Title :
Computing network-based features from physiological time series: Application to sepsis detection
Author :
Santaniello, Sabato ; Granite, Stephen J. ; Sarma, Sridevi V. ; Winslow, Raimond L.
Author_Institution :
Inst. for Comput. Med., Johns Hopkins Univ., Baltimore, MD, USA
Abstract :
Sepsis is a systemic deleterious host response to infection. It is a major healthcare problem that affects millions of patients every year in the intensive care units (ICUs) worldwide. Despite the fact that ICU patients are heavily instrumented with physiological sensors, early sepsis detection remains challenging, perhaps because clinicians identify sepsis by using static scores derived from bed-side measurements individually, i.e., without systematically accounting for potential interactions between these signals and their dynamics. In this study, we apply network-based data analysis to take into account interactions between bed-side physiological time series (PTS) data collected in ICU patients, and we investigate features to distinguish between sepsis and non-sepsis conditions. We treated each PTS source as a node on a graph and we retrieved the graph connectivity matrix over time by tracking the correlation between each pair of sources´ signals over consecutive time windows. Then, for each connectivity matrix, we computed the eigenvalue decomposition. We found that, even though raw PTS measurements may have indistinguishable distributions in non-sepsis and early sepsis states, the median /I of the eigenvalues computed from the same data is statistically different (p <; 0.001) in the two states and the evolution of /I may reflect the disease progression. Although preliminary, these findings suggest that network-based features computed from continuous PTS data may be useful for early sepsis detection.
Keywords :
data analysis; diseases; eigenvalues and eigenfunctions; feature extraction; health care; patient care; physiological models; time series; ICU patients; PTS measurements; PTS source; bed-side measurements; bed-side physiological time series; disease progression; eigenvalue decomposition; graph connectivity matrix; healthcare problem; indistinguishable distributions; intensive care units; network-based data analysis; network-based features; nonsepsis conditions; physiological sensors; sepsis detection; static scores; systemic deleterious; Correlation; Eigenvalues and eigenfunctions; Electric shock; Feature extraction; Medical treatment; Physiology; Vectors;
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2014 36th Annual International Conference of the IEEE
Conference_Location :
Chicago, IL
DOI :
10.1109/EMBC.2014.6944457