Precocious sepsis detection in critical care patients using heart rate approximate entropy
Keywords:
infection, Emergency, heart rate, entropy, sepsisAbstract
Sepsis is diagnosed when symptoms and signs are installed. Diagnostic delays cause high morbidity and mortality. Heart rate variability (HRV) has been proposed as a sepsis biomarker. Approximate Entropy (ApEn) is a measure of the complexity of the HRV signal. Objective: To determine heart rate ApEn value for precocious sepsis detection.
A prospective observational study was carried out at Hospital Misericordia, between 2016 - 2018. Both gender patients >15 years old admitted to ICU were included. Patients with disorder that could alter HRV (cardiopulmonary, neurological, arrhythmias, beta-blockers, or calcium blockers) were excluded. Study variable: blood culture confirmed sepsis. Main predictor: hearth rate (HR) ApEn. HR was determined by pulse and continuous ECG monitoring. Covariates: age, sex, APACHEII, Glasgow and SOFA scores, morbidity, admission diagnosis, complications, and mortality. Discrete variables were described in absolute and relative frequencies with 95%CI. Normal continuous variables in means ± SD and non-normal variables in medians and interquartile ranges. Bivariate analysis was performed using Fischer test, t test or Mann-Whitney U test. Multivariate analysis was carried out in a multiple logistic regression model. HR ApEn cut-off point was determined by the area under ROC curve. Significant p value was established < 0.05.
153 patients were studied. Mean age 42.5 ± 25 years. 86 males (56.2%). Sepsis was confirmed in 85 (55.5%). The overall median HR ApEn was 0.352. ApEn in septic patients was 0.414 vs 0.076 in non-septic patients, p < 0.001. ApEn cut-off point was 0.244 with a sensitivity of 97.7%, specificity of 90.6%, positive predictive value of 94.4% and a negative predictive value of 96.0%.
HR ApEn values greater than 0.244 predicts confirmed bacterial sepsis 24 hours before clinical presentation´s signs.
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