Sepanloo Kamelia, Shevelev Daniel, Son Young-Jun, Aras Shravan, Hinton Janine E
Edwardson School of Industrial Engineering, Purdue University, West Lafayette, IN 47907, USA.
School of Information Science, University of Arizona, Tucson, AZ 85721, USA.
Sensors (Basel). 2025 May 20;25(10):3222. doi: 10.3390/s25103222.
This study explores nursing students' stress responses while they are being trained in a mixed reality (MR) setting that replicates highly stressful clinical scenarios. Using measurements of physiological indices such as heart rate, electrodermal activity, and skin temperature, the study assesses the level of stress when the students interact with digital patients whose vital signs and symptoms interact dynamically to respond to student inputs. The simulation consists of six segments, during which critical events like hypotension and hypoxia occur, and the patient's condition changes based on the nurse's clinical decisions. Machine learning algorithms were then used to analyze the nurse's physiological data and to classify different levels of stress. Among the models tested, the Stacking Classifier demonstrated the highest classification accuracy of 96.4%, outperforming both Random Forest (96.18%) and Gradient Boosting (95.35%). The results showed clear patterns of stress during the simulation segments. Statistical analysis also found significant differences in stress responses and identified key physiological markers linked to each stress level. This pioneering study demonstrates the effectiveness of MR as a training tool for healthcare professionals in high-pressured scenarios and lays the groundwork for further studies on stress management, adaptive training procedures, and real-time detection and intervention in MR-based nursing training.
本研究探讨护理专业学生在混合现实(MR)环境中接受培训时的应激反应,该环境模拟了高度紧张的临床场景。通过测量心率、皮肤电活动和皮肤温度等生理指标,研究评估了学生与数字患者互动时的应激水平,这些数字患者的生命体征和症状会动态交互以响应学生的输入。模拟由六个部分组成,在此期间会发生诸如低血压和缺氧等危急事件,并且患者的状况会根据护士的临床决策而变化。然后使用机器学习算法分析护士的生理数据并对不同程度的应激进行分类。在所测试的模型中,堆叠分类器表现出最高的分类准确率,为96.4%,优于随机森林(96.18%)和梯度提升(95.35%)。结果显示了模拟部分期间明显的应激模式。统计分析还发现应激反应存在显著差异,并确定了与每个应激水平相关的关键生理指标。这项开创性研究证明了混合现实作为高压场景下医疗保健专业人员培训工具的有效性,并为进一步研究应激管理、适应性培训程序以及基于混合现实的护理培训中的实时检测和干预奠定了基础。