Digital and Virtual Technologies for Work-Related Biomechanical Risk Assessment: A Scoping Review
Abstract
:1. Introduction
2. Relevant Literature
2.1. Work-Related Biomechanical Risk Assessment
2.2. Industrial Revolutions and HFE
Technology | Definition | Sub-Areas | Sub-Areas Definition | Application to Biomechanical Risk Assessment |
---|---|---|---|---|
AI | AI is a branch of computer science that simulates human intelligence. It involves reasoning, learning, problem-solving, recognising speech, making decisions, and identifying patterns (IBM, 2024). AI can be classified into four main areas: ML, CV, deep learning (DL), and natural language processing (NLP). | Machine learning (ML) | ML enables computers to learn from data without explicit programming. ML analyses large datasets to identify patterns and make predictions. | AI technologies can be used to create human body models by capturing human body movements. These models can provide estimations for biomechanical risk assessment [11]. DL and NLP are not relevant for biomechanical risk assessment. |
Computing vision (CV) | CV extracts information from digital images and videos. It involves methods for acquiring, processing, analysing, and understanding the visual world to produce numerical or symbolic information. | |||
Deep learning (DP) | DP employs artificial neural networks with multiple layers to learn complex patterns from data. Inspired by the structure of the human brain, these networks can hierarchically process information, gradually extracting higher-level features from raw data [25,26]. | |||
Natural language processing (NLP) | NLP investigates the interaction between computers and human language, aiming to equip computers with the ability to understand, interpret, and generate human language through the application of computer science, linguistics, and ML [26,27]. | |||
DHM | DHM is a technique for simulating human interaction with products or workplaces within a virtual environment [28]. It employs three-dimensional manikins in these virtual settings to mimic human interaction with the work environment [29]. | For Sub- categories, refer to [10] | Not applied. | DHM provides a virtual platform for analysing human movements and postures in relation to products and work environments [10,28]. |
Virtuality | Virtuality refers to something simulated or computer-generated, not existing in the physical world. | VR | VR technology creates a three-dimensional virtual environment using computer simulations to simulate human interaction within the virtual working environment [28]. | Like DHM, VR simulates human interaction with products or workplaces in a virtual environment [30]. Accordingly, AR can be useful for biomechanical risk assessment in work-related tasks [31]. |
AR | AR combines the real world with computer-generated content, creating an integrated and interactive experience [7]. | |||
MoCap | MoCap is a technology-driven method used to digitally record the movement of objects or people [32]. It can be subdivided into optical and wearable systems. | Optical systems: marker-based (MBased) | Within the former, MBased systems use reflective markers placed on specific points of the body. Multiple cameras track these markers to capture the motion. This method is known for its high accuracy but requires a controlled environment with multiple high-resolution cameras (e.g., Vicon [33]). | MoCap technology provides accurate and feasible assessments of various musculoskeletal parameters and can aid in diagnosing and monitoring work-related musculoskeletal disorders. However, challenges related to obtaining accurate data are complex, owing to the nature of the working environment, heavy equipment used by workers, wearing personal protective equipment, and the limitations of MoCap systems [32]. |
Optical systems: marker-less (MLess) | MLess systems do not require markers or special suits using advanced CV techniques to track the human body (i.e., Microsoft Kinect V2 [34]). | |||
Wearable systems | Within wearable systems, inertial measurement unit (IMU) systems use wearable sensors to measure body motion. The sensors, which include accelerometers, magnetometers, and gyroscopes, can detect changes in speed and direction (e.g., XsensMVN [35]). |
3. Materials and Methods
4. Results
4.1. Commercial Tools
4.2. Academic Literature
5. Discussion
5.1. Technologies and Hardware Comparison
5.2. Risk Factors and Biomechanical Risk Assessment Methods
5.3. Preventive and Corrective Action
5.4. Ergonomics Implications
6. Conclusions
6.1. Main Findings and Limitations
- A review of 24 commercial tools for biomechanical risk assessment revealed that AI and DHM were the most frequently used technologies. MoCap and VR followed this. In 10 reviewed academic studies, the most employed technologies were MoCap and DHM.
- Commercial tools often resort to non-intrusive or inconspicuous technologies/hardware, such as AI and DHM.
- Commercial tools were observed to employ more physical workload assessment methods than academic studies. Nonetheless, the most employed methods were RULA and REBA, both in academic and commercial tools.
- In assessing risk factors, “Awkward Postures” were the most prevalent assessed risk factors for both instances. This was followed by “Holistic” assessments and “Manual Handling.” Commercial tools exclusively addressed repetitive tasks and other risk factors.
- Regarding technology use, it was observed that technologies are employed in distinct ways. For instance, DHM and VR can be employed both during the workstation design phase and the monitoring of existing workplace conditions (i.e., preventive and corrective measures). Conversely, AI and MoCap systems are more commonly associated with monitoring existing workplace conditions (i.e., corrective measures).
6.2. Future Research and Recommendations
- This study observed that digital and virtual technologies are used in different ways, with some used for design and others for monitoring existing work conditions. Future research could explore the benefits and drawbacks of different technologies and combinations of technologies for biomechanical risk assessment considering different risk factors.
- The study suggested a lack of scientific evidence for commercial tools. Even though this might be due to anonymous validation processes of commercial tools within academia, it is recommended that commercial tools that target biomechanical risk assessment be more transparent about their validation process.
- This study focused on biomechanical risk assessment. However, it is interesting to evaluate how evolving new technologies may impact ergonomics as a whole. In other words, how does using specific technologies impact physical, cognitive, and organisational ergonomics? Additionally, future research could aim to include a more globally representative sample of academic studies and commercial tools.
- Echoing the findings of other studies, the present study calls attention to the need for human-centred aspects when developing and incorporating evolving new technologies into different industry contexts. Particularly, it is interesting to evaluate how the sociotechnical and management systems can cope with these new technologies. For instance, in relation to decision-making and organisational ergonomics, how can evolving technologies contribute to the horizontal availability of information concerning workers’ well-being? And what are the implications?
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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# | Category | Description | Limited Detailed Characterisation |
---|---|---|---|
1 | Self-Assessment | This category assesses biomechanical risks through questionnaires, enabling workers to identify potential risk factors present in the work environment. | HFE professionals employ self-assessment questionnaires to estimate biomechanical exposure, considering factors such as postural demands, repetitive movements, precision movements, vibration, manual materials handling, and dynamic tasks of workers. One example is the Mälmo Shoulder Neck Study (MSNS) questionnaire [16]. |
2 | Observational Methods | This category evaluates biomechanical risks by closely observing workers performing their duties at their respective workstations. | HFE professionals use on-site observations and offline video analysis to estimate workers′ body-joint angles. On-site observations might include recording data using spreadsheets or templates. Software like Kinovea v2023.1 could be employed to analyse recorded footage and extract biomechanical data for offline video analysis. |
3 | Direct Measurement | This category involves evaluating biomechanical risks using specialised devices to capture biomechanical data. These devices, attached to the worker′s body, measure aspects such as body parts rotation and movements, providing a comprehensive understanding of the physical strain experienced by the worker. | Wearable tools and devices are attached to a worker’s body to automatically collect data for biomechanical analysis. One such device used for this purpose is a motion-tracking system composed of inertial measurement units (IMUs). |
4 | Computer-based Assessment | This category employs computers and software to evaluate biomechanical risks in the workplace. | Human body models, such as DHM, along with computing vision (CV) applications, are employed to automatically derive estimations of human body models. |
# | Company | Country | Tool Name | Cost | Application | Technology Involved | Hardware | Data Collection Method | Ergonomics Risk Assessment Methods * | Scientific Evidence |
---|---|---|---|---|---|---|---|---|---|---|
#1C | viso.ai [38] | Switzerland | Ergonomic Risk Analysis | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | Not mentioned | No |
#2C | ViveLab [39] | Hungary | ViveLab Ergonomic | Paid | Any industry | DHM + MoCap | PC + Wearable (smart clothes) | Computer-based assessment + Direct measurement | OCRA, APSA, EAWS, KIM-MHO, NPW, REBA, and WERA | No |
#3C | Soter [40] | Australia | Soter Genius | Paid | Any industry | AI (CV + ML) | Smartphone | Computer-based assessment + Direct measurement | RULA and REBA | No |
#4C | Siemens [41] | Germany | Tecnomatix | Paid | Any industry | DHM + MoCap + VR | PC + Wearable (smart clothes + HMD) | Computer-based assessment + Direct measurement | NIOSH, OWAS, LBA, and RULA | [42] |
#5C | Dassault Systèmes [43] | France | Delmia | Paid | Any industry | DHM | PC | Computer-based assessment | RULA, MTM, and GARG’s energy prediction model | [44,45] |
#6C | imk [46] | Germany | EMA | Paid | Any industry | DHM + VR | PC + HMD | Computer-based assessment | NIOSH and EAWS | [47] |
#7C | Voxel [48] | USA | Voxel | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | REBA | No |
#8C | TuMeke [49] | USA | Tumeke Ergonomics | Paid | Any industry | AI (CV + ML) | Smartphone | Computer-based assessment | RULA, REBA, RSI, and NIOSH | No |
#9C | VelocityEHS [50] | USA | VelocityEHS® Industrial Ergonomics | Paid | Any industry | AI (CV + ML) | Smartphone | Computer-based assessment | RULA and REBA | No |
#10C | Nawo Solution [51] | France | Nawo | Paid | Any industry | AI (CV + ML) + DHM, VR, and MoCap | Smartphone + PC + Wearable (smart clothes + HMD) | Computer-based assessment + Direct measurement | RULA, REBA, NIOSH, EAWS, and NFX35-109 | No |
#11C | IBV [52] | Spain | ErgoIA | Paid | Any industry | AI (CV + ML) | Smartphone | Computer-based assessment | REBA, OWAS, and Repetitive Tasks | No |
#12C | ErgoSanté [53] | France | LEA | Open | Any industry | AI (CV + ML) | Smartphone | Computer-based assessment | RULA | No |
#13C | Intenseye [54] | UK | Intenseye Ergonomics AI | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | RULA and REBA | No |
#14C | Protex AI [55] | Ireland and USA | Protex AI | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | Not mentioned | No |
#15C | Buddywise [56] | Sweden | The product has no name | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | Not mentioned | No |
#16C | FlexSim [57] | USA | FlexSim | Paid | Any industry | DHM | PC | Computer-based assessment | RULA, NIOSH, OWAS, Snook and Ciriello, and MEE | [58] |
#17C | Simio [59] | USA | Simio | Paid | Any industry | DHM | PC | Computer-based assessment | Not mentioned | [60] |
#18C | AnyBody [61] | Denmark | AnyBody | Paid | Academic, Medicine, Sports, and Industry | DHM + MoCap | PC + Wearable (smart clothes) | Computer-based assessment + Direct measurement | RULA and EMG | [62,63] |
#19C | PTC [64] | USA | Creo | Paid | Any industry | DHM | PC | Computer-based assessment | RULA, Snook and Ciriello, and NIOSH | [65] |
#20C | NexGen Ergonomics [66] | Canada | HumanCad | Paid | Any industry | DHM | PC | Computer-based assessment | NIOSH, Energy Expenditure, OWAS, RULA, Snook and Ciriello, and Mital | [67] |
#21C | OpenSim [68] | USA | OpenSim | Open | Academic, Medicine, Sports, and Industry | DHM | PC | Computer-based assessment | RULA, OWAS, NIOSH, LSI, MFI, JRFs, and EMG | [69,70,71,72] |
#22C | Arvist [73] | USA | Arvist | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | Not mentioned | No |
#23C | Everguard [74] | USA | Sentri 360 | Paid | Any industry | AI (CV + ML) | Camera | Computer-based assessment | Not mentioned | No |
#24C | University of Michigan /Human Tech/ Velocity EHS [75] | USA | 3DSSPP | Paid | Any industry | DHM | PC | Computer-based assessment | Not mentioned | [76] |
# | References | Tool Name | Application | Technology Involved | Hardware | Data Collection Method | Ergonomics Risk Assessment Methods * | Physical Risk Factors Addressed | Sample Size |
---|---|---|---|---|---|---|---|---|---|
#1A | Pistolesi et al. [77], 2024 | Not applied | Experimental Environment | AI (ML) + LiDAR + microprocessors, sensors, communication, and display (smartwatch) | Wearable (smartwatch) and emitter + receiver + processor (e.g., LiDAR) | Computer-based assessment + Direct measurement | Not mentioned | Not applied | 3 |
#2A | Caputo et al. [78], 2018 | Ergo-UAS method | Industrial Environment | DHM + MoCap | PC + Wearable (smart clothes) | Computer-based assessment + Direct measurement | EAWS | Holistic | Not mentioned |
#3A | Manghisi et al. [79], 2022 | ErgoVR tool | Experimental Environment | MoCap + PL (C#) + VR | Kinect V2 + Wearable (HMD) | Computer-based assessment | RULA | Awkward Postures | Not mentioned |
#4A | Sardar et al. [80], 2023 | Not applied | Experimental Environment | VR | Wearable (HMD) | Observational assessment | RULA, REBA, and OWAS | Awkward Postures and Holistic | 10 |
#5A | Havard et al. [81], 2019 | Not applied | Experimental Environment | DHM + VR + MoCap | PC + Wearable (HMD and smart clothes) | Computer-based assessment + Direct measurement | RULA | Awkward Postures | Not mentioned |
#6A | Feldmann et al. [82], 2019 | Not applied | Experimental Environment | MoCap | Wearable (smart clothes) | Direct measurement | KIM-MHO | Awkward Postures | 3 |
#7A | Bortolini et al. [83], 2020 | Motion Analysis System (MAS) | Experimental Environment | DHM + MoCap | PC + Kinect V2 | Computer-based assessment | OWAS, REBA, NIOSH, and EAWS | Holistic, Awkward Postures and Manual Handling | 7 |
#8A | Caterino et al. [84], 2021 | Not applied | Industrial Environment | DHM + MoCap + IoT | PC + Wearable (smart clothes) + Embedded systems (sensors) | Computer-based assessment + Direct measurement | OWAS | Holistic | Not mentioned |
#9A | Massiris Fernández et al. [15], 2020 | Not applied | Industrial Environment | AI (ML + CV) | Camera | Computer-based assessment | RULA | Awkward Postures | Not mentioned |
#10A | Ciccarelli, Papetti, Scoccia, et al. [85], 2022 | Not applied | Experimental Environment | AI (ML + CV) + DHM + MoCap | Camera + PC + Wearable (smart clothes) | Computer-based assessment + Direct measurement | RULA | Awkward Postures | Not mentioned |
AI | DHM | MoCap | VR | LiDAR | Smartphones 1 | Smartwatch 2 | IoT 3 | Total | |
---|---|---|---|---|---|---|---|---|---|
Academic | 3 | 5 | 7 | 3 | 1 | - | 1 | 1 | 21 |
Commercial | 13 | 12 | 4 | 3 | - | 6 | - | - | 38 |
Total | 16 | 17 | 11 | 6 | 1 | 6 | 1 | 1 | 59 |
PC | Wearable | Smartphones 2 | Kinect | IoT 3 | LiDAR 4 | Camera | Total | |||
---|---|---|---|---|---|---|---|---|---|---|
Smartwatch 1 | Smart Clothes | HMD | ||||||||
Academic | 5 | 1 | 5 | 3 | 0 | 2 | 1 | 1 | 2 | 19 |
Commercial | 12 | 0 | 4 | 3 | 6 | 0 | 0 | 0 | 7 | 32 |
Total | 17 | 1 | 9 | 6 | 6 | 2 | 1 | 1 | 9 | 51 |
Risk Factors | Assessment Methods | Frequency | Sum by Method | Total | |
---|---|---|---|---|---|
Academic | Commercial | ||||
Awkward Postures | RULA | 5 | 12 | 17 | 29 |
REBA | 2 | 8 | 10 | ||
LBA | - | 1 | 1 | ||
Manual Handling | NIOSH | 1 | 6 | 7 | 11 |
KIM-MHO | 1 | 1 | 2 | ||
Snook and Ciriello | - | 2 | 2 | ||
Holistic | OWAS | 3 | 5 | 8 | 16 |
EAWS | 2 | 3 | 5 | ||
WERA | - | 1 | 1 | ||
NPW | - | 1 | 1 | ||
APSA | - | 1 | 1 | ||
Repetitive | OCRA | - | 1 | 1 | 4 |
SI | - | 1 | 1 | ||
NFX35-109 | - | 1 | 1 | ||
Not mentioned | - | 1 | 1 | ||
Others | Physiology | - | 5 | 1 | 6 |
Cycle Time | - | 1 | 1 |
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Anacleto Filho, P.C.; Colim, A.; Jesus, C.; Lopes, S.I.; Carneiro, P. Digital and Virtual Technologies for Work-Related Biomechanical Risk Assessment: A Scoping Review. Safety 2024, 10, 79. https://doi.org/10.3390/safety10030079
Anacleto Filho PC, Colim A, Jesus C, Lopes SI, Carneiro P. Digital and Virtual Technologies for Work-Related Biomechanical Risk Assessment: A Scoping Review. Safety. 2024; 10(3):79. https://doi.org/10.3390/safety10030079
Chicago/Turabian StyleAnacleto Filho, Paulo C., Ana Colim, Cristiano Jesus, Sérgio Ivan Lopes, and Paula Carneiro. 2024. "Digital and Virtual Technologies for Work-Related Biomechanical Risk Assessment: A Scoping Review" Safety 10, no. 3: 79. https://doi.org/10.3390/safety10030079
APA StyleAnacleto Filho, P. C., Colim, A., Jesus, C., Lopes, S. I., & Carneiro, P. (2024). Digital and Virtual Technologies for Work-Related Biomechanical Risk Assessment: A Scoping Review. Safety, 10(3), 79. https://doi.org/10.3390/safety10030079