Uterine EMG analysis: a dynamic approach for change detection and classification

Toward the goal of detecting preterm birth by characterizing events in the uterine electromyogram (EMG), the authors propose a method of detection and classification of events in this signal. Uterine EMG is considered as a nonstationary signal and the authors' approach consists of assuming piecewise stationarity and using a dynamic change detector with no a priori knowledge of the parameters of the hypotheses on the process state to be detected. The detection approach is based on the dynamic cumulative sum (DCS) of the local generalized likelihood ratios associated with a multiscale decomposition using wavelet transform. This combination of DCS and multiscale decomposition was shown to be very efficient for detection of both frequency and energy changes. An unsupervised classification based on the comparison between variance-covariance matrices computed from selected scales of the decomposition was implemented after detection. Finally a class labeling based on neural networks was developed. This algorithm of detection-classification-labeling gives satisfactory results on uterine EMG: in most cases more than 80% of the events are correctly detected and classified whatever the term of gestation.

[1]  G. Seber Multivariate observations / G.A.F. Seber , 1983 .

[2]  C. Marque Analyse de la dynamique des contractions utérines par électromyographie abdominale , 1987 .

[3]  N. Thakor,et al.  Multiresolution wavelet analysis of evoked potentials , 1993, IEEE Transactions on Biomedical Engineering.

[4]  Marc Lavielle Detection of changes in the spectrum of a multidimensional process , 1993, IEEE Trans. Signal Process..

[5]  M. Khalil,et al.  Detection and classification in uterine electromyography by multiscale representation , 1997, Proceedings of the 19th Annual International Conference of the IEEE Engineering in Medicine and Biology Society. 'Magnificent Milestones and Emerging Opportunities in Medical Engineering' (Cat. No.97CH36136).

[6]  Bellanger,et al.  6 - Détection temps-échelle d'évènements paroxystiques intercritiques en électroencéphalogramme , 1995 .

[7]  Eric Hitti,et al.  Détection de rupture dans des signaux harmoniques à partir de la transformée en ondelettes discrète , 1997 .

[8]  Alan S. Willsky,et al.  A Wavelet Packet Approach to Transient Signal Classification , 1995 .

[9]  Michèle Basseville,et al.  Detection of abrupt changes , 1993 .

[10]  V. Samar,et al.  Multiresolution Analysis of Event-Related Potentials by Wavelet Decomposition , 1995, Brain and Cognition.

[11]  Danny Coomans,et al.  Classification Using Adaptive Wavelets for Feature Extraction , 1997, IEEE Trans. Pattern Anal. Mach. Intell..

[12]  Fabrice Wendling,et al.  Segmentation vectorielle des signaux épileptiques une approche expérimentale multi-agents , 2001 .

[13]  Clifford Lau,et al.  Neural Networks: Theoretical Foundations and Analysis , 1991 .

[14]  Mourad Barkat,et al.  Signal detection and estimation , 1991 .

[15]  Michèle Basseville,et al.  Detection of abrupt changes: theory and application , 1993 .

[16]  Catherine Marque,et al.  Surveillance des grossesses à risque par électromyographie utérine , 1995 .

[17]  Stéphane Mallat,et al.  Characterization of Signals from Multiscale Edges , 2011, IEEE Trans. Pattern Anal. Mach. Intell..

[18]  Shubha Kadambe,et al.  Application of the wavelet transform for pitch detection of speech signals , 1992, IEEE Trans. Inf. Theory.

[19]  Jessica Lowell Neural Network , 2001 .

[20]  C. Li,et al.  Detection of ECG characteristic points using wavelet transforms. , 1995, IEEE transactions on bio-medical engineering.

[21]  Jacques Duchêne,et al.  Detection and classification of multiple events in piecewise stationary signals: Comparison between autoregressive and multiscale approaches , 1999, Signal Process..

[22]  J Duchêne,et al.  Surface electromyogram during voluntary contraction: processing tools and relation to physiological events. , 1993, Critical reviews in biomedical engineering.

[23]  C Marque,et al.  Uterine electromyography: a critical review. , 1993, American journal of obstetrics and gynecology.

[24]  Ronald R. Coifman,et al.  Entropy-based algorithms for best basis selection , 1992, IEEE Trans. Inf. Theory.

[25]  Catherine Marque,et al.  Uterine EHG Processing for Obstetrical Monitorng , 1986, IEEE Transactions on Biomedical Engineering.

[26]  Igor V. Nikiforov,et al.  A generalized change detection problem , 1995, IEEE Trans. Inf. Theory.

[27]  Hagit Messer,et al.  The use of the wavelet transform in the detection of an unknown transient signal , 1992, IEEE Trans. Inf. Theory.