| Literature DB >> 32899490 |
Yesung Cha1, Arash Arami1,2.
Abstract
Spasticity, a common symptom in patients with upper motor neuron lesions, reduces the ability of a person to freely move their limbs by generating unwanted reflexes. Spasticity can interfere with rehabilitation programs and cause pain, muscle atrophy and musculoskeletal deformities. Despite its prevalence, it is not commonly understood. Widely used clinical scores are neither accurate nor reliable for spasticity assessment and follow up of treatments. Advancement of wearable sensors, signal processing and robotic platforms have enabled new developments and modeling approaches to better quantify spasticity. In this paper, we review quantitative modeling techniques that have been used for evaluating spasticity. These models generate objective measures to assess spasticity and use different approaches, such as purely mechanical modeling, musculoskeletal and neurological modeling, and threshold control-based modeling. We compare their advantages and limitations and discuss the recommendations for future studies. Finally, we discuss the focus on treatment and rehabilitation and the need for further investigation in those directions.Entities:
Keywords: catch angle; spasticity; spasticity modeling; stretch reflex threshold; wearable sensors
Mesh:
Year: 2020 PMID: 32899490 PMCID: PMC7571189 DOI: 10.3390/s20185046
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Modified Ashworth Scale (MAS) [16].
| Grade | Description |
|---|---|
| 0 | no increase in muscle tone. |
| 1 | slight increase in muscle tone, manifested by a catch and release or by minimal resistance at the end of the range of motion (ROM) when the affected part(s) in moved flexion or extension. |
| 1+ | slight increase in muscle tone, manifested by a catch, followed by minimal resistance throughout the remainder (less than half) of the ROM. |
| 2 | more marked increase in muscle tone through most of the ROM, but affected part(s) easily moved. |
| 3 | considerable increase in muscle tone, passive movement difficult. |
| 4 | affected part(s) rigid in flexion or extension. |
Reviewed mechanical approaches to modeling spasticity.
| Authors | Target Population | Target Joints | Sensors | Method | Outcome Measures |
|---|---|---|---|---|---|
| Alibiglou et al. [ | Post-stroke | Elbow and ankle | Non-wearable 6-axis force sensor, potentiometer, tachometer | Motor-driven motion; system identification model; goodness of fit evaluated by percent variance accounted for (%VAF) | Intrinsic stiffness, reflex stiffness; near-zero correlation with MAS |
| Chen et al. [ | Post-stroke | Elbow | Wearable gyroscope, differential pressure sensor, sEMG sensors | Manually driven motion; phase-shifted torque-angle curve | Average viscosity (across multiple stretching speeds), muscle activity onset |
| Chung et al. [ | Post-stroke | Ankle | Non-wearable 6-axis force sensor, unspecified kinematics sensors | Motor-driven motion; torque-angle curves | Resistance torque, quasi-stiffness, energy loss and ROM; low to moderately correlated with MAS |
| Park et al. [ | CP (children) | Elbow | Unspecified kinematics and force sensors | Manually driven motion; model of torque during pre-, during, and post-catch phases | Replication of MAS level on simulated spastic elbow (haptic device); model accuracy evaluated by blinded assessors |
| Wu et al. [ | Post-stroke | Elbow | Non-wearable potentiometer, torque sensor; wearable sEMG sensors | Manually driven motion; torque-angle curve, 4-D characterization of catch angle using torque, torque rate of change, angle and velocity; model accuracy evaluated by mean square error | ROM, stiffness, energy loss, catch angle; high correlations with MAS |
Reviewed musculoskeletal and neural dynamics approaches to modeling spasticity.
| Authors | Target Population | Target Joints | Sensors | Method | Outcome Measures |
|---|---|---|---|---|---|
| Koo and Mak [ | Post-stroke | Elbow | Non-wearable dynamometer and needle EMG electrode; wearable sEMG sensors | Motor-driven motion; parameter identification in torque estimation and sensitivity analysis; model goodness of fit evaluated by root mean square error (RMSE) | Minimum spindle firing rate for 0.5% neural excitation, muscle spindle static gain |
| Lindberg et al. [ | Post-stroke | Wrist | Non-wearable stepper motor, unspecified force sensor; wearable sEMG sensors | Motor-driven motion (multiple speeds); force estimation to separate into components; re-test with ischemic nerve block | Neural component (NC) of force—model validated by NC reduces with ischemic nerve block and velocity dependence of NC; moderate correlation between NC and MAS, also integrated EMG |
| Shin et al. [ | Post-stroke | Ankle | Non-wearable torque sensor, rotary encoder; wearable sEMG sensors | Manually driven motion; parameter identification in torque estimation; model goodness of fit evaluated by %VAF, normalized RSME, and | Muscle spindle firing rate for 50% motor neuron recruitment, standard deviation of alpha motor neuron pool function |
| de Vlugt et al. [ | Post-stroke | Ankle | Non-wearable potentiometer, force transducer; wearable sEMG sensors | Motor-driven motion (multiple speeds); parameter identification in torque estimation; model goodness of fit evaluated by %VAF, performance by repeatability | Stiffness and viscosity parameters; stiffness moderately correlated with AS at low speed, reflex torque moderately correlated with AS at fast speeds |
| Wang et al. [ | Post-stroke | Wrist | Non-wearable force transducer, high-precision stepper motor; wearable sEMG sensors | Motor-driven motion (slow and fast speed); parameter identification in torque estimation; model goodness of fit evaluated by %VAF and | Passive stiffness, muscle spindle firing rate for 50% motor neuron recruitment, motor neuron pool gain |
Reviewed threshold-control approaches to modeling spasticity.
| Authors | Target Population | Target Joints | Sensors | Method | Outcome Measures |
|---|---|---|---|---|---|
| Arami et al. [ | Incomplete SCI | Ankle | Wearable IMUs, 6-axis force sensors, wireless sEMG sensors | Manually driven motion at different knee angles; DSRT model for dorsi- and plantar flexor muscles; models goodness of fit evaluated by | Model |
| Bar-On et al. [ | CP (children) | Knee and ankle | Wearable IMUs, 6-axis force sensors, wireless sEMG sensors | Manually driven motion; DSRT model and torque-angle curve; model evaluated by repeatability | ROM, max velocity, average RMS-EMG, torque, and work |
| Blanchette et al. [ | Post-stroke | Ankle | Wearable electrogoniometer, sEMG sensors | Manually driven motion; DSRT model for plantar flexors | Model |
| Calota et al. [ | Post-stroke | Elbow | Wearable electrogoniometer, sEMG sensors | Manually driven motion; DSRT model of biceps brachii | TSRT; moderately good intra- and interrater reliability, no correlation with MAS |
| Germanotta et al. [ | CP (children) | Ankle | Non-wearable mini-rail linear encoders, unspecified torque sensor; wearable wireless sEMG sensors | Motor-driven motion; DSRT models of dorsi- and plantar flexors; goodness of fit evaluated by | Model |
| He et al. [ | MS | Knee | Wearable electrogoniometer | Pendulum test [ | DSRT, TSRT and stretch reflex gain |
| Jobin and Levin [ | CP (children) | Elbow | Non-wearable angle and velocity transducers; wearable sEMG sensors | Motor-driven motion; DSRT models of elbow flexors and extensors | TSRT; high test-retest reliability by ICC, no correlation with CSI2 |
| Kim et al. [ | Post-stroke | Elbow | Wearable twin-axis electrogoniometer, sEMG sensors | Manually driven motion; DSRT models, K-means clustering of TSRT groups | Significant differences between K-means groups (3 levels), no significant differences between groups by MAS; very high correlation between K-means groups and TSRTs |
| Levin and Feldman [ | Post-stroke | Elbow | Non-wearable precision digital resolver; wearable sEMG sensors | Motor-driven motion; DSRT models of elbow flexors and extensors | Model |
| Mullick et al. [ | Post-stroke, Parkinson’s | Elbow | Non-wearable precision axial gauge; wearable sEMG sensors | Motor-driven motion 1; DSRT models of elbow flexors and extensors; goodness of fit evaluated by | Sensitivity of DSRT to velocity – high for post-stroke, near-zero for parkinsonian; zero correlation between |
| Turpin et al. [ | Post-stroke | Elbow | Non-wearable optical encoder; wearable sEMG sensors | Manually driven (passive) and active motion; DSRT models of flexors and extensors | Velocity sensitivity |
| Zhang et al. [ | Post-stroke, brain trauma, SCI | Elbow | Wearable IMUs and sEMG sensors | Manually driven motion; DSRT model of flexor muscle, reconstructed models of kinematic profiles; supervised single/multi-variable linear regression and support vector regression | Predicted evaluation scores (MAS) using TSRT, biomarkers from kinematics models, and combination of both; models estimation performance evaluated by mean square error |
1 Velocity profile was bell-shaped (more natural), other motor-driven apparatus used ramp-shaped motion; 2 Composite Spasticity Index [77]; 3 Fugl-Meyer Arm Assessment [78].
Figure 1Representative torque-angle curves (hysteresis loops) from the experiments of Chung et al. [30]. The limit of dorsiflexion range of motion (ROM) was designated as the point of 10 Nm of resistive torque in both stroke and control subjects. The quasi-stiffnesses are the s.stiff and c.stiff slope values, respectively, for the stroke and control subjects.
Figure 2Example of system identification algorithm used by Shin et al. [69] for parameters characterizing the spastic reflexes, using muscle spindle, motor neuron pool, muscle activation dynamics, and musculoskeletal models to estimate the activate muscle torque generated by the spastic muscle during reflex.
Figure 3Another similar model used by Koo and Mak [34] that combines the moment arms of all the muscles that affect the joint movement being investigated with their active forces to estimate the resulting reflex torque.
Figure 4(a) Example of a motorized setup for stretching the ankle dorsi- and plantar flexors [32] and (b) a manual setup for extending the knee joint and stretching the flexor muscles [49].
Figure 5(a) Example of tonic stretch reflex threshold (TSRT) estimation by 20 dynamic stretch reflex threshold (DSRT) points found by stretching the elbow flexor muscle biceps brachii at different velocities; (b) example of a threshold model for a post-stroke subject versus healthy person, where the TSRT lies outside the biomechanical range of the joint [43].
Figure 6A representative subject in [84] where in the active stretching of elbow flexors—biceps brachii (BB) and brachioradialis (BR)—the TSRTs were found to occur at greater joint angle or higher stretch. In contrast, the sensitivity to velocity was found to be increased in both muscles, when compared to passive motion.