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Detection of Segments with Fetal QRS Complex from Abdominal Maternal ECG Recordings using Support Vector Machine

机译:使用支持向量机从腹部孕妇心电图记录中检测胎儿QRS复合物的节段

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This paper introduces a robust method based on the Support Vector Machine (SVM) algorithm to detect the presence of Fetal QRS (fQRS) complexes in electrocardiogram (ECG) recordings provided by the PhysioNet/CinC challenge 2013. ECG signals are first segmented into contiguous frames of 250 ms duration and then labeled in six classes. Fetal segments are tagged according to the position of fQRS complex within each one. Next, segment features extraction and dimensionality reduction are obtained by applying principal component analysis on Haar-wavelet transform. After that, two sub-datasets are generated to separate representative segments from atypical ones. Imbalanced class problem is dealt by applying sampling without replacement on each sub-dataset. Finally, two SVMs are trained and cross-validated using the two balanced sub-datasets separately. Experimental results show that the proposed approach achieves high performance rates in fetal heartbeats detection that reach up to 90.95% of accuracy, 92.16% of sensitivity, 88.51% of specificity, 94.13% of positive predictive value and 84.96% of negative predictive value. A comparative study is also carried out to show the performance of other two machine learning algorithms for fQRS complex estimation, which are K-nearest neighborhood and Bayesian network.
机译:本文介绍了一种基于支持向量机(SVM)算法的鲁棒方法,用于检测PhysioNet / CinC Challenge 2013提供的心电图(ECG)记录中胎儿QRS(fQRS)复合物的存在。首先将ECG信号分割为连续帧持续时间为250毫秒,然后分为六类。根据每个fQRS复合体中的位置标记胎儿节段。接下来,通过在Haar-小波变换上应用主成分分析来获得段特征提取和降维。之后,将生成两个子数据集,以将代表段与非典型段分开。通过在每个子数据集上应用样本而不替换样本来解决类不平衡问题。最后,分别使用两个平衡子数据集对两个SVM进行训练和交叉验证。实验结果表明,该方法在胎儿心跳检测中具有很高的准确率,准确率达90.95%,灵敏度达92.16%,特异度达88.51%,阳性预测值达94.13%,阴性预测值达84.96%。还进行了一项比较研究,以显示其他两种用于fQRS复杂度估计的机器学习算法的性能,即K最近邻和贝叶斯网络。

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