Objective and Approach: Sepsis, a dysregulated immune-mediated host response to infection, is the leading cause of morbidity and mortality in critically ill patients. Indices of heart rate variability and complexity (such as entropy) have been proposed as surrogate markers of neuro-immune system dysregulation with diseases such as sepsis. However, these indices only provide an average, one dimensional description of complex neuro-physiological interactions. We propose a novel multiscale network construction and analysis method for multivariate physiological time series, and demonstrate its utility for early prediction of sepsis. MAIN RESULTS: We show that features derived from a multiscale heart rate and blood pressure time series network provide approximately 20% improvement in the area under the receiver operating characteristic (AUROC) for four-hour advance prediction of sepsis over traditional indices of heart rate entropy ([Formula: see text] versus [Formula: see text]). Our results indicate that this improvement is attributable to both the improved network construction method proposed here, as well as the information embedded in the higher order interaction of heart rate and blood pressure time series dynamics. Our final model, which included the most commonly available clinical measurements in patients' electronic medical records and multiscale entropy features, as well as the proposed network-based features, achieved an AUROC of [Formula: see text]. SIGNIFICANCE: Prediction of the onset of sepsis prior to clinical recognition will allow for meaningful earlier interventions (e.g. antibiotic and fluid administration), which have the potential to decrease sepsis-related morbidity, mortality and healthcare costs.
Objective and Approach: Sepsis, a dysregulated immune-mediated host response to infection, is the leading cause of morbidity and mortality in critically illpatients. Indices of heart rate variability and complexity (such as entropy) have been proposed as surrogate markers of neuro-immune system dysregulation with diseases such as sepsis. However, these indices only provide an average, one dimensional description of complex neuro-physiological interactions. We propose a novel multiscale network construction and analysis method for multivariate physiological time series, and demonstrate its utility for early prediction of sepsis. MAIN RESULTS: We show that features derived from a multiscale heart rate and blood pressure time series network provide approximately 20% improvement in the area under the receiver operating characteristic (AUROC) for four-hour advance prediction of sepsis over traditional indices of heart rate entropy ([Formula: see text] versus [Formula: see text]). Our results indicate that this improvement is attributable to both the improved network construction method proposed here, as well as the information embedded in the higher order interaction of heart rate and blood pressure time series dynamics. Our final model, which included the most commonly available clinical measurements in patients' electronic medical records and multiscale entropy features, as well as the proposed network-based features, achieved an AUROC of [Formula: see text]. SIGNIFICANCE: Prediction of the onset of sepsis prior to clinical recognition will allow for meaningful earlier interventions (e.g. antibiotic and fluid administration), which have the potential to decrease sepsis-related morbidity, mortality and healthcare costs.
Authors: J Randall Moorman; John B Delos; Abigail A Flower; Hanqing Cao; Boris P Kovatchev; Joshua S Richman; Douglas E Lake Journal: Physiol Meas Date: 2011-10-25 Impact factor: 2.833
Authors: Thomas Desautels; Jacob Calvert; Jana Hoffman; Melissa Jay; Yaniv Kerem; Lisa Shieh; David Shimabukuro; Uli Chettipally; Mitchell D Feldman; Chris Barton; David J Wales; Ritankar Das Journal: JMIR Med Inform Date: 2016-09-30
Authors: Aaron J Masino; Mary Catherine Harris; Daniel Forsyth; Svetlana Ostapenko; Lakshmi Srinivasan; Christopher P Bonafide; Fran Balamuth; Melissa Schmatz; Robert W Grundmeier Journal: PLoS One Date: 2019-02-22 Impact factor: 3.240
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Authors: Lucas M Fleuren; Thomas L T Klausch; Charlotte L Zwager; Linda J Schoonmade; Tingjie Guo; Luca F Roggeveen; Eleonora L Swart; Armand R J Girbes; Patrick Thoral; Ari Ercole; Mark Hoogendoorn; Paul W G Elbers Journal: Intensive Care Med Date: 2020-01-21 Impact factor: 17.440