The Role of Artificial Intelligence in Improving Workplace Well-Being: A Systematic Review
Abstract
:1. Introduction
- Objective 1: To provide a comprehensive overview of the most prevalent applications of AI in enhancing workplace well-being.
- Objective 2: To evaluate the current and potential impacts of AI on mental health management and workplace wellness.
- Objective 3: To identify and categorize the key areas where AI can offer substantial benefits in the context of employee well-being, including mental health monitoring, personalized wellness programs, emotional support, and training and development.
2. Materials and Methods
3. Presentation and Discussion of the Results
3.1. Mental Health Monitoring
3.2. Emotional Counseling and Support
3.3. Personalized Wellness Programs
3.4. Risk Factor Identification
3.5. Training and Development
3.6. Discussion of Results in Relation to Research Objectives
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Item | Type | Year | Author | Title | Publication Title | Keywords | Main Issue |
---|---|---|---|---|---|---|---|
1 [67] | Conference | 2018 | Rodriguez, JM; Aso, S; Cavero, C; Quintero, AM; Ramos, I; Perez, M; Mediavilla, C; Rodriguez, B | Towards Digital and Personalized Healthcare and Well-Being Solutions for the Workplace | Workshop Proceedings of the 14th International Conference on Intelligent Environments | digital ergonomics; intelligent workplace; issues; m-health; p-health | Mobile application to manage medical information. |
2 [77] | Conference | 2018 | Gomez-Carmona, O; Casado-Mansilla, D; Garcia-Zubia, J | Health Promotion in Office Environments: A Worker-Centric Approach Driven by the Internet of Things | University of Deusto | behavior; care; health promotion; impact; internet of things; interventions; management; occupational-health; office environments; participatory sensing; persuasive computing; user-centred design; workplace; | Use of IoT for health promotion in office environments with a worker-centric approach. |
3 [85] | Article | 2018 | Ghislieri, C.; Molino, M.; Cortese, C.G. | Work and organizational psychology looks at the Fourth Industrial Revolution: How to support workers and organizations? | Frontiers in Psychology | fourth industrial revolution; industry 4.0; future of work; working conditions; human-robot interaction; artificial intelligence; future work skills; employment | Impact of the Fourth Industrial Revolution on Work and organizational psychology, with focus on the expansion of automation in the workplace and the changing requirements for knowledge and skills |
4 [65] | Article | 2018 | Brougham, D.; Haar, J. | Smart Technology, Artificial Intelligence, Robotics and Algorithms (STARA): Employee perceptions of our future workplace | Journal of Management and Organization | career planning; change; technology; disruptive technology; employees | Study finds STARA (Smart Technology, Artificial Intelligence, Robotics, and Algorithms) awareness negatively impacts job outcomes and well-being, particularly for younger employees. Traditional career paths may need to be re-evaluated in light of technological change. |
5 [71] | Article | 2019 | Howard, J. | Artificial intelligence: Implications for the future of work | American Journal of Industrial Medicine | artificial intelligence; decision support systems; machine learning; robotics; smart sensors | Implications of Artificial Intelligence (AI) on the workplace, including Job Dislocation and human-robot interaction |
6 [76] | Article | 2019 | Arakawa, Y. | Sensing and changing human behavior for workplace wellness | Journal of Information Processing | sensing behavior; workplace; behavior change; wellness; office productivity; quality of life | Use of sensors and behavior change support systems to improve workplace wellness and productivity. It also emphasizes the importance of user-centered design |
7 [37] | Article | 2020 | Tamers, SL; Streit, J; Pana-Cryan, R; Ray, T; Syron, L; Flynn, MA; Castillo, D; Roth, G; Geraci, C; Guerin, R; Schulte, P; Henn, S; Chang, CC; Felknor, S; Howard, J | Envisioning the future of work to safeguard the safety, health, and well-being of the workforce A perspective from the CDC’s National Institute for Occupational Safety and Health | American Journal of Industrial Medicine | climate-change; corporate social-responsibility; employment; environment; future of work; job; life; occupational safety and health; paid sick leave; promotion; sexual-harassment; stress; total worker health; worker well-being | CDC/NIOSH Future of Work Initiative and its focus on occupational safety and health in the face of changing work arrangements and emerging technologies. |
8 [59] | Article | 2020 | Chang, K | Artificial intelligence in personnel management: the development of APM model | Bottom Line | ai; artificial intelligence; career opportunity; job replacement; manager subordinate relationship; personnel management | Potential of AI in personnel management |
9 [78] | Conference | 2020 | Gorovei, AA | Internet of Things and employee happiness in the digital era | Alexandru Ioan Cuza University | digital era; employee engagement; happiness; internet of things; job satisfaction | The potential of IoT to improve employee happiness and productivity in the workplace: advantages, disadvantages, and future applications. |
10 [80] | Article | 2020 | Kinowska, H.; Sienkiewicz, Ł.J. | Influence of algorithmic management practices on workplace well-being—Evidence from European organizations | Information Technology and People | algorithmic management; workplace well-being; job autonomy; total rewards; human resources management | Impact of algorithmic management on workplace well-being, job autonomy, and total rewards practices. |
11 [75] | Article | 2020 | Jindo, T.; Kai, Y.; Kitano, N.; Wakaba, K.; Makishima, M.; Takeda, K.; Iida, M.; Igarashi, K.; Arao, T. | Impact of activity-based work and height-adjustable desks on physical activity, sedentary behavior, and space utilization among office workers: A natural experiment | International Journal of Environmental Research and Public Health | office renovation; office layout; sit-stand desk; workplace health promotion; physical activity; sedentary behavior | Use of AI technology for motion detection and video analysis |
12 [73] | Conference | 2020 | Raliile, M.T.; Haupt, T.C. | Machine learning applications for monitoring construction health and safety legislation and compliance | Proceedings of the International Society of Structural Engineering and Construction | construction industry; law; artificial intelligence; workers’ well-being | Applications of unsupervised machine learning in monitoring health and safety legislation and compliance on construction sites. |
13 [82] | Conference | 2020 | Molan, G.; Molan, M. | Sustainable level of human performance with regard to actual availability in different professions | Work | questionnaire of actual availability; well-being; artificial intelligence; machine learning; classification tree; ah-model | Use of artificial intelligence to identify influential attributes of actual availability on workers’ performance |
14 [68] | Article | 2021 | Makridis, CA; Zhao, DY; Bejan, CA; Alterovitz, G | Leveraging machine learning to characterize the role of socio-economic determinants on physical health and well-being among veterans | Computers in Biology and Medicine | health informatics; machine learning; social determinants; socioeconomics; subjective well-being; veterans | Use of machine learning to predict physical health and well-being among veterans based on demographic, socio-economic, and geographic characteristics. |
15 [60] | Article | 2021 | Izumi, K; Minato, K; Shiga, K; Sugio, T; Hanashiro, S; Cortright, K; Kudo, S; Fujita, T; Sado, M; Maeno, T; Takebayashi, T; Mimura, M; Kishimoto, T | Unobtrusive Sensing Technology for Quantifying Stress and Well-Being Using Pulse, Speech, Body Motion, and Electrodermal Data in a Workplace Setting: Study Concept and Design | Frontiers in Psychiatry | adult psychiatry; depression; industrial medicine; mental health; occupational; protocols; recognition; stress; system; wearable sensors; well-being | Technique to quantify stress and well-being using sensing devices. |
16 [83] | Article | 2021 | Makridis, CA; Han, JH | Future of work and employee empowerment and satisfaction: Evidence from a decade of technological change | Technological Forecasting and Social Change | employee attitudes; employee engagement; growth; impact; innovation; jobs; labor; leadership; managers; performance; productivity; resource; technological change; transformation; well-being | Technological change impacts workplace interactions but can have positive effects on employee empowerment and well-being with structured management. |
17 [79] | Article | 2021 | Fukumura, YE; Gray, JM; Lucas, GM; Becerik-Gerber, B; Roll, SC | Worker Perspectives on Incorporating Artificial Intelligence into Office Workspaces: Implications for the Future of Office Work | International Journal of Environmental Research and Public Health | artificial intelligence; comfort; computer workstations; health; hot-desking; impact; office work; performance; recognition; time; workspace | The acceptability of AI in the workplace is complex and dependent upon the benefits outweighing the potential detriments. |
18 [64] | Article | 2021 | Stamate, AN; Sauve, G; Denis, PL | The rise of the machines and how they impact workers’ psychological health: An empirical study | Human Behavior and Emerging Technologies | artificial intelligence; basic psychological needs; cognitive-ability; distress; job challenge; job characteristics; job demand; job resource; measurement scales; mental-health; multiple-item; need satisfaction; psychological health; self-determination theory; single-item; technology acceptance model; user acceptance; well-being; workplace | Impact of machines on workers’ psychological health and ways to mitigate negative effects. |
19 [69] | Article | 2021 | Anan, T; Kajiki, S; Oka, H; Fujii, T; Kawamata, K; Mori, K; Matsudaira, K | Effects of an Artificial Intelligence-Assisted Health Program on Workers with Neck/Shoulder Pain/Stiffness and Low Back Pain: Randomized Controlled Trial | JMIR Mhealth And Uhealth | adherence; digital health; digital intervention; disability; e-health; exercise program; intervention; low back pain; management; m-health; mobile app; mobile phone; musculoskeletal symptoms; neck pain; neck pain; office workers; predictors; shoulder; shoulder pain; shoulder stiffness; workplace | The 12-week use of the AI-assisted health program significantly improved subjective symptoms of both neck/shoulder pain/stiffness and low back pain |
20 [70] | Article | 2021 | Trenerry, B.; Chng, S.; Wang, Y.; Suhaila, Z.S.; Lim, S.S.; Lu, H.Y.; Oh, P.H. | Preparing Workplaces for Digital Transformation: An Integrative Review and Framework of Multi-Level Factors | Frontiers in Psychology | digital transformation; digital disruption; digital technology; workplace; organization; employee; literature review; multi-level framework | Review of the literature on the digital transformation of the workplace digital transformation |
21 [52] | Article | 2021 | Pishgar, M.; Issa, S.F.; Sietsema, M.; Pratap, P.; Darabi, H. | Redeca: A novel framework to review artificial intelligence and its applications in occupational safety and health | International Journal of Environmental Research and Public Health | artificial intelligence; worker health and safety; occupational safety and health; sensor devices; robotic devices; machine learning algorithms; future of work | AI’s role in detecting hazardous situations and removing workers from hazardous conditions. |
22 [86] | Conference | 2021 | Mendoza-Valencia, J. | Smart Manufacturing and Jobs | Proceedings of CECNet 2021 | manufacturing; worker and artificial intelligence | The benefits and challenges of using new technologies in manufacturing |
23 [58] | Conference | 2021 | Cahill, J.; Howard, V.; Huang, Y.; Ye, J.; Ralph, S.; Dillon, A. | Intelligent Work: Person-Centred Operations, Worker Wellness and the Triple Bottom Line | HCI International 2021-Posters: 23rd HCI International Conference, HCII 2021, Virtual Event | creative technologies; digital engagement; responsible work; workplace wellness; work related stress | Introduction of the concept of “Intelligent Work” and its focus on enabling people and performance monitoring. |
24 [61] | Article | 2022 | Tania, MH; Hossain, MR; Jahanara, N; Andreev, I; Clifton, DA. | Thinking Aloud or Screaming Inside: Exploratory Study of Sentiment Around Work | JMIR Formative Research | 5 personality-traits; anxiety; artificial intelligence; Bayesian inference; Facebook; machine learning; mobile phone; musculoskeletal; natural language processing; occupational health; privacy; sentiment analysis; social media; twitter; work-related mental health | Study on using social media to assess work-related sentiments. |
25 [79] | Article | 2022 | Jiang, F.; Wang, L.; Li, J.-X.; Liu, J. | How Smart Technology Affects the Well-Being and Supportive Learning Performance of Logistics Employees? | Frontiers in Psychology | smart technology; learning performance; well-being; self-efficacy; corporate trust | Link between smart technology and learning performance in the logistics industry |
26 [62] | Article | 2022 | Sagar, S.; Rastogi, R.; Garg, V.; Basavaraddi, I.V. | Impact of Meditation on Quality of Life of Employees | International Journal of Reliable and Quality E-Healthcare | corporate employee; industry 5.0; meditation; quality of life; workplace wellness | Benefits of meditation on employee well-being, AI’s role, and the significance of Indian cultural practices. |
27 [72] | Article | 2022 | Koc, K.; Ekmekcioğlu, Ö.; Gurgun, A.P. | Prediction of construction accident outcomes based on an imbalanced data set through integrated resampling techniques and machine learning methods | Engineering, Construction, and Architectural Management | artificial intelligence; construction safety; machine learning; occupational health and safety (ohs); occupational accidents; safety management | Predicting occupational accidents using machine learning and resampling strategies. |
28 [66] | Article | 2023 | Loureiro, SMC; Bilro, RG; Neto, D | Working with AI: Can stress bring happiness? | Service Business | al; artificial intelligence; artificial intelligence; behavior; benefits; benign stress; employee engagement; employee happiness; job stress; resources; self-esteem; service robots | Effect of AI on employee happiness and engagement. |
29 [74] | Article | 2023 | Lorenzini, M; Lagomarsino, M; Fortini, L; Gholami, S; Ajoudani, A | Ergonomic human-robot collaboration in industry: A review | Frontiers in Robotics and AI | collaborative robots; driven musculoskeletal model; ergonomics; exposure assessment; heart rate; human factors; human-robot collaboration; human-robot interaction; industry; joint moments; mental workload; motion-capture; muscle forces; practical method; risk-factors; strain index | Importance of ergonomics in human-robot collaboration in industrial settings and overview of assessment tools and monitoring technologies |
30 [84] | Article | 2023 | Xu, G.; Xue, M.; Zhao, J. | The Relationship of Artificial Intelligence Opportunity Perception and Employee Workplace Well-Being: A Moderated Mediation Model | International Journal of Environmental Research and Public Health | artificial intelligence opportunity perception; informal learning in the workplace; employee workplace well-being; unemployment risk perception | Importance of recognizing AI technology and taking measures to actively respond to it to improve WWB and promote the smooth application of AI technology in the workplace |
31 [63] | Article | 2023 | Segkouli, S.; Giakoumis, D.; Votis, K.; Triantafyllidis, A.; Paliokas, I.; Tzovaras, D. | Smart Workplaces for older adults: Coping ‘ethically’ with technology pervasiveness | Universal Access in the Information Society | pervasive technology; ethics framework; workplaces; older workers | Technologies such as AI, VR, and IoT can improve the well-being and workability of the ageing workforce, but pose ethical challenges |
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Hypotheses | Objectives | Findings |
---|---|---|
Hypothesis 1 (H1): AI applications in workplace settings significantly improve employee mental health and overall well-being. | Objective 1: To provide a comprehensive overview of the most prevalent applications of AI in enhancing workplace well-being. | AI significantly improves mental health management by providing continuous, objective, and accurate monitoring. Studies by Izumi et al. (2021) [60] and Tania et al. (2022) [61] confirm this by demonstrating the effectiveness of AI in real-time stress and mood monitoring. Further, Howard (2019) [70] emphasizes the implications of AI for workplace mental health through decision support systems, while Selenko et al. (2022) [50] discuss the psychological impacts of AI integration. These findings collectively underscore AI’s transformative potential in mental health monitoring, supporting H1 and Objective 1. |
Hypothesis 2 (H2): The implementation of AI-driven personalized wellness programs reduces the incidence of work-related stress and enhances job satisfaction. | Objective 2: To evaluate the current and potential impacts of AI on mental health management and workplace wellness. | AI-driven personalized wellness programs reduce work-related stress and improve job satisfaction. Rodriguez et al. (2018) [66] and Anan et al. (2021) [68] highlight how mobile applications and wearables monitor and manage health data effectively. Loureiro et al. (2023) [82] demonstrate that AI can help employees handle stress better, leading to increased happiness and engagement. These studies validate H2 and Objective 2 by showing that personalized wellness programs tailored to individual needs can significantly enhance workplace well-being. |
Hypothesis 3 (H3): AI systems used for monitoring mental health can predict and mitigate risks more effectively than traditional methods. | Objective 3: To identify and categorize the key areas where AI can offer substantial benefits in the context of employee well-being, including mental health monitoring, personalized wellness programs, emotional support, and training and development. | AI systems effectively identify and mitigate risks by monitoring compliance and identifying potential hazards. Studies by Koc et al. (2022) [71] and Raliile and Haupt (2020) [72] illustrate how AI predicts occupational accidents and monitors safety legislation compliance. Jindo et al. (2020) [74] and Fukumura et al. (2021) discuss the use of AI for ergonomic assessments and its impact on workplace safety. These findings support H3 and Objective 3, demonstrating AI’s capability to enhance workplace safety and health through advanced risk identification and mitigation techniques. |
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García-Madurga, M.-Á.; Gil-Lacruz, A.-I.; Saz-Gil, I.; Gil-Lacruz, M. The Role of Artificial Intelligence in Improving Workplace Well-Being: A Systematic Review. Businesses 2024, 4, 389-410. https://doi.org/10.3390/businesses4030024
García-Madurga M-Á, Gil-Lacruz A-I, Saz-Gil I, Gil-Lacruz M. The Role of Artificial Intelligence in Improving Workplace Well-Being: A Systematic Review. Businesses. 2024; 4(3):389-410. https://doi.org/10.3390/businesses4030024
Chicago/Turabian StyleGarcía-Madurga, Miguel-Ángel, Ana-Isabel Gil-Lacruz, Isabel Saz-Gil, and Marta Gil-Lacruz. 2024. "The Role of Artificial Intelligence in Improving Workplace Well-Being: A Systematic Review" Businesses 4, no. 3: 389-410. https://doi.org/10.3390/businesses4030024
APA StyleGarcía-Madurga, M. -Á., Gil-Lacruz, A. -I., Saz-Gil, I., & Gil-Lacruz, M. (2024). The Role of Artificial Intelligence in Improving Workplace Well-Being: A Systematic Review. Businesses, 4(3), 389-410. https://doi.org/10.3390/businesses4030024