Title :
Filtering approach based on empirical mode decomposition improves the assessment of short scale complexity in long QT syndrome type 1 population
Author :
Bari, Vlasta ; Marchi, Andrea ; Girardengo, Giulia ; George, Alfred L. ; Brink, Paul A. ; Cerutti, Sergio ; Crotti, Lia ; Schwartz, Peter J. ; Porta, Alberto
Author_Institution :
Dept. of Electron. Inf. & Bioeng., Politec. di Milano, Milan, Italy
Abstract :
This study assesses the complexity of heart period (HP) and QT variability series through sample entropy (SampEn) in long QT syndrome type 1 individuals. In order to improve signal-to-noise ratio SampEn was evaluated over the original series (SampEn0) and over the residual computed by subtracting the first oscillatory mode identified by empirical mode decomposition (SampEnEMD1R). HP and QT interval were continuously extracted during daytime (2:00-6:00 PM) from 24 hour Holter recordings in 14 non mutation carriers (NMCs) and 34 mutation carriers (MCs) subdivided in 11 asymptomatic (ASYMP) and 23 symptomatic (SYMP). Both NMCs and MCs belonged to the same family line. While SampEn0 did not show differences among the three groups, SampEnEMD1R assessed over the QT series significantly decreased in ASYMP subjects. SampEnEMD1R identified a possible factor (i.e. the lower short scale QT complexity) that might contribute to the different risk profile of the ASYMP group.
Keywords :
computational complexity; electrocardiography; entropy; feature extraction; filters; genetics; medical disorders; medical signal processing; risk analysis; signal classification; transforms; HP complexity assessment; Holter recordings; QT variability series; asymptomatic patient risk profile; continuous HP interval extraction; continuous QT interval extraction; empirical mode decomposition; filtering method; heart period complexity assessment; long QT syndrome type 1 population; nonmutation carriers; oscillatory mode identification; residual computation; sample entropy; short scale QT complexity; short scale complexity assessment; signal-to-noise ratio; symptomatic patients; time 24 hour; time 4 hour; Complexity theory; Entropy; Filtering; Heart; Noise; Sociology; Statistics;
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.2014.6945158