'Grigore T. Popa' University of Medicine and Pharmacy, 700115 Iasi, Romania.
Department of Interventional Cardiology - Cardiovascular Diseases Institute, 700503 Iasi, Romania.
Rev Cardiovasc Med. 2021 Sep 24;22(3):845-852. doi: 10.31083/j.rcm2203090.
Sleepiness, fatigue, and stress in drivers are the leading causes of car crashes. In the late two decades, there is an endeavor to monitor vital signs, stress levels, and fatigue using adapted sensors supported by technological advances. To the best of our knowledge, this systematic review is the first to investigate the role of HRV measurement for sleepiness, fatigue, and stress level monitoring in car drivers. A search was performed in PubMed, Embase, and Cochrane databases using prespecified keywords. Studies were considered for inclusion if they reported original data regarding the association between different HRV measurements and drivers' sleepiness, fatigue, or stress levels. Of the retrieved 749 citations, 19 studies were finally included. The sensibility and specificity of HRV significantly varied across studies, respectively 47.1%-95% and 74.6%-98%. Accuracy was also different, ranging from 56.6% to 95%. Nevertheless, in real-world conditions, confounding factors could affect sympathovagal tone and HRV. Multiple HRV parameters measurement rather than one parameter approach seems to be the optimal strategy for evaluating the vigilance state in drivers that it would be possible to achieve a good performance. As all studies were observational, data should be confirmed in randomized controlled trials. In conclusion, HRV represents a potentially valuable marker for sleepiness, fatigue, and stress monitoring in car drivers. HRV measurements could be implemented in future clinical models and sensors to detect early sleepiness and fatigue and prevent car crashes. More studies with larger populations are needed to support this evidence.
困倦、疲劳和压力是驾驶员发生车祸的主要原因。在过去的二十年中,人们一直致力于通过适应传感器并结合技术进步来监测生命体征、压力水平和疲劳程度。据我们所知,这是首次系统地调查心率变异性测量在监测驾驶员困倦、疲劳和压力水平方面的作用。在 PubMed、Embase 和 Cochrane 数据库中使用预设的关键词进行了搜索。如果研究报告了不同心率变异性测量与驾驶员困倦、疲劳或压力水平之间的关联的原始数据,则将其纳入研究。从检索到的 749 条引文中,最终纳入了 19 项研究。心率变异性的敏感性和特异性在研究之间差异很大,分别为 47.1%-95%和 74.6%-98%。准确性也不同,范围从 56.6%到 95%。然而,在现实条件下,混杂因素可能会影响交感神经和心率变异性。与单一参数方法相比,测量多个心率变异性参数似乎是评估驾驶员警觉状态的最佳策略,这可能会实现良好的性能。由于所有研究均为观察性研究,因此数据应在随机对照试验中得到证实。总之,心率变异性代表了监测驾驶员困倦、疲劳和压力的一种有潜在价值的标志物。心率变异性测量可以在未来的临床模型和传感器中实施,以检测早期的困倦和疲劳,预防车祸。需要更多的大型人群研究来支持这一证据。