Recent State of Wearable IMU Sensors Use in People Living with Spasticity: A Systematic Review
Abstract
:1. Introduction
2. Methods
2.1. Search Strategy
2.2. Study Selection Strategy
- (1)
- Published in English.
- (2)
- Full original research articles published in peer-reviewed scientific journals.
- (3)
- Including adult human participants living with spasticity.
- (4)
- Studies that focused on spasticity-related characteristics using IMU body-worn sensors in a clinical or community-based setting, or in “real life” environments.
- (5)
- Wearable devices were portable, easy to use, and unobtrusive for the desired analysis.
- (1)
- Used animal models.
- (2)
- Conference papers.
- (3)
- No spasticity participant group was included.
- (4)
- If study was not focused on IMU analysis as the prime tool.
- (5)
- We also excluded studies focusing robot-assisted movement.
2.3. Data Extraction
2.4. Methodological Quality
3. Results
3.1. Search Results
3.2. Study Characteristics
3.3. Study Parameters and Outcome Measures
3.3.1. IMU Details and Body Location
3.3.2. IMU Assessment Protocol and Calculated Parameters
3.4. Methodological Quality
4. Discussion
4.1. Future Directions
- -
- Remote spasticity assessment. A telehealth spasticity analysis platform for distant spasticity management, allowing for an alternative interaction between clinicians and patients. This system could combine EMG and IMU wearable sensors with feedback mechanisms to measure spasticity. The device, shaped into a sleeve, could be coupled with a guided motion assessment protocol. This approach could significantly improve the QoL of spasticity patients and reduce the burden of travel from their carers.
- -
- Focal muscle vibration (FMV) treatment system. An auto-vibration treatment system based on EMG and IMU wearable sensors, as well as vibration motors, incorporated into a sleeve. The method could assess spasticity, in real time, and activate FMV to reduce symptoms and improve muscle functioning.
- -
- WIoT continuous data collection. Using IMUs, uninterrupted kinematic spasticity muscle data mining could enable healthcare professionals and researchers to analyse the data for population health benefits.
- -
- A physiotherapy regime with real-time feedback. Utilising a gaming framework, a stretching and sport regimen could be tailored to each patient. IMUs could provide real-time feedback to the user and clinician or record ongoing progress and outcomes.
4.2. Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Author [Ref] | Aim | Population Type | Selection Criteria | Participants Characteristics |
---|---|---|---|---|
Zhang et al., 2019 | To propose a novel regression-based framework for quantitative assessment of muscle spasticity using wearable surface EMG and IMU, combined with a simple examination procedure. | (1) Mixed: spinal cord injury, brain haemorrhage, brain trauma, brain infarction; (2) healthy subjects. | Inclusion: (a) participants experiencing stroke, acquired brain trauma, or incomplete spinal cord injury and accompanied by spasticity in flexor and extension muscles of the elbow; (b) the spasticity of elbow extensor or flexor was assessed within 1–3 grades using MAS; (c) the range of elbow joint during passive stretch was at least 120 degrees; (d) medically stable with clearance to participate; (e) without any historical musculoskeletal injuries or cognition problems; (f) able to offer informed signed consent prior to any procedure of the experiment. Exclusion criteria: n.a. | N: 16 (Spasticity); Gender: M/F: 14/2; Mean age: 54 ± 10; N: 8 (control); Gender: M/F: 6/2; Mean age: 29 ± 9; Spasticity severity (MAS): 1+–3. |
Jung-Yeon et al., 2020 | To propose a machine-learning based method, to provide information regarding the degree of spasticity of an elbow using a wearable device (IMU). | (1) CVA: cerebrovascular accident; (2) SCI: spinal cord injury. | Inclusion: Not explicitly mentioned. Exclusion: (1) Patients were excluded if their cognitive function was impaired (Mini-Mental State Examination score ≤ 23); (2) if they expressed discomfort in using a wearable device; (3) if the assigned therapist judged the participant to be unfit. | N:48; Gender: M/F: 26/22; Mean age: 61.2 ± 13.7 (M); 77.8 ± 10.1 (F); Spasticity severity (MAS): 0–4. |
Rech et al., 2020 | To verify the relationship between widely used clinical scales FMA and MAS and instrumented measurements to evaluate poststroke individuals with motor impairment. | Chronic hemiparesis after stroke. | Inclusion: (1) Adults aged between 19 and 80 years; (2) history of unilateral cortical or subcortical stroke diagnosis confirmed by brain imaging exam (tomography or magnetic resonance); (3) time since stroke from 6 months to 5 years; 4) ability to reach 60 degrees of shoulder flexion with the paretic upper limb and walk for at least 10 m (with or without walking devices). Exclusion: (1) Individuals were excluded if they presented: cerebellum lesion; (2) musculoskeletal disorders that could impair the reaching task and/or gait performance; (3) cognitive impairment (<20/30 points illiterate or <24/30 points in the Mini-Mental State Examination 15). | N: 34; Gender: M/F: 23/11; Mean age: 58.38 ± 14.56; Spasticity severity (MAS): 0–4. |
Pau et al., 2020 | (1) To investigate the existence of possible differences between women and men with MS in terms of amount and intensity of PA performed during a week, continuously acquired using wrist-worn wearable accelerometers and (2) to verify whether the disease has a stronger impact on men or women with MS. | (1) Multiple sclerosis group; (2) control group. | Inclusion (MS): (1) diagnosis of MS, (2); age between 18 and 65 years; (3) Expanded Disability Status Scale (EDSS, a score used to quantify the disability caused by MS based on a neurological examination of 8 functional systems) score ≤ 6; (4) being clinically stable and on treatment with disease-modifying agents for at least 6 months. Inclusion (control): 41 age-matched unaffected individuals (21 women, 20 men), selected among relatives and caregivers of the pwMS and hospital staff, composed the control group. Exclusion: n.a. | N: 45 (MS); Gender: M/F: 22/23; Mean age (MS): 51.2 ± 11.8 (M); 49.4 ± 9.0 (F); N: 41 (Control): Gender: M/F: 20/21; Mean age: 49.6 ± 14.4 (M); 46.7 ± 14.6 (F); Spasticity severity (MAS): n.a. |
Rahimzadeh et al., 2017 | To investigate how severity of spasticity can affect quiet standing balance control in individuals following stroke. | Participants with stroke: (1) individuals with low plasticity (MAS score < 2); (2) individuals with high plasticity (MAS score > 2). | Inclusion: (1) the ability to stand independently, with and without; eyes open for at least 10 min. Exclusion: (1) inability to stand unassisted, (2) inability to follow simple instructions due to cognitive impairments as determined; by clinicians, (3) fixed ankle contracture, 4) or being treated with botulinum toxin injections within the past 3 months of study participation. | N: 12 (low spasticity); Gender: M/F: 8/4; Mean age: 74.3 ± 3.4; Spasticity severity (MAS): 0–3; N: 15 (high spasticity); Gender: M/F: 11/4; Mean age: 61.8 ± 3.0. |
Aleksić, Antonina, and Dejan B. popović, 2021 | To develop a simple quantitative objective measure of spasticity, based on pendulum test | Complete spinal cord injury. | Inclusion: (1) complete lesion above the Th12; (2) stable neurological and medical status; no autonomic dysreflexia; (3) no cognitive disorders; and (4) no medical history of hearing or balance disorders. Exclusion: n.a. | N: 6; Gender: M/F: 3/3; Age: 25–58 years old; Spasticity severity (MAS): 0–4. |
Garcia et al., 2021 | To explore a novel movement quality metric, the estimation of gait smoothness by the spectral arc length (SPARC), in individuals with a chronic stroke displaying mild/moderate or severe motor impairment while walking in an outdoor environment. | (1) Chronic stroke group; (2) Control group | Inclusion (stroke): (1) aged between 18 and 80 years; (2) with a diagnosis of cortical or subcortical unilateral cerebrovascular accident confirmed by imaging; (3) time since the stroke from 6 months to 10 years; (4) ability to walk at least 10 m with or without assistive devices, and (5) minimum score of 20/30 points (illiterate) or >24/30 points (literate) in the Mini-Mental State Examination (MMSE). Exclusion (stroke): (1) clinical diagnosis of musculoskeletal diseases, (2) significant visual deficit, and (3) history of falls in the last 3 months. Exclusion (control group): previous history of neurological or musculoskeletal disorders that induced visible gait abnormalities. | N: 32 (control); Gender: M/F: 22/10; Mean age: 56.81 ± 8.88; N: 32 (stroke); Gender: M/F: 22/10; Mean age: 56.84 ± 9.10; Spasticity severity (MAS): 0–4. |
Kowal et al., 2020 | To evaluate the temporospatial parameters of gait and assessed the maximal isometric and isokinetic torque production of the plantar flexor and dorsiflexor muscles. | (1) Stroke; (2) control group. | Inclusion (spasticity group): (1) the normal range of motion values for both ankle joints, (2) no decreased strength of the muscles acting on ankle joints in a physical examination, and (3) no cognitive or mental disorders. Exclusion (spasticity group): (1) a level of spasticity higher than grade one on the MAS, (2) severe limb pain, (3) sensory impairment, (4) visual impairment, (5) cognitive impairment, (6) balance disturbances, (7) the presence of other neuromuscular or musculoskeletal disorders, and (8) the inability to independently walk a distance of at least ten metres. | N:15 (control); Gender: M/F: 7/8; Mean age: 32.3 ± 4; N:15 (stroke); Gender: M/F: 7/8; Mean age: 57.2 ± 11; Spasticity severity (MAS): 0–1. |
Ang et al., 2018 | To present a method based on a human upper limb model that assesses the severity of spasticity in patients with stroke objectively | Stroke. | Inclusion: n.a.; Exclusion: n.a. | N: 15; Gender: M/F: 7/8; Mean Age: 56.9 ± 10.4; Age: 32–75 years old; Spasticity severity (MAS): 0–1+. |
Varvarousis et al., 2021 | to provide evidence of the beneficial effect of intramuscular BoNT-A injections on characteristics of gait pattern on patients suffering from upper motor neuron lesion with equinovarus deformity, particularly with regards to spatiotemporal parameters. | Post-stroke. | Inclusion: (1) age from 18 to 75 years, (2) patients had to be able to walk either freely or while wearing a splint or by the use of a crutch, (3) level of spasticity ≥1 + on the modified Ashworth scale, (4) poststroke period at least 6 months and nonsurgical operation on the lower extremities. Exclusion: (1) patients with dementia or aphasias, (2) history of previous injection of BoNT-A the last six months, (3) fixed joint posture (contraction), and (4) hospitalization and pregnancy. | N: 13; Gender: M/F: 9/4; Age: 37–73 years old; Spasticity severity (MAS): 1+–3. |
Author [Ref] | IMU Sensor Type & Specifications | Location/s | Calculated Parameters From IMU | IMU Assessment Protocol | Environment | Main Findings |
---|---|---|---|---|---|---|
Zhang et al., 2019 | MPU9250, InvenSense (“home-made system”); 100 Hz; dimensions: n.a.; weight: n.a. | Ipsilateral medial wrist. | Elbow stretch angular velocity, angle, angular acceleration, peak angular acceleration. | 2 × (15 to 20 trials of 3–7 s each) of passive elbow stretch with different velocities. Subjects were instructed to fully extend the tested elbow at 180 degrees with palm upward. Then, the tested elbow was passively pulled by an experimenter to elbow flexion at 40–60 degrees with a stretch range of 120–140 degrees. After a 2-s pause, it was passively stretched back to 180 degrees. The stretch velocity was determined subjectively in each trial by the experimenter and kept to almost constant during the stretch. | Controlled. | The experimental results demonstrated the usability and feasibility of the proposed framework, and it provides an objective, quantitative and convenient solution to spasticity assessment, suitable for clinical, community, and home-based rehabilitation. The suggested model showed a moderate goodness of fit (R2 = 0.4990, p < 0.001) to the MAS grades. |
Jung-Yeon et al., 2020 | Shimmer Sensing; 256 Hz; 51 × 34 × 14 mm; 23.4 g. | Dorsal side of the affected elbow or, the dominant side of the elbow for no spastic symptom subjects. | Acceleration and angular velocity parameters (during elbow stretch): (1) root mean square, (2) mean, (3) standard deviation, (4) energy, (5) spectral energy, (6) absolute difference, (7) variance extracted from pitch and roll, (8) signal magnitude area (SMA) and, (9) signal vector magnitude (SV). | The therapist held the affected arm of a participant still (quasi-static state) to stabilize signals of IMUs, then had the elbow moved by one cycle per second. | Controlled. | A machine-learning algorithm, random forest (RF), performed well, achieving up to 95.4% accuracy. Findings demonstrated how wearable technology and machine learning can be used to generate a clinically meaningful index but also offers rehabilitation patients an opportunity to monitor the degree of spasticity, even in nonhealthcare institutions where the help of clinical professionals is unavailable. |
Rech et al., 2020 | BTS G-WalkSampling rate:100 Hz; 70 × 40 × 18 mm; 37 g. | S1 vertebrae | LL (motor) test IMU: gait velocity (m/s), cadence (steps/min), stride length (m), and step length (m). | LL test: 10 m walking test and the Timed up and go test (TUG) and accelerations during the sit to stand check. | Controlled. | FMA correlated with motor performance (upper and lower limbs) and with movement quality (upper limb). Modified Ashworth scale correlated with movement quality (upper limb). Cut-off values of 9.0 cm in trunk anterior displacement and 57 m/s in gait velocity were estimated to differentiate participants with mild/moderate and severe compromise according to the FMA. Gait parameters measured by the IMU showed a moderate correlation with severity of motor function and level of spasticity. These results suggest that the FMA can be used to infer about motor performance and movement quality in chronic poststroke individuals with different levels of impairment. |
Pau et al., 2020 | Actigraph GT3X; sampling rate at 30 Hz; 38 × 37 × 18 mm; 27 g. | Non-dominant wrist (acceleration). | (1) Step counts (SC); (2) vector magnitude counts (VM); (3) levels of PA intensity (classified into three categories). | Day to day physical activity (PA), for 7 consecutive days. | Day-to-day. | Women with MS spent more time in sedentary behaviour and exhibited a reduced amount of light intensity activity with respect to men, while MVPA was similar across sexes. However, in comparison with unaffected individuals, the overall PA patterns appear significantly modified mostly in women who, in presence of the disease, present increased sedentary behaviour, reduced MVPA, number of daily steps and VM counts. The number of daily steps calculated from IMU for both women and men regardless of disability level was 9032 steps/day.The findings of the present study highlight the urgency of including sex as variable in all studies on PA in pwMS. |
Rahimzadeh et al., 2017 | SwayStar, Balance International Innovations GmbH; 100 Hz; 150 × 110 × 90 mm; 750 g. | Mounted near the lumbar region of the trunk. | (1) Trunk sway (angular velocity) (2) displacement in the pitch (anterior–posterior) and (3) roll (mediolateral) directions. | Altering order of: (1) 2 × (eyes open: participants stood still as possible for 80 s on force plate) and (2) 2 × (eyes close: participants stood still as possible for 80 s on force plate). | Controlled. | The high spasticity group demonstrated greater ML COP velocity, trunk roll velocity, trunk roll velocity frequency amplitude at 3.7 Hz, and trunk roll velocity frequency amplitude at 4.9 Hz (measured by the IMU), particularly in the eyes closed condition (spasticity by vision interaction). ML COP MPF was greater in the high spasticity group. Individuals with high spasticity after stroke demonstrated greater impairment of balance control in the frontal plane, which was exacerbated when vision was removed. |
Aleksić, Antonina, and Dejan B. popović, 2021 | 2 × IMU: 3F-FIT FABRICANDO FABER; sampling at 1 kHz; dimensions: n.a.;weight: n.a. | (1) Thigh; (2) shank. | (1) A defining the exponential fit to the spastic torque (angular velocity and angle); (2) the new measure spasticity scale SPAS. | (1) Spasticity assessment: modified Ashworth scale. (2) pendulum test: the examiner released the lower leg from the knee joint’s full extension, and the shank and foot were swinging freely. | Controlled. | Introduction of new spasticity scale (SPAS), which was found highly correlated with the modified Ashworth score. |
Garcia et al., 2021 | BTS G-Walk; sampling at 100 Hz; 70 × 40 × 18 mm; 37 g. | Attached to the subjects’ waists covering the L5 S1 segments. | The trunk angular velocities (yaw, roll, and pitch) (in °/s). | (1) Lower limb motor impairment: Fugl-Meyer Assessment (2) MAS was used to evaluate resistance to passive movements. (3) Gait assessment: walk at self-selected speed on a 10 m pathway. | Controlled. | Individuals with a chronic stroke displayed reduced smoothness in the yaw and roll angular velocities while walking in an outdoor environment. The IMU parameters showed that mild and moderate stroke group presented less smooth-ness gat than the control group (p = 0.015). The quantification of gait smoothness using the SPARC metric may represent an additional outcome in clinical assessments of gait in individuals with a chronic stroke. |
Kowal et al., 2020 | BTS G-Walk; Sampling rate: n.a.; 70 × 40 × 18 mm; 37 g. | (1) at the level of the sacral bone (S1) for gait analysis (2) TUG: the level of the lumbar spine (L2). | (1) (a) Gait cadence (GCAD) [steps/min], (b) gait speed (GSP) [m/s], (c) gait cycle (GC) for the single stance phase [%] (d) (2) (a) stand-to-sit VTA [m/s²], (b) sit-to-stand VTA [m/s²] between the post-stroke and control groups. | Gait analysis, 7 m walk with self-selected speed. Repetitions of this movement task were recorded for further analysis of the mean course and to extract the pattern of representative data, following by TUG test. | Controlled. | Post-stroke patients had statistically significantly lower gait cadence than healthy participants (17%, p < 0.05). Statistically significantly lower values of vertical acceleration were also noted during a sit-to-stand movement task (42%, p < 0.05). In nutshell, Despite the low intensity of spasticity and early phase after stroke, differences in the muscle torque production and temporo-spatial parameters, as well as the correlations between them, were noticeable. |
Ang et al., 2018 | 3 × IMUs (APDM Opal™ wireless); sampling rate: n.a.; 43.7 × 39.7 × 13.7 mm; 25 g. | Upper limb: (1) flat portion of the sternum, just below the neck (2) middle part of the upper arm and, (3) lower arm. | Upper limb joint torques calculated by measured joint angles velocities and accelerations using IMUs. | Medium and fast arm speed tests of motion. The patient sat on a chair with the arms resting in a relaxed position beside the body for 5 s before the therapist held up the patient’s arm. The therapist then extended the patient’s elbow in 2 to 3 s for slow speeds, in 1 to 2 s for medium speeds, and as quickly as possible without causing pain to the patient for fast speeds. For each speed range, the tests were performed four times with one-minute rest after two repetitions. A total of 12 tests were carried out for each patient. | Controlled. | The estimated muscle activation profiles, calculated by measured joint angles velocities and accelerations data obtained by IMUs, have a high correlation (0.707) to the EMG signal profiles. The null hypothesis that the rankings of the severity using the model and the MAS assessment have no correlation has been tested and was rejected convincingly (p ≈ 0.0003). These findings suggest that the model has the potential to complement the existing practices by providing an alternative evaluation method. |
Varvarousis et al., 2021 | 7 × RehaGait Pro Analyzer; sampling rate: n.a.; 60 × 15 × 35 mm; 34 g. | (1) Ankle joints, (2) calves, (3) thighs and (4) at the theoretical body centre of mass. | Spatiotemporal specific parameters during walking and standing: (1) Min Ankle, (2) Max Ankle angle, (3) Min knee angle, (4) Max knee angle, (5) Heel Strike angle, (6) Toe Off angle, (7) Max foot height, and (8) Max circumduction. | (a) Gait: (IMU) the patient had to walk, in a self-chosen speed, across a walkway covering at least 15 m. The procedure was repeated 4 times, with short intervals between the repetitions if the patient felt fatigue or dizziness. | Controlled. | Comparison of the parameters calculated from the IMU, between normal and hemiplegic lower extremity before BoNT-A injection showed statistically significant differences for the parameters: Max Ankle angle (p = 0.033), Max Knee angle (p = 0.006), Max foot height (p = 0.008) and Max circumduction (p = 0.013), Min Ankle angle (p = 0.006), Max Ankle angle (p = 0.039), Max Knee angle (p = 0.007), Max foot height (p = 0.004) and Max circumduction (p = 0.033). While all spatio-temporal parameters of motion analysis and balance improved for most of the patients after botulinum toxin injection, only one parameter, the normal to hemiplegic step length, reached statistically significant improvement (p < 0.03). Moreover, the modified Ashworth score was statistically improved post injection (p < 0.001). In conclusion the use of botulinum toxin injections is beneficial in post stroke patients as this is depicted in gait parameters improvement which accompanies the spasticity reduction. |
Question | Zhang et al., 2019 | Jung-Yeon et al., 2020 | Rech et al., 2020 | Pau et al., 2020 | Rahimzadeh et al., 2017 | Aleksić, Antonina, and Dejan B. Popović., 2021 | Garcia et al., 2021 | Kowal et al., 2020 | Ang et al., 2018 | Varvarousis et al., 2021 |
---|---|---|---|---|---|---|---|---|---|---|
Q1. Is the hypothesis/aim/objective of the study clearly described? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q2. Are the clearly described in the Introduction or Methods? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q3. Are the characteristics of the participants clearly described (including age, sex, and status as healthy/injured/pathological)? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q4. Are the inclusion/exclusion criteria described and appropriate? | N | N | Y | N | Y | N | Y | Y | Y | Y |
Q5. Are the main findings of the study clearly described? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q6. Are estimates of the random variability in the data for the main outcomes provided? | Y | N | Y | Y | Y | N | Y | Y | N | Y |
Q7. Have actual probability values been reported for the main outcomes? | N | Y | N | Y | Y | N | Y | Y | Y | Y |
Q8. Are the participants representative of the entire population from whichthey were recruited? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q9. Are the setting and conditions typical for the population represented by the participants? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q10. Are the statistical tests used to assess the main outcomes appropriate? | Y | Y | Y | Y | Y | N | Y | Y | Y | Y |
Q11. Are the main outcome measures used accurate (valid and reliable)? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
Q12. Have test-retest reliability and minimum detectable change values of the sensors reported? | N | N | N | N | N | N | N | N | N | N |
Q13. Is a sample size justification, power description, or variance and effect estimates provided? | N | N | Y | N | N | N | Y | N | N | N |
Zhang et al., 2019 | Jung-Yeon et al., 2020 | Rech et al., 2020 | Pau et al., 2020 | Rahimzadeh et al., 2017 | Aleksić, etal., 2021 | Garcia et al., 2021 | Kowal et al., 2020 | Ang et al., 2018 | Varvarousis et al., 2021 | |
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Number of IMU Sensors | 1 | 1 | 1 | 1 | 1 | 2 | 1 | 1 | 3 | 7 |
Commercial Device | + | + | + | + | + | + | + | + | + | |
Sampling Frequency: <50 Hz | + | N.R. | N.R. | N.R. | ||||||
Sampling Frequency: 50–200 Hz | + | + | + | + | N.R. | N.R. | N.R. | |||
Sampling Frequency: 200–1000 Hz | + | + | + | N.R. | N.R. | N.R. | ||||
Weight: <50 g | N.R. | + | + | + | N.R. | + | + | + | + | |
Weight: >500 g | N.R. | + | N.R. | |||||||
Upper Limb Placement | + | + | + | + | ||||||
Lower Limb Placement | + | + | + | |||||||
Trunk Placement | + | + | + | + | ||||||
Controlled Environment | + | + | + | + | + | + | + | + | + | |
Day–Day environment | + |
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Weizman, Y.; Tirosh, O.; Fuss, F.K.; Tan, A.M.; Rutz, E. Recent State of Wearable IMU Sensors Use in People Living with Spasticity: A Systematic Review. Sensors 2022, 22, 1791. https://doi.org/10.3390/s22051791
Weizman Y, Tirosh O, Fuss FK, Tan AM, Rutz E. Recent State of Wearable IMU Sensors Use in People Living with Spasticity: A Systematic Review. Sensors. 2022; 22(5):1791. https://doi.org/10.3390/s22051791
Chicago/Turabian StyleWeizman, Yehuda, Oren Tirosh, Franz Konstantin Fuss, Adin Ming Tan, and Erich Rutz. 2022. "Recent State of Wearable IMU Sensors Use in People Living with Spasticity: A Systematic Review" Sensors 22, no. 5: 1791. https://doi.org/10.3390/s22051791
APA StyleWeizman, Y., Tirosh, O., Fuss, F. K., Tan, A. M., & Rutz, E. (2022). Recent State of Wearable IMU Sensors Use in People Living with Spasticity: A Systematic Review. Sensors, 22(5), 1791. https://doi.org/10.3390/s22051791