LIBPhys, Physics Department, Faculty of Sciences and Technology, Nova University of Lisbon, 2825-149 Caparica, Portugal.
Volkswagen Autoeuropa, Industrial Engineering and Lean Management, Quinta da Marquesa, 2954-024 Quinta do Anjo, Portugal.
Int J Environ Res Public Health. 2022 Aug 3;19(15):9552. doi: 10.3390/ijerph19159552.
In automotive and industrial settings, occupational physicians are responsible for monitoring workers' health protection profiles. Workers' Functional Work Ability (FWA) status is used to create Occupational Health Protection Profiles (OHPP). This is a novel longitudinal study in comparison with previous research that has predominantly relied on the causality and explainability of human-understandable models for industrial technical teams like ergonomists. The application of artificial intelligence can support the decision-making to go from a worker's Functional Work Ability to explanations by integrating explainability into medical (restriction) and support in contexts of individual, work-related, and organizational risk conditions. A sample of 7857 for the prognosis part of OHPP based on Functional Work Ability in the Portuguese language in the automotive industry was taken from 2019 to 2021. The most suitable regression models to predict the next medical appointment for the workers' body parts protection were the models based on CatBoost regression, with an RMSLE of 0.84 and 1.23 weeks (mean error), respectively. CatBoost algorithm is also used to predict the next body part severity of OHPP. This information can help our understanding of potential risk factors for OHPP and identify warning signs of the early stages of musculoskeletal symptoms and work-related absenteeism.
在汽车和工业领域,职业医生负责监测工人的健康保护概况。工人的功能工作能力(FWA)状况用于创建职业健康保护概况(OHPP)。与之前主要依赖于人类可理解的模型(如人类工程学家)的因果关系和可解释性的研究相比,这是一项新颖的纵向研究。人工智能的应用可以通过将可解释性集成到医疗(限制)和支持中,为从工人的功能工作能力到解释的决策提供支持,从而支持在个体、与工作相关和组织风险条件下做出决策。从 2019 年到 2021 年,在汽车行业的葡萄牙语中,从 OHPP 的功能工作能力部分对 7857 名工人进行了样本预测。最适合预测工人身体部位保护下一次医疗预约的回归模型是基于 CatBoost 回归的模型,其 RMSLE 分别为 0.84 和 1.23 周(平均误差)。CatBoost 算法也用于预测 OHPP 的下一个身体部位严重程度。这些信息可以帮助我们了解 OHPP 的潜在风险因素,并识别肌肉骨骼症状和与工作相关缺勤的早期预警信号。