A Rapid Review on the Effectiveness and Use of Wearable Biofeedback Motion Capture Systems in Ergonomics to Mitigate Adverse Postures and Movements of the Upper Body
Abstract
:1. Introduction
1.1. Work-Related Diseases and Disorders
1.2. Work Technique Training
1.3. Sensor-Based Training
1.4. Research Gap
1.5. Aim
2. Methods
2.1. Eligibility Criteria
2.2. Search Strategy
2.3. Study Selection
2.4. Data Extraction
- Study objective and design, including the utilization of a comparison or control group.
- Description of study settings and tasks performed.
- Participant details, including the count, level of experience, gender, age, body mass, stature, and inclusion criteria.
- Duration of feedback follow-up and description of conditions or sessions, such as baseline and feedback conditions.
- Characteristics of the feedback, categorized based on the feedback taxonomy [45], including type, modality, initiation, and timing.
- Threshold for initiating feedback (feedback trigger) based on exposure.
- Motion capture systems and instruments utilized, including the type of device and its position on the body.
- Systems and instruments used for analyzing motion capture data and providing feedback, including device type and position on the body.
- Level of wearability of the systems and instruments.
- The results of each study (where proportional differences were extracted, or calculated if not provided by the original source).
2.5. Risk of Bias Assessment/Methodological Quality Assessment
- Fulfilling the criterion,
- Not fulfilling the criterion,
- Not reported, i.e., no information could be retrieved to answer the question,
- Not applicable, i.e., the criterion was judged as not applicable for the study design.
2.6. Strength of Eavidence Assessment
3. Results
3.1. Quality Assessment
- Reporting the participation rate of eligible persons (not fulfilling the criterion, n = 15)
- Blinding of assessors (not fulfilling the criterion, n = 15)
- Reporting a priori statistical power calculation (not fulfilling the criterion, n = 12).
Study | Criteria | Rating | |||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 | ||
Ailneni et al. [84] | + | + | NR | NA | NR | NA | + | + | − | + | + | NR | + | − | MQ |
Bazazan et al. [85] | + | + | NR | + | NR | + | + | + | − | + | − | NR | + | − | MQ |
Boocock et al. [86] | + | + | NR | + | + | NA | + | + | + | + | + | NR | + | + | HQ |
Bootsman et al. [87] | + | + | NR | NA | NR | + | + | + | − | + | + | NR | + | − | MQ |
Doss et al. [74] | + | + | NR | NA | NR | + | + | + | − | + | + | NR | + | − | MQ |
Kamachi et al. [79] | + | + | NR | + | + | + | + | + | + | + | + | NR | + | + | HQ |
Kuo et al. [73] | − | + | NR | NA | + | NA | + | + | − | + | + | NR | + | − | MQ |
Langenskiöld et al. [76] | + | + | NR | NA | NR | + | + | + | − | + | + | NR | + | − | MQ |
Lim et al. [75] | + | + | NR | NA | NR | + | + | + | + | + | + | NR | + | + | HQ |
Lind et al. [71] | + | + | NR | NA | NR | + | + | + | + | + | + | − | + | + | HQ |
Lind et al. [78] | + | + | NR | NA | NR | + | + | + | − | + | + | − | + | − | MQ |
Lind et al. [77] | + | + | + | NA | NR | + | + | + | + | + | + | − | − | + | HQ |
Owlia et al. [70] | + | + | NR | + | NR | + | + | + | − | + | + | NR | + | − | MQ |
Ribeiro et al. [54] | + | + | NR | − | NR | + | + | + | − | + | − | − | − | − | LQ |
Ribeiro et al. [72] | + | + | NR | + | + | + | + | + | + | + | + | + | + | + | HQ |
Thanathornwong et al. [88] | − | + | NR | NA | NR | + | NR | + | − | − | + | NR | + | − | LQ |
Study | Criteria | Rating | |||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 | ||
Ribeiro et al. [54] | + | − | − | − | NR | − | − | + | NR | NR | − | − | NR | + | LQ |
Ribeiro et al. [72] | + | + | + | + | + | + | + | + | NR | NR | + | + | + | + | HQ |
3.2. Study Design, Methodology, and Instruments
3.2.1. Study Design
3.2.2. Work Setting, Work Tasks, and Participants
3.2.3. Feedback
3.2.4. Feedback and Motion Capture System
3.3. Effectiveness of Feedback in Controlled Environments
3.3.1. Effect during Feedback Administration
3.3.2. Effect Directly after Feedback Administration
3.3.3. Retained Effects: Short and Midterm
3.4. Effectiveness of Feedback in Real Work Environments
3.4.1. Effect during Feedback Administration
3.4.2. Effect Directly after Feedback Administration
3.4.3. Retained Effects: Midterm
3.4.4. Retained Effects: Very Short, Short, Long, and Very Long Term
4. Discussion
4.1. General Summary of the Findings
4.2. General Interpretation of the Results
4.2.1. Application of Systems and Sensors
4.2.2. Effectiveness of Different Types of Feedback
4.2.3. Study Samples
4.3. Limitations
4.3.1. Limitations of the Evidence
4.3.2. Limitations of the Review Processes
4.4. Practical Implications and Future Research
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Search Strings
“feedback” or “biofeedback” AND “posture$” or “postural” or “movement$” AND “neck” or “trunk” or “spine” or “upper back” or “lower back” or “arm$” or “wrist$” The following terms were excluded “gait”, “child*”, “rehab*”, “parkinson*”, “*stroke*”, “cerebral palsy”, “spinal cord injury”, “prosthesis”, and “therap*”. Review articles were excluded. The search terms were applied to the abstract of each source, and covered the period 1 January 2020 to 30 November 2023. |
“feedback” or “biofeedback” AND “posture” or “postures” “postural” or “movements” AND “neck” or “trunk” or “spine” or “upper back” or “lower back” or “arm” or “arms” or “wrist” or “wrists” The following terms were excluded: “parkinson”, “stroke”, “child”, “cerebral palsy”, “spinal cord injury”, “prosthesis”, “therap*”, and “cadaver”. Review articles were excluded. The search terms were applied to the abstract, title and keywords of each source, and covered the period 1 January 2020 to 1 December 2023. |
Appendix B. The Criteria Used to Assess the Methodological Quality
Item | Criteria |
---|---|
1. Research question/objective clearly stated | The research question or objective of the study was clearly stated, and the outcome (dependent variable) was described at least on a general level |
2. Study population clearly specified and defined | Clearly defined study population and inclusion/exclusion criteria, and the inclusion/exclusion criteria were consistently applied to all participants |
3. Participation rate of eligible persons ≥50% | The participation rate of eligible persons was ≥50% of the total identified pool of eligible persons |
4. Subjects recruited from same/similar populations | All subjects were recruited from the same or similar populations, with uniformly applied inclusion/exclusion criteria |
5. Sample size justification | The sample size is described and justified, ensuring it is sufficiently large to detect a difference in the main outcome with at least 80% power |
6. Exposure(s) measured prior to outcome(s) | Exposures were measured before outcomes |
7. Sufficient timeframe | The timeframe for feedback was described and was sufficient to induce behavioral changes |
8. Dependent variable measured in category- or as continuous variable | The dependent variable (e.g., posture or movements) was assessed on a continuous or categorical scale |
9. Independent variables clearly and measured appropriately | Relevant independent variables were controlled or measured, including the amount of work performed per time unit, and if the feedback trigger was clearly defined and consistently implemented |
10. Dependent variable(s) assessed more than once | The dependent variable(s) was assessed more than once |
11. Dependent variable clearly defined and adequately assessed | The dependent variable was clearly defined and adequately assessed |
12. Blinding of assessors | The assessors were blinded to the participants’ group assignment. |
13. Loss to follow-up after baseline of ≤20% | The loss to follow-up after baseline is no more than 20%, ensuring data from at least 80% of participants are included in the final analysis |
14. Adjusted for key confounding variables | The study adjusts for key confounding variables that could alter the outcome results |
Item | Criteria |
---|---|
1. Study description, randomized RCT | The study was described as a randomized controlled trial and provides adequate details about the study design |
2. Adequate method of randomization | A suitable randomization method was used, e.g., computer-generated random assignment of participants |
3. Concealed treatment allocation | The process of assigning participants to group (e.g., intervention versus control) was concealed |
4. Providers and participants blinded | Both those administering the intervention and the participants receiving it were blinded to group assignment |
5. Assessors blinded the participants | Assessors evaluating outcomes were blinded to group assignment |
6. Baseline characteristics that could affect outcomes | Baseline characteristics, such as age, gender, experience, occupation, job exposure, and disorders were reported and balanced between groups |
7. Endpoint dropout rate of ≤20% | The dropout rate at the end of the study was ≤20% |
8. Endpoint dropout rate between treatment groups of ≤15% | The dropout rate between groups at the end of the study was ≤15% |
9. High adherence to intervention protocols in each group | Participants in each group adhered to the intervention protocol |
10. Other interventions avoided or similar in the group | Participants did not receive additional interventions that could confound the study results, or any such interventions were similar between groups |
11. Outcomes assessed using valid and reliable measures | The outcomes of the study were measured using accurate and precise tools/methods |
12. Sample size justification | The sample size was described and justified, ensuring it is sufficiently large to detect a difference in the main outcome between groups with at least 80% power |
13. Prespecified analysis of outcomes reported | The analysis of the outcomes was specified a priori conducting the analysis |
14. Randomized participants analyzed in original group | Participants were analyzed based on their original group assignment |
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Eligibility Criteria | Descriptions |
---|---|
Evaluating wearable instruments or systems that monitor postures or movements of the upper body (i.e., neck/head, trunk, arms, or wrist/hand) and provide feedback to the user (wearer) based on this information. | Instruments or systems that are not ambulatory, such as those that are depending on fixed instruments (e.g., video-based motion tracking systems) are not included. Additionally, instruments or systems that do not directly base the feedback on postures and/or movement of the upper body (e.g., muscle activation using sEMG) are not included. Only instruments or systems providing feedback directly to the wearer were considered (i.e., not via an instructor). Studies using other types of tools to provide feedback, such as elastic bands or dowels, are also excluded. Evaluations of activities targeting the lower part of the body, such as legs or feet (e.g., studies focusing on gait), are also excluded. |
Have evaluated feedback on real work tasks or tasks closely resembling real work tasks, and reported the effects of postures and/or movements of the upper body. | Studies involving activities with a low resemblance to work-related tasks or where work-related tasks are not reported separately from leisure time activities are excluded. Examples include tasks where participants are instructed to move their arms to follow a pre-set trajectory in space or manipulate non-physical (virtual) objects. Similarly, studies where participants are instructed to sit on unusual objects without performing work-related tasks are also excluded. However, tasks that closely mimic real work, such as computer typing (even if not an actual paid task), are considered to meet the inclusion criteria. Furthermore, studies solely focusing on outcomes such as usability and wearability are not included. |
Having an adult population aged 18–67 years who are not from a specific patient population. | Studies involving subjects from specific patient populations, such as those with particular medical conditions, are excluded. However, studies including a normal working population, where musculoskeletal disorders (MSDs) could occur, but participants were not restricted from performing their work tasks, are deemed to meet the inclusion criteria. |
Having at least eight participants receiving the feedback, and the effect of feedback is tested statistically. | A sample size lower than eight participants is acceptable only if it has been justified based on power calculations. This implies that in the final data analysis, there should be a minimum of eight participants aged 18–67 receiving feedback, or at least eight participants for each type of feedback included (in cases where more than one feedback type is provided). |
Duration Classification | Criterion/Criteria (Time Elapsed) |
---|---|
During feedback | Simultaneous to feedback administration |
Directly after | Directly after, up to ≤4 h after feedback administration |
Very short term | More than four hours, and up to ≤1 week after feedback administration |
Short term | More than one week, and up to ≤1 month after feedback administration |
Midterm | More than one month, and up to ≤3 months after feedback administration |
Long term | More than 3 months, and up to <12 months after feedback administration |
Very long term | Twelve months or more after feedback administration |
Strength of Evidence | Criteria |
---|---|
Strong evidence | Consistent findings among three or more studies of at least medium quality, including a minimum of two high-quality studies. |
Moderate evidence | Consistent findings among two or more studies of at least medium quality, including at least one high-quality study. |
Limited evidence | Findings from at least one high-quality study or two moderate-quality studies. |
Very limited evidence | Findings from one moderate-quality study. |
Inconsistent evidence | Inconsistent findings among multiple studies (e.g., one or multiple studies reported a significant result, whereas one or multiple studies reported no significant result). |
Conflicting evidence | Contradictory results between studies (e.g., one or multiple studies reported a significant result in one direction, whereas one or multiple studies reported a significant result in the other direction). |
No evidence | Insignificant results derived from multiple high or medium quality studies. |
Study | Objective | Study Design | Comparison Group |
---|---|---|---|
Ailneni et al. [84] | Evaluating the effectiveness of vibration feedback in reducing flexion/inclination angles of the head and neck, as well as gravitational moment on the neck during sitting and standing computer work. | CS | no CG |
Bazazan et al. [85] | Evaluating the effectiveness of augmented feedback in preventing slouching or postural kyphosis and occurrence of musculoskeletal symptoms and fatigue among control room operators. | CS/LN | CG |
Boocock et al. [86] | Evaluating the effectiveness of real-time external biofeedback to modify lumbosacral posture and trunk flexion in repetitive lifting task compared to no biofeedback. | CS | CG |
Bootsman et al. [87] | Evaluating the effectiveness of augmented feedback in reducing episodes of lower back flexion | CS | no CG |
Doss et al. [74] | Evaluating the effectiveness of augmented feedback on reducing peak trunk kinematics, e.g., flexion angle, velocity, and acceleration, in patient transfer tasks. | CS | no CG |
Kamachi et al. [79] | Evaluating the effectiveness of augmented feedback to reduced time in end-range lumbar spine flexion while performing care tasks, and skill transfer to other tasks. | CS/SLN | CG |
Kuo et al. [73] | Evaluating the effectiveness of vibration feedback to reduce occurrence of slouched postures in seated computer task | CS | no CG |
Langenskiöld et al. [76] | Evaluating the effectiveness of vibration feedback to reduce time in adverse trunk inclination angles and dominant upper arm elevation angles | CS | no CG |
Lim et al. [75] | Evaluating the effectiveness of vibration feedback to reduce sagittal trunk flexion angles in construction work tasks by providing vibrotactile feedback and compare the effectiveness of two feedback locations. | CS | no CG |
Lind et al. [71] | Evaluating the effectiveness of vibration feedback to reduce time in adverse trunk inclination angles and arm elevation angles in simulated industrial order picking. | CS | no CG |
Lind et al. [78] | Evaluating the effectiveness of vibration feedback to reduce time in arm elevation angles in letter sorting. | CS | no CG |
Lind et al. [77] | Evaluating the effectiveness of vibration feedback to reduce time in adverse trunk inclination angles in real warehouse order picking. | CS/SLN | No CG |
Owlia et al. [70] | Evaluating the effectiveness of auditory feedback to reduce peak lumbar spine flexion in caregiving tasks. | CS | CG |
Ribeiro et al. [72] | Evaluating the effectiveness of a lumbopelvic monitor and extrinsic feedback device to reduce occurrence of trunk inclination. | cluster RCT | CG |
Study | Setting | Tasks | Participants (Mean (SD): Age, Body Mass, Stature) and Eligibility |
---|---|---|---|
Ailneni et al. [84] | Lab | Computer typing | Nineteen participants (ten females and nine males), 24.5 (5.3) years, 66.8 (9.3) kg, 168.0 (12.3) cm. Eligibility: have a typing speed of at least 30 words per minute, have not had any pain in the upper extremities or lower back region within the past 7 days. |
Bazazan et al. [85] | Real work | Control room operations | A total of 188 control room operators (all male). Control group: 33.1 (4.0) years; body mass: NR; stature: NR; body mass index 25.5 (3.0). Intervention (feedback) group: 32.8 (5.3) years; body mass: NR; stature: NR; body mass index 25.0 (2.7). Eligibility: being a full-time control room operator with at least 1 year working experience, having no apparent physical and mental problem (self-reported). |
Boocock et al. [86] | Lab | Manual lifting and lowering a box | A total of 36 university students 1 (sex not reported) that were not experienced in manual handling or performed regular handling in their work. Control group (n = 16): 25.6 (5.1) years, 85.5 (13.8) kg, 1.84 (0.08) m. Intervention (feedback) group (n = 18): 25.7 (4.6) years, 79.8 (11.2) kg, 1.80 (0.08) m. Eligibility: no back injury or complaint in the last six months, not having undergone spinal surgery, not having a cardiovascular or neurological condition, and not having a musculoskeletal injury at the time of the study. |
Bootsman et al. [87] | Real work | Intensive care and home care tasks | Thirteen nurses (all female), 39.8 (13.6) years, body mass: NR, stature: NR. Eligibility: Not having a sedentary job and not suffering from low back pain. |
Doss et al. [74] | Lab | Patient transfer | Ten nursing students (all female), 26.1 (9.1) years, 61.7 (13.5) kg, 1.7 (0.08) m. Eligibility: no history of back pain in the last 12 months. |
Kamachi et al. [79] | Lab 6 | Patient transfer | Twenty healthy adults with no formal training in caregiving or patient handling (10 female, 10 male). Control group: (five female, five male), 23.6 (3.1) years, 75.6 (16.9) kg, 175.8 (9.2) cm. Intervention group: (five female, five male), 24.4 (3.7) years, 76.8 (8.2) kg, 177.6 (8.2) cm. Eligibility: being able to speak and understand English, not having previous caregiving experience or healthcare provider training, no back pain in the past six months or any musculoskeletal disorders related to the spine, and no musculoskeletal issues related to the spine. |
Kuo et al. [73] | Lab | Computer work | A total of 21 healthy young adults from university campus (twelve women, nine men), 23.3 (±2.9) years, 61.4 (±10.0) kg, 167.0 (±9.0) cm. Eligibility: age between 20–25 years. |
Langenskiöld et al. [76] | Lab | Office-type of manual handling tasks 2 | Ten participants 3 (eight women, two men, nine administrative office workers, and one industrial manual handler), 43.9 (12.0) years, 74.2 (10.6) kg, 166.6 (9.4) cm. Eligibility: not having restrictions in movement or pain from the dominant shoulder/arm, back, hip or knees. |
Lim et al. [75] | Lab | Construction tasks 5 | Fourteen healthy male participants (fourteen men, zero women), 26.1 (4.6) years, 75.4 (8.6) kg, 175.8 (38.2) cm. Eligibility: participants of 18–35 years with no construction work experience, and that have not received any formal training on safe construction work techniques and without preexistence of MSDs. |
Lind et al. [71] | Lab 7 | Manual warehouse order picking | Fifteen 4 warehouse workers (twelve men, three women), 39 (12) years, 88 (22) kg, 181 (10) cm. Eligibility: participants without musculoskeletal discomfort or disorders that could hinder the order picking task were included. |
Lind et al. [78] | Lab | Manual mail (letter) sorting to letter trays | Sixteen university students and staff (nine women, seven men), 25 (8) years, 70 (13) kg, 170 (13) cm. Novice (i.e., <3 months’ experience of mail sorting) Eligibility: Not having musculoskeletal discomfort or disorders that could hinder mail sorting. |
Lind et al. [77] | Real work | Manual warehouse order picking | Fifteen warehouse order pickers (fourteen men, one woman), 30.8 (11.5) years, 77.1 (11.3) kg, 179.3 (8.1) cm. Eligibility: currently working as a warehouse order picker and not having disorders or pain that would prevent performing regular work. |
Owlia et al. [70] | Lab 6 | Patient transfer | Twenty healthy adults with no formal training in caregiving or patient handling (10 female, 10 male). Control group: (six female, four male), 24.7 (2.7) years, mass (62.8 (10.2) kg, 172.1 (8.3) cm. Intervention group: (four female, six male), 28.1 (6.4) years, 71.3 (16.3) kg, 171.6 (7.2) cm. Eligibility: not reported, but seemed to target adult s (i.e., ≥18 years), participants with no formal training in caregiving or patient handling, that can speak and understand English, and that have no history of back pain in the last six months and no musculoskeletal issues related to the spine. |
Ribeiro et al. [72] | Real work | Health care | A total of 130 healthcare workers (110 women, 20 men), 45.3 (13.2) years, 70 (range: 61–84) kg, 162.6 (7.9) cm. Feedback group (53 women, 10 men), 48 (range: 36.5–55.0) years, 68 (range: 60–83.1) kg, 162.2 (7.5) cm. Control group: (57 women, 10 men), 47 (range: 31.5–56.0) years, 75 (range: 62–86) kg, 162.9 (8.4) cm. Eligibility: adult health care workers who were performing their regular work activities without any limitations such as limitations due to LBP or LBP symptoms and who are working at least 20 h per week. |
Study | Feedback Follow-Up Duration | Description of Design |
---|---|---|
Ailneni et al. [84] | During feedback | Order (counterbalanced order of the conditions 1), no baseline: (a) sitting (30 min 2, no feedback), (b) sitting (30 min 2, feedback), (c) standing (30 min 2, no feedback), (d) standing (30 min 2, feedback). Feedback condition duration: about 60 min |
Bazazan et al. [85] | Midterm (≤3 months) Long term (≥6 to <12 months) | Order: (a) baseline (no feedback); (b) feedback condition: feedback 30 min two times per workday for 12 weeks; (c) about 3 months after feedback condition (no feedback); (d) about 9 months after feedback condition (no feedback). Feedback condition duration: up to about 60 h |
Boocock et al. [86] | During feedback | Order (no baseline): lifting for 20 min (feedback group: with feedback, control group: without feedback). Feedback condition duration: about 20 min |
Bootsman et al. [87] | During feedback Directly after (≤4 h) | Order: (a) baseline (30 min, no feedback); (b) feedback condition (60 min, feedback); (c) retention test condition (60 min, no feedback); (d) feedback condition (60 min, feedback 3). Feedback condition duration: 120 min (60 + 60) |
Doss et al. [74] | Directly after (≤4 h) | Order: (a) baseline: three tasks each four times (<5 min, no feedback); (b) feedback session: three tasks each eight times (<10 min, feedback); (c) post-feedback session: three tasks each four times (<5 min, no feedback). Feedback condition duration: <10 min |
Kamachi et al. [79] | Directly after (≤4 h) 4 Short term (≤1 month) Midterm (≤3 months) | Order day 1: Trial 1 (~15 min, no feedback: intervention group and control group), video training (intervention group and control group); Trials 2 and 3 (each ~15 min, feedback 100% 8: intervention group, no feedback: control group); Trial 4 (~15 min, no feedback: intervention group and control group). Order day 2: Trial 5 (~15 min, no feedback: intervention group and control group); Trials 6 and 7 (each ~15 min, feedback 50% 8: intervention group, no feedback: control group); Trial 8 (~15 min, no feedback: intervention group and control group). Follow-up tests after 2 weeks (trial 9) and 2 months: Trials 9 and 10: previous tasks and a new task to test the skill transfer, no feedback for either group. Feedback condition duration: about 60 minutes 5 |
Kuo et al. [73] | During feedback | Order: random assignment to either conditions A or B: Condition A: 1 h without feedback then directly after 1 h with feedback; Condition B: 1 h with feedback then directly after 1 h without feedback. Feedback condition duration: about 1 h |
Langenskiöld et al. [76] | During feedback Directly after (≤4 h) | Order: (a) practice session, (b) baseline session (no feedback) 4–6 min, (c) intervention session (feedback) 8–12 min, (d) post-intervention session (no feedback) 4–6 min. Feedback condition duration: 8–12 min |
Lim et al. [75] | During feedback | Random order (conditions and tasks): three feedback conditions each performed in three tasks. Tasks: lifting/lowering (3.4 ± 1.5 min), shoveling (7.2 ± 1.3 min), rebar tying (6.9 ± 1.1 min) Feedback conditions: (a) no feedback, (b) feedback from vibration motor on the back, (c) feedback from vibration motor on the wrist Feedback condition duration: about 35 min |
Lind et al. [71] | During feedback Directly after (≤4 h) | Order: (a) practice session (no feedback), (b) baseline session (~6 min, no feedback), (c) intervention session 1 (~6 min, feedback), (d) intervention session 2 (~6 min, feedback), (e) post-intervention session (~6 min, no feedback). Feedback condition duration: about 12 min |
Lind et al. [78] | During feedback | Order: (a) practice session (no feedback), (b) baseline session (~1 min, no feedback), (c) work design session 9 (no feedback), (d) ergonomics instruction session 1 (~1 min, no feedback), (e) intervention session 1 (~1 min, feedback), (f) ergonomics instruction session 2 (~1 min, no feedback), (g) intervention session 2 (~1 min, feedback). Feedback condition duration: about 2 min |
Lind et al. [77] | During feedback Directly after (≤4 h) Very short term (≤1 week) Short term (≤1 month) | Order 6: (a) baseline session (~45 min, no feedback), (b) feedback session 1 (2 days after baseline, ~30 min, feedback), (c) feedback session 2 (~7 days after baseline, ~30 min, feedback), (d) post-feedback session 2 (directly after feedback session 2, ~30 min, no feedback), (e) follow-up 1 (~1 week after feedback session 2, ~45 min, no feedback), (f) follow-up 2 (~3 weeks after feedback session 2, ~45 min, no feedback). Feedback condition duration: about 60 min |
Owlia et al. [70] | Directly after (≤4 h) 7 | Order: Day 1 (1 h): (a) trial 1 (~10 min, no feedback: intervention group and control group), (b) video training (intervention group only), (c) trial 2 (~10 min, no feedback: intervention group and control group), (d) trials 3 and 4 (each ~10 min, feedback: intervention group, no feedback: control group). Day 2 (1 h): (e) trial 5 (~10 min, no feedback: intervention group and control group), (f) trials 6 and 7 (each ~10 min, feedback: intervention group, no feedback: control group), (g) trial 8 (no feedback: intervention group and control group). Feedback condition duration: about 40 min 5 |
Ribeiro et al. [72] | During feedback Very short term (≤1 week) Short term (≤1 month) Midterm (≤3 months) Long term (≥ 6 to <12 months) Very long term (≥ 12 months) | Order: (a) baseline, (b) intervention (4 weeks), (c) follow-up (after 1 week, 1 month, 3 months, 6 months, and 12 months). Feedback condition duration: 4 work weeks |
Study | Feedback Type | Feedback Initiation | Feedback Modality | Feedback Timing | Feedback Trigger |
---|---|---|---|---|---|
Ailneni et al. [84] | Corrective | System determined | Vibration | Concurrent (cumulative) | One body region (neck) and one feedback level: neck flexion/inclination angle >15° occurring >30 s. |
Bazazan et al. [85] | Corrective | System determined | Vibration or auditory 1 | Concurrent 2 | One body region (back) and one feedback level: Slouching trunk posture 3. |
Boocock et al. [86] | Corrective | System determined | Auditory | Concurrent | One body region (back) and one feedback level: lumbosacral range of motion >80% of maximum. |
Bootsman et al. [87] | Corrective | System determined | Auditory and vibration (condition 1) Auditory, vibration, and visual (condition 2) | Concurrent (cumulative) | One body region (back) and one feedback level: lower back flexion >20° for >1.5 s. Not more than 1 notification per 5 min. |
Doss et al. [74] | Corrective 4 | System determined | Auditory 5 | Concurrent | One body region (back) and one feedback level: trunk flexion >45°. |
Kamachi et al. [79] | Corrective | System determined | Auditory | Concurrent and fading | One body region (back) and two feedback levels: forward lumbar flexion 20° less than 70% maximum (intermittent tone), forward lumbar flexion >70% of maximum (continuous tone). Two variations of fading feedback: (a) feedback provided each time criteria were fulfilled (i.e., 100%), (b) feedback provided half of the time the criteria were fulfilled (i.e., 50%). |
Kuo et al. [73] | Corrective | System determined | Vibration | Concurrent (cumulative) | One body region (back/neck) and one feedback level: slouching posture (head, neck, and upper trunk). |
Langenskiöld et al. [76] | Corrective and reinforcing 6 | System determined | Vibration | Terminal | Two body regions (arm and back) and one feedback level each: trunk inclination >30° occurring >10% of the time, arm elevation >30° occurring >30% of the time. |
Lim et al. [75] | Corrective | System determined | Vibration | Concurrent (cumulative) | One body region (back) and two feedback levels: trunk inclination >45° (3 intermittent vibrations), if the vibration was triggered >2 times within 2 min (3 s continuous vibration). |
Lind et al. [71] | Corrective | System determined | Vibration | Concurrent | Two body regions (arm and back) and two feedback levels each (lower versus higher vibration intensity): arm elevation ≥30°, arm elevation ≥60°, trunk inclination ≥20°, trunk inclination ≥45°. |
Lind et al. [78] | Corrective | System determined | Vibration | Concurrent | One body region (arm) and two feedback levels (lower versus higher vibration intensity): arm elevation ≥30°, arm elevation ≥60°. |
Lind et al. [77] | Corrective | System determined | Vibration | Concurrent | One body region (back) and two feedback levels: trunk inclination >30° (intermittent vibration), trunk inclination >45° (continuous vibration). |
Owlia et al. [70] | Corrective | System determined | Auditory | Concurrent | One body region (back) and two feedback levels: forward lumbar flexion 20° less than 70% maximum (intermittent audible tone), forward lumbar flexion >70% of maximum (continuous audible tone). |
Ribeiro et al. [72] | Corrective | System determined | Auditory | Concurrent (cumulative) | One body region (back) and two feedback levels: condition 1: lumbopelvic forward bending ≥45° occurring continuous >5 s; condition 2: lumbopelvic forward bending ≥45° occurring within 25 s after condition 1. |
Study | Equipment for Analyzing the Exposure and Triggering the Feedback | Motion Sensor, Location and Attachment/Position Acc = Triaxial Accelerometers | Feedback Device, Location and Attachment/Position | Wearable |
---|---|---|---|---|
Ailneni et al. [84] | Commercial system Alex (NAMUInc., Seoul, South Korea). Smartphone Android application Bluetooth | One Acc (Alex 1) Neck: posterior side Location: posterior side of the neck Attachment: secured bilaterally around the ears | Commercial system: smartphone and smartphone application Location: posterior side of the neck Attachment: secured bilaterally around the ears | Wearable |
Bazazan et al. [85] | Custom | Motion sensor: not reported Location: the back Attachment: straps around the shoulders | Custom system: smartphone and smartphone application Trunk (back side) Straps around the shoulders | Wearable |
Boocock et al. [86] | Custom Custom-designed software that was run off a PC (built in LabView) | Two IMUs 2 (Shimmer Sensing, Ireland) Location: (backside) at first lumbar spinous process and at the sacral body (S1) Attachment: fixed to the skin | Custom system: custom-designed software that was run off a PC and built in LabView. Feedback from external in the room 2 | Partly wearable |
Bootsman et al. [87] | Custom Smartphone Android application Bluetooth communication | Two IMUs (LSM9DSO, STMicroelectronics, Sweden) Location: (back) lumbar spine vertebrae (L1 and L5) Attachment: in customized tight-fitting shirt | Custom system: smartphone and smartphone application Location and attachment: NR | Wearable |
Doss et al. [74] | Custom Smartphone Android application (PostureCoach, Toronto Canada), | Two accelerometer-based sensors (Shimmer, Dublin, Ireland) Location: (back) thoracic vertebrae (T3–T4) and lower back (L5–S1) Attachment: custom made vest-like and belt-like harness and secured with Velcro tape | Custom system: PostureCoach 1 smartphone and smartphone application Location and attachment: NR | Partly wearable |
Kamachi et al. [79] | Custom PostureCoach v0.2 Not wireless (cables) | Two IMUs (MTi-3, Xsens Technologies, Enschede, Netherlands) Location and attachment: (back) thoracic vertebrae (T10) using adjustable straps, and (back) approx. to sacrum and secured with a sacroiliac belt. | Custom system: PostureCoach 1 Located at waist height with a sacroiliac belt. | Wearable |
Kuo et al. [73] | Commercial system: Lumo Lift, Lumo Bodytech Inc., Palo Alto, CA, USA) Smartphone Android application Bluetooth communication | One Acc (Lumo Lift 1) Location: below the clavicle, and midway between the sternal notch and the acromion process. Attachment: on the skin | Commercial system: Location and attachment: same as motion sensor | Wearable |
Langenskiöld et al. [76] | Custom Smartphone Android application (ErgoRiskLogger 3) Bluetooth communication | Two IMUs (LPMS-B2 IMU, LP Research, Tokyo, Japan) Location: (back) about at the level of 1–2 thoracic vertebrae, and distal part of m. deltoideus Attachment: inside customized pockets of a tight stretchy workwear t-shirt | Custom system: the Smart Workwear System 1 Location: chest (upper part) and distal part of m. deltoideus Attachment: in customized pockets of a tight stretchy workwear t-shirt | Wearable |
Lim et al. [75] | Custom Bluetooth 4.2 Raspberry Pi 3 board and PC | Four IMUs (Mbientlab MetaMotionR+) Location: at sixth thoracic vertebra, right thigh, right shin, and dominant wrist Attachment: to the skin using hypoallergenic double-sided tape | Custom system Location: back at sixth thoracic vertebra and dominant wrist Attachment: to the skin using hypoallergenic double-sided tape | Partly wearable |
Lind et al. [71] | Custom Smartphone Android application (ErgoRiskLogger 3) Bluetooth communication | Two IMUs (LPMS-B2 IMU, LP Research, Tokyo, Japan) Location: (back) about at the level of 1–2 thoracic vertebrae, and distal part of m. deltoideus Attachment: inside customized pockets of a tight stretchy workwear t-shirt | Custom system: the Smart Workwear System1 Location: chest (upper part) and distal part of m. deltoideus Attachment: in pockets of customized straps | Wearable |
Lind et al. [78] | Custom Smartphone Android application (ErgoRiskLogger 3) Bluetooth | One IMU (LPMS-B2 IMU, LP Research, Tokyo, Japan) Location: distal part of m. deltoideus Attachment: inside a customized pocket of a tight stretchy workwear t-shirt | Custom system: the Smart Workwear System 1 Location: distal part of m. deltoideus Attachment: in a pocket of a customized strap | Wearable |
Lind et al. [77] | Custom Smartphone Android application (ErgoRiskLogger 3) Bluetooth | One IMU (LPMS-B2 IMU, LP Research, Tokyo, Japan) Location: (back) about at the level of 1–2 thoracic vertebrae Attachment: inside a customized pocket of a tight stretchy workwear t-shirt | Custom system: the Smart Workwear System 1 Location: chest (upper part) Attachment: in customized pockets of a tight stretchy workwear t-shirt | Wearable |
Owlia et al. [70] | Custom PostureCoach v0.2 Not wireless (cables) | Two IMUs (MTi-3, Xsens Technologies, Enschede, Netherlands) Location and attachment: (back) approx. 10th thoracic vertebrae using adjustable straps, and back approx. at the sacrum secured with a sacroiliac belt. | Custom system: PostureCoach 1 Location: around the hip (lateral position) Attachments: waistband | Wearable |
Ribeiro et al. [72] | Commercial system: Spineangel (Movement Metrics Ltd., Hamilton, New Zealand) | One Acc (Spineangel 1) Location: around the hip (lateral position) Attachments: belt or waistband | Commercial system: (Spineangel 1) Location: around the hip (lateral position) Attachments: belt or waistband | Wearable |
Study | Reported Effect from Feedback | |||
---|---|---|---|---|
Group mean (absolute) difference of max lumbosacral flexion (feedback group vs. control group) 8 | ||||
Boocock et al. [86] | During feedback administration | |||
Lumbosacral flexion angle: ↓8% 1,2 (0.033) 3 | Trunk flexion angle: ↓18.6% 1,2 (0.004) 3 | |||
Kamachi et al. [79] | Group mean difference in distribution of lumbar spine flexion angle (intervention group vs. control group) | |||
Effect directly after (≤4 h) feedback administration | ||||
Caregiving task 80th ↓17% (0.012) 95th ↓15% (0.036) | ||||
Short term, (≤1 month) after feedback administration | ||||
Caregiving task 80th ↓21% (0.001) 95th ↓23% (<0.001) | Skill transfer task 80th ↓ 4 (ns) 95th ↓ 4 (ns) | |||
Midterm, (≤3 months) after feedback administration | ||||
Caregiving task 80th ↓14% (0.024) 95th ↓13% (0.024) | Skill transfer task 80th ↓ 4 (ns) 95th ↓ 4 (ns) | |||
Lim et al. [75] | Group mean difference in distribution of trunk flexion angle (feedback condition vs. baseline) | |||
During feedback administration | ||||
Lifting-lowering task 7 | Shoveling 7 | Tying rebar 7 | ||
back-position 5 50th ↓38% (<0.05) 90th ↓18% (<0.05) 95th ↓14% (<0.05) wrist-position 6 50th ↓48% (<0.05) 90th ↓21% (<0.05) 95th ↓15% (<0.05) | back-position 5 50th ↓35% (<0.05) 90th ↓15% (<0.05) 95th ↓% 4 (ns) wrist-position 6 50th ↓34% (<0.05) 90th ↓16% (<0.05) 95th ↓15% (<0.05) | back-position 5 50th ↓% 4 (ns) 90th ↓% 4 (ns) 95th ↓% 4 (ns) wrist-position 6 50th ↓% 4 (ns) 90th ↑% 4 (ns) 95th ↑% 4 (ns) | ||
Lind et al. [71] | Median intra-individual differences in angle | |||
Trunk inclination angle | Arm elevation angle | |||
During feedback administration (first training session) | ||||
Cumulative time ≥20° ↓50% (0.003) ≥30° ↓50% (0.004) ≥45° ↓75% (0.007) | Distribution 50th ↓23% (0.002) 90th ↓31% (0.003) 99th ↓37% (0.006) | Cumulative time ≥20° ↓22% (ns) ≥30° ↑3% (ns) ≥45° ↑13% (ns) | Distribution 50th ↓5% (0.013) 90th ↓7% (0.004) 99th ↓3% (ns) | |
During feedback administration (second training session) | ||||
Cumulative time ≥20° ↓55% (0.001) ≥30° ↓54% (0.002) ≥45° ↓92% (0.007) | Distribution 50th ↓31% (0.001) 90th ↓31% (0.001) 99th ↓37% (0.003) | Cumulative time ≥20° ↓30% (0.039) ≥30° ↓11% (0.042) ≥45° ↓4% (0.006) | Distribution 50th ↓10% (0.006) 90th ↓15% (0.002) 99th ↓9% (ns) | |
Directly after (≤4 h) feedback administration (after first training session) | ||||
Cumulative time ≥20° ↓30% (0.001) ≥30° ↓35% (0.002) ≥45° ↓75% (0.005) | Distribution 50th ↓31% (0.001) 90th ↓12% (0.002) 99th ↓34% (0.003) | Cumulative time ≥20° ↓32% (0.033) ≥30° ↓19% (ns) ≥45° ↓4% (0.039) | Distribution 50th ↓10% (0.013) 90th ↓11% (0.004) 99th ↓7% (ns) |
Study | Reported Effect from Feedback | |||
---|---|---|---|---|
Ailneni et al. [84] | Group mean difference (feedback condition vs. control condition) | |||
During feedback administration | ||||
Sitting workstation Neck flexion: ↓6°, ↓9% (0.002) Head inclination: ↓2°, ↓2% (0.156) Neck moment: ↓0.4 Nm, ↓13% (0.028) | Standing workstation Neck flexion: ↓5°, ↓7% (<0.0001) Head inclination: ↓3°, ↓4% (0.038) Neck moment: ↓0.5 Nm, ↓15% (<0.0001) | |||
Doss et al. [74] | Group mean difference in peak trunk kinetics (feedback condition vs. baseline) | |||
Directly after (≤4 h) feedback administration | ||||
Flexion angle Task 1 Sling: ↓4° (ns) Task 2 Bed: ↓7.6° (0.05) Task 3 Adjust: ↓2.1° (ns) | Velocity (°/s) Task 1 Sling: ↑ 8.8 °/s (ns) Task 2 Bed: ↓9.9°/s (sign) Task 3 Adjust: ↑ 3.7 °/s (ns) | Acceleration (°/s2) Task 1 Sling: ↑ 231°/s2 (ns) Task 2 Bed: ↓1548°/s2 (sign) Task 3 Adjust: ↓45°/s2 (ns) | ||
Kuo et al. [73] | Group mean difference in angle (feedback condition vs. control condition) | |||
During feedback administration | ||||
Head tilt: ↑5% (ns) Neck flexion: ↓5%(<0.001) Upper cervical: ↓2% (0.004) Lower cervical: ↓2% (0.012) | Thoracic: ↓6% (0.033) Lumbar: ↓10% (ns) Pelvic plane: ↓30% (0.021) | |||
Langenskiöld et al. [76] | Group mean difference (feedback condition vs. baseline) | |||
Trunk inclination angle | Arm elevation angle | |||
During feedback administration | ||||
Proportion of the time ≥20° ↓15% (ns) ≥30° ↓19% (0.026) ≥45° ↓36% (0.008) | Distribution 50th ↓41% (ns) 90th ↓12% (ns) 99th ↓9% (ns) | Proportion of the time ≥30° ↓11% (ns) ≥45° ↓18% (0.008) ≥60° ↓20% (0.002) | Distribution 50th ↓9% (0.016) 90th ↓8% (0.003) 99th ↓3% (ns) | |
Directly after (≤4 h) feedback administration | ||||
Proportion of the time ≥20° ↓23% (0.028) ≥30° ↓27% (0.014) ≥45° ↓54% (0.008) | Distribution 50th ↓94% (ns) 90th ↓18% (0.012) 99th ↓19% (0.008) | Proportion of the time ≥30° ↓10% (0.019) ≥45° ↓15% (0.002) ≥60° ↓17% (0.001) | Distribution 50th ↓8% (0.002) 90th ↓8% (<0.001) 99th ↓5% (ns) | |
Lind et al. [78] | Group mean difference in arm elevation (feedback condition vs. baseline) | |||
During feedback administration | ||||
Feedback training (first session) | Feedback training (second session) | |||
Proportion of the time ≥30° ↓38% (<0.001) ≥45° ↓36% (<0.001) ≥60° ↓49% (0.001) | Distribution 50th ↓32% (<0.001) 90th ↓16% (<0.001) 95th ↓10% (0.002) 99th ↓13% (0.001) | Proportion of the time ≥30° ↓38% (<0.001) ≥45° ↓45% (<0.001) ≥60° ↓65% (<0.001) | Distribution 50th ↓33% (<0.001) 90th ↓21% (0.001) 95th ↓19% (0.001) 99th ↓16% (<0.001) | |
Owlia et al. [70] | Difference in the distribution of lumbar spine flexion (feedback condition vs. baseline) | |||
Directly after (≤4 h) feedback administration | ||||
Control group 50th ↓ *(ns) 80th ↑ *(ns) 95th ↑ *(ns) | Intervention group 50th ↓ *(ns) 80th ↓36% † (0.024 ‡) 95th ↓29% † (0.002) |
Study | Feedback Follow-Up Duration | |||
---|---|---|---|---|
During Feedback | Directly after (≤4 h) | Short Term (≤1 Month) | Midterm (≤3 Months) | |
High quality | ||||
Boocock et al. [86] | ++ | |||
Kamachi et al. [79] | ++ | +/= | +/= | |
Lim et al. [75] | + | |||
Lind et al. [71] | ++ | ++ | ||
Moderate quality | ||||
Ailneni et al. [84] | ++ | |||
Doss et al. [74] | +/= | |||
Kuo et al. [73] | ++ | |||
Langenskiöld et al. [76] | + | ++ | ||
Lind et al. [78] | ++ | |||
Owlia et al. [70] | +/= |
Study | Reported Effect from Feedback | |
---|---|---|
Lind et al. [77] 2023 | Median intra-individual differences in trunk inclination (feedback condition vs. baseline) | |
During feedback administration (first occasion) | ||
Proportion of the time ≥30° ↓13% (ns) ≥45° ↓34% (0.015) ≥60° ↓80% (0.026) | Distribution (angle) 90th ↓6.0% (ns) 95th ↓17% (0.026) 99th ↓11% (0.033) 10th–90th ↓7.9% (0.011) | |
During feedback administration (second occasion) | ||
Proportion of the time ≥30° ↓68% (0.001) ≥45° ↓80% (<0.001) ≥60° ↓89% (0.001) | Distribution (angle) 90th ↓34% (0.002) 95th ↓29% (<0.001) 99th ↓36% (<0.001) 10th–90th ↓31% (<0.001) | |
Directly after (≤4 h) feedback administration | ||
Proportion of the time ≥30° ↓60% (<0.001) ≥45° ↓61% (0.002) ≥60° ↓67% (0.034) | Distribution (angle) 90th ↓34% (0.002) 95th ↓31% (0.001) 99th ↓23% (0.003) 10th–90th ↓31% (<0.001) | |
Very short term, (≤1 week) after feedback administration | ||
Proportion of the time ≥30° ↓15% (ns) ≥45° ↓3.4% (ns) ≥60° ↓4.6% (ns) | Proportion of the time 90th ↓12% (ns) 95th ↓13% (ns) 99th ↑1.7% (ns) 10th–90th ↓2.4% (ns) | |
Short term, (≤1 month) after feedback administration | ||
Proportion of the time ≥30° ↓7% (ns) ≥45° ↓33% (ns) ≥60° ↓44% (ns) | Distribution (angle) 90th ↓5.5% (ns) 95th ↓10% (ns) 99th ↓11% (ns) 10th–90th ↑0.1% (ns) | |
Ribeiro et al. [72] | Group mean difference in frequency exceeding lumbar postural threshold compared to baseline | |
Control group | Intervention group | |
During feedback administration | ||
↓0.3 times/h, ↓3.4% | ↓0.6 times/h, ↓8% | |
Very short term, (≤1 week) after feedback administration | ||
↓0.6 times/h, ↓8% | ↓0.4 times/h, ↓5.9% | |
Short term, (≤1 month) after feedback administration | ||
↓2.2 times/h, ↓30% | ↓1.0 times/h, ↓15% | |
Midterm, (≤3 months) after feedback administration | ||
↑0.4 times/h, ↑5.5% | ↑3.3 times/h, ↑49% | |
Long term, (<12 months) after feedback administration | ||
↑2.1 times/h, ↑29% | ↑0.6 times/h, ↑9% | |
Very long term, (≥12 months) after feedback administration | ||
↓1.2 times/h, ↓16% | ↓1.4 times/h, ↓21% |
Study | Reported Effect from Feedback | |
---|---|---|
Bazazan et al. [85] | Group mean difference in RULA score (feedback group vs. control group) * | |
Midterm, (≤3 months) after feedback administration | ||
Neck: ↓0.4 (<0.05) | Trunk: ↓0.7 (<0.001) | |
Long term, (<12 months) after feedback administration | ||
Neck: ↓0.3 (ns) | Trunk: ↓0.7 (<0.001) | |
Bootsman et al. [87] | Group mean difference of poor posture episodes (feedback condition vs. baseline) | |
During feedback administration | ||
1st time: frequency ↓13.5% (sign †) | 2nd time ‡: frequency ↓25.3% (sign †) | |
Directly after (≤4 h) feedback administration | ||
After 1st time feedback: frequency ↓2.7% (ns) |
Study | Feedback Follow-Up Duration | ||||||
---|---|---|---|---|---|---|---|
During Feedback | Directly after (≤4 h) | Very Short Term (≤1 Week) | Short Term (≤1 Month) | Midterm (≤3 Months) | Long Term (≥ 6 to <12 Months) | Very Long Term (≥ 12 Months) | |
High quality | |||||||
Lind et al. [77] | ++ | ++ | (+)/= | (+)/= | |||
Ribeiro et al. [72] | = | = | = | = | = | = | |
Moderate quality | |||||||
Bazazan et al. [85] | ++ | +/= | |||||
Bootsman et al. [87] | ++ | (+)/= |
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Lind, C.M. A Rapid Review on the Effectiveness and Use of Wearable Biofeedback Motion Capture Systems in Ergonomics to Mitigate Adverse Postures and Movements of the Upper Body. Sensors 2024, 24, 3345. https://doi.org/10.3390/s24113345
Lind CM. A Rapid Review on the Effectiveness and Use of Wearable Biofeedback Motion Capture Systems in Ergonomics to Mitigate Adverse Postures and Movements of the Upper Body. Sensors. 2024; 24(11):3345. https://doi.org/10.3390/s24113345
Chicago/Turabian StyleLind, Carl M. 2024. "A Rapid Review on the Effectiveness and Use of Wearable Biofeedback Motion Capture Systems in Ergonomics to Mitigate Adverse Postures and Movements of the Upper Body" Sensors 24, no. 11: 3345. https://doi.org/10.3390/s24113345
APA StyleLind, C. M. (2024). A Rapid Review on the Effectiveness and Use of Wearable Biofeedback Motion Capture Systems in Ergonomics to Mitigate Adverse Postures and Movements of the Upper Body. Sensors, 24(11), 3345. https://doi.org/10.3390/s24113345