Service de Médecine Intensive et Réanimation, Medical Intensive Care, CHRU de Brest-La Cavale Blanche, 29609, Brest Cedex, France.
LATIM INSERM UMR 1101, FHU Techsan, Université de Bretagne Occidentale, Brest, France.
Sci Rep. 2022 Feb 15;12(1):2498. doi: 10.1038/s41598-022-06301-9.
Heart rate variability (HRV) is a mean to evaluate cardiac effects of autonomic nervous system activity, and a relation between HRV and outcome has been proposed in various types of patients. We attempted to evaluate the best determinants of such variation in survival prediction using a physiological data-warehousing program. Plethysmogram tracings (PPG) were recorded at 75 Hz from the standard monitoring system, for a 2 h period, during the 24 h following ICU admission. Physiological data recording was associated with metadata collection. HRV was derived from PPG in either the temporal and non-linear domains. 540 consecutive patients were recorded. A lower LF/HF, SD2/SD1 ratios and Shannon entropy values on admission were associated with a higher ICU mortality. SpO2/FiO2 ratio and HRV parameters (LF/HF and Shannon entropy) were independent correlated with mortality in the multivariate analysis. Machine-learning using neural network (kNN) enabled to determine a simple decision tree combining the three best determinants (SDNN, Shannon Entropy, SD2/SD1 ratio) of a composite outcome index. HRV measured on admission enables to predict outcome in the ICU or at Day-28, independently of the admission diagnosis, treatment and mechanical ventilation requirement.Trial registration: ClinicalTrials.gov identifier NCT02893462.
心率变异性(HRV)是评估自主神经系统活动对心脏影响的一种方法,已经在各种类型的患者中提出了 HRV 与结局之间的关系。我们试图使用生理数据仓库程序来评估生存预测中这种变化的最佳决定因素。在 ICU 入院后 24 小时内,从标准监测系统以 75 Hz 的频率记录 2 小时的容积描记图(PPG)。生理数据记录与元数据收集相关联。从 PPG 中可以推导出时间和非线性域中的 HRV。记录了 540 例连续患者。入院时较低的 LF/HF、SD2/SD1 比值和香农熵值与 ICU 死亡率较高相关。在多变量分析中,SpO2/FiO2 比值和 HRV 参数(LF/HF 和香农熵)与死亡率独立相关。使用神经网络(kNN)的机器学习能够确定一个简单的决策树,该决策树结合了三个最佳决定因素(SDNN、Shannon 熵、SD2/SD1 比值),以形成复合结局指数。入院时测量的 HRV 能够独立于入院诊断、治疗和机械通气需求来预测 ICU 或第 28 天的结局。试验注册:ClinicalTrials.gov 标识符 NCT02893462。