Georgas Antonios, Panagiotakopoulou Anna, Bitsikas Grigorios, Vlantoni Katerina, Ferraro Angelo, Hristoforou Evangelos
Laboratory of Electronic Sensors, National Technical University of Athens, 15772 Athens, Greece.
Department of History and Philosophy of Science, School of Science, National and Kapodistrian University of Athens, 15771 Athens, Greece.
Biosensors (Basel). 2025 Jan 2;15(1):14. doi: 10.3390/bios15010014.
This study investigates the impact of patient stress on COVID-19 screening. An attempt was made to measure the level of anxiety of individuals undertaking rapid tests for SARS-CoV-2. To this end, a galvanic skin response (GSR) sensor that was connected to a microcontroller was used to record the individual stress levels. GSR data were collected from 51 individuals at SARS-CoV-2 testing sites. The recorded data were then compared with theoretical estimates to draw insights into stress patterns. Machine learning analysis was applied for the optimization of the sensor results. Classification algorithms allowed the automatic reading of the sensor results and individual identification as "stressed" or "not stressed". The findings confirmed the initial hypothesis that there was a significant increase in stress levels during the rapid test. This observation is critical, as heightened anxiety may influence a patient's willingness to participate in screening procedures, potentially reducing the effectiveness of public health screening strategies.
本研究调查了患者压力对新冠病毒检测的影响。研究尝试测量进行新冠病毒快速检测的个体的焦虑程度。为此,使用了一个连接到微控制器的皮肤电反应(GSR)传感器来记录个体的压力水平。在新冠病毒检测点从51名个体收集了GSR数据。然后将记录的数据与理论估计值进行比较,以深入了解压力模式。应用机器学习分析来优化传感器结果。分类算法能够自动读取传感器结果并将个体识别为“有压力”或“无压力”。研究结果证实了最初的假设,即在快速检测期间压力水平显著上升。这一观察结果至关重要,因为焦虑加剧可能会影响患者参与筛查程序的意愿,从而可能降低公共卫生筛查策略的有效性。