Alberdi Ane, Aztiria Asier, Basarab Adrian, Cook Diane J
Mondragon University, Electronics and Computing Department, Goiru Kalea, 2, Arrasate, 20500, Spain.
Université Paul Sabatier Toulouse 3, IRIT UMR 5505, 118 Route de Narbonne, Toulouse Cedex 9, 31062, France.
Int J Ind Ergon. 2018 Sep;67:13-26. doi: 10.1016/j.ergon.2018.04.005. Epub 2018 May 26.
Occupational stress is increasingly present in our society. Usually, it is detected too late, resulting in physical and mental health problems for the worker, as well as economic losses for the companies due to the consequent absenteeism, presenteeism, reduced motivation or staff turnover. Therefore, the development of early stress detection systems that allow individuals to take timely action and prevent irreversible damage is required. To address this need, we investigate a method to analyze changes in physiological and behavioral patterns using unobtrusively and ubiquitously gathered smart office data. The goal of this paper is to build models that predict self-assessed stress and mental workload scores, as well as models that predict workload conditions based on physiological and behavior data. Regression models were built for the prediction of the self-reported stress and mental workload scores from data based on real office work settings. Similarly, classification models were employed to detect workload conditions and change in these conditions. Specific algorithms to deal with class-imbalance (SMOTEBoost and RUSBoost) were also tested. Results confirm the predictability of behavioral changes for stress and mental workload levels, as well as for change in workload conditions. Results also suggest that computer-use patterns together with body posture and movements are the best predictors for this purpose. Moreover, the importance of self-reported scores' standardization and the suitability of the NASA Task Load Index test for workload assessment is noticed. This work contributes significantly towards the development of an unobtrusive and ubiquitous early stress detection system in smart office environments, whose implementation in the industrial environment would make a great beneficial impact on workers' health status and on the economy of companies.
职业压力在我们的社会中日益普遍。通常,它被发现得太晚,给员工带来身心健康问题,同时也给公司造成经济损失,因为随之而来的旷工、出勤不出力、动力下降或员工流失。因此,需要开发早期压力检测系统,使个人能够及时采取行动,防止不可逆转的损害。为了满足这一需求,我们研究了一种方法,利用以不显眼且普遍的方式收集的智能办公数据来分析生理和行为模式的变化。本文的目标是建立预测自我评估压力和心理负荷分数的模型,以及基于生理和行为数据预测工作负荷状况的模型。基于实际办公工作场景的数据,建立了回归模型来预测自我报告的压力和心理负荷分数。同样,采用分类模型来检测工作负荷状况及其变化。还测试了处理类别不平衡的特定算法(SMOTEBoost和RUSBoost)。结果证实了行为变化对于压力、心理负荷水平以及工作负荷状况变化的可预测性。结果还表明,计算机使用模式以及身体姿势和动作是实现这一目的的最佳预测指标。此外,还注意到自我报告分数标准化的重要性以及美国国家航空航天局任务负荷指数测试在工作负荷评估中的适用性。这项工作对智能办公环境中不显眼且普遍的早期压力检测系统的开发做出了重大贡献,其在工业环境中的实施将对员工健康状况和公司经济产生巨大的有益影响。