Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns

Fetal acidosis is reflected by the values of umbilical cord pH and base deficit (BDecf): normal recordings (pH over 7.2 and BDecf under 8 mmol/l) and abnormal recordings (pH under 7.2 and BDecf over 8 mmol/l). The purpose of this paper is to present the implementation of an automated system for d...

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Main Authors: ROTARIU, C., COSTIN, H., PASARICA, A., NEMESCU, D.
Format: Article
Language:English
Published: Stefan cel Mare University of Suceava 2015-08-01
Series:Advances in Electrical and Computer Engineering
Subjects:
Online Access:http://dx.doi.org/10.4316/AECE.2015.03023
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spelling doaj-09cf35c4cc1349e7a88a14d03ba4ebf92020-11-25T01:22:16ZengStefan cel Mare University of SuceavaAdvances in Electrical and Computer Engineering1582-74451844-76002015-08-0115316116610.4316/AECE.2015.03023Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in NewbornsROTARIU, C.COSTIN, H.PASARICA, A.NEMESCU, D.Fetal acidosis is reflected by the values of umbilical cord pH and base deficit (BDecf): normal recordings (pH over 7.2 and BDecf under 8 mmol/l) and abnormal recordings (pH under 7.2 and BDecf over 8 mmol/l). The purpose of this paper is to present the implementation of an automated system for detecting fetal acidosis in cardiotocographic recordings. The method uses spectral analysis of medium (0.07-0.13 Hz) and high (0.13-1 Hz) frequency spectrum. We implement the algorithm for segments of the recordings without signal loss for better classification. We determined the normalized medium and high frequency components and mid to high frequency ratio. The recordings in the database are divided into a control group (100 normal recordings) and a test group (431 normal or abnormal recordings). A t-test with the p value under 0.05 between the two groups is used to classify the test group. The classification is improved by including the presence of late and prolonged decelerations in the classification process, obtaining the final results, which are comparable to the best ones in current literature.http://dx.doi.org/10.4316/AECE.2015.03023cardiotocographic signalsfetal heart rate monitoringmetabolic acidemia detectionpattern classificationspectral analysis
collection DOAJ
language English
format Article
sources DOAJ
author ROTARIU, C.
COSTIN, H.
PASARICA, A.
NEMESCU, D.
spellingShingle ROTARIU, C.
COSTIN, H.
PASARICA, A.
NEMESCU, D.
Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
Advances in Electrical and Computer Engineering
cardiotocographic signals
fetal heart rate monitoring
metabolic acidemia detection
pattern classification
spectral analysis
author_facet ROTARIU, C.
COSTIN, H.
PASARICA, A.
NEMESCU, D.
author_sort ROTARIU, C.
title Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
title_short Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
title_full Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
title_fullStr Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
title_full_unstemmed Classification of Parameters Extracted from Cardiotocographic Signals for Early Detection of Metabolic Acidemia in Newborns
title_sort classification of parameters extracted from cardiotocographic signals for early detection of metabolic acidemia in newborns
publisher Stefan cel Mare University of Suceava
series Advances in Electrical and Computer Engineering
issn 1582-7445
1844-7600
publishDate 2015-08-01
description Fetal acidosis is reflected by the values of umbilical cord pH and base deficit (BDecf): normal recordings (pH over 7.2 and BDecf under 8 mmol/l) and abnormal recordings (pH under 7.2 and BDecf over 8 mmol/l). The purpose of this paper is to present the implementation of an automated system for detecting fetal acidosis in cardiotocographic recordings. The method uses spectral analysis of medium (0.07-0.13 Hz) and high (0.13-1 Hz) frequency spectrum. We implement the algorithm for segments of the recordings without signal loss for better classification. We determined the normalized medium and high frequency components and mid to high frequency ratio. The recordings in the database are divided into a control group (100 normal recordings) and a test group (431 normal or abnormal recordings). A t-test with the p value under 0.05 between the two groups is used to classify the test group. The classification is improved by including the presence of late and prolonged decelerations in the classification process, obtaining the final results, which are comparable to the best ones in current literature.
topic cardiotocographic signals
fetal heart rate monitoring
metabolic acidemia detection
pattern classification
spectral analysis
url http://dx.doi.org/10.4316/AECE.2015.03023
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AT pasaricaa classificationofparametersextractedfromcardiotocographicsignalsforearlydetectionofmetabolicacidemiainnewborns
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