A support-vector-machine classifier using systems modeling of uterine pressure and fetal heart rate detected 50% of pathological cases with a 7.5% false positive rate prior to delivery.
Does a machine learning classifier based on systems modeling of cardiotocography improve early detection of hypoxic fetuses during labor?
A machine learning approach using systems modeling of cardiotocography can detect fetal hypoxia early during labor with a low false positive rate.
Recording of maternal uterine pressure (UP) and fetal heart rate (FHR) during labor and delivery is a procedure referred to as cardiotocography. We modeled this signal pair as an input-output system using a system identification approach to estimate their dynamic relation in terms of an impulse response function. We also modeled FHR baseline with a linear fit and FHR variability unrelated to UP using the power spectral density, computed from an auto-regressive model. Using a perinatal database of normal and pathological cases, we trained support-vector-machine classifiers with feature sets from these models. We used the classification in a detection process. We obtained the best results with a detector that combined the decisions of classifiers using both feature sets. It detected half of the pathological cases, with very few false positives (7.5%), 1 h and 40 min before delivery. This would leave sufficient time for an appropriate clinical response. These results clearly demonstrate the utility of our method for the early detection of cases needing clinical intervention.
Warrick et al. (Wed,) conducted a other in Fetal hypoxia. Support-vector-machine classifiers using systems modeling of intrapartum cardiotocography was evaluated on Detection of pathological cases. A support-vector-machine classifier using systems modeling of uterine pressure and fetal heart rate detected 50% of pathological cases with a 7.5% false positive rate prior to delivery.
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