:
Keywords: bionic actuating behavior; brain computer interface (BCI); brain machine interface (BMI); exoskeleton; functional near infrared spectroscopy (fNIRS); machine learning (ML); mental workload (MWL); neuroergonomics
Year: 2021 PMID: 33815084 PMCID: PMC8012849 DOI: 10.3389/fnbot.2021.605751
Source DB: PubMed Journal: Front Neurorobot ISSN: 1662-5218 Impact factor: 2.650
Figure 1Mental workload (MWL) command-based brain–machine interface (BMI) system.
Figure 2(A) Compact data acquisition fNIRS system (P-fNIRSSyst) with optodes placement and head-band. (B) Twelve channels of P-fNIRSSyst system with three sources and eight detectors.
Figure 3(A) Kinematic model, (B) CAD model, and (C) fabricated model.
Figure 4Conceptual depiction with V's and joint angles.
Range of motion.
| MCP | 62.70 | 63.10 |
| PIP | 78.30 | 118.20 |
| DIP | 610 | 63.10 |
Figure 5Stroke vs. joint angles of the exoskeleton hand.
Figure 6Joint trajectory of the exoskeleton hand.
Figure 7Double string arrangement.
Figure 8The BMI system architecture of the proposed method.
Figure 9Experimental paradigm.
Evaluated parameters (accuracy and ITR) of the proposed system.
| S1 | Male | 89.05 | 87.53 | 88.29 | 1.45 | 1.43 |
| S2 | Male | 89.11 | 86.83 | 87.97 | 1.44 | 1.40 |
| S3 | Female | 91.31 | 88.84 | 90.07 | 1.52 | 1.47 |
| S4 | Male | 91.47 | 88.87 | 90.17 | 1.52 | 1.47 |
| S5 | Male | 86.90 | 87.97 | 87.43 | 1.42 | 1.44 |
| S6 | Female | 85.66 | 84.35 | 85.01 | 1.34 | 1.31 |
| S7 | Male | 89.63 | 87.74 | 88.68 | 1.47 | 1.43 |
| S8 | Female | 88.69 | 86.89 | 87.79 | 1.43 | 1.40 |
| S9 | Male | 89.01 | 88.98 | 88.99 | 1.48 | 1.48 |
| S10 | Male | 80.15 | 83.75 | 81.95 | 1.24 | 1.29 |
| S11 | Male | 90.09 | 89.47 | 89.78 | 1.51 | 1.50 |
| S12 | Female | 83.99 | 86.66 | 85.32 | 1.35 | 1.39 |
| S13 | Female | 89.90 | 88.99 | 89.44 | 1.50 | 1.48 |
| S14 | Male | 85.67 | 86.51 | 86.09 | 1.37 | 1.39 |
| Average | 87.9 ± 3.01 | 87.38 ± 1.65 | 87.64 ± 2.24 | 1.43 | 1.42 |
Figure 10Experimental setup with bionic control.
Figure 11(A) The hemodynamic response function (HRF)–fNIRS signal at mental workload (MWL)-1 (hand open), (B) the HRF-fNIRS signal at MWL-2 (hand close), (C) distal phalanges (DIP) joint's plot against the opening command, (D) MIP joint's plot against the closing command, (E) exoskeleton hand opened, and (F) exoskeleton hand closed.
Figure 12The average performance and accuracies of all subjects against (open–close) exoskeleton hand commands.
Comparison of brain–machine interface (BMI) and prosthetics control studies.
| Chen et al. ( | CCA | 7 DOF Robotic arm | P3, Pz, P4, PO3, PO4, T5, T6,O1, Oz, and O2 | SSVEP | Neural | Non-wearable |
| Zhang et al. ( | CNN | ID-SIR system | FPz, Oz | SSVEP and P300 | Neural | -do- |
| Meng et al. ( | Event related synchronization/desynchronization | 6 DOF Robotic arm | C3, C4 | Thoughts/imagination | Neural | -do- |
| Brose et al. ( | Wheelchair/robotic manipulator | Neural | -do- | |||
| Downey et al. ( | BMI decoding | Robotic Manipulator | BMI and Comp. Vision | Muscles and Neural | -do- | |
| Fukuma et al. ( | Variational Bayesian multimodal | Prosthetic hand | MEG/eSCP | Muscles and Neural | -do- | |
| Yang et al. ( | SVM | Robotic Manipulator | Pz, P3, P4, PO3, PO4, PO7, PO8, Oz, O1,O2 | SSVEP | Neural | -do- |
| Müller-Putz and Pfurtscheller ( | DTF/HSD | Prosthetic hand | O1 and O2 | SSVEP | Neural | -do- |
| Looned et al. ( | Linear/binary classifier | Upper extremities (UE) | All (14 channels) | Functional electrical stimulation | Neural | Wearable |
| Rea et al. ( | LDA | Lower limb movement | All (48 channels) | fNIRS | Hemodynamic | -do- |
| Ortner et al. ( | Weighted PSD along with discrete FF | Prosthetic hand | O1, and Fz | SSVEP | Neural | -do- |
| Khan et al. ( | LDA and SVM | Prosthetic leg | Left hemisphere of M1 | fNIRS | Hemodynamic | -do- |
| Costa et al. ( | LDA, SVM, K-NN, NB, and DTL | Participant's attention to the gait | Significant channels | EEG with gamma band | Neural | -do- |
| Borgheai et al. ( | LDA with single-trial Visuo-Mental (VM) | Amyotrophic lateral sclerosis (ALS) | F1, F2, AFz, Fp1, and Fp2 | fNIRS | Hemodynamic | -do- |
| Proposed method | SVM with mental math task | Five DOF with independent control Prosthetic hand | PF1, PF2, and PFz | fNIRS | Hemodynamic | -do- |
The specific details were not mentioned in those research studies.