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1.
Article in English | MEDLINE | ID: mdl-26736671

ABSTRACT

Interpretation and analysis of intrapartum fetal heart rate, enabling early detection of fetal acidosis, remains a challenging signal processing task. Among the many strategies that were used to tackle this problem, scale-invariance and multifractal analysis stand out. Recently, a new and promising variant of multifractal analysis, based on p-leaders, has been proposed. In this contribution, we use sparse support vector machines applied to p-leader multifractal features with a double aim: Assessment of the features actually contributing to classification; Assessment of the contribution of non linear features (as opposed to linear ones) to classification performance. We observe and interpret that the classification rate improves when small values of the tunable parameter p are used.


Subject(s)
Acidosis/diagnosis , Fetal Diseases/diagnosis , Area Under Curve , Female , Heart Rate, Fetal , Humans , Linear Models , Multivariate Analysis , Pregnancy , ROC Curve , Signal Processing, Computer-Assisted , Support Vector Machine
2.
Article in English | MEDLINE | ID: mdl-26736761

ABSTRACT

Intrapartum fetal heart rate (FHR) constitutes a prominent source of information for the assessment of fetal reactions to stress events during delivery. Yet, early detection of fetal acidosis remains a challenging signal processing task. The originality of the present contribution are three-fold: multiscale representations and wavelet leader based multifractal analysis are used to quantify FHR variability ; Supervised classification is achieved by means of Sparse-SVM that aim jointly to achieve optimal detection performance and to select relevant features in a multivariate setting ; Trajectories in the feature space accounting for the evolution along time of features while labor progresses are involved in the construction of indices quantifying fetal health. The classification performance permitted by this combination of tools are quantified on a intrapartum FHR large database (≃ 1250 subjects) collected at a French academic public hospital.


Subject(s)
Heart Rate, Fetal/physiology , Support Vector Machine , Acidosis/diagnosis , Acidosis/physiopathology , Female , Fetus/physiopathology , Humans , Multivariate Analysis , Pregnancy
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