Network Physiology Lab, Division of Medicine, UCL, London, UK.
Department of Perioperative Medicine and Pain, Barts Health NHS Trust, London, UK.
Physiol Rep. 2022 Dec;10(24):e15546. doi: 10.14814/phy2.15546.
Recent studies have found that oxygen saturation (SpO ) variability analysis has potential for noninvasive assessment of the functional connectivity of cardiorespiratory control systems during hypoxia. Patients with sepsis have suboptimal tissue oxygenation and impaired organ system connectivity. Our objective with this report was to highlight the potential use for SpO variability analysis in predicting intensive care survival in patients with sepsis. MIMIC-III clinical data of 164 adults meeting Sepsis-3 criteria and with 30 min of SpO and respiratory rate data were analyzed. The complexity of SpO signals was measured through various entropy calculations such as sample entropy and multiscale entropy analysis. The sequential organ failure assessment (SOFA) score was calculated to assess the severity of sepsis and multiorgan failure. While the standard deviation of SpO signals was comparable in the non-survivor and survivor groups, non-survivors had significantly lower SpO entropy than those who survived their ICU stay (0.107 ± 0.084 vs. 0.070 ± 0.083, p < 0.05). According to Cox regression analysis, higher SpO entropy was a predictor of survival in patients with sepsis. Multivariate analysis also showed that the prognostic value of SpO entropy was independent of other covariates such as age, SOFA score, mean SpO , and ventilation status. When SpO entropy was combined with mean SpO , the composite had a significantly higher performance in prediction of survival. Analysis of SpO entropy can predict patient outcome, and when combined with SpO mean, can provide improved prognostic information. The prognostic power is on par with the SOFA score. This analysis can easily be incorporated into current ICU practice and has potential for noninvasive assessment of critically ill patients.
最近的研究发现,氧饱和度(SpO2)变异分析有可能无创评估缺氧期间心肺控制系统的功能连接。脓毒症患者组织氧合不佳,器官系统连接受损。我们报告的目的是强调 SpO2 变异分析在预测脓毒症患者重症监护存活率方面的潜在用途。对符合 Sepsis-3 标准且有 30 分钟 SpO2 和呼吸率数据的 164 名成年人的 MIMIC-III 临床数据进行了分析。通过各种熵计算(如样本熵和多尺度熵分析)测量 SpO 信号的复杂性。计算序贯器官衰竭评估(SOFA)评分以评估脓毒症和多器官衰竭的严重程度。虽然 SpO 信号的标准差在非幸存者和幸存者组之间无差异,但非幸存者的 SpO 熵明显低于幸存者(0.107±0.084 对 0.070±0.083,p<0.05)。根据 Cox 回归分析,较高的 SpO 熵是脓毒症患者存活的预测指标。多变量分析还表明,SpO 熵的预后价值独立于年龄、SOFA 评分、平均 SpO2 和通气状态等其他协变量。当 SpO 熵与平均 SpO2 结合使用时,组合在预测存活方面的性能显著提高。SpO 熵分析可预测患者预后,与 SpO 平均结合使用时,可提供改善的预后信息。其预后能力与 SOFA 评分相当。这种分析可以很容易地纳入当前的 ICU 实践,并具有对危重症患者进行无创评估的潜力。