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A PCA/ICA based Fetal ECG Extraction from Mother Abdominal Recordings by Means of a Novel Data-driven Approach to Fetal ECG Quality Assessment

机译:基于PCA / ICA的胎儿心电图从母亲腹部记录中提取胎儿心电图质量的新方法

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Background: Fetal electrocardiography is a developing field that provides valuable information on the fetal health during pregnancy. By early diagnosis and treatment of fetal heart problems, more survival chance is given to the infant. Objective: Here, we extract fetal ECG from maternal abdominal recordings and detect R-peaks in order to recognize fetal heart rate. On the next step, we find a better and more qualified extracted fetal ECG by using a novel approach. Materials and Methods: In this paper, a PCA/ICA-based algorithm is proposed for extracting fetal ECG, and fetal R-peaks are detected as well. The method validates the quality of extracted ECGs and selects the best candidate fetal ECG to provide the required morphological ECG features such as fetal heart rate and RR interval for more clinical examinations. The method was evaluated using the dataset which was provided by PhysioNet/Computing in Cardiology Challenge 2013. The dataset consists of 75 recordings of 4-channel ECGs each containing 1-minute length for training and 100 similar recordings for testing. Results: When the proposed algorithm was applied to the test set, the scores of 85.853 bpm2 for fetal heart rate and an error of 9.725 ms RMS for fetal RR-interval estimation were obtained. Conclusion: The results obtained with the mentioned algorithm shows the robustness of the research, and it is suggested to be used in practical fetal ECG monitoring systems.
机译:背景:胎儿心电图是一个发展中的领域,可提供有关怀孕期间胎儿健康的宝贵信息。通过早期诊断和治疗胎儿心脏问题,可以为婴儿提供更多的生存机会。目的:在这里,我们从孕妇腹部记录中提取胎儿心电图并检测R峰,以识别胎儿心率。下一步,我们将通过一种新颖的方法找到一种更好,更合格的胎儿胎儿心电图。材料和方法:本文提出了一种基于PCA / ICA的算法来提取胎儿心电图,并且可以检测到胎儿的R峰。该方法验证提取的心电图的质量,并选择最佳候选胎儿心电图,以提供所需的形态心电图特征,例如胎儿心率和RR间隔,以进行更多的临床检查。使用PhysioNet / Computing在Cardiology Challenge 2013中提供的数据集对该方法进行了评估。该数据集由75条4通道ECG记录组成,每个记录包含1分钟的训练时长和100条类似的记录以进行测试。结果:将所提出的算法应用于测试集时,胎儿心率得分为85.853 bpm2,胎儿RR间隔估计误差为9.725 ms RMS。结论:通过上述算法获得的结果表明了该研究的鲁棒性,建议将其用于实际的胎儿心电监护系统中。

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