Nan Cheng, Ruoxue Bai, Lan Li, Xu Zhang, Xiaoru Kan, Jinghan Liu, Yujie Qi, Shaowei Li, Zhenliang Hui, Jun Chen
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引用次数: 0
Abstract
This study aims to explore the relationship between the circadian rhythms of critically ill patients and the incidence of Status Epilepticus (SE), and to develop a predictive model based on circadian rhythm indicators and clinical factors. We conducted a diurnal rhythm analysis of vital sign data from 4413 patients, discovering significant differences in the circadian rhythms of body temperature, blood oxygen saturation, and heart rate between the SE and non-SE groups, which were correlated with the incidence of SE. We also employed various machine learning algorithms to identify the ten most significant variables and developed a predictive model with strong performance and clinical applicability. Our research provides a new perspective and methodology for the study of biological rhythms in critically ill patients, offering new evidence and tools for the prevention and treatment of SE. Our findings are consistent or similar to some in the literature, while differing from or supplementing others. We observed significant differences in the vital signs of epileptic patients at different times of the day across various diagnostic time groups, reflecting the regulatory effects of circadian rhythms. We suggest heightened monitoring and intervention of vital signs in critically ill patients, especially during late night to early morning hours, to reduce the risk of SE and provide more personalized treatment plans.
本研究旨在探讨重症患者的昼夜节律与癫痫状态(SE)发生率之间的关系,并根据昼夜节律指标和临床因素建立预测模型。我们对4413名患者的生命体征数据进行了昼夜节律分析,发现SE组和非SE组的体温、血氧饱和度和心率的昼夜节律存在显著差异,这与SE的发生率相关。我们还采用了各种机器学习算法来识别十个最重要的变量,并开发出了一个性能强大、适用于临床的预测模型。我们的研究为研究重症患者的生物节律提供了新的视角和方法,为预防和治疗 SE 提供了新的证据和工具。我们的研究结果与一些文献一致或相似,同时也与其他文献不同或有所补充。我们观察到癫痫患者在一天中不同时间段的生命体征在不同诊断时间组存在明显差异,这反映了昼夜节律的调节作用。我们建议加强对重症患者生命体征的监测和干预,尤其是在深夜至清晨时段,以降低 SE 的风险并提供更个性化的治疗方案。
期刊介绍:
Chronobiology International is the journal of biological and medical rhythm research. It is a transdisciplinary journal focusing on biological rhythm phenomena of all life forms. The journal publishes groundbreaking articles plus authoritative review papers, short communications of work in progress, case studies, and letters to the editor, for example, on genetic and molecular mechanisms of insect, animal and human biological timekeeping, including melatonin and pineal gland rhythms. It also publishes applied topics, for example, shiftwork, chronotypes, and associated personality traits; chronobiology and chronotherapy of sleep, cardiovascular, pulmonary, psychiatric, and other medical conditions. Articles in the journal pertain to basic and applied chronobiology, and to methods, statistics, and instrumentation for biological rhythm study.
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