Dylan A Defilippi, David D Salcido, Chase Zikmund, Leonard S Weiss, Aaron C Weidman, Francis X Guyette, Ronald Poropatich, Michael R Pinsky
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引用次数: 0
Abstract
Background: Heart rate variability (HRV) measures give insight into the autonomic regulation of cardiac function in healthy and critically ill patients. The ease and predictive potential of HRV measures may be valuable in optimizing prehospital triage. In this retrospective study, we hypothesized that HRV measures, specifically sample entropy, measured early in emergency transport would predict the need for a prehospital lifesaving intervention (LSI) in a large, heterogenous cohort of critically ill patients.
Methods: We obtained patient records from a large helicopter critical care transport service. Continuous electrocardiogram (ECG) data were processed and screened for signal artifacts. Time, frequency, and complexity domain HRV measures were calculated and averaged. Multivariable logistic regression models and t-tests were constructed to establish associations between selected HRV measures and the need for a prehospital LSI, adjusting for demography and case characteristics including patient age, sex, scene run, and trauma/non-trauma. A suite of machine learning algorithms was applied to optimize prediction of outcome measures.
Results: A total of 4,521 cases were included for analysis. Of all patients, 68.8% of patients received prehospital LSI. Sample entropy, as well as other HRV measures, was associated with reception of prehospital LSI (OR 0.50 (95% CI [0.43,0.59])). Gradient boosting and random forest algorithms showed the best performance in predicting LSI (AUROC scores = 0.78 - 0.79).
Conclusions: Certain HRV measures are associated with prehospital LSI. Subsequent studies should focus on clinical utility and actionable thresholds for triage and initiation of LSIs.
期刊介绍:
SHOCK®: Injury, Inflammation, and Sepsis: Laboratory and Clinical Approaches includes studies of novel therapeutic approaches, such as immunomodulation, gene therapy, nutrition, and others. The mission of the Journal is to foster and promote multidisciplinary studies, both experimental and clinical in nature, that critically examine the etiology, mechanisms and novel therapeutics of shock-related pathophysiological conditions. Its purpose is to excel as a vehicle for timely publication in the areas of basic and clinical studies of shock, trauma, sepsis, inflammation, ischemia, and related pathobiological states, with particular emphasis on the biologic mechanisms that determine the response to such injury. Making such information available will ultimately facilitate improved care of the traumatized or septic individual.