TY - GEN
T1 - Advance artificial neural network classification techniques using EHG for detecting preterm births
AU - Idowu, Ibrahim Olatunji
AU - Fergus, Paul
AU - Hussain, Abir
AU - Dobbins, Chelsea
AU - Al-Askar, Haya
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2014/10/1
Y1 - 2014/10/1
N2 - Worldwide the rate of preterm birth is increasing, which presents significant health, developmental and economic problems. Current methods for predicting preterm births at an early stage are inadequate. Yet, there has been increasing evidence that the analysis of uterine electrical signals, from the abdominal surface, could provide an independent and easy way to diagnose true labour and predict preterm delivery. This analysis provides a heavy focus on the use of advanced machine learning techniques and Electrohysterography (EHG) signal processing. Most EHG studies have focused on true labour detection, in the window of around seven days before labour. However, this paper focuses on using such EHG signals to detect preterm births. In achieving this, the study uses an open dataset containing 262 records for women who delivered at term and 38 who delivered prematurely. The synthetic minority over sampling technique is utilized to overcome the issue with imbalanced datasets to produce a dataset containing 262 term records and 262 preterm records. Six different artificial neural networks were used to detect term and preterm records. The results show that the best performing classifier was the LMNC with 96% sensitivity, 92% specificity, 95% AUC and 6% mean error.
AB - Worldwide the rate of preterm birth is increasing, which presents significant health, developmental and economic problems. Current methods for predicting preterm births at an early stage are inadequate. Yet, there has been increasing evidence that the analysis of uterine electrical signals, from the abdominal surface, could provide an independent and easy way to diagnose true labour and predict preterm delivery. This analysis provides a heavy focus on the use of advanced machine learning techniques and Electrohysterography (EHG) signal processing. Most EHG studies have focused on true labour detection, in the window of around seven days before labour. However, this paper focuses on using such EHG signals to detect preterm births. In achieving this, the study uses an open dataset containing 262 records for women who delivered at term and 38 who delivered prematurely. The synthetic minority over sampling technique is utilized to overcome the issue with imbalanced datasets to produce a dataset containing 262 term records and 262 preterm records. Six different artificial neural networks were used to detect term and preterm records. The results show that the best performing classifier was the LMNC with 96% sensitivity, 92% specificity, 95% AUC and 6% mean error.
KW - artificial neural networks
KW - AUC
KW - Classification
KW - Electrohysterography(EHG)
KW - Preterm Delivery
KW - ROC and Features extraction
KW - Term Delivery
UR - https://www.scopus.com/pages/publications/84908868571
U2 - 10.1109/CISIS.2014.14
DO - 10.1109/CISIS.2014.14
M3 - Conference contribution
AN - SCOPUS:84908868571
T3 - Proceedings - 2014 8th International Conference on Complex, Intelligent and Software Intensive Systems, CISIS 2014
SP - 95
EP - 100
BT - Proceedings - 2014 8th International Conference on Complex, Intelligent and Software Intensive Systems, CISIS 2014
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2014 8th International Conference on Complex, Intelligent and Software Intensive Systems, CISIS 2014
Y2 - 2 July 2014 through 4 July 2014
ER -